MOLECULAR GEOMICROBIOLOGY 59
Reviews in Mineralogy and Geochemistry
59
FROM THE SERIES EDITOR This volume was prepared in advance of a short course entitled “Molecular Geomicrobiology.” The short course, sponsored by the Mineralogical Society of America, the Geochemical Society, the US Department of Energy, and NASA Astrobiology Institute, was held at the University of California, Berkeley, December 3-4, 2005 prior to the fall AGU meeting in San Francisco, California. Errata (if any) can be found at the MSA website www.minsocam.org. Jodi J. Rosso, Series Editor West Richland, Washington October 2005
PREFACE As geomicrobiologists, we seek to understand how some of nature’s most complex systems work, yet the very complexity we seek to understand has placed many of the insights out of reach. Recent advances in cultivation methodologies, the development of ultrahigh throughput DNA sequencing capabilities, and new methods to assay gene expression and protein function open the way for rapid progress. In the eight years since the first Geomicrobiology volume (Geomicrobiology: Interactions between microbes and minerals; volume 35 in this series) we have transformed into scientists working hand in hand with biochemists, molecular biologists, genome scientists, analytical chemists, and even physicists to reveal the most fundamental molecular-scale underpinnings of biogeochemical systems. Through synthesis achieved by integration of diverse perspectives, skills, and interests, we have begun to learn how organisms mediate chemical transformations, the ways in which the environment determines the architecture of microbial communities, and the interplay between evolution and selection that shapes the biodiversity of the planet. This volume presents chapters written by leaders in the rapidly maturing field we refer to as molecular geomicrobiology. Most of them are relatively young researchers who share their approaches and insights and provide pointers to exciting areas ripe for new advances. This volume ties together themes common to environmental microbiology, earth science, and astrobiology. The resesarch presented here, the associated short course, and the volume production were supported by funding from many sources, notably the Mineralogical Society of America, the Geochemical Society, the US Department of Energy Chemical Sciences Program and the NASA Astrobiology Institute. We thank Jodi Rosso for her editorial contributions. October 2005 Jillian F. Ban¿eld Javiera Cervini-Silva Kenneth H. Nealson
1529-6466/05/0059-0000$05.00
DOI: 10.2138/rmg.2005.59.0
1
Reviews in Mineralogy & Geochemistry Vol. 59, pp. 1-7, 2005 Copyright © Mineralogical Society of America
The Search for a Molecular-Level Understanding of the Processes that Underpin the Earth’s Biogeochemical Cycles Jillian F. Banfield, Gene W. Tyson, Eric E. Allen, Rachel J. Whitaker Department of Earth and Planetary Sciences and Department of Environmental Science, Policy, and Management, University of California Berkeley Berkeley California, 94720-4767, U.S.A.
[email protected]
CHARACTERIZING BIOGEOCHEMICAL SYSTEMS Evidence of connections between microbial activity and the Earth’s biogeochemical cycles is all around us, and motivates our interest in the mechanisms of microbial transformations, their rates, and the distribution of microbial activities across environment types and over Earth history. In general, the approach to investigating a geomicrobiological process begins with biological and geochemical characterization of the environment of interest. Geochemical characteristics constrain available metabolisms (e.g., McCollom and Shock 1997) and patterns can reveal processes not recognized initially to be microbially mediated. The membership of microbial communities can be assayed through cultivation and cultivation-independent methods. However, this task is not without its challenges. There is little consensus about the ways in which organisms should be grouped into relevant ecological units such as species (Gevers et al. 2005). Even using standard classification techniques, the extent of microbial diversity appears vast, and recent analyses suggest that current estimates may tremendously under predict the amount of genetic diversity in the biosphere. In addition, a single organism type may contain far more genes than expected based on genomic sequencing of an isolate of that species because species populations can exhibit internal heterogeneity. Thus, it seems that comprehensive characterization of the microbial membership of an environment over space and time is a problem of almost incomprehensible magnitude. Furthermore, microbial census taking is only the first step. Beyond documenting the assemblage of organisms present, we need to know how they are distributed, what are they doing, how they are doing it, and the ways that their activities impact the physical and chemical characteristics of their surroundings. In the near future, the only systems in which it will be plausible to tackle the level of characterization required for relatively comprehensive analyses are the simplest ones. For example, in samples of relatively low geochemical and biological complexity, it is now possible to reconstruct the genomes of the dominant organism types using environmental genomic approaches. These data can be used to classify the individual members of a community into groups based on their genome structure and gene content and to infer some aspects of their metabolism (Tyson et al. 2004). In more complex environments, analyses are likely to be restricted to studies of a subset of biogeochemical processes or organism types. In very complex environments, genomic characterization of a community may be restricted to functional profiling (Tringe et al. 2005). Other profiling using methods such as multi-locus sequence analysis (e.g., Whitaker et al. 2003) may be useful to sample specific genes from 1529-6466/05/0059-0001$05.00
DOI: 10.2138/rmg.2005.59.1
2
Banęeld, Tyson, Allen, Whitaker
a much larger number of individuals in a population and to resolve microbial distribution patterns as a function of geochemical conditions and over time. Information about community structure and metabolic potential must be interpreted in the context of fine-scale measurements of temperature, pH, metal and oxygen concentrations, redox potential, etc. A current challenge in uniting geochemical parameters with community structure observations is to document community variation over scales comparable to those over which geochemical gradients occur. The discrepancies in sampling volumes for biological and geochemical characterization may be resolved when new methods such as single cell genomic analysis from environmental samples are combined with micron-scale methods such as microelectrode chemical analyses. Through such approaches it may be possible to decipher the extent to which geochemical gradients structure microbial populations and possibly identify important selective pressures. One of the most severe limitations in our understanding of biogeochemical systems arises from lack of information about the genetic basis for metabolic pathways involved in tasks such as iron oxidation and biomineral formation. Such gaps in our knowledge also restrict derivation of functional inferences from newly acquired genome sequences. A key strategy for deciphering how metabolic tasks are conducted and how these pathways are regulated begins with the development of genetically tractable model organisms (see Newman and Gralnick 2005). Once the sequences of genes involved in processes of interest are known, comparative analyses may provide clues to the evolutionary processes that gave rise to the function (see Raymond 2005). Purified gene products can be assayed to determine substrate specificity, intermediate products, and reaction kinetics, and this information can be incorporated into models for natural systems. Through reconstructions of complex pathways such as those involved in electron transport it is possible to learn how organisms derive energy and shape their surroundings (see DiChristina et al. 2005). For example, the electron transport chain is central to the catalysis of redox reactions involving geochemically abundant chemical species such as nitrate and iron, and can profoundly change the forms of nitrogen and iron in the environment(see Kappler and Straub 2005). Another example involves the microbial production and excretion of specifically tailored iron-binding molecules referred to as siderophores in order address the challenge of iron limitation (see Kraemer et al. 2005). In cases such as this, genetic, genomic, and biochemical approaches can be complemented by high-resolution data for minerals that can now be acquired using spectroscopic methods to reveal the ways in which organic ligands bind to, and interact with, minerals at the molecular level. Spectroscopic methods that provide molecular-scale insights include nano-scale secondary ion mass spectrometry (Guerquin-Kern et al. 2005), micro-scale infrared spectroscopy, nuclear magnetic resonance spectroscopy, and other X-ray-based analytical and imaging methods (see Gilbert et al. 2005). These approaches enable identification of tiny quantities of organic compounds contained in biomineral structures (e.g., Chan et al. 2004) and can reveal surface coordination geometries and reaction mechanisms. Spectroscopic approaches may also provide insights in a wide variety of other systems, including those involving organic molecules and mineral surfaces that may have had special relevance to prebiotic synthesis early in Earth history (see Ferris 2005). Spectroscopic methods also yield isotopic information and can be used to constrain reaction dynamics. The integration of high-resolution, spatially and chemically resolved data from natural inorganic and biological materials is only in a relatively early stage. Such syntheses will certainly generate fundamental new insights into how microorganisms shape their surroundings. Molecularly resolved spectroscopic approaches are also essential tools in efforts to define the structure and constrain mechanisms of reactions involving the mineral products of microbial metabolism. Mineral byproducts of anaerobic respiration (e.g., uranium oxide,
Molecular-Level Processes in Biogeochemical Cycles
3
zinc sulfide) are frequently no more than a few nanometers in diameter (e.g., Moreau et al. 2004). As a consequence of their ultra-small size, these particles may exhibit structures and properties (possibly including redox potential) that depend on the particle diameter (see Gilbert and Banfield 2005). Furthermore, the particle size and size and organization of colloidal aggregates of these particles may depend on the microbial metabolic rate, which itself depends upon solution chemistry (Jin and Bethke 2005). Recent advances in methods for study of nanoparticle structure and properties and for analysis of metabolism make it possible to analyze such connections and predict outcomes in biogeochemical systems.
MOLECULAR GEOMICROBIOLOGY: OPPORTUNITIES AND CHALLENGES One of the goals of molecular geomicrobiology is to understand how microorganisms function in, respond to, and shape their environments. Complete microbial genomes reveal an organism’s metabolic potential and provide information about genome structure and gene content (see Nelson and Methé 2005). Thus, they provide an important starting point for biogeochemical analyses. However, it should be noted that the complete genomes derive from cultivated strains, so each analysis represents only a snapshot of the genome of a single representative of a population. More importantly, only a small subset of organisms can be cultivated. Despite many successful predictions of new functional capabilities from genomic data (Ramesh et al. 2005), there are innumerable cases where the function of predicted genes cannot be inferred because the gene bears no significant similarity to one for which a function can be assigned. This is not a small problem (Roberts et al. 2005). Typically 30-50% of genes in sequenced genomes are annotated as either hypothetical (a predicted gene with no similarity to any other gene in the databases) or conserved hypothetical (a predicted gene that bears significant sequence similarity to genes in the database, but for which no function has been determined). Given that no more than a few tens of novel genes are ascribed functions per year as the result of typical biochemical and genetic experiments (M. Thelen, pers. comm.), complete functional analysis based on genomic information is a long way off, even for the best studied microbes (e.g., E. coli). This may be one of the largest roadblocks facing geomicrobiologists. Genomic data from isolates have been used extensively in comparative studies for functional and evolutionary analyses (see Nelson and Methé 2005; Raymond 2005). These studies have provided a wealth of evidence that indicates that lateral gene transfer is an important force in genome evolution. It is apparent that genes are moved between organisms that are distantly related, at least occasionally, and that the frequency of transfer increases with decreasing evolutionary distance (e.g., between different species of the same genera; Gogarten and Townsend 2005). Remaining questions relate to the mode and frequency of genetic exchange within populations of very closely related individuals. Are genes taken up from naked DNA or acquired from phage or other organisms with high frequency, only to be discarded in subsequent generations because they rarely, if ever, confer an adaptive advantage? Or are such events still quite rare but their consequences often profound? Genomic data from coexisting members of natural populations may throw light on this question. Genomic analyses can reveal how metabolic traits distribute across lineages and environment types, the rates and mechanisms by which this movement occurs, and the roles that lateral gene transfer can play in biogeochemical cycling. For example, a recent important discovery is that photosystem II genes are found in phage genomes (Lindell et al. 2005). These genes impact levels of a protein involved in photosynthesis, implying that phage can influence
4
Banęeld, Tyson, Allen, Whitaker
or even control one of the key steps in the ocean carbon cycle. Other laterally transferred genes with biogeochemical significance include those that are spread on plasmids to confer the ability to degrade specific hydrocarbon contaminants (Wilson et al. 2003; Springail and Top 2004) or resistance to antibiotics or heavy metals (Coombs and Barkay 2004; Nielsen and Townsend 2004). The mobility of genes between lineages has presented a serious challenge to the species concept because the extent to which members of the same “species” share a common evolutionary history is unclear. It is our view that both the genetic characteristics that unite groups and the processes that subdivide them to yield divergent phenotypes are best evaluated through analysis of population genetic heterogeneity. With such information in hand, we may be better positioned to meaningfully delineate organism groups (“species”) with likely ecological relevance. In addition to having the potential to tell us about evolutionary processes that occur over small times scales, environmental genomic data can reveal metabolic traits of organisms that have previously defied cultivation. This information may itself lead to growth of the organism in the laboratory, opening the way for more comprehensive physiological characterization. For example, recently Tyson et al. (2005) designed a cultivation approach based on the recognition that only a single organism type in a community was capable of nitrogen fixation. Population genomic data also reveal differences in metabolic potential that may be responsible for adaptation of otherwise closely related organisms to subtly different environment types. Whitaker and Banfield (2005) describe how methods developed for comparative analysis of (clonal) isolate genomes can be used to identify differences in gene content and sequence amongst closely related individuals and the ways in which population genetic methods may be adapted from macroscopic biology to reveal patterns of selection genome wide. With genomic information for the dominant organisms in a community in hand (whether obtained from isolates or natural populations) it is possible to monitor in situ microbial activity levels in multi-species consortia. For example, gene sequence information can be used to design microarrays to detect mRNA transcripts (see Nelson and Methé 2005) or to identify peptides via mass-based measurements (e.g., mass spectrometry). Functional analyses may reveal the relative contributions of specific organisms or strains to geochemical transformations such as carbon fixation, nitrogen fixation, and metal reduction at a given time, and to deduce how this changes over time. An important limitation for use of genomic data in functional analyses arises if these data do not accurately or fully capture the genetic potential of the community. For example, Ram et al. (2005) used genomic data from one sample to identify proteins in a closely related (but not identical) biofilm sample. Although over 2,000 proteins derived from all of the dominant organism types were detected, it is certain that an important subset were under-detected or missed because the predicted peptides differed from the observed peptides in their amino acid sequence. Thus, full analyses of function in microbial consortia will benefit from comprehensive genomic datasets that capture the full range of sequence types present in a community. Even if complete genomic data are available for one environment type, it is unclear whether they will enable functional analyses in a similar environment due to site-to-site genetic variability. With the exception of studies of organisms that cause plant and animal disease (Bhattacharyya et al. 2002; Holden et al. 2004), population-level differences in the same environment type in geographically separated locations have been little investigated (Whitaker et al. 2003; Escobar-Paramo et al. 2005). Consequently, it is difficult to predict whether the challenges associated with functional analyses of natural communities will be best addressed via better genomic databases, mass spectrometry method development, or both.
Molecular-Level Processes in Biogeochemical Cycles
5
Environmental genomic studies have the potential to constrain the rates of inter-site microbial dispersal and to reveal the relative importance of dispersal vs. in situ diversification in adaptation as environmental conditions change. Clearly, the relative importance of dispersal vs. in situ evolution will vary with environment type, organism type, and the rate and magnitude of the perturbation. However, this balance will impact the level of global-scale biodiversity for each species. Understanding the timescales of microbial evolutionary processes is a tremendous challenge that is perhaps be addressed via studies of geologic systems. In the past, this has been undertaken through direct examination of the fossil record, including analysis of organic biomolecules preserved in ancient rocks. The opportunities and obstacles associated with attempts to tie together biological and geochemical evolution over Earth history are discussed by Brocks and Pearson (2005). Future studies may focus on modern systems for which both a recent geological and biological history can be reconstructed.
CONCLUDING COMMENTS The knowledge sought through molecular geomicrobiological studies will find application in a variety of basic and applied fields such as astrobiology and environmental bioremediation. For example, understanding of the range of conditions in which life can persist, and the biochemical bases for the limitations, will constrain the variety of habitat types that may be targeted in the search for life signs on extraterrestrial planets. Molecular-level understanding of biogeochemical processes may be central to an assessment of the biogenicity of mineral biosignatures found there. Furthermore, information about the metabolic pathways for synthesis of organic compounds will assist in evaluation of the sources of organic biosignatures that persist in the geologic record. There has been great deal of interest in the possibility that the enormous problem of contamination of the environment by organic compounds, metals, and radionuclides may be tackled by harnessing the ability of microorganisms to change the chemical speciation of pollutants. Much research has been devoted to exploring this possibility (Madsen 2001; Lovley 2003; Nevin et al. 2003). In addition, understanding of the biogeochemical reactions that occur during stimulated bioremediation can be used to design methods to follow the progress of the treatment and identify key reaction products. For example, recently developed geophysical approaches can sense changes in subsurface transport properties, allowing progress of bioremediation to be evaluated and post treatment changes monitored (Williams et al. 2005). The merging of fields as disparate as molecular microbiology and geophysics is becoming routine, but the results are as yet mostly unknown. We can look forward with optimism to the product of the next decade of research in molecular geomicrobiology.
ACKNOWLEDGMENTS Funding for research and development of ideas described here derived from the National Science Foundation Biocomplexity Program, the Department of Energy Genomics: Genomes to Life Program and Basic Energy Sciences Chemical Sciences Program, and the NASA Astrobiology Institute. The contributions of our colleagues and collaborators to this work are gratefully acknowledged.
6
Banęeld, Tyson, Allen, Whitaker REFERENCES
Bhattacharyya A, Stilwagen S, Ivanova N, D’Souza M, Bernal A, Lykidis A, Kapatral V, Anderson I, Larsen N, Los T, et al. (2002) Whole-genome comparative analysis of three phytopathogenic Xylella fastidiosa strains. Proc Natl Acad Sci USA 99:12403-12408 Brocks JJ, Pearson A (2005) Building the biomarker tree of life. Rev Mineral Geochem 59:233-258 Chan CS, De Stasio G, Nesterova M, Welch SA, Girasole M, Frazer B, Banfield JF (2004) The role of microbial polymers in templated mineral growth. Science 303:1656-2658 Coombs JM, Barkay T (2004) Molecular evidence for the evolution of metal homeostasis genes by the lateral gene transfer in bacteria from the deep terrestrial subsurface. Appl Environ Microbiol 70:1698-1707 DiChristina TJ, Fredrickson JK, Zachara JM (2005) Enzymology of electron transport: energy generation with geochemical consequences. Rev Mineral Geochem 59:27-52 Escobar-Paramo P, Ghosh S, DiRuggiero J (2005) Evidence for genetic drift in the diversification of a geographically isolated population of the hyperthermophilic archaeon Pyrococcus. Molec Bio Evol 22: 2297-2303 Ferris JP (2005) Catalysis and prebiotic synthesis. Rev Mineral Geochem 59:187-210 Gevers D, Cohan FM, Lawrence JG, Spratt BG, Coenye T, Feil J, Stackenbrandt E, Van de Peer Y, Vandamme P, Thompson FL, Swings J (2005) Opinion: Re-evaluating prokaryotic species. Nat Rev Microbiol 3: 733-739 Gilbert B, Banfield JF (2005) Molecular-scale processes involving nanoparticulate minerals in biogeochemical systems. Rev Mineral Geochem 59:109-155 Gilbert PUPA, Abrecht M, Frazer BH (2005) The organic-mineral interface in biominerals. Rev Mineral Geochem 59:157-185 Gogarten JP, Townsend JP (2005) Horizontal gene transfer, genome innovation and evolution. Nat Rev Microbiol 3:679-687 Guerquin-Kern JL, Wu TD, Quintana C, Croisy A (2005) Progress in analytical imaging of the cell by dynamic secondary ion mass spectroscopy (SIMS microscopy). Biochim Biophys Acta 1724: 228-238 Holden MT, Titball RW, Peacock SJ, Cerdeno-Tarraga AM, Atkins T, Crossman LC, Pitt T, Churcher C, Mungall K, Bentley SD, et al. (2004) Genomic plasticity of the causative agent of melioidosis, Burkholderia pseudomallei. Proc Natl Acad Sci USA 101:14240-14245 Jin Q, Bethke CM (2005) Predicting the rate of microbial respiration in geochemical environments. Geochim Cosmochim Acta 69:1133-1143 Kappler A, Straub KL (2005) Geomicrobiological cycling of iron. Rev Mineral Geochem 59:85-108 Kraemer SM, Butler A, Borer P, Cervini-Silva J (2005) Siderophores and the dissolution of iron-bearing minerals in marine systems. Rev Mineral Geochem 59:53-84 Lindell D, Jaffe JD, Johnson ZI, Church GM, Chisholm SW (2005) Photosynthesis genes in marine viruses yield proteins during host infection. Nature, doi:10.1038/nature04111 Lovley DR (2003) Cleaning up with genomics: applying molecular biology to bioremediation. Nat Rev Microbiol 1:35-44 Madsen EL (2001) Intrinsic bioremediation of organic subsurface contaminants. In: Subsurface Microbiology and Biogeochemistry. Fredrickson JK, Fletcher M (eds) Wiley-Liss Inc., New York, p. 249-278 McCollom TM, Shock EL (1997) Geochemical constrains on chemolithautotrophic metabolism by microorganisms in seafloor hydrothermal systems. Geochim Cosmochim Acta 61:4375-4391 Moreau JW, Webb RI, Banfield JF (2004) Ultrastructure, aggregation-state, and crystal growth of biogenic nanocrystalline sphalerite and wurtzite. Am Mineral 89:950-960 Nelson KE, Methé B (2005) Metabolism and genomics: adventures derived from complete genome sequencing. Rev Mineral Geochem 59:279-294 Nevin KP, Finneran KT, Lovley DR (2003) Microorganisms associated with uranium bioremediation in a highsalinity subsurface sediment. Appl Environ Microbiol 69:3672-3675 Newman DK, Gralnick JA (2005) What genetics offers geobiology. Rev Mineral Geochem 59:9-26 Nielsen KM, Townsend JP (2004) Monitoring and modeling horizontal gene transfer. Nat Rev Biotechnol 22: 1110-1114 Ram RJ, Verberkmoes NC, Thelen MP, Tyson GW, Baker BJ, Blake RC II, Shah M, Hettich RL, Banfield JF (2005) Community proteomics of a natural microbial biofilm. Science 308:1915-1920 Ramesh MA et al. (2005) A phylogenomic inventory of meiotic genes: evidence for sex in Giardia and an early eukaryotic origin of meiosis. Current Biology 15:185–191 Raymond J (2005) The evolution of biological carbon and nitrogen cycling—a genomic perspective. Rev Mineral Geochem 59:211-231 Roberts RJ, Karp P, Kasif S, Linn S, Buckley MR (2005) An Experimental Approach to Genome Annotation. Critical Issues Colloquia Report, Washington D.C. USA: American Academy of Microbiology Springail D, Top EM (2004) Horizontal gene transfer and microbial adaptation to xenobiotics: new types of mobile genetic elements and lessons from ecological studies. Trends Microbiol 12:53-58
Molecular-Level Processes in Biogeochemical Cycles
7
Tringe SG, von Mering C, Kobayashi A, Salamov AA, Chen K, Chang HW, Podar M, Short JM, MathurEJ, Detter JC, Bork P, Hugenholtz P, Rubin EM (2005) Comparative metagenomics of microbial communities. Science 308:554-557 Tyson GW, Chapman J, Hugenholtz P, Allen EE, Ram RJ, Richardson PM, Solovyev VV, Rokhsar DS, Banfield JF (2004) Community structure and metabolism through reconstruction of microbial genomes from the environment. Nature 428: 37-43 Tyson GW, Lo I, Baker BJ, Allen EE, Hugenholtz P, Banfield JF (2005) Genome-directed isolation of the key nitrogen fixer Leptospirillum ferrodiazotrophum sp. nov. from an acidophilic microbial community. Appl Environ Microbiol 71:6319-6324 Whitaker RJ, Grogan DW, Taylor JW (2003) Geographic barriers isolate endemic populations of hyperthermophilic archaea. Science 301:976-978 Whitaker RJ, Banfield JF (2005) Population dynamics through the lens of extreme environments. Rev Mineral Geochem 59:259-277 Williams KH, Ntarlagiannis D, Slater LD, Dohnalkova A, Hubbard SS, Banfield JF (2005) Geophysical imaging of stimulated microbial biomineralization. Environ Sci Technol 39:7592-7600 Wilson MS, Herrick JB, Jeon CO, Hinman DE, Madsen EL (2003) Horizontal transfer of phn-Ac dioxygenase genes within one of two phenotypically and genotypically distinctive naphthalene-degrading guilds from adjacent soil environments. Appl Environ Microbiol 69:2172-2181
2
Reviews in Mineralogy & Geochemistry Vol. 59, pp. 9-26, 2005 Copyright © Mineralogical Society of America
What Genetics Offers Geobiology Dianne K. Newman Division of Geological and Planetary Sciences California Institute of Technology and the Howard Hughes Medical Institute Pasadena, California, 91125, U.S.A.
[email protected]
Jeffrey A. Gralnick Department of Microbiology and The BioTechnology Institute University of Minnesota St. Paul, Minnesota, 55108, U.S.A.
[email protected]
INTRODUCTION For over 50 years, the Parker Brothers’ board game “Clue” has maintained its position as the classic family detective game. A murder has been committed in the mansion, but we don’t know where, by whom, or how. Was it Professor Plum in the study with a knife, or Miss Scarlett in the ballroom with a candlestick? Through rolls of the dice, fragments of information patiently accumulated piece-by-piece, and the application of logic, players construct a case to figure out “whodunit”. Because there are several potential solutions to the problem, the key challenge is to figure out what happened by understanding how it happened. As for the players of “Clue,” scientists seeking to understand the co-evolution of life and Earth are often confronted with the dilemma of having to parse multiple solutions to an ancient biogeochemical event. For example, in trying to explain the genesis of Archean Banded Iron Formations, we must ask whether it was cyanobacteria in the near shore-environment producing O2, or anoxygenic phototrophs in the oceans directly oxidizing iron (Kappler et al. 2005)? Again, in parallel to “Clue,” typically all we have to work with are isolated scraps of evidence—metamorphosed pieces of rock collected from remote locales on Earth, that contain morphological and/or chemical fossils whose origin and/or meaning is enigmatic. Nevertheless, the legacies of billions of years of evolution—genetic rolls of the dice, subject to natural selection—provide us with a means to interpret these putative biosignatures. By applying the principle of uniformitarianism, we assume that the study of modern organisms can provide us with insights into the composition and behavior of their ancient relatives, thereby allowing us to reconstruct ancient events. This, of course, is a necessary assumption that may not be true, so in the end, all we can really claim is to construct satisfying stories that fit the available data. So how does one go about solving the mysteries of geobiology? Multiple approaches are covered in this book, but our focus in this chapter will be on how the logic of bacterial genetics can be applied to geobiological problems. Because genetics is not often a discipline that geologists are familiar with, we begin our discussion with some definitions. From there, we go on to discuss how genetics can help us understand the past, both generally and through specific examples; we do not discuss how genetics can help us understand modern biogeochemical processes, because we have recently reviewed this elsewhere (Croal et al. 2004a). Finally, 1529-6466/05/0059-0002$05.00
DOI: 10.2138/rmg.2005.59.2
10
Newman & Gralnick
we close with practical information about how to develop genetic systems in newly-isolated strains of geobiological interest, to guide those seeking to incorporate genetic analysis into their own research.
DEFINITIONS What is genetics? Classical bacterial and phage genetics was pioneered in the 1940s and 50s by Max Delbrück, Salvador Luria, Oswald Avery, Maclyn McCarty, Alfred Hershey, Martha Chase, Joshua Lederberg, Sydney Brenner, Seymour Benzer, Arthur Pardee, François Jacob, and Jacques Monod to name only a few of the key players. The extraordinary history of the development of this discipline (and molecular biology more generally) has been told well by Horace Judson in the book The Eighth Day of Creation (Judson 1996). Thanks to these scientists, genetics became a powerful tool for understanding how basic biological phenomenon worked (e.g., the nature of the gene (Avery et al. 1944), recombination (Lederberg 1946), the regulation of gene expression (Pardee et al. 1959), the nature of the genetic code (Crick et al. 1961), and mutations (Benzer and Champe 1962)). In each of these cases, genetic analysis lead to insights into how things happened, and was predicated upon the construction and analysis of mutants (Beckwith and Silhavy 1992). Accordingly, when we talk about applying genetics to geobiology, we mean performing experiments to understand geomicrobiological processes in mechanistic detail, either by mutagenizing model organisms (e.g., strains that can catalyze a particular geochemical transformation of interest, such as manganese oxidation (van Waasbergen et al. 1996), iron reduction (Coppi et al. 2001; DiChristina et al. 2002; Myers and Myers 2002), arsenate reduction (Saltikov and Newman 2003), methanogenesis (Pritchett and Metcalf 2005)) or by cloning DNA from the environment and expressing it in a foreign host (this is sometimes called “metagenomics” (Beja et al. 2000; Riesenfeld et al. 2004)). For the remainder of this chapter, we will focus our discussion on bacterial genetics to illustrate the more general theory and practice of genetics, whose logic is the same, regardless of the organism in which it is applied. In the context of geobiology, however, it is important to also recognize the recent contributions several labs have made in advancing archaeal genetics (Metcalf et al. 1997; Peck et al. 2000); because archaea catalyze a variety of geochemically significant reactions, that representatives from this group now can be manipulated genetically bodes well for future studies aimed at understanding their impact on the environment.
How is genetics different from molecular biology and genomics? Although modern bacterial genetics is molecular (e.g., gene composition can be readily determined by automated sequence analysis), originally it was not. The key to classical bacterial genetics was the use of deductive reasoning to understand the order and behavior of genetic elements in a genome, accomplished often through elegant assays that required little more than “toothpicks and logic” (Shuman 2003). While sequence information greatly facilitates genetic analysis today, the cornerstone of modern bacterial genetics is essentially the same as it was a half century ago: genetics deconstructs how a system works by making mutants that either eliminate/attenuate the ability of a strain to perform a certain function, or that confer a new property upon it. The challenge and satisfaction of this approach lies in being able to design simple experiments whose results will provide an explanation for a process. With a collection of different mutants, for example, complex biosynthetic processes can be broken down into components, each of which can be reconstructed and understood in detail. Genetic analysis goes hand in hand with physiological, cell biological and/or biochemical approaches that enable the phenotypes (i.e., physical characteristics or behavior) of mutants to be explored in depth.
What Genetics Oěers Geobiology
11
In contrast, molecular biology is the science of understanding the chemical composition of important biomolecules such as DNA and protein, and being able to manipulate them. Molecular biology commonly finds application in geobiology through microbial ecology surveys where the 16S gene for ribosomal RNA is cloned and sequenced to determine what types of organisms are present in a given environment (Pace 1997); another application is the use of molecular probes to identify organisms in natural samples through fluorescent in situ hybridization (FISH) (Schrenk et al. 1998; Orphan et al. 2001; Michaelis et al. 2002). In effect, molecular biology permits geobiologists to apply genetics to the environment—to search for the presence and/or expression of particular genes once their function is known (KarkhoffSchweizer et al. 1995; Malasarn et al. 2004). Finally, genomics is the study of genomes with respect to their gene content and organization (also see in this volume Nelson and Methé 2005 and Whitaker and Banfield 2005). It relies heavily upon computational analyses to compare different sequences (from one or more organisms) to each other and to identify motifs in the genes or their translated protein products that are predicted to have a specific function. For example, hypotheses can be generated about what types of reactions a given protein might catalyze, or the conditions under which the gene that encodes it might be expressed; sometimes, genomic analysis can even be used to make predictions about the behavior of entire microbial communities (Tyson et al. 2004). The special advantage of environmental genomic data is that it allows gene expression in communities to be monitored in situ (Ram et al. 2005). It should be emphasized, however, that although much can be learned from genomics, ultimately, predictions about an organism’s (or a community’s) potential to perform a certain function must be tested through classical genetic and/or biochemical analyses to prove that the connection between the presence of a particular gene and a given geochemical state is actually causal as opposed to correlative.
What is a mutant? A mutant is a bacterial strain that differs genetically in some way from the parent strain of the species. While the genotype (e.g., DNA) of the mutant must, by definition, be different from the parent, this is not necessarily the case phenotypically. A single base pair change in the genome could have no effect on the phenotype of the strain, however, genotypically, this strain is now different from the parent and is therefore a mutant.
What is mutagenesis? The capacity to alter the activities of single, or many proteins, from an organism by eliminating the gene(s) that encode them is critical for identifying proteins involved in a process of interest. Mutagenesis is the process of altering the genotype of a strain to make it different from the parent strain (i.e., a mutant). Traditional biochemical methods of identifying an activity in a cell extract can be a complementary method to genetics, but cannot unambiguously identify proteins required for an activity in vivo. If a protein is required for the activity of interest catalyzed by an organism, then removing the capacity of the strain to produce the protein will eliminate the activity. Several methods are used today to mutagenize bacteria, each with different strengths and weaknesses. These will be discussed in detail below.
TYPES OF GEOBIOLOGICAL PROBLEMS THAT GENETICS CAN SOLVE How can genetics help us learn about the geobiology of the past? To answer this question, we must first define what “geobiology of the past” means. Although a wide array of subjects— ranging from dinosaurs to ediacara—could fit this description, we will limit our discussion to microorganisms and how their evolution affected Earth’s near surface environment (i.e.,
12
Newman & Gralnick
subsurface down to a few kilometers). This choice is justified if one seeks to understand what life was like on this planet for the majority of its history because microorganisms have been in existence much longer than macroscopic organisms. Microorganisms (especially bacteria and archaea) are distinguished by their metabolic diversity rather than their morphological diversity, thus studying the geobiology of the past essentially is an exercise in understanding the evolution of metabolism as recorded in ancient rocks. Because our knowledge of the metabolic diversity of microbial eukaryotes is very limited, we will not consider them here, although we note that this is an area of opportunity for future students of geobiology. Modern microorganisms appear to be capable of generating metabolic energy from any redox reaction that is thermodynamically favorable so long as the constituents involved in the reaction are available in a habitable environment. Their metabolic diversity is based upon their ability to harvest energy from oxidation and reduction reactions, where the oxidant and/or the reductant may be organic or inorganic compounds. In some cases, the substrates and/or products of microbial metabolism are minerals, whereas in others, they are gases. Regardless of what form they come in, microbial substrate consumption or product formation can have a dramatic affect on the geochemistry of the environment. A classic example of this is the evolution of photosystem II, which enabled cells to produce molecular oxygen from water and thereby oxidize the Earth. Prior to this event, however, microbial life had to subsist anaerobically for millions and perhaps billions of years. How did cells cope? What electron acceptors and electron donors did microorganisms use for energy generation? And can we decipher a record of these primitive metabolisms in ancient rocks? These are hard questions, and at first blush, it is not obvious whether genetics can provide the answers. Genetics is an experimental discipline, requiring geobiologists to work with modern microorganisms that we assume behave in much the same way as their ancient relatives. How reasonable is this assumption? One argument in its favor is that the forces of natural selection are conservative: once a particular metabolism is “invented” and is successful, only a limited set of mutations in the genes that confer this metabolism are possible in order for it to be preserved. While evolutionary history records myriad instances in which genetic changes led to the development of novel proteins and hence novel metabolisms, if we focus on a particular metabolism, and the biochemistry of its catalytic core, it is reasonable to infer that biology has only a finite number of solutions to make it work (Kauffman 1993). Moreover, as the complexity or difficulty of a metabolic process increases, we might expect the repertoire of solutions to become even more limited. This conclusion appears to be robust, albeit facilitated through horizontal gene transfer, given the conservation of metabolic genes in the genomes of phylogenetically distant organisms (Doolittle 1999; Friedrich 2002; Nixon et al. 2002; Malasarn et al. 2004; Simonson et al. 2005). Interestingly, microbiologists of the Delft school anticipated these findings nearly a century ago, noting the “manifest unity” in the biochemistry that forms the basis for the ecological relationships of microorganisms in nature (Kluyver 1924). If biochemistry is essentially conservative with respect to metabolism, then using genetics to understand how modern metabolisms work can help us develop a basis for deciphering their origins and how organisms that utilized them may have altered the chemical and physical features of our planet. So what does this mean in practice? If understanding the evolution of metabolism is the goal, there are only two ancient records to work with: one that is recorded in rocks, and one that is recorded in genomes. Let us first consider the former. Rocks preserve two different types of fossils: morphological and chemical. Morphological fossils are the more familiar, as features that stand out from the parent rock are relatively straightforward to identify, and are becoming ever more so given recent innovations in imaging technologies (Watters and Grotzinger 2001; Corsetti and Storrie-Lombardi 2003; Kemner et al. 2004). Once identified, however, whether these features are truly biogenic can be the subject of intense debate, be it at the scale of
What Genetics Oěers Geobiology
13
nanoparticles such as magnetite (McKay et al. 1996), micron-sized putative cellular structures (Schopf 1993; Brasier et al. 2002), or centimeter-scale stromatolites (Grotzinger and Knoll 1999). To develop criteria whereby to evaluate the biogenicity of particular structures in ancient rocks, it is helpful to understand how these structures form. This is where genetics can help. For example, if certain conditions prove to be required for the biological formation of a particular structure in modern organisms, and traces of these conditions are absent in an ancient sample, this would argue against its biogenicity. Such an argument was recently made with respect to the magnetite in the Martian meteorite ALH84001, which did not contain a magnetic signature that supported a biogenic origin (i.e., alignment of magnetite in chains) (Weiss et al. 2004). The key assumption in Weiss et al.’s paper was that bacteria organize magnetite into chains by direct molecular control—an assumption that was based on phenomenological observations (Gorby et al. 1988). Recently, genetic analysis has begun to reveal the specific molecular components responsible for this organization (Komeili et al. 2005). The power of bacterial genetics lies is its ability to provide clear and definitive proof that a particular protein is involved in a given function. The case of magnetite is only one example of where genetic analysis can guide our interpretation of the biogenicity of ancient samples. As stated above, in addition to morphological fossils, rocks preserve chemical fossils. These, in turn, come in two varieties: organic and inorganic. It is fair to assume that all organic fossils are of biological origin (the likelihood that prebiotic organic synthesis left preservable traces is extremely small), but it is much harder to know what they mean when we find them, as discussed in the chapter by Brocks and Pearson (2005). Here too, genetics can help. For example, hydrocarbon molecules known as 2-methylhopanes in the sedimentary record can unambiguously be recognized as the molecular fossils of 2-methyl bacteriohopanepolyols (2MeBHPs) that are found in selected modern bacteria. Because cyanobacteria—the only bacteria that engage in oxygenic photosynthesis—are the only known, quantitatively important, source of 2-MeBHPs in the modern environment, it has been inferred that 2-methylhopanes can be used as biomarkers for oxygenic photosynthesis itself (Summons et al. 1999). Thus, Brocks et al. (1999, 2003) interpreted the presence of 2-methylhopanes in sediments of the Archaean Fortescue Group as evidence that photosynthetically-derived O2 first appeared on Earth at least 2.7 billion years ago. However, there is presently no evidence that 2-MeBHPs and oxygenic photosynthesis are functionally related. Our confidence in this critical assumption, as well as in the use of 2-methylhopanes as biomarkers for cyanobacteria (or any other organism in which they exist), would be significantly improved by an understanding of the biochemical function of 2-MeBHPs. Keeping to the theme of O2 evolution, the second class of chemical fossils—inorganic biosignatures—also can be used to shed light on when this critical event occurred. Recently, through the work of Farquhar et al. (2000), mass independent sulfur isotopic signatures from sulfide and sulfate in Precambrian rocks were used to date a major change in the change in the sulfur cycle between 2090 and 2450 million years ago, likely attributable to the rise of O2. Canfield and colleagues have provided additional support for this conclusion, through their work on sulfur isotopic fractionation by archaea and bacteria (Canfield et al. 2000; Shen et al. 2001; Habicht et al. 2002). Central to these studies is the knowledge that sulfur isotope fractionation responds to metabolism—for example, uptake and reduction of sulfate involves kinetic isotope effects that result in the lighter isotope of sulfur being enriched in the sulfide product. The extent of enrichment depends on the growth rate of the organism, which can be controlled by temperature, the nature of the electron donor, and the concentration of sulfate among other factors (Jones and Starkey 1962; Kemp and Thode 1968; Shen et al. 2001)). While great strides have been made in this area without the involvement of genetics, knowledge of the biochemical pathway responsible for sulfate reduction has greatly facilitated interpretations of microbial sulfur isotopic fractionation by bacteria. It is thought that the majority of isotopic
14
Newman & Gralnick
fractionation occurs when S-O bonds are broken, such as during reduction of adenosine 5cphosphatosulfate (APS) to sulfite by the enzyme APS reductase, with subsequent enzymatic reduction of sulfite to sulfide (Canfield et al. 2005). Genetics affords a means to identify such pathways for more recently discovered geomicrobial organisms that might leave an imprint in the rock record, where the mechanism(s) of isotope effects are not yet fully understood. For example, iron-oxidizing anoxygenic phototrophs have been implicated in the direct deposition of Banded Iron Formations, but at present is it difficult to distinguish their activities from those of cyanobacteria on the basis of iron isotopic fractionation alone (Croal et al. 2004b). Knowledge of what enzymes or molecular components catalyze iron oxidation, where they are localized, and other details of how anoxygenic phototrophs traffic in iron, will position us to better interpret the mechanism of iron isotope fractionation by these bacteria, and thereby develop criteria with which to identify the products of their metabolism in ancient rocks. Even if iron isotopes prove not to provide a unique signature for a particular microbial metabolism, genetic analysis can still be very useful in pointing to potentially novel biosignatures. For example, recent genetic and biochemical results from our laboratory indicate that the enzymes that catalyze iron oxidation are soluble proteins that are localized inside the cell (Croal et al. unpub. data). If true, this implies that the cell has a mechanism for preventing the intracellular precipitation of iron oxide, possibly by chelating ferric iron with an organic molecule that helps release it to the outside where it then precipitates. In the event such a molecule were to exist, and it were shown to be preservable over geologic time scales, this would be an example of a metabolically-specific biomarker discovered through genetics. Whether or not genetic analysis will ultimately lead to the discovery of physiologicallyspecific biomarkers, identification of the genes involved in geobiological processes will provide insight into their evolutionary origin. In this respect, DNA itself is a fossil, as phylogenetic relationships between sequences can provide information about their evolution. A good example of this is the interpretation of the antiquity of anoxygenic photosynthesis based on phylogenies of proteins involved in bacteriochlorophyll biosynthesis (Xiong et al. 2000). Although it is very difficult to date the divergence of groups of proteins, it is reasonable to use phylogeny in tandem with the rock record to infer the relative temporal evolution of different metabolisms (House et al. 2003; Kirschvink et al. 2000). Again, the role genetics plays in this process is to provide the proof that specific genes encode proteins that perform specific functions. Only after this is understood can phylogenetic comparisons be meaningful. As stated above, we caution against the danger of inferring function on the basis of phylogeny alone. Evolution is rife with instances where small sequence changes in an active site of a protein change its substrate specificity (such as in the case of the directed evolution of a fucosidase from a galactosidase; Zhang et al. 1997), thus we cannot be certain that a putative protein actually performs the function we think it does until we do an experiment to prove it. Moreover, there are cases where different proteins have independently evolved that catalyze a similar reaction, yet on the basis of their sequence, they appear to have little in common. A good example of this are the serine proteases, subtilisin and trypsin (Kelly et al. 2005). Thus the absence of a particular gene in the genome of an organism should not be taken as evidence that it cannot perform a certain function. Even for organisms such as Escherichia coli and Salmonella, upon whose DNA the science of bacterial genetics was built, there remain a large number of genes of unknown function. Finally, genetic analysis can provide insights into the conditions that regulate a particular process. As described below, it is straightforward to use molecular reporters to assay for the expression of a gene of interest by exposing the bacteria that harbor the gene to different chemicals, temperatures, or pressures. This has the potential to be useful in making inferences about the paleoenvironment. For example, if evidence were found in the rock record that a particular biomolecule was present that was known only to be produced under conditions
What Genetics Oěers Geobiology
15
when oxidized molybdenum [Mo(VI)] was available, this would suggest that the pH of that environment must have been greater than five and the redox potential greater than zero because these are the conditions where Mo(VI) exists in significant quantities (Anbar 2004).
PRACTICAL CONSIDERATIONS FOR CREATING GENETIC SYSTEMS As explained in the previous section, genetics has the potential to be a powerful tool for geobiology, offering insights into: i.) what structures to look for in the rock record, ii.) what they mean when we find them, iii.) what enzymes catalyze their production, and iv.) what conditions regulate their expression. To be able to convert this theory into practice, it is helpful to know where to begin in the laboratory. In this section, we outline the key steps that would need to taken to make an organism genetically tractable. To briefly summarize, the first step is to isolate an organism that will be amenable to genetic analysis; this strain will serve as the standard (or “wild-type”) to which all subsequent mutants will be compared. This of course imposes a limitation on what genetics can offer geobiology, as not all strains can easily be coaxed into growing in the laboratory, much less be straightforward to mutagenize once isolated. Nevertheless, with perseverance and creativity, these difficulties can usually be overcome, leading to the second step: mutagenesis of the strain. Various methods for mutagenesis exist, offering the potential to eliminate/delete genes entirely, introduce pointmutations into specific genes, or introduce genes into an organism. The effects of these different types of mutations can be far ranging, from altering the amino acid composition of a protein and thereby affecting its substrate specificity, to eliminating the ability to make a set of proteins, to changing the regulation of an entire network of genes. After mutagenesis is performed, the third step is to identify the mutants either through a selection or a screen. A selection permits only those mutants that have the desired properties to grow, whereas a screen requires characterizing the behavior of thousands of mutants to identify only rare ones that have the properties/behavior of interest. Depending on the manner in which one has identified candidate mutants, secondary screens may be required to narrow the pool of candidates down to only those that are interesting. For example, if one performs a screen to find genes that control various steps in a biochemical reaction, if the assay for mutant identification involves looking at the rate at which a reaction proceeds, “false” mutants could be identified by the screen that are simply slow to grow but which do not have a specific defect in the reaction of interest. These mutants could be sorted out by measuring the growth rate of all candidates and only continuing to study those whose growth is normal with respect to the parent strain. Once interesting mutants are identified, the fourth step is to determine the nature of the mutation through sequencing and genetic verification. Sequence analysis can help generate hypotheses to explain why the mutant behaves the way it does, and thus infer what affects the process of interest. To test these hypotheses, however, the final step requires physiological, biochemical, or cell biological experiments to be performed in order to study the phenotype of the mutant in detail.
Step 1: Isolation and growth Developing a genetic system in an organism can be a tedious, albeit rewarding process. Development can be greatly enhanced when the organism of interest is a close relative to a microbe with an established genetic system. This was the case for the arsenic-respiring Gramnegative bacterium Shewanella sp. strain ANA-3, which resulted from a targeted-isolation of a strain that could grow strictly anaerobically on arsenate in minimal medium and also make single colonies overnight on Luria-Broth (LB) plates on the bench top. LB is a widely used rich medium in bacterial genetics, as it supports rapid growth and is easy to make. Because this enrichment strategy imposed a strong selection for bacteria that had respiratory versatility, it was not surprising that it resulted in the isolation of a new strain of Shewanella, a genus
16
Newman & Gralnick
renowned for this property (Nealson and Scott 2004). Since this organism is closely related to other strains of Shewanella that have established genetic systems, Saltikov et al. adapted strategies that had been successfully used in S. oneidensis strain MR-1 to their new isolate (Saltikov et al. 2003; Saltikov and Newman 2003). Several years prior to this, one of the authors had isolated a bacterial strain (Desulfotomaculum sp. strain OREX-4) that could also respire arsenate (Newman et al. 1998; Newman et al. 1997). However, because attempts to grow this strain on plates failed, a genetic system could never be established. Two main lessons regarding the development of a genetic system are illustrated by this example: 1.) Enrich for an organism in a targeted fashion so that a strain can be isolated that exhibits the desired properties and 2.) The ability to readily form colonies on plates is a highly desirable trait, for reasons that will be discussed below. One major benefit of growth on agar plates is facilitating strain isolation. Bacterial colonies on an agar plate typically form from a single cell, meaning that every cell that comprises the colony is identical at the genetic level, or of the same genotype. If a single colony is picked from a solid-surface medium, streaked across a new plate with the purpose of dispersing cells so that individual cells are isolated from their neighbors, and allowed to incubate, all subsequent colonies arising should be both morphologically and genetically identical to the original colony (Fig. 1). This process is typically called ‘colony purification’ and can yield pure cultures of the bacterial strain of interest. Using solid surfaces to culture bacteria is, for all practical purposes, essential for the isolation of mutant strains after they are generated. Solid or liquid medium then can be used to perform basic physiological studies, such as determining optimal growth temperature, nutritional requirements and sensitivity to antibiotics or some other selectable marker. Characterizing the susceptibility of a strain to a selectable marker, such as a heavy metal (e.g., tellurium) or an antibiotic (e.g., kanamycin) is important for many genetic techniques. These techniques require the ability to isolate individuals within a population that carry a genetic difference from the overall population. Often, transposons (or “jumping genes”) that carry resistance determinants for a particular toxic compound are used to make mutants by
Figure 1. Streak plate. Example of a strain of S. oneidensis streaked for single colonies on solid medium.
What Genetics Oěers Geobiology
17
disrupting the chromosome at random, but mutants in specific loci can also be generated by replacing the wild-type gene with a resistance determinant. Regardless of the method of mutagenesis, when these resistance determinants are inserted into the chromosome, they confer upon the resulting mutant strain resistance to the toxic compound. With the appropriate solid medium containing this compound, these mutants can be spatially separated and selected from a population that also contains the wild-type (the wild-type, lacking the resistance determinant, will die, so only the mutants will grow). When possible, it is helpful to make low endogenous resistance to several antibiotics a requirement in the isolation of an organism for genetic analysis. If the isolate is naturally resistant to many of the typical antibiotics (e.g., ampicilin, gentamycin, kanamycin, chloramphenicol and tetracycline), however, other strategies can be devised to make mutants—such as employing resistance to heavy metals (Gupta et al. 2002). Two additional properties are also beneficial to establishing genetics in an organism. First is the ability to introduce foreign DNA into the strain, which can be accomplished through transformation, transduction, or conjugation (Madigan et al. 2003). Transformation is when the cell takes up DNA directly—this can be facilitated by electroporation (using electric current to transform DNA into bacteria) or by generating chemically-competent cells (using high concentrations of salt, typically calcium chloride, and inducing the transformation via heat-shock). Transduction is the process whereby phage (i.e., viruses) infect bacterial cells and inject DNA into them which is then incorporated into the chromosome. Finally, conjugation if the process of transferring DNA from one bacterium to another by means of matings that involve the transfer of mobilizable plasmids. Introduction of foreign DNA is important for many targeted and random methods of mutagenesis, and critical for verifying the causality of the phenotype. The second beneficial property is speed of growth. When choosing a new strain for genetic work, the faster the organism grows, the faster its secrets will be unraveled (assuming the creativity of the scientist is not the limiting factor)!
Step 2: Methods of mutagenesis There are three types of mutagenesis that are common in bacterial genetics: chemical, transposon, and targeted. Chemical and transposon mutagenesis typically generate random mutations that are useful when one has no preconceptions about how a system works and seeks to cast a wide net to identify all possible genes involved in a process. In contrast, targeted gene “knockouts” are made when one has an idea of what gene(s) might be involved in a process and wants to test them specifically. We briefly review these methods here, discussing their strengths and weaknesses. I. Chemical and UV mutagenesis. This method of generating mutants is rapid, inexpensive and fairly easy. Cells are treated with a mutagenic agent (e.g., ethyl or methyl methanesulfonate, nitrosoguanidine or ultraviolet light (Madigan et al. 2003)), grown briefly, and then plated for isolated colonies. A balance must be struck in how much to mutagenize the cells: too little treatment results in few mutants in the population and makes it difficult to find them among the remaining wild-type cells, while too much treatment frequently results in multiple mutations in a single cell which complications determinating causality later. Critical parameters to consider are mutagen concentration, mutagen type (some mutagens are stronger than others) and exposure time to the mutagen. In the case of UV mutagenesis, significant killing typically occurs, but this is a necessary side effect of achieving a sufficiently high frequency of mutation in the remaining viable population. The major downside to this type of mutagenesis is the difficulty in identifying the gene, or genes, disrupted by the mutation. This means that more cells must be screened for the defect of interest because a large proportion will be both phenotypically and genotypically wild-type. On the positive side, however, this method of mutagenesis enables subtle phenotypes (such as residues on proteins that affect their substrate specificity, or interactions with other proteins), as well as conditional
18
Newman & Gralnick
phenotypes (e.g., temperature sensitive mutations) or partial defects to be identified. This is particularly useful in the identification of essential genes, as they mutants can be generated under a condition that permits them to grow, and then shifted to a different condition that renders the mutation lethal. Another benefit of chemical/UV mutagenesis is that it does not depend on introducing foreign DNA into the strain, as the other techniques do (although later, this will be necessary to verify the nature of the mutation—see below). II. Transposon mutagenesis. Transposons are genetic elements that can move in either random, or non-random fashion into and out of chromosomes (Madigan et al. 2003). Facilitating this movement is an enzyme called transposase. These elements are believed to play a role in influencing evolution and can be found in all forms of life. Researchers have modified these elements to be used as tools to generate random mutations. Often times these modifications streamline the element to one or two genes, with one typically encoding resistance to an antibiotic. Plasmids used for transposon mutagenesis will contain both the transposon sequence, and a separate gene encoding the specific transposase. When the plasmid is transformed into a strain, the transposase can be made, which will then facilitate integration of the transposon on the plasmid into the chromosome in a random fashion. The optimal plasmids used for such a procedure are unable to replicate without specific genes, therefore subsequent selection of the population for strains resistant to the antibiotic will eliminate the parent strain. This leaves only mutant strains that have successfully integrated the transposon into their genome. A downside of transposon mutagensis is that genes that are essential for a process under the conditions where the transposon insertion is selected will be missed. This either requires the growth conditions for the selection of the transposon insertion to be different from those where the mutants will be identified, or the use of chemical or UV mutagenesis that permits the study of conditional/partial phenotypes. When a transposon mutant with the desired phenotype is identified, several methods exist to determine the disrupted gene. One way is by cloning the transposon from purified, digested (or sheared) genomic DNA using the antibiotic resistance property. This method will yield genomic DNA flanking the transposon. Primers designed to the transposon can then be used to generate sequence into the flanking region. Alternatively, a process called arbitrary PCR can identify a small portion of sequence adjacent to the transposon directly from genomic DNA without cloning (Caetano-Anolles 1993). If working with a fully sequenced strain, as little as 20 base pairs of sequence is sufficient to identify the location of the transposon. The process of identifying the transposon-mutated gene in an unsequenced strain is more cumbersome, but still straightforward. Two approaches are possible. One can make a genomic library from the mutant strain (a library comprises either plasmids or cosmids or fosmids, the latter holding significantly more DNA than plasmids), introduce this library into an appropriate host, and select for growth of cells that carry the transposon. Alternatively, the sequence identified through arbitrary PCR can be used to probe a genomic library of the wild-type. Using hybridization techniques, a probe consisting of DNA flanking the transposon can identify plasmids in the genomic library containing homologous sequence. Once these have been identified, the plasmids themselves can be sequenced, open reading frames (genes) identified, and the genomic region surrounding the transposon reconstructed. III. Targeted gene knockout. In situations where a particular gene is suspected of being involved in a process (for example, when the genome of an organism of interest has been sequenced, and one can perform genomic analysis on it), it is often helpful to mutagenize that gene to test its involvement. This is called making a targeted gene “knockout.” Several methods exist to specifically eliminate a gene of interest. However, to take advantage of this technique, the sequence of the both the gene, and its surrounding region must be known (Fig. 2A). Simple inactivation of a gene can occur by inserting an antibiotic resistance gene into the gene targeted for knockout. This can be accomplished by cloning the gene, and some flanking sequence, if
What Genetics Oěers Geobiology
19
Figure 2. Diagram of targeted gene knockout using a suicide vector. Refer to text for description of figure.
required, into a plasmid that will only replicate in a specific genetic background (Fig. 2B). Good examples of this class of plasmids are those that require the S protein (encoded by the pir gene, derived from the R6K plasmid (Kolter 1981) to replicate. By engineering the plasmid in an E. coli strain that contains the pir gene, one can construct such a vector. The idea is to clone the gene of interest, then modify the gene by inserting an antibiotic resistance cassette into the gene (which can be accomplished either by cloning or by fusion PCR, Fig. 2C). Ideally, this antibiotic resistance cassette will have at least 1,000 base pairs of sequence from the host strain on either side. This is important to facilitate homologous recombination into the genome of the strain of interest. Once the plasmid is constructed that contains the disrupted gene, the next step is to transform the strain with the newly constructed plasmid using a method described above. Strains that become resistant to both of the antibiotics encoded by the antibiotic resistance genes in the plasmid (antiA and antiB) have undergone a single crossover event (Fig. 2C), resulting in the integration of the plasmid into the genome (Fig. 2D). The strain cannot maintain the plasmid itself because it does not produce the S protein. By growing the strain without selecting for the endogenous plasmid resistance (antiA, Fig. 2), a second recombination
20
Newman & Gralnick
event can occur in some individuals within the population, resulting in the elimination of the plasmid DNA from the genome, along with the wild-type gene of interest (Fig. 2D, result 1). If selection for resistance to antibiotic B is maintained, the second recombination event (Fig. 2D, result 2) that reverts the strain back to wild-type, cannot occur. Variations on this technique can yield mutations such as total gene replacements, or even in-frame (non-polar) deletions of the gene of interest.
Genetic polarity in bacteria Bacteria typically contain a single, circular chromosome. Genes can be arranged in either direction in the genome and are typically clustered into operons. Genes organized in operons tend to be involved in the same process, although this is not always the case (Salgado et al. 2000). An operon is defined as multiple genes sharing the same genetic regulatory elements. A mutation that alters the capacity of the regulatory element to express downstream genes is called a “polar mutation.” This mutation can be any of the types discussed above, but is most often associated with transposon mutagenesis. Because of polarity, a gene disrupted by a transposon may not cause the identified phenotype itself, but a gene (or genes) downstream may be responsible. To attribute a specific process to a specific gene, the problem of polarity must be taken into account, and complementation experiments must be done to demonstrate that a defect can be restored by provision of a particular gene.
Step 3: Identifying mutants Identification of mutants defective in the process of interest is usually limited only by the robustness of the selection/screen, meaning that careful planning and thought should go into its design. We briefly illustrate this with four examples from our laboratory. I. Screen for mutants defective in reducing anthraquinone-2,6-disulfonate (AQDS) in S. oneidensis strain MR-1 (Newman and Kolter 2000). The first screen we performed involved the identification of S. oneidensis mutants that were defective in reducing the soluble humic acid analog AQDS. Because reduced AQDS is orange in color, wells containing mutants defective in this process remained clear whereas other wells turned orange. Mutants were grown overnight, then inoculated into minimal medium containing AQDS in 96-well microtiter plates (96 independent mutant strains per plate) and covered with mineral oil to limit oxygen diffusion into the wells. Two classes of mutants were isolated from this screen: mutants that were completely unable to reduce AQDS, and mutants that reduced AQDS slowly. A screen that can be visually monitored over time can facilitate identification of several classes of mutants with varying degrees of defectiveness. An example of this screen is shown in Figure 3. Note the lighter wells around the outside of the plate are likely due to re-oxidation of AQDS by oxygen diffusing into the plate. These effects could have been avoided by incubating the plates in an anaerobic chamber, which illustrates the importance of screen design for maximal efficiency in identifying potential mutants. II. Screen for iron hydr(oxide) reduction mutants in Shewanella oneidensis strain MR-1 (Gralnick and Newman, unpublished). To identify mutant strains of S. oneidensis defective in the ability to reduce insoluble iron hydr(oxide), we grew mutant strains overnight aerobically in 96-well microtiter plates in LB. These cultures were then transferred to minimal medium that contained iron hydr(oxide) as the sole electron acceptor for growth. Plates were incubated without shaking overnight, then a compound (ferrozine) was used to detect the presence of ferrous iron [Fe(II)], the product of iron hydr(oxide) reduction. Because this is a colormetric assay (when ferrozine binds to Fe(II), a purple color is formed), putative mutants were easily identified by eye as wells that did not significantly change color. These mutants were retested by restreaking from the initial overnight culture, then checked again for their capacity to reduce iron hydr(oxide) to confirm the phenotype. Retesting is very important in this process, as it
What Genetics Oěers Geobiology
21
Figure 3. Mutant screen for AQDS reduction-deficient mutants in S. oneidensis. Screen was performed as indicated in the text. Dark wells represent reduced AQDS, circled well represents a mutant defective in AQDS reduction. See (Newman and Kolter 2000) for further details.
allows one to be liberal in the initial round of mutant identification, which permits not only false positives to come through, but also mutants with subtle phenotypes. Using this method, we screened over 8,000 mutants for defects in iron hydr(oxide) reduction, yielding about 60 mutants. It was only after identifying several mutants that we realized a flaw in our screen design—any strain that was unable to grow in minimal medium would be identified as defective in iron hydr(oxide) reduction. Therefore, many of the mutants we isolated were simply unable to grow in minimal medium because they lacked the capacity to produce certain essential amino acids or vitamins absent from the medium (this class of mutants are called auxotrophs). In the next version of this screen, we performed both our initial mutant selection and our screen in a medium containing amino acids and vitamins. This allowed auxotrophic strains to appear phenotypically wild-type rather than appear as mutants defective in iron hydr(oxide) reduction. This example illustrates the importance of screen construction to maximize the probability of identifying interesting mutants. III. Screen for mutants defective in photosynthetic Fe(II) oxidation in Rhodopseudomonas palustris strain TIE-1 (Jiao et al. 2005). In this screen, we used a similar approach to that described to identify mutants defective in iron hydr(oxide) reduction; however, some additional steps were required to maximize the efficiency of the screening process. Transposon-insertion mutants of R. palustris strain TIE-1 were pre-grown aerobically in 96-well microtiter plates, then transferred to photosynthetic medium and grown with hydrogen as the electron donor. Once strains had reached sufficient density (3 days), they were centrifuged and resuspended in a buffer containing Fe(II). After several hours, ferrozine was added to visually observe the presence or absence of Fe(II) in each well. In this screen, wells containing mutants defective in phototrophic Fe(II) oxidation appeared purple (indicating the presence of Fe(II)), whereas clear wells revealed strains with wild-type activity. A key difference from the S. oneidensis screen is that this was a cell suspension assay, because growth of the strain was not required (i.e., the length of the assay was shorter than the doubling time of the cells). In this screen, apparent loss of Fe(II) oxidation activity could have resulted
22
Newman & Gralnick
from a blockage in a step required for Fe(II) uptake or iron oxidation. To differentiate between these two possibilities, we performed a secondary screen measuring total iron and Fe(II) for filtered and unfiltered samples. In this manner, we were able to narrow the pool of candidate mutants down to only those with defects in Fe(II) oxidation. IV. Selection/screen for mutants defective in magnetite production in Magnetospirillum sp. AMB-1 (Komeili et al. 2004). Finally, perhaps our favorite mutant hunt due to its simplicity was one designed to identify genes required for magnetite formation in Magnetospirillum sp. AMB-1 (Komeili et al. 2004). Cells were first mutagenized and grown under a condition where they did not produce magnetite. They then were pooled and transferred en mass to a condition where they could produce magnetite. Magnets were placed next to the tubes containing the entire mutagenized population to remove magnetic individuals, thus allowing for “mnm” mutants (magnetosome mutants) to be enriched. Individuals that passed through this selection, were screened individually under conditions that promoted formation of magnetite in microtiter plates. Once strains achieved the proper cell density, the entire plate was placed on top of a set of 24 magnets. The magnets were arranged so that they were positioned at the intersection of four individual wells of the microtiter plate. Magnetic strains were pulled toward the edge of their individual well, whereas non-magnetic (or poorly magnetic) strains remained at the center of the well.
Step 4: Mutant verification Regardless of the method of mutagenesis, after identifying a mutant, it is important to verify that a particular gene is responsible for the mutant phenotype (as opposed to the phenotype being due to a random mutation elsewhere in the chromosome). The process of “complementation” is used for this purpose. In complementation, the particular gene, or set of genes thought to be required for a process (usually determined by sequencing around the site of a transposon insertion), can be cloned from the wild-type into a plasmid that has the capacity to replicate in the mutant strain. If the plasmid contains sufficient information to promote expression of the cloned gene, the phenotype of the mutant should be reversed, or complemented, and the mutant’s phenotype should be restored to that of the wild-type. This experiment demonstrates causality, verifying the role of the disrupted gene in the process of interest. Complementing point mutants is a more difficult task. A genomic library must be constructed from a wild-type background and then plasmids (or cosmids) containing the library transferred into the mutant strain of interest. Transformants are then screened for complementation of the mutant phenotype. Once a plasmid is identified that will complement the mutant defect, it can be sequenced to identify the genes it contains. Individual genes can then be cloned to test for complementation, or the original plasmid can be fragmented and sub-cloned to determine the minimal amount of DNA required for complementation. Once the affected gene is identified, the mutant version of the gene can be amplified and sequenced to determine the nature of the original mutation.
A brief note on phage Phage (bacterial viruses) have played a critical role in not only our understanding of genetics and molecular biology, but also facilitating genetic work in a number of organisms. Modified versions of transducing phage that package host genomic DNA at a high frequency can be used to perform many genetic tasks, from generating isogenic strains (two strains that differ genotypically in a single locus) to mapping point mutations and even generating mutant libraries. Because our goal in this chapter is merely to provide an introduction to developing a genetic system, we will not cover genetic techniques associated with phage beyond noting that developing a robust and efficient transducing phage system can add an additional level of sophistication to a genetic system.
What Genetics Oěers Geobiology
23
Step 5: Mutant analysis Once mutants have been identified and the involvement of particular genes in the process of interest verified, many new avenues become open for exploration. By identifying a variety of mutants with similar phenotypes, one can begin to construct a model for how a process works at the molecular level. Specific studies can be initiated to study regulation of genes to determine the precise environmental conditions that trigger the organism to catalyze the process of interest. Putative marker genes for this activity may be identified, potentially leading to the design of molecular tools to monitor when this process is active in a given environment (Malasarn et al. 2004). Once regulatory elements (e.g., promoters) have been identified for a gene, a strain can be engineered to “report” when it is expressing that gene. For example, a promoter from a gene of interest can be cloned into a plasmid and used to drive expression of a protein that can be detected by fluorescence or colormetric assay (e.g., green fluorescent protein, GFP or betagalactosidase; reviewed by Kohler et al. 2000). Manipulating various environmental conditions in the laboratory can provide precise information regarding when the engineered strain is expressing the gene of interest by quantifying fluorescence. Finally, the biochemical properties and subcellular localization of the gene product can be studied, either within the host strain, or by cloning and over-expressing the gene that encodes it in another organism. Help in understanding the specific function of genes identified through mutagenesis can come from analyzing the amino acid sequence encoded by the gene. A tool that can provide significant clues is the BLAST (Basic Local Alignment Search Tool) search engine available at NCBI (National Center for Biotechnology Information – www.ncbi.nlm.nih.gov). BLAST can be used to infer functional and evolutionary relationships between amino acid or nucleotide sequences. This program compares sequences entered by the user to a selected database, which can include all known sequences. The program assigns a statistical significance to matches within the database. If the gene of interest encodes a protein with a significant match to a protein of known function in the database, this may suggest it has a similar activity. If the protein has no significant match or is only similar to other proteins of unknown function, there are several additional analyses that can be performed on the sequence to gain insight into its function. Other useful types of searches are motif, post-translational modification and topology. Several programs in each category can be found on the ExPASy (Expert Protein Analysis System) web server (www.expasy.org/tools/), which is maintained by the Swiss Institute of Bioinformatics. Programs found here will allow further analysis of the protein sequence of interest to predict characteristics such as subcellular localization, co-factor binding and transmembrane domains. For example, if the protein is predicted to bind a redoxactive cofactor such as heme, we may hypothesize that it plays a role in electron transfer. As we noted previously, however, it is imperative to remember that database predictions are only suggestive, and must be demonstrated experimentally. However, programs such as these greatly help formulate testable models for the function of a protein.
CONCLUSIONS In this chapter, we have focused our discussion on how bacterial genetics can help unravel the geobiology of the past, and have provided an introduction to basic genetic principles that we hope will encourage those less familiar with genetics to use it as a tool in their research. Not only is making a connection between genetics and geobiology a stimulating intellectual endeavor, but it is also great fun in practice. To close by returning to the analogy with which we started, when it comes to understanding the biogeochemical evolution of the Earth, we must accept that we will never know “whodunit” with absolute certainty, short of the invention of a time machine. But even if after making millions of mutants, we still don’t have a clue about the past, without question, applying genetics to geobiology affords us an excellent
24
Newman & Gralnick
opportunity to make fundamental discoveries about how modern microorganisms shape the geochemistry of their environment.
ACKNOWLEDGMENTS We wish to thank the students of the USC International Course in Geobiology (sponsored by the Agouron Institute), whose enthusiasm for genetics fed our own, and compelled us to think more critically about how genetics can help solve problems in geobiology. In addition, we would like to express our gratitude to the GPS division at Caltech, for nurturing our vision and our work, and the students and postdocs of the Newman lab (past and present) for putting it all together. Special thanks to Laura Croal, Arash Komeili and Doug Lies for constructive comments on the manuscript. We acknowledge the Luce Foundation, Packard Foundation, Agouron Institute, ONR, DARPA, NSF, Beckman Institute, and HHMI for financial support.
REFERENCES Anbar AD (2004) Molybdenum stable isotopes: observations, interpretations and directions. Rev Mineral Geochem 55:429-454 Avery OT, MacLeod CM, McCarty M (1944) Induction of transformation by a desoxyribonucleic acid fraction isolated from Pneumococcus type III. J Exp Med 79:137-158 Beckwith J, Silhavy TJ (1992) The Power of Bacterial Genetics: a Literature-Based Course. Cold Spring Harbor Laboratory Press, New York Beja O, Aravind L, Koonin EV, Suzuki MT, Hadd A, Nguyen LP, Jovanovich SB, Gates CM, Feldman RA, Spudich JL, Spudich EN, DeLong EF (2000) Bacterial rhodopsin: evidence for a new type of phototrophy in the sea. Science 289:1902-6 Benzer S, Champe SP (1962) A change from nonsense to sense in the genetic code. Proc Nat Acad Sci USA 48:1114-1121 Brasier MD, Green OR, Jephcoat AP, Kleppe AK, Van Kranendonk MJ, Lindsay JF, Steele A, Grassineau NV (2002) Questioning the evidence for Earth’s oldest fossils. Nature 416:76-81 Brocks JJ, Buick R, Summons RE, Logan GA (2003) A reconstruction of Archean biological diversity based on molecular fossils from the 2.78 to 2.45 billion-year-old Mount Bruce Supergroup, Hamersley Basin, Western Australia. Geochim Cosmochim Acta 67:4321-4335 Brocks JJ, Logan GA, Buick R, Summons RE (1999) Archean molecular fossils and the early rise of eukaryotes. Science 285:1033-1036 Brocks JJ, Pearson A (2005) Building the biomarker tree of life. Rev Mineral Geochem 59:233-258 Caetano-Anolles G (1993) Amplifying DNA with arbitrary oligonucleotide primers. PCR Methods Appl 3: 85-94 Canfield DE, Habicht KS, Thamdrup B (2000) The Archean sulfur cycle and the early history of atmospheric oxygen. Science 288:658-661 Canfield DE, Thamdrup B, Kristensen E (2005) Aquatic Geomicrobiology, Advances in Marine Biology. Elsevier, San Diego Coppi MV, Leang C, Sandler SJ, Lovley DR (2001) Development of a genetic system for Geobacter sulfurreducens. Appl Environ Microbio 67:3180-3187 Corsetti FA, Storrie-Lombardi MC (2003) Lossless compression of stromatolite images: A biogenicity index? Astrobiology 3:649-655 Crick FHC, Barnett L, Brenner S, Watts-Tobin RJ (1961) General nature of the genetic code for proteins: Nature 4809:1227-1232 Croal LR, Gralnick JA, Malasarn D, Newman DK (2004a) The genetics of geochemistry. Annu Rev Genet 38: 175-202 Croal LR, Johnson CM, Beard BL, Newman DK (2004b) Iron isotope fractionation by Fe(II)-oxidizing photoautotrophic bacteria. Geochim Cosmochim Acta 68:1227-1242 Croal LR, Jiao Y, Newman DK (2005) unpublished data DiChristina TJ, Moore CM, Haller CA (2002) Dissimilatory Fe(III) and Mn(IV) reduction by Shewanella putrefaciens requires ferE, a homolog of the pulE (gspE) type II protein secretion gene. J Bacteriol 184: 142-151 Doolittle WF (1999) Phylogenetic classification and the universal tree. Science 284:2124-2128
What Genetics Oěers Geobiology
25
Farquhar J, Bao H, Thiemens M (2000) Atmospheric influence of Earth’s earliest sulfur cycle. Science 289: 756-758 Friedrich MW (2002) Phylogenetic analysis reveals multiple lateral transfers of adenosine-5-phosphosulfate reductase genes among sulfate-reducing microorganisms. J Bacteriol 184:278-289 Gorby YA, Beveridge TJ, Blakemore RP (1988) Characterization of the bacterial magnetosome membrane. J Bacteriol 170:834-841 Grotzinger JP, Knoll AH (1999) Stromatoites in Precambrian carbonates: Evolutionary mileposts or environmental dipsticks? Annu Rev Earth Planet Sci 27:313-358 Gupta A, Meyer JM, Goel R (2002) Development of heavy metal-resistant mutants of phosphate solubilizing Pseudomonas sp. NBRI 4014 and their characterization. Curr Microbiol 45:323-7 Habicht KS, Gade M, Thamdrup B, Berg P, Canfield DE (2002) Calibration of sulfate levels in the Archaen ocean. Science 298:2372-2374 House CH, Runnegar B, Fitz-Gibbon ST (2003) Geobiological analysis using whole genome-based tree building applied to the Bacteria, Archaea, Eukarya. Geobiology 1:15-26 Jiao Y, Kappler A, Croal LR, Newman DK (2005) Isolation and characterization of a genetically-tractable photoautotrophic Fe(II)-oxidizing bacterium, Rhodopseudomonas palustris strain TIE-1. Appl Environ Microbiol 71:4487-4496 Jones GE, Starkey RL (1962) Some necessary conditions for fractionation of stable isotopes of sulfur by Desulfovibrio desulfuricans. In: Biogeochemistry of Sulfur Isotopes. NSF Symposium. Jensen ML (ed.) Yale University Press, New Haven, CT, p 61-79 Judson HF (1996) The Eighth Day of Creation. Cold Spring Harbor Laboratory Press, New York Kappler A, Pasquero C, Konhauser KO, Newman DK (2005) Deposition of banded iron formations by phototrophic Fe(II)-oxidizing bacteria. Geology 33(11):in press Karkhoff-Schweizer RR, Huber DPW, Voordouw G (1995) Conservation of the genes for dissimilatory sulfite reductase from Desulfovibrio vulgaris and Archaeoglobus fulgidus allows their detection by PCR. Appl Environ Microbiol 61:290-296 Kauffman S (1993) The Origins of Order. Oxford University Press, Oxford Kelly SD, Laskowski M, Qasim MA (2005) Tje rp;e pf scaffp;domg om standard mechanism serine proteinase inhibitors. Protein Peptie Lett 12:465-471 Kemner KM, Kelly SD, Lai B, Maser J, O’Loughlin EJ, Sholto-Douglas D, Cai ZH, Schneegurt MA, Kulpa CF, Nealson KH (2004) Elemental and redox analysis of single bacterial cells by X-ray microbeam analysis. Science 306:686-687 Kemp ALW, Thode HG (1968) The mechanism of the bacterial reduction of sulfate and of sulfite from isotope fractionationstudies. Geochim Cosmochim Acta 32:71-91 Kirschvink JL, Gaidos EJ, Bertani LE, Beukes NJ, Gutzmer J, Maepa LN, Steinberger RE (2000) Paleoproterozoic snowball Earth: Extreme climatic and geochemical global change and its biological consequences. Proc Natl Acad Sci USA 97:1400-1405 Kluyver AJ (1924) Unity and diversity in the metabolism of microorganisms. Chemisch Weekblad 21:226 Kohler S, Belkin S, Schmid RD (2000) Reporter gene bioassays in environmental analysis. Fresenius J Anal Chem 366:769-79 Kolter R (1981) Replication properties of plasmic R6K. Plasmid 5:2-9 Komeili A, Vali H, Beveridge TJ, Newman DK (2004) Magnetosome vesicles are present before magnetite formation, and MamA is required for their activation. Proc Natl Acad Sci USA 101:3839-3844 Lederberg J (1946) Gene recombination and linked segregations in E. coli. Genetics 32:505-525 Madigan MT, Martinko JM, Parker J (2003) Bacterial Genetics, Biology of Microorganisms. Prentice Hall, Upper Saddle River, NJ, p. 264-320 Malasarn, D, Saltikov W, Campbell KM, Santini JM, Hering JG, Newman DK (2004) arrA is a reliable marker for As(V) respiration. Science 306:455-455 McKay DS, Gibson Jr. EK, Thomas-Keprta KL, Vali H, Romanek CS, Clemett SJ, Chiller XDF, Maechling CR, Zare RN (1996) Search for past life on Mars: possible relic biogeneic activity in martian meteorite ALH84001. Science 273:924-930 Metcalf WM, Zhang JK, Apolinario E, Sowers KR, Wolfe RS (1997) A genetic system for Archea of the genus Methanosarcina: liposome-mediated transformation and construction of shuttle vectors: Proc Natl Acad Sci USA 94:2626-2631 Michaelis W, Seifert R, Nauhaus K, Treude T, Thiel V, Blumenberg M, Knittel K, Gieseke A, Peterknecht K, Pape T, Boetius A, Amann R, Jorgensen BB, Widdel F, Peckmann J, Pimenov NV, Gulin MB (2002) Microbial reefs in the Black Sea fueled by anaerobic oxidation of methane. Science 297:1013-1015 Myers JM, Myers CR (2002) Genetic complementation of an outer membrane cytochrome omcB mutant of Shewanella putrefaciens MR-1 requires omcB plus downstream DNA. Appl Environ Microbiol 68:2781-93 Nealson KH, Scott J (2004) Ecophysiology of the Genus Shewanella. In: The Prokaryotes. Dworkin M (ed) Springer-Verlag, New York. http://141.150.157.117:8080/prokPUB/chaphtm/394/COMPLETE.htm
26
Newman & Gralnick
Nelson KE, Methé B (2005) Metabolism and genomics: adventures derived from complete genome sequencing. Rev Mineral Geochem 59:279-294 Newman DK, Ahmann D, Morel FMM (1998) A brief review of microbial arsenate respiration. Geomicrobiology 15:255-68 Newman DK, Kennedy EK, Coates JD, Ahmann D, Ellis DJ, Lovley DR, Morel FMM (1997) Dissimilatory arsenate and sulfate reduction in Desulfotomaculum auripigmentum sp. nov. Arch Microbiol 168:380-388 Newman DK, Kolter R (2000) A role for excreted quinones in extracellular electron transfer. Nature 405:94-97 Nixon JEJ, Wang A, Field J, Morrison HG, McArthur AG, Sogin ML, Loftus BJ, Samuelson J (2002) Evidence for lateral transfer of genes encoding ferredoxins, nitroreductases, NADH oxidase, and alcohol dehydrogenase 3 from anaerobic prokaryotes to Giardia lamblia and Entamoeba histolytica. Eukaryotic Cell 1:181-190 Orphan J, House CH, Hinrichs KU, McKeegan KD, DeLong EF (2001) Methane-consuming archaea revealed by directly coupled isotopic and phylogenetic analysis. Science 293:484-487 Pace NR (1997) A molecular view of microbial diversity and the biosphere. Science 276:734-740 Pardee AB, Jacob F, Monod J (1959) The genetic control and cytoplasmic expression of “inducibility” in the synthesis of B-galactosidase by E. coli. J Mol Biol 1:165-178 Peck RF, Dassarma S, Krebs MP (2000) Homologous gene knockout in the archaeon Halobacterium salinarum with ura3 as a counterselectable marker. Mol Micro 35:667-676 Pritchett MA, Metcalf WM (2005) Genetic, physiological and biochemical characterization of multiple methanol methyltrasferase isozymes in Methanosarcina acetivorans C2A. Mol Micro 56:1183-1194 Ram RJ, VerBerkmoes NC, Thelen MP, Tyson GW, Baker BJ, Blake RC, Shah M, Hettich RL, Banfield JF (2005) Community proteomics of a natural microbial biofilm. Science 308:1915-1920 Riesenfeld CS, Schloss PD, Handelsman J (2004) Metagenomics: genomic analysis of microbial communities. Annu Rev Genet 38:525-552 Salgado H, Moreno-Hagelsieb G, Smith TF, Collado-Vides J (2000) Operons in Escherichia coli: genomic analyses and predictions. Proc Natl Acad Sci USA 97:6652-7 Saltikov CW, Cifuentes A, Venkateswaran K, Newman DK (2003) The ars detoxification system is advantageous but not required for As(V) respiration by the genetically tractable Shewanella species strain ANA-3. Appl Environ Microbiol 69:2800-2809 Saltikov CW, Newman DK (2003) Genetic identification of a respiratory arsenate reductase. Proc Natl Acad Sci USA 100:10983-10988 Schopf JW (1993) Microfossils of the early archean apex chert - new evidence of the antiquity of life. Science 260:640-646 Schrenk MO, Edwards KJ, Goodman RM, Hamers RJ, Banfield JF (1998) Distribution of thiobacillus ferrooxidans and leptospirillum ferrooxidans: implications for generation of acid mine drainage. Science 279:1519-1522 Shen YA, Buick R, Canfield DE (2001) Isotopic evidence for microbial sulphate reduction in the early Archaean era. Nature 410:77-81 Shuman H (2003) Just toothpicks and logic: How some labs succeed at solving complex problems. J Bacteriol 185:387-390 Simonson AB, Servin JA, Skophammer RG, Herbold CW, Rivera MC, Lake JA (2005) Decoding the genomic tree of life. Proc Natl Acad Sci USA 102:6608-6613 Summons RE, Jahnke LL, Hope JM, Logan GA (1999) 2-Methylhopanoids as biomarkers for cyanobacterial oxygenic photosynthesis. Nature 400:554-557 Tyson GW, Chapman J, Hugenholz P, Allen EE, Ram RJ, Richardwon PM, Solovyev VV, Rubin EM, Rokhsar DS, Banfield JF (2004) Community structure and metabolism through reconstruction of microbial genomes from the environment. Nature 428:37-43 van Waasbergen LG, Hildebrand M, Tebo BM (1996) Identification and characterization of a gene cluster involved in manganese oxidation by spores of the marine Bacillus sp. strain SG-1. J Bacteriol 178:35173530 Watters WA, Grotzinger JP (2001) Digital reconstruction of calcified early metazoans, terminal Proterozoic Nama Group, Namibia. Paleobiology 27:159-171 Weiss BP, Kim SS, Kirschvink JL, Kopp RE, Sankaran M, Kobayashi A, Komeili A (2004) Magnetic tests for magnetosome chains in Martian meteorite ALH84001. Proc Natl Acad Sci USA 101:8281-8284 Whitaker RJ, Banfield JF (2005) Population dynamics through the lens of extreme environments. Rev Mineral Geochem 59:259-278 Xiong J, Fischer WM, Inoue K, Nakahara M, Bauer CE (2000) Molecular evidence for the early evolution of photosynthesis. Science 289:1724-30 Zhang JH, Dawes G, Stemmer WPC (1997) Directed evolution of a fucosidase from a galactosidase by DNA shuffling and screening. Proc Natl Acad Sci USA 94:4504-4509
3
Reviews in Mineralogy & Geochemistry Vol. 59, pp. 27-52, 2005 Copyright © Mineralogical Society of America
Enzymology of Electron Transport: Energy Generation With Geochemical Consequences Thomas J. DiChristina School of Biology Georgia Institute of Technology Environ Sci Technol Building Atlanta, Georgia, 30332, U.S.A.
[email protected]
Jim K. Fredrickson and John M. Zachara Fundamental Sciences Division Pacific Northwest National Laboratory P.O. Box 999, MSIN P7-50 Richland, Washington, 99352, U.S.A.
[email protected]
[email protected]
INTRODUCTION Dissimilatory metal-reducing bacteria (DMRB) are important components of the microbial community residing in redox-stratified freshwater and marine environments. DMRB occupy a central position in the biogeochemical cycles of metals, metalloids and radionuclides, and serve as catalysts for a variety of other environmentally important processes including biomineralization, biocorrosion, bioremediation and mediators of ground water quality. DMRB are presented, however, with a unique physiological challenge: they are required to respire anaerobically on terminal electron acceptors which are either highly insoluble (e.g., Fe(III)- and Mn(IV)-oxides) and reduced to soluble end-products or highly soluble (e.g., U(VI) and Tc(VII)) and reduced to insoluble end-products. To overcome physiological problems associated with metal and radionuclide solubility, DMRB are postulated to employ a variety of novel respiratory strategies not found in other gram-negative bacteria which respire on soluble electron acceptors such as O2, NO3−, SO42−, and CO2. The novel respiratory strategies include 1) direct enzymatic reduction at the outer membrane, 2) electron shuttling pathways and 3) metal solubilization by exogenous or bacterially-produced organic ligands followed by reduction of soluble organic-metal compounds. The first section of this chapter highlights the latest findings on the enzymatic mechanisms of metal and radionuclide reduction by two of the most extensively studied DMRB (Geobacter and Shewanella), with particular emphasis on electron transport chain enzymology. These advances have drawn significantly upon genomic data for isolated microorganisms from the genera Geobacter and Shewanella (see chapter by Nelson and Methé 2005). The second section emphasizes the geochemical consequences of DMRB activity, including the direct and indirect effects on metal solubility, the reductive transformation of Fe- and Mn-containing minerals, and the biogeochemical cycling of metals at redox interfaces in chemically stratified environments.
ENZYMATIC BASIS OF IRON AND MANGANESE REDUCTION The electron transport systems of gram-negative bacteria are generally described as inner membrane (IM)-associated electron and proton carriers that 1) mediate electron transfer from 1529-6466/05/0059-0003$05.00
DOI: 10.2138/rmg.2005.59.3
28
DiChristina, Fredrickson, Zachara
primary donor to terminal electron acceptor and 2) conserve energy released during electron transfer to the generation of ATP (Madigan and Martinko 2006). Figure 1 displays the electron transport chain enzymology of Escherichia coli respiring high concentrations of dissolved O2 as electron acceptor. The E. coli electron transport system is modular in design with a membrane-soluble quinone pool (Q) linking dehydrogenase complexes at the head end with terminal reductase complexes at the terminus. Dehydrogenase complexes include electron donor-specific oxido-reductases (e.g., NADH dehydrogenase) that couple oxidation of specific electron donors to reduction of a series of membrane-associated electron carriers arranged in order of increasingly more positive electric potential (E0c). These electron carriers include flavoproteins (Fp) and FeS proteins that translocate protons across the IM to the periplasm and direct electrons to the Q pool, respectively. Reduced Q is subsequently protonated to QH2 at the inner aspect of the IM. QH2 carries protons across the IM to the periplasm and transfers electrons to cytochrome b556 and b562, two components of the terminal reductase complex that transfer electrons to cytochrome o (topologically located at the inner aspect of the IM) and ultimately to O2. Cytochrome o catalyzes both the translocation of a proton across the IM to the periplasm and the terminal reduction of O2 to H2O. A proton motive force (PMF) is generated by 1) proton translocation across the IM by dehydrogenase complexes, QH2 and cytochrome o, and 2) proton consumption during the terminal reduction of O2 to H2O by cytochrome o. PMF generated in this manner drives ATP synthesis as protons are translocated back into the cytoplasm through an IM-localized ATPase, catalyzing the phosporylation of ADP to ATP (Madigan and Martinko 2006). Fe(III)- and Mn(IV)-respiring DMRB, on the other hand, are presented with a unique physiological problem: they are required to respire anaerobically on terminal electron acceptors found largely in crystalline form or as amorphous (oxy)hydroxide particles presumably unable to contact IM-localized electron transport systems. A DMRB culture actively respiring solid Mn(IV) oxides as anaerobic electron acceptor is displayed in Figure 2. To overcome the problem of respiring solid electron acceptors, Fe(III)- and Mn(IV)-respiring DMRB are postulated to employ a variety of novel respiratory strategies not found in other gram-negative bacteria that respire on soluble electron acceptors such as O2, NO3−, SO42− and CO2 including 1) direct enzymatic reduction of solid Fe(III) and Mn(IV) oxides via outer membrane (OM)-localized metal reductases (Myers and Myers 1992, 2003a; Beliaev and Saffarini 1998; DiChristina et al. 2002) 2) a two-step, electron shuttling pathway in which exogenous electron shuttling compounds (e.g., humic acids, melanin, phenazines, antibiotics, AQDS) are first enzymatically reduced and subsequently chemically oxidized by the solid Fe(III) and Mn(IV) oxides in a second (abiotic) electron transfer reaction (Lovley et al. 1996;
2H+
NADH + H+
2H+ 2e-
FeS
NAD+
2e-
Q QH2 2H+
H+
H+ 2e- b556 2eb562 1/
2O2
o + 3H+
H2O ADP H+ ATP
ELECTRON TRANSPORT SYSTEM
ATPase
Figure 1. Electron transport and proton translocation processes of the E. coli aerobic respiratory chain at high O2 concentrations with NADH2 as electron donor. Fp, flavoprotein; FeS, iron-sulfur protein; Q, quinone pool; b556 and b562, b-type cytochromes; o, cytochrome o.
Enzymology of Electron Transport
29
Figure 2. DMRB Shewanella putrefaciens strain 200 actively respiring solid Mn(IV) oxides as anaerobic electron acceptor. (A) Anaerobic cell suspensions at the beginning (tube on left side) and end (tube on right side) of a 24-hour anaerobic incubation period (note color change indicative of reductive dissolution of black Mn(IV) particles to clear, soluble reduced Mn), (B) phase contrast micrograph of cells coating the surface of a Mn(IV) oxide particle at the beginning of the anaerobic growth period, (C) epifluorescence micrograph of same field of view as in (B) with acridine orange-stained cells, (D) epifluorescence micrograph of acridine orange-stained cells at the end of the 24-hour anaerobic incubation period (note the absence of the solid Mn(IV) particles).
Coates et al. 1998, 2002; Newman and Kolter 2000; Turick et al. 2002; Hernandez et al. 2004; DiChristina et al. 2005) 3) an analogous two-step reduction pathway involving endogenous, electron shuttling compounds (Newman and Kolter 2000; Saffarini et al. 2002) and 4) a twostep, Fe(III) solubilization-reduction pathway in which solid Fe(III) oxides are first dissolved by exogenous or bacterially-produced organic complexing ligands, followed by uptake and reduction of the soluble organic Fe(III) forms by periplasmic Fe(III) reductases (Arnold et al. 1988; Lovley and Woodward 1996; Pitts et al. 2003). Although the number of DMRB species continues to increase rapidly and has now reached nearly 100 (Lovley et al. 2004), the enzymatic basis of electron transfer to metals has been most extensively studied in metalrespiring members of the genera Geobacter and Shewanella. The following section highlights the latest findings on the enzymatic basis of Fe(III) and Mn(IV) reduction by Geobacter and Shewanella, with particular emphasis on electron transport chain enzymology.
Direct enzymatic reduction at the outer membrane Shewanella and Geobacter catalyze the direct enzymatic reduction of solid Fe(III) and Mn(III,IV) oxides via an electron transport chain arranged in a canonical, highly branched fashion. Hydrogenase and flavin-containing dehydrogenase complexes of both Shewanella and Geobacter (Myers and Myers 1993a; Lloyd et al. 2000) oxidize a variety of electron donors (e.g., H2, NAD(P)H) and transfer electrons to a menaquinone pool (Myers and Nealson 1990; Myers and Myers 1993b; Nevin and Lovley 2002; Saffarini et al. 2002). In S. oneidensis,
30
DiChristina, Fredrickson, Zachara
menaquinol diffuses within the IM to the quinol oxidation site of CymA, a 21 kDa tetraheme cytochrome c that oxidizes menaquinol and is thought to transfer electrons to MtrA, a 32 kDa decaheme cytochrome c located in the periplasm (Myers and Myers 2000; Schwalb et al. 2003). In G. sulfurreducens, PpcB (a 36 kDa diheme cytochrome c) essentially carries out the same function as CymA (although CymA and PpcB display little or no amino acid sequence homology), oxidizing the menaquinol pool and transferring electrons to PpcA, a 10 kDa triheme cytochrome c located in the G. sulfurreducens periplasm (Lloyd 2003). As with PpcB, G. sulfurreducens PpcA does not display significant sequence similarity to any S. oneidensis c-type cytochromes, suggesting that they have a different evolutionary origin (Lloyd 2003). Electrons from the S. oneidensis menaquinol pool are transferred to one of four electronaccepting, c-type hemes within CymA, followed by inter-heme electron transfer (according to decreasing heme redox potential) until a final transfer is made to subsequent electron carriers in the periplasmic space (Harada et al. 2002). cymA-deficient mutants of S. oneidensis are unable to reduce NO3−, Fe(III), Mn(IV) or fumarate as electron acceptor (Myers and Myers 1997), an indication that CymA is a central branchpoint of the S. oneidensis electron transport system. ppcB-deficient mutants of G. sulfurreducens, on the other hand, are unable to reduce Fe(III), but retain the ability to reduce fumarate (Butler 2003). The principles of, and rationale for genetic manipulation (including generation of metal respiration-deficient mutants) is discussed in the chapter by Newman and Gralnick (2005). Electron transport from MtrA in S. oneidensis and PpcA in G. sulfurreducens to solid Fe(III) oxides is postulated to proceed via an electron transport chain that spans the periplasmic space and terminates on the outside face of the OM (Myers and Myers 1993a; Leang et al. 2003). Electron transfer to solid Fe(III) and Mn(IV) in G. sulfurreducens proceeds via OmcB, an 87 kDa, 12-heme cytochrome c tentatively assigned to the inner aspect of the OM (Leang et al. 2003). Correspondingly, Fe(III)-grown G. sulfurreducens cells display higher levels of omcB transcripts (Chin et al. 2004; Methé et al. 2005). All G. sulfurreducens OM cytochromes, however, are not necessarily involved in electron transport to Fe(III) since OmcC, an OM cytochrome displaying 73% identity to OmcB, is not required for Fe(III) reduction (Leang et al. 2003; Leang and Lovley 2005) and correspondingly, Fe(III)-grown G. sulfurreducens cells do not display higher levels of omcC transcripts (Chin et al. 2004). The terminal electron transfer step to solid Fe(III) and Mn(IV) oxides in G. sulfurreducens is postulated to be catalyzed by either OmcD or OmcE, two c-type cytochromes that may be exposed on the cell surface (Methé et al. 2005). Results of DNA microarray analysis (as described in the chapter by Nelson and Methé 2005) will identify electron transport chain components with elevated transcript levels during growth on specific electron acceptors. Similar to Geobacter, the Shewanella OM proteins involved in terminal steps of electron transfer to solid Fe(III) and Mn(IV) oxides have not been definitively identified, yet most likely include several c-type cytochromes (Myers and Myers 1992, 2003a). Fe(III) reduction activity is detected in wild-type Shewanella OM fractions (Myers and Myers 1993a), an activity that is severely impaired in Shewanella mutants lacking OM proteins, including several multi-heme c-type cytochromes. The S. oneidensis genome encodes 42 predicted c-type cytochromes (Heidelberg et al. 2002), including those in the mtrDEF-omcA-mtrCAB gene cluster. MtrA and MtrD are decaheme c-type cytochromes that display 99% similarity (Pitts et al. 2003), suggesting they may provide complementary function. MtrD is OM-associated, but may be oriented toward the periplasm (Pitts et al. 2003) and therefore not in position to contact solid Fe(III) directly. MtrB is a putative beta-barrel protein postulated to be involved in OM localization of the c-type cytochromes OmcA and MtrC that are involved in electron transfer to Fe(III) and Mn(IV) (Beliaev and Saffarini 1998; Myers and Myers 2002). mtrB mutants display a complete inability to reduce Mn(IV) and are severely, but not completely, impaired in Fe(III) reduction activity, yet retain the ability to reduce all other electron acceptors (Beliaev
Enzymology of Electron Transport
31
and Saffarini 1998). MtrC is an OM-localized decaheme, c-type cytochrome required for both Fe(III) and Mn(IV) reduction activity. OmcA, on the other hand, is an OM decaheme c-type cytochrome involved in electron transport to Mn(IV) and not Fe(III) (Myers and Myers 2001). omcA-deficient mutants reduce Mn(IV) at 45% wild-type rates. Interestingly, mtrC overexpression in an omcA-deficient mutant restores Mn(IV) reduction activity to greater than wild-type rates, an indication that the functional roles of MtrC and OmcA at least partially overlap in the electron transport pathway to Mn(IV) (Myers and Myers 2003b). The functions of MtrC and OmcA in Fe(III) reduction remain unclear, yet they are postulated to be major components of the Fe(III) terminal reductase. Some of the most convincing genetic evidence supporting the hypothesis that Shewanella localizes Fe(III) and Mn(IV) reductases to the OM has been derived from genetic studies with S. putrefaciens (DiChristina and DeLong 1994; DiChristina et al. 2002). Genetic mutant complementation analyses (as outlined in chapter by Newman and Gralnick 2005) indicated that a 23.3 kb S. putrefaciens wild-type DNA fragment conferred Fe(III) reduction activity to a set of 10 Fe(III) reduction-deficient mutants of S. putrefaciens. The smallest complementing DNA fragment contained one open reading frame (ORF) whose translated product displayed 87% sequence similarity to Aeromonas hydrophila ExeE, a member of the GspE family of proteins found in Type II protein secretion systems. GspE insertional mutants (constructed by targeted replacement of wild-type gspE with an insertionally inactivated gspE construct) are unable to respire anaerobically on solid Fe(III) or Mn(IV) oxides, yet retain the ability to respire all other electron acceptors including soluble complexes of Fe(III) and Mn(III) (Kostka et al. 1995; Pitts et al. 2003). Nucleotide sequence analysis of regions flanking gspE revealed one partial and two complete ORFs whose translated products displayed 55-70% sequence similarity to the GspD-G homologs of other Type II protein secretion systems. A heme-containing protein complex displaying Fe(III) reductase activity is present in the peripheral proteins loosely attached to the outside face of the wild-type OM, yet is missing from this location in the gspE mutants. Membrane fractionation studies with the wild-type strain support this finding: the heme-containing Fe(III) reductase complex is detected in the OM but not the IM or cytoplasmic fractions. These findings provide the first genetic evidence linking anaerobic Fe(III) and Mn(IV) respiration to Type II protein secretion and provide additional biochemical evidence supporting OM localization of Shewanella Fe(III) and Mn(IV) reductases (DiChristina and DeLong 1994; DiChristina et al. 2002). Gram-negative bacteria secrete soluble exoproteins to the cell periphery or exterior via five known protein secretion systems (Desvaux et al. 2004). Type II protein secretion is part of the main terminal branch of the general secretory (GSP) pathway (Pugsley 1993; Pugsley et al. 1997; Filloux 2004) and is generally comprised of 12-to-16 proteins encoded by a contiguous cluster of moderately-to-highly conserved pul (or gsp) genes, usually in the same order. Pullulanase secretion by the plant cell wall-degrading microorganism Klebsiella oxytoca is one of the best characterized Type II protein secretion systems and a working model for pullulanase secretion has been proposed (Pugsley et al. 1997). Nascent pullulanase is first directed into and across the cytoplasmic membrane where it folds and is transiently anchored to the periplasmic aspect of the cytoplasmic membrane. After processing (signal peptide cleavage, disulfide bond formation, fatty acylation), the mature pullulanase is guided across the periplasmic space by the Type II secretion pseudopilus (GspG, H, I, J complex) and interacts with the OMassociated, multimeric GspD channel. Pullulanase is subsequently attached to the outside face of the outer membrane via a fatty acid tail. The ferE homolog, gspE, is postulated to encode a secretion ATPase that drives the secretion process, including the rapid polymerization and depolymerization reactions associated with pseudopilus extension and retraction (Filloux 2004). Peripherally attached pullulanase cleaves alpha-1,6 linkages in branched maltodextrin polymers such as glycogen or amylopectin of plant cell wall material, thereby releasing linear
32
DiChristina, Fredrickson, Zachara
dextrins for bacterial cell uptake and metabolism. Based on the K. oxytoca Type II pullulanase secretion model and the previously reported involvement of S. putrefaciens outer membrane proteins in dissimilatory Fe(III) and Mn(IV) reduction, it has been postulated that the Fe(III) and Mn(IV) respiratory deficiencies of Type II protein secretion mutants are due to their inability to secrete Fe(III) and Mn(IV) terminal reductases to the outside face of the S. putrefaciens outer membrane (DiChristina et al. 2002). A working model of the direct enzymatic pathway for reduction of solid Fe(III) oxides in Shewanella is displayed in Figure 3.
Electron shuttling pathways A variety of Fe(III)-respiring DMRB, including Shewanella and Geobacter, can employ redox-active compounds (e.g., humic acids, melanin, phenazines, antibiotics, AQDS) as exogenous electron shuttles to reduce extracellular Fe(III) oxides (Lovley et al. 1996). The Fe(III) and Mn(IV) reduction-deficiencies of Shewanella Type II protein secretion mutants are rescued by addition of AQDS (DiChristina et al. 2005). S. oneidensis gspD insertional mutants are unable to respire anaerobically on solid Fe(III) or Mn(IV), yet retain the ability to respire all other electron acceptors, including AQDS. The ability to respire 50 mM solid Fe(III) or Mn(IV) is rescued in the S. oneidensis gspD insertional mutants by addition of 50 μM AQDS, an indication that the AQDS electron shuttling pathway is able to overcome the defect in the Type II protein secretion-linked pathway for respiration on solid Fe(III) and Mn(IV). AQDS is toxic to Shewanella cells above a critical threshold concentration and the efflux pump protein TolC protects Shewanella cells from AQDS toxicity by mediating AQDS efflux (Shyu et al. 2002). Electron transfer to AQDS also requires the OM protein MtrB, although its role in AQDS reduction remains unknown (Shyu et al. 2002). Solid Fe(III) reduction by Shewanella is also stimulated by redox-active antibiotics and phenazines (Hernandez et al. 2004). Phenazines are similar in structure to AQDS and function as electron shuttles between Shewanella cells and solid Fe(III) oxides. Redox-active antibiotics (e.g., bleomycin) also function as shuttles for extracellular electron transfer to solid electron acceptors. Bacterially-produced phenazines (e.g., synthesized by Pseudomonas chlororaphis PCL1391) stimulate Fe(III) reduction by bacteria unable to produce them (e.g., S. oneidensis MR-1) (Hernandez et al. 2004). In addition, melanin (a humic acid-like compound synthesized by S. algae BrY in the presence of high concentrations of tyrosine) will enhance rates of Fe(III) oxide reduction (Turick et al. 2002). Melanin may have a dual function by acting as both an electron shuttle and an Fe(II)-complexing agent that prevents Fe(II) from adsorbing to and blocking Fe(III) oxide surface sites. A working model of the exogenous electron shuttling pathway for AQDS-mediated reduction of solid Fe(III) oxides by Shewanella is displayed in Figure 4. Shewanella (and Geothrix fermentans) may also synthesize and release endogenous compounds that shuttle electrons to solid Fe(III) oxides (Newman and Kolter 2000; Nevin and Lovley 2002). Fe(III)-reducing G. metallireducens, on the other hand, does not appear to produce endogenous electron shuttles (Nevin and Lovley 2000). S. algae BrY produces melanin as a soluble electron shuttle for reduction of solid Fe(III) oxides (Turick et al. 2002). S. algae-produced melanin oxidizes c-type cytochromes at the cell surface and reduces solid Fe(III) oxides extracellularly (Turick et al. 2002). S. oneidensis MR-1 mutants defective in menC (encoding o-succinylbenzoic acid synthase) are deficient in menaquinone production and are unable to reduce AQDS, fumarate, thiosulfate, sulfite, DMSO or solid Fe(III) and Mn(IV) (Newman and Kolter 2000). Menaquinone is detected in the spent media of the wild-type strain, but not the menC mutants. Spent medium from the wild-type strain restores Fe(III) reduction activity to the menC mutant, while spent media from menC mutant does not. S. oneidensis MR-1 mutants defective in either menD or menB (encoding components of the menaquinone biosynthetic pathway) are also unable to reduce solid Fe(III) oxides (Saffarini et al. 2002). Vitamin K2 (a menaquinone analog) restores the ability of the menD or menB
Enzymology of Electron Transport
33 Secretion of Fe(III) terminal reductase complex
Fe(II)
Solid Fe(III)
OM D S
Fe(III) terminal reductase complex
+
H
e-
ec-type cytochromes e-
H+ Menaquinone Pool
D S
G H I J
H+
IM
CymA L
e- donor
F
M C K
N O
E
Dehydrogenase
ADP H+ ATP
ELECTRON TRANSPORT SYSTEM
ATPase
TYPE II SECRETION APPARATUS
Figure 3. Working model for type II protein secretion-linked, direct enzymatic reduction of solid Fe(III)-oxides at the outer membrane.
Solid Fe(III) Fe(II)
AQDS
AH2DS OM 2e-
c-type cytochromes H+
e-
H+ Menaquinone Pool
AQDS Terminal reductase eH+
e-
IM
CymA
e- donor Dehydrogenase ELECTRON TRANSPORT SYSTEM
ADP
H+
ATP
ATPase
Figure 4. Working model for electron shuttling pathway with AQDS as electron shuttle.
34
DiChristina, Fredrickson, Zachara
mutants (and corresponding membrane fractions) to reduce either Fe(III) or Mn(IV) (Saffarini et al. 2002). It should be noted that the endogenous electron shuttle pathway may be the consequence of cell lysis and inadvertent spillage of menaquinol into the culture medium. Since shuttles can undergo redox cycling they can be effective at low concentrations and therefore even a small fraction of cell lysis could have a significant effect. Lipid-soluble menaquinol or vitamin K2 then diffuses into bacterial membranes and functionally complements the menB, C or D mutants. Definitive evidence on the identity of the endogenous electron shuttle requires further research and will be challenging as exceedingly low concentrations may be involved.
Fe(III) solubilization by exogenous or bacterially-produced organic ligands followed by reduction of soluble organic-Fe(III) A strong electrochemical signal indicative of soluble organic-Fe(III) is detected in a variety of marine and freshwater environments with Au/Hg voltammetric microelectrodes (Taillefert et al. 2002). Soluble organic-Fe(III) may therefore represent a dominant, yet under appreciated electron acceptor in anaerobic aquatic systems. Microbial Fe(III) reduction rates are higher with soluble organic-Fe(III) in pure cultures of S. putrefaciens (Arnold et al. 1988) and in freshwater sediments amended with Fe(III)-chelating compounds such as nitrilotriacetic acid (Lovley and Woodward 1996). S. putrefaciens reduces soluble organic-Fe(III) complexes at rates three orders of magnitude faster than amorphous or crystalline Fe(III) forms (Arnold et al. 1988). The mechanism of formation of soluble organic-Fe(III) generally involves non-reductive dissolution of amorphous Fe(III) oxides by multidentate organic ligands (forming mononuclear complexes with the Fe(III) oxides) at circumneutral pH. The strength of binding between Fe(III) and the complexing organic ligands influences soluble organic-Fe(III) reduction activity: organic ligands with strong Fe(III)-binding capability decrease (and in some cases totally inhibit) Fe(III) reduction activity by S. putrefaciens (Haas and DiChristina 2002). Some Fe(III)-reducing bacteria such as S. algae BrY and G. fermentans generate relatively high concentrations of soluble organic-Fe(III) in the absence of exogenous chelating compounds, an indication that such bacteria synthesize and release organic ligands to solubilize Fe(III) prior to reduction (Nevin and Lovley 2002). Soluble organic-Fe(III) is detected electrochemically in S. oneidensis and S. putrefaciens cultures incubated anaerobically with either ferrihydrite or goethite (Taillefert and DiChristina 2005). Detection of soluble organicFe(III) prior to detection of Fe(II), suggests that soluble organic-Fe(III) is an intermediate in the reduction of solid Fe(III) oxides. Since lactate is the only organic ligand added to the Shewanella batch cultures and lactate-Fe(III) complexes do not react with Au/Hg electrodes, electrochemical detection of soluble organic-Fe(III) suggests that Shewanella synthesizes and releases organic ligands that complex and dissolve Fe(III) prior to reduction. The identity of the bacterially-produced, Fe(III)-solubilizing organic ligands remains unknown. A respiration-linked, soluble organic-Fe(III) terminal reductase has yet to be definitively identified. As described above, Shewanella Type II protein secretion mutants are unable to reduce solid Fe(III) oxides, yet retain the ability to respire all other electron acceptors, including soluble organic-Fe(III). This finding suggests that soluble organic-Fe(III) may be reduced by terminal reductases located in subcellular compartments other than the OM. The S. oneidensis decaheme c-type cytochrome MtrA is a candidate terminal reductase for soluble organic-Fe(III): MtrA is located in the S. oneidensis periplasm and displays soluble organicFe(III) reductase activity when expressed in E. coli (Pitts et al. 2003). The requirement for MtrA in anaerobic respiration of soluble organic-Fe(III), however, has yet to be demonstrated in vivo. In S. frigidimarina, the transcriptional activator IfcR is translated in the presence of soluble organic-Fe(III) and is essential for expression of ifcO and ifcA. IfcO is a putative OM beta-barrel protein postulated to function as a soluble organic-Fe(III) transporter. IfcA is a flavin-containing c-type cytochrome with a small (10 kDa) tetraheme cytochrome domain that
Enzymology of Electron Transport
35
displays soluble organic-Fe(III) reductase activity (Pitts et al. 2003). A working model of the two-step, Fe(III) solubilization-reduction pathway in Shewanella is displayed in Figure 5.
ENZYMATIC BASIS OF URANIUM REDUCTION Members of the genera Shewanella (Lovley et al. 1991), Desulfovibrio (Lovley et al. 1993), Clostridium (Francis et al. 1994), Geobacter (Caccavo et al. 1992), Thermus (Kieft et al. 1999), Pyrobaculum (Kashefi and Lovley 2000), and Desulfosporosinus (Suzuki et al. 2002) display enzymatic U(VI) reduction activity. Shewanella and Geobacter enzymatically reduce U(VI) to U(IV) via a respiratory process that supports anaerobic growth. Although several purified c-type cytochromes display U(VI) reductase activity in vitro, a respirationlinked, U(VI) terminal reductase has yet to be definitively identified in vivo. Enzymatic U(VI) reduction activity is affected by U(VI) chemical speciation, electron donors, and competing electron acceptors. In the following section, the most recent findings on the enzymatic basis of U(VI) reduction by Shewanella and Geobacter are presented along with a discussion of the environmental factors affecting enzymatic U(VI) reduction activity.
Involvement of c-type cytochromes in enzymatic U(VI) reduction Cytochrome c3 of several Desulfovibrio species is involved in electron transfer to U(VI). Cytochrome c3 of U(VI)-reducing (but non-respiring) Desulfovibrio vulgaris Hildenborough displays U(VI) reductase activity in vitro with H2 as electron donor (Lovley et al. 1993). Cytochrome c3 mutants of D. desulfuricans strain G20 are unable to reduce U(VI) with H2 as
Solid Fe(III)
Soluble Organic-Fe(III)
Fe(III)
Organic Ligand
Fe(III)
Fe(II) OM
Soluble Fe(III) Organic-Fe(III)
H+
e-
H+ Menaquinone Pool
c-type cytochromes e-
Fe(II) Organic Ligand eSoluble Fe(III) reductase
H+ IM
CymA
e- donor Dehydrogenase ADP ELECTRON TRANSPORT SYSTEM
H+
ATP Organic Ligand
ATPase
Figure 5. Working model for Fe(III) solubilization-reduction pathway with endogenous organic ligand as Fe(III)-chelating compound.
36
DiChristina, Fredrickson, Zachara
electron donor and are partially impaired in U(VI) reduction activity with lactate or pyruvate as electron donor (Payne et al. 2002). After growth of wild-type D. desulfuricans strain G20 in medium containing uranyl acetate, cytochrome c3 is tightly associated with insoluble U(IV) particles (uraninite) found in the periplasm (Payne et al. 2004). Cytochrome c7 of G. sulfurreducens also displays U(VI) reductase activity in vitro, however, mutants deficient in either cytochrome c3 or c7 retain U(VI) reduction activity in vivo (Lloyd et al. 2003). These findings suggest that either cytochrome c3 and c7 are not the physiological U(VI) reductases in G. sulfurreducens or that the electron transport pathway to U(VI) is highly branched and consists of multiple U(VI) terminal reductases. The highly branched nature of the U(VI) reduction pathway in G. sulfurreducens is reflected by the finding that Fe(III) reduction-deficient ppcA mutants (see above) are also deficient in U(VI) reduction activity (Lloyd et al. 2003). A genetic complementation system has recently been developed to examine the enzymatic mechanism of U(VI) reduction by S. putrefaciens (Wade and DiChristina 2000). S. putrefaciens respiratory mutants unable to reduce U(VI) have been isolated and tested for the ability to respire on a suite of alternate compounds as electron acceptor, including oxygen O2, NO3−, fumarate, trimethylamine-N-oxide (TMAO), dimethyl sulfoxide (DMSO), Mn(IV), Fe(III), chromate (Cr(VI)), arsenate (As(V)), selenite (Se(IV)), pertechnetate (Tc(VII)), thiosulfate (S(II)), and sulfite (S(IV)) (Wade and DiChristina 2000). All U(VI) reduction-deficient mutant strains also lacked the ability to respire NO2−. In particular, U(VI) reduction-deficient mutant strain U14 retained the ability to respire all electron acceptors except U(VI) and NO2−. These results suggest that the electron transport chains terminating with the reduction of NO2− and U(VI) share common respiratory components.
Effect of U(VI) chemical speciation on enzymatic U(VI) reduction activity U(VI) chemical speciation is an important variable controlling enzymatic U(VI) reduction activity. In oxidizing aqueous environments at circumneutral pH (and in the absence of phosphate), U(VI) is found as soluble uranyl ion (UO22+), often in carbonate complexed form (e.g., UO2(CO3)22−, UO2(CO3)34−, CaUO2(CO3)20) or as crystalline solids such as metaschoepite (UO3·2H2O), uranyl phosphates and uranyl silicates. U(IV) precipitates in reducing environments as uraninite (UO2). The relative insolubility of U(IV) (10−8 M at pH > 5; Rai et al. 1990) compared with U(VI) is the basis of alternate bioremediation strategies (Lovley et al. 1991). The uranyl ion readily complexes with either inorganic (e.g., hydroxyl, carbonate, phosphate, sulfate and calcium) or organic (e.g., acetate, malonate, citrate and oxalate) ligands in aqueous solution (Grenthe 1992), and complexation markedly enhances its solubility. The type of complexing ligand changes the reduction potential of U(VI) thus affecting enzymatic reduction activity. In terms of reduction potential, hydroxo complexes are the most easily reduced forms of complexed U(VI), while complexation by carbonate decreases the reduction potential of U(VI). Complexation of U(VI)-carbonate by calcium (forming CaUO2-CO3 complexes) decreases the reduction potential to such an extent that enzymatic U(VI) reduction by S. putrefaciens CN32 nearly ceases (Brooks et al. 2003). Enzymatic U(VI) reduction activity by D. desulfuricans and G. sulfurreducens is also inhibited by formation of Ca-UO2-CO3 complexes. The effect of Ca2+ complexation on enzymatic U(VI) reduction activity are specific to U(VI) reduction since the enzymatic reduction of fumarate and Tc(VII) activities are not inhibited by Ca2+. In the absence of carbonate or at pH < 6 in the presence of carbonate, organic ligands bound to U(VI) also dramatically impact enzymatic U(VI) reduction activity. Citrate, for example, binds U(VI) with varying strength as a function of pH (Pasilis and Pemberton 2003). At pH > 6 and at low citrate concentrations, the highly soluble (UO2)3Cit2 species predominates over the (UO2)2Cit2 species. S. alga BrY reduces U(VI) bound to citrate and other multidentate aliphatic complexes such as malonate and oxalate more rapidly than U(VI)
Enzymology of Electron Transport
37
bound to monodentate aliphatic complexes such as acetate, while the opposite trend is found with D. desulfuricans (Ganesh et al. 1997). U(VI) also adsorbs to carboxyl, phosphoryl and amine functional groups on the S. putrefaciens 200 cell surface, and a ligand exchange reaction may take place between the cell surface or U(VI) terminal reductases and the U(VI) complexes prior to reduction (Haas and DiChristina 2002).
Electron donors and competing electron acceptors U(VI) reduction by Shewanella is coupled to oxidation of hydrogen, lactate, formate or pyruvate (Lovley et al. 1991). U(VI) reduction rates are highest with H2 as electron donor (Liu et al. 2002b). Two explanations have been proposed to account for the increased rate of U(VI) reduction coupled to H2 oxidation (Aubert et al. 2000; Liu et al. 2002b). First, electron flow through the electron transport chain may be more rapid when coupled to H2 rather than lactate oxidation. Periplasmic H2 hydrogenases may pass electrons through the electron transport chain more rapidly than those generated from cytoplasmic membrane-localized lactate dehydrogenase. Secondly, mass flux of neutrally charged H2 to the enzymatic site of oxidation may be faster than negatively charged lactate. The negative charge of the lactate ion inhibits diffusion across the cell surface to the cytoplasmic membrane, thereby requiring an active transport system. The presence of competing terminal electron acceptors also interferes with microbial U(VI) reduction. Thermodynamic calculations predict that electron acceptors should be utilized in order of highest free energy yield, a possible explanation for the inhibition of U(VI) reduction in the presence of nitrate (Finneran et al. 2002). Although the reduction of U(VI) coupled to the oxidation of organic compounds should yield greater free energy than Fe(III) (Cochran et al. 1986), the half-cell potentials of both U(VI) and Fe(III) can vary markedly with their coordination environment and whether they exist in the form of aqueous complexes or solid phases. For example, the half-cell potentials at pH 7 for many common, environmental Fe(III) forms vary from +0.35 V to −0.30 V (Stumm 1992), while those for U(VI) vary from +0.284 V to −0.042 V (Brooks et al. 2003). These variations in half-cell potential are compounded by the effects of reactant concentrations and other aqueous complexants, the similarity in half-cell potential of many Fe(III) and U(VI) forms and their uncertainty, the interfacial chemistry of solid phase electron acceptors, and the poorly understood redox chemistry of surface complexed Fe(II). All of these considerations complicate a rigorous thermodynamic analysis. The effects of pH are also strong because of the proton stoichiometry of reaction, and the redox stability of U(VI) over Fe(III), or vise-versa, may change if pH is not controlled, if reactant concentrations are varied appreciably, or if mineral biotransformation products exhibit different redox chemistry. In spite of these complexities and chemical interrelationships, there are some consistent thermodynamic observations. Ferrihydrite, with its higher redox potential (~−0.070 V at pH = 7 and Fe(II) = 10−5 mol/L) was observed to inhibit bacterial U(VI) reduction, while goethite did not (~-0.250 V at pH = 7 and Fe(II) = 10−5 mol/L) (Wielenga et al. 2000). Electron transport to Mn(IV) provides a greater free energy yield than electron transport to U(VI), and is therefore predicted to be a preferred electron acceptor (Cochran et al. 1986; Langmuir 1997). Bioavailable Mn(IV)-oxides such as birnessite and bixbyite follow this prediction, however, U(VI) is reduced concurrently with less soluble forms of Mn(IV) (Fredrickson et al. 2002). To determine if this finding is due to electron acceptor competition or abiotic oxidation of U(IV) by Mn(IV), S. putrefaciens CN32 was incubated with U(VI) and pyrolusite (E-MnO2) (Liu et al. 2002b). Extracellular, cell surface-associated, and periplasmic UO2(s) aggregates were detected by Transmission Electron Microscopy (TEM) when cells were incubated only with U(VI). Upon addition of pyrolusite, extracellular UO2(s) was depleted but periplasmic and cell surface-associated UO2(s) remained. These results suggest
38
DiChristina, Fredrickson, Zachara
that U(IV) functions as an electron shuttle and is oxidized by the extracellular pyrolusite. U(VI) is completely reduced provided the OM of intact cells physically separates (sequesters in the periplasmic space) UO2(s) from extracellular pyrolusite. Humic acids have recently gained attention for their potential role as shuttles for electron transfer between anaerobically respiring Shewanella and solid Fe(III)-oxides (see above). Addition of AQDS to S. putrefaciens CN32, however, does not enhance the reduction rate of either soluble or insoluble forms of U(VI) (Fredrickson et al. 2000). AQDS actually inhibits U(VI) reduction activity, possibly by diverting electrons away from the U(VI) reduction pathway.
Subcellular location of enzymatic U(VI) reduction activity The subcellular location of enzymatic U(VI) reduction in Shewanella has also been recently examined: Insoluble U(IV) particles are detected extracellularly, on the cell surface and within the periplasmic space of S. putrefaciens CN32 after reduction of soluble U(VI) (Liu et al. 2002a). U(IV) is not detected in the cytoplasm (Fig. 6). U(VI) reductases may therefore be localized within the OM, diffuse (or be transported) across the OM to contact U(VI) reductases located in the periplasm or IM, or both. U(VI) reduction products of Desulfosporosinus have been detected as nanometer-sized UO2(s)-particles (Suzuki et al. 2002). Nanoparticles produced in the periplasm either diffuse or are exported to the cell exterior where they organize extracellularly to form larger aggregates. Aggregation of U(IV) particles prior to export from the cell may result in the periplasmic deposits detected on TEM images of U(VI)-respiring cells (Liu et al. 2002a). U(IV) particles detected in the culture supernatant also leads to the intriguing possibility that anaerobically-respiring Shewanella are able to actively secrete U(IV) particles as a means of avoiding build-up of toxic insoluble U(IV) end-products during U(VI) reduction. S. putrefaciens CN32 is also capable of reducing solid forms of U(VI) such as metaschoepite (Fredrickson et al. 2000), although solid forms of U(VI) have been found to be resistant to microbial reduction in situ (Ortiz-Bernad et al. 2004). The mechanism by which Shewanella species reduce metaschoepite is unknown, but U(VI) terminal reductase localization to the OM to contact solid U(VI) is possible.
Figure 6. Transmission electron microscopy image of an unstained thin section from Shewanella putrefaciens strain CN32 cells incubated with H2 and U(VI) in pH 7 bicarbonate buffer, illustrating the accumulation of nano-size U(IV)O2 particles extracellularly and in association with the periplasmic space and cell surface.
Enzymology of Electron Transport
39
ENZYMATIC MECHANISM OF TECHNETIUM REDUCTION Enzymatic studies on Tc(VII) reduction have largely been focused in E. coli, however the ability to reduce Tc(VII) has been recently found in S. putrefaciens CN32, S. oneidensis MR-1 and S. putrefaciens 200 (Lyalikova and Khizhnyak 1996; Lloyd et al. 1997; Wildung et al. 2000; Payne and DiChristina 2005). Tc(VII) is also reduced under acidic conditions by Thiobacillus thiooxidans (Lyalikova and Khizhnyak 1996), under alkaline conditions by Halomonas strain Mono (Khijniak et al. 2003) and at high temperature by Pyrobaculum islandicum (Kashefi and Lovley 2000). Reduction of soluble Tc(VII) results in formation of Tc(IV) which precipitates as insoluble TcO2·nH2O (hereafter termed TcO2) and may be immobilized in situ. In the absence of aqueous complexing agents, Tc(IV) may also be immobilized via formation of strong surface complexes with hydroxylated surface sites on Al and Fe oxides and clays (Rard 1983; Haines et al. 1987; Meyer et al. 1991; Eriksen et al. 1992; Wildung et al. 2000).
Involvement of hydrogenases in Tc(VII) reduction E. coli possesses four hydrogenases, designated as hydrogenases 1-4. Hydrogenases-1 and 2 share little homology to hydrogenases-3 and 4. Hydrogenases 3 and 4 share high homology to each other and are both expressed as part of the formate-hydrogen lyase complex in E. coli (Bagramyan and Trchounian 2003). The Tc(VII) reductase in E. coli has been identified as the Ni-Fe hydrogenase-3 component of the formate-hydrogen lyase complex (Lloyd et al. 1997). Hydrogenase expression is determined by pH: hydrogenase-4 (encoded by the hyf operon) is expressed under alkaline conditions while hydrogenase-3 (encoded by the hyc operon) is expressed under acidic conditions (Bagramyan and Trchounian 2003). The formate-hydrogen lyase complex in E. coli is composed of formate dehydrogenase plus multiple components of the respective hydrogenase encoding operons (i.e., hyf and hyp operons). The bi-directional nature of hydrogenase-3 (HycE) enables both the production of H2 during formate oxidation and the direct oxidation of H2 under other conditions. S. oneidensis MR-1 does not possess a formate-hydrogen lyase complex and possesses only two hydrogenases, neither of which share significant homology to hydrogenases-3 or 4 of E. coli. The first S. oneidensis MR-1 hydrogenase (Locus SO2098; HyaB) displays high homology to the IM-bound Ni-Fe hydrogenase HydB of Wolinella succinogenes, while the second S. oneidensis MR-1 hydrogenase (Locus SO3920; HydA) displays high homology to the putative D subunit of the NADP-reducing hydrogenase of Thermotoga maritima (Payne and DiChristina 2005). In terms of hydrogenase function, S. oneidensis MR-1 hydrogenases appear most similar to those of Alcaligenes eutrophus in which the cytoplasmic, soluble hydrogenase (HydA) regenerates NADH, while the membrane bound Ni-Fe hydrogenase (HyaB) generates reducing power (Lengeler et al. 1999). In organisms containing only membrane bound hydrogenases, reducing power is generated by reverse electron transport, generally carried out by membrane bound bi-directional hydrogenases (e.g., hydrogenases3 and 4 in E. coli). S. oneidensis MR-1 therefore appears to share close similarity to the hydrogen uptake and utilization systems of A. eutrophus and little sequence or physiological similarity to the H2 uptake and utilization systems of E. coli. Further work needs to be carried out to determine if the S. oneidensis MR-1 hydrogenases display Tc(VII) reductase activity.
Subcellular location of enzymatic Tc(VII) reduction activity The enzymatic reduction of Tc(VII) is electron donor-specific. H2 serves as electron donor in all known Tc(VII)-reducing organisms (Lloyd et al. 2000; Wildung et al. 2000; De Luca et al. 2001), while the ability to couple the oxidation of other carbon sources to the reduction of Tc(VII) occurs in only a small subset of organisms. G. sulfurreducens and D.
40
DiChristina, Fredrickson, Zachara
fructosovorans have an exclusive requirement for H2 as electron donor for Tc(VII) reduction while E. coli is limited to formate and H2 as electron donor. S. oneidensis MR-1 and S. putrefaciens CN32 couple the oxidation of formate, lactate, and H2 to Tc(VII) reduction (Wildung et al. 2000; Payne and DiChristina 2005), but Tc(VII) reduction rates are markedly higher with H2 as electron donor. The reduced Tc(IV) product is generally nanometer-sized TcO2(s) in buffers or media without high carbonate. The identity of the electron donor does not seem to influence the mineralogic nature of the reduction product. The black-colored precipitate is observed in the periplasm, and as 20-50 nm dome-like structures consisting of aggregates of many individual crystallites on the cell surface (Fig. 7). The TcO2(s) is nanocrystalline and exhibits insufficient long-range order to yield a discernable diffraction pattern. The precipitate maintains a Tc solubility (≈10−8 mol/L) that approximates measured values for TcO2·xH2O (as reported by Rard 1999 and associated citations). The physiologic relationship between subcellular and surface associated TcO2(s) is unclear. Limited evidence implies that bioreduced Tc [e.g., Tc(IV)] may exist in the form of carbonate aqueous complexes, or perhaps carbonate precipitates, in high-bicarbonate media (Wildung et al. 2000). Further research on the biogeochemistry of Tc(VII)/Tc(IV) in bicarbonate-containing media and other ligand solutions of geochemical relevance is needed.
A
B
C Figure 7. Transmission electron microscopy image of an unstained thin section from Shewanella oneidensis MR-1 cells incubated with H2 and Tc(VII) in pH 7 PIPES buffer. Tc accumulates predominantly in association with the cell envelope (A, B) as discreet aggregates (C) consisting of Tc(IV)O2 particles approximately 2.2 nm in diameter (arrow).
Enzymology of Electron Transport
41
MICROBIAL REDUCTION-INDUCED CHANGES IN METAL BIOGEOCHEMISTRY Direct enzymatic effects of dissimilatory metal-reducing bacteria (DMRB) on metal solubility The majority of electron acceptors commonly used by prokaryotes (oxygen, nitrate, sulfate, carbon dioxide) exhibit relatively high levels of solubility before and after reduction. In contrast, many of the metals used as microbial electron acceptors exhibit substantially different solubility properties in the oxidized (e.g., pH = 10) versus the reduced (pH = 4 or 2) states (Table 1). Because Fe(III) and Mn(III,IV) exist predominantly as oxyhydroxide minerals in oxic environments (e.g., ferrihydrite and goethite, or birnessite and manganite), DMRB must overcome the fundamental problem of engagement of the cell electron transport system (ETS) with the mineral surface across a solid-liquid interface. DMRB have developed several novel mechanisms for overcoming this problem, as described in preceding sections, including the “shuttling” of electrons by humic acids (Lovley et al. 1996; Lovley and Woodward 1996) or cell metabolites (Newman and Kolter 2000) from terminal points of the ETS to the mineral surfaces, possibly the direct transfer of electrons to metal in the centers of mineral surfaces by multiheme cytochromes associated with the OM (Richardson 2000; Leang et al. 2003), or the solubilization of solid phase-associated Fe(III) as subsequent engagement of Fe(III) reductase(s) as a soluble Fe(III)-organic complex. Regardless of the mechanism, the microbial reduction of Fe and Mn has a profound impact on the geochemical behavior of these metals as Table 1. Solubilities (aqueous concentrations) of select phases of Fe, Mn, U, and Tc at pH 7 in water as a function of pe (pCO2 = 10−3.46 atm, I = 0.01). Solid phase
Oxidizing pH = 10 mol/L
Reducing (pH = 4) mol/L
(pH = 2) mol/L
Fe(OH)3 (ferrihydrite)
2.06u10−8 (Fe3+)
2.06u10−8 (Fe3+) 1.29u10−7 (Fe2+)
2.06u10−8 (Fe3+) 1.29u10−5 (Fe2+)
D-FeOOH (goethite)
8.40u10−13 (Fe3+)
8.36u10−13 (Fe3+) 5.24u10−12 (Fe2+)
8.36u10−13 (Fe3+) 5.24u10−10 (Fe2+)
MnO1.8 (birnessite)
6.03u10−5 (Mn2+)
Soluble as Mn2+ a
Soluble a
J-MnOOH (manganite)
2.87u10−6 (Mn2+)
Soluble as Mn2+ a (2.83 mol/L maximum)
Soluble a
2.67u10−7 [U(VI)O22+] b
2.67u10−7 [U(VI)O22+] b
1.46u10−7 [U(VI)O22+] 2.0u10−17 [U(IV)(OH)4(aq)] c
Soluble as Tc(VII)O4−
Soluble as Tc(VII)O4−
10−8 [Tc(IV)O(OH)2(aq)]
UO2 (uraninite)
TcO2·nH2O a. b.
c.
Will precipitate as rhodochrosite [MnCO3(c)] 1u10−4 mol/L precipitated as schoepite [E-UO3·2H2O(c)], the primary aqueous complex under the given conditions is UO2(CO3)22−, solubility increases with CO2(g) partial pressure and total aqueous carbonate concentration 9.98u10−5 mol/L precipitated as uraninite [UO2(c)], pH is 1.8, U(VI) concentrations decrease with decreasing pH.
42
DiChristina, Fredrickson, Zachara
well as broader impacts on the overall geochemical and mineralogic properties of solids and sediments where these processes occur. In contrast to Fe and Mn, U, Tc, and Cr are relatively soluble in oxic environments and typically exist as anionic uranyl carbonate UO2(CO3)34−, UO2(CO3)22− complexes, pertechnetate (TcO4−), or chromate (CrO42−), respectively. The solubility of U(VI) at circumneutral pH is strongly dependent on dissolved carbonate concentration and other associated ligands such as silica or phosphate. Upon reduction to the +4 oxidation state and in the absence of strong complexants, U and Tc can precipitate as the hydrous oxides, UO2 (uraninite) and TcO2, phases that have been identified in anaerobic suspensions of DMRB cells incubated with U(VI) (Gorby and Lovley 1992) or Tc(VII) (Wildung et al. 2000) and appropriate electron donors. The direct enzymatic reduction of U(VI) results in the formation of relatively uniformly-sized nanoparticles (Fredrickson et al. 2002; Suzuki et al. 2002), a factor that can impact their subsequent reactivity and transport. For example, if U(IV) nanoparticles are less than approximately 2-to-5 nm in diameter, they may behave as large molecular clusters and be mobile in solution, while U(IV) particles with larger diameters may not be transported as readily (as described in chapter on nanoparticles by Gilbert and Banfield 2005). It is these marked changes in solubility that have prompted consideration of manipulating the activities of DMRB for the bioremediation of soils and sediments contaminated with metals and radionuclides (Lovley 1995).
Indirect effects of DMRB on metal solubility DMRB can also indirectly influence the biogeochemical behavior of redox active and non-redox active metals. Because the mass content of Fe and Mn is typically higher than trace metals and contaminants in most soils and sediments they tend to have a dominant effect on redox reactions and function as a major sink for electrons from DMRB respiration. Due to their relatively higher mid-point potential, Mn oxides can provide a “buffer” against the net reduction of other metal ions including Fe(III) (Lovley and Phillips 1988; Myers and Nealson 1988) and U(VI) (Liu et al. 2002b). Because Mn(III,IV) oxides are relatively strong oxidants they can also oxidize reduced forms of metals such as Cr(OH)3 (Fendorf and Zasoski 1992) and UO2 (Fredrickson et al. 2002), hence impeding their net microbial reduction unless there are mechanisms that prevent their physical interaction such as the accumulation and isolation of UO2 nanoparticles in the cell periplasm (Fredrickson et al. 2002). Although Fe(III) oxides are not as effective oxidants as Mn oxides, they can potentially impede the reduction of other metals such as U(VI) via competition mechanisms (Wielinga et al. 2000). Hence, the microbial reduction of Mn and Fe oxides can result in redox conditions that are more favorable for the reduction for trace metal contaminants. In addition, Fe(II) and Mn(II) can potentially provide buffer against re-oxidation. Biogenic Fe(II) can also function as a facile reductant of trace metal and radionuclides including U(VI) (Liger et al. 1999), Tc(VII) (Lloyd et al. 2000; Wildung et al. 2004), and Cr(VI) (Wielinga et al. 2001). The rate of Tc(VII)O4− reduction by sediment-associated biogenic Fe(II) was shown to be related directly to the extent of sediment Fe(III) reduction but there was extensive variation among different sediments indicating that the effectiveness of Fe(II) as a reductant was highly dependent upon molecular speciation as opposed to Fe(II) concentration alone (Fredrickson et al. 2004; Hansel et al. 2004). In general, aqueous Fe(II) is poorly reactive with Tc(VII) (Cui and Eriksen 1996) and U(VI) (Fredrickson et al. 2000), probably due to kinetic limitations. In contrast, the rates of chromate reduction by Fe(II)aq are relatively rapid (Wielinga et al. 2001). One area that warrants further investigation is whether biosorbed Fe(II), which can form complexes and precipitates on cell surfaces (Liu et al. 2001a), can also function as a reductant in a manner similar to Fe(II) sorbed on mineral surfaces. The fact that Fe oxides can impede i.e., via competition (Wielinga et al. 2000)
Enzymology of Electron Transport
43
or promote, i.e., via surface complexation of Fe(II) (Fredrickson et al. 2004), reflects the similarity of the mid-point potentials of these metals and the need to pay careful attention to factors including speciation, concentration, and solubility that can greatly impact the direction and extent of such redox reactions. Trace metals can associate with Fe or Mn oxides as adsorbed or co-precipitated species and are therefore subject to biogeochemical reactions resulting from utilization of the oxide as a terminal electron acceptor by DMRB. Ni2+ and Co2+ co-precipitated with goethite were released when oxide suspensions were subject to reduction by S. putrefaciens CN32, resulting in a net increase in aqueous concentrations of the metal ions (Zachara et al. 2001). Similarly, Ni2+ was also released from a Ni-substituted hydrous ferric oxide upon reduction by strain CN32 although under select conditions a Ni-substituted magnetite (FeIII2FeII1−xNixO4) formed (Fredrickson et al. 2001). Ni2+ was found to inhibit the overall reduction reaction by an undefined chemical mechanism that could be circumvented by addition of AQDS as an electron shuttle. Aluminum release during the bioreduction of an Al-substituted goethite associated with an Atlantic coastal plain sediment was congruent with the production of Fe(II) but the released Al was associated with a sorbed phase (Kukkadapu et al. 2001). DMRB can also promote the mobilization of arsenic as arsenate via the reductive dissolution of the ferric arsenate mineral scorodite (FeAsO4·2H2O) and from iron oxide sorption sites within sediments (Cummings et al. 1999). It is interesting to note that some DMRB are also capable of dissimilatory reduction of arsenate (AsV) to arsenite (AsIII) (Saltikov et al. 2003) but such a reduction reaction was not observed. Although there is considerable potential for mobilization of trace elements associated with metal oxides during bioreduction, the extent to which trace metals remain associated with the solid phase or are released to solution will be a function of the aqueous and solid-phase geochemical composition that ultimately controls the adsorption and precipitation reactions.
REDUCTIVE TRANSFORMATION OF Fe- AND Mn-CONTAINING MINERALS The rate and extent of microbial reduction of Fe(III) and Mn (III,IV) oxides in soils and sediments is a function of complex and highly coupled biological, chemical, and physical factors. Mineralogy plays a critical role with factors such as surface area (Roden and Zachara 1996), extent of structural disorder (Zachara et al. 1998), surface speciation (Roden and Urrutia 2002), and thermodynamics (Liu et al. 2001b) all influencing, to some extent, the reduction process. The physiological state of the organisms, including effects resulting from growth medium composition (Glasauer et al. 2003) and electron donor-acceptor ratios (Zachara et al. 2002), are other key variables that can affect bioreduction of Fe and Mn minerals but are currently poorly understood. The role of cell physiology on metal oxide reduction is currently under-appreciated and its importance warrants further research using physiologically and compositionally defined cultures that better represent and span the range of environmental conditions.
Laboratory studies A general observation made from laboratory studies is that poorly crystalline Fe(III) oxides such as ferrihydrite (Lovley and Phillips 1986) exhibit a greater degree of bioavailability than more crystalline phases such as lepidocrocite (J-FeOOH), goethite (D-FeOOH), or hematite (Fe2O3), although as a crystalline phase, lepidocrocite is far more bioavailable than the others. The same general trend appears to hold true for Mn oxides in that more highly crystalline phases such as pyrolusite (E-MnO2) are reduced more slowly than amorphous MnO2 or birnessite (Burdige et al. 1992). This effect has been attributed to differences in solubility of these phases and is supported by experiments demonstrating that the maximum rate of Fe(III) reduction was found to correlate positively with the solubility of the oxide (Bonneville et al. 2004). Caution must be exercised when using rates of abiotic reduction of Fe oxides as an
44
DiChristina, Fredrickson, Zachara
indicator of their susceptibility to enzymatic reduction as the surface area-normalized rates of bacterial reduction of ferrihydrite, lepidocrocite, goethite, and hematite were found to be quite similar, in contrast to reduction of the same phases by ascorbic acid (Roden 2003). Naturallyoccurring (geologic) Fe oxides have been found to be equally or more reducible than their synthetic counterparts with crystalline disorder and microheterogeneities potentially being dominant factors controlling microbial reduction (Zachara et al. 1998). The presence of solid phase sorbents and organic complexants can also facilitate microbial reduction of Fe oxides, presumably via the removal of reduction product (Fe2+) from oxide and bacterial surfaces (Urrutia et al. 1999). A similar enhancement in the extent of Fe oxide reduction can be achieved by continual replacement of the aqueous phase in semi-continuous cultures (Roden and Urrutia 1999) or in continuous flow columns where soluble Fe(II) is constantly removed (Roden et al. 2000). The products of oxide bioreduction can hence impede further reduction by passivating oxide and cell surfaces (Liu et al. 2001a,b) or can promote reduction by removing products from solution via secondary precipitation reactions. Transformation of Fe- and Mn-bearing minerals to secondary phases is similarly a function of a complex set of biogeochemical variables. A number of laboratory studies have probed the bioreductive transformation of poorly crystalline ferrihydrites to a wide range of phases including more highly ordered Fe(III) oxides such as 6-line ferrihydrite, goethite, lepidocrocite (Zachara et al. 2002, Fredrickson et al. 2003; Hansel et al. 2003; Kukkadapu et al. 2003, 2005), mixed valence oxides such as magnetite and green rust [FeII(6−x)FeIII(x)(OH)12]x+[(A2−)x/2·yH2O]x−] (Lovley et al. 1987; Fredrickson et al. 1998), or Fe(II) phases including siderite (FeCO3), vivianite (Fe3(PO4)2·8H2O), and ferrous hydroxy carbonate (Fe2(OH)2CO3) (Fredrickson et al. 1998; Hansel et al. 2003; Kukkadapu et al. 2003). The extent to which each of these phases may form is influenced by a range of factors including pH and aqueous solution composition (Fredrickson et al. 1998), the relative concentrations of the oxide (electron acceptor) and electron donor (Zachara et al. 2002; Fredrickson et al. 2003), the presence of co-precipitated ions (Fredrickson et al. 2001; Kukkadapu et al. 2004), and hydrodynamic-induced distributions of reduction products (Hansel et al. 2003). The formation of secondary mineral phases is less common or extensive when more highly ordered phases such as hematite or goethite are reduced by DMRB but nonetheless Fe(II) biominerals such as siderite and vivianite have been observed to form under conditions consistent with their solubility (Zachara et al. 1998). The lower solubility of more highly ordered phases such as goethite and hematite support lower concentrations of Fe(III)aq and DMRB-generated Fe(II)aq, relative to ferrihydrite, and therefore hinder precipitation of secondary minerals such as magnetite beyond reorganization on the mineral surface into nanometer-size spinel-like domains (Hansel et al. 2004). In addition to Fe oxides and oxyhydroxides, DMRB can also reduce structural Fe in clay minerals facilitating their dissolution (Kostka et al. 1996, 1999) or changes in clay morphology, structure, and composition (Dong et al. 2003a,b). The extent of microbial reduction of structural Fe(III) in smectite can be substantial, ranging to >90% (Kostka et al. 1999). The microbial reduction of structural Fe in clay can significantly alter clay chemical and physical properties such as was reported for studies with smectite where reduction resulted in reduced swelling pressure, total surface area, and surface charge density (Kostka et al. 1999). Structural Fe(II) in bioreduced ferruginous clays can also promote the reductive dehydrochlorination of organic contaminants such as pentachloroethane and trichloroethane (Cervini-Silva et al. 2003).
Field studies Controlled single-phase, single organism laboratory experiments can provide important mechanistic insights but it is often difficult to predict field behavior from such results due to environmental complexities and heterogeneities. One of the more well studied field sites is
Enzymology of Electron Transport
45
a crude oil-impacted shallow groundwater aquifer located near Bemidji, Minnesota, USA. Research at this site has documented aspects of microbial community structure (Rooney-Varga et al. 1999) and associated geochemical changes (Baedecker et al. 1993) over the length of the plume as the predominant respiratory process shifted from Fe(III) and Mn(III,IV) reduction to methanogenesis (Anderson and Lovley 1999). A detailed analysis of sediments from within the plume and from the pristine aquifer revealed significant differences in the mass content and identify of Fe(III) oxides consistent with microbial-driven reduction processes (Zachara et al. 2004). Comparisons between the texturally-similar source where bioavailable Fe(III) had been exhausted and Fe(III)-reducing zone sediments where bioavailable Fe(III) remained indicated that dispersed crystalline Fe(III) oxides and a portion of the poorly crystalline Fe(III) oxide fraction had been depleted from the source zone sediment. The presence of residual ferrihydrite in the anoxic plume sediment indicated that some fraction of the Fe(III) oxides were biologically inaccessible, possibly due to their residence in microfractures in the interior of lithic fragments. Interestingly, little evidence was found for biogenic ferrous mineral phases with the exception of thin siderite or ferroan calcite surface precipitates. It is clear that additional field-based research including characterization of samples in concert with modeling and laboratory-based experiments is needed to improve our ability to predict biogeochemical behavior of redox active metals in natural and engineered systems, particularly with regard to mineral biotransformation products and biominerals.
ROLE OF MICROBIAL METAL REDUCTION IN REDOX CYCLING As is the case for most microorganisms, DMRB rarely function alone but are members of complex communities whose collective, intertwined activities are responsible for catalyzing the cycling of elements in the biosphere. Many DMRB, particularly members of the genus Shewanella, are well-adapted to geochemically stratified environments where there is a gradient in electron acceptors available for oxidizing organic matter and H2. These adaptations include a relatively robust and diverse electron transport system that can engage a wide range of electron acceptors and an extensive network of regulatory genes, both two-component and transcriptional regulators (Heidelberg et al. 2002), that allow the organisms to sense and respond to their environment. These organisms play a critical role in such environments by oxidizing fermentation products, such as low molecular weight organic acids, coupled to respiration of Fe and Mn.
Redox cycling in chemically stratified environments The Black Sea is a prime example of a chemically (redox) stratified environment that exists over distances of tens of meters in the water column and where Fe and Mn undergo biogeochemical redox cycling (Nealson and Myers 1992). Fe and Mn are chemically unique ions in redox gradient environments because of their relatively low solubility in the oxidized state. As these metal ions are oxidized, either microbially or abiotically, they can precipitate and be subjected to gravitational settling into anoxic zones (Nealson and Saffarini 1994). As they enter the anoxic zones these precipitates can be reduced by DMRB coupled to organic matter oxidation at which point soluble species of Fe(II) and Mn(II) can diffuse upward into oxic zones. A number of excellent reviews have been published on this subject and the reader is directed to those for more information and examples (Burdige 1993; Nealson and Saffarini 1994; Nealson and Little 1997; Nealson et al. 2002). Previous investigations of redox stratified environments have justifiably focused on detailed geochemical characterization and baseline investigations into associated microbial properties using a combination of cultivation and cultivation-independent methods. The availability of whole genome sequences and the ability to sequence entire microbial communities (metagenomics) provide powerful tools to probe
46
DiChristina, Fredrickson, Zachara
microbial processes in these environments in the future (for additional discussion see chapters by Whitaker and Banfield 2005 and Nelson and Methé 2005).
Microscale redox cycling In addition to participating in redox cycling in chemocline environments that can span many meters, more recent research indicates that DMRB also participate in redox cycling over much shorter length scales. Because Fe(II) is rapidly oxidized by O2, neutrophilic microbial Fe oxidation is constrained to microaerobic environments where the abiotic oxidation of Fe(II) is limited by O2 availability and microbiologic rates of Fe(II) oxidation are competitive with abiotic rates. Hence, there is a potential for tight coupling between metal reduction and oxidation steps over short distance scales in environments with sharp microaerobic and anaerobic boundaries. In fact, it has been proposed that Fe(II)-oxidizing organisms localize themselves into a narrow band of cells and associated Fe(III) oxides to facilitate interfacing with DMRB (Roden et al. 2004). Such a coupling was experimentally investigated in microcosms consisting of ferrihydrite coated sand and a co-culture consisting of a lithotrophic Fe(II)-oxidizing bacterium (strain TW2) and the DMRB Shewanella alga strain BrY (Sobolev and Roden 2002). The co-culture exhibited minimal Fe oxide accumulation at the sand-water interface despite measurable dissolved O2 to a depth of 2 mm below the interface whereas a distinct layer of Fe oxide formed at this same interface in microcosms containing BrY alone. Direct microscopic observations revealed close juxtapositioning of both organisms in the upper few mm of sand. Subsequent investigations using the identical experimental system noted relatively low concentrations of Fe(II) in the co-culture relative to the microcosm containing BrY alone and suggested that Fe(III)-binding ligands impeded the formation of Fe(III) oxides and were responsible for a soluble/colloidal Fe(III) phase that facilitated the redox cycling of Fe (Roden et al. 2004). These results established the potential for a tight coupling between microbial metal reduction and oxidation processes to promote rapid microscale cycling of Fe. More research, however, is needed to better define the nature and role of Fe(III)-complexing ligands in microscale Fe cycling and whether interactions between metal-reducing and metaloxidizing extend beyond simply Fe(II)-Fe(III) cycling.
SUMMARY Most of the electron acceptors respired by prokaryotes (O2, NO3−, SO42−, and CO2) are soluble both before and after reduction, while many of the metals respired by DMRB exhibit substantially different solubility properties in the oxidized versus the reduced states. Because Fe(III) and Mn(III,IV) exist predominantly as oxyhydroxide minerals in oxic environments, DMRB must overcome the fundamental problem of engagement of the electron transport system with poorly soluble minerals. Other metals, such as U(VI) and Tc(VII), are relatively soluble in oxic environments, typically as anionic uranyl carbonate complexes and as pertechnetate, respectively. Aqueous Tc(VII) and U(VI) and other soluble electron acceptors are therefore free to enter the cell periplasm through porins or channels in the OM. Upon reduction to the +4 oxidation state, however, U and Tc precipitate as uraninite and hydrous Tc(IV) oxides, phases that have been identified in anaerobic suspensions of DMRB cells incubated with U(VI) or Tc(VII) and appropriate electron donors. The dilemma of reducing soluble electron acceptors to insoluble end-products is no less serious than the one dealing with reduction of solid electron acceptors. The first section of this chapter has highlighted the latest findings on the novel respiratory strategies employed by DMRB to overcome this dilemma, including direct enzymatic reduction, electron shuttling pathways and metal solubilization by exogenous or bacterially-produced organic ligands followed by reduction of soluble organicmetal compounds. The second section has emphasized the geochemical consequences of DMRB activity, including the direct and indirect effects on metal solubility, the reductive
Enzymology of Electron Transport
47
transformation of Fe- and Mn-containing minerals, and the biogeochemical cycling of metals at redox interfaces in chemically stratified environments.
ACKNOWLEDGMENTS The authors wish to thank David Bates, Justin Burns, Jason Dale, Amanda Payne and Tara Hoyem for help in manuscript preparation. The authors also with to thank Alice Donalkova, Dwayne Elias, David Kennedy, Matthew Marshall, and Andrew Plymale for providing the transmission electron microscopy images. Financial support for this work was provided by the National Science Foundation and the U.S. Department of Energy, Office of Biological and Environmental Research.
REFERENCES Anderson RT, Lovley DR (1999) Naphthalene and benzene degradation under Fe(II)-reducing conditions in petroleum-contaminated aquifers. Biorem J 3:121-135 Arnold RG, DiChristina TJ, Hoffmann MR (1988) Reductive dissolution of iron-oxides by Pseudomonas sp. 200. Biotech Bioeng 32:1081-1096 Aubert C, Brugna M, Dolla A, Bruschi M, Giudici-Orticoni MT (2000) A sequential electron transfer from hydrogenases to cytochromes in sulfate-reducing bacteria. Biochim Biophys Acta 1476:85-92 Baedecker MJ, Cozzarelli IM, Eganhouse RP, Siegel DI, Bennett PC (1993) Crude-oil in a shallow sand and gravel aquifer. 3. Biogeochemical reactions and mass-balance modeling in anoxic groundwater. Appl Geochem 8:569-586 Bagramyan K, Trchounian A (2003) Structural and functional features of formate hydrogen lyase, an enzyme of mixed-acid fermentation from Escherichia coli. Biochemistry-Moscow 68:1159-1170 Beliaev AS, Saffarini DA (1998) Shewanella putrefaciens mtrB encodes an outer membrane protein required for Fe(III) and Mn(IV) reduction. J Bacteriol 180:6292-7 Bonneville S, Van Cappellen P, Behernds T (2004) Microbial reduction of iron(III) oxyhydroxides: effects of mineral solubility and availability. Chem Geol 212:255-268 Brooks SC, Fredrickson JK, Carroll SL, Kennedy DW, Zachara JM, Plymale AE, Kelly SD, Kemner KM, Fendorf S (2003) Inhibition of bacterial U(VI) reduction by calcium. Environ Sci Technol 37:1850-1858 Burdige DJ (1993) The biogeochemistry of manganese and iron reduction in marine-sediments. Earth-Science Reviews 35:249-284 Burdige DJ, Dhakar SP, Nealson KH (1992) Effects of manganese oxide mineralogy on microbial and chemical manganese reduction. Geomicrobiol J 10:27-48 Butler A (2003) Iron acquisition: straight up and on the rocks? Nature Struct Biol 10:240-241 Caccavo F, Blakemore RP, Lovley DR (1992) A hydrogen-oxidizing, Fe(III)-reducing microorganism from the Great Bay Estuary, New-Hampshire. Appl Environ Microbiol 58:3211-3216 Cervini-Silva J, Kostka JE, Larson RA, Stucki JW, Wu J (2003) Dehydrochlorination of 1,1,1-trichloroethane and pentachloroethane by microbially reduced ferruginous smectite. Environ Toxicol Chem 22:10461050 Chin KJ, Esteve-Nunez A, Leang C, Lovley DR (2004) Direct correlation between rates of anaerobic respiration and levels of mRNA for key respiratory genes in Geobacter sulfurreducens. Appl Environ Microbiol 70: 5183-5189 Coates JD, Cole KA, Chakraborty R, O’Connor SM, Achenbach LA (2002) Diversity and ubiquity of bacteria capable of utilizing humic substances as electron donors for anaerobic respiration. Appl Environ Microbiol 68:2445-52 Coates JD, Ellis DJ, Blunt-Harris EL, Gaw CV, Roden EE, Lovley DR (1998) Recovery of humic-reducing bacteria from a diversity of environments. Appl Environ Microbiol 64:1504-9 Cochran JK, Carey AE, Sholkovitz ER, Suprenant LD (1986) The geochemistry of uranium and thorium in coastal marine sediments and sediment pore waters. Geochim Cosmochim Acta 50:663-680 Cui DQ, Eriksen TE (1996) Reduction of pertechnetate by ferrous iron in solution: Influence of sorbed and precipitated Fe(II). Environ Sci Technol 30:2259-2262 Cummings DE, Caccavo F, Fendorf S, Rosenzweig RF (1999) Arsenic mobilization by the dissimilatory Fe(III)reducing bacterium Shewanella alga BrY. Environ Sci Technol 33:723-729 De Luca G, De Philip P, Dermoun Z, Rousset M, Vermeglio A (2001) Reduction of technetium(VII) by Desulfovibrio fructosovorans is mediated by the nickel-iron hydrogenase. Appl Environ Microbiol 67: 4583-4587
48
DiChristina, Fredrickson, Zachara
Desvaux M, Parham NJ, Scott-Tucker A, Henderson IR (2004) The general secretory pathway: a general misnomer? Trends Microbiol 12:306-309 DiChristina TJ, Adiga M, Bates D, Burns J, Haller CA (2005) Submitted for review. DiChristina TJ, DeLong EF (1994) Isolation of anaerobic respiratory mutants of Shewanella putrefaciens and genetic analysis of mutants deficient in anaerobic growth on Fe3+. J Bacteriol 176:1468-74 DiChristina TJ, Moore CM, Haller CA (2002) Dissimilatory Fe(III) and Mn(IV) reduction by Shewanella putrefaciens requires ferE, a homolog of the pulE (gspE) type II protein secretion gene. J Bacteriol 184: 142-51 Dong HL, Kostka JE, Kim J (2003a) Microscopic evidence for microbial dissolution of smectite. Clays Clay Mineral 51:502-512 Dong HL, Kukkadapu RK, Fredrickson JK, Zachara JM, Kennedy DW, Kostandarithes HM (2003b) Microbial reduction of structural Fe(III) in illite and goethite. Environ Sci Technol 37:1268-1276 Eriksen TE, Ndalamba P, Bruno J, Caceci M (1992) The solubility of TcO2•nH2O in neutral to alkaline-solutions under constant pCO2. Radiochim Acta 58-9:67-70 Fendorf SE, Zasoski RJ (1992) Chromium(III) oxidation by delta-MnO2. Characterization. Environ Sci Technol 26:79-85 Filloux A (2004) The underlying mechanisms of type II protein secretion. Biochim Biophys Acta 1694:163179 Finch R, Murakami T (1999) Systematics and paragenesis of uranium minerals. Rev Mineral 38:91-180 Finneran KT, Anderson RT, Nevin KP, Lovley DR (2002) Potential for Bioremediation of uranium-contaminated aquifers with microbial U(VI) reduction. Soil Sediment Contam 11:339-357 Francis AJ, Dodge CJ, Lu FL, Halada GP, Clayton CR (1994) XPS and XANES studies of uranium reduction by Clostridium Sp. Environ Sci Technol 28:636-639 Fredrickson JK, Kota S, Kukkadapu RK, Liu CX, Zachara JM (2003) Influence of electron donor/acceptor concentrations on hydrous ferric oxide (HFO) bioreduction. Biodegradation 14:91-103 Fredrickson JK, Zachara JM, Kennedy DW, Dong HL, Onstott TC, Hinman NW, Li SM (1998) Biogenic iron mineralization accompanying the dissimilatory reduction of hydrous ferric oxide by a groundwater bacterium. Geochim Cosmochim Acta 62:3239-3257 Fredrickson JK, Zachara JM, Kennedy DW, Duff MC, Gorby YA, Li SMW, Krupka KM (2000) Reduction of U(VI) in goethite (alpha-FeOOH) suspensions by a dissimilatory metal-reducing bacterium. Geochim Cosmochim Acta 64:3085-3098 Fredrickson JK, Zachara JM, Kennedy DW, Kukkadapu RK, McKinley JP, Heald SM, Liu C, Plymale AE (2004) Reduction of TcO4− by sediment-associated biogenic Fe(II). Geochim Cosmochim Acta 68:3171-3187 Fredrickson JK, Zachara JM, Kennedy DW, Liu CX, Duff MC, Hunter DB, Dohnalkova A (2002) Influence of Mn oxides on the reduction of uranium(VI) by the metal-reducing bacterium Shewanella putrefaciens. Geochim Cosmochim Acta 66:3247-3262 Fredrickson JK, Zachara JM, Kukkadapu RK, Gorby YA, Smith SC, Brown CF (2001) Biotransformation of Nisubstituted hydrous ferric oxide by an Fe(III)-reducing bacterium. Environ Sci Technol 35:703-712 Ganesh R, Robinson KG, Reed GD, Sayler GS (1997) Reduction of hexavalent uranium from organic complexes by sulfate- and iron-reducing bacteria. Appl Environ Microbiol 63:4385-4391 Glasauer S, Weidler PG, Langley S, Beveridge TJ (2003) Controls on Fe reduction and mineral formation by a subsurface bacterium. Geochim Cosmochim Acta 67:1277-1288 Gilbert B, Banfield JF (2005) Molecular-scale processes involving nanoparticulate minerals in biogeochemical systems. Rev Mineral Geochem 59:109-155 Gorby YA, Lovley DR (1992) Enzymatic uranium precipitation. Environ Sci Technol 26:205-207 Grenthe I (1992) Chemical Thermodynamics of Uranium. North Holland, Amsterdam Haas JR, DiChristina TJ (2002) Effects of Fe(III) chemical speciation on dissimilatory Fe(III) reduction by Shewanella putrefaciens. Environ Sci Technol 63:373-380 Haines RI, Owen DG, Vandergraaf TF (1987) Technetium-iron oxide reactions under anaerobic conditions: a Fourier transform infrared, FTIR study. Nuclear J Canada 1:32-37 Hansel CM, Benner SG, Neiss J, Dohnalkova A, Kukkadapu RK, Fendorf S (2003) Secondary mineralization pathways induced by dissimilatory iron reduction of ferrihydrite under advective flow. Geochim Cosmochim Acta 67:2977-2992 Hansel CM, Benner SG, Nico P, Fendorf S (2004) Structural constraints of ferric (hydr)oxides on dissimilatory iron reduction and the fate of Fe(II). Geochim Cosmochim Acta 68:3217-3229 Harada E, Kumagai J, Ozawa K, Imabayashi S, Tsapin AS, Nealson KH, Meyer TE, Cusanovich MA, Akutsu H (2002) A directional electron transfer regulator based on heme-chain architecture in the small tetraheme cytochrome c from Shewanella oneidensis. FEBS Lett 532:333-7 Heidelberg JF, Paulsen IT, Nelson KE, Gaidos EJ, Nelson WC, Read TD, Eisen JA, Seshadri R, Ward N, Methé B, et al. (2002) Genome sequence of the dissimilatory metal ion-reducing bacterium Shewanella oneidensis. Nat Biotechnol 20:1118-23
Enzymology of Electron Transport
49
Hernandez ME, Kappler A, Newman DK (2004) Phenazines and other redox-active antibiotics promote microbial mineral reduction. Appl Environ Microbiol 70:921-8 Kukkadapu RK, Zachara JM, Fredrickson JK, Kennedy DW, Dohnalkova AC, McCready DE (2005) Ferrous hydroxy carbonate is a stable transformation product of biogenic magnetite. Am Mineral 90:510-515 Kashefi K, Lovley DR (2000) Reduction of Fe(III), Mn(IV), and toxic metals at 100 degrees C by Pyrobaculum islandicum. Appl Environ Microbiol 66:1050-1056 Khijniak TV, Medvedeva-Lyalikova NN, Simonoff M (2003) Reduction of pertechnetate by haloalkaliphilic strains of Halomonas. FEMS Microbiol Ecol 44:109-115 Kieft TL, Fredrickson JK, Onstott TC, Gorby YA, Kostandarithes HM, Bailey TJ, Kennedy DW, Li SW, Plymale AE, Spadoni CM, Gray MS (1999) Dissimilatory reduction of Fe(III) and other electron acceptors by a Thermus isolate. Appl Environ Microbiol 65:1214-1221 Kostka JE, Haefele E, Viehweger R, Stucki JW (1999) Respiration and dissolution of iron(III) containing clay minerals by bacteria. Environ Sci Technol 33:3127-3133 Kostka JE, Stucki JW, Nealson, KH, Wu J (1996) Reduction of structural Fe(III) in smectite by a pure culture of Shewanella putrefaciens MR-1. Clays Clay Mineral 44:522-529 Kostka JE, Luther GW, Nealson KH (1995) Chemical and biological reduction of Mn(III)-pyrophosphate complexes: potential importance of dissolved Mn(III) as an environmental oxidant. Geochim Cosmochim Acta 59:885-894 Kukkadapu RK, Zachara JM, Fredrickson JK, Kennedy DW (2004) Biotransformation of two-line silicaferrihydrite by a dissimilatory Fe(III)-reducing bacterium: formation of carbonate green rust in the presence of phosphate. Geochim Cosmochim Acta 68:2799-2814 Kukkadapu RK, Zachara JM, Fredrickson JK, Smith SC, Dohnalkova AC, Russell CK (2003) Transformation of 2-line ferrihydrite to 6-line ferrihydrite under oxic and anoxic conditions. Am Mineral 88:1903-1914 Kukkadapu RK, Zachara JM, Smith SC, Fredrickson JK, Liu CX (2001) Dissimilatory bacterial reduction of Al-substituted goethite in subsurface sediments. Geochim Cosmochim Acta 65:2913-2924 Langmuir D (1997) Aqueous Environmental Geochemistry. Prentice Hall, Upper Saddle River, New Jersey Leang C, Coppi MV, Lovley DR (2003) OmcB, a c-type polyheme cytochrome, involved in Fe(III) reduction in Geobacter sulfurreducens. J Bacteriol 185:2096-2103 Leang C, Lovley DR (2005) Regulation of two highly similar genes, OmcB and OmcC, in a 10 kb chromosomal duplication in Geobacter sulfurreducens. Microbiology-Sgm 151:1761-1767 Lengeler JW, Drews G, Schlegel HG (1999) Biology of the Prokaryotes. Georg Thieme Verlag, Stuttgart, Germany Liger E, Charlet L, Van Cappellen P (1999) Surface catalysis of uranium(VI) reduction by iron(II). Geochim Cosmochim Acta 63:2939-2955 Liu CG, Zachara JM, Gorby YA, Szecsody JE, Brown CF (2001a) Microbial reduction of Fe(III) and sorption/ precipitation of Fe(II) on Shewanella putrefaciens strain CN32. Environ Sci Technol 35:1385-1393 Liu CX, Gorby YA, Zachara JM, Fredrickson JK, Brown CF (2002a) Reduction kinetics of Fe(III), Co(III), U(VI) Cr(VI) and Tc(VII) in cultures of dissimilatory metal-reducing bacteria. Biotechnol Bioeng 80: 637-649 Liu CX, Kota S, Zachara JM, Fredrickson JK, Brinkman CK (2001b) Kinetic analysis of the bacterial reduction of goethite. Environ Sci Technol 35:2482-2490 Liu CX, Zachara JM, Fredrickson JK, Kennedy DW, Dohnalkova A (2002b) Modeling the inhibition of the bacterial reduction of U(VI) by beta-MnO2(S)(g). Environ Sci Technol 36:1452-1459 Lloyd JR (2003) Microbial reduction of metals and radionuclides. FEMS Microbiol Rev 27:411-425 Lloyd JR, Cole JA, Macaskie LE (1997) Reduction and removal of heptavalent technetium from solution by Escherichia coli. J Bacteriol 179:2014-2021 Lloyd JR, Leang C, Myerson ALH, Coppi MV, Cuifo S, Methé B, Sandler SJ, Lovley DR (2003) Biochemical and genetic characterization of PpcA, a periplasmic c-type cytochrome in Geobacter sulfurreducens. Biochem J 369:153-161 Lloyd JR, Sole VA, Van Praagh CVG, Lovley DR (2000) Direct and Fe(II)-mediated reduction of technetium by Fe(III)-reducing bacteria. Appl Environ Microbiol 66:3743-3749 Lovley DR (1995) Bioremediation of organic and metal contaminants with dissimilatory metal reduction. J Indust Microbiol 14:85-93 Lovley DR, Coates JD, BluntHarris EL, Phillips EJP, Woodward JC (1996) Humic substances as electron acceptors for microbial respiration. Nature 382:445-448 Lovley DR, Holmes DE, Nevin KP (2004) Dissimilatory Fe(III) and Mn(IV) reduction. Adv Microb Physiol 49:219-86 Lovley DR, Phillips EJP (1986) Availability of ferric iron for microbial reduction in bottom sediments of the fresh-water Tidal Potomac River. Appl Environ Microbiol 52:751-757 Lovley DR, Phillips EJP (1988) Novel mode of microbial energy-metabolism - organic-carbon oxidation coupled to dissimilatory reduction of iron or manganese. Appl Environ Microbiol 54:1472-1480
50
DiChristina, Fredrickson, Zachara
Lovley DR, Phillips EJP, Gorby YA, Landa ER (1991) Microbial reduction of uranium. Nature 350:413-416 Lovley DR, Stolz JF, Nord GL, Phillips EJP (1987) Anaerobic production of magnetite by a dissimilatory ironreducing microorganism. Nature 330:252-254 Lovley DR, Widman PK, Woodward JC, Phillips EJP (1993) Reduction of uranium by cytochrome-C(3) of Desulfovibrio Vulgaris. Appl Environ Microbiol 59:3572-3576 Lovley DR, Woodward JC (1996) Mechanisms for chelator stimulation of microbial Fe(III)-oxide reduction. Chem Geol 132:19-24 Lyalikova NN, Khizhnyak TV (1996) Reduction of heptavalent technetium by acidophilic bacteria of the genus Thiobacillus. Microbiology 65:468-473 Madigan MT, Martinko JM (2006) Brock Biology of Microorganisms Prentice Hall, Upper Saddle River, NJ Methé BA, Webster J, Nevin K, Butler J, Lovley DR (2005) DNA microarray analysis of nitrogen fixation and Fe(III) reduction in Geobacter sulfurreducens. Appl Environ Microbiol 71:2530-2538 Meyer RE, Arnold WD, Case FI, O’Kelley GD (1991) Solubilities of Tc(IV)-oxides. Radiochim Acta 55:11-18 Myers CR, Myers JM (1992) Localization of cytochromes to the outer membrane of anaerobically grown Shewanella putrefaciens MR-1. J Bacteriol 174:3429-38 Myers CR, Myers JM (1993a) Ferric reductase is associated with the membranes of anaerobically grown Shewanella Putrefaciens MR-1. FEMS Microbiol Lett 108:15-22 Myers CR, Myers JM (1993b) Role of menaquinone in the reduction of fumarate, nitrate, iron(III) and manganese(IV) by Shewanella Putrefaciens MR-1. FEMS Microbiol Lett 114:215-222 Myers CR, Myers JM (1997) Cloning and sequence of cymA a gene encoding a tetraheme cytochrome c required for reduction of iron(III), fumarate, and nitrate by Shewanella putrefaciens MR-1. J Bacteriol 179:1143-1152 Myers CR, Myers JM (2002) MtrB is required for proper incorporation of the cytochromes OmcA and OmcB into the outer membrane of Shewanella putrefaciens MR-1. Appl Environ Microbiol 68:5585-94 Myers CR, Myers JM (2003a) Cell surface exposure of the outer membrane cytochromes of Shewanella oneidensis MR-1. Lett Appl Microbiol 37:254-258 Myers CR, Nealson KH (1988) Microbial reduction of manganese oxides - interactions with iron and sulfur. Geochim Cosmochim Acta 52:2727-2732 Myers CR, Nealson KH (1990) Respiration-linked proton translocation coupled to anaerobic reduction of manganese(IV) and iron(III) in Shewanella putrefaciens MR-1. J Bacteriol 172:6232-8 Myers JM, Myers CR (2000) Role of the tetraheme cytochrome CymA in anaerobic electron transport in cells of Shewanella putrefaciens MR-1 with normal levels of menaquinone. J Bacteriol 182:67-75 Myers JM, Myers CR (2001) Role for outer membrane cytochromes OmcA and OmcB of Shewanella putrefaciens MR-1 in reduction of manganese dioxide. Appl Environ Microbiol 67:260-9 Myers JM, Myers CR (2003b) Overlapping role of the outer membrane cytochromes of Shewanella oneidensis MR-1 in the reduction of manganese(IV) oxide. Lett Appl Microbiol 37:21-5 Nealson KH, Belz A, McKee B (2002) Breathing metals as a way of life: geobiology in action. Antonie Van Leeuwenhoek Int J Gen Molec Microbiol 81:215-222 Nealson KH, Little B (1997) Breathing manganese and iron: solid-state respiration. Adv Appl Microbiol 45: 213-239 Nealson KH, Myers CR (1992) Microbial reduction of manganese and iron: new approaches to carbon cycling. Appl Environ Microbiol 58:439-43 Nealson KH, Saffarini D (1994) Iron and manganese in anaerobic respiration - environmental significance, physiology, and regulation. Annu Rev Microbiol 48:311-343 Nelson KE, Methé B (2005) Metabolism and genomics: adventures derived from complete genome sequencing. Rev Mineral Geochem 59:279-294 Nevin KP, Lovley DR (2000) Lack of production of electron-shuttling compounds or solubilization of Fe(III) during reduction of insoluble Fe(III) oxide by Geobacter metallireducens. Appl Environ Microbiol 66: 2248-2251 Nevin KP, Lovley DR (2002) Mechanisms for accessing insoluble Fe(III) oxide during dissimilatory Fe(III) reduction by Geothrix fermentans. Appl Environ Microbiol 68:2294-2299 Newman DK, Gralnick JA (2005) What genetics offers geobiology. Rev Mineral Geochem 59:9-26 Newman DK, Kolter R (2000) A role for excreted quinones in extracellular electron transfer. Nature 405:94-97 Ortiz-Bernad I, Anderson RT, Vrionis HA, Lovley DR (2004) Resistance of solid-phase U(VI) to microbial reduction during in situ bioremediation of uranium-contaminated groundwater. Appl Environ Microbiol 70:7558-7560 Pasilis SP, Pemberton JE (2003) Speciation and coordination chemistry of uranyl(VI)-citrate complexes in aqueous solution. Abstr Papers Am Chem Soc 225:U807-U807 Payne AN, DiChristina TJ (2005) Submitted for review. Payne RB, Gentry DM, Rapp-Giles BJ, Casalot L, Wall JD (2002) Uranium reduction by Desulfovibrio desulfuricans strain G20 and a cytochrome c3 mutant. Appl Environ Microbiol 68:3129–3132
Enzymology of Electron Transport
51
Payne RB, Casalot L, Rivere T, Terry JH, Larsen L, Giles BJ, Wall JD (2004) Interaction between uranium and the cytochrome c3 of Desulfovibrio desulfuricans strain G20. Arch Microbiol 181:398-406 Pitts KE, Dobbin PS, Reyes-Ramirez F, Thomson AJ, Richardson DJ, Seward HE (2003) Characterization of the Shewanella oneidensis MR-1 decaheme cytochrome MtrA: expression in Escherichia coli confers the ability to reduce soluble Fe(III) chelates. J Biol Chem 278:27758-65 Pugsley AP (1993) The complete general secretory pathway in gram-negative bacteria. Microbiol Rev 57:50108 Pugsley AP, Francetic O, Hardie K, Possot OM, Sauvonnet N, Seydel A (1997) Pullulanase: model protein substrate for the general secretory pathway of gram-negative bacteria. Folia Microbiologica 42:184-192 Rai D, Felmy AR, Ryan JL (1990) Uranium(IV) hydrolysis constants and solubility product of UO2·xH2O(Am). Inorganic Chemistry 29:260-264 Rard JA (1999) Chemical Thermodynamics of Technetium. Elsevier, Amsterdam. Rard JA (1983) Critical review of the chemistry and thermodynamics of technetium and some of its inorganic compounds and aqueous species. Livermore, California Richardson DJ (2000) Bacterial respiration: a flexible process for a changing environment. Microbiology-Sgm 146:551-571 Roden EE (2003) Fe(III) oxide reactivity toward biological versus chemical reduction. Environ Sci Technol 37: 1319-1324 Roden EE, Sobolev D, Glazer B, Luther GW (2004) Potential for microscale bacterial Fe redox cycling at the aerobic-anaerobic interface. Geomicrobiol J 21:379-391 Roden EE, Urrutia MM (1999) Ferrous iron removal promotes microbial reduction of crystalline iron(III) oxides. Environ Sci Technol 33:2492-2492 Roden EE, Urrutia MM (2002) Influence of biogenic Fe(II) on bacterial crystalline Fe(III) oxide reduction. Geomicrobiol J 19:209-252 Roden EE, Urrutia MM, Mann CJ (2000) Bacterial reductive dissolution of crystalline Fe(III) oxide in continuous-flow column reactors. Appl Environ Microbiol 66:1062-1065 Roden EE, Zachara JM (1996) Microbial reduction of crystalline iron(III) oxides: influence of oxide surface area and potential for cell growth. Environ Sci Technol 30:1618-1628 Rooney-Varga JN, Anderson RT, Fraga JL, Ringelberg D, Lovley DR (1999) Microbial communities associated with anaerobic benzene degradation in a petroleum-contaminated aquifer. Appl Environ Microbiol 65: 3056-3063 Saffarini DA, Blumerman SL, Mansoorabadi KJ (2002) Role of menaquinones in Fe(III) reduction by membrane fractions of Shewanella putrefaciens. J Bacteriol 184:846-8 Saltikov CW, Cifuentes A, Venkateswaran K, Newman DK (2003) The ars detoxification system is advantageous but not required for As(V) respiration by the genetically tractable Shewanella species strain ANA-3. Appl Environ Microbiol 69:2800-2809 Schwalb C, Chapman SK, Reid GA (2003) The tetraheme cytochrome CymA is required for anaerobic respiration with dimethyl sulfoxide and nitrite in Shewanella oneidensis. Biochemistry 42:9491-9497 Shyu JB, Lies DP, Newman DK (2002) Protective role of tolC in efflux of the electron shuttle anthraquinone2,6-disulfonate. J Bacteriol 184:1806-10 Sobolev D, Roden EE (2002) Evidence for rapid microscale bacterial redox cycling of iron in circumneutral environments. Antonie Van Leeuwenhoek Int J Gen Molec Microbiol 81:587-597 Stumm W (1992) Chemistry of the Solid-Water Interface. Wiley Interscience, New York. Suzuki Y, Kelly SD, Kemner KM, Banfield JF (2002) Radionuclide contamination - nanometer-size products of uranium bioreduction. Nature 419:134-134 Taillefert M, DiChristina TJ (2005) Submitted for review. Taillefert M, Hover VC, Rozan TF, Theberge SM, Luther III GW (2002) The influence of sulfides on soluble organic-Fe(III) in anoxic sediment porewaters. Estuaries 25:1088-1096 Turick CE, Tisa LS, Caccavo F Jr. (2002) Melanin production and use as a soluble electron shuttle for Fe(III) oxide reduction and as a terminal electron acceptor by Shewanella algae BrY. Appl Environ Microbiol 68: 2436-44 Urrutia MM, Roden EE, Zachara JM (1999) Influence of aqueous and solid-phase Fe(II) complexants on microbial reduction of crystalline iron(III) oxides. Environ Sci Technol 33:4022-4028 Wade R, DiChristina TJ (2000) Isolation of U(VI) reduction-deficient mutants of Shewanella putrefaciens. FEMS Microbiol Lett 184:143-148 Whitaker RJ, Banfield JF (2005) Population dynamics through the lens of extreme environments. Rev Mineral Geochem 59:259-277 Wielinga B, Bostick B, Hansel CM, Rosenzweig RF, Fendorf S (2000) Inhibition of bacterially promoted uranium reduction: Ferric (hydr)oxides as competitive electron acceptors. Environ Sci Technol 34:21902195
52
DiChristina, Fredrickson, Zachara
Wielinga B, Mizuba MM, Hansel CM, Fendorf S (2001) Iron promoted reduction of chromate by dissimilatory iron-reducing bacteria. Environ Sci Technol 35:522-527 Wildung RE, Gorby YA, Krupka KM, Hess NJ, Li SW, Plymale AE, McKinley JP, Fredrickson JK (2000) Effect of electron donor and solution chemistry on products of dissimilatory reduction of technetium by Shewanella putrefaciens. Appl Environ Microbiol 66:2451-2460 Wildung RE, Li SW, Murray CJ, Krupka KM, Xie Y, Hess NJ, Roden EE (2004) Technetium reduction in sediments of a shallow aquifer exhibiting dissimilatory iron reduction potential. FEMS Microbiol Ecol 49:151-162 Zachara JM, Fredrickson JK, Li SM, Kennedy DW, Smith SC, Gassman PL (1998) Bacterial reduction of crystalline Fe3+ oxides in single phase suspensions and subsurface materials. Am Mineral 83:1426-1443 Zachara JM, Fredrickson JK, Smith SC, Gassman PL (2001) Solubilization of Fe(III) oxide-bound trace metals by a dissimilatory Fe(III) reducing bacterium. Geochim Cosmochim Acta 65:75-93 Zachara JM, Kukkadapu RK, Gassman PL, Dohnalkova A, Fredrickson JK, Anderson T (2004) Biogeochemical transformation of Fe minerals in a petroleum-contaminated aquifer. Geochim Cosmochim Acta 68:17911805 Zachara JM, Kukkadapu RK, Fredrickson JK, Gorby YA, Smith SC (2002) Biomineralization of poorly crystalline Fe(III) oxides by dissimilatory metal reducing bacteria. Geomicrobiol J 19:179-207
4
Reviews in Mineralogy & Geochemistry Vol. 59, pp. 53-84, 2005 Copyright © Mineralogical Society of America
Siderophores and the Dissolution of Iron-Bearing Minerals in Marine Systems Stephan M. Kraemer Department of Environmental Sciences ETH Zürich 8092 Zürich, Switzerland
[email protected]
Alison Butler Department of Chemistry and Biochemistry University of California, Santa Barbara Santa Barbara, California, 93106-9510, U.S.A.
Paul Borer Swiss Federal Institute of Aquatic Science and Technology 8600 Dübendorf, Switzerland
Javiera Cervini-Silva Department of Earth and Planetary Science University of California, Berkeley Berkeley, California, 94720-3110, U.S.A. INTRODUCTION Scope of this review Metal ions have critical functions in biological processes and provided important biological feedbacks with the environment throughout earth history. For example, Fe, Ni, Mg, Mn, Mo, Cu, W, V, and Zn play an essential role as catalysts in key compounds involved in respiration, photosynthesis, nitrogen fixation, and many other enzymatic processes (da Silva and Williams 2001). It is likely that some of these metal bearing enzymes evolved early in the history of life. However, the availability of metal ions has changed dramatically in the last 3.8 billion years due to changes in atmospheric and marine chemistry (Canfield 1998; Anbar and Knoll 2002; Saito et al. 2003). Homeostasis of metal ions (i.e., the maintenance of an approximately constant intracellular concentration) became a major problem over geologic time scales and in contemporary environments. Iron is an essential nutrient for almost all known organisms due to its important role in important enzymatic processes. While iron is the fourth most abundant element in the Earth crust, its low bioavailability limits primary production in various terrestrial and marine environments. The limitation of primary production in important ecosystems has significant implications for the global carbon cycle and the world climate. This review focuses on geochemical aspects of biological iron acquisition in iron limited “high nutrient low chlorophyll” (HNLC) ocean regions. The purpose of this review is to discuss the effect of biogenic iron specific ligands, the so called siderophores, on the iron speciation, and the dissolution of iron-bearing minerals in the presence of siderophores in these marine systems. 1529-6466/05/0059-0004$05.00
DOI: 10.2138/rmg.2005.59.4
54
Kraemer, Butler, Borer, Cervini-Silva
Important iron sources for algal growth in HNLC ocean regions are the upward mixing of iron rich subsurface waters to the euphotic zone and the atmospheric deposition of dust particles on the sea surface followed by the dissolution of iron from these particles into the surface water. Iron sinks include the scavenging of iron onto inorganic and organic particles in the water and subsequent settling and sedimentation of these particles out of the water column. A number of thermodynamically or kinetically controlled processes influence the redistribution of iron among various chemical species in the water and on the water-solid interfaces along the water column. Among those processes are dissolution and formation of iron-bearing minerals, iron adsorption on and desorption from inorganic and organic particles, (photo-) reduction of Fe(III) and oxidation of Fe(II), and iron complexation by organic and inorganic ligands. Marine micro-organisms and phytoplankton may influence or even regulate these processes through 1) the biological exudation of iron binding ligands; 2) reduction of Fe(III) at the cell surface or Fe(III) photo reduction in the presence of biogenic chromophores which may change the redox speciation of iron; 3) transformation of colloidal iron to more bioavailable forms in the digestive system of grazers; 4) biological recycling of iron from sinking biomass. In iron limiting environments, such biogeochemical processes are critical to enhance iron uptake and/or to decrease iron bioavailability for competing species. Unfortunately, very little is known about the kinetics and fluxes associated with many of these processes. An important impediment to field research in this area is the astoundingly low iron concentration in the HNLC surface waters. Dissolved iron in these ocean areas have a nutrient-like vertical distribution with average sea surface concentrations in the subnanomolar range and increasing concentrations with depth (Johnson et al. 1997). Considering the tremendous problems involved in contamination free sampling and chemical analysis in this concentration range, a remarkable range of information has been gathered on dissolved organic and inorganic iron speciation. A key process of iron cycling in HNLC ocean regions and the focus of this review is the dissolution of iron from dust as part of biological iron acquisition strategies. We will summarize pertinent information from field and laboratory studies and discuss important dissolution mechanisms. For in-depth discussion of related issues the reader is referred to a number of excellent review articles (Jickells 1999; Boyd 2002; Morel and Price 2003).
The iron limitation hypothesis Over glacial/interglacial time scales, CO2 levels in the earth atmosphere are strongly influenced by phytoplanktonic photosynthesis in the oceans. In HNLC ocean areas phytoplankton productivity and consequently the efficiency of the biological CO2 pump is not limited by macronutrients such as phosphate or nitrate, since their concentrations at the HNLC sea surface waters are high. Martin and Fitzwater (1988) proposed that primary productivity in these ocean areas is limited by the low availability of the micronutrient iron. Iron fertilization experiments in the Equatorial Pacific (IRONEX I and II), the Southern Ocean (SOIREE, EisenEx, SOFeX-N and SOFeX-S) and the Sub-Arctic North Pacific (SEEDS, SERIES) have decisively supported this hypothesis (Martin et al. 1994; Coale et al. 1996, 2004; Boyd and Law 2001; Gervais et al. 2002; Tsuda et al. 2003; Boyd et al. 2004). Vast ocean areas are affected by iron limitation and it may be as important as nitrogen and phosphorous limitation of global marine phytoplankton productivity (Moore et al. 2002).
BIOLOGICAL IRON ACQUISITION STRATEGIES Iron acquisition by bacteria Considering the importance of iron as a limiting nutrient, biological iron acquisition is a key factor determining the ecology of HNLC ocean regions. An important iron acquisition
Siderophores & Dissolution of Iron Bearing Minerals
55
strategy among both freshwater and marine cyanobacteria and heterotrophic bacteria involves the production of siderophores under iron limiting conditions (Gonye and Carpenter 1974; Trick 1989; Wilhelm and Trick 1994; Wilhelm 1995; Granger and Price 1999). Siderophores are low molecular weight organic ligands (0.5–1.5 kDa) with high affinity and specificity for iron. The siderophore mediated uptake of iron involves the recognition of the siderophore complex and the transport of the ferric siderophore complex across the cell membrane (Reid and Butler 1991; Butler 1998; Murakami et al. 2000; Guan et al. 2001; Armstrong et al. 2004). Although siderophore exudation is an important bacterial response to iron limitation, not all cyanobacteria and heterotrophic bacteria produce siderophores. While some cyanobacteria have been reported to produce multiple siderophores (Wilhelm and Trick 1994), other strains produce none (Wilhelm 1995). Similar results are reported for heterotrophic bacteria. In a recent study, from a total of 421 strains of heterotrophic marine bacteria which were isolated from marine sponges and seawater, 223 strains were observed not to produce siderophores under iron limiting conditions (Guan et al. 2001). However, the growth of 134 stains out of the total non-siderophore producing strains was stimulated by both cross-streaking of siderophore producing strains and by the addition of siderophores. Similarly, Trick (1989) showed that some marine bacteria produced siderophores which promoted growth of unrelated isolates, while other siderophores only satisfied the iron requirements of the strains that produced them. Granger and Price (1999) isolated strains of heterotrophic bacteria and found that not all of them produced siderophores under the assay conditions, but all took up Fe bound to siderophores. The utilization of ferric siderophore complexes by non-siderophore producing bacterial strains may be a typical pattern in iron limited aquatic systems, since siderophore excretion is considered to be metabolically expensive (Völker and Wolf-Gladrow 1999). However, siderophore production may simply also be a “survive at all cost” response to low iron availability and the high metabolic costs are offset by the potential for survival (Wilhelm 1995).
Iron acquisition by eukaryotic phytoplankton Fe(III)-siderophore complexes may not only be an essential iron source for heterotrophic and phototrophic bacteria (prokaryotes), but also for eukaryotic phytoplankton. It has been reported that that some eukaryotic species are able to acquire iron from various iron complexes and siderophores (Allnutt and Bonner 1987; Soria-Dengg and Horstmann 1995; Kuma et al. 2000; Maldonado and Price 2001), even if they generally do not produce siderophores themselves (for exceptions see Trick et al. 1983; Benderliev and Ivanova 1994; Benderliev 1999). An important process in this context is the reduction of organically bound Fe(III) by a plasma membrane ferrireductase, which promotes the dissociation of Fe(II) from the siderophore complex (Jones et al. 1987; Weger 1999). The inorganic iron is then taken up by membrane transporters. However, the acquisition of iron from iron-siderophore complexes by eukaryotic phytoplankton (e.g., diatoms) is controversially discussed in literature. It has been shown that ferric organic complexes, including model Fe-siderophore complexes like Fe-DFOB are utilized as iron sources by some eukaryotic phytoplankton species (Soria-Dengg and Horstmann 1995; Maldonado and Price 1999, 2001). Several studies found that uptake of iron is largely inhibited by DFO-B additions or at least insufficient to satisfy cellular requirements of eukaryotic phytoplankton (Hutchins et al. 1999; Wells 1999; Timmermans et al. 2001; Eldridge et al. 2004). It is important to note in this context that adaptation of former iron-replete eukaryotic phytoplankton to artificially induced iron limitation may require the activation of membrane bound ferric chelate reductases or high-affinity transport systems over timescales that are longer than typical shipboard incubation experiments (Maldonado and Price 2001; Wells and Trick 2004). Hutchins et al. (1999) observed iron uptake from weaker complexes (e.g., Fe-porphyrin). In contrast to most siderophores, the Fe(III)porphyrin complex exhibits a tetradentate structure, so that iron bound to porphyrin may be
56
Kraemer, Butler, Borer, Cervini-Silva
more accessible to surface reductase of eukaryotic plankton and may be reduced more easily. Consequently, the complexation of iron by siderophores may increases the bioavailability of iron for bacterial species, but also may reduce iron availability for eukaryotic phytoplankton (depending on the nutritional status), unless the iron-siderophore complexes are transformed by secondary processes (e.g., by photochemical processes). Marine algae can change iron speciation by excretion of low and high molecular weight organic substances (Lancelot 1984; Fuse et al. 1993; Myklestad 1995). In iron-limited cultures of the coccolithophore Emiliania huxylei, the release of strong iron-chelating ligands (with conditional stability constants comparable to those of siderophores) was observed under ironlimiting conditions and increased after inorganic iron was added to the cultures (Boye and van den Berg 2000). These observations suggest that the observed ligands were not siderophores (where the release is triggered by iron limitation). An increase of the concentrations of iron binding ligands was also observed as a response to iron fertilization in mesoscale experiments (Rue and Bruland 1997). Potential sources of strong Fe-chelators from phytoplankton in seawater are exudation or the rupture of intact cells. Cell rupture could lead, for example, to the release of compounds with porphyrin-type moieties with a high affinity for binding iron (Witter et al. 2000).
Role of protozoan grazers in the cycling of iron Radiotracer studies indicate that iron is rapidly cycled within the planktonic community by linked biological processes such as grazing, excretion, viral lysis, and bacterial respiration of organic matter (Hutchins et al. 1993). Regeneration of iron among the phytoplankton community does not necessarily require grazing of phytoplankton by heterotrophic protozoan grazers. Regeneration of iron is also accomplished by the grazing of bacteria through photosynthetic protozoan grazers, so called mixotrophs. Mixotrophy—defined as the ability to assimilate organic compounds as carbon sources while using inorganic compounds as electron donors for energy metabolism (Madigan et al. 2000)—is a widespread phenomenon in aquatic habitats and is observed in many ciliates and flagellates (Stoecker 1998). It has been suggested that phagotrophic ingestion of bacteria may be an adaptive strategy for photosynthetic algae to obtain iron for growth in iron limited regions of the sea. In a recent study, it has been shown that the photosynthetic flagellate Ochromonas sp. can obtain iron directly by ingesting bacteria (Maranger et al. 1998). As Ochromonas also excretes some of the Fe it ingests, phagotrophic phytoflagellates may in general play an important role in the Fe cycle by regenerating Fe for themselves and for other microorganisms. Heterotrophic protozoan grazers may also generate bioavailable iron by digestion of refractory iron phases in the acidic food vacuoles. Barbeau et al. (1996) have demonstrated several grazer mediated effects on colloidal ferrihydrite, including a decrease in colloid size, an increase in colloid lability as determined by competitive ligand exchange techniques, and an increase in the bioavailability of colloids to iron limited diatoms. These results indicate that protozoan grazers may significantly enhance the supply of iron to marine phytoplankton from terrestrial sources. It has been estimated that protozoan grazing of colloidal particles (e.g., ferrihydrite) may equal or exceed photoreductive dissolution in increasing iron availability to phytoplankton (Barbeau et al. 1996; Barbeau and Moffett 2000). The effect of grazing on more crystalline iron oxides is not known.
SOURCES OF IRON IN HNLC OCEAN REGIONS The most important iron sources in HNLC ocean areas are upwelling and atmospheric deposition of iron derived from continental dust (Archer and Johnson 2000; Moore et al. 2002, 2004). The atmospheric flux of iron to the remote HNLC ocean areas is relatively low.
Siderophores & Dissolution of Iron Bearing Minerals
57
However, iron deficiency is not only triggered by low total iron concentrations but also by the low bioavailability of iron from atmospheric inputs. As a consequence of its low bioavailability, only a small fraction of the iron input by atmospheric aerosol is solubilized before sedimentation (Zhuang et al. 1990; Fung et al. 2000). The bioavailability of iron is strongly influenced by the mineralogy of aerosol particles which in turn is influenced by the characteristics of soils in the source area of the particles. Iron speciation can further be modified by the chemical environment during atmospheric transport (Jickells 1999). Iron-bearing minerals can be dissolved by protonpromoted and photoreductive dissolution and re-precipitated during drying cycles (Spokes et al. 1994; Siefert et al. 1999; Johansen et al. 2000).
Atmospheric dust as a source of iron A strong link between dust deposition and primary production has been established by observations of increased chlorophyll and particulate organic carbon concentrations at the sea surface during episodic dust deposition events (Ditullio and Laws 1991; Lenes et al. 2001; Bishop et al. 2002). The most important source for atmospheric dust are the arid or semiarid regions of the continents (Duce et al. 1980; Duce and Tindale 1991; Tegen and Fung 1995; Mahowald et al. 1999; Perry et al. 1999; Ginoux et al. 2001). The iron content of atmospheric dust is roughly related to the average crustal abundance of iron (3.5%; Taylor 1964) and depends on the continental source area (Hand et al. 2004) and on size fractionation during transport (Claquin et al. 1999; Jickells 1999). A number of researchers have estimated aeolian iron fluxes to the oceans based on measurements or models of atmospheric dust distributions over the oceans (Duce and Tindale 1991; Tegen and Fung 1995; Mahowald et al. 1999) and on global assumptions or databases of local measurements of the iron content in dust (Archer and Johnson 2000; Gao et al. 2001; Moore et al. 2002).
Iron mineralogy of atmospheric dust The distribution of iron among iron-bearing mineral phases has an important effect on its solubility and lability (Cornell and Schwertmann 2003). The fate of iron during atmospheric transport and after deposition at the sea surface will therefore strongly depend on the mineralogy of aerosol particles. Nanoparticulate hematite (11–170 nm) was observed in Mössbauer studies of atmospheric aerosols collected in a rural area of Poland (Kopcewicz and Kopcewicz 1994, 1998). Reid et al. (2003) report single particle analysis of aerosol particles of Saharan origin collected at Puerto Rico. They found most iron associated with particles with elemental abundances corresponding to illite. The elemental composition of a smaller fraction of high Fe particles suggested kaolinite aggregated with iron oxides. However, the authors noted the difficulty of assigning mineralogical structures to aggregates based on elemental abundances. Falkovich et al. (2001) used SEM-EDS and XRD to analyze individual dust particles of North African origin collected over Israel. They found most iron on particle surfaces and suggested that hematite aggregated with clay minerals were coating particle surfaces. Direct evidence of the presence of hematite and goethite was provided by diffuse reflectance spectrometry of aerosol particles collected from Bermuda, Barbados, and Izaña (Arimoto et al. 2002). Crystalline iron oxides of primarily aeolian origin were also found in deep sea sediments (Bloemendal et al. 1992; Balsam et al. 1995).
Transformation of iron-bearing minerals during atmospheric transport The bioavailability of iron is strongly influenced by it’s speciation in the aerosol particles. Iron-bearing minerals can be transformed by proton-promoted and photoreductive dissolution as well as precipitation during drying cycles (Spokes et al. 1994; Siefert et al. 1998). The observation of significant concentrations of dicarboxylic acids in marine aerosols may promote ligand-controlled and photoreductive dissolution mechanisms (Stephanou and Stratigakis 1993; Sempere and Kawamura 2003).
58
Kraemer, Butler, Borer, Cervini-Silva
Reduction of Fe(III) to Fe(II) dramatically increases its solubility. Reduced iron species are thermodynamically unstable under atmospheric conditions, but photoredox reactions can lead to the significant transient Fe(II) concentrations, particularly in acidic aerosols (Behra and Sigg 1990). Even though Fe(II) is rapidly reoxidized in seawater (Millero et al. 1987; Millero and Sotolongo 1989; King et al. 1995; King 1998), the precipitating Fe(III)-polymers are expected to be thermodynamically and kinetically less stable than iron-bearing minerals of the atmospheric dust. For these reasons, the redox speciation of iron in aerosols is a subject of ongoing research. Most studies of iron redox speciation show that the fraction of Fe(II) in acid extracts of aerosols represents only a small fraction of the total iron (Zhuang et al. 1990; Zhu et al. 1993, 1997; Siefert et al. 1999; Johansen et al. 2000; Chen and Siefert 2004). Large variations of Fe(II) fractions in aerosols collected over the Atlantic and Pacific Oceans were observed by Hand et al. (2004), with significantly higher Fe(II) fractions in fine aerosols (<2.5 Pm) compared to coarse particles. A study of the redox speciation of soluble iron extracted from aerosols collected at Barbados by acid extraction showed diel variations of the Fe(II)/ Fe(III) ratio (Zhu et al. 1997). This is consistent with photo reduction of iron during irradiation of the aerosols with sunlight. However, no correlation between the ratio of soluble iron to total iron in the aerosol (on the average 6.2%) and the redox speciation in the soluble iron was found. Hence, it was uncertain if the photo redox reactions lead to a net mobilization of iron from aerosol.
CONCENTRATIONS, SPECIATION AND SOLUBILITY OF IRON IN SEAWATER Iron concentrations as a function of depth in HNLC regions Iron is strongly depleted at the sea surface due to uptake by phytoplankton and downward flux of iron tied to settling biomass. Increasing dissolved iron concentrations with depth and a maximum coinciding with an oxygen minimum are consistent with release of iron from organic complexes by bacterial degradation of organic matter and are similar to nutrient-like concentration profiles of other essential trace metals (Martin et al. 1989). Johnson et al. (1997) measured iron concentration profiles in 30 stations in the Pacific, North Atlantic and Southern Ocean and found average dissolved iron concentrations of 0.07 nmol/kg in the mixed layer and 0.6 nmol/kg in depth. Surface water iron concentrations can vary over time (Wu and Luther 1996). Moore et al. (2002) calculated mixed layer dissolved iron concentrations using a global marine ecosystem model and predicted depletion of iron in the summer (<0.1 nmole/ kg) relative to winter iron concentrations, in agreement with observations. Also, increasing iron concentrations have been observed in surface water of the Northeast Pacific Ocean after episodic deposition of dust from Asia (Johnson et al. 2003).
Inorganic iron species In the absence of organic ligands, the speciation of Fe(III) in seawater in the neutral to slightly alkaline pH range is dominated by hydroxo complexes (Millero et al. 1995). The hydrolysis of iron can be defined by the following reactions: β*
2+
β*
+
β*
0
β*
−
1 Fe3+ + H 2O ←⎯ → Fe ( OH )
+ H+
2 Fe3+ + 2H 2O ←⎯ → Fe ( OH )2 + 2H + 3 → Fe ( OH )3 + 3H + Fe3+ + 3H 2O ←⎯ 4 → Fe ( OH )4 + 4H + Fe3+ + 4H 2O ←⎯
(1) (2) (3) ( 4)
Siderophores & Dissolution of Iron Bearing Minerals
59
The equilibrium species distribution of hydrolysis species can be calculated using the appropriate mass laws and stability constants En: ( ) Fe ( OH ) { }{H } = 3− n +
βn
+
n
{Fe }{H O} 3+
2
n
⎡ Fe ( OH )( 3− n ) + ⎤ ⎡H + ⎤ n n n ⎢ ⎦⎥ ⎣ ⎦ ⋅ γ Fe(OH ) n γ H + =⎣ γ Fe {H 2O} ⎡ Fe3+ ⎤ ⎣ ⎦
(5)
where [Fe3+] and [Fe(OH)n(3−n)+] are the concentrations of the iron hexaquo species and the hydrolysis species respectively, expressed in units of mole/kg. J are activity coefficients. [H+] is defined on the free hydrogen ion molality scale (Byrne and Kester 1976). Equation (5) requires the calculation of activity coefficients in order to correct for non-ideality effects arising from the high ionic strength of seawater. Alternatively, conditional stability constants E*n can be defined, that are only valid for the ionic strength and composition of seawater: β*n
⎡ Fe ( OH )( 3− n ) + ⎤ ⎡H + ⎤ n n ⎢ ⎦⎥ ⎣ ⎦ =⎣ ⎡ Fe3+ ⎤ ⎣ ⎦
(6)
so that βn = β*n ⋅
γ Fe(OH)n γ Hn +
( 7)
γ Fe {H 2O}
The use of conditional stability constants is convenient and appropriate for speciation in open ocean water where small variations of salinity have only a minor effect on activities. Iron hydrolysis has been under investigation for several decades (Baes and Mesmer 1976; Byrne and Kester 1976; Millero et al. 1995; Liu and Millero 1999). However, the determination of conditional hydrolysis constants in seawater has been problematic and considerable uncertainty remains. The principal problems include the analysis of total iron or iron species at trace concentrations dictated by the low solubility of iron in seawater (sub-nanomolar at pH 8!); and by the difficulty to distinguish the mononuclear hydrolysis species from polymeric and colloidal iron (Byrne et al. 2000). For the model calculations presented in this paper, hydrolysis constants by Liu and Millero (1999) have been used (see Table 1). Using these constants it can be predicted that the dominant inorganic iron species in seawater (pH of 8.1) are Fe(OH)2+, Fe(OH)30, and Fe(OH)4− at thermodynamic equilibrium and under aerobic conditions. If the iron speciation is dominated by hydrolysis species, the total dissolved iron concentration [Fe(III)T] equals the sum of all inorganic species [Fec] and is related to the iron hexaquo complex by the following relationship (Byrne and Kester 1976):
[ Fe(III)T ] = [ Fe′] = ⎡⎣ Fe3+ ⎤⎦ ⋅ ⎛⎜ 1 + β1* ⎡⎣H + ⎤⎦ ⎝
−1
+ β*2 ⎡⎣ H + ⎤⎦
−2
+ β*3 ⎡⎣H + ⎤⎦
−3
−4 + β*4 ⎡⎣ H + ⎤⎦ ⎞⎟ ⎠
(8)
or
[ Fe(III)T ] = [ Fe′] = ⎡⎣ Fe3+ ⎤⎦ ⋅ α Fe′
(9)
where DFec is the inorganic side reaction coefficient.
Solubility of iron in the presence of iron oxides Some of the most important Fe(III) oxide phases in aerobic systems are ferrihydrite, lepidocrocite (J-FeOOH), goethite (D-FeOOH), and hematite (D-Fe2O3). Ferrihydrite is a poorly ordered phase with variable composition (Cornell and Schwertmann 2003). We report dissolution reactions and corresponding solubility constants based on the simplifying assumption of a Fe(OH)3 stoichiometry. The dissolution reactions are:
60
Kraemer, Butler, Borer, Cervini-Silva
Ferrihydrite:
Fe ( OH )3 + 3H + ↔ Fe3+ + 3H 2 O
(10)
Goethite and lepidocrocite:
FeOOH + 3H + ↔ Fe3+ + 2H 2O
(11)
0.5 ( α-Fe 2O3 ) + 3H ↔ Fe +
Hematite:
3+
+ 1.5H 2O
(12)
With the conditional solubility constants K*oxide in seawater defined as:
{Fe }{H O} = ⎡⎣Fe ⎤⎦ ⋅ γ ⎡H ⎤ {H } ⎣ ⎦ {Fe }{H O} = ⎡⎣Fe ⎤⎦ ⋅ γ = ⎡H ⎤ {H } ⎣ ⎦ {Fe }{H O} = ⎡⎣Fe ⎤⎦ ⋅ γ = ⎡H ⎤ {H } ⎣ ⎦ 3+
3
3
+
2
K FeOOH
3
+
+
3+
1.5
3
3+
2
+
Fe
3
+
3
{H2O}
2
Fe
γ 3H
γ Fe {H 2O}
(14)
γ 3H
1.5
γ Fe {H 2O}
1.5
= K α* -Fe2 O3 ⋅
γ 3H
(13)
γ 3H 2
* = K FeO OH ⋅
{H2O}
γ Fe {H 2O}
3
= K F*e(OH)3 ⋅
γ 3H
3+
2
{H2O}
3
Fe
3
+
3+
K α -Fe2 O3
3+
2
K Fe(OH)3 =
γ 3H
(15)
where [}] and {}} are species concentrations and activities respectively, J are activity coefficients and Koxide are the solubility constants at infinite dilution. The activity of ocean water (with a total mass of dissolved salts per kg seawater of 35 parts per thousand at 20–40 °C) is 0.9813 mole/kg (Millero and Leung 1976). The total dissolved iron concentration in equilibrium with the solid can be calculated combining Equations (13) to (15) with Equation (8): Ferrihydrite: * ⎡H + ⎤ [ Fe(III)T ] = K Fe(OH) 3 ⎣ ⎦
3
−1
⋅ ⎛⎜ 1 + β1* ⎡⎣H + ⎤⎦ + β*2 ⎡⎣H + ⎤⎦ ⎝
−2
+ β*3 ⎡⎣H + ⎤⎦
−3
−4 + β*4 ⎡⎣ H + ⎤⎦ ⎞⎟ ⎠
(16)
or * ⎡H + ⎤ [ Fe(III)T ] = K Fe(OH) 3 ⎣ ⎦
3
⋅ α Fe′
(17)
Goethite:
* ⎡H + ⎤ [ Fe(III)T ] = K FeOOH ⎣ ⎦
3
⋅ α Fe′
(18)
Hematite:
[Fe(III)T ] = Kα* -Fe2O3 ⎡⎣H + ⎤⎦
⋅ α Fe′
(19)
3
The determination of conditional solubility constants are subject to the same difficulties as the determination of conditional hydrolysis constants. Indeed, both types of conditional constants are often derived from measurements of the total iron concentrations in seawater (or analogous synthetic media) in equilibrium with the corresponding solid phase. The uncertainties in the prediction of mineral solubilities do not only arise from experimental difficulties. Solubility constants are functions of the mineral properties. Solubilities increase with decreasing particle sizes (also see chapter by Gilbert and Banfield, which discusses other size-dependent phenomena in nanoparticles) and increasing bulk lattice energies of iron oxides. Size and lattice energy are influenced by ageing and isomorphous substitution by metal ions such as Al(III). The solubility of ferrihydrite is usually orders of magnitude larger than the solubility of goethite and hematite. However, with decreasing crystal sizes the solubilities of goethite and hematite increase and approach the solubility of ferrihydrite at particle sizes below 10 nm (Langmuir 1969; Trolard and Tardy 1987). Particle diameters of soil goethite and hematites are in the nanometer range (10–150 nm; Cornell and Schwertmann 2003). Hematite particles in aerosols
Siderophores & Dissolution of Iron Bearing Minerals
61
collected at a mountain peak in rural Poland had a size range of 5.5 to 8.5 nm (Kopcewicz and Kopcewicz 1991). In these size ranges, the solubilities of crystalline iron oxides are orders of magnitude larger than predicted from bulk mineral solubilities (see Table 2). It is therefore important to note that the solubility constants used in this paper (Table 2) are provisional, a fact that needs to be considered in the interpretation of solubility calculations.
Table 1. Conditional iron hydrolysis constants used for speciation calculations in this publication. log E*n(a)
Reaction Fe3 + + H 2 O ↔ Fe ( OH )
2+
+ H+
E*1
−2.52
+ 2H 2 O ↔ Fe ( OH ) + 2H
+
E*2
−6.5
Fe3 + + 3H 2 O ↔ Fe ( OH )3 + 3H + 0
E*3
−15
−
E*4
−22.8
Fe
3+
+ 2
Fe3 + + 4H 2 O ↔ Fe ( OH )4 + 4H + (a)
(Liu and Millero 1999). I = 0.7 M (NaCl); T = 25 °C.
Table 2. Solubility of iron oxides in seawater. log Ks(a)
log K*s
[Fe]tot seawater(i) [M]
−0.53(b) −0.28(c) 1.79(c) 3.64(c)
0.11(h) 0.36(h) 2.43(h) 4.28(h)
7.1u10−15 1.3u10−14 1.5u10−12 1.0u10−10
0.36(b) 0.63(c) 3.09(c) 3.77(c)
1.01(h) 1.28(h) 3.74(h) 4.42(h)
5.6u10−14 1.0u10−13 3.0u10−11 1.5u10−10
ferrihydrite
3.55(e)
4.2(f)
8.7u10−11
lepidocrocite
2.5(g)
3.1(h)
6.9u10−12
Oxide hematite D–Fe2O3 (bulk) crystal size 100 nm(d) crystal size 10 nm(d) crystal size 6 nm(d) goethite D-FeOOH (bulk) crystal size 100 nm(d) crystal size 10 nm(d) crystal size 8 nm(d)
(a) (b) (c) (d) (e) (f) (g) (h)
(i)
Ks = Fe3+/{H+}3 at infinite dilution and 298.15 K Parker and Khodakovskii 1995 calculated according to Langmuir (1969) using bulk logKs cube edge length [nm] I = 3 M (NaClO4) (Schindler et al. 1963) I = 0.7 M (NaClO4), (Liu and Millero 1999) (Hashimoto and Misawa 1973) estimated for seawater using Equations (13) to (15) with JFe estimated for I = 0.7 (NaClO4) using the Pitzer parameters from Millero et al. (1995), JH in seawater from Millero (1986), and {H2O}in seawater from Millero and Leung (1976). calculated using conditional hydrolysis constants on Table 2, not considering organic complexation
62
Kraemer, Butler, Borer, Cervini-Silva
Colloidal iron in marine systems The foregoing discussion on the solubility of iron-bearing minerals distinguished conceptually between soluble and particulate iron. For practical reasons, dissolved concentrations in seawater are operationally defined as iron fractions below a certain particle size as determined by filtration, ultrafiltration, or centrifugation. For example, iron fractions can be defined as “dissolved” (<0.2 Pm), “colloidal” (0.2–0.4 Pm), and “particulate” (>0.4 Pm) (Wu and Luther 1994; 1996). Wu and Luther (1994) found that colloidal iron significantly (20–40%) contributed to the total iron pool < 0.4Pm in the top 500 m of the water column of the western North Atlantic Ocean. However, abundant colloidal particles have been found in a size range below 120 nm, often with primary particle sizes in the low nanometer range (McCave 1984; Wells and Goldberg 1991) and iron has been found in small colloids (<0.2 Pm) (Nishioka et al. 2001). Iron can be present as iron oxides or hydroxides, in primary silicates, in living cells or bound by organic matter (Price and Morel 1998). Iron is usually a minor component of marine colloidal particles that consist to a large part of organic material (Koike et al. 1990; Wells and Goldberg 1991). An important mechanism for removal of small colloids is aggregation to larger aggregates that sink to depth (Wells and Goldberg 1993). Sinking of iron-bearing organic colloids from the euphotic zone leads to export of iron to the subsurface. Aggregation and sinking of ironbearing colloids is consistent with observations of decreasing colloidal iron and increasing particulate iron concentrations with depth (Wu and Luther 1994). Iron release upon microbial decomposition of the organic material is partly responsible for elevated iron concentrations in deep water (Bruland et al. 1994). Also, the decomposition of the organic colloids leads to the generation of fluorescent humic type substances in intermediate and deep water (Tani et al. 2003). These humic substances have a high affinity for iron and increase the solubility (<0.025 Pm filtered) of Fe(III) hydroxide, contributing to the regulation of soluble iron concentrations along the water column.
Photochemistry and redox speciation of iron Considering the much higher solubility of Fe(II) over Fe(III), any process that facilitates the reduction of Fe(III) to Fe(II) and prevents reoxidation and precipitation will increase the solubility of iron. Changes in the redox state of iron are induced by several processes, of which photo reduction and thermal oxidation are assumed to play major roles. Photochemical Fe reduction has been suggested as an important process leading to high observed Fe(II) concentrations in the SOIREE iron enrichment experiment (Croot et al. 2001). Photochemical redox cycling of iron in the marine system may therefore increase the iron availability to aquatic microorganisms (Wells and Mayer 1991; Miller and Kester 1994). The thermodynamics and kinetics of these processes are highly dependent on the speciation of both Fe(II) and Fe(III). For example, the redox potential of iron can be altered through chelation by organic or inorganic ligands. Carboxylic acids, which are ubiquitous in aquatic systems, are assumed to accelerate the effective oxidation rate of Fe(II) by oxygen via the formation of complexes that react faster than corresponding aquo complexes (Voelker and Sulzberger 1996). However, even among structurally similar carboxylic acid ligands, a broad range of effects on the oxidation rate of Fe(II) has been observed, including the inhibition of Fe(II) oxidation (Santana-Casiano et al. 2000, 2004). Polyphenolic compounds including tannic acids also inhibit Fe(II) oxidation by forming stable complexes with Fe(II) (Theis and Singer 1974; Lopes et al. 1999). Without significant concentrations of such Fe(II) stabilizing ligands, oxidation of Fe(II) in oxygen saturated sea- and freshwater at near neutral pH is expected to be fast, resulting in very small Fe(II) concentrations. However, detectable Fe(II) concentrations as well as diel Fe(II) cycles in surface seawater and freshwater have been reported (Hong and Kester 1986; King et al. 1991; O’Sullivan et al. 1991; Kuma et al. 1992; Johnson et al. 1994; Waite et al. 1995; Emmenegger
Siderophores & Dissolution of Iron Bearing Minerals
63
et al. 2001; Rijkenberg et al. 2005). Diel Fe(II) cycles have been explained by photo reduction of dissolved or colloidal Fe(III) during irradiation and reoxidation of photo produced Fe(II) by reactive oxygen species in the dark. Photo reduction of Fe(III)-organic ligand complexes may occur through light-induced ligand-to-metal charge transfer or through reduction by secondary photolysis products (Voelker and Sedlak 1995).
ORGANIC LIGANDS AND IRON SOLUBILITY AND SPECIATION Speciation of soluble iron in the presence of organic ligands Organic iron complexing ligands are ubiquitous in marine systems and the dominant dissolved iron species are organic iron complexes (Gledhill and van den Berg 1994, 1995; Rue and Bruland 1995, 1997; van den Berg 1995; Wu and Luther 1995; Luther and Wu 1997; Gledhill et al. 1998; Nolting et al. 1998; Witter and Luther 1998; Powell and Donat 2001; Boye et al. 2003). Iron binding compounds include siderophores (as discussed below), nonsiderophore ligands released by eukaryotic phytoplankton, or compounds that are released by bacterial lysis (Poorvin et al. 2004). Correlations of iron solubility and fluorescence from humic matter in intermediate and deep waters suggest iron binding by marine humic substance originating from biodegradation of sinking organic matter (Tani et al. 2003). Lateral changes in iron oxide solubility (Nakabayashi et al. 2002) and changes in ligand concentration and iron affinity with depth (Rue and Bruland 1995) may therefore reflect variations in ligand structure and origin. Reported concentrations of the iron binding ligands in seawater (0.3–12 nM) usually equal or exceed the total dissolved iron concentrations. Conditional stability constants of the iron complexes were determined by competitive ligand equilibration - cathodic stripping voltammetry (CLE-CSV) and by observation of the complex formation and dissociation kinetics. Without consideration of the (usually unknown) exact stoichiometry of the complexation reaction and the resulting complex, or of the full speciation of the ligand in ocean water, the conditional stability constants can be defined as: K*
Fe3+ L
=
[ FeL ] ⎡ Fe3+ ⎤ [ L′] ⎣ ⎦
(20)
where [Lc] is the concentration of ligand not complexed to iron and [FeL] is the concentration of the complex. These conditional constants are only valid for the conditions (P, T, pH, salinity, concentration of competing trace metals, etc.) under which they have been determined. To avoid uncertainties in the calculation of [Fe3+], the stability constant is often expressed in terms of the total iron that is not complexed by the organic ligand [Fec]: * K Fe ′L =
[ FeL ] Fe [ ′ ][ L ′ ]
(21)
Combining Equations (20), (21), and (9) shows the relationship between the two constants: K*
Fe3+ L
* = K Fe ′L ⋅ α Fe ′
or
log K *
Fe3 + L
* = log K Fe ′L + log α Fe ′
(22)
In this manuscript we have recalculated all conditional stability constants for organic iron complexes in terms of logK*Fe3+L using logDFec = 10, as calculated using the hydrolysis constants in Table 1. The total iron concentration in seawater (pH = 8.1) in the presence of organic ligands L1 to Ln is the sum of organic complexes and hydrolysis species:
64
Kraemer, Butler, Borer, Cervini-Silva n
[ Fe(III)T ] = [ Fe′] + ∑ [ FeLi ] i =1
or
n −1 −2 −3 −4 ⎛ ⎞ = ⎡⎣ Fe3+ ⎤⎦ ⋅ ⎜ 1 + β1* ⎡⎣ H + ⎤⎦ + β*2 ⎡⎣H + ⎤⎦ + β*3 ⎡⎣H + ⎤⎦ + β*4 ⎡⎣H + ⎤⎦ + ∑ K * 3 + [ Li′ ] ⎟ (23) Fe i =1 ⎝ ⎠
⎛
n
⎞
⎝
i =1
⎠
[ Fe(III)T ] = ⎡⎣ Fe3+ ⎤⎦ ⋅ ⎜ α E + ∑ K Fe* 3+ L [ Li′] ⎟
(24)
Observed logK*Fe3+L in seawater range between 18 and 24. Rue and Bruland (1995) found two ligand classes L1 and L2 in a depth profile in the Central North Pacific. The stronger ligand L1 (logK*Fe3+L ≈ 23, [Ltot] = 0.37–0.6 nmole/kg) was found only in depth between 0 and 300 m. The weaker ligand L2 (logK*Fe3+L ≈ 21.5, [Ltot] = 1.9–2.8 nmole/kg) was distributed over the whole water column. On the other hand, Wu and Luther (1995) found one ligand class.
Marine siderophores Siderophores are biogenic organic ligands with a high affinity and specificity for binding iron (Neilands 1957; Takagi 1976; Winkelmann 1992). Examples of siderophores from marine and terrestrial organisms produced in iron limited culture is shown in Figure 1 and Table 3. Observations of siderophore exudation by iron limited marine bacteria have lead to the hypothesis that strong iron binding organic ligands include siderophores in iron limiting marine environments. Indeed, Witter et al. (2000) have determined K*Fe3+L for known marine and terrestrial siderophores in seawater and found that their affinity for iron corresponds to K*Fe3+L of strong iron binding ligands in seawater. However, in order to identify marine strong iron binding ligands as siderophores, it would be necessary to demonstrate not only their affinity but also their specificity for iron and their biological function in iron acquisition; or to show that their chemical structure corresponds to a known marine siderophore. This is difficult due to their low concentrations in seawater. Siderophores are structurally diverse. The structures of almost 500 siderophores from culturable organisms have been elucidated to date (Boukhalfa and Crumbliss 2002) but important marine siderophores may not be known. However, siderophores seem to share some common properties including their molecular mass range between 0.5–1.5 kDa (Matzanke et al. 1989) and their metal binding groups which include D-hydroxycarboxylate, hydroxamate, catecholate, and less frequently carboxylate groups. Macrellis et al. (2001) have extracted iron binding ligands from large volumes of seawater in the Central Californian coastal upwelling zone by solid phase extraction. In the photic zone of the water column they found iron binding ligands in the mass range of 0.3–1 kDa containing hydroxamate and catecholate functional groups. Siderophores including ferrioxamine B and G, Amphibibactin D, and E were also found and characterized in nutrient enriched seawater incubations (Gledhill et al. 2004). These observations are consistent with siderophores as important iron binding ligands in seawater. This is further supported by a strong correlation between iron solubility and cell counts of heterotrophic bacteria in surface water of the northwestern North Pacific Ocean (Takata et al. 2004). As siderophore production is highly regulated and depends on the iron status of the originating organism, the types of siderophores and their concentrations in seawater will be influenced by local biological community structures and by the chemical environment and may vary both horizontally and with depth. However, at the present time no direct evidence of the presence of siderophores and their relative importance as iron binding ligand in marine systems is available. An important characteristic of siderophores is their specificity for iron. This is of critical importance in marine waters, where the concentrations of major sea salt cations can be many orders of magnitude higher than soluble iron concentrations. It has been found empirically
Siderophores & Dissolution of Iron Bearing Minerals
65
that ligands with negative oxygen donor groups such as siderophores typically form metal complexes with increasing stability constants in the order Ca2+ < Zn2+ < Cu2+ < Al3+ < Fe3+ (Evers et al. 1989). For example the 1:1 formation constants (I = 0.1 M) of Ca2+, Al3+ and Fe3+ DFO-B complexes are 102.64, 1024.14 and 1030.7 respectively (Martell et al. 2001). The specificity of siderophores for iron(III) complexation is illustrated by experiments where Cu or Zn additions to coastal water had no effect on iron solubility, whereas UV irradiation (before Fe, Cu, or Zn additions) strongly decreased iron solubility (Chen et al. 2004). Low affinities of siderophores for Fe(II) stabilizes the Fe(III) redox state in solution (Dhungana and Crumbliss 2005). Exceptions to the specificity of siderophores for Fe(III) are tetravalent actinides. For example, ThIV and PuIV form DFO-B complexes with 1:1 formation constants of 1026.6 and 1030.8 respectively (Whisenhunt et al. 1996). The presence of siderophores could therefore have an important effect on the speciation of actinides in the ocean.
Photo reduction of iron and redox cycling in the presence of siderophores Processes leading to the formation of inorganic Fe(II) or photolysis of organic ligands can increase the bioavailability of iron by increasing the iron solubility and by facilitating the biological uptake of iron from organic complexes. Barbeau et al. (2003) have investigated the photo reactivity of Fe(III)-siderophore complexes based on characteristic Fe(III)-binding groups. Siderophores carrying D-hydroxycarboxylic acid groups such as petrobactin (Barbeau et al. 2002; Bergeron et al. 2003; Hickford et al. 2004), aquachelin (Barbeau et al. 2001), and aerobactin (Borer et al. 2005) have been found to form photo reactive iron complexes. Upon
HOOC R
CH 3
HN N O
O
OH
O
HO
COOH
CH 3
N HO
O OH
HO
O
O
HO
O
N
O
N
N
HN
CH 3
N
H
HOOC
O
HO
HO R
N H
N O H
H N O
N
HO
O N H OH
O
O
O H N
H N O
OH
N HO
O H N
O N H OH
OH O
R
N H
O
HO O N H OH
OH H N O
O
O N
HO
O N H
H N O
O
O
O
O
D1
O
C
N H
OH
H R N
N H
O
D
R=
O N
HO
O
N
D2
B
O
O
E
O
HO
O
R=
O
O N
OH H 2N
O
R=
H
Desferrioxamine
Aerobactin O
N
OH
H N O
N
O N H OH
O
O OH
O I
C
O
B
OH O
A
OH O
H G F O E
A
O D OH O C OH O B
Marinobactin
Aquachelin
Amphibactin
Figure 1. Examples of siderophores including amphiphilic marine siderophores structures (Martinez et al. 2000, 2003).
66
Kraemer, Butler, Borer, Cervini-Silva
Table 3. A selection of siderophores by marine and terrestrial organisms. Organism
logK*Fe3+L logKFeL
Ref.
Ligand
Ligating Groups
Alterobactin A
catecholate hydroxycarboxylate
Alteromonas luteoviolacea
23.9(a)
49-53
(1)
Alterobactin B
catecholate carboxylate
Alteromonas luteoviolacea
>24(a)
43.6(b)
(1)
Anguibactin
catecholate hydroxamate
Vibrio anguillarum
(2)
Aquachelin
hydroxamate D-hydroxycarboxylate
Halomonas aquamarina
(3)
Bisucaberin
hydroxamate
Alteromonas haloplanktis
(4)
Marinobactin
hydroxamate
Marinobacter sp.
(3)
Petrobactin
catecholate D-hydroxycarboxylate
Marinobacter hydrocarbonoclasticus
(5)
Amphibactin
hydroxamate
Vibrio sp.
(6)
Vulnibactin
catecholate
Vibrio vulnificus
(7)
n.n.
catecholate
Synechococcus sp.
Siderophores Originating from Marine Bacteria
38.1 – 42.3
(7)
22.93(c)
(8)
30.6
(9)(10)
Siderophores Originating from Marine and Terrestrial Bacteria Aerobactin
hydroxamate D-hydroxycarboxylate
Vibrio sp.
Desferrioxamine B
hydroxamate
Streptomyces pylosus
Desferrioxamine G
hydroxamate carboxylate
Vibrio sp.
n.n.
?
Emiliana huxleyi
Prorocentrin
?
Prorocentrum minimum
(13)
n.n.
?
Scenedesmus incrassatulus
(14)
21.6(a)
(10)(11)
Strong Iron Binding Ligands Originating from Algae 20.7–21.5
(12)
Siderophores from Terrestrial Bacteria and Fungi Enterobactin Ferrichrome
catecholate hydroxamate
(a)
determined by CLE-CSV (Witter et al. 2000)
(b)
(Lewis et al. 1995) I = 0.1 M, pH = 8.3
Pseudomonas aeruginosa Ustilago spaerogena
20.8(d) 21.6
(a)
49
(15)
29.1
(16)
(c)
(Harris et al. 1979)
(d)
determined by the kinetic method (Witter et al. 2000)
References: (1) Reid et al. 1993; (2) Jalal et al. 1989; (3) Martinez et al. 2000; (4) Takahashi et al. 1987; (5) Barbeau et al. 2002; (6) Martinez et al. 2003; (7) Okujo et al. 1994; (8) Haygood et al. 1993; (9) Schwarzenbach and Schwarzenbach 1963; (10) Gledhill et al. 2004; (11) Martinez et al. 2001; (12) Boye and van den Berg 2000; (13) Trick et al. 1983; (14) Benderliev and Ivanova 1994; (15) Loomis and Raymond 1991; (16) Wong et al. 1983
Siderophores & Dissolution of Iron Bearing Minerals
67
irradiation, Fe(III) complexed to these siderophores is reduced and the D-hydroxycarboxylic group is oxidized. This leads to the loss of an iron binding group. Even so, the photolyzed siderophores still retain a relatively high binding affinity to Fe(III). Interestingly, measured conditional binding constants of Fe(III)-aquachelin complexes and Fe(III)-photoproduct complexes are consistent with values reported in field studies for the class of strong Fe(III)binding ligands L1 and the weaker class of Fe(III)-binding ligands L2 in seawater, respectively (Barbeau et al. 2001). Furthermore, Barbeau et al. (2001) have demonstrated the bioavailability of iron bound to aquachelin photoproducts to a natural assemblage of planktonic organisms. In contrast, non-photolyzed and intact Fe(III)-aquachelin complexes were largely unavailable. Where non-photo-reactive Fe(III)-siderophores determine dissolved Fe(III) speciation, siderophore bound Fe(III) will be stabilized against reduction by superoxide and many other reductants. For example, it has been shown that desferrioxamine B (DFOB), a terrestrial trihydroxamate siderophore, is able to hinder the redox cycling of iron in natural aquatic systems (Gao and Zepp 1998) and to prevent the formation of hydroxyl radicals (•OH) in the iron catalyzed Haber-Weiss reaction (Eqn. 27) by keeping iron in the trivalent state (Gutteridge et al. 1979): O2•− + Fe(III)-complex o O2 + Fe(II)-complex
(25)
Fe(II)-complex + H2O2 o Fe(III)-complex + •OH + OH−
(26)
O2 + H2O2 o •OH + OH + O2
(27)
•−
−
Gao and Zepp (1998) have studied the role of iron in the photo-oxidation of CDOM (photo-bleaching) in a coastal river by adding fluoride ions or DFOB to the water. The addition of DFOB led to a decrease in CDOM photo-oxidation, which was explained by the inhibition of iron redox cycling in the presence of DFOB. For aquatic systems in which speciation of dissolved iron is determined by strong complexing agents like siderophores, photoredox cycling of iron may either be initiated by siderophores (Barbeau et al. 2001) or at the other extreme be completely inhibited, depending on the photo-reactivity or photo-stability of the iron binding groups in these siderophores. In addition to their inhibitory effect on the Haber-Weiss reaction, siderophores can also reduce free radical concentrations by radical scavenging. For example, it has been reported that DFOB reacts with hydroxo-radicals (Sinaceur et al. 1984) and semiquinone radicals (Zhu et al. 1998) via formation of DFO-nitroxide radical. It should be noted that these observations may have been influenced by the fact that DFOB is usually supplied and used as mesylate salt and that mesylate (methylsulfonate) is an efficient radical scavenger as well (Zhu et al. 2003). However, pyoverdins have also been shown to act as hydroxyl and peroxyl radical scavengers (Morel et al. 1992).
Effect of organic ligands on the solubility of iron oxides Due to their high affinity for iron, organic ligands such as siderophores can have a strong effect on the solubility of iron oxides. Expressions for the total iron concentrations in equilibrium with iron oxides can be derived from Equations (17) to (19) and (24): Ferrihydrite
* ⎡H + ⎤ [Fe(III)T ] = K Fe(OH) 3 ⎣ ⎦
Goethite
* ⎡H + ⎤ [ Fe(III)T ] = K FeOOH ⎣ ⎦
Hematite
[Fe(III)T ] = Kα* -Fe2O3 ⎡⎣ H + ⎤⎦
3
3
3
n ⎛ ⎞ ⋅ ⎜ α Fe′ + ∑ K * 3 + [ Li′ ] ⎟ Fe L i =1 ⎝ ⎠
(28)
n ⎞ ⎛ ⋅ ⎜ α Fe′ + ∑ K * 3+ [ Li′ ] ⎟ Fe L i =1 ⎠ ⎝
(29)
n ⎛ ⎞ ⋅ ⎜ α Fe′ + ∑ K * 3+ [ Li′ ] ⎟ Fe L i =1 ⎝ ⎠
(30)
68
Kraemer, Butler, Borer, Cervini-Silva
As Equations (28) to (30) indicate, dissolved iron concentrations in equilibrium with an iron oxide increase as a function of the ligand concentrations [Li] and of the conditional stability constant K*Fe3+L. This is illustrated in Figure 2 where the soluble iron concentrations in equilibrium with ferrihydrite or goethite in the presence of two siderophores with different affinities for iron are plotted as a function of the siderophore concentrations. At ligand concentrations below 0.1 nmole/kg, the solubility of ferrihydrite is controlled by hydrolysis species and is not affected by organic ligands. At higher ligand concentrations its solubility is a linear function of the organic ligand concentration. The different affinity of the two siderophores is not affecting the solubility of ferrihydrite because siderophores are quantitatively present as iron complexes. In equilibrium with goethite, the iron speciation is dominated by siderophore complexes. Therefore the soluble iron concentration increases linearly with the siderophore concentration over the whole concentration range shown here. Also, the affinity of the siderophores for iron has a stronger effect on equilibrium iron concentrations. 1.E-08 ferrihydrite in the presence of alterobactin-A or DFO-B
[Fe(III)] mole/kg
1.E-09 goethite / Alterobactin-A
1.E-10
1.E-11 goethite / DFO-B
1.E-12
1.E-13 0.01
0.1
1
10
[Ltot] nmole/kg
Figure 2. Calculated soluble iron concentrations in equilibrium with ferrihydrite and goethite in seawater (pH 8) as a function of soluble siderophore concentrations. The siderophores are DFO-B (logK*Fe3+L = 21.6) or alterobactin-A (logK*Fe3+L = 23.9).
Figure 3 further illustrates the effect of the conditional stability constant of the organic complex on the solubility of ferrihydrite and goethite. For this model calculation the ligand concentration was kept constant at one nmole/kg and the logK*Fe3+L was varied between 18 and 25. At logK*Fe3+L < 19 an organic ligand concentration of 1 nM has little effect on iron oxide solubilities and the soluble iron speciation is dominated by hydrolysis species. The soluble iron concentration in equilibrium with ferrihydrite increases with increasing complex stabilities until at logK*Fe3+L > 21 effectively all siderophore is complexing iron and the iron concentrations are limited by the total ligand concentration of 1 nM. The solubility of goethite increases linearly with increasing conditional stability constant until it approaches the solubility of ferrihydrite at logK*Fe3+L > 24. It has been suggested that in the deep sea soluble iron may be in equilibrium with ferrihydrite (Johnson et al. 1997). It is difficult to deduce from observations of iron speciation in seawater if soluble iron concentrations are controlled by equilibria with minerals or by steady state kinetics of the various source and sink terms. However, calculations of the solution
Siderophores & Dissolution of Iron Bearing Minerals
69
1.E-08
ferrihydrite
[Fe(III)diss] nmole/kg
1.E-09 1.E-10 1.E-11
goethite 1.E-12
hematite
1.E-13 1.E-14 1.E-15 18
19
20
21
22
23
24
25
logK*Fe3+L
Figure 3. Calculated soluble iron concentrations in equilibrium with ferrihydrite, goethite, or hematite and [Ltot] = 1 nM as a function of the conditional equilibrium constant of the metal organic complex K*Fe3+L in seawater (pH 8.1).
saturation state of seawater with respect to iron oxides helps to constrain models including iron-bearing minerals as sources or sinks of iron. Many marine iron speciation studies report total iron and ligand concentrations as well as conditional stability constants of the metal organic complex. In these cases, the solution saturation state with respect to a mineral phase expressed as Gibbs free energy change of reaction 'G can be calculated using
{Fe }{H O} {H } ΔG = RT ln 3+
3
+
−3
2
(31)
K Fe(OH)3
⎡ Fe3+ ⎤ {H 2O}3 ⎡H + ⎤ ⎣ ⎦ ⎦ = RT ln ⎣ K Fe(OH)3 ⎡ Fe3+ ⎤ ⎡ H + ⎤ ⎦⎣ ⎦ = RT ln ⎣ * K Fe(OH) 3
−3
⋅
γ
Fe3 + γ3 + H
(32)
−3
(33)
where [Fe3+] is the concentration of the iron hexaquo complex; R is the gas constant and T is the temperature in K. The equation is correct only if it can be assumed that the activity coefficients and the activity of seawater are not influenced by the disequilibrium. This is certainly true in the case of iron in seawater where the disequilibrium leads to variations of iron concentrations in or below the nanomolar range. Equation (33) can be combined with Equation (24) for an expression that takes into account iron hydrolysis and complexation: −3
⎡ Fe ( III )T ⎤ ⎡H + ⎤ ⎣ ⎦⎣ ⎦ ΔG = RT ln n ⎛ ⎞ * * ⎜ α Fe′ + ∑ K Fe3+ L [ Li′ ] ⎟ K Fe(OH)3 i =1 ⎝ ⎠
(34)
'G is negative if the solution is under-saturated with respect to the mineral phase and 'G = 0 at equilibrium.
70
Kraemer, Butler, Borer, Cervini-Silva DISSOLUTION OF AEROSOLS AND DEFINED IRON OXIDES IN SEAWATER
Dissolution mechanisms Iron oxide dissolution mechanisms involve the breaking of coordinative bonds between surface Fe(III) and the crystal structure. Various processes can labilize these bonds and accelerate the dissolution reaction, including the protonation of lattice O or OH groups in the inner coordination sphere of surface Fe(III) ions; the deprotonation of OH2 or OH groups in the inner coordination sphere; the reduction of Fe(III) to Fe(II); and the coordination of surface Fe(III) by organic or inorganic ligands. The corresponding mechanisms are protonpromoted dissolution, alkaline dissolution, reductive dissolution (including photoreductive dissolution), and ligand-controlled dissolution. Under the assumption that these mechanisms are independent of each other, the overall rate law of dissolution is: d ⎡ Fe ( III )T ⎤⎦ R= ⎣ = ( RH + ROH + Rred + ∑ RLn ) f ( ΔG ) dt
(35)
where RH and ROH are the rates of proton-promoted and alkaline dissolution respectively, Rred is the rate of reductive dissolution and RL1 to RLn are the rates of ligand-promoted dissolution in the presence of ligands L1 to Ln, including siderophore ligands, and f ('G) is a function of the solution saturation state with respect to the dissolving mineral (Furrer and Stumm 1986; Kraemer and Hering 1997). f ('G) is 1 at strong under-saturation of the dissolving mineral phase and goes to 0 at solubility equilibrium (i.e., the dissolution rates are 0 at equilibrium). A more detailed discussion of the effect of the solution saturation state on dissolution rates follows below. Dissolution experiments are often conducted far from equilibrium where Equation (35) simplifies to: R = RH + ROH + Rred + ∑ RLn
(36)
Proton-promoted dissolution rates of iron oxides are related to surface excess of adsorbed protons relative to the protonation state at the point of zero net proton charge: RH = kH [ H ads ]
n
(37)
where kH is the rate constant of proton-promoted dissolution and n is the reaction order (3.25 for goethite according to Zinder et al. 1986). If the surface protonation state is not known, the rate law can be written as a function of the H+ activity in solution and the specific surface area of the mineral:
{ }
R = kH′ ( surface − area ) ⋅ H +
n′
(38)
where (surface − area) is expressed as m2/kgwater. It is important to note that the H+ activity in solution {H+} is non-linearly related to the surface protonation state so that rate constants and reaction orders in Equations (37) and (38) are not identical. Kuma et al. (1992) further simplified Equation (38) to express the mineral concentration in terms of a conveniently measurable quantity in seawater, the particulate iron concentration [Fe(III)p]: d ⎡ Fe ( III ) p ⎤ ⎦ = k ⎡ Fe III ⎤ R=− ⎣ ( )p ⎦ H2 ⎣ dt
(39)
where kH2 is a rate constant conditional to the seawater pH, crystal structure, and specific surface area of the iron oxide. This has to be taken into consideration when comparing kH2 with other published rate constants of proton-promoted dissolution.
Siderophores & Dissolution of Iron Bearing Minerals
71
Natural and anthropogenic ligands have an important influence on the weathering kinetics of oxide minerals (Furrer and Stumm 1986; Casey and Ludwig 1996; Kraemer and Hering 1997). A generalized mechanism of ligand-controlled dissolution has been proposed (Furrer and Stumm 1986) which includes three steps 1) fast surface complex formation by a ligand exchange mechanism, 2) slow, rate determining detachment of the surface metal center, and 3) fast regeneration of the surface. The rate of ligand-controlled dissolution RL is a function of the surface excess of adsorbed ligands (Furrer and Stumm 1986): RL = kL [ L ]ads
(40)
where kL is a pseudo first order rate coefficient [h−1] and [L]ads is the surface excess of adsorbed ligands [mole m−2]. The rate constant of ligand-controlled dissolution kL is influenced by changes in surface speciation of the ligand. The surface speciation can potentially be influenced by factors such as pH, surface coverage and the adsorption of other inorganic ligands (Kraemer et al. 1998). The rate coefficient is therefore conditional and depends on the geochemical environment. Alkaline dissolution can be seen as a special case of ligandcontrolled dissolution with the deprotonation of adsorbed water or hydroxyl leading to an increase of their labilizing effect. The combined proton-promoted and alkaline dissolution rates have a minimum in the same pH range in which iron oxides have a minimum solubility, i.e., near the average pH of seawater. This means that in the absence of complexing ligands or reducing agents, iron acquisition in marine systems is not only limited by the low solubility of iron oxides, but also by their slow dissolution kinetics. Common to reductive dissolution and ligand-promoted dissolution is the formation of surface complexes which weaken the oxo bonds of the coordinated iron ions. For reductive dissolution, destabilization of the oxo bonds is achieved by the transfer of electron(s) from thermally or photo-excited ligands to the coordinated iron ion. Photo-reductive dissolution may also occur by other mechanisms (photolysis of surface hydroxo groups or reduction of surface sites by a bulk semiconductor mechanism). Typically ligands containing carboxylic and D-hydroxycarboxylic groups have been shown to form photo-reactive complexes with Fe(III) in solution and at the mineral surface. Upon irradiation in the near UV range, ligand to metal charge transfer (LMCT) within the surface complex leads to the reduction of Fe(III) and to the concomitant oxidation of the ligand. The reduction of Fe(III) to Fe(II) strongly weakens the oxo bonds and facilitates bond breaking. The detachment of reduced Fe(II) rather than the reduction of Fe(III) to Fe(II) is the rate determining step in the overall dissolution reaction (Banwart et al. 1989; Siffert and Sulzberger 1991). Due to the slow detachment of Fe(II), reoxidation of Fe(II) and thus restabilization of the oxo bonds may occur. Overall dissolution rates are then determined by two competing processes: (i) detachment of Fe(II) from the surface and (ii) reoxidation of Fe(II). Detachment rates of Fe(II) depend highly on the iron oxide structure. Detachment rates of Fe(II) are likely to decrease with increasing thermodynamic stability (and increasing crystallinity) of the various iron oxide phases, (Sulzberger and Laubscher 1995). However, in analogy to Fe(III), detachment of Fe(II) from the surface is also facilitated by proton-promoted and ligand-promoted destabilization of the oxo bonds (Banwart et al. 1989; Borer et al. 2005; Sulzberger and Laubscher 1995).Therefore, the overall photo-reductive dissolution rate expression must include surface complex formation, photo-excitation and charge transfer within the surface complex, detachment as well as reoxidation of Fe(II). For an in-depth discussion of photo-reductive mechanisms and dissolution kinetics we refer to (Siffert and Sulzberger 1991).
72
Kraemer, Butler, Borer, Cervini-Silva
Experimentally observed dissolution rates of aerosol and defined minerals The observation of iron oxide dissolution kinetics under ambient seawater conditions is a non-trivial task. As discussed above, dissolution rates are approaching zero near the solubility limit of the dissolving minerals. However, the solubilities of iron oxide minerals in seawater are extremely low. To overcome the analytical difficulties involved in measuring dissolution rates at such low concentration ranges, Kuma et al. (1992) have devised a setup in which the dissolution rates have been obtained from the decrease of a small mass of isotopically labeled iron oxides in a dialysis tube which was immersed in a large volume of seawater at constant pH. The advantage of this setup is that it is not necessary to measure soluble iron concentrations which are kept at concentration levels below the oxide equilibrium solubility. Using this method rate constants k2 in autoclaved seawater were determined for the dissolution of ferrihydrite, lepidocrocite, and goethite of 0.015, 0.005, and 0.00012 day−1 (Kuma et al. 1992; Kuma et al. 1993; Kuma and Matsunaga 1995). They also observed growth rates of red tide marine flagellates and a marine diatom in the presence of Fe(III)-EDTA complex and various iron oxides. Growth rates decreased in the order Fe(III)-EDTA > ferrihydrite > lepidocrocite > goethite (Kuma and Matsunaga 1995). Iron dissolution from aerosol samples in seawater shows more complex dissolution behaviour than pure mineral phases for several reasons. Aerosols can consist of more than one iron-bearing mineral phase with corresponding variations in solubilities and dissolution rates. Moreover, minerals are undergoing extensive transformations due to the harsh conditions during atmospheric transport, leading to the labilization of some fraction of iron from primary minerals including dissolved Fe(II) and Fe(III) as discussed above. Zhuang et al. (1990) have observed fast dissolution of up to 50% of the total iron from aerosol samples immersed into seawater at ambient pH (see corrected value in Yhu et al. 1993). A labile Fe(II) pool of between 0.3–2.2% of the total aerosol iron was quantified by extraction in acidic solutions (Zhu et al. 1993; Zhu et al. 1997; Siefert et al. 1999; Johansen et al. 2000).
Photo-reductive dissolution in seawater Typically, iron oxide photolysis in the laboratory has been investigated by measuring the photo-production of Fe(II). Quantification of iron oxide photolysis in seawater by this methodological approach is constrained by fast reoxidation of photo-produced surface Fe(II) as well as fast reoxidation of Fe(II) that has eventually been released to the solution. Thus, the formation of Fe(II) may not be used as a reliable quantitative measure of photo-reductive iron oxide dissolution in seawater. In recent years other approaches have been taken to quantify iron oxide photolysis in seawater samples. Barbeau and Moffett (2000) have used a novel inert tracer technique to investigate the photo-dissolution of a model iron oxide. Colloidal ferrihydrite uniformly impregnated with an inert tracer (133Ba) was spiked to seawater and the release and accumulation of this tracer in solution was measured under irradiated conditions (natural sunlight). According to these authors, iron oxide photo-dissolution was directly related to the release and accumulation of 133Ba, regardless of the fate of iron. During irradiation of 133 Ba and 59Fe impregnated ferrihydrite, only release and accumulation of 133Ba was observed (Barbeau and Moffett 2000) while iron was most likely re-oxidized. Wells and Mayer (1991) investigated the photo-dissolution of colloidal ferrihydrite and goethite in spiked seawater of pH 8 by measuring the labile portion of total iron as determined by extraction with the complexing agent 8-hydroxyquinoline. The lability of these colloidal iron oxides was found to increase upon irradiation with artificial and natural sunlight, and this was assigned to the rapid cycling of photo-reductive dissolution, rapid reoxidation in solution and precipitation in the presence of unknown chromophores. Pre-irradiation of the
Siderophores & Dissolution of Iron Bearing Minerals
73
seawater prior to addition of colloidal Fe(III) eliminated the photoreaction, confirming the role of natural organic chromophores in photo-dissolution of iron oxides. The labile portion of iron in seawater was further shown to correlate positively with its availability to marine algae (Wells and Goldberg 1991). Thus it seems that photo-reductive dissolution of colloidal iron may generate an iron pool that is bioavailable to marine algae, either by generating dissolved Fe(II) of highly labile colloidal Fe(III).
ORGANIC LIGANDS AND IRON OXIDE DISSOLUTION IN SEAWATER Siderophore-promoted dissolution mechanisms Siderophores can influence iron oxide dissolution by acceleration of the dissolution reaction via ligand-controlled and light induced dissolution mechanisms (Kraemer et al. 1999; Borer et al. 2005) and by modifying the solution saturation state of the seawater with respect to the iron oxide (Cheah et al. 2003; Kraemer 2004). A model calculation was performed to illustrate the effect of the concentration of a strong marine siderophore (alterobactin A) on the solution saturation state in the presence of various model iron oxides and a total concentration of 0.1 nM dissolved iron in seawater (Fig. 4). Under these conditions, a small concentration of the siderophore is required to maintain solubility equilibrium ('G = 0 kJ/mole). Obviously the equilibrium siderophore concentration increases with increasing thermodynamic stability of the iron oxide. A further increase of the siderophore concentration leads to under-saturation ('G < 0 kJ/mole). A quantitative treatment of the effect of the solution saturation state on dissolution rates as derived from the activated complex theory (Lasaga 1981; Aagaard and Helgeson 1982) has been applied to ligand-controlled dissolution (Kraemer and Hering 1997) resulting in an empirical rate law: ⎡ ⎛ ΔG ⎞ ⎤ Rnet = kL [ L ]ads f ( ΔG ) = kL [ L ]ads ⎢1 − exp ⎜ ⎟⎥ ⎝ 2 RT ⎠ ⎦ ⎣
( 41)
where kL is the rate constant of ligand-controlled dissolution, [L]ads is the adsorbed ligand concentration; 'G is the Gibbs free energy of reaction (kJ mole−1); R is the gas constant, and T is the absolute temperature (K). Figure 5 illustrates the effect of the solution saturation state expressed as Gibbs free energy change on the net dissolution rate represented as f ('G) = [1 − exp('G/(2RT))]. At a 'G d −3 kJ/mole, f ('G) t 0.5, i.e., net dissolution rates are more than half of the maximum dissolution rates. In the model calculation presented in Figure 4, 'G ≈ −3 kJ/mole at a total siderophore concentration between 0.25 nM (ferrihydrite) and 1 nM (hematite) which is in the range of observed strong ligand concentrations in marine surface water. Based on these considerations, it seems likely that the maintenance of small free siderophore concentrations by marine bacterial exudation may provide the driving force for dissolution mechanisms including ligand-controlled dissolution. Adsorbed siderophores can also accelerate iron oxide dissolution by a ligand-controlled dissolution mechanism (Holmen and Casey 1998; Kraemer et al. 1999; Kalinowski et al. 2000; Maurice et al. 2000, 2001; Cervini-Silva and Sposito 2002; Cocozza et al. 2002; Cheah et al. 2003; Kraemer 2004). As indicated in the rate law for ligand-controlled dissolution (Eqn. 41) the effect of adsorbed siderophores on dissolution rates is linearly related to their adsorbed concentrations. Adsorbed concentrations are non-linearly related to soluble siderophore concentrations via adsorption isotherms (Kraemer et al. 1999, 2002; Cocozza et al. 2002; Neubauer et al. 2002; Cheah et al. 2003). At extremely low dissolved siderophore
74
Kraemer, Butler, Borer, Cervini-Silva 8 Ferrihydrite Hematite
6
Goethite Lepidocrocite
ΔG [kJ/mole]
4 2 0 -2
0
0.2
0.4
0.6
0.8
1
1.2
1.4
1.6
1.8
2
-4 -6 -8 [alterobactin-A]tot [nM]
f (ΔG)
Figure 4. Calculated solution saturation state of various iron oxides as a function of the alterobactin-A concentration, assuming a total soluble iron concentrations [Fe(III)tot] = 0.1 nM in seawater. The solution saturation state is expressed as Gibbs free energy change 'G as calculated by Equation (34) using conditional hydrolysis constants as listed in Table 1. Positive 'G indicates super-saturation, negative 'G under-saturation. At equilibrium 'G = 0. pH = 8.1; logK*FeL = 23.9.
1 0.9 0.8 0.7 0.6 0.5 0.4 0.3 0.2 0.1 0 -15
-10
-5
0
ΔG [kJ/mole]
Figure 5. The effect of the solution saturation state expressed as Gibbs free energy change 'G on net dissolution rates where f ('G) =[1−exp('G/(2RT))]. At equilibrium, f ('G) = 0, i.e., the net dissolution rate Rnet = 0. With decreasing Gibbs free energy changes, f ('G) approaches unity, i.e., the net dissolution rates approach a constant maximum value.
concentrations reported in literature, adsorbed siderophore concentrations are also expected to be low. Based on this consideration Kraemer (2004) has suggested that direct siderophorecontrolled dissolution mechanisms are insignificant at low siderophore concentrations typically found in natural environments compared to other dissolution mechanisms including proton-promoted dissolution, alkaline dissolution or ligand-promoted dissolution mechanisms driven by other adsorbed ligands. In this context, the more important function of siderophores in oligotrophic natural environments may be to increase the solubility of iron oxides and to drive other dissolution mechanisms by lowering the solution saturation state. This hypothesis is supported by observations of siderophore-promoted dissolution rates of iron oxides in artificial seawater by Yoshida et al. (2002). They have demonstrated that
Siderophores & Dissolution of Iron Bearing Minerals
75
micromolar concentrations of a siderophore produced by a marine bacterium Alteromonas haloplanktis accelerate the dissolution rates of goethite and a poorly crystalline iron hydroxide. The dissolution rates increased with increasing siderophore concentrations in a roughly linear relationship at pH 4. Interpolating these results toward nanomolar concentrations suggests that the effect of the siderophores on dissolution rates is negligible at natural concentration levels.
Photo-reductive dissolution mechanisms in the presence of siderophores Photo-reductive dissolution of iron oxides or other particulate iron forms is expected to be slow at seawater pH due to low adsorption of possible photo-reductive ligands (e.g., carboxylic and D-hydroxycarboxylic acids) to iron oxide surfaces, slow release of photoproduced surface Fe(II) to the solution and fast reoxidation of surface Fe(II). Waite et al. (1995) studied diel variations in iron speciation in northern Australian shelf waters and found no correlation between measured particulate iron concentrations and ferrozine active iron (Fe(II)). Therefore, they proposed that particulate iron does not appear to be the dominant source of Fe(II) in seawater. However, for seawater that is characterized by the presence of strong iron complexes (e.g., HNLC waters), dissolution of iron oxides by photo-reductive mechanisms may be enhanced considerably. Recently, Borer et al. (2005) have studied the photo-reduction of goethite and lepidocrocite in the presence of a typical organic photoreductant (oxalate) and two model siderophores, desferrioxamine B (DFO-B) and aerobactin. They have observed that under irradiated and aerated conditions at pH 6, surface Fe(III) is reduced by oxalate, but only a minor part of surface Fe(II) is detached from the surface before reoxidation takes place. Due to the slow detachment of Fe(II) from iron oxide surfaces, in particular for higher crystalline and less soluble iron oxide phases, reoxidation of surface Fe(II) has been shown to limit the overall dissolution rate at circumneutral pH (Sulzberger and Laubscher 1995; Voelker et al. 1997). However, in the presence of siderophores, Fe(II) is efficiently detached from the surface and significant photo-reductive dissolution rates are observed (Borer et al. 2005). Due to the fact that Fe-siderophore complexes have very negative redox potentials at neutral pH, oxidation of dissolved Fe(II)-siderophore complexes is assumed to be very fast (Boukhalfa and Crumbliss 2002), and the trivalent iron state is stabilized against reduction by many ligands. For the reported case of DFOB, oxidation of Fe(II)-DFOB complexes is instantaneous (Welch et al. 2002). These combined observations indicate that siderophores potentially enhance photo-reductive dissolution without contributing to the formation of measurable Fe(II).
Amphiphilic siderophores In addition to the preponderance of D-hydroxycarboxylic-acid-containing siderophores characterized to date from open ocean bacterial isolates, amphiphilic siderophores are also prevalent and many also contain both an D-hydroxycarboxylic-acid, in the form of Ehydroxyaspartic acid, as well as a fatty acid that confers the amphiphilicity (e.g., marinobactins and aquachelins, see Fig. 1). The wide diversity of marine bacteria from which amphiphilic siderophores have been isolated suggests this property evolved as a common iron acquisition strategy for marine bacteria (Martinez et al. 2003). Not only could the amphiphilic character of the siderophores function to keep siderophores in close contact with the bacteria (Xu et al. 2002), but importantly this amphiphilicity will increase surface reactivity. The enhanced surface reactivity of photo-reactive siderophores on iron-containing particles may well further promote dissolution of iron minerals; these investigations are in progress. The aquachelins, marinobactin and amphibactins are all produced as suites of siderophores. The amphiphilic siderophores with shorter fatty acids (e.g., C12) partition into vesicle membranes far less than the longer chained fatty acids (C18). The decreased partitioning however increases the availability of particle interactions.
76
Kraemer, Butler, Borer, Cervini-Silva CONCLUSIONS
Understanding the cycling of iron in marine systems and how it relates to biological nutrient acquisition processes remains a challenge for biogeochemical research. This challenge has been met with impressive vigor and success, considering the difficulty to measure iron concentrations, solubilities, and speciation at sub-nanomolar levels. However, some important information is missing. For example, while it is well known that iron in marine surface waters is bound to strongly complexing ligands, their characterization and identification is difficult. However, indirect evidence suggests that biogenic ligands including microbial siderophores play an important role in marine iron speciation. A further challenge will be the understanding of trace nutrient cycling and the indications of trace nutrient limitation in the geological record, considering the potential importance of iron and other trace nutrients for the global climate and for biological evolution in the past. In this chapter we reviewed the coordination chemistry and redox-/photoredox chemistry of soluble siderophore iron complexes as well as the effect of siderophores on the solubility of iron-bearing minerals, and their dissolution mechanisms and rates. We hope that the discussion of these processes may help to appreciate the complexity of biological influences on marine iron cycling.
REFERENCES Aagaard P, Helgeson HC (1982) Thermodynamic and kinetic constraints on reaction-rates among minerals and aqueous-solutions.1. Theoretical considerations. Am J Sci 282:237-285 Allnutt FCT, Bonner WDJ (1987) Evaluation of reductive release as a mechanism for iron uptake from ferrioxamine B by chlorella vulgaris. Plant Physiol 85:751-756 Anbar AD, Knoll AH (2002) Proterozoic ocean chemistry and evolution: A bioinorganic bridge? Science 297: 1137-1142 Archer DE, Johnson K (2000) A Model of the iron cycle in the ocean. Global Biogeochem Cycles 14:269279 Arimoto R, Balsam W, Schloesslin C (2002) Visible spectroscopy of aerosol particles collected on filters: ironoxide minerals. Atmo Environ 36:89-96 Armstrong E, Granger J, Mann E L, Price NM (2004) Outer-membrane siderophore receptors of heterotrophic oceanic bacteria. Limnol Oceanogr 49:579-587 Baes CFJ, Mesmer RE (1976) The Hydrolysis of Cations. Wiley, New York Balsam WL, Ottobliesner BL, Deaton BC (1995) Modern and last glacial maximum eolian sedimentation patterns in the Atlantic-ocean interpreted from sediment iron-oxide content. Paleoceanogr 10:493-507 Banwart S, Davies S, Stumm W (1989) The role of oxalate in accelerating the reductive dissolution of hematite (D-Fe2O3) by ascorbate. Colloids Surf 39:303-309 Barbeau K, Moffett JW (2000) Laboratory and field studies of colloidal iron oxide dissolution as mediated by phagotrophy and photolysis. Limnol Oceanogr 45:827-835 Barbeau K, Moffett JW, Caron DA, Croot PL, Erdner DL (1996) Role of protozoan grazing in relieving iron limitation of phytoplankton. Nature 380:61-64 Barbeau K, Rue EL, Bruland KW, Butler A (2001) Photochemical cycling of iron in the surface ocean mediated by microbial iron(III)-binding ligands. Nature 413:409-413 Barbeau K, Rue EL, Trick CG, Bruland KT, Butler A (2003) Photochemical reactivity of siderophores produced by marine heterotrophic bacteria and cyanobacteria based on characteristic Fe(III) binding groups. Limnol Oceanogr 48:1069-1078 Barbeau K, Zhang GP, Live DH, Butler A (2002) Petrobactin, a photoreactive siderophore produced by the oildegrading marine bacterium Marinobacter hydrocarbonoclasticus. J Am Chem Soc 124:378-379 Behra P, Sigg L (1990) Evidence for redox cycling of iron in atmospheric water droplets. Nature 344:419-421 Benderliev KM (1999) Algae and cyanobacteria release organic chelators in the presence of inorganic Fe(III) thus keeping iron dissolved. Bulgarian J Plant Physiol 25:65-75 Benderliev KM, Ivanova NI (1994) High-affinity siderophore-mediated iron-transport in the green-alga Scenedesmus incrassatulus. Planta 193:163-166 Bergeron RJ, Huang G, Smith RE, Butler A (2003) Total synthesis and structure revision of petrobactin. Tetrahedron 59:2007-2014
Siderophores & Dissolution of Iron Bearing Minerals
77
Bishop JKB, Davis RE, Sherman JT (2002) Robotic observations of dust storm enhancement of carbon biomass in the North Pacific. Science 298:817-821 Bloemendal J, King JW, Hall FR, Doh SJ (1992) Rock magnetism of late Neogene and Pleistocene deep-sea sediments - relationship to sediment source, diagenetic processes, and sediment lithology. J Geophys Res-Solid Earth 97:4361-4375 Borer P, Sulzberger B, Reichard PU, Kraemer SM (2005) Effect of siderophores on the light-induced dissolution of colloidal iron(III)(hydr)oxides. Mar Chem 93:179-193 Boukhalfa H, Crumbliss AL (2002) Chemical aspects of siderophore mediated iron transport. Biometals 15: 325-339 Boyd PW (2002) The role of iron in the biogeochemistry of the Southern Ocean and equatorial Pacific: a comparison of in situ iron enrichments. Deep Sea Res II - Top Stud Oceanogr 49:1803-1821 Boyd PW, Law CS (2001) The Southern Ocean Iron Release Experiment (SOIREE) - introduction and summary. Deep Sea Res II - Top Stud Oceanogr 48:2425-2438 Boyd PW, Law CS, Wong CS, Nojiri Y, Tsuda A, Levasseur M, Takeda S, Rivkin R, Harrison PJ, Strzepek R, Gower J, McKay RM, Abraham E, Arychuk M, Barwell-Clarke J, Crawford W, Crawford D, Hale M, Harada K, Johnson K, Kiyosawa H, Kudo I, Marchetti A, Miller W, Needoba J, Nishioka J, Ogawa H, Page J, Robert M, Saito H, Sastri A, Sherry N, Soutar T, Sutherland N, Taira Y, Whitney F, Wong SKE, Yoshimura T (2004) The decline and fate of an iron-induced subarctic phytoplankton bloom. Nature 428: 549-553 Boye M, Aldrich AP, van den Berg CMG, de Jong JTM, Veldhuis M, de Baar HJW (2003) Horizontal gradient of the chemical speciation of iron in surface waters of the northeast Atlantic Ocean. Mar Chem 80:129143 Boye M, van den Berg CMG (2000) Iron availability and the release of iron-complexing ligands by Emiliania huxleyi. Mar Chem 70:277-287 Bruland KT, Orians KJ, Coven JP (1994) Reactive trace metals in the stratified central North Pacific. Geochim Cosmochim Acta 58:3171-3182 Butler A (1998) Acquisition and utilization of transition metal ions by marine organisms. Science 281:207-210 Byrne RH, Kester DR (1976) A potentiometric study of ferric ion complexes in synthetic media and seawater. Mar Chem 4:275 - 287 Byrne RH, Kester DR (1976) Solubility of hydrous ferric oxide and iron speciation in seawater. Mar Chem 4: 255-274 Byrne RH, Luo YR, Young RW (2000) Iron hydrolysis and solubility revisited: observations and comments on iron hydrolysis characterizations. Mar Chem 70:23-35 Canfield DE (1998) A new model for Proterozoic ocean chemistry. Nature 396:450-453 Casey WH, Ludwig C (1996) The mechanism of dissolution of oxide minerals. Nature 381:506-509 Cervini-Silva J, Sposito G (2002) Steady-state dissolution kinetics of aluminum-goethite in the presence of desferrioxamine-B and oxalate ligands. Environ Sci Technol 36:337-342 Cheah SF, Kraemer SM, Cervini-Silva J, Sposito G (2003) Steady-state dissolution kinetics of goethite in the presence of desferrioxamine B and oxalate ligands: implications for the microbial acquisition of iron. Chem Geol 198:63-75 Chen M, Wang WX, Guo LD (2004) Phase partitioning and solubility of iron in natural seawater controlled by dissolved organic matter. Global Biogeochemical Cycles 18:GB4013, doi:10.1029/2003GB002160 Chen Y, Siefert RL (2004) Seasonal and spatial distributions and dry deposition fluxes of atmospheric total and labile iron over the tropical and subtropical North Atlantic Ocean. J Geophys Res - Atmosph 109: art. no. D09305 Claquin T, Schulz M, Balkanski YJ (1999) Modeling the mineralogy of atmospheric dust sources. J Geophys Res - Atmos 104:22243-22256 Coale KH, Johnson KS, Chavez FP, Buesseler KO, Barber RT, Brzezinski MA, Cochlan WP, Millero FJ, Falkowski PG, Bauer JE, Wanninkhof RH, Kudela RM, Altabet MA, Hales BE, Takahashi T, Landry MR, Bidigare RR, Wang XJ, Chase Z, Strutton PG, Friederich GE, Gorbunov MY, Lance VP, Hilting AK, Hiscock MR, Demarest M, Hiscock WT, Sullivan KF, Tanner SJ, Gordon RM, Hunter CN, Elrod VA, Fitzwater SE, Jones JL, Tozzi S, Koblizek M, Roberts AE, Herndon J, Brewster J, Ladizinsky N, Smith G, Cooper D, Timothy D, Brown SL, Selph KE, Sheridan CC, Twining BS, Johnson ZI (2004) Southern ocean iron enrichment experiment: Carbon cycling in high- and low-Si waters. Science 304:408-414 Coale KH, Johnson KS, Fitzwater SE, Gordon RM, Tanner S, Chavez FP, Ferioli L, Sakamoto C, Rogers P, Millero F, Steinberg P, Nightingale P, Cooper D, Cochlan WP, Landry MR, Constantinou J, Rollwagen G, Trasvina A, Kudela R (1996) A massive phytoplankton bloom induced by an ecosystem-scale iron fertilization experiment in the equatorial Pacific Ocean. Nature 383:495-501 Cocozza C, Tsao CCG, Cheah SF, Kraemer SM, Raymond KN, Miano TM, Sposito G (2002) Temperature dependence of goethite dissolution promoted by trihydroxamate siderophores. Geochim Cosmochim Acta 66:431-438
78
Kraemer, Butler, Borer, Cervini-Silva
Cornell RM, Schwertmann U (2003) The Iron Oxides. Wiley-VCH, Weinheim Croot PL, Bowie AR, Frew RD, Maldonado MT, Hall JA, Safi KA, La Roche J, Boyd PW, Law CS (2001) Retention of dissolved iron and Fe-II in an iron induced Southern Ocean phytoplankton bloom. Geophys Res Lett 28:3425- 3428 da Silva JJRF, Williams RJP (2001) The Biological Chemistry of the Elements: The Inorganic Chemistry of Life. Oxford University Press, Oxford Dhungana S, Crumbliss AL (2005) Coordination chemistry and redox processes in siderophore-mediated iron transport. Geomicrobiol J 22:87-98 Ditullio GR, Laws EA (1991) Impact of an atmospheric oceanic disturbance on phytoplankton community dynamics in the North Pacific Central Gyre. Deep Sea Res A - Oceanog Res Pap 38:1305-1329 Duce RA, Tindale NW (1991) Atmospheric transport of iron and its deposition in the ocean. Limnol Oceanogr 36:1715-1726 Duce RA, Unni CK, Ray BJ, Prospero JM, Merrill JT (1980) Long-range atmospheric transport of soil dust from Asia to the tropical North Pacific - temporal variability. Science 209:1522-1524 Eldridge ML, Trick CG, Alm MB, DiTullio GR, Rue EL, Bruland KW, Hutchins DA, Wilhelm SW (2004) Phytoplankton community response to a manipulation of bioavailable iron in HNLC waters of the subtropical Pacific Ocean. Aquat Microb Ecol 35:79-91 Emmenegger L, Schonenberger RR, Sigg L, Sulzberger B (2001) Light-induced redox cycling of iron in circumneutral lakes. Limnol Oceanogr 46:49-61 Evers A, Hancock RD, Martell AE, Motekaitis RJ (1989) Metal ion recognition in ligands with negatively charged oxygen donor groups. Complexation of Fe(III), Ga(III), In(III), Al(III), and other highly charged metal ions. Inorg Chem 28:2189-2195 Falkovich AH, Ganor E, Levin Z, Formenti P, Rudich Y (2001) Chemical and mineralogical analysis of individual mineral dust particles. J Geophys Res - Atmos 106:18029-18036 Fung IY, Meyn SK, Tegen I, Doney SC, John JG, Bishop JKB (2000) Iron supply and demand in the upper ocean. Global Biogeochem Cycles 14:281-295 Furrer G, Stumm W (1986) The coordination chemistry of weathering: I. dissolution kinetics of delta-Al2O3 and BeO. Geochim Cosmochim Acta 50:1847-1860 Fuse H, Takimura O, Kamimura K, Yamaoka Y (1993) Marine-algae excrete large molecular-weight compounds keeping iron dissolved. Biosci Biotechnol Biochem 57:509-510 Gao HZ, Zepp RG (1998) Factors influencing photoreactions of dissolved organic matter in a coastal river of the southeastern United States. Environ Sci Technol 32:2940-2946 Gao Y, Kaufman YJ, Tanre D, Kolber D, Falkowski PG (2001) Seasonal distributions of aeolian iron fluxes to the global ocean. Geophys Res Lett 28:29-32 Gervais F, Riebesell U, Gorbunov MY (2002) Changes in primary productivity and chlorophyll a in response to iron fertilization in the Southern Polar Frontal Zone. Limnol Oceanogr 47:1324-1335 Ginoux P, Chin M, Tegen I, Prospero JM, Holben B, Dubovik O, Lin SJ (2001) Sources and distributions of dust aerosols simulated with the GOCART model. J Geophys Res - Atmos 106:20255-20273 Gledhill M, McCormack P, Ussher S, Achterberg EP, R.F.C. M, Worsfold PJ (2004) Production of siderophore type chelates by mixed bacterioplankton populations in nutrient enriched seawater incubations. Mar Chem 88:75-83 Gledhill M, van den Berg CMG (1994) Determination of complexation of iron(iii) with natural organic complexing ligands in seawater using cathodic stripping voltammetry. Mar Chem 47:41-54 Gledhill M, van den Berg CMG (1995) Measurement of the redox speciation of iron in seawater by catalytic cathodic stripping voltammetry. Mar Chem 50:51-61 Gledhill M, van den Berg CMG, Nolting RF, Timmermans KR (1998) Variability in the speciation of iron in the northern North Sea. Mar Chem 59:283-300 Gonye ER, Carpenter EJ (1974) Production of iron-binding compounds by marine microorganisms. Limnol Oceanogr 19:840-842 Granger J, Price NM (1999) The importance of siderophores in iron nutrition of heterotrophic marine bacteria. Limnol Oceanogr 44:541-555 Guan LL, Kanoh K, Kamino K (2001) Effect of exogenous siderophores on iron uptake activity of marine bacteria under iron-limited conditions. Appl Environ Microbiol 67:1710-1717 Gutteridge JMC, Richmond R, Halliwell B (1979) Inhibition of the Iron-Catalyzed Formation of Hydroxyl Radicals from Superoxide and of Lipid Peroxidation by Desferrioxamine. Biochem J 184:469-472 Hand JL, Mahowald NM, Chen Y, Siefert RL, Luo C, Subramaniam A, Fung I (2004) Estimates of atmosphericprocessed soluble iron from observations and a global mineral aerosol model: Biogeochemical implications. J Geophys Res 109:D17205, doi: 10.1029/2004JD004574 Harris WR, Carrano CJ, Raymond KN (1979) Coordination chemistry of microbial iron transport compounds. 16. Isolation, characterization, and formation-constants of ferric aerobactin. J Am Chem Soc 101:27222727
Siderophores & Dissolution of Iron Bearing Minerals
79
Hashimoto K, Misawa T (1973) Solubility of J-FeOOH in perchloric-acid at 25 °C. Corrosion Sci 13:229231 Haygood MG, Holt PD, Butler A (1993) Aerobactin production by a planktonic marine vibrio sp. Limnol Oceanogr 38:1091-1097 Hickford SJH, Kupper FC, Zhang G, Carrano CJ, Blunt JW, Butler A (2004) Petrobactin sulfonate, a new siderophore produced by the marine bacterium Marinobacter hydrocarbonoclasticus. J Natl Prod 67: 1897-1899 Holmen BA, Casey WH (1998) Hydroxamate ligands, surface chemistry, and the mechanism of ligandpromoted dissolution of goethite [D-FeOOH(s)]. Geochim Cosmochim Acta 62:726-726 Hong H, Kester DR (1986) Redox state of iron in the offshore waters of Peru. Limnol Oceanogr 31:512-524 Hutchins DA, Ditullio GR, Bruland KW (1993) Iron and regenerated production - evidence for biological iron recycling in two marine environments. Limnol Oceanogr 38:1242-1255 Hutchins DA, Franck VM, Brzezinski MA, Bruland KW (1999) Inducing phytoplankton iron limitation in iron-replete coastal waters with a strong chelating ligand. Limnol Oceanogr 44:1009-1018 Hutchins DA, Witter AE, Butler A, Luther GW (1999) Competition among marine phytoplankton for different chelated iron species. Nature 400:858-861 Jalal MAF, Hossain MB, Vanderhelm D, Sandersloehr J, Actis LA, Crosa JH (1989) Structure of anguibactin, a unique plasmid-related bacterial siderophore from the fish pathogen vibrio-anguillarum. J Am Chem Soc 111:292-296 Jickells TD (1999) The inputs of dust derived elements to the Sargasso Sea; a synthesis. Mar Chem 68:5-14 Johansen AM, Siefert RL, Hoffmann MR (2000) Chemical composition of aerosols collected over the tropical North Atlantic Ocean. J Geophys Res - Atmos 105:15277-15312 Johnson KS, Coale KH, Elrod VA, Tindale NW (1994) Iron photochemistry in seawater from the Equatorial Pacific. Mar Chem 46:319- 334 Johnson KS, Elrod VA, Fitzwater SE, Plant JN, Chavez FP, Tanner SJ, Gordon RM, Westphal DL, Perry KD, Wu JF, Karl DM (2003) Surface ocean-lower atmosphere interactions in the Northeast Pacific Ocean Gyre: Aerosols, iron, and the ecosystem response. Global Biogeochem. Cycles 17: art. no.-1063 Johnson KS, Gordon RM, Coale KH (1997) What controls dissolved iron concentrations in the world ocean? Mar Chem 57:137-161 Jones GJ, Palenik BP, Morel FMM (1987) Trace-metal reduction by phytoplankton - the role of plasmalemma redox enzymes. J Phycol 23:237-244 Kalinowski BE, Liermann LJ, Givens S, Brantley SL (2000) Rates of bacteria-promoted solubilization of Fe from minerals: a review of problems and approaches. Chem Geol 169:357-370 King DW (1998) Role of carbonate speciation on the oxidation rate of Fe(II) in aquatic systems. Environ Sci Technol 32:2997–3003 King DW, Lin J, Kester DR (1991) Spectrophotometric determination of Iron(II) in seawater at nanomolar concentrations. Anal Chim Acta 247:125-132 King DW, Lounsbury HA, Millero FJ (1995) Rates and mechanism of Fe(II) oxidation at nanomolar total iron concentrations. Environ Sci Technol 29:818–824 Koike I, Hara S, Terauchi K, Kogure K (1990) Role of submicron particles in the ocean. Nature 345:242-243 Kopcewicz B, Kopcewicz M (1991) Mossbauer study of iron-containing atmospheric aerosols. Struct Chem 2:303-312 Kopcewicz B, Kopcewicz M (1994) Determination of the pure-air background level of the iron-containing atmospheric aerosol by the Mossbauer technique. Hyperfine Interact 91:777-781 Kopcewicz B, Kopcewicz M (1998) Iron-containing atmospheric aerosols. Hyperfine Interact 111:179-187 Kraemer SM (2004) Iron oxide dissolution and solubility in the presence of siderophores. Aquat Sci 66:3-18 Kraemer SM, Cheah SF, Zapf R, Xu JD, Raymond KN, Sposito G (1999) Effect of hydroxamate siderophores on Fe release and Pb(II) adsorption by goethite. Geochim Cosmochim Acta 63:3003-3008 Kraemer SM, Chiu VQ, Hering JG (1998) Influence of pH and competitive adsorption on the kinetics of ligandpromoted dissolution of aluminum oxide. Environ Sci Technol 32:2876-2882 Kraemer SM, Hering JG (1997) Influence of solution saturation state on the kinetics of ligand-controlled dissolution of oxide phases. Geochim Cosmochim Acta 61:2855-2866 Kraemer SM, Xu JD, Raymond KN, Sposito G (2002) Adsorption of Pb(II) and Eu(III) by oxide minerals in the presence of natural and synthetic hydroxamate siderophores. Environ Sci Technol 36:1287-1291 Kuma K, Matsunaga K (1995) Availability of colloidal ferric oxides to coastal marine-phytoplankton. Mar Biol 122:1-11 Kuma K, Nakabayashi S, Suzuki Y, Matsunaga K (1992) Dissolution rate and solubility of colloidal hydrous ferric-oxide in seawater. Mar Chem 38:133-143 Kuma K, Nalabayashi S, Suzuki Y, Kudo I, Matsunaga K (1992) Photo-reduction of Fe(III) by dissolved organic substances and existence of Fe(II) in seawater during spring blooms. Mar Chem 37:15-27
80
Kraemer, Butler, Borer, Cervini-Silva
Kuma K, Suzuki Y, Matsunaga K (1993) Solubility and dissolution rate of colloidal J-FeOOH in seawater. Water Res 27:651-657 Kuma K, Tanaka J, Matsunaga K (2000) Effect of hydroxamate ferrisiderophore complex (ferrichrome) on iron uptake and growth of a coastal marine diatom, Chaetoceros sociale. Limnol Oceanogr 45:1235-1244 Lancelot C (1984) Exracellular release of small and large molecules by phytoplankton in the southern bight of the north sea. East Coast Shelf Sci 18:65-77 Langmuir D (1969) The Gibbs free energies of substances in the system Fe-O2-H2O-CO2 at 25 °C. US Geological Survey Prof Paper 650 B:180-184 Lasaga AC (1981) Transition state theory. Rev Mineral 8:135-169 Lenes JM, Darrow BP, Cattrall C, Heil CA, Callahan M, Vargo GA, Byrne RH, Prospero JM, Bates DE, Fanning KA, Walsh JJ (2001) Iron fertilization and the Trichodesmium response on the West Florida shelf. Limnol Oceanogr 46:1261-1277 Lewis BL, Holt PD, Taylor SW, Wilhelm SW, Trick CG, Butler A, Luther GW (1995) Voltammetric estimation of iron(III) thermodynamic stability-constants for catecholate siderophores isolated from marine-bacteria and cyanobacteria. Mar Chem 50:179-188 Liu XW, Millero FJ (1999) The solubility of iron hydroxide in sodium chloride solutions. Geochim Cosmochim Acta 63:3487-3497 Loomis LD, Raymond KN (1991) Solution equilibria of enterobactin and metal enterobactin complexes. Inorg Chem 30:906-911 Lopes GKB, Schulman HM, Hermes-Lima M (1999) Polyphenol tannic acid inhibits hydroxyl radical formation from Fenton reaction by complexing ferrous ions. Biochim Biophys Acta 1472:142-152 Luther GW, Wu JF (1997) What controls dissolved iron concentrations in the world ocean? A comment. Mar Chem 57:173-179 Macrellis HM, Trick CG, Rue EL, Smith G, Bruland KW (2001) Collection and detection of natural ironbinding ligands from seawater. Mar Chem 76:175-187 Madigan MT, Martinko JM, Parker J (2000) Brock biology of microorganisms. Prentice-Hall, Upper Saddle River. Mahowald N, Kohfeld K, Hansson M, Balkanski Y, Harrison SP, Prentice IC, Schulz M, Rodhe H (1999) Dust sources and deposition during the last glacial maximum and current climate: A comparison of model results with paleodata from ice cores and marine sediments. J Geophys Res - Atmos 104:15895-15916 Maldonado MT, Price NM (1999) Utilization of Iron Bound to Strong Organic Ligands by Plankton Communities in the Subarctic Pacific Ocean. Deep Sea Res. II - Top. Stud. Oceanogr. 46:2447-2473 Maldonado MT, Price NM (2001) Reduction and transport of organically bound iron by Thalassiosira oceanica (Bacillariophyceae). J Phycol 37:298-309 Maranger R, Bird DF, Price NM (1998) Iron acquisition by photosynthetic marine phytoplankton from ingested bacteria. Nature 396:248-251 Martell AE, Smith RM, Motekaitis RJ (2001) NIST Critically selected stability constants of metal complexes database. NIST Martin JH, Coale KH, Johnson KS, Fitzwater SE, Gordon RM, Tanner SJ, Hunter CN, Elrod VA, Nowicki JL, Coley TL, Barber RT, Lindley S, Watson AJ, Vanscoy K, Law CS, Liddicoat MI, Ling R, Stanton T, Stockel J, Collins C, Anderson A, Bidigare R, Ondrusek M, Latasa M, Millero FJ, Lee K, Yao W, Zhang JZ, Friederich G, Sakamoto C, Chavez F, Buck K, Kolber Z, Greene R, Falkowski P, Chisholm SW, Hoge F, Swift R, Yungel J, Turner S, Nightingale P, Hatton A, Liss P, Tindale NW (1994) Testing the iron hypothesis in ecosystems of the equatorial Pacific-Ocean. Nature 371:123-129 Martin JH, Fitzwater SE (1988) Iron-deficiency limits phytoplankton growth in the northeast Pacific Subarctic. Nature 331:341-343 Martin JH, Gordon RM, Fitzwater S, Broenkow WW (1989) Vertex - phytoplankton iron studies in the Gulf of Alaska. Deep Sea Res A - Oceanog Res Pap 36:649-680 Martinez JS, Carter-Franklin JN, Mann EL, Martin JD, Haygood MG, Butler A (2003) Structure and membrane affinity of a suite of amphiphilic siderophores produced by a marine bacterium. Proc Natl Acad Sci USA 100:3754-3759 Martinez JS, Haygood MG, Butler A (2001) Identification of a natural desferrioxamine siderophore produced by a marine bacterium. Limnol Oceanogr 46:420-424 Martinez JS, Zhang GP, Holt PD, Jung HT, Carrano CJ, Haygood MG, Butler A (2000) Self-assembling amphiphilic siderophores from marine bacteria. Science 287:1245-1247 Matzanke BF, Muller-Matzanke G, Raymond KN (1989) Siderophore mediated iron transport. In Iron carriers and proteins. Loehr TM (ed) VCH Publisher, New York, p 1-121 Maurice PA, Lee YJ, Hersman LE (2000) Dissolution of Al-substituted goethites by an aerobic Pseudomonas mendocina var. bacteria. Geochim Cosmochim Acta 64:1363-1374 Maurice PA, Vierkorn MA, Hersman LE, Fulghum JE (2001) Dissolution of well and poorly ordered kaolinites by an aerobic bacterium. Chem Geol 180:81-97
Siderophores & Dissolution of Iron Bearing Minerals
81
McCave IN (1984) Size spectra and aggregation of suspended particles in the deep ocean. Deep Sea Res I 31: 329-352 Miller WL, Kester DR (1994) Photochemical iron reduction and iron bioavailability in seawater. J Mar Res 52:325- 343 Millero FJ (1986) The pH of estuarine waters. Limnol Oceanogr 31:839-847 Millero FJ, Leung WH (1976) Thermodynamics of seawater at one atmosphere. Am J Sci 276:1035-1077 Millero FJ, Sotolongo S (1989) The oxidation of Fe(II) with H2O2 in seawater. Geochim Cosmochim Acta 53: 1867-1873 Millero FJ, Sotolongo S, Izaguirre M (1987) The oxidation-kinetics of Fe(II) in seawater. Geochim Cosmochim Acta 51:793-801 Millero FJ, Yao WS, Aicher J (1995) The speciation of Fe(II) and Fe(III) in natural-waters. Mar Chem 50: 21-39 Moore JK, Doney SC, Glover DM, Fung IY (2002) Iron cycling and nutrient-limitation patterns in surface waters of the World Ocean. Deep Sea Res II - Top Stud Oceanogr 49:463-507 Moore JK, Doney SC, Lindsay K (2004) Upper ocean ecosystem dynamics and iron cycling in a global threedimensional model. Global Biogeochem Cycles 18:GB4028, doi: 10.1029/2004BG002220 Morel FMM, Price NM (2003) The biogeochemical cycles of trace metals in the oceans. Science 300:944947 Morel I, Cillard J, Lescoat G, Sergent O, Pasdeloup N, Ocaktan AZ, Abdallah MA, Brissot P, Cillard P (1992) Antioxidant and free-radical scavenging activities of the iron chelators pyoverdin and hydroxypyrid4-ones in iron-loaded hepatocyte cultures - comparison of their mechanism of protection with that of desferrioxamine. Free Radical Biol Med 13:499-508 Murakami K, Fuse H, Takimura O, Inoue H, Yamaoka Y (2000) Cloning and characterization of the iutA gene which encodes ferric aerobactin receptor from marine Vibrio species. Microbios 101:137-146 Myklestad SM (1995) Release of extracellular products by phytoplankton with special emphasis on polysaccharides. Sci Tot Environ 165:155-164 Nakabayashi S, Kuma K, Sasaoka K, Saitoh S, Mochizuki M, Shiga N, Kusakabe M (2002) Variation in iron(III) solubility and iron concentration in the northwestern North Pacific Ocean. Limnol Oceanogr 47:885-892 Neilands JB (1957) Some aspects of microbial iron metabolism. Bacteriol Rev 21:101-111 Neubauer U, Furrer G, Schulin R (2002) Heavy metal sorption on soil minerals affected by the siderophore desferrioxamine B: the role of Fe(III) (hydr)oxides and dissolved Fe(III). Eur J Soil Sci 53:45-55 Nishioka J, Takeda S, Wong CS, Johnson WK (2001) Siye-fractionated iron contentrations in the northeast Pacific Ocean: distribution of soluble and small colloidal iron. Mar Chem 74:157-179 Nolting RF, Gerringa LJA, Swagerman MJW, Timmermans KR, de Baar HJW (1998) Fe (III) speciation in the high nutrient, low chlorophyll Pacific region of the Southern Ocean. Mar Chem 62:335-352 O’Sullivan DW, Hanson AK, Miller WL, Kester DR (1991) Measurement of Fe(II) in surface-water of the Equatorial Pacific. Limnol Oceanogr 36:1727-1741 Okujo N, Saito M, Yamamoto S, Yoshida T, Miyoshi S, Shinoda S (1994) Structure of Vulnibactin, a new polyamine-containing siderophore from vibrio-vulnificus. Biometals 7:109-116 Parker VB, Khodakovskii IL (1995) Thermodynamic properties of the aqueous ions (2+ and 3+) of iron and the key compounds of iron. J Phys Chem Ref Data 24:1699-1745 Perry KD, Cahill TA, Schnell RC, Harris JM (1999) Long-range transport of anthropogenic aerosols to the National Oceanic and Atmospheric Administration baseline station at Mauna Loa Observatory, Hawaii. J Geophys Res - Atmos 104:18521-18533 Poorvin L, Rinta-Kanto JM, Hutchins DA, Wilhelm SW (2004) Viral release of iron and its bioavailability to marine plankton. Limnol Oceanogr 49:1734-1741 Powell RT, Donat JR (2001) Organic complexation and speciation of iron in the South and Equatorial Atlantic. Deep Sea Res. II - Top. Stud. Oceanogr. 48:2877-2893 Price NM, Morel FMM (1998) Biological cycling of iron in the ocean. In: Iron Transport and Storage in Microorganisms, Plants and Animals. Vol. 36. Sigel A, Sigel H (eds) Dekker, p 1-36 Reid EA, Reid JS, Meier MM, Dunlap MR, Cliff SS, Broumas A, Perry K, Maring H (2003) Characterization of African dust transported to Puerto Rico by individual particle and size segregated bulk analysis. J Geophys Res - Atmos 108:art. no.-8591 Reid RT, Butler A (1991) Investigation of the mechanism of iron acquisition by the marine bacterium Alteromonas luteoviolaceus: Characterization of siderophore production. Limnol Oceanogr 36:17831792 Reid RT, Live DH, Faulkner DJ, Butler A (1993) A Siderophore from a marine bacterium with an exceptional ferric ion affinity constant. Nature 366:455-458 Rijkenberg MJA, Fischer AC, Kroon JJ, Gerringa LJA, Timmermans KR, Wolterbeek HT, de Baar HJW (2005) The influence of UV irradiation on the photoreduction of iron in the Southern Ocean. Mar Chem
82
Kraemer, Butler, Borer, Cervini-Silva
Rue EL, Bruland KW (1995) Complexation of Iron(III) by natural organic-ligands in the central north Pacific as determined by a new competitive ligand equilibration adsorptive cathodic stripping voltammetric method. Mar Chem 50:117-138 Rue EL, Bruland KW (1997) The role of organic complexation on ambient iron chemistry in the equatorial Pacific Ocean and the response of a mesoscale iron addition experiment. Limnol Oceanogr 42:901-910 Saito MA, Sigman DM, Morel FMM (2003) The bioinorganic chemistry of the ancient ocean: the co-evolution of cyanobacterial metal requirements and biogeochemical cycles at the Archean-Proterozoic boundary? Inorg Chim Acta 356:308-318 Santana-Casiano JM, Gonzalez-Davila M, Millero FJ (2004) The oxidation of Fe(II) in NaCl-HCO3− and seawater solutions in the presence of phthalate and salicylate ions: a kinetic model. Mar Chem 85:27-40 Santana-Casiano JM, Gonzalez-Davila M, Rodriguez MJ, Millero FJ (2000) The effect of organic compounds in the oxidation kinetics of Fe(II). Mar Chem 70:211-222 Schindler P, Michaelis W, Feitknecht W (1963) Löslichkeitsprodukte von Mettaloxiden und -hydroxiden. 8. Die Löslichkeit gealterter Eisen(III)-hydroxid-Fällungen. Helv Chim Acta 46:444-451 Schwarzenbach G, Schwarzenbach K (1963) Die Stabilität der Eisen(III)-Komplexe einfacher Hydroxamsäuren und des Ferrioxamins B. Helv Chim Acta 46:1390-1400 Sempere R, Kawamura K (2003) Trans-hemispheric contribution of C-2-C-10 alpha, omega-dicarboxylic acids, and related polar compounds to water-soluble organic carbon in the western Pacific aerosols in relation to photochemical oxidation reactions. Global Biogeochem Cycles 17: art. no.-1069 Siefert RL, Johansen AM, Hoffmann MR (1999) Chemical characterization of ambient aerosol collected during the southwest monsoon and intermonsoon seasons over the Arabian Sea: Labile-Fe(II) and other trace metals. J Geophys Res - Atmos 104:3511-3526 Siefert RL, Johansen AM, Hoffmann MR, Pehkonen SO (1998) Measurements of trace metal (Fe, Cu, Mn, Cr) oxidation states in fog and stratus clouds. J Air Waste Manag Assoc 48:128-143 Siffert C, Sulzberger B (1991) Light-induced dissolution of hematite in the presence of oxalate - a case-study. Langmuir 7:1627-1634 Sinaceur J, Ribiere C, Nordmann J, Nordmann R (1984) Desferrioxamine - a scavenger of superoxide radicals. Biochem Pharmacol 33:1693-1694 Soria-Dengg S, Horstmann U (1995) Ferrioxamine-B and ferrioxamine-E as iron sources for the marine diatom phaeodactylum tricornutum. Mar Ecol Prog Ser 127:269-277 Spokes LJ, Jickells TD, Lim B (1994) Solubilization of aerosol trace-metals by cloud processing - a laboratory study. Geochim Cosmochim Acta 58:3281-3287 Stephanou EG, Stratigakis N (1993) Oxocarboxylic and D,:-dicarboxylic acids - photooxidation products of biogenic unsaturated fatty-acids present in urban aerosols. Environ Sci Technol 27:1403-1407 Stoecker DK (1998) Conceptual models of mixotrophy in planktonic protists and some ecological and evolutionary implications. Eur J Protist 34:281-290 Sulzberger B, Laubscher H (1995) Photochemical reductive dissolution of lepidocrocite - effect of pH. Aquat Chem 244:279-290 Sulzberger B, Laubscher H (1995) Reactivity of various types of Iron(III) (hydr)oxides towards light-induced dissolution. Mar Chem 50:103-115 Takagi SI (1976) Naturally occurring iron-chelating compounds in oat-root and rice-root washings.1. activity measurement and preliminary characterization. Soil Sci Plant Nutr 22:423-433 Takahashi A, Nakamura H, Kameyama T, Kurasawa S, Naganawa H, Okami Y, Takeuchi T, Umezawa H (1987) Bisucaberin, a new siderophore, sensitizing tumor-cells to macrophage-mediated cytolysis. 2. Physicochemical properties and structure determination. J Antibiot 40:1671-1676 Takata H, Kuma K, Iwade S, Yamajyoh Y, Yamaguchi A, Takagi S, Sakaoka K, Yamashita Y, Tanoue E, Midorikawa T, Kimura K, Nishioka J (2004) Spatial variability of iron in the surface water of the northwestern North Pacific Ocean. Mar Chem 86:139-157 Tani H, Nishioka J, Kuma K, Takata H, Yamashita Y, Tanoue E, Midorikawa T (2003) Iron(III) hydroxide solubility and humic-type fluorescent organic matter in the deep water column of the Okhotsk Sea and the northwestern North Pacific Ocean. Deep Sea Res. I 50:1063-1078 Taylor SR (1964) Abundance of chemical elements in the continental crust - a new table. Geochim Cosmochim Acta 28:1273-1285 Tegen I, Fung I (1995) Contribution to the atmospheric mineral aerosol load from land-surface modification. J Geophys Res - Atmos 100:18707-18726 Theis TL, Singer PC (1974) Complexation of iron(II) by organic-matter and its effect on iron(II) oxygenation. Environ Sci Technol 8:569-573 Timmermans KR, Gerringa LJA, de Baar HJW, Van Der Wagt B, Veldhuis MJW, De Jong JTM, Croot PL (2001) Growth rates of large and small Southern Ocean diatoms in relation to availability of iron in natural seawater. Limnol Oceanogr 46:260–266
Siderophores & Dissolution of Iron Bearing Minerals
83
Trick CG (1989) Hydroxamate-siderophore production and utilization by marine eubacteria. Curr Microbio 18:375-378 Trick CG, Andersen RJ, Gillam A, Harrison PJ (1983) Prorocentrin - an extracellular siderophore produced by the marine dinoflagellate prorocentrum-minimum. Science 219:306-308 Trolard F, Tardy Y (1987) The stabilities of gibbsite, boehmite, aluminous goethites and aluminous hematites in bauxites, ferricretes and laterites as a function of water activity, temperature and particle-size. Geochim Cosmochim Acta 51:945-957 Tsuda A, Takeda S, Saito H, Nishioka J, Nojiri Y, Kudo I, Kiyosawa H, Shiomoto A, Imai K, Ono T, Shimamoto A, Tsumune D, Yoshimura T, Aono T, Hinuma A, Kinugasa M, Suzuki K, Sohrin Y, Noiri Y, Tani H, Deguchi Y, Tsurushima N, Ogawa H, Fukami K, Kuma K, Saino T (2003) A mesoscale iron enrichment in the western Subarctic Pacific induces a large centric diatom bloom. Science 300:958-961 van den Berg CMG (1995) Evidence for Organic Complexation of Iron in Seawater. Mar Chem 50:139-157 Voelker BM, Morel FMM, Sulzberger B (1997) Iron redox cycling in surface waters: effects of humic substances and light. Environ Sci Technol 31:1004-1011 Voelker BM, Sedlak DL (1995) Iron reduction by photoproduced superoxide in seawater. Mar Chem 50:93102 Voelker BM, Sulzberger B (1996) Effects of fulvic acid on Fe(II) oxidation by hydrogen peroxide. Environ Sci Technol 30:1106-1114 Völker C, Wolf-Gladrow DA (1999) Physical limits on iron uptake mediated by siderophores or surface reductases. Mar Chem 65:227-244 Waite TD, Szymczak R, Espey QI, Furnas MJ (1995) Diel variations in iron speciation in Northern Australian shelf waters. Mar Chem 50:79-91 Weger HG (1999) Ferric and cupric reductase activities in the green alga Chlamydomonas reinhardtii: experiments using iron-limited chemostats. Planta 207:377-384 Welch KD, Davis TZ, Aust SD (2002) Iron autoxidation and free radical generation: Effects of buffers, ligands, and chelators. Arch Biochem Biophys 397:360-369 Wells ML (1999) Manipulating iron availability in nearshore waters. Limnol Oceanogr 44:1002-1008 Wells ML, Goldberg ED (1991) Occurrence of small colloids in sea-water. Nature 353:342-344 Wells ML, Goldberg ED (1993) Colloid aggregation in seawater. Mar Chem 41:353-358 Wells ML, Mayer LM (1991) The photoconversion of colloidal iron oxyhydroxides in seawater. Deep-Sea Res 38:1379- 1395 Wells ML, Trick CG (2004) Controlling iron availability to phytoplankton in iron-replete coastal waters. Mar Chem 86:1-13 Whisenhunt J, D.W., Neu MP, Hou ZG, Xu J, Hoffmann DC, Raymond KN (1996) Specific sequestering agents for the actinides. 29. Stability of the Thorium(IV) complexes of desferrioxamine B (DFO) and three octadentate catecholate or hydroxypyridinonate DFO derivatives: DFOMTA, DFOCAMC, and DFO-1,2-HOPO. Comparative stability of the Plutonium(IV) DFOMTA complex. Inorg Chem 35:41284136 Wilhelm SW (1995) Ecology of iron-limited cyanobacteria: A review of physiological responses and implications for aquatic systems. Aquat Microb Ecol 9:295-303 Wilhelm SW, Trick CG (1994) Iron-limited growth of cyanobacteria - multiple siderophore production is a common response. Limnol Oceanogr 39:1979-1984 Winkelmann G (1992) Structures and functions of fungal siderophores containing hydroxamate and complexone type iron-binding ligands. Mycol Res 96:529-534 Witter AE, Hutchins DA, Butler A, Luther GW (2000) Determination of conditional stability constants and kinetic constants for strong model Fe-binding ligands in seawater. Mar Chem 69:1-17 Witter AE, Luther GW (1998) Variation in Fe-organic complexation with depth in the Northwestern Atlantic Ocean as determined using a kinetic approach. Mar Chem 62:241-258 Wong GB, Kappel MJ, Raymond KN, Matzanke B, Winkelmann G (1983) Coordination chemistry of microbial iron transport compounds. 24. Characterization of coprogen and ferricrocin, 2 Ferric hydroxamate siderophores. J Am Chem Soc 105:810-815 Wu JF, Luther GW (1994) Size-fractionated iron concentrations in the water column of the Western North Atlantic Ocean. Limnol Oceanogr 39:1119-1129 Wu JF, Luther GW (1995) Complexation of Fe(III) by natural organic-ligands in the northwest Atlantic-ocean by a competitive ligand equilibration method and a kinetic approach. Mar Chem 50:159-177 Wu JF, Luther GW (1996) Spatial and temporal distribution of iron in the surface water of the northwestern Atlantic Ocean. Geochim Cosmochim Acta 60:2729-2741 Xu G, Martinez JS, Groves JT, Butler A (2002) Membrane affinity of the amphiphilic marinobactin siderophores. J Am Chem Soc 124:13408-13415 Yoshida T, Hayashi K, Ohmoto H (2002) Dissolution of iron hydroxides by marine bacterial siderophore. Chem Geol 184:1-9
84
Kraemer, Butler, Borer, Cervini-Silva
Zhu BZ, Harel R, Kitrossky N, Chevion M (1998) New modes of action of desferrioxamine: Scavenging of semiquinone radical and stimulation of hydrolysis of tetrachlorohydroquinone. Free Radical Biol Med 24:360-369 Zhu L, Nicovich JM, Wine PH (2003) Temperature-dependent kinetics studies of aqueous phase reactions of hydroxyl radicals with dimethylsulfoxide, dimethylsulfone, and methanesulfonate. Aquat Sci 65:425435 Zhu X, Prospero JM, Savoie DL, Millero FJ, Zika RG, Saltzman ES (1993) Photoreduction of iron(III) in marine mineral aerosol solutions. J Geophy Res - Atmos 98:9039-9046 Zhu XR, Prospero JM, Millero FJ (1997) Diel variability of soluble Fe(II) and soluble total Fe in North African dust in the trade winds at Barbados. J Geophys Res - Atmos 102:21297-21305 Zhuang G, Duce RA, Kester DR (1990) The dissolution of atmospheric iron in surface seawater of the open ocean. J. Geophys Res - Oceans 95:16207-16216 Zinder B, Furrer G, Stumm W (1986) The coordination chemistry of weathering. 2. Dissolution of Fe(III) oxides. Geochim Cosmochim Acta 50:1861-1869
5
Reviews in Mineralogy & Geochemistry Vol. 59, pp. 85-108, 2005 Copyright © Mineralogical Society of America
Geomicrobiological Cycling of Iron Andreas Kappler and Kristina L. Straub Geomicrobiology Group Center for Applied Geosciences University of Tübingen D-72074 Tübingen, Germany
[email protected] [email protected]
INTRODUCTION Iron is the most abundant element on Earth and the most frequently utilized transition metal in the biosphere. It is a component of many cellular compounds and is involved in numerous physiological functions. Hence, iron is an essential micronutrient for all eukaryotes and the majority of prokaryotes. Prokaryotes that need iron for biosynthesis require micromolar concentrations, levels that are often not available in neutral pH oxic environments. Therefore, prokaryotes have evolved specific acquisition molecules, called siderophores, to increase iron bioavailability. Acquisition of iron by siderophores is a complex process and is discussed in detail by Kraemer et al. (2005). Here we focus on prokaryotes that generate energy for growth by oxidation or reduction of iron. In both processes single electron transfers are involved. Hence, for a significant extent of energy generation, turnover of iron in the millimolar rather than the micromolar range is necessary. Iron metabolizing organisms have therefore a strong influence on iron cycling in the environment. Microbial iron oxidation and reduction will be discussed, with emphasis on circumneutral pH environments that prevail on Earth. The active metabolic processes outlined above have to be distinguished from indirect biologically induced iron mineral formation in which prokaryotic cell surfaces simply act as passive templates (“passive iron biomineralization”) (e.g., Konhauser 1997).
General aspects of the iron cycle On our planet, iron is ubiquitous in the hydrosphere, lithosphere, biosphere and atmosphere, either as particulate ferric [Fe(III)] or ferrous [Fe(II)] iron-bearing minerals or as dissolved ions. Redox transformations of iron, as well as dissolution and precipitation and thus mobilization and redistribution, are caused by chemical and to a significant extent by microbial processes (Fig. 1). Microorganisms catalyze the oxidation of Fe(II) under oxic or anoxic conditions as well as the reduction of Fe(III) in anoxic habitats. Microbially influenced transformations of iron are often much faster than the respective chemical reactions. They take place in most soils and sediments, both in freshwater and marine environments, and play an important role in other (bio)geochemical cycles, in particular in the carbon cycle. Microbial iron cycling impacts the fate of both organic and inorganic pollutants, including those released from industrial and mining areas (Thamdrup 2000; Straub et al. 2001; Cornell and Schwertmann 2003).
Solubility and chemical transformation of Fe(II) and Fe(III) minerals Different Fe(II), Fe(III) and mixed Fe(II)-Fe(III) minerals are found in the environment and many are used, produced or transformed by microbial activities (Table 1). Fe(III) minerals are characterized by low solubility at circumneutral pH and usually only very low, hardly 1529-6466/05/0059-005$05.00
DOI: 10.2138/rmg.2005.59.5
86
Kappler & Straub Chemical or microbial Fe(II) oxidation with O2 and microbial Fe(II) oxidation with CO2 in the light or with NO3- at neutral pH
Dissolution
Precipitation (pH increase)
Microbial acidophilic Fe(II) oxidation
Precipitation
Fe(III) minerals
Fe3+
Fe2+
Fe(II) minerals
Chemical or microbial Fe(III) reduction at acidic pH
Dissolution (pH decrease)
Chemical or microbial Fe(III) reduction at neutral pH
Figure 1. Microbial and chemical iron cycle.
detectable concentrations in the range of 10−9 M of Fe(III) are present in solution (Fig. 2). However, colloid formation or complexation by organic compounds can lead to elevated concentrations of dissolved Fe(III), even at neutral pH (Cornell and Schwertmann 2003; Kraemer 2004). At strongly alkaline or strongly acidic pH, ferric iron oxides can be dissolved because of their amphoteric character. Ferric iron oxides can be reduced chemically by a range of organic and inorganic reductants. However, the environmentally most important reducing agent for Fe(III) is hydrogen sulfide, which is a common end product of microbial sulfur and sulfate reduction (Thamdrup 2000; Cornell and Schwertmann 2003). In contrast to Fe(III) minerals, some ferrous iron minerals, e.g., siderite or ferrous monosulfides, are considerably more soluble at neutral pH. This leads to concentrations of Table 1. Names and formulas of some important iron minerals. Fe(III) oxides
Fe(III) oxyhydroxides and hydroxides1
Hematite D-Fe2O3
Goethite D-FeOOH
Maghemite J-Fe2O3
Lepidocrocite J-FeOOH Ferrihydrite2 Fe5HO8·4H2O
Fe(II) minerals
Mixed Fe(II)-Fe(III) minerals
Ferrous monosulfides ‘FeS’3
Magnetite Fe3O4
Pyrite FeS2
Green rusts FexIIIFeyII(OH)3x+2y−z(A−)z; A− = Cl−; ½ SO42−
Siderite FeCO3
Greigite Fe3S4
Vivianite Fe3(PO4)2 1 2
3
For simplicity also commonly referred to as iron oxides. Ferrihydrite frequently is inadequately assigned as Fe(OH)3. However, if the identity of a poorly crystalline iron hydroxide is unknown, this formula can be used as approximation. This term embraces a variety of minerals with slightly varying stoichiometries, i.e., FexSxr1. Only troilite contains iron and sulfur in an exact 1:1 stoichiometry. Troilite rarely occurs on Earth, but is found in iron meteorites and lunar rocks (Lennie and Vaughan 1996).
Geomicrobiological Cycling of Iron
87
0 Ferrihydrite Fe5HO8 . 4H2O
log Fe(III) [M]
-5
Fe(OH)2+
-10
Fe(OH)4-
Figure 2. Dominance diagram showing the concentrations of different dissolved Fe(III) species in the presence of ferrihydrite at pH 6-8.
Fe(OH)2+ -15
Fe3+ -20
-25 6
6.4
6.8
7.2
7.6
8
pH
dissolved Fe(II) that can reach the μM range, even in the presence of bicarbonate or sulfide. However, Fe(II) is stable at neutral or alkaline pH only in anoxic environments and is oxidized to Fe(III) minerals by molecular oxygen. At acidic pH, Fe(II) can persist, even in oxic habitats (Stumm and Morgan 1996; Cornell and Schwertmann 2003). Under anoxic conditions, Mn(IV), nitrate, nitrite and nitrous oxide were shown in laboratory studies to oxidize Fe(II) chemically. In anoxic natural habitats, however, Mn(IV) is the only relevant oxidant of Fe(II) (Buresh and Moraghan 1976; Moraghan and Buresh 1977; Myers and Nealson 1988).
Surface area and reactivity of ferric iron oxides The rates of chemical and microbial transformations of iron minerals depend on the number of available reactive surface sites, e.g., on the number of reactive surface-OH functional groups in case of ferric hydroxides (Roden 2003). The mineral surface area in turn inversely depends on the crystal size of the ferric iron oxides. Different iron minerals and samples of the same iron mineral with different crystal sizes vary significantly in surface area and therefore in stability and reactivity. This influences dissolution kinetics, transformation reactions and adsorption of organic and inorganic compounds. Values for surface areas can be determined experimentally by different methods, although these may produce slightly varying results. Surface areas determined by the Brunauer-Emmett-Teller method (BET) as extent of N2-adsorption to an outgassed sample of the respective mineral span from a few m2/g (e.g., 8–16 m2/g for highly crystalline goethite) to a few hundreds of m2/g (e.g., 100–400 m2/g for poorly crystalline ferrihydrite) (Cornell and Schwertmann 2003).
Ferrihydrite Ferrihydrite is widespread in many natural environments. It is frequently used in laboratory studies with Fe(III)-reducing microorganisms and was observed as a product in cultures of Fe(II) oxidizers (Fig. 3). Ferrihydrite is a high-surface area iron oxide that consists of nanometer-sized crystals. Although it has been reported to be hexagonal, its structure remains a matter of debate (Mancaeu and Drits 1993; Jambor and Dutriziac 1998; Janney et al. 2000, 2001). It is a material that exhibits considerable disorder, but it is not amorphous (for more details see Gilbert and Banfield 2005). The crystallinity of the different ferrihydrite species depends on the conditions
88
Kappler & Straub
B
A
100 nm
500 nm
Figure 3. Scanning (A) and transmission (B) electron micrographs of ferrihydrite produced by the anoxygenic phototrophic Fe(II)-oxidizing bacterium ‘Rhodobacter ferrooxidans’ strain SW2. Note that particles of the biologically produced ferrihydrite are of nm-size and thus much smaller than microbial cells of typical size.
during synthesis, e.g., formation rate and the presence of organic and inorganic compounds (Cornell and Schwertmann 2003). The small, nanometer-sized crystals of ferrihydrite often aggregate to form colloids with sizes in the μm-range (Fig. 3).
Forms of iron present in the environment In the environment, iron is rarely present as pure, well crystalline mineral phase but rather is found:
x in association with or covered by natural organic matter (e.g., humic substances, biofilm exopolysaccharides)
x in particles to which anions such as phosphate (PO43−) and arsenate (AsO43−) or positively charged metal ions (e.g., Fe2+, Cu2+, Mn2+) have adsorbed
x x x x
as minerals that are mixed or co-precipitated with other minerals (e.g., clays) in minerals in which other cations, e.g., Al, Cr, Mn, partially substitute for iron as nano-sized mineral particles or as aggregates of nano-sized particles (colloids) complexed (e.g., by organic acids) and thus dissolved.
Such complex natural systems provide a huge variety of microenvironments, and thus microniches, for microorganisms with different physico-chemical requirements. In fact, it is hard, if not impossible, to simulate this complexity in the laboratory. This difficulty might be one explanation for the poor growth of many iron-metabolizing bacteria in the laboratory.
Role of iron for microbial energy metabolism Different physiological groups of prokaryotes can use iron as a substrate for energy generation (Fig. 1, Table 2). In the following two sections we will discuss such Fe(II)-oxidizing and Fe(III)-reducing microorganisms in more detail, focusing on electron transfer between cells and iron minerals. Intracellular electron transfer in Fe(III)-reducing bacteria via redox active proteins such as cytochromes was recently reviewed by Lovley et al. (2004). The rapid growth in availability of genomic information will significantly improve our understanding of the electron transport chains of iron cycling microorganisms (e.g., Nelson and Methé 2005). The third section focuses on microbial iron cycling catalyzed by the cooperation of these two
Geomicrobiological Cycling of Iron
89
Table 2. Physiological groups of prokaryotes that catalyze iron redox transformations. Habitat
Electron donor
Electron acceptor
pH
Microbial metabolism
Representative strains
Oxic
Fe(II)
O2
acidic
Fe(II) oxidation
Thiobacillus ferrooxidans Sulfobacillus acidophilus
Fe(II)
O2
neutral
Fe(II) oxidation
Gallionella ferruginea Leptothrix ochracea
Fe(II)
NO3−
neutral
NO3−-dependent Fe(II) oxidation
Acidovorax sp. strain BrG1 Azospira oryzae strain PS
Fe(II)
CO2
neutral
Phototrophic Fe(II) oxidation
‘Rhodobacter ferrooxidans’ strain SW2 Rhodovulum iodosum
Organic or inorganic compounds
Fe(III)
acidic
Fe(III) reduction
Acidiphilium cryptum sp. JF-5 Thiobacillus thiooxidans
Organic or inorganic compounds
Fe(III)
neutral
Fe(III) reduction
Geobacter metallireducens Shewanella oneidensis
Anoxic
physiological groups. Finally, some environmental implications are described and tasks for future investigations defined.
MICROBIAL OXIDATION OF Fe(II) Competition between chemical and microbial oxidation of Fe(II) The chemical oxidation of Fe(II) with oxygen depends mainly on the pH and the concentration of oxygen (Fig. 4). At pH values above 5, the Fe(II) oxidation rate has a firstorder dependence on Fe(II) and O2 concentrations and a second-order dependence on the OH− concentration. Thus, an increase of one pH unit increases the rate of Fe(II) oxidation100-fold. Therefore in O2-saturated water at neutral pH, Fe(II) is readily oxidized to Fe(III) with a halflife in the order of several minutes (Stumm and Morgan 1996). Aerobic, neutrophilic Fe(II)oxidizing microorganisms compete successfully with this fast chemical process. However, some of them thrive only in microoxic niches with low oxygen concentrations and hence a slower chemical oxidation of Fe(II) by oxygen (Emerson 2000). In contrast, under acidic conditions Fe(II) persists for long periods of time, even in the presence of atmospheric O2 levels. Under anoxic conditions, only manganese oxides and nitrite have been shown to oxidize freely dissolved Fe(II) chemically (Myers and Nealson 1988; Moraghan and Buresh 1977). However, neither nitrate nor sulfate react chemically with Fe(II) at appreciable rates at low temperature. Therefore, anaerobic Fe(II)-oxidizing bacteria are the most important catalysts/ oxidants for the generation of Fe(III) in anoxic habitats.
Aerobic acidophilic Fe(II)-oxidizing microorganisms Due to the stability of ferrous iron at acidic pH even in the presence of O2, aerobic acidophilic Fe(II)-oxidizing microorganisms can readily compete with chemical oxidation. However, at acidic pH the redox couple Fe3+/Fe2+ relevant for the redox reaction catalyzed by these bacteria has a redox potential of +770 mV. Therefore, at pH 2 only ~33 kJ/mol iron is produced during the oxidation with O2, since the relevant redox potential of the redox couple O2/H2O is +1106 mV. This difference is just big enough for the synthesis of 1 mol ATP. Under
Kappler & Straub 1
F e 3+
O2
F e 2+
0.5
Eh
F eOH 2+
90
Fe 2
+
=
F e(OH) 3,solid 10
μM
0
-0.5
H2
F e(OH) 2, solid
-1 0
1
2
3
4
5
6
7
8
9
10
11
12
13
14
pH Figure 4. Eh-pH diagram for Fe(II), Fe(III), O2 and H2 calculated with a Fe2+ concentration of 10 μM. For simplicity Fe(OH)3 is used as approximation for the Fe(III) precipitates that are formed.
such conditions, ~90 mol Fe(II) has to be oxidized to fix 1 mol of CO2 as biomass (Ehrlich 2002). This relationship explains the huge amount of iron that is oxidized by aerobic acidophilic microorganisms, for instance in acid mine drainage (Baker and Banfield 2003; Druschel et al. 2004). Note that at pH values above 2, Fe(III) starts to precipitate and the oxidized product is removed, leading to a lowering of the redox potential of the Fe(III)/Fe(II) couple to less positive values. Since the redox potential of the O2/H2O couple is less pH-dependent (59 mV change per pH unit) than the Fe(III)/Fe(II) couple (177 mV change per pH unit), growth at less acidic pH values is more favorable for aerobic acidophilic Fe(II) oxidizers. A number of lineages of acidophilic iron-oxidizing organisms have been described to date. These were reviewed comprehensively by Nordstrom and Southam (1997) and more recently by Blake and Johnson (2000) and Baker and Banfield (2003). Furthermore, aspects of the population biology of acidophilic microbial communities sustained by iron oxidation are reviewed by Whitaker and Banfield (2005).
Aerobic neutrophilic Fe(II)-oxidizing microorganisms This physiological group of microorganisms uses O2 as electron acceptor for enzymatic oxidation of Fe(II) at neutral pH. To gain energy for growth they have to compete with the chemical oxidation of Fe(II) by O2. Initially, research on oxygen-dependent, neutrophilic Fe(II) oxidizers focused on species of the genera Gallionella and Leptothrix. Organisms of these two groups were already recognized in the 19th century to grow in oxic iron-rich environments. Gallionella ferruginea, a bean-shaped autotrophic bacterium, typically produces twisted stalks that are encrusted with ferric iron minerals (Hanert 1981). Gallionella spp. are very good examples of gradient organisms: growth is observed only under conditions that are neither strongly reducing nor highly oxidizing. The heterotrophic bacterium Leptothrix ochracea forms tubular sheaths which are also covered with ferric iron minerals (Emerson and Revsbech 1994). It has been suggested that the deposition of iron oxide minerals on the stalks or sheaths avoids encrustation of Fe(II)-metabolizing cells. Encrustation of living cells might impair both substrate uptake and metabolite release, and may even cause cell death (Hanert 1981; Hallberg and Ferris 2004).
Geomicrobiological Cycling of Iron
91
A range of novel microaerophilic Fe(II)-oxidizing bacteria were isolated with gradient culture techniques using gradients of Fe(II) and O2 to mimic natural environments. Representatives of the D-, E- and J-subgroup of Proteobacteria were isolated from groundwater, deep sea sediments and freshwater wetland samples (Emerson and Moyer 1997; Edwards et al. 2003; Sobolev and Roden 2004). More details on aerobic bacterial Fe(II) oxidation at neutral pH are given by Emerson (2000).
Anaerobic Fe(II)-oxidizing phototrophic bacteria About a decade ago anoxygenic phototrophic bacteria were discovered which grow in the light with ferrous iron as sole electron donor (Widdel et al. 1993). Experimental results were in good agreement with the following equation, assuming
as the approximate formula of cell mass: 4FeCO3 + 7H2O o + 4Fe(OH)3 + 3CO2 In the meantime, seven cultures of anoxygenic Fe(II)-oxidizing phototrophic bacteria have been established (Table 3). They include representatives of the three major phylogenetic lineages of anoxygenic phototrophs, and furthermore include freshwater and marine species. All known anoxygenic phototrophs oxidized Fe(II) optimally only within the narrow pH-range of 6.5 to 7. This allows them to use Fe(II) as electron donor since the standard redox potential for Fe2+/Fe3+ (+770 mV at pH 1) is shifted at neutral pH to less positive values (around 0 mV) due to the low solubility of Fe(III) (Fig. 4; Widdel et al. 1993; Stumm and Morgan 1996). Therefore, Fe(II) can donate electrons to the photosystems of purple or green bacteria, with midpoint potentials around +450 mV or +300 mV, respectively (Clayton and Sistrom 1978). Fe(II)-oxidizing phototrophic bacteria can oxidize dissolved Fe(II). In addition, they grow with relatively soluble Fe(II) minerals such as siderite or ferrous monosulfide (Kappler and Newman 2004). In contrast, they were unable to utilize less soluble Fe(II) minerals, e.g., pyrite (FeS2) or magnetite (Fe3O4). These results indicate that the phototrophs studied so far may depend on the supply of dissolved Fe(II). Geological records indicate that oceans contained considerable amounts of dissolved ferrous iron and hardly any molecular oxygen in the beginning of the Precambrian. It is therefore intriguing how massive iron mineral deposits, known as banded iron formations (BIFs), were generated at that time. This is even more puzzling, given doubt that the Table 3. Ferrous iron-oxidizing phototrophic bacteria from different phylogenetic groups. Phylogenetic group
Species
Strain
Source
Ref.
Purple sulfur bacteria
Thiodictyon sp.a
F4
Freshwater marsh
(1)
Purple non-sulfur bacteria
‘Rhodobacter ferrooxidans’
SW2
Freshwater ditch
(2)
Rhodomicrobium vannielii
BS-1
Freshwater
(3)
Rhodopseudomonas palustris
TIE-1
Iron-rich freshwater mat
(4)
Rhodovulum iodosum
N1
Marine sediment
(5)
Rhodovulum robiginosum
N2
Marine sediment
(5)
KoFox
Freshwater ditch
(6)
Green bacteria
b
Chlorobium ferrooxidans
a
Mixed culture, highly enriched in Thiodictyon sp.
b
Defined co-culture with chemoheterotrophic ‘Geospirillum’ sp.
References: (1) Croal et al. 2004; (2) Ehrenreich and Widdel 1994; (3) Widdel et al. 1993; (4) Jiao et al. 2005; (5) Straub et al. 1999; (6) Heising et al. 1999
92
Kappler & Straub
photochemical oxidation of Fe(II) by UV light (Cairns-Smith 1978; Francois 1986; Anbar and Holland 1992) plays a major role in complex environments such as seawater. Until recently, BIFs were mainly considered the product of chemical or microbial oxidation of dissolved Fe(II) with O2 that was released by cyanobacteria during early oxygenic photosynthesis (Fig. 5)(e.g., Konhauser et al. 2002). Today, the anaerobic oxidation of Fe(II) by anoxygenic phototrophs is regarded as an alternative or additional explanation for the generation of BIFs (Fig. 5) (Widdel et al. 1993; Konhauser et al. 2002). Interestingly enough, in the literature it was speculated that anoxygenic Fe(II)-oxidizing phototrophs participated in the generation of BIFs even before such organisms had been isolated (Hartman 1984). A recent study considering rates of anoxygenic phototrophic Fe(II) oxidation under light regimes representative of ocean water at depths of a few hundred meters suggest that, even in the presence of cyanobacteria, anoxygenic phototrophs living beneath a wind-mixed surface layer provide the most likely explanation for BIF deposition in a stratified ancient ocean (Kappler et al. 2005).
Presence of O2
Absence of O2
Chemical or microbial Fe(II)-oxidation with cyanobacterial O2 O2+Fe2+ --> Fe(OH)3
Microbial Fe(II)-oxidation by anoxygenic phototrophs CO2+Fe2+ + hυ --> Fe(OH)3 + CH2O
Banded Iron Formation
Figure 5. Proposed mechanisms for the deposition of Precambrian banded iron formations in the presence or absence of molecular oxygen: oxidation of Fe(II) either indirectly by cyanobacterially produced O2 or directly by anoxygenic photosynthetic Fe(II)-oxidizing microorganisms.
Anaerobic Fe(II)-oxidizing nitrate-reducing bacteria Furthermore, it was discovered that microorganisms are capable of coupling oxidation of ferrous iron to dissimilatory reduction of nitrate (Hafenbradl et al. 1996; Straub et al. 1996). At pH 7, all redox pairs of the nitrate reduction pathway can accept electrons from ferrous iron because their redox potentials are more positive than that of the redox couple Fe(III)/Fe(II) (Tables 4 and 5). The first observations of this metabolism were made with a lithotrophic enrichment culture that was transferred successively several times in medium that contained ferrous iron as sole electron donor (Straub et al. 1996). In this culture, ferrous iron oxidation coupled to nitrate reduction definitely supported cell growth; no oxidation of Fe(II) occurred in the presence of heat-inactivated cells or when nitrate was omitted. This type of metabolism is likely to be more abundant than ferrous iron oxidation by anoxygenic phototrophs since it is not restricted to habitats that are exposed to light. Furthermore, most-probable-number studies combined with molecular techniques indicated that the ability to oxidize ferrous iron with nitrate as electron acceptor is widespread among bacteria: members of the D-, E-, J- and G- subgroup of the Proteobacteria as well as gram-positive bacteria are probably able to oxidize ferrous iron (Straub and Buchholz-Cleven 1998; Straub et al. 2004). For these reasons, it was not surprising that enrichments of ferrous iron-oxidizing nitrate reducers were successfully established with a variety of marine, brackish or freshwater sediment samples. However, continuous cultivation
Geomicrobiological Cycling of Iron
93
with ferrous iron as sole electron donor Table 4. Redox potentials of redox pairs relevant turned out to be impossible for most of for microbial nitrate reduction at pH 7.0 and these enrichments. After a few transfers, 25 °C (Thauer et al. 1977). ferrous iron was oxidized only in the presence (of low concentrations) of an Redox pair E0c [mV] organic substrate, e.g., 0.5 mM acetate. − − NO3 / NO2 +430 Accordingly, most Fe(II)-oxidizing nitrate reducers isolated so far need +350 NO2−/ NO an organic co-substrate for growth, i.e. NO/ N2O +1180 grow only mixotrophically with ferrous +1350 N2O/ N2 iron (Straub et al. 1996; Benz et al. 1998; Straub and Buchholz-Cleven 1998; Lack et al. 2002; Straub et al. 2004). For many Table 5. Redox potentials1 of some redox pairs of these strains that need an additional relevant for microbial reduction of iron oxides at organic substrate, it is questioned whether pH 7.0 and 25 °C (Thamdrup 2000). ferrous iron oxidation is beneficial and supports cell growth or whether iron is Redox pair E0c [mV] just oxidized in a rather unspecific side 2+ reaction. Experiments with Azospira Fe5HO8·4H2O (ferrihydrite)/Fe +2 oryzae strain PS (formerly known as −88 J-FeOOH (lepidocrocite)/Fe2+ Dechlorosoma suillum) undoubtedly −274 D-FeOOH (goethite)/Fe2+ showed that oxidation of ferrous iron 2+ initiated only after the organic (co-) −287 D-Fe2O3 (hematite)/Fe substrate was completely oxidized Fe3O4 (magnetite)/Fe2+ −314 (Chaudhuri et al. 2001). However, at 1 Slightly varying data can be found in the literature because least for some mixotrophically ferrous redox potentials strongly depend on pH, temperature, iron-oxidizing strains, i.e. Acidovorax concentrations of reactants, crystal size of the iron oxide and thermodynamic data chosen for calculations. sp. strain BrG1, Aquabacterium sp. strain BrG2 and Thermomonas sp. strain BrG3, the situation was more complex because the oxidation of ferrous iron seemed to be regulated. Only if electrons from the organic substrate exceeded those from ferrous iron by a factor of ten or if the concentration of nitrate was limited, ferrous iron oxidation ceased completely (Straub et al. 2004). Recently, some strains were isolated from the deep sea that oxidized Fe(II) with nitrate in the absence of an additional organic substrate. Unfortunately, it is not clear whether these strains can actually grow with ferrous iron as the sole electron donor for several successive generations (Edwards et al. 2003).
Mechanisms of microbial Fe(II) oxidation The mechanism of microbial Fe(II) oxidation has been studied best with the acidophilic Fe(II) oxidizer Thiobacillus ferrooxidans. According to a present model, Fe(II) is oxidized to Fe(III) at the outer membrane of the cell (Blake and Johnson 2000). The electron is then transferred to a copper-containing protein (rusticyanin) which in turn transfers it to a periplasmic c-type cytochrome. From such cytochromes, electrons are finally passed on to O2 via cytochrome oxidase to form water. The exact pathway of the electron transfer from ferrous iron to oxygen is still not completely understood, and slightly varying models are described in the literature. However, there is general agreement that the initial step, i.e. the oxidation of ferrous iron, occurs outside the cell (Blake and Johnson 2000). In addition, it was shown for neutrophilic aerobic Fe(II)-oxidizing Leptothrix spp. that the oxidation of Fe(II) is catalyzed by Fe(II)-oxidizing compounds that are actively secreted by
94
Kappler & Straub
the cell (De Vrind-de Jong et al. 1990); an Fe(II)-oxidizing protein with a molecular weight of 150 kDa was identified from spent culture medium of strain Leptothrix discophora (Corstjens et al. 1992). For anaerobic Fe(II) oxidation, it is unknown where in the cell or at the cell surface Fe(II) is oxidized, and it is not understood how the bacteria deal with the poor solubility of the product. In particular, it is unclear how Fe(II)-oxidizing microorganisms either avoid encrustation with ferric iron minerals (such as the phototrophic Fe(II)-oxidizer ‘Rhodobacter ferrooxidans’ strain SW2) or overcome encrustation such as the nitrate-reducing Fe(II)oxidizing strain BoFeN1 (Fig. 6). A microenvironment of lowered pH values in vicinity of the cells was observed around colonies of phototrophic Fe(II) oxidizers (‘Rhodobacter ferrooxidans’ strain SW2) fixed in semi-solid agarose (Kappler and Newman 2004). Such an acidification could explain why these microorganisms do not become encrusted with ferric iron minerals during oxidation of Fe(II) (Fig. 6). With the aerobic Fe(II)-oxidizing strain TW2, deposition of Fe(III) minerals was observed not at the cell surface but at a certain distance from the cells. It was suggested that Fe(III) was released in a ligand-bound dissolved form. The dissolved Fe(III)-ligand complex is thought to
A
B
500 nm
500 nm
Figure 6. Scanning electron micrographs showing (A) cells of the nitrate-reducing Fe(II)-oxidizing strain BoFeN1 highly encrusted with Fe(III) minerals and (B) anoxygenic photosynthetic Fe(II)-oxidizing microorganisms that are associated but not encrusted with Fe(III) minerals.
Geomicrobiological Cycling of Iron
95
diffuse away from the cells. Destabilization of the Fe(III)-ligand complex would finally lead to hydrolysis and precipitation of Fe(III) minerals distant from the metabolically active cells (Roden et al. 2004). The nature of the Fe(III)-ligand and the trigger necessary for destabilizing the dissolved Fe(III)-ligand complex are unknown so far. However, this hypothesis is supported by energetic calculations. The estimated biomass yield for growth was 0.15 mol cell-C per mol oxidized Fe(II), and hence approximately 7.5u more than experimentally observed in gradient cultures. This suggests that a substantial amount of energy is available for synthesis of other cellular components, including Fe(III)-binding ligands.
Formation of Fe(III) minerals by microbial Fe(II) oxidation Microbial oxidation of Fe(II) and precipitation of Fe(III) minerals might be better understood by comparing observations from microbial cultures to results from chemical Fe(II) oxidation experiments (e.g., Cornell et al. 1989). Mono- and dinuclear dissolved species of ferrous iron such as [FeOH]2+ and [Fe2(OH2)]4+ are formed initially during abiotic oxidation of Fe(II). Subsequently, these dissolved species transform into polymeric Fe(III) colloids before they precipitate as poorly crystalline ferrihydrite particles with a size of ~2–5 nm in diameter. Depending on the reaction conditions, the initial precipitation might be followed by further transformations of ferrihydrite. Either “solid-state conversion” to hematite (Fe2O3) by internal rearrangement of iron and oxygen atoms is induced or dissolution to low-molecular weight polynuclear iron species occurs which then transform to better crystalline iron oxides such as goethite (“dissolution-reprecipitation mechanism”) (Hansel et al. 2003; Schwertmann and Cornell 2003). Transformation of ferrihydrite to goethite via dissolution-reprecipitation could be facilitated in particular by enhanced proton activities close to cell surfaces. Lowered pH values and transformation of ferrihydrite to goethite were indeed observed in the vicinity of anoxygenic phototrophic Fe(II)-oxidizing bacteria (Kappler and Newman 2004). The formation of crystalline iron oxides during microbial Fe(II) oxidation might accelerate the speed of Fe(II) oxidation by an autocatalytic mechanism. Excess dissolved Fe(II) has a high affinity for surface-OH groups of iron oxides. These surface OH-groups are electron-donor ligands that increase the electron density of the adsorbed ferrous iron. An increased electron density stabilizes +3 charged iron better than +2 charged iron. Therefore, adsorption of Fe(II) on iron oxide surfaces increases the rate of Fe(II) oxidation (Wehrli et al. 1989; Elsner et al. 2003). An electron transfer from surface-adsorbed Fe(II) through the underlying iron oxide to the cell (where electrons could be accepted by outer membrane compounds) would abolish the need for the Fe(II)-oxidizing microbe to be in direct contact with the dissolved Fe(II). The first evidence for such an electron transfer between adsorbed Fe(II) and Fe(III) from the underlying ferric iron oxide was recently reported by Williams and Scherer (2004). Formation of a variety of different iron minerals by different Fe(II)-oxidizing microorganisms indicates that, apart from medium composition, concentration of possible co-substrates and incubation conditions, the mechanism of Fe(II) oxidation, metabolic rates and the presence of nucleation sites influence (and maybe even control) the mineralogy of the Fe(III) minerals produced. As an example, in a recent report polysaccharide strands were suggested to be extruded to act as a template for formation of akaganeite pseudo–single crystals (Chan et al. 2003)
MICROBIAL DISSIMILATORY REDUCTION OF Fe(III) Microbial reduction of ferric iron was known as a phenomenon for many decades before its (bio)geochemical relevance was recognized. It was presumed that microorganisms cause reduction of Fe(III) only indirectly, e.g., by lowering the redox potential or the pH. In addition,
96
Kappler & Straub
only few bacteria were known that transferred just few electrons to Fe(III) during fermentative growth (for details see Lovley 1991). This perspective changed notedly with the discovery of bacteria that respire ferric iron and thereby reduce substantial amounts of it (Balashova and Zavarzin 1979; Lovley and Phillips 1988; Myers and Nealson 1988). Today, it is generally accepted that dissimilatory ferric iron-reducing prokaryotes, i.e. organisms that gain energy by coupling the oxidation of organic or inorganic electron donors to the reduction of ferric iron, have a strong influence on the geochemistry of many environments (e.g., Lovley 1997; Thamdrup 2000).
Acidophilic Fe(III)-reducing microorganisms The ability to reduce Fe(III) to Fe(II) under acidophilic conditions seems to be widespread among acidophilic microorganisms, but the degree of Fe(III) reduction varies significantly (Johnson and McGinness 1991). Chemolithotrophic and heterotrophic prokaryotes (bacteria and archaea) are able to couple the reduction of Fe(III) to the conservation of energy. Interestingly enough, acidophilic iron reduction does not require strict anoxia in some strains and proceeds most rapidly even under microoxic conditions (Johnson et al. 1993). Studies with Acidiphilium sp. strain SJH showed that this bacterium is able to reduce a variety of different Fe(III) forms, with the highest reduction rates observed for dissolved Fe(III) (Bridge and Johnson 2000). Barely soluble poorly crystalline iron oxides (e.g., ferrihydrite) were reduced faster than better crystalline iron oxides (e.g., goethite). Apparently, Acidiphilium sp. strain SJH causes dissolution of ferric iron indirectly since direct contact between bacterial cells and solid ferric iron was not necessary for ferric iron reduction to occur. The strain appears to produce an extracellular compound that accelerates Fe(III) dissolution but not reduction. The nature of this extracellular compound and further details of the dissolution process are still unknown (Bridge and Johnson 2000).
Microbial reduction of Fe(III) at neutral pH In the past decade, numerous strains of dissimilatory ferric iron-reducing bacteria and archaea have been isolated from a vast range of habitats. A comprehensive list of Fe(III)reducing microorganisms was recently published by Lovley et al. (2004). The widespread occurrence of Fe(III)-reducing prokaryotes correlates with the ubiquitous presence of ferric iron. Many sediments and soils may contain ferric iron minerals in the range of 50-200 mmol per kg dry matter. Ferric iron is therefore often the dominant electron acceptor although it is barely soluble at neutral pH. According to experimental observations, Fe(III)-reducing microorganisms developed three different strategies to cope with the difficulty of transferring electrons from the cell to the surface of a barely soluble electron acceptor (Fig. 7) (reviewed by Hernandez and Newman 2001; Lovley et al. 2004): A. Physical contact between cell surface/cell surface compounds and ferric iron allows direct delivery of electrons. B. Iron chelators increase the solubility of Fe(III) and hence alleviate Fe(III)reduction. C. Electron-shuttling compounds transfer electrons from the cell to Fe(III) without the necessity of physical contact between cells and ferric iron. Considering the complexity of natural environments and the wealth of microbial capabilities, it is not surprising that different organisms as well as single organisms developed different strategies in order to reduce diverse Fe(III) compounds under varying conditions. For example, some evidence indicates that Shewanella algae and Geothrix fermentans produce and release both Fe(III)-chelators and electron shuttles (Nevin and Lovley 2002a; Lovley et al. 2004). Furthermore, evidence in Geobacter spp. indicates that different cellular compounds are involved in reduction of dissolved Fe(III)-citrate and barely soluble ferrihydrite (Straub
Geomicrobiological Cycling of Iron
97
A
Fe(III)-mineral crust on soil particle
Fe(II)
B
Chelator
Chelator
Fe(III)
Shuttlered
Shuttleox
Fe(II)
C
Figure 7. Schematic illustration of different microbial strategies to transfer electrons to ferric iron: (A) Physical contact between cell surface and ferric iron allows direct delivery of electrons; (B) Iron chelators increase solubility of ferric iron; (C) Electron-shuttling molecules transfer electrons to ferric iron. Note: single crystals of ferric iron oxides might be smaller than bacteria (see Fig. 3). However, in nature iron oxides may form crusts on soil particles as depicted here.
and Schink 2004a, Leang et al. 2005). As the methods to study microbial mechanisms of Fe(III) reduction are pivotal, they will be discussed in the next section.
Methods to study mechanisms of microbial Fe(III) reduction Physiological studies of microbial ferric iron reduction at neutral pH are rather difficult. Low solubility of ferric iron is the most prominent obstacle. It impedes the monitoring of cell growth by means of optical density and the separation of cells from iron minerals by simple centrifugation. To circumvent this difficulty, iron chelators (e.g., citrate, EDTA) were applied in many studies to keep iron in solution. However, chelators change the redox potential of ferric iron, may enter the periplasm and can react unspecifically with electron-releasing cellular compounds (reviewed by Straub et al. 2001). In addition, there is growing awareness that culturing microorganisms in rich medium (in particular with other electron acceptors than ferric iron) may cause production of cell compounds which will not be produced under iron-reducing conditions in natural habitats (Glasauer et al. 2003). Caution in the interpretation of results is also necessary when supernatants were prepared either by filtration or centrifugation. Cells of Geobacter spp. were shown to artificially release compounds (e.g., cytochromes) by filtration with 0.2 μm filters as well as by centrifugation (Straub and Schink 2003). In other studies, semi-permeable membranes were used to separate cells and iron oxides physically in order to determine whether prokaryotic cells produce Fe(III)-chelators or electron-shuttling molecules. However, it was recently shown that Fe(III)-chelators and electron-shuttling molecules were unable to diffuse freely through dialysis membranes with the largest pore size available (Nevin and Lovley 2000). Therefore, results from studies with semi-permeable membranes need critical assessment, in particular when positive controls with known electron-shuttling molecules are lacking. To minimize artifacts that might be induced by centrifugation or filtration, further methods were developed to study production of Fe(III)-chelators or electron-shuttling
98
Kappler & Straub
molecules in vivo. In a simple one, ferric iron is entrapped in medium solidified with 1% agar (Straub and Schink 2003). Technically more elaborate is the use of iron containing microporous alginate (Nevin and Lovley 2000) or iron-containing glass beads (Lies et al. 2005).
Microbial mechanisms of Fe(III) reduction at neutral pH For Fe(III) reduction, species of the genus Geobacter appear to require physical contact to ferric iron oxides (Nevin and Lovley 2000; Lovley et al. 2004). The latest study with Geobacter sulfurreducens showed that pili (a special type of cell appendages) were produced during growth with poorly soluble Fe(III), but not with dissolved Fe(III)-citrate as electron acceptor. In addition, experiments with a pilus-deficient mutant implied that those pili were not just required for attachment of cells to ferric iron, and conducting-probe atomic force microscopy indicated that the pili were highly conductive. Together these results suggest that Geobacter sulfurreducens attaches and delivers electrons to the surface of ferric iron oxides via pili (Reguera et al. 2005). Initially it was thought that such a physical contact between Fe(III)-reducing prokaryotes and ferric iron minerals is mandatory for the delivery of electrons from the cells to the minerals. Today, it is generally accepted that Fe(III)-reducing microorganisms also use Fe(III)-chelators or electron-shuttling molecules to reduce barely soluble ferric iron oxides (e.g., Hernandez and Newman 2001; Rosso et al. 2003; Lovley et al. 2004). Diffusible chelators and shuttling molecules help to bridge spatial distance between cells and ferric iron oxides (Fig. 7). This is of particular importance since microorganisms and ferric iron oxides are not evenly distributed in natural environments. Plant root exudates and plant debris can release organic acids which are known to chelate Fe(III), e.g., oxalate or citrate. Accordingly, highly elevated levels of dissolved Fe(III) in the range of 20 to 50 μM were reported for soils in laboratory incubations with rice (Ratering and Schnell 2000). In comparison to the nM range of dissolved Fe(III) at neutral pH (Fig. 2), significantly elevated levels of dissolved, presumably chelated Fe(III) in the range of 4 to 16 μM were reported furthermore for freshwater sediment and groundwater samples (Nevin and Lovley 2002b). Plant debris is also the source for phenolic compounds and humic substances which can act as electron-shuttling molecules (e.g., Lovley et al. 1996, 1998). The oxidized form of an electron-shuttling molecule is used as the electron acceptor by the metabolically active cell. The electrons are then transferred from the reduced shuttling molecule in a chemical reaction to ferric iron. It is important that this chemical reaction regenerates the oxidized form of the shuttling molecule (Fig. 7). Prokaryotes that reduce ferric iron oxides only via electronshuttling molecules are not ferric iron-reducing bacteria in a strict sense as their electron acceptor is the shuttling molecule rather than ferric iron. In that respect it is worth mentioning that sulfur-reducing bacteria also can benefit from indirect reduction of ferric iron oxides via sulfur cycling, with sulfide as reductant of ferric iron (Straub and Schink 2004b). The impact of prokaryotes that reduce ferric iron oxides only indirectly with the help of naturally occurring electron shuttles on the total Fe(III) reduction in anoxic environments has not yet been evaluated. Finally, it is useful to discuss what advantages, if any are available to iron-reducing microorganisms that specifically produce and excrete Fe(III)-chelating or electron-shuttling molecules. For a single bacterium, production and release of such specialized molecules might be too expensive, in particular if such molecules are lost or degraded before the costs of biosynthesis have been compensated. However, in bacterial communities (e.g., biofilms, cell aggregates) such expenses might be balanced: each cell contributes just few chelator or shuttle molecules and the whole community benefits from the accessibility of ferric iron as electron
Geomicrobiological Cycling of Iron
99
acceptor. To date, no Fe(III)-chelating or electron-shuttling O compound that was specifically produced and excreted in C NH2 ferric iron-reducing cultures in vivo has been identified. N However, some evidence indicates that Shewanella algae and Geothrix fermentans produce and release both Fe(III)-chelators and electron shuttles (Nevin and Lovley 2002a; Lovley et al. 2004). Furthermore, it was recently N demonstrated that some antibiotics, e.g., phenazine-1Figure 8. Chemical structure of carboxamide (PCN), bleo-mycin and pyocyanine, function phenazine-1-carboxamide, PCN, as electron shuttles between bacteria and Fe(III) minerals a redox-active antibiotic produced (Hernandez et al. 2004). These redox-active antibiotics, by Pseudomonas chlororaphis exemplified in Figure 8 by PCN, structurally resemble that functions as electron shuttle between different microorganhumic substances with regard to aromaticity and redoxisms and ferrihydrite. active functional groups. Pseudomonas chlororaphis can transfer electrons to ferric iron oxides only due to the production and reduction of PCN. In addition to the PCN-producing strain, Shewanella oneidensis, Escherichia coli, Pseudomonas fluorescens, Pseudomonas aeruginosa and Vibrio cholerae were able to reduce PCN and thus indirectly reduce Fe(III) minerals (Hernandez et al. 2004). So far it is unknown whether the antibiotic-producing and/or antibiotic-reducing strains actually gain energy through this indirect Fe(III) reduction. It might just as well be a new microbial mechanism to acquire iron for assimilatory processes (compare to Kraemer et al. 2005). Interestingly enough, appreciable concentrations of phenazines in the range of 27 to 43 ng per g root (with soil) were found in the rhizosphere of wheat plants (Thomashow et al. 1990).
MICROBIAL IRON CYCLING Many reactions relevant to geochemistry are driven and/or accelerated by the activity of prokaryotes. Examples are manifold and include carbon mineralization, nitrogen fixation and sulfate reduction as well as iron transformations. In particular, prokaryotes that gain energy through oxidation of Fe(II) or reduction of Fe(III) have a strong influence on the global iron cycle (for details see Kraemer et al. 2005). For example, in most acidic aerobic environments, Fe(II) would persist if not oxidized by acidophilic Fe(II) oxidizers.
Microbial iron cycling under acidic conditions Understanding microbial cycling of iron at acidic pH has implications for the leaching of ores and the development of (bio)remediation techniques for acid mine drainage. Evidence for in vivo iron cycling was obtained from mining sites and was investigated in more detail in the laboratory (Johnson et al. 1993). Mixed cultures of acidophilic Fe(II)-oxidizing and Fe(III)reducing microorganisms cycled iron between the oxidation states +II and +III when the concentration of dissolved oxygen fluctuated and sufficient electron donor for Fe(III) reducers was supplied. Similarly, iron cycling could also be demonstrated in pure cultures since some acidophiles, e.g., Thiobacillus ferrooxidans and Sulfobacillus acidophilus catalyze both Fe(II) oxidation and Fe(III) reduction under appropriate conditions (reviewed by Johnson et al. 1993; Blake and Johnson 2000).
Microbial iron cycling at neutral pH Ferric iron is the dominant electron acceptor for the mineralization of carbon particularly in anoxic freshwater habitats (Thamdrup 2000). Therefore, processes that regenerate Fe(III) minerals that are again available for Fe(III)-reducing prokaryotes have become of significant interest. Since microbial Fe(III) reduction and Fe(II) oxidation were recognized, microbial
100
Kappler & Straub
cycling of iron seemed plausible and is hypothesized for many environments. For example, it was estimated that in marine coastal sediments each iron atom cycled approximately 100 to 300 times before being buried in the sediment (Canfield et al. 1993). However, the natural complexity of habitats aggravates direct measurements of microbial iron transformation reactions and thus microbial iron cycling in vivo has not yet been clearly demonstrated.
Prerequisites for microbial iron cycling at neutral pH Microbial iron cycling needs iron plus appropriate supplementary substrates, i.e., electron donors for Fe(III) reduction and electron acceptors for Fe(II) oxidation (Fig. 9). Furthermore, the nature of the iron minerals formed is crucial for an efficient cycling since not all iron minerals are equally good substrates. For instance, the redox potential of an iron redox couple determines whether it is available as electron donor or acceptor in terms of energetics (Table 5). At pH 7, molecular oxygen and all redox pairs of the nitrate reduction pathway (Fig. 4) can accept electrons from ferrous iron, independently from the Fe(III) mineral produced. The situation is more complex with ferric iron oxides as electron acceptor. The oxidation of acetate (CO2/acetate, E0c = 290 mV) is energetically favorable just with iron oxides such as lepidocrocite or ferrihydrite. On the other hand, for the reduction of goethite, hematite or magnetite, electron donors with a lower redox potential are necessary, e.g., molecular hydrogen (2H+/H2, E0c = 414 mV) or formate (CO2/formate, E0c = 432 mV). Hence, theoretically acetate can fuel microbial cycling of iron only if ferrihydrite or lepidocrocite is the product of microbial Fe(II) oxidation. Furthermore, it is essential that supplementary electron donors and acceptors can diffuse since ferric iron is barely soluble and thus rather immobile in natural environments. The solubility of Fe(III) in equilibrium with ferrihydrite is in the range of 10−9 M (Fig. 2). The solubilities of goethite and hematite are even lower and the Fe(III) concentrations in the presence of these minerals is in the range from 10−10 M to 10−13 M (Kraemer 2004). In natural environments, the concentration of dissolved Fe(II) is controlled by adsorption or precipitation and is therefore insignificant in comparison to solid Fe(II). Dissolved Fe(II) adsorbs to soil particles, cell surfaces and also to the surface of ferric iron oxides (e.g., Liu et al. 2001; Cornell and Schwertmann 2003); in model calculations for a coastal sediment, adsorbed Fe(II) exceeded the concentration of freely dissolved Fe(II) 30fold (Van Cappellen and Wang 1996; Thamdrup 2000).
Oxygen-dependent microbial cycling of iron The product of microbial aerobic Fe(II) oxidation is often identified as poorly crystalline ferrihydrite, a ferric iron oxide that is a favorable electron acceptor for ferric iron-reducing prokaryotes. However, traces of oxygen may repress iron respiration in facultatively anaerobic Fe(III) reducers and can even inhibit the activity of strictly anaerobic ferric iron-reducing
Electron donor,
Fe(III)
e.g. N2
e.g. benzoate
e.g. CO2, H2O
Fe(II)
Electron acceptor, e.g. nitrate
Figure 9. Schematic illustration of microbial iron cycling.
Geomicrobiological Cycling of Iron
101
microorganisms, as shown e.g., for Geobacter spp. (Straub and Schink 2004a). Hence, oxygen-dependent microbial cycling of iron (most likely) always depends on a transition between oxic and anoxic conditions. In natural environments, such transitions are supported by temporary oxygen release by roots, bioturbation by burrowing and boring animals and mixing of sediments by waves or storm events. Of particular interest for oxygen-dependent iron cycling are microaerophilic Fe(II) oxidizers since they thrive in oxic-anoxic transition zones, allowing for microscale microbial redox cycling. Such oxic-anoxic transition zones are characterized by the simultaneous presence of ferrous iron which was produced during anaerobic Fe(III) reduction and of low concentrations of oxygen which reached this zone via diffusion from overlying oxic zones (Sobolev and Roden 2002).
Oxygen-independent microbial cycling of iron The identification of ferrihydrite as the primary product of anaerobic Fe(II) oxidation by phototrophs (Straub et al. 1999; Kappler and Newman 2004) or nitrate-reducing bacteria (Straub et al. 1996, 1998) indicated the possibility of anaerobic iron cycling. Biologically produced ferrihydrite has been shown to be an excellent electron acceptor for Fe(III)-reducing bacteria, which reduced it completely to the ferrous state (Straub et al. 1998, 2004). Similar to ferric iron, nitrate is used as electron acceptor only in anoxic zones after oxygen is depleted. In contrast to iron, nitrate is soluble at pH 7. Finally, it was feasible to show an anaerobic iron cycling in laboratory co-culture experiments (Straub et al. 2004). For these experiments, Fe(II)-oxidizing nitrate reducers were chosen that were unable to oxidize benzoate. As a counterpart, an Fe(III) reducer was selected that utilized benzoate with Fe(III) but not with nitrate as the electron acceptor. Only in experiments that were inoculated with Fe(II) oxidizers plus Fe(III) reducers was benzoate completely oxidized with nitrate in the presence of iron (Fig. 9). Although the transient iron phases in such co-cultures were not analyzed, stoichiometric considerations suggest that iron cycled 6 times between the oxidation states +II and +III in these experiments (Straub et al. 2004). Clearly, the relevance of anaerobic nitrate-dependent iron cycling for the complex flow of electrons in anoxic environments still needs to be determined. Microbial anaerobic iron cycling is possible with the participation of anoxygenic Fe(II)oxidizing phototrophs. Light-dependent, anaerobic cycling of iron may occur in top layers of shallow sediments that are reached by light or in (iron rich) microbial mats.
ENVIRONMENTAL IMPLICATIONS Microbial reduction of Fe(III) and oxidation of Fe(II) may have left geological imprints during Earth‘s history, and continues to significantly affect modern environments. Due to the considerable amount of iron in soils and sediments, Fe(III) usually represents the most abundant electron acceptor in anoxic soils and freshwater sediments; only in marine sediments is this dominance counterbalanced by the high sulfate concentration of seawater (Thamdrup 2000). Carbon cycling, mobility of micronutrients and in particular the degradation, transformation and (im)mobilization of organic and inorganic pollutants are closely linked in many environments to the microbial iron cycle.
Degradation of organic compounds coupled to dissimilatory Fe(III) reduction In pristine environments, Fe(III)-reducing microorganisms typically couple the reduction of Fe(III) to the oxidation of H2 or other fermentation products such as simple fatty acids or ethanol. Some ferric iron-reducing strains have in addition the ability to oxidize aromatic, organic pollutants such as benzene, toluene, ethylbenzene, phenol, p-cresol and o-xylene (e.g., Lovley et al. 1989; Lovley and Lonergan 1990; Lovley and Anderson 2000; Jahn et al.
102
Kappler & Straub
2005). If at contaminated sites ferric iron oxides are available for dissimilatory iron-reducing bacteria and other essential nutrients for microbial growth (e.g., nitrogen, phosphorous, sulfur) are present, microbial Fe(III) reduction has the potential to significantly contribute to the degradation of aromatic pollutants in a process termed ‘natural attenuation’.
Iron minerals as adsorbents Many ferric iron mineral surfaces are positively charged at neutral pH due to their high points of net zero charge (ZPC). The pH ZPCs are ~7.9 for ferrihydrite, ~8.5 for hematite and ~9.0–9.4 for goethite (Cornell und Schwertmann 2003). Such iron oxides therefore constitute good adsorbents for negatively charged compounds like phosphate (PO43−), bicarbonate (HCO3−) and oxyanions of toxic metal ions such as arsenate (AsO43−), arsenite (AsO33−) or chromate (CrO42−). Furthermore, negatively charged natural organic matter (humic substances) also binds strongly to ferric iron mineral surfaces (Stumm and Morgan 1996; Cornell and Schwertmann 2003). Anions were shown to adsorb to ferrihydrite surfaces via replacement of surface hydroxyl groups, leading to tight bonds of almost covalent character. For weak organic acids also an outer-sphere adsorption via weak electrostatic interactions was observed. Cations usually adsorb to iron oxides via hydroxyl-bridged inner-sphere complexes at the oxide surface. A comprehensive overview on adsorption processes on iron oxides is given by Cornell and Schwertmann (2003). Transformation of iron minerals and pH changes in the environment both influence the adsorption of cations and anions to ferric iron oxides. In some cases this has dramatic consequences, as in the well-documented example of arsenic: Arsenite and arsenate both strongly bind to ferric iron oxides (Dixit and Hering 2003). There is evidence from extended X-ray absorption fine structure (EXAFS) studies for inner sphere complexation but the nature of the surface complexes is still controversial (e.g., Waychunas et al. 1993; Shermann and Randall 2003) The microbially induced reductive dissolution of arsenic-loaded iron oxides is thought to play a key role in As-release into the groundwater, which leads to enormous drinking water contaminations observed in countries such as Bangladesh and India (Cummings et al. 1999; Smedley and Kinniburgh 2002; Islam et al. 2004; Harvey et al. 2005). In addition, arsenate can be released into the groundwater when high-surface area ferrihydrite transforms into hematite or goethite with significantly lower surface areas (Ford 2002).
Immobilization of toxic metal ions by microbial Fe(II) oxidation and Fe(III) reduction Reductive dissolution of metal-loaded iron oxides releases adsorbed metal ions into the environment. In contrast, Fe(II) oxidation can lead to the immobilization of toxic metal ions. Either co-precipitation during Fe(II) oxidation (Gunkel 1986; Richmond et al. 2004) or adsorption to synthetic or natural iron oxides potentially provides an applicable biotechnological method to remove toxic metal ions such as arsenic efficiently from drinking water. Natural removal of arsenic by iron oxides was observed when ferrihydrite was precipitated together with arsenic from arsenic- and iron-rich hydrothermal fluids (Pichler and Veizer 1999). In addition to mobilization of adsorbed compounds by dissolution of Fe(III) minerals or immobilization of pollutants by adsorption to or co-precipitation with biogenic iron minerals, iron-metabolizing microorganisms can also have a more direct effect on the fate of pollutants. For example, Fe(III)-reducing microorganisms were shown to convert toxic metal ions from more soluble forms (e.g., Cr(VI) and U(VI)) to less soluble forms that are likely to be immobilized in the subsurface (e.g., Cr(III) and U(IV)) (e.g., Lovley 1993; Lovley and Phillips 1992).
Formation of reactive iron minerals During microbial Fe(III) reduction, different minerals are formed depending on the chemical composition of the medium, on the substrate concentrations and on the incubation
Geomicrobiological Cycling of Iron
103
conditions (e.g., Roden and Zachara 1996; Lovley 1997; Fredrickson et al. 1998; Urrutia et al. 1999; Benner et al. 2002; Zachara et al. 2002; Hansel et al. 2003; Kukkadapu et al. 2004). In particular, the presence of different counter ions leads to the precipitation of different Fe(II) minerals, e.g., iron mono- or disulfides (‘FeS’ or FeS2), ferrous iron phosphate (vivianite), carbonate (siderite) or magnetite (Cornell and Schwertmann 2003). Also transformation of ferrihydrite to the more crystalline iron oxides hematite and goethite was observed during Fe(III) reduction (Hansel et al. 2003). Knowing the products of microbial Fe(III) reduction is quite important since the Fe(II)-species formed as the result of microbial Fe(III) reduction (either Fe(II) minerals or mineral-adsorbed and thus activated Fe(II)-species) can be efficient reductants in contrast to free aqueous Fe(II). They were shown to reduce organic contaminants such as nitroaromatic and chlorinated organic compounds (Hofstetter 1999) but also to reduce inorganic compounds such as U(VI) and Cr(VI) (Buerge and Hug 1999; Liger et al. 1999; Lovley and Anderson 2000; Jeon et al. 2005). Because different Fe(II)-species show different reactivities with respect to reductive pollutant transformation, understanding the mechanisms and conditions leading to different Fe(II)-species is necessary (Haderlein and Pecher 1999; Pecher et al. 2002; Elsner et al. 2003).
SOME TASKS FOR FUTURE INVESTIGATIONS Prokaryotes that gain energy from iron redox transformations have a strong influence on the geochemistry of pristine or polluted environments. This was recognized only in the recent past and still needs to be studied in more detail. In particular the influence of the microbial cycle of iron on the global cycles of other elements, such as carbon, nitrogen or sulfur is not completely understood. The majority of ferrous iron-oxidizing and ferric ironreducing prokaryotes were isolated during the last decade. Therefore, it is not surprising that our knowledge of these prokaryotes and their iron metabolism is still in its infancy. One major task in microbial physiology is to explain how prokaryotes transfer electrons from or to iron minerals. In this context, the combination of physiology with molecular genetics to track the activity of certain proteins is very promising as recently summarized by Croal et al. (2004) and reviewed by Newman and Gralnick (2005). Anticipated genomic data from isolates (as described by Nelson and Methé 2005) and natural communities (as discussed by Whitaker and Banfield 2005) will assist in the identification of targets. Furthermore, the identification of Fe(III)-chelating and electron-shuttling molecules intentionally produced and released by prokaryotes is key to understand the biological and ecological importance of these postulated mechanisms. The advancement of different microscopic methods, e.g., cryo transmission electron or environmental scanning electron microscopy, will help to describe intimate interactions between microorganisms and iron minerals. Finally, consequences of microbial iron transformations for the fate of organic and inorganic pollutants have to be explored in more detail to better understand the process of natural attenuation and to foster remediation of polluted sites. An interdisciplinary approach as pursued in the emerging field of geomicrobiology which comprises such diverse fields as microbial physiology, molecular genetics, geochemistry and mineralogy will certainly help to answer many open questions.
ACKNOWLEDGMENTS Parts of the work for this chapter were done by AK in Dianne Newman’s lab at the California Institute of Technology (Caltech) and by KLS in Bernhard Schink’s lab at the University of Konstanz (Germany). The electron micrographs were taken by AK at Caltech/JPL with the help of M. Chi and R.E. Mielke. We would like to thank B. Schink for reviewing the manuscript. AK is supported by an Emmy-Noether fellowship from the German Research Foundation (DFG).
104
Kappler & Straub REFERENCES
Anbar AD, Holland HD (1992) The photochemistry of manganese and the origin of banded iron formations. Geochim Cosmochim Acta 56:2595-2603 Baker BJ, Banfield JF (2003) Microbial communities in acid mine drainage. FEMS Microbiol Ecol 44:139152 Balashova VV, Zavarzin GA (1979) Anaerobic reduction of ferric iron by hydrogen bacteria. Microbiologiia 48:773-778 Benner SG, Hansel CM, Wielinga BW, Barber TM, Fendorf S (2002) Reductive dissolution and biomineralization of iron hydroxide under dynamic flow conditions. Environ Sci Technol 36:1705-1711 Benz M, Brune A, Schink B (1998) Anaerobic and aerobic oxidation of ferrous iron at neutral pH by chemoheterotrophic nitrate-reducing bacteria. Arch Microbiol 169:159-165 Blake R II, Johnson DB (2000) Phylogenetic and biochemical diversity among acidophilic bacteria that respire iron. In: Environmental microbe-mineral interactions. Lovley DR (ed) ASM Press, Washington D.C., p 53-78. Bridge TAM, Johnson DB (2000) Reductive dissolution of ferric iron minerals by Acidiphilium SJH. Geomicrobiol J 17:193-206 Buerge IJ, Hug SJ (1999) Influence of mineral surfaces on chromium (VI) reduction by iron (II). Environ Sci Technol 33:4285-4291 Buresh RJ, Moraghan JT (1976) Chemical reduction of nitrate by ferrous iron. J Environ Qual. 5:320-325 Cairns-Smith AG (1978) Precambrian solution photochemistry, inverse segregation, and banded iron formation. Nature 276:807–808 Canfield DE, Thamdrup B, Hansen JW (1993) The anaerobic degradation of organic matter in Danish coastal sediments: iron reduction, manganese reduction, and sulfate reduction. Geochim Cosmochim Acta 57: 3867-3885 Chan CS, De Stasio G, Welch SA, Girasole M, Frazer BH, Nesterova MV, Fakra S, Banfield JF (2004) Microbial polysaccharides template assembly of nanocrystal fibers. Science 3003:1656-1658 Chaudhuri SK, Lack JG, Coates JD (2001) Biogenic magnetite formation through anaerobic biooxidation of Fe(II). Appl Environ Microbiol 67:2844-2848 Clayton RK, Sistrom WR (1978) The Photosynthetic Bacteria. Plenum Press, New York Cornell RM, Schneider W, Giovanoli R (1989) The transformation of ferrihydrite into lepidocrocite. Clay Minerals 24:549-553 Cornell RM, Schwertmann U (2003) The Iron Oxides: Structures, Properties, Reactions, Occurrences and Uses. Wiley-VCH, Weinheim Corstjens PLAM, de Vrind JPM, Westbroek P, de Vrind-de Jong EW (1992) Enzymatic iron-oxidation by Leptothrix discophora: identification of an iron-oxidizing protein. Appl Environ Microbio l58:450-454 Croal LR, Gralnick JA, Malasarn D, Newman DK (2004) The genetics of geochemistry. Ann Rev Genetics 38: 175-202 Cummings DE, Caccavo F, Fendorf S, Rosenzweig, RF (1999) Arsenic mobilization by the dissimilatory Fe(III)-reducing bacterium Shewanella alga BrY. Environ Sci Technol 33:723-729 De Vrind-de Jong EW, Corstjens PLAM, Kempers ES, Westbroek P, de Vrind JPM (1990) Oxidation of manganese and iron by Leptothrix discophora: use of N,N,N’,N’-tetramethyl-p-phenylenediamine as an indicator of metal oxidation. Appl Environ Microbiol 56:3458–3462 Dixit S, Hering JG (2003) Comparison of arsenic(V) and arsenic(III) sorption onto iron oxide minerals: Implications for arsenic mobility. Environ Sci Technol 37:4182-4189 Druschel GK, Baker BJ, Gihring TH, Banfield JF (2004) Acid mine drainage biogeochemistry at Iron Mountain, California. Geochem Trans 5:3-32 Edwards KJ, Rogers DR, Wirsen CO, McCollom TM (2003) Isolation and characterization of novel psychrophilic, neutrophilic, Fe-oxidizing, chemolithoautotrophic alpha- and, gamma-Proteobacteria from the deep sea. Appl Environ Microbiol 69:2906-2913 Ehrenreich A, Widdel F (1994) Anaerobic oxidation of ferrous iron by purple bacteria, a new type of phototrophic metabolism. Appl Environ Microbiol 60:4517-4526 Ehrlich HL (2002) Geomicrobiology. Marcel Dekker, New York Elsner M, Haderlein SB, Schwarzenbach RP (2003) Reactivity of Fe(II)-bearing minerals towards reductive transformation of organic contaminants. Environ Sci Technol 38:799-907 Emerson D, Revsbech NP (1994) Investigation of an iron-oxidizing microbial mat community located near Aarhus, Denmark: field studies. Appl Environ Microbiol 60:4022-4031 Emerson D, Moyer C (1997) Isolation and characterization of novel iron-oxidizing bacteria that grow at circumneutral pH. Appl Environ Microbiol 63:4784-4792 Emerson D (2000) Microbial oxidation of Fe(II) and Mn(II) at circumneutral pH. In: Environmental Microbemineral Interactions. Lovley DR (ed) ASM Press, Washington D.C., p 53-78
Geomicrobiological Cycling of Iron
105
Ford RG (2002) Rates of hydrous ferric oxide crystallization and the influence on coprecipitated arsenate. Environ Sci Technol 36:2459-2463 Francois LM (1986) Extensive deposition of banded iron formations was possible without photosynthesis. Nature 320:352–354 Fredrickson JK, Zachara JM, Kennedy DW, Li S, Hinman N W (1998) Biogenic iron mineralization accompanying the dissimilatory reduction of hydrous ferric oxide by a groundwater bacterium. Geochim Cosmochim Acta 62:3239-3257 Gilbert B, Banfield JF (2005) Molecular-scale processes involving nanoparticulate minerals in biogeochemical systems. Rev Mineral Geochem 59:109-155 Glasauer S, Weidler PG, Langley S, Beveridge TJ (2003) Controls on Fe reduction and mineral formation by a subsurface bacterium. Geochim Cosmochim Acta 67:1277-1288 Gunkel G (1986) Studies of the fate of heavy metals in lakes. I. The role of ferrous iron oxidizing bacteria in coprecipitation of heavy metals. Arch Hydrobiol 105:489-515 Haderlein SB, Pecher K (1999) Pollutant reduction in heterogenous Fe(II)-Fe(III) systems. In: Mineral-Water Interfacial Reactions: Kinetics and Mechanisms. Sparks DL, Grundl TJ (eds) ACS Symposium Series, Washington, D.C., p 342-357 Hafenbradl D, Keller M, Dirmeier R, Rachel R, Roßnagel P, Burggraf S, Huber H, Stetter KO (1996) Ferroglobus placidus gen nov., sp. nov., a novel hyperthermophilic archaeum that oxidizes Fe2+ at neutral pH under anoxic conditions. Arch Microbiol 166:308-314 Hallberg R, Ferris FG (2004) Biomineralization by Gallionella. Geomicrobiol J 21:325-330 Hanert, H.H. (1981) The genus Gallionella. In: The Prokaryotes. Starr MP, Stolp H, Trueper HG, Balows A, Schlegel HG (eds) Springer, Berlin, p 509-515 Hansel CM, Benner SG, Neiss J, Dohnalkova A, Kukkadapu RK, Fendorf S (2003) Secondary mineralization pathways induced by dissimilatory iron reduction of ferrihydrite under advective flow. Geochim Cosmochim Acta 67:2977-2992 Hartman H (1984) The evolution of photosynthesis and microbial mats: a speculation on banded iron formations. In: Microbial Mats: Stromatolites. Cohen Y, Castenholz RW, Halvorson HO (eds) Alan Liss Inc., New York, p 451-453 Harvey CF, Swartz CH, Badruzzaman ABM, Keon-Blute N, Yu W, Ali MA, Jay J, Beckie R, Niedan V, Brabander D, Oates PM (2005) Groundwater arsenic contamination on the Ganges Delta: biogeochemistry, hydrology, human perturbations, and human suffering on a large scale. Geosciences 337:285-296 Heising S, Richter L, Ludwig W, Schink B (1999) Chlorobium ferrooxidans sp. nov., a phototrophic green sulfur bacterium that oxidizes ferrous iron in coculture with a ‘Geospirillum’ sp. strain. Arch Microbiol 172:116-124 Hernandez ME, Newman DK (2001) Extracellular electron transfer. Cell Mol Life Sci 58:1562-1571 Hernandez ME, Kappler A, Newman DK (2004) Phenazines and other redox active antibiotics promote microbial mineral reduction. Appl Environ Microbiol 70:921-928 Hofstetter TB, Heijman CG, Haderlein SB, Holliger C, Schwarzenbach RP (1999) Complete reduction of TNT and other (poly)nitroaromatic compounds under iron-reducing subsurface conditions. Environ Sci Technol 33:1479–1487 Islam FS, Gault AG, Boothamn C, Polya DA, Charnock JM, Chatterjee A, Lloyd JR (2004) Role of metalreducing bacteria in arsenic release from Bengal delta sediments. Nature 430:68-71 Jahn MK, Haderlein SB, Meckenstock RU (2005) Anaerobic degradation of benzene, toluene, ethylbenzene, and o-xylene in sediment-free iron-reducing enrichment cultures. Appl Environ Microbiol 71:3355-3358 Jambor JL, Dutrizac JE (1998) Occurrence and constitution of natural and synthetic ferrihydrite, a widespread iron oxyhydroxide. Chem Rev 98:2549-2585 Janney DE, Cowley JM, Buseck PR (2000) Structure of synthetic 2-line ferrihydrite by electron nanodiffraction. Am Mineral 85:1180-1187 Janney DE, Cowley JM, Buseck PR (2001) Structure of synthetic 6-line ferrihydrite by electron nanodiffraction. Am Mineral 86:327-335 Jeon BH, Dempsey BA, Burgos WD, Barnett MO, Roden EE (2005) Chemical reduction of U(VI) by Fe(II) at the solid-water interface using natural and synthetic Fe(III) oxides. Environ Sci Technol 39:5642-5649 Jiao Y, Kappler A, Croal L, Newman DK (2005) Isolation and characterization of a genetically tractable photoautotrophic Fe(II)-oxidizing bacterium Rhodopseudomonas palustris strain TIE1. Appl Environ Microbiol 71:4487-4496 Johnson DB, McGinness S (1991) Ferric iron reduction by acidophilic heterotrophic bacteria. Appl Environ Microbiol 57:207-211 Johnson DB, Ghauri MA, McGinness S (1993) Biogeochemical cycling of iron and sulphur in leaching environments. FEMS Microbiol Rev 11:63-70 Kappler A, Newman DK (2004) Formation of Fe(III)-minerals by Fe(II)-oxidizing photoautotrophic bacteria. Geochim Cosmochim Acta 68:1217-1226
106
Kappler & Straub
Kappler A, Pasquero C, Konhauser KO, Newman DK (2005) Deposition of banded iron formations by photoautotrophic Fe(II)-oxidizing bacteria. Geology. In press. Konhauser KO (1997) Bacterial iron biomineralization in nature. FEMS Microbiol Rev 20:315-326 Konhauser KO, Hamade T, Raiswell R, Morris RC, Ferris FG, Southam G, Canfield DE (2002) Could bacteria have formed the Precambrian banded iron formations? Geology 30:1079-1082 Kraemer SM (2004) Iron oxide dissolution and solubility in the presence of siderophores. Aquat Sci 66:3-18 Kraemer SM, Butler A, Borer P, Cervini-Silva J (2005) Siderophores and the dissolution of iron-bearing minerals in marine systems. Rev Mineral Geochem 59:53-84 Kukkadapu RK, Zachara JM, Fredrickson JK, Kennedy DW (2004) Biotransformation of two-line silicaferrihydrite by a dissimilatory Fe(III)-reducing bacterium: formation of carbonate green rust in the presence of phosphate. Geochim Cosmochim Acta 68:2799-2814 Lack JG, Chaudhuri SK, Chakraborty R, Achenbach LA, Coates JD (2002) Anaerobic biooxidation of Fe(II) by Dechlorosoma suillum. Microb Ecol 43:424-431 Leang C, Adams LA, Chin KJ, Nevin KP, Methe BA, Webster J, Sharma ML, Lovley DR (2005) Adaptation to disruption of the electron transfer pathway for Fe(III) reduction in Geobacter sulfurreducens. J Bacteriol 187: 5918-5926 Lennie AR, Vaughan DJ (1996) Spectroscopic studies of iron sulfide formation and phase relations at low temperatures. In: Mineral Spectroscopy: A Tribute to Roger G. Burns. Dyar MD, McCammon C, Schaefer MW (eds) The Geochemical Society, St. Louis, p 117-131 Lies DP, Hernandez ME, Kappler A, Mielke RE, Gralnick JA, Newman DK (2005) Shewanella oneidensis strain MR-1 uses overlapping pathways for iron reduction at a distance and by direct contact under conditions relevant for biofilms. Appl Environ Microbiol 71:4414-4426 Liger E, Charlet L, Van Capellen P (1999) Surface catalysis of uranium(VI) reduction by iron(II). Geochim Cosmochim Acta 63:2939-2955 Liu CX, Kota S, Zachara JM, Fredrickson JK, Brinkman CK (2001) Kinetic analysis of the bacterial reduction of goethite. Environ Sci Technol 35:2482-2490 Lovley DR, Phillips EJP (1988) Novel mode of microbial energy metabolism: organic carbon oxidation coupled to dissimilatory reduction of iron or manganese. Appl Environ Microbiol 54:1472-1480 Lovely DR, Baedecker MJ, Lonergan DJ, Cozzarelli JM, Phillips EJP, Siegel DJ (1989) Oxidation of aromatic contaminants coupled to microbial iron reduction. Nature 339:297-300 Lovley DR, Lonergan DJ (1990) Anaerobic oxidation of toluene, phenol, and p-cresol by the dissimilatory ironreducing organism, GS-15. Appl Environ Microbiol 56:1856-1864 Lovley DR (1991) Dissimilatory Fe(III) and Mn(IV) reduction. Microbiol Rev 55:259–287 Lovley DR, Phillips EJP (1992) Reduction of uranium by Desulfovibrio desulfuricans Appl Environ Microbiol 58:850–856 Lovley DR (1993) Dissimilatory metal reduction. Annu Rev Microbiol 47:263-290 Lovley DR, Coates JD, Blunt-Harris EL, Phillips EJP, Woodward JC (1996) Humic substances as electron acceptors for microbial respiration. Nature 382:445-448 Lovley DR (1997) Microbial Fe(III) reduction in subsurface environments. FEMS Microbiol Rev 20:305-315 Lovley DR, Fraga JL, Blunt-Harris EL, Hayes, LA, Phillips EJP, Coates JD (1998) Humic substances as a mediator for microbially catalyzed metal reduction. Acta Hydrochim Hydrobiol 26:152-157 Lovley DR, Anderson RT (2000) The influence of dissimilatory metal reduction on the fate of organic and metal contaminants in the subsurface. J Hydrol 238:77-88 Lovley DR, Holmes DE, Nevin KP (2004) Dissimilatory Fe(III) and Mn(IV) reduction. Adv Microb Phys 49: 219-286 Manceau A, Drits VA (1993) Local structure of ferrihydrite and feroxyhite by EXAFS spectroscopy. Clay Minerals 28:165-184 Moraghan JT, Buresh RJ (1977) Chemical reduction of nitrite and nitrous oxide by ferrous iron. Soil Sci Soc Am J 41:47-50 Myers CR, Nealson KH (1988) Microbial reduction of manganese oxides: interactions with iron and sulfur. Geochim Cosmochim Acta 52:2727-2732 Nelson KE, Methé B (2005) Metabolism and genomics: adventures derived from complete genome sequencing. Rev Mineral Geochem 59:279-294 Newman DK, Gralnick JA (2005) What genetics offers geobiology. Rev Mineral Geochem 59:9-26 Nevin KP, Lovley DR (2000) Lack of production of electron-shuttling compounds or solubilizaiton of Fe(III) during reduction of insoluble Fe(III) oxide by Geobacter metallireducens. Appl Environ Microbiol 66: 2248-2251 Nevin KP, Lovley DR (2002a) Mechanisms for accessing insoluble Fe(III) oxide during dissimilatory Fe(III) reduction by Geothrix fermentans. Appl Environ Microbiol 68:2294-2299 Nevin KP, Lovley DR (2002b) Mechanisms for Fe(III) oxide reduction in sedimentary environments. Geomicrobiol J 19:141-159
Geomicrobiological Cycling of Iron
107
Nordstrom DK, Southam G (1997) Geomicrobiology of sulfide mineral oxidation. Rev Mineral 35:361-390 Pecher K, Haderlein SB, Schwarzenbach RP (2002) Reduction of polyhalogenated methanes by surface bound Fe(II) in aqueous suspensions of iron oxides. Environ Sci Technol 36:1734-1741 Pichler T, Veizer J (1999) Precipitation of Fe(III) oxyhydroxide deposits from shallow-water hydrothermal fluids in Tutum Bay, Ambitle Island, Papua New Guinea. Chem Geol 162:15-31 Ratering S, Schnell S (2000) Localization of iron-reducing activity in paddy soil by profile studies. Biogeochemistry 48:341-365 Reguera G, McCarthy KD, Mehta T, Nicoll JS, Tuominen MT, Lovley DR (2005) Extracellular electron transfer via microbial nanowires. Nature 435:1098-1101 Richmond WR, Loan M, Morton J, Parkinson GM (2004) Arsenic removal from aqueous solution via ferrihydrite crystallization control. Environ Sci Technol 38:2368-2372 Roden EE, Zachara JM (1996) Microbial reduction of crystalline iron(III) oxides: influence of oxide surface area and potential for cell growth. Environ Sci Technol 30:1618-1628 Roden EE (2003) Fe(III) oxide reactivity toward biological versus chemical reduction. Environ Sci Technol 37: 1319-1324 Roden EE, Sobolev D, Glazer B, Luther GW III (2004) Potential for microscale bacterial Fe redox cycling at the aerobic-anaerobic interface. Geomicrobiol J 21:379-391 Rosso KM, Zachara JM, Fredrickson JK, Gorby YA, Smith SC (2003) Nonlocal bacterial electron transfer to hematite surfaces. Geochim Cosmochim Acta 67:1081-1087 Shermann DM, Randall SR (2003) Surface complexation of arsenic(V) to iron(III) (hydr)oxides: structural mechanism from ab initio molecular geometries and EXAFS spectroscopy. Geochim Cosmochim Acta 67:4223-4230 Sobolev D, Roden EE (2002) Evidence for rapid microscale bacterial redox cycling of iron in circumneutral environments. Anton van Leeuw 181:587-597 Sobolev D, Roden EE (2004) Characterization of a neutrophilic, chemolithoautotrophic Fe(II)-oxidizing βProteobacterium from freshwater wetland sediments. Geomicrobiol J 21:1-10 Smedley PL, Kinniburgh DG (2002) A review of the source, behaviour and distribution of arsenic in natural waters. Appl Geochem 17:517-568 Straub KL, Benz M, Schink B, Widdel F (1996) Anaerobic, nitrate-dependent microbial oxidation of ferrous iron. Appl Environ Microbiol 62:1458-1460 Straub KL, Buchholz-Cleven BEE (1998) Enumeration and detection of anaerobic ferrous iron-oxidizing, nitrate-reducing bacteria from diverse European sediments. Appl Environ Microbiol 64:4846-4856 Straub KL, Hanzlik M, Buchholz-Cleven BEE (1998) The use of biologically produced ferrihydrite for the isolation of novel iron-reducing bacteria. System Appl Microbiol 21:442-449 Straub KL, Rainey FA, Widdel F (1999) Rhodovulum iodosum sp. nov. and Rhodovulum robiginosum sp. nov., two new marine phototrophic ferrous-iron-oxidizing purple bacteria. Int J Syst Bacteriol 49:729-735 Straub KL, Benz M, Schink B (2001). Iron metabolism in anoxic environments at near neutral pH. FEMS Microbiol Ecol 34:181-186 Straub KL, Schink B (2003) Evaluation of electron-shuttling compounds in microbial ferric iron reduction. FEMS Microbiol Lett 220:229-233 Straub KL, Schink B (2004a) Ferrihydrite reduction by Geobacter species is stimulated by secondary bacteria. Arch Microbiol 182:175-181 Straub KL, Schink B (2004b) Ferrihydrite-dependent growth of Sulfurospirillum deleyianum by electron transfer via sulfur cycling. Appl Environ Microbiol 70:5744-5749 Straub KL, Schönhuber WA, Buchholz-Cleven BEE, Schink B (2004) Diversity of ferrous iron-oxidizing, nitrate-reducing bacteria and their involvement in oxygen-independent iron cycling. Geomicrobiol J 21: 371-378 Stumm W, Morgan JJ (1996) Aquatic Chemistry: Chemical Equilibria and Rates in Natural Waters. John Wiley & Sons, New York Thamdrup B (2000) Bacterial manganese and iron reduction in aquatic sediments. In: Advances in microbial ecology. Schink B (ed) Kluwer Academic/Plenum Publishers, New York, p 41-84 Thauer RK, Jungermann K, Decker K (1977) Energy conservation in chemotrophic anaerobic bacteria. Bacteriol Rev 41:100-180 Thomashow LS, Weller DM, Bonsall RF, Pierson LS (1990) Production of the antibiotic phenazine-1carboxylic acid by fluorescent pseudomonas species in the rhizosphere of wheat. Appl Environ Microbiol 56:908-912 Urrutia MM, Roden EE, Zachara JM (1999) Influence of aqueous and solid-phase Fe(II) complexants on microbial reduction of crystalline iron(III) oxides. Environ Sci Technol 33:4022-4028 Van Cappellen P, Wang YF (1996) Cycling of iron and manganese in surface sediments – A general theory for the coupled transport and reaction of carbon, oxygen, nitrogen, sulfur, iron, and manganese. Am J Sci 296:197-243
108
Kappler & Straub
Waychunas GA, Rea BA, Fuller CC, Davis JA (1993) Surface chemistry of ferrihydrite: part 1. EXAFS studies of the geometry of coprecipitated and adsorbed arsenate. Geochim Cosmochim Acta 57:2251-2269 Wehrli B, Sulzberger B, Stumm W (1989) Redox processes catalyzed by hydrous oxide surfaces. Chem Geol 78:167-179 Whitaker RJ, Banfield JF (2005) Population dynamics through the lens of extreme environments. Rev Mineral Geochem 59:259-277 Widdel F, Schnell S, Heising S, Ehrenreich A, Assmus B, Schink B (1993) Ferrous iron oxidation by anoxygenic phototrophic bacteria. Nature 362:834-835 Williams AGB, Scherer MM (2004) Spectroscopic evidence for Fe(II)-Fe(III) electron transfer at the iron oxide-water interface. Environ Sci Technol 38:4782-4790 Zachara JM, Kukkadapu RK, Fredrickson JK, Gorby YA, Smith SC (2002) Biomineralization of poorly crystalline Fe(III) oxides by dissimilatory metal reducing bacteria (DMRB). Geomicrobiol J 19:179-207
6
Reviews in Mineralogy & Geochemistry Vol. 59, pp. 109-155, 2005 Copyright © Mineralogical Society of America
Molecular-Scale Processes Involving Nanoparticulate Minerals in Biogeochemical Systems Benjamin Gilbert Earth Sciences Division Lawrence Berkeley National Laboratory 1 Cyclotron Road MS 90R1116 Berkeley, California, 94720, U.S.A. [email protected]
Jillian F. Banfield Earth and Planetary Sciences University of California Berkeley Berkeley, California, 94720-4767, U.S.A. [email protected]
INTRODUCTION Mineral particles with diameters on the scale of nanometers (nanoparticles) are important constituents of natural environments. The small size of such particles has a host of consequences for biogeochemical systems, which we will review in this chapter. We begin by briefly reviewing what is known about how and when nanoparticles form and the ways in which nanoparticles impact natural processes. Nanoparticles form via a variety of inorganic and biological pathways and may be introduced into the environment as a consequence of human activity. They are widespread in the environment (Banfield and Navrotsky 2001; Penn et al. 2001; Kennedy et al. 2003a,b; van der Zee et al. 2003), although few quantitative studies of their abundance are available. While all crystals begin as very small particles, an important subset retain small size at the Earth’s surface over relatively long time scales, because the combination of low temperature and low solubility inhibits growth. As a consequence, nanoparticles have the potential for a long lifetime in the environment, and widespread transport under certain circumstances. Processes that result in the removal of nanoparticles from an environment include dissolution, settling from air, transport in solution, and crystal growth. Particle aggregation may be an important component of these processes because it will promote settling, limit dispersal via solution transport, and can lead to aggregation-based crystal growth. The presence of nanoparticles can profoundly influence biological systems. Because they are frequently formed in environments that are populated by microorganisms, nanoparticles often adhere to cell surfaces or cell-associated polymers (see Fig. 1 for examples). These coatings can have important consequences for metabolic activity, for example, by restricting communication between the cell and its surroundings. They may also provide protection from predators, inhibit desiccation, screen cells from ultraviolet radiation, and alter the cell buoyancy (e.g., Tebo et al. 1997; Phoenix et al. 2001). The controlled precipitation of nanoscale minerals can lead to formation of integrated organic-inorganic structures with diverse morphologies. In some cases, the shapes provide a record of past microbial activity (i.e., serve as biosignatures, possibly by preserving cell 1529-6466/05/0059-0006$05.00
DOI: 10.2138/rmg.2005.59.6
110
Gilbert & Banęeld
Figure 1. Microorganisms can produce copious quantities of nanoparticles. a). Field-emission scanning electron microscopy (SEM) micrograph of spherical aggregates of ZnS nanoparticles (with trace amounts of Fe, As, and Se) in a sulfate-reducing bacteria dominated biofilm growing on wood in neutralized acidmine drainage (Moreau et al. 2003). Draped over the aggregates is a dehydrated filamentous microbial cell of a morphology commonly observed in ZnS-dense regions within the biofilm. Image courtesy of John Moreau. b). High-resolution SEM image of a fractured sulfate reducing bacterium encrusted in aggregates of compositionally mixed ZnS and FeS nanoparticles (Williams et al. 2005). Inset: Higher magnification view of biomineral coating around a fracture cell. Images courtesy of Ken Williams. c). SEM micrograph of iron oxyhydroxide nanoparticle coatings on microbial structures from biofilms from the Piquette Mine, Tennyson, WI. The twisted stalks and cylindrical sheaths are characteristic products of Gallionella ferruginea (an iron oxidizer) and Leptothrix spp. (a putative iron oxidizer), respectively. Image courtesy of Susan Welch and Clara Chan. d). Transmission electron micrograph of aggregated UO2 nanoparticles adhering to the surfaces of sulfate reducing bacteria taken from the Midnite Mine, Washington, USA (Suzuki et al. 2002). Image courtesy of Yohey Suzuki.
morphology, as seen in the iron oxyhydroxide nanoparticle coatings on extracellular sheaths of Leptothrix, Fig. 1). Biominerals constructed from nanoparticles can be generated through deliberate action of the organism in order to create cell architecture (Mann 2000), and magnetic nanoparticles can serve a role in navigation (Bazylinski and Frankel 2004). However, in many cases the function is unclear or the particles may serve no function, and their existence is purely a byproduct of microbial metabolism (e.g., ZnS and UO2 nanoparticles, Fig. 1, and Mn(IV) oxides). Binding of nanoparticles to cell surfaces can also affect the fate and distribution of nanoparticles in the environment, by restricting or facilitating their transport, aggregationbased growth, and mineral transformation pathways. The interactions between nanoparticles, individual cells, and extracellular biomolecules can also act to bind biofilms together (Mayers and Beveridge 1989).
Molecular-Scale Processes Involving Nanoparticulate Minerals
111
Sources of nanoparticles in the environment A major pathway for nanoparticle formation in aqueous environments is the precipitation of sparingly soluble dissolved ions derived from both inorganic and biological processes. Precipitation is possible when the concentrations of ions in solution exceed the solubility of a mineral (e.g., see De Yoreo and Vekilov 2003). However, formation of a crystal nucleus is inhibited by an energy penalty associated with creation of a solid-liquid interface. Consequently, ion concentrations must generally exceed the saturation state of the solution for precipitation to occur. The relative energy cost associated with this interface is reduced as the particles grow, providing a driving force for coarsening. Materials that form ultra-small particles are frequently very insoluble with low energy barriers for nucleation. Examples include UO2, with a solubility product for bulk material logKsp ≈ −60, which forms 1–3 nm diameter particles (Suzuki et al. 2002; O’Loughlin et al. 2003); and ZnS, with a solubility product of logKsp ≈ −24, which typically forms 2–3 nm diameter particles (Labrenz et al. 2001; Moreau et al. 2004). In fact, a wide range of both natural and synthetic nanoparticles initially forms in this size range. Inorganic sources of environmental nanoparticles. A variety of inorganic pathways can lead to nanoparticle formation. Chemical weathering reactions that occur when minerals in rocks are exposed to water and air at the Earth’s surface liberate ions that can reprecipitate as nanometer-scale silicate clay minerals, oxides, oxyhydroxides, and phosphates. Common examples include smectite (e.g., montmorillonite (Na,Ca)(Al,Mg)6(Si4O10)3(OH)6nH2O), anatase (TiO2), hematite (D-Fe2O3), and rhabdophane (CePO4H2O). Aqueous clusters of metal sulfides and aluminum oxide are found in some lake and marine environments (Rozan et al. 2000; Casey and Swaddle 2003). Nanoparticulate minerals may nucleate at sites on another mineral surface (Stack et al. 2004). Additional inorganic sources of nanoparticles include impacts, combustion, vaporization (e.g., breakdown of meteorites as they enter the atmosphere), evaporation of sea spray, erosion, faulting, and other mechanical processes. Biological sources of environmental nanoparticles. Microbial activity is a major source of nanoparticles in the environment, and a summary of biogenic minerals is given by Frankel and Bazylinksi (2003). Central to microbial metabolism is the process of energy generation, which harnesses the free energy liberated as the result of coupled oxidation and reduction reactions. Reactions used for energy generation must be thermodynamically favorable, but are often kinetically inhibited. Organisms utilize enzymes to overcome these barriers and may speed up geochemical reactions by several orders of magnitude. In many cases, minerals can serve as either reductant or oxidant in microbial metabolism. In the presence of reduced organic carbon, oxygen or nitrate often serve as the electron acceptor for microbial carbon respiration. However, electrons can be passed to ferric iron, Mn(III)/IV, or sulfate when oxygen and nitrate are not available (Banfield and Nealson 1997; Konhauser 1998; Edwards et al. 2000; Ehrlich 2002). Uranium ions can also be biologically reduced. In either metabolic or co-metabolic processes (Lovely et al. 1991; Abdelouas et al. 2000; Fredrickson et al. 2000), electrons are passed from organic carbon to aqueous uranyl (UO22+) ions, resulting in the formation of insoluble uraninite (UO2) nanoparticles. Ferric iron and manganese minerals that act as electron acceptors are typically fine grained oxides that can dissolve upon reduction (Roden and Zachara 1996; Lovely 1997; Bratina et al. 1998; Quantin et al. 2001). In contrast, for sulfate reduction, aqueous sulfate ions are converted to HS−, which, in the presence of a suitable counter-ion, will precipitate as sulfide nanoparticles. Because reduction of sulfate is quantitatively linked to the oxidation of carbon, these metabolic pathways can generate copious quantities of nanoparticulate sulfides over short time periods (see Fig. 1a,b).
112
Gilbert & Banęeld
In the absence of organic carbon for respiration and light for photosynthesis, both carbon fixation and energy generation can be driven by energy harvested from inorganic chemical reactions alone (Lovely 1993). In such chemoautotrophically based ecosystems, bacteria such as Thiobacillus ferrooxidans oxidize sulfide and/or ferrous iron that is present in pyrite (FeS2) (Fowler et al. 1999). The resulting ferric iron and sulfate ultimately precipitate, often as nanoparticulate iron oxyhydroxide (ferrihydrite or goethite, D-FeOOH) or iron sulfate compounds (schwertmannite, Fe16O16(OH)y(SO4)znH2O, and others). Anthropogenic nanoparticles. Industrial manufacturing and combustion processes can lead to nanoparticle emission into the air or into wastewater effluent. For example, numerous groups are seeking to manufacture stable water-soluble magnetic iron oxide nanoparticles as an injectable diagnostic agent for enhancing contrast in magnetic resonance imaging (Tartaj et al. 2003). Cerium dioxide nanoparticles are of interest as catalysts during combustion processes (e.g., in automotive engines), because of the capacity of the CeO2 lattice to buffer changes in oxygen partial pressures and oxidize carbon monoxide (Bekyarova et al. 1998). These nanoparticles may be released during manufacturing, use, or as the result of product disposal, and could ultimately accumulate in the environment in high enough concentrations to have important ecosystem impacts, such as accumulation in and toxicity for aquatic organisms (Oberdörster et al. 2005).
Impacts of nanoparticles on their surroundings The formation of nanoparticles can influence the local chemical environment in which organisms live. Nanoparticles sequester ions when they precipitate, and can decrease or increase the porosity and permeability of sediments. For example, formation of sulfide nanoparticles removes both metal ions (e.g., Cu, Zn, As, Cd, Fe) and toxic sulfide ions from solution, improving habitability of the environment. Nanoparticle precipitation and dissolution reactions can be sources or sinks for protons, and thus can influence environmental mineralogy through the impact of pH on mineral solubility (Langmuir 1996). For example, the precipitation of iron oxyhydroxide nanoparticles and dissolution of sulfide nanoparticles both lead to environmental acidification, promoting dissolution of surrounding minerals. The solubilization of manganese oxides may liberate adsorbed trace metals that provide nutrients in oligotrophic environments (Bratina et al. 1998). Nanoparticles, with their high surface areas, can play especially important roles in adsorption. For example, nanoparticles of iron oxyhydroxide formed during the neutralization of acidic, ferrous iron-rich solutions can sorb phosphate ions, possibly limiting biological productivity in some environments. Nanoparticle surfaces can also sequester protons or toxic ions such as arsenate (Waychunas et al. 2005).
Nanoparticles—special properties and implications Recently, a great deal of research has shown that nanoscale inorganic solids may exhibit substantially modified properties relative to their bulk counterparts (Alivisatos 1996; Murray et al. 2000; Trindade et al. 2001), with consequences for the inorganic and biological interactions of nanoparticles in the environment. As a foundation for studies of coupled geochemical processes involving nanoparticles, we examine some principles describing how size influences nanoparticle properties and reactivity. The present chapter introduces the physical and chemical consequences of small particle size in minerals, and discusses the effect small particle size has on redox and photochemical reactions. The concepts introduced here can be used for understanding the environmental impact and fate of both natural and engineered nanoscale materials.
Molecular-Scale Processes Involving Nanoparticulate Minerals
113
Overview of small size effects in minerals While molecular geochemistry has always been a “nano-science,” the science of nanoscale clusters and nanoparticles is distinct in an important way. The motivating tenet of contemporary nanoscience is that the chemical and physical properties of a solid inorganic material may vary as a function of particle dimensions below a critical size. The definition of the critical size depends both upon the material under consideration and the property of interest. It may refer to the start of a size dependent trend, such the onset of electronic confinement, or to an abrupt change, such as a switch in the thermodynamically stable structure of a mineral. We stress that, in almost all cases, the description of the unmodified (i.e., bulk) material provides an excellent guide to the properties of a nanosized material (even below a critical size). Thus, knowledge of the relevant solid state physics and chemistry for a given mineral is an indispensable foundation for understanding small-size effects. We emphasize, however, that important small size effects are not limited to modifications of nanoparticle structure and properties alone, which we denote as static effects. Static small-size effects in mineral particles include the stabilization of structural phases that are metastable for bulk materials, and the presence elevated strain and disorder, particularly at nanoparticle surfaces. Electrons within solids respond to shifts in the equilibrium positions of atoms, surface-solvent interactions, and the presence of a confining surface itself. The latter effect—quantum confinement—is striking in some materials, but (when present) is neither the only, nor always the dominant, size effect in mineral nanoparticles. A large number of surface effects (e.g., confinement, surface charge, solvent interactions, and surface reconstruction) modulate electronic structure. The kinetics of charge, energy, and material transfer also change at the nanoscale. Geochemical processes are dynamic, and significant size-dependent changes in reaction kinetics may affect processes in natural systems. The impact of nanoparticles on biogeochemical processes can depend on the kinetics of competing pathways. For example, the ability of photoexcited electrons in nanoparticles to reduce biomolecules is governed by the rates of several size-dependent processes that may enhance reactivity or dissipate energy without reaction. Furthermore, the products of various (photo)reduction experiments can be different for nano- versus micron-sized particles, indicating a size effect on reaction pathways (Müller et al. 1997). We start by discussing small-size effects in individual particles. However, nanoparticles are frequently observed to be intimately aggregated, with significant consequences for their behavior in biogeochemical systems.
PHYSICAL STRUCTURE AND COMPOSITION OF NANOSCALE MINERALS Thermodynamic constraints on the structure of nanoparticles One of the better-understood ways that size can influence the structure of nanomaterials is through interfacial energy effects on phase stability. This topic was reviewed in detail by Banfield and Zhang (2002) and Navrotsky (2002). In brief, when a compound can exist in more than one structural form (polymorph), a change in the relative stabilities of the structural variants may occur as the consequence of differences in their surface energies. This effect is only likely at small particle sizes, for which surface areas are large. For example, sizedependent phase stability may explain the precipitation of the hexagonal polymorph of ZnS (wurtzite) in place of the cubic form (sphalerite) in sediments or aqueous solutions, despite the
114
Gilbert & Banęeld
higher stability of sphalerite compared to wurtzite in bulk materials up to temperatures over 1000 °C (Scott and Barnes 1972; Qadri et al. 1999; Zhang 2003). However, it should be noted that kinetic effects may also lead to the production of metastable phases (amorphous or highly disordered materials), especially in low-temperature systems where precipitation rates are fast (Schwertmann et al. 1999; Wolthers et al. 2003). It can be difficult to assess whether an observed nanophase is thermodynamically stable or metastable. It can also be difficult to evaluate the structure and natural abundance of amorphous or highly disordered materials.
The nature of the initial precipitates and subsequent aging For many minerals formed at low temperature or by biological processes, the initial precipitates are reported to be amorphous or highly disordered, possibly hydrated nanoparticles. Examples include amorphous iron sulfides, hydrous ferric oxide (HFO), and layered Mn(IV) oxides. These initial materials themselves do not grow beyond the nanoscale, and instead undergo crystallization, dehydration, or other transformations to mineral phases that may subsequently grow. It is widely thought that extracellular bacterial surfaces provide sites for heterogeneous nucleation that lower the free energy barrier for precipitation (Fortin et al. 1997; Warren and Ferris 1998). This model is widely used to describe the precipitation of ferric iron as a result of the activity of iron oxidizing bacteria (Douglas and Beveridge 1998; Ferris 2005). The model is challenged, however, by a recent study of Rancourt et al. (2005), on the precipitation of HFO in the presence of nonmetabolizing bacteria. They showed that while Fe(III) ions adsorb onto functional groups on bacterial surfaces, they remain external to the structure of HFO particles that subsequently form. Rancourt et al. argue convincingly that both inorganic and biological HFO formation always occurs via fast homogeneous precipitation. There is also uncertainty as to the role of biological factors in affecting transformations that occur in nanoparticles after precipitation. While aqueous conditions (solution chemistry, pH, temperature), rather than their inorganic or biological origins, should govern the evolution of mineral precipitates (Konhauser 1998), comparative studies of the structure and reactivity of biominerals versus synthetic analogs frequently reveal differences. The presence of organic matter is thought to be a crucial factor (Ferris 2005). Furthermore, microbial metabolism frequently generates aqueous ions (e.g., Fe(II), or small organic molecules) that can interact with and stabilize or destabilize mineral surfaces during growth, phase transformation, and dissolution (Cornell and Schwertmann 1979; Urrutia et al. 1999; Davis et al. 2000; Thomas et al. 2004). One interesting biological effect is the observation that the association of 2-line ferrihydrite nanoparticles with bacterial cell walls confers significant stability to the mineral against hydrothermal coarsening and transformation into hematite (Kennedy et al. 2004). The stabilization effect is observed with both biogenic and abiotic ferrihydrite in the presence of bacteria. It is inferred that the nanoparticles principally grow by an aggregation-based pathway that is hindered when the particles are immobilized on cell walls. Orientated aggregation (OA) is a significant pathway for nanoparticle growth in which individual particles achieve a common crystallographic orientation (Penn and Banfield 1998). Subsequent elimination of the interfaces between oriented particles can generate larger single crystals, some of which may have unusual morphologies and properties (Banfield et al. 2000). An example of joined UO2 nanoparticles is given in Figure 4.
Size dependence of mineral solubility From the point of view of biogeochemical systems, one of the most important sizedependent materials properties is solubility. As can be seen from the following equation
Molecular-Scale Processes Involving Nanoparticulate Minerals
115
(Stumm and Morgan 1996), solubility increases as particle size decreases because the interfacial energy,J in J m−2, is a positive contribution to the total energy. ’ log K sp = log K spBULK +
2 3γ S 2.3RT
(1)
In this equation, S is the surface area per mole, R = 8.314 J mol−1 K−1 and T is the temperature in K. For ZnS, this equation predicts that the solubility of 3 nm particles of wurtzite is an order of magnitude higher than for bulk material at room temperature, assuming an effective surface area of ~100 m2/g, log KspBULK = −22.85 (Stumm and Morgan 1996) and J | 0.5 J m−2 (Zhang et al. 2003). Sphalerite nanoparticles of the same dimensions are predicted to be two orders of magnitude more soluble, assuming log KspBULK = −24.83and J | 0.8 J m−2. The accuracy of Equation (1) for quantitative predictions is limited. First, it assumes that interfacial energy is not itself size dependent, an assumption that has been questioned previously (Zhang et al. 1999). Second, accurate measurements of the interfacial energy are frequently unavailable, especially for hydrated surfaces that may additionally be coated by organic molecules. More realistic descriptions of the solubility of natural particles as a function of size, phase, and the surface chemical environment are needed.
Characterization studies of biogenic nanoparticles We briefly review recent studies of the structure of important biogenic minerals. Precise structural characterization of biogenic nanoscale materials is challenging due to the small particle size, presence of disorder, and difficulties in isolating mineral precipitates from biomass. Powder X-ray diffraction (XRD) can be a convenient approach for determining nanoparticle structure, but has limitations. First, the width of peaks in diffraction patterns depends inversely upon the number of unit cells of material that make up the diffracting atomic planes. When the number of unit cells is very small (as in nanoparticles), peaks become extremely broad, obscuring structural details and the resulting diffraction pattern resembles those from materials with only short-range order. Given these considerations, structure analysis based upon Bragg’s law can be inaccurate at the smallest particle sizes (Palosz et al. 2002). Direct simulation of diffraction patterns from small structural models can be a more accurate method (Drits and Tchoubar 1990). Furthermore, when nanoscale particles possess significant disorder, XRD-based methods of particle size determination (e.g., via Scherer’s equation; Patterson 1939) are extremely inaccurate (Wolthers et al. 2000). Pair distribution function (PDF) analysis of short-range order in nanoparticles is a promising extension of the powder XRD method (Gilbert et al. 2004; Billinge and Thorpe 1998). Nanoparticle imaging and structure analysis may be performed in the electron microscope by high-resolution transmission electron microscopy (HRTEM) and selected area electron diffraction (SAED). Bright, energy-tunable X-ray sources (synchrotrons) offer additional methods of structural and chemical analysis, including extended X-ray absorption fine structure (EXAFS), and X-ray absorption near-edge structure (XANES) spectroscopies. XANES spectra can be acquired with lateral resolution in scanning transmission X-ray microscopy (STXM) and X-ray photoelectron emission microscopy (X-PEEM). In addition, laboratory-based Mössbauer spectroscopy provides information on the chemical environment of the 57Fe nucleus. Iron oxides and oxyhydroxides. Biological and inorganic processes can lead to the precipitation of hydrous ferric oxides, as discussed above. Subsequent mineral transformations can produce nanocrystalline iron oxides including goethite or hematite (Benner et al. 2002; Hansel et al. 2003). Many environmental factors affect the mineral evolution. For example, low-temperature aging in the presence of water favors goethite formation; hematite is preferentially formed in warmer, dry environments (Cornell and Schwertmann 2003).
116
Gilbert & Banęeld
Magnetite (Fe3O4) is a common and mineralogically significant nanocrystalline iron biomineral product of the biological reduction of ferric iron. Dissimulatory iron reducing bacteria (DFeRB) utilize Fe(III) as an electron acceptor for the reduction of organic carbon (Lovely 1987; Bazylinski and Moskowitz 1997). HFO and crystalline ferric iron phases can provide a bioavailable source of ferric iron (Roden and Zachara 1996). Fe(II) released from the mineral surface can re-adsorb onto unreacted HFO, forming mixed-valence green rusts that age into nanoparticulate and poorly crystalline magnetite (Lovley et al. 1987; Sparks et al. 1990; Hansel et al. 2003). Alternative Figure 2. Thin hydrated surface layers can be ferrous iron-bearing minerals may be nanosized products of microbial metabolism. A formed, depending upon the aqueous flow thin (< 1 nm) layer of hydrated magnetite (Fe3O4) rate, the relative concentration of HFO forms on the surface of colloidal goethite particles and the organic electron donor, and the as a result of dissimilatory iron reducing bacterial presence of additional solution species metabolism. [Used by permission of Elsevier from Hansel et al. (2004) Geochimica et Cosmochimica such as phosphate and carbonate, and Acta, Vol. 68, Fig. 7e, p 3217-3229.] ferrous iron complexants (Urrutia et al. 1999; Roden et al. 2000; Fredrickson et al. 2003; Hansel et al. 2003). The rate of ferric iron reduction by Shewanella putrefaciens is correlated more with the surface area of the ferric iron substrate than the solubility of the particular ferric iron phase (Roden and Zachara 1996). However, differences in the solubility of crystalline (goethite and hematite) versus disordered (HFO) materials does affect the quantity and form of magnetite produced. Magnetite formation during the bioreduction of goethite and hematite is apparently limited to approximately 1 nm thick rinds on the initial ferric iron particles (Hansel et al. 2004), as shown in Figure 2. Similar mineral transformations are produced by Fe(II) adsorption onto synthetic iron oxides (Tronc et al. 1984, 1992). Manganese oxides. Numerous microorganisms can enzymatically or indirectly facilitate the oxidation of aqueous Mn(II) by O2 at far higher rates than inorganic pathways, although the biological function(s) of this activity is still unclear (Tebo et al. 1997, 2004). Two recent studies of fresh biogenic material (from the bacterium Pseudomonas putida and from spores of the marine Bacillus sp. strain SG-1) reached similar conclusions on the structure of the first-formed product (Villalobos et al. 2003; Bargar et al. 2005). The material is a hexagonal phyllomanganate assembled from stacked layers of Mn(IV) octahedra with considerable rotational stacking disorder (turbostratic disorder), plus a high negative structural charge due to Mn(IV) vacancies. (For a complete introduction to the complex crystal chemistry of manganese oxide materials, see Burns and Burns 1979, Villalobos et al. 2003, and Tebo et al. 2004). These freshly formed biogenic minerals contained very little Mn(III). By contrast, aged biogenic oxides (Bargar et al. 2005) and Mn(IV) oxides found in soils were observed to have vacancies or Mn(IV) substitution by Mn(III) or heterovalent cations (Fig. 3b) (Isaure et al. 2005; Manceau et al. 2005). Mn(III) incorporation follows the autocatalytic oxidation of surface-sorbed Mn(II), which is an important factor in abiotic transformation of the biogenic mineral. The precipitation and aging of biogenic Mn oxides is depicted in Figure 3a. Sulfides. Transition metal sulfide minerals are common products of the metabolism of sulfate-reducing bacteria. In the case of iron sulfides, the first formed material is thought to be
Molecular-Scale Processes Involving Nanoparticulate Minerals
Figure 3. a). Scheme of the biogenic oxidation of Mn(II), the formation of disordered MnO2 and subsequent aging to layered Mn(IV) and Mn(III) mineral products in the presence of aqueous Mn2+. [Reprinted from Bargar et al. 2005.] b). Layered Mn(IV) oxides found in soils are commonly found to host Mn(III) in octahedral coordination and can incorporate Zn in either tetrahedral or octahedral coordination. The presence of lower valence Mn or other elements will have the potential to introduce electrons into the semiconducting MnO2 sheet. [Used by permission of Elsevier from Isaure et al. (2005) Geochimica et Cosmochimica Acta, Vol. 69, Fig. 7f, p. 1173-1198.]
117
amorphous, but further growth and mineral transformation leads to the production of numerous crystalline phases (Benning et al. 2000; Wolthers et al. 2003). Observed biogenic iron sulfide minerals include mackinawite (tetragonal FeS), pyrite (cubic FeS2), marcasite (orthorhombic FeS2) greigite (Fe3S4) and pyrrhotite (Fe7S8). The exact mineral product is highly dependent on solution chemistry (Benning et al. 2000). It has been proposed that the sorption of ferrous iron to functional groups on cell surface membranes provides sites for heterogeneous nucleation, but as discussed above, sorption and precipitation processes may be independent. Iron sulfide minerals including FeS and FeS2 are generally found to be sulfur deficient (Luck et al. 1989), but it is not known whether this is enhanced or suppressed in nanoscale particles. Disordered biogenic phases concentrated by magnetic separation were reported to have a high capacity for cation sequestration (Watson et al. 2000). Disordered nanocrystalline mackinawite exhibits an expanded lattice that incorporates water molecules, and possibly hydroxyl groups, cation impurity atoms, and sulfur vacancies (Wolthers et al. 2003).
Even in the presence of ferrous iron, alternative minerals may precipitate if thermodynamically favored. Labrentz et al. (2000) observed that highly pure ZnS nanoparticles are formed in close proximity to sources of dissolved ferrous iron. A common feature of biogenic ZnS nanoparticles is the presence of stacking faults and wurtzite nanoparticles, probably reflecting the low free-energy difference between the sphalerite and wurtzite phases (Figure 4, and see Moreau et al. 2004). Interestingly, recent studies on synthetic mixed-phase ZnS nanoparticles have indicated a significant effect on the profile and size of the semiconducting band gap (H. Zhang, personal communication). Other minerals. The reduction of U(VI) in the aqueous uranyl ion (UO22−) to form insoluble uraninite (UO2) nanoparticles can take place as a by-product of microbial metabolism involving sulfate (Fig. 4; Suzuki et al. 2002) or iron reduction (Lovely et al. 1991; Fredrickson et al. 2000). Uraninite nanoparticles can also form abiotically following the reduction of uranyl by ferrous iron (O’Loughlin et al. 2003). Suzuki et al. (2002) used HRTEM to document the presence of biogenic UO2 nanoparticles as small as 1 nm in diameter, and EXAFS spectroscopy to infer that the average particle size is ~1.5 nm. Given the presence of 2–4 nm particles, this result suggests that ultra-small particles or molecular clusters are abundant. The U-O bond length exhibited a 0.007 nm contraction
118
Gilbert & Banęeld
Figure 4. Left. High resolution transmission electron microscope (HRTEM) image of biogenic ZnS nanoparticles formed by sulfate reducing bacteria (SRB). The upper nanoparticle has the wurtzite ZnS structure. The lower ZnS nanoparticle contains a mixed sphalerite-wurtzite stacking sequence. [Reprinted from Moreau et al. (2003).] Right. HRTEM of UO2 nanoparticles formed by SRB. Two joined UO2 nanoparticles show a characteristic necking profile indicating that oriented aggregation is an active growth pathway (top left). Image courtesy of Yohey Suzuki.
relative to bulk UO2, indicating the presence of significant surface strain, and an associated increase in solubility. By estimating a relationship between surface stress and interfacial energy, and assuming negligible size-dependent changes in compressibility, this observation was used to predict a billion-fold increase in the solubility of biogenic uraninite relative to the bulk mineral. The uncertainties in the assumptions required for this calculation emphasize the need for additional studies on nanoparticle structure, elastic properties, and solubility.
The effects of water and other surface-bound molecules on nanoparticle structure As the medium in which minerals form, water itself is a key player at every stage in the precipitation and evolution of nanoparticles at and near the Earth’s surface. Rapid precipitation pathways frequently lead to structural incorporation of water molecules. While the interactions between water and bulk mineral surfaces have been an area of intense study (Hochella and White 1990; Henderson 2002), there are relatively few structural or calorimetric studies on solvent interactions with nanoparticle surfaces (but see Navrotsky 2004). Nevertheless, it has been shown that nanoparticle surface interactions with water can be strong and decisive in stabilizing particular mineral structures. Diffraction studies in controlled environments have shown that surface hydration is an important factor in the surface and interior structure of ZnS and J-Fe2O3 nanoparticles (Zhang et al. 2003; Belin et al. 2004). In these examples, changes in surface hydration caused dynamic structural responses in the nanoparticles. Zhang et al. (2003) demonstrated that adsorption of water drove a structural transformation in ZnS nanoparticles at room temperature without any change in particle size. The waterdriven reaction was not reversible. However, the desorption and re-adsorption of a more volatile solvent (methanol) does cause reversible structural changes, and it is inferred that the activation barriers for structural rearrangements in these nanoparticles are small enough that they can be overcome by surface interactions at room temperature. The findings from the study of ZnS nanoparticles do not imply that natural nanoparticles will always find their energy minimum state, given their size and surface chemical environment.
Molecular-Scale Processes Involving Nanoparticulate Minerals
119
But they do emphasize that the dynamic response of the atoms in a nanoscale particle will permit this under certain circumstances. Other groups have sought a description of the phase stability of mineral nanoparticles, based upon surface interactions in the framework of equilibrium thermodynamics. It was recently argued that, because of the high surface area of nanoparticles, the adsorption of hydroxyl groups or oxyanions onto HFO nanoparticles represents a significant change in the stoichiometry, one that can affect the thermodynamic stability of the nanoparticle-sorbate system (Fukushi and Sato 2005). Vayssiéres et al. (1998) interpreted the pH dependence of the phases of iron oxide nanoparticles synthesized with aqueous methods to indicate that the enthalpy of surface adsorption is a governing thermodynamic contribution. Lodziana et al. (2004) have used molecular simulations to describe the very high stability of the hydroxylated T-Al2O3 (110) surface as a thermodynamically stabilized (i.e., negative interfacial energy) material. However, such characterizations remain controversial, because in the absence of clearly reversible transitions it is difficult to assess whether the observed material is the true thermodynamically stable state. The observations that surface ligands can direct the structure of a nanomaterial may be directly relevant to low-temperature biogeochemical systems. In these environments, small mineral particles are closely associated with solute molecules including small organic compounds, and high molecular weight polymers including proteins and polysaccharides. These compounds may represent a biological influence on the structure of nanoparticles in aqueous systems. In general, molecular simulations that have incorporated realistic surfacesolvent or surface-ligand interactions have revealed strong interactions that stabilize both the surface and interior structure of nanoparticles (Pokrant and Whaley 1999; Rabani 2001; Zhang et al. 2002; Kerisit et al. 2005).
Incorporation of impurity atoms Contaminants (e.g., Zn, As) and nutrients (e.g., phosphate) are readily adsorbed on, coprecipitated with, and incorporated into mineral nanoparticles (Watson et al. 2000; Gunnars et al. 2002; Hochella et al. 2005a,b) and (photo)redox cycles of nanoscale iron and manganese oxides and oxyhydroxides can cause the incorporation and release of these species (Isaure et al. 2005). Since it is widely observed that the availability and transport of aqueous ions is highly correlated to their interactions with colloidal particles (Kimball et al. 1995; Brown et al. 1999), important aspects of nutrient and contaminant biogeochemistry depend on their association with mineral nanoparticles. Furthermore, the reactivity of the nanoparticles themselves can be strongly modified by the incorporation of even low concentrations of impurity atoms. For example, the incorporation of 0.2 mol% Zn into pyrite drastically affects surface photochemical behavior, with no detectable structural modifications (Büker et al. 1999). As explained below, impurity atoms can introduce additional electronic energy levels that can affect mineral reactivity. An understanding of the factors controlling impurity atom incorporation in nanoparticles remains incomplete, both in the materials and earth sciences. As with bulk materials, the ability of nanoparticles to host impurities depends on the structural characteristics of the solid, the size and charge discrepancy between the impurity and intrinsic ion, and the response of the structure to the structural perturbation associated with ion incorporation (Cornell and Schwertmann 2003; Fistul 2004). Careful combined X-ray absorption, X-ray diffraction and structure modeling studies are required to elucidate the crystal chemistry of incorporated atoms in disordered minerals (Isaure et al. 2005; Manceau et al. 2005) Defects such as ion substitutions or vacancies have an associated enthalpy from which their mean concentration can be calculated, assuming thermodynamic equilibrium. However,
120
Gilbert & Banęeld
distributing the same number of defects in nanoparticles rather than bulk material would result in the vast majority of nanoparticles being defect-free. Furthermore, there may be an impurity exclusion effect, as solid-state diffusion times to the surface are likely to be quite short (Tang et al 2003). Consequently, the presence of detectable impurity concentrations in nanoparticles is likely to indicate favorable kinetic pathways, rather than thermodynamic equilibrium. An important advance in modeling and predicting impurity incorporation is the recent proposal that it is the affinity of dissolved impurity ions for the surface of a growing nanoparticle that is the key factor determining eventual incorporation (Erwin et al. 2005; commentary by Galli 2005). The excess energy of the impurity once it is in the host lattice is not the dominant factor. Rather, it is the rate of impurity adsorption and desorption at specific surface sites relative to nanocrystal growth kinetics. The implication is that the fast precipitation reactions that follow microbially mediated changes in the oxidation state of environmental ions such as iron, manganese and sulfur might be effective at scavenging reactive aqueous species. There is considerable empirical evidence for significant impurity concentrations in natural nanoparticles. For example, disordered Mn(IV) and Fe(III) oxides and oxyhydroxides are commonly observed to account for the majority of transported contaminant ions (Hochella et al. 2005a,b). Certain impurity atoms can affect the phase stability or enhance the crystallinity of biominerals (Davis et al. 2000; Webb et al. 2005). It is of interest to determine whether the miscibility of substances that form solid solutions is affected by small particle size. For example, bulk ferric iron oxides can accommodate homovalent cation substitution (e.g., Cr3+ and V3+) to 5–10 mol% (Schwertmann et al. 1989; Schwertmann and Pfab 1994), and bulk ZnxFe1−xS forms a solid solution for all values of x (Vaughan and Craig 1978). There are presently no investigations into the stability of these materials as nanoparticles. Most effort has been directed to the production of technological materials. In particular, the introduction of Fe3+ and Cr2+ into TiO2 nanoparticles creates photocatalysts with higher yields (Zhang et al. 1998; Bryan et al. 2004), and the doping of Mn2+ into ZnS nanoparticles enhances their luminescence efficiency (Yu et al. 1996).
The surfaces of nanoscale minerals The surfaces of materials have many distinct structural and electronic properties relative to the bulk or the interior. Surfaces host, mediate, or participate in all relevant biogeochemical processes involving minerals. Decades of surface science provided considerable knowledge about mineral surface structure and surface chemical interactions. However, all such work has been performed on the surfaces of bulk minerals, and it can be argued that the surface science of nanoscale minerals is just beginning. It might be reasonable to expect, a priori, that the constituents of nanoparticle surfaces will include facets and defects (such as edges or vertices) very similar to those found on bulk mineral surfaces, perhaps with a few additional types. However, the results of certain experimental and theoretical studies indicate that this model may be seriously misleading. Zinc sulfide nanoparticles in the 1–5 nm diameter size range are observed to possess significant interior distortion, which is inferred to be provoked by extreme reconstruction at the surface (Gilbert et al. 2004). This model is supported by molecular dynamics calculations showing highly distorted surfaces that, because of high surface curvature, bear little resemblance to facets of bulk minerals (see Fig. 5). Large-scale molecular simulation of goethite nanoparticles within a dissociating model of water, and with dimensions below 10 nm, accumulate protons at highly charged edge sites to a far greater extent than is anticipated from models with simple slab geometries (Fig. 5) (Rustad and Felmy 2005). Nanoparticle surfaces may additionally be stoichiometrically distinct from the interior, as has been determined recently for the surfaces of bulk hematite (Glenn Waychunas, personal communication).
Molecular-Scale Processes Involving Nanoparticulate Minerals
121
Figure 5. Molecular modeling studies predict that the surfaces of mineral nanoparticles will exhibit local structural and charge that are distinct from the surfaces found on bulk materials. Left. A cross-section through a molecular dynamics (MD) simulation of the structure of a fully hydrated ~ 3 nm diameter ZnS nanoparticle. No recognizable facets are present on the high curvature surface. Zinc (sulfur) atoms are black (gray); water molecules are white. MD simulation (unpublished) performed by H. Zhang. Right. MD simulations of hydrated goethite nanocrystals predict high protonation along edges at the high angle intersections of (110) faces. The inhomogeneous surface charge distribution could not have been predicted from experimental or theoretical studies of bulk surfaces, and can dominate the effective charge of nanoparticles with certain morphologies. The high edge protonation is favored by ready solvation at high angle edges (high dielectric sites) and by the local high bacisity of edge Fe-O sites (sites labeled 1–3). [Used by permission of Elsevier from Rustad and Felmy (2005) Geochimica et Cosmochimica Acta, Vol. 69, Fig. 6, p. 1405-1411.]
Also, partial transformation caused by surface oxidation or reduction can lead to the formation of maghemite (J-Fe2O3) layers on magnetite surfaces, and magnetite films on HFO or hematite (cf. Fig. 2) (Hansel et al. 2004). Studies of the mechanism and geometry of adsorbate binding to nanoparticle surfaces are one approach to compare the surfaces of bulk and nanocrystalline minerals. Mercury, arsenic, and copper are known to attach to the surface of goethite (D-FeOOH) via inner sphere coordination and thus are suitable test sorbates for goethite nanoparticles. The coordination environment of Hg adsorbed to 5 nm diameter goethite nanoparticles is modified relative to sorption sites on larger particles, with an expansion of the 2nd and 3rd shell He-O and Hg-Fe distances (Waychunas et al. 2005). However, no significant size-dependent changes in the sorption geometry of As(V) or Cu(II) were detected. At present, there is no general framework for describing nanoparticle surfaces, and both practical and theoretical approaches require considerable development. Modern X-ray methods that probe the structure of water and the chemistry at mineral surfaces must be adapted to the surfaces of nanoparticles (Eng et al. 2000; Cheng et al. 2001).
ELECTRONIC STRUCTURE OF NANOSCALE MINERALS Introduction to electronic structure of solids Electronic structure is key to the reactivity of materials. The electrochemical potential of electrons in solids drives chemical reactions that underpin many of the Earth’s biogeochemical
122
Gilbert & Banęeld
cycles. Thus, we begin this section with an introduction to the electronic structure of solids in a form that will permit size-dependent effects and molecular scale reactivity to be addressed. The quantum theory of solid-state materials gives the best quantitative description of electrons in solids and is presented in numerous texts (Ashcroft and Mermin 1976). It is briefly recapped here with an emphasis on the analogies between bonding in molecules and in periodic crystals. Approximate descriptions of electrons in solids. The enormous number of atoms and electrons in solids renders exact solutions of electronic and nuclear motion utterly intractable, and requires drastic simplifying assumptions. The following are two of the most important. First, the nuclear motion is considerably slower than electronic motion, and hence the nuclei are assumed to be static during calculations of electronic structure. Second, the behavior of only a single electron is considered, with an averaged description of the influences of all other electrons and nuclei. Within the framework of this single-electron approximation, Schrödinger’s Equation can be written:
[ Ek + V (r )] ψi (r ) = Eiψi (r )
(2)
Equation (2) relates the total energy, Ei, and wavefunction, \i(r), of an electron in a state i to its kinetic energy, Ek, and to the potential, V(r), within which it moves. The potential energy term principally contains the electrostatic potential of each atomic site, and defines the energy landscape in which the electron moves. An important additional contribution to V(r) describes (approximately) the correlated interactions with all other electrons. Collectively, the energy terms are called the Hamiltonian, H, which completely defines the possible electronic states for a given system. The wavefunction is the most complete description attainable for a quantum particle and represents the probability of finding the particle within an infinitesimal volume of space. The simplest model of size effects on electronic structure relies on the description of an electron traveling freely in space. For a given electron momentum, described using the wave vector k, the energy of a free electron is given by E=
=2 k 2 2 me
(3)
where me is the mass of the electron and = = h/2S, where h is Planck’s constant. For numerous materials, the electrons that participate in chemical reactions can be considered as free electrons, but with a modified effective mass, me*. The effective mass captures the effect of the periodic structural environment on the propagation of wave-like electrons within the material. Assuming that the mobility of an electron in a material does not vary with particle size, me* is obtained from a first-principles calculation of the electronic structure of a bulk material (i.e., by obtaining the solutions of Eqn. 2). Solutions of Schrödinger’s equation. There are two important concepts that permit effective solution of the single electron Schrödinger’s equation for bulk materials. First is the realization that the solution wavefunctions (or orbitals) possess the same symmetry as the spatial distribution of atoms with which they are associated. Atoms (and hence the wavefunctions of atomic electrons) possess spherical symmetry. Orbitals that are centered on atoms in a molecule possess the point symmetry of that site; and, as bulk crystals fill space with identical unit cells, the electronic wavefunctions of periodic crystals possess translational symmetry. The last statement is known as Bloch’s theorem, and provided the foundation for an explosive growth in solid-state physics during the 20th century. The second principle is that a wavefunction can be expressed as a linear combination of any set of basis functions that are mathematically complete. This is
Molecular-Scale Processes Involving Nanoparticulate Minerals
123
exactly analogous to the use of Fourier series to represent an arbitrary function. An example of this approach is molecular orbital theory, in which a linear combination of atomic orbitals is used to describe new electronic states formed when atoms bond. It permits the efficient numerical simulation of electronic structures, because realistic electronic wavefunctions can be built up as a combination of computationally convenient basis functions. As wavefunctions are (in principle) independent of the choice of basis functions, there is an equivalence between choices. This can be seen by comparing the results of real-space cluster calculations and momentum-space band-structure calculations for the same mineral. Band structure calculations give similar results for the energy positions of electronic levels (bands) in solids that can be derived from cluster calculations, but additionally show how the energy-momentum relation varies with direction of travel in a crystal. An example for sphalerite, the cubic modification of ZnS, is given in Figure 6. The bulk electronic structure of a material is the starting point for understanding the properties and reactivity of nanoparticles of that material.
Energy levels in semiconductor minerals An important focus of this chapter is the role that nanoparticles play in redox reactions in biogeochemical systems. It is necessary, therefore, to introduce the concepts used to describe the behavior of electrons in bulk and nanosized systems. With a few exceptions, biogenic minerals are semiconductors or insulators.
Figure 6. Small cluster (ZnS46−) molecular orbital and full band structure calculations provide approximately equivalent descriptions of electronic bonding in ZnS. The band structure shows how the momentum-energy relation for a delocalized electron traveling within the crystal is modulated by the periodic lattice for various directions of travel. The wave vector, k, is related to the momentum and the symbols on the abscissa axis represent specific directions with respect to the crystal lattice. Integrating over all directions at each electron energy gives the density of states (DOS), i.e., the number of electronic states within a small energy width. Cluster calculations are less accurate than band structure calculations for delocalized electron semiconductors, but correctly show the atomic contributions to the electronic bands. The band gap, which separates the occupied and unoccupied electronic levels is shaded gray. ZnS is a direct semiconductor: no change in momentum is required for electronic transitions from the top of the valence band (VB) to the bottom of the conduction band (CB). The Fermi level, EF lies between the VB and CB. Effective Mass Approximation (EMA) considers only the electronic states at the top of the VB and the bottom of the CB, as indicated by the dashed oval. The band structure is approximately parabolic in this region (E v k2), indicating that the electrons and holes can be modeled as free particles with an effective mass, m*. Cluster energy levels after Vaughan and Sherman (1980). Band structure and DOS calculations used by permission of the American Physical Society, from Wang and Klein (1981) Physical Review B, Vol. 24, Fig. 5, p. 3393-3416.
124
Gilbert & Banęeld
The valence and conduction bands and the band gap. The valence band (VB) and conduction band (CB) in solids are the exact analogs of the highest-occupied molecular orbitals (HOMO) and lowest-unoccupied molecular orbitals (LUMO) in molecules. The Fermi energy, EF, can be considered the electronic electrochemical potential within the material. For insulators and semiconductors, EF lies between the (completely occupied) VB and (empty) CB. When a valence electron is excited (by thermal energy or by light absorption) and acquires sufficient energy to jump to the conduction band, a charge deficit, or hole, is created in the VB that acts just like a mobile positive charge. The electronic band gap is the energy required to excite an electron into the conduction band and move it out of the electrostatic field associated with the hole that is created. The spatial scale that defines this distance is the Bohr radius, the radius of the lowest-energy bound state of an electron-hole pair that are mutually attracted because of their opposite electrostatic charges. Such a bound pair is called an exciton. The conductivity of minerals. Electronic conductivity requires mobile charge carriers in bands that are not completely occupied. Energy bands in solids are occupied with electrons up to the Fermi level. Hence, at zero temperature, metallic behavior is expected in a pure solid if the Fermi level lies within a band, while insulating behavior is expected if it lies between bands. At higher temperatures, and for sufficiently small band gaps, thermal energy can excite electrons in the vicinity of the Fermi level. The promotion of a small number of electrons to the conduction band can enable conduction via both CB electrons and the associated VB holes. Pure materials that conduct by this mechanism are called intrinsic semiconductors. For some crystal structures, electronic transitions between the top of the VB and the bottom of the CB require exchange of momentum between the electron and vibrations of the lattice (phonons). Materials in which excitation across the band gap is phonon-assisted are called indirect semiconductors. Solids in which bonding arises from the interactions of s or p atomic levels follow the above description closely. However, other materials are anticipated to be metallic according to the above criteria, but are measured to be very poor conductors (Cox 1995). This is because when bonding involves partially occupied d or f levels, two additional factors can limit electron and hole mobility. First, low overlap between atomic orbitals of neighboring atoms can lead to the localization of outer shell electrons on a single atomic site. Second, energetic barriers may exist that limit charge transfer between neighbors. The origins of such barriers may be associated with electron repulsion or correlation energies, or may be structural. There is a continuum from highly localized to highly itinerant electronic behavior within which many environmentally relevant transition metal oxides and chalcogenides fall. In numerous iron-bearing materials, magnetic ordering of electrons below a threshold temperature can abruptly change the electronic properties from those of an itinerant semiconductor to localized insulator. Even for some bulk minerals such as hematite (Fujimori et al. 1986) and magnetite (Park et al. 1997; Todo et al. 2001), controversy remains with regard to the nature of the VB and CB electronic states. These distinctions, and controversies, persist in nanoscale particles. An additional important class of materials are the extrinsic semiconductors. Impurity atoms or point defects can provide electronic states within the band gap of an insulator or intrinsic semiconductor. The energy required to excite electrons or holes to or from these states can be significantly lower than transitions across the full band gap. Consequently, even very low concentrations of impurities can dominate the conductivity of bulk minerals. The charge carriers introduced into a solid by impurities or defects can be itinerant or localized just as the carriers introduced from atoms intrinsic to the material. Consequently, the incorporation of impurities during nanoparticle nucleation and growth can have a significant effect on reactivity.
Molecular-Scale Processes Involving Nanoparticulate Minerals
125
Many of the partly occupied d-shell configurations found in iron- and manganese-bearing compounds have associated magnetic properties. A review of nanoscale magnetism is given by Rancourt (2002). Electron hopping conduction mechanisms. Localized electrons or holes experience an energy barrier against transfer to neighboring atomic sites, but at finite temperatures the thermal energy of the system may be sufficient to overcome the barrier. Thus, localized charge carriers can be mobile through a “hopping” mechanism from site to site. An important example is that of the small polaron, an electron or hole that is transiently trapped at each site because of the distortion of the immediate lattice that it provokes, and which follows it. As with any process with an activation energy barrier, mobility increases with increasing temperature. A theoretical treatment of hopping conductivity (Cox 1995; Rosso et al. 2003) originated from a model electron-transfer reactions between ions in solution (Marcus 1993; Barbara et al. 1996), and is also applicable to charge and exciton transfer between nanoparticles (Adams et al. 2003; see below). Quantum mechanical tunneling is an alternative mechanism that may dominate for acceptor-donor distances less than 14 Å, and is utilized by many proteins and electron shuttles (Moser et al. 1992; Page et al. 1999). Tunneling processes do not pass through an intermediate higher energy state and are therefore distinct from the hopping mechanism. Consider the transfer of an electron from a donor (D) to an acceptor (A). The donor could be a reductant in solution or a site in a crystal that has trapped an electron. D + A l D+ + A−
(4)
The rate of electron transfer, ket, has an Arrhenius-type dependence: ⎛ ΔG * ⎞ ket = κν exp ⎜ − ⎟ ⎝ kBT ⎠
(5)
where 'G* is the Gibbs free energy of an intermediate state (the activation energy), kB is Boltzmann’s constant, and N is a prefactor for a given system. Thermal motions of the atomic nuclei bring the system into the most favorable configuration for charge transfer with a certain frequency, given by Q. In the intermediate state, the electron overlaps with both the donor and acceptor. The major contribution to the activation energy is the reorganization energy associated with the geometry of the intermediate state. The activation energy also includes electrostatic interactions between the electron and the atoms or molecules that coordinate the donor and acceptor, such as near-neighbor atoms in a crystal or hydrating solvent molecules. Hopping-based conductivity in minerals is generally highly anisotropic, as determined by the crystal structure and electron spin ordering. For example, conduction in hematite occurs predominantly along the (001) basal planes (Rosso et al. 2003). Conduction in magnetite involves the octahedral sites on which Fe(II) and Fe(III) ions are distributed to the exclusion of purely Fe(III) tetrahedral sites (Cox 1995). As motion of the atoms is required for the system to reach the intermediate state, modifications in the vibrational properties of nanoparticles at small size (e.g., Gilbert et al. 2004) may significantly affect charge (or impurity) transport.
Electronic structure of nanoparticles Pure size-dependent modifications of electronic structure substantially depend on the extent to which the valence electrons are delocalized. When the dimensions of a semiconductor are similar to the Bohr radius, an electron and hole can never be so far apart that the interaction between them can be neglected. Consequently, the lowest energy excitation is not equivalent to the bulk band gap, as defined above, but contains additional terms, principally the (positive) confinement energy and the (negative) electron-hole Coulomb interaction. The confinement energy dominates and the nanocrystal exhibits an increase (or blue-shift) in its band gap. Band
126
Gilbert & Banęeld
gap opening is readily observed with ultra violet–visible (UV-vis) absorption spectroscopy, but the individual shifts of the VB and CB are not obtained with this approach. Combined Xray absorption and X-ray emission spectroscopies can resolve the size dependent trends in the energy positions of the occupied and unoccupied bands (Fig. 7). The electronic structure of bulk materials with delocalized electrons is well modeled by band structure methods (using translation symmetry). It is obvious, however, that even the most crystalline nanoparticle lacks long-range periodicity. To date, two approaches have been adopted to deal with this. Effective mass approximation (EMA). Virtually all geochemically relevant optical and redox behavior of materials involves the charge carriers in the vicinity of the top of the VB or the bottom of the CB (region of interest circled in Fig. 6). The effective mass approximation (EMA) is an approach that describes how a perturbation in a material (such as finite size) affects these electrons and holes, disregarding all others. It assumes that the mobility of
Figure 7. Quantum confinement causes shifts in the absolute energy positions of both the valence band maximum (VBM) and the conduction band minimum (CBM). Left. Soft X-ray emission (SXE) and soft X-ray absorption (SXA) spectroscopy provide information on, respectively, the density of occupied and unoccupied electronic states of a material. Spectroscopy at the sulfur L-edge provides the density of states (DOS) with d-character. The d-weighted DOS fine structure and position varies with size for CdS nanoclusters. Right. The energy shifts in the VBM and CBM are plotted versus particle size. The experimental results are compared to theoretical calculations using the infinite potential (IP) vs. finite potential (FP) effective mass approximation (EMA) and tight-binding real-space cluster calculations (TB). Ultraviolet absorption spectroscopy provides only the energy spacing between VBM and CBM. [Used by permission of Elsevier, from Lüning et al. (1999) Solid State Communications, Vol. 112, Figs. 1 & 2, p. 5-9.]
Molecular-Scale Processes Involving Nanoparticulate Minerals
127
electrons and holes (represented by the effect mass, and determined by the crystal lattice) is unchanged in nanoparticles. The size-dependent shifts in absolute energy positions of the VB and CB are given by the confinement energy of a hole and electron, respectively. The simplest EMA theory considers an infinite confining potential at the nanoparticlesolvent interface. Simple analytical expressions are obtained for spherical nanoparticles of radius d: 0 ∞ EVB ( d ) = EVB −
2 = 2 π2 ; d 2 mh*,in
0 ∞ ECB ( d ) = ECB +
2 = 2 π2 d 2 me*,in
(6)
In this expression, ECB0 and EVB0 are the CB and VB energy positions for the bulk material, and me,in* and mh,in* are the effective masses of the electron and hole inside the nanoparticle. Brus (1984) was the first to consider quantum confinement effects on the redox potential of nanoscale solids, and his predictions for CdSe with an infinite potential are shown in Figure 8. The energy step at the interface must result from either the electron affinity of a solid (~5 eV) or the band gap of the surrounding medium (3.8 eV for aqueous systems, Memming 2001). Several authors have shown that a significant quantitative improvement to the EMA is obtained when a finite confining potential is considered (e.g., see Fig. 7) (Tran Thoai et al. 1990; Schoos et al. 1994; Lüning et al. 1999). Exact analytical expressions are no longer obtained, and electron and hole energies are generally obtained numerically. However, Ferreyra and Proetto
Figure 8. a). Effective mass approximation (EMA) calculations of the size-dependent redox potentials of CdS nanoparticles participating in (photo)redox half-reactions. [CdS]− = negatively charged CdSe nanoparticle. [CdS]= = doubly charged particle. [CdS]* = photoexcited nanoparticle. [Used by permission of the American Institute of Physics, from Brus (1984), Journal of Chemical Physics, Vol. 80, Fig. 2, p. 4403-4409.] b). The size dependence of the energy positions of the valence band (solid lines) and conduction band (dotted lines) of ZnS, FeS2 and hematite at pH 2. Calculations based on the EMA (Eqn 6, main text) with a 4 eV confining potential and effective masses obtained from Wang and Klein (1981), Edelbro et al. (2003), and Guo (2005). Also shown are the stability limits of water. As calculated by Sherman (2005), the redox potential for the reduction of ferric iron in hematite (Fe2+/D-Fe2O3) lies below the hematite CB at pH 2. Hence photoreductive dissolution following photoexcitation of the mineral is possible under these conditions. AVS = absolute vacuum scale; NHE = normal hydrogen electrode.
128
Gilbert & Banęeld
(1999) provide an approximate expression for the confinement energies in a finite confining potential. For a spherical particle of diameter d and a confining potential Vout outside: 0 ∞ EVB ( d ) = EVB − EVB (1 − δh );
0 ∞ ECB (d ) = ECB + ECB (1 − δe )
( 7)
where Ge = with an equivalent expression for Gh. For particles in water or air, it is generally assumed that me,out* = mh,out* = me, the mass of the free electron. Holes are perfectly confined, so that Vh,out = f and Gh = 0. [=/(dme,in*)](8me,out*/Ve,out)½,
In the so-called strong confinement regime (for nanoparticle radius similar to or less than the Bohr radius), the electron and hole can be considered as individual particles. Then the band gap is obtained from difference in the size dependent VB and CB energy positions, plus the additional term resulting from the electrostatic interaction of the electron and hole pair. The band gap, Eg, for the same particle considered above is: ⎧⎪ 2 =2 π2 ⎡ 1 ⎫⎪ 1 ⎤ e2 ⎡ ( δ + δh ) ⎤ Eg ( d ) = Eg0 + ⎨ 2 ⎢ * + * ⎥ − Ee∞ δe − Eh∞ δh ⎬ − 3.6 ⎢1 − e ⎥ εd ⎣ 4 ⎦ ⎩⎪ d ⎢⎣ me,in mh,in ⎥⎦ ⎭⎪
(8)
where e is the charge on an electron and H is the high frequency dielectric constant of the bulk semiconductor. In this expression, Eg0 is the band gap of the bulk, the second term considers the kinetic energy of the electron and the hole (i.e., the confinement energy—this is an alternative version of Eqn. 7) and the smaller third term is the Coulomb attraction between electron and hole (see discussion in Nanda et al. 2004). Effective mass values may be found directly in the literature (e.g., Landolt-Bernstein 1983) or estimated from band structure calculations (e.g., Edelbro et al. 2003). Limits and extensions of the EMA. The EMA tends to overestimate the band gap in quantum confined materials, even when a finite confining potential is used, an effect that is exacerbated at the smallest sizes. Consistent values for the effective mass can be hard to obtain from the literature; however, the EMA is only weakly dependent on the precise values for the effective mass (Gaponenko 1998; Pelligrini et al. 2005). The EMA is believed to be valid for both direct and indirect semiconductors. Absorption measurements on indirect semiconductors have shown that they retain this characteristic property down to very small sizes (~100 atoms; Delerue et al. 2001) and that confinement effects on band edge positions and band gaps are similar to those in direct semiconductors (Tolbert et al. 1994). However, the UV-vis absorption edge is generally not sharp for the indirect semiconductors, and even for well studied materials such as TiO2, this transition (which reveals the true band gap) has been confused with stronger, direct transitions to higherenergy CB states (Serpone et al. 1995; Monticone et al. 2000). The EMA assumes that there are no size-dependent changes in particle structure, but changes in structure may overwhelm confinement effects in wide band-gap, low-mobility materials. Furthermore, in narrow-band-gap semiconductors, such as PbS (Eg = 0.41 eV), the band edge states are not well approximated as free electrons, and hence quantitative agreement is poor. In such cases, the EMA underestimates the band gap (Pellegrini et al. 2005). Additional refinements of the EMA approach have been performed. Examples include the treatment of multiple bands in the VB and CB (Efros and Rosen, 2000), and inclusion of surface polarization terms (Brus, 1986). Nanda et al. (2004) discuss variations of the finite potential EMA for nanoparticles with slab (2D) and rod (1D) geometries. Many of the above methods assume that important material constants for nanoparticles, such the dielectric constant or the effective mass of the relevant charge carrier(s), are unchanged relative to bulk materials. These assumptions are presently untested. However,
Molecular-Scale Processes Involving Nanoparticulate Minerals
129
recent calculations indicate that the dielectric response of a material change very little with decreasing size, with the exception of small near-surface effects (Cartoixa and Wang 2005). Real-space cluster models. As discussed above, band structure and real-space depictions of electronic structure are highly complementary approaches. Real-space methods discard all assumptions of symmetry and are thus suited to nanoparticles. However, they carry a significant price, because whole-nanoparticle simulations must treat hundreds of non-equivalent atoms, while band-structure calculations consider only the number of atoms in a unit cell. The most important input to a cluster calculation is the atomistic real-space structural model itself. Nanoparticle structures are generally assembled by hand, or with classical molecular dynamics structure optimization, and the uncertainty in the structures derived in these ways are a major limitation for subsequent electronic structure calculations, no matter how sophisticated. The nature and structure of nanoparticle surfaces remain particularly obscure, because no experimental method is presently able to directly visualize it. Obviously, uncertainties surrounding the true structures of nanoscale materials cause equally great uncertainties in anticipating their electronic properties. Nevertheless, atomistic simulations provide the clearest visual depictions of nanoparticle structure (Rabani 2001; Pokrant and Whaley 1999) and have played an invaluable role in evaluating theoretical approximations such as the EMA (Lippens and Lannoo 1987; Wang and Zunger 1996; Franceschetti and Zunger 1997). Simulations that are performed with care are experiments in silicio, useful for evaluating and predicting mechanisms or trends in behavior that can be tested experimentally (Zhang et al. 2003; Rustad and Felmy 2005; Kerisit et al. 2005; Erwin 2005). Real-space cluster calculations will prove essential for understanding the electronic structure in complex environmental nanoparticles for which simple models such as the EMA are not applicable (O’Connor and Sposito 2004). Ideally, electronic and physical structure would be simultaneously optimized, as implemented by the Car-Parinello method (Car and Parrinello 1985; Galli and Parinello 1992). The “Quantum Monte Carlo” simulations by the Galli group have demonstrated the value of this approach for showing the effects of surface reconstructions on the electronic structure of nanoclusters (Puzder et al. 2003). However, nanoparticles of diameter greater than ~2 nm remain large even for efficient first-principle calculations. Solvent effects on nanoparticle electronic structure. An interesting consequence of a finite confining potential is that tails of the electron or hole wavefunctions extend into the medium surrounding the particle, as depicted in Figure 9. This generally has a slight effect on the energies of the electron and hole states. However, solvents with a high dielectric constant can stabilize nonuniform charge distributions at the surface (Rustad and Felmy 2005), enhancing the strength of dipolar interactions between nanoparticles (Rabani 1999) and can permit solvent-mediated conductivity (Brus 1996), as discussed below. The simplest approach for estimating solvent effects on electronic energy levels in nanoparticles is to treat the solvent as a continuum characterized by a dielectric constant (Qu and Morais 1999; Rabani et al. 1999; Franschetti et al. 2000). However, it is clear from decades of research on mineral-water interfaces that a continuum description of water is severely limited (Hochella and White 1990). In fact, we require a much more complete description of the nanoparticle–electrolyte interface. Interfacial electrochemistry of nanoparticles. When a solid material is immersed in an electrolyte such as water, redistribution of charge carrying species occurs on both the solid and liquid sides of the interface. This process can produce significant shifts in the absolute energy positions of electronic states at the interface, and hence affect the redox properties of the bulk mineral or nanoparticle.
130
Gilbert & Banęeld
Figure 9. The effect of the height of confining potential on the energy levels and wavefunctions of an electron in a nanoparticle can be illustrated by the simple “particle in a box” model. Shown are the three lowest energies, Ei, and wavefunctions,
When the two phases touch, the system as a whole reaches thermodynamic equilibrium by equating the electrochemical potentials for all species in the material and the electrolyte. As introduced above, the electrochemical potential for an electron in a semiconductor is equal to the Fermi energy, EF, which lies between the valence and conduction bands. The electrochemical potential associated with the electrolyte is related to the redox potential of the system. The half reaction for a redox reaction in the electrolyte can be written: Red l Ox + e−
(9)
The reduced and oxidized species in Equation (9) are alternate states of a single system in which an electronic orbital is occupied or unoccupied, respectively. The electronic energies of these states are not equivalent because the solvent cannot reorganize to a ground state configuration on the time-scale of electron transfer reactions, and EOx > ERed. Thus, the reduced and oxidized states of the redox system are analogous to the occupied (valence band) and unoccupied (conduction band) states in a solid, and we may define an effective Fermi energy for the solution, EF,redox, that lies midway between EOx and ERed. The electrochemical potential, μi , of an ion, electron, or other species, i, is equal to its chemical potential, Pi, plus an additional term for each charged species if it resides within an electric field. μi = μi + zi F φ
(10)
The additional energy term is the product of the charge on the species, zi, the local electrostatic potential, I, and Faraday’s constant, F. The relation between the chemical potential, Pi, and the activity of ion i is given in many textbooks (Lyklema 2001). The electrochemical potential for the electron in Equation (9) is defined as the difference in the values for the oxidized and reduced species, μ e,redox = μ Red − μOx. (Memming 2001). The electrolyte Fermi energy, EF,redox (in eV), is then related to μ e,redox (in J mol−1), by EF ,redox =
e μ e,redox F
(11)
For the solid phase and aqueous phase Fermi level concepts to be directly comparable, they must be expressed in the same units on the same energy scale, typically in eV on the absolute vacuum scale (AVS). The redox potential associated with a half reaction such as
Molecular-Scale Processes Involving Nanoparticulate Minerals
131
Equation (9) is usually expressed in V relative to the normal hydrogen electrode (NHE) or other electrode. As discussed by Xu and Schoonen (2000), the energy of an electron in an energy band can be converted to the associated redox potential by the relation E (NHE, V) = −E (AVS, eV) − 4.5
(12)
At equilibrium, EF = EF,redox, which requires charge redistribution. Electrons flow into the solution from the material and change the concentration of redox species if EF > EF,redox, and vice versa. This changes the potential at the interface, lowering the free-energy difference due to the term ziFI in Equation (10) until equilibrium is attained. The VB and CB states at the interface are affected by the local potential, a phenomenon called band bending, as depicted in Figure 10. Energy levels further from the interface than the Debye length, LD, are shielded from the effect of the interfacial potential because of the dielectric properties of the solid. LD is typically greater than 100 Å, depending on the density of charge carriers. Thus, surface charges are not well screened in particles of dimensions smaller than this, and the electronic bands are flat (but shifted) throughout a nanoparticle, as illustrated in Figure 10. This depiction assumes that the kinetics of the redox couple are fast, but it is well known that many environmental systems are far from thermodynamic equilibrium (Schüring et al. 2000). Electric double layer. The distribution of aqueous ions near the surface of a mineral in water is affected by the presence of an electrostatic potential at this interface. Such surface
Figure 10. Semiconductor particles immersed in water reach equilibrium by donating or accepting electrons from solution until the electronic electrochemical potential (the Fermi level) is constant throughout. The Fermi level in the solution is determined by the redox couple(s) in solution. In micrometerscale particles, the change in local charge carrier density causes shifts in VB and CB energy levels (band bending) over a space charge region, dSC. The direction of band bending depends on whether holes (p-type) or electrons (n-type) are the dominant charge carriers (the results for an n-type semiconductor are shown). For nanometer-scale particles of diameter d < dSC the electronic bands inside the entire particle are shifted. The positions of the nanoparticle CB and VB are shown shifted both due to surface charging (which lifts the CB and VB energy positions) and by quantum confinement (which increases the CB-VB separation). After Memming 2001.
132
Gilbert & Banęeld
potentials can be created by equalization of the Fermi levels in the solid and the electrolyte (as described above) and by the chemisorption of charged solution species to the mineral surface. For a given mineral surface, strongly interacting charged species are called potential determining ions (PDI) (Lyklema 2001). For example, H+ and OH− are PDI for metal oxides, while HS− can be a PDI for sulfide minerals (Bebie et al. 1998). The pH driven shifts in oxide band energies are quantitatively described by the Nernstian relation that predicts a shift of 0.059 V/pH at 25 °C and 1 atmosphere pressure. However, there are apparently no experimental tests of this relation for nanoscale particles. Similarly, although nanoparticles (and colloids in general) act as ready sorbents for inorganic and organic ions and molecules, the effects of different sorbates on band positions are generally not known. The adsorption of redox active solution species seldom affects the energy band positions.
REDOX BEHAVIOR OF NANOPARTICLES Having completed a brief review of the factors that affect the energies of electronic bands in solids, we are now able to apply this knowledge to the (photo)chemical reactions of nanoparticles. The fundamental reactions in which nanoparticles can participate are depicted in Figure 11.
Size effects on nanoparticle redox behavior The modification of the absolute valence and conduction-band energy levels is a predominant effect on redox behavior when it occurs. As discussed above, doping of a semiconductor, sorption of potential determining ions, and finite particle size may all contribute to such effects. Examples of size effects on redox potential. As shown by Brus (1984), and reproduced in Figure 8a, finite size effects can have a large impact on the redox potentials of semiconductors (see also Franschetti et al. 2000). However, the extent to which valence electrons are delocalized and hence susceptible to finite size effects is unclear for several environmentally
Figure 11. Scheme of the possible redox, photochemical and charge or energy transfer reactions that can take place at the surfaces of semiconductor mineral nanoparticles. D = electron donor (or reductant); A = acceptor (or oxidant); S = surface adsorbed sensitizing ligand; VB = valence band; CB = conduction band; Eg = band gap. z− (z+) represents a negatively (positively) charged nanoparticle;z* represents a nanoparticle containing a photoexcited electron-hole pair.
Molecular-Scale Processes Involving Nanoparticulate Minerals
133
relevant materials. For example, sphalerite (ZnS) and pyrite (FeS2) are, respectively, direct and indirect delocalized electron semiconductors in which quantum confinement effects will occur. Figure 8b plots the size-dependent shifts in the VB and CB levels for these materials predicted by the EMA. It is presently difficult to anticipate quantum confinement effects in environmental iron and manganese compounds for which electron and hole effective masses have not been tabulated. Nevertheless, a recent X-ray spectroscopic study identified an increase in the band gap of hematite nanorods ~ 4 nm in diameter by approximately 0.3 eV (Guo 2005). UV-vis spectroscopy of encapsulated iron oxide nanoparticles also indicated size-dependent bandgap opening (Iwamato et al. 2000). In common with most iron (III) and manganese (IV) (oxyhydr)oxide minerals, the conduction and upper valence bands have the character of cation d-states, while the lower valence band is principally composed of oxygen p-like orbitals, although covalency in the metal-oxygen bond causes mixing in the valence band states (Cox 1992; Sherman 1984, 1985, 2005). In Figure 8b, we predict the size dependence of the hematite band gap using an estimate for the effective masses of charge carriers (assuming me* = mh*) consistent with the observations of Guo (2005). Band-gap opening, as depicted in Figure 8, will significantly affect mineral reactivity (Rodriguez et al. 1998). The predictions of Figure 8 require further experimental testing, particularly the use of combined X-ray absorption and emission spectroscopic measurements of nanoparticle band gaps (Lüning et al. 1999; Sherman 2005), and more sophisticated theoretical treatments (O’Connor and Sposito 2005). A complementary approach for understanding the electronic properties of mineral nanoparticles will be studies of the kinetics of surface reactions. Kinetics studies have been used to determine the relative reactivities of different iron minerals to surface redox or complexation reactions (Hering and Stumm 1990; Elsner et al. 2004; Poulton et al. 2004; Peak 2005). Such studies provide a method for determining size-dependent changes in surface reactivity (see below; Madden and Hochella 2005). The roles of surface states. Atoms at the surface of a material are not generally able to attain the same coordination environment that is present within the interior. Thus, atomic sites at a surface may exhibit modified local electronic structure that in some cases can introduce energy levels within the band gap of a semiconductor or insulator (Morrison 1980). Surface states can therefore have the same effect as interior impurity atoms, either facilitating the creation of mobile electron or hole charge carriers or acting as traps for them. For example, underbonded surface anions can donate electrons into the CB of the mineral (cf. Fig. 16). Surface states can also mediate the transfer of charge between an adsorbate and states within a mineral or between two aqueous or adsorbed reagents. In addition, the trapping of electrons at surface states can affect the lifetime of photoexcited electrons and holes, and can determine the rate of electron transfer between neighboring particles (see below). The above phenomena occur at the surfaces of both bulk minerals and nanoparticles. The surfaces of nanoparticles are structurally more diverse, and molecular simulations indicate that inhomogeneous charge distributions can occur at nanoparticle surface and edge sites, modifying the surface Lewis acid or base characteristics relative to large particles (Lucas et al. 2001; Noguera et al. 2002; Rustad and Felmy 2005). Scanning tunneling spectroscopy (Preisinger et al. 2005) and optical luminescence spectroscopy (Chen et al. 1997) are approaches for detecting surface states that lie in the electronic band gap. However, environmental nanoparticles and their synthetic analogs are poorly studied. Undercoordinated surface sites tend to be more reactive and hence are frequently the sites at which molecules bind to nanoparticle surfaces. In place of the initial surface states, new
134
Gilbert & Banęeld
surface-ligand molecular orbitals are formed, with discrete energy levels that may no longer reside within the band gap. While ligand binding has been extensively studied for the removal of mid-gap states in engineered nanoparticles (e.g., Green and O’Brien, 1999), ligand binding can also create (photo)redox active mid-gap energy states (e.g., Rajh et al. 2002)
Examples of nanoparticle redox behavior Nanoparticles as molecular-like redox active solution species. Nanoparticles can accept or donate electronic charge, and in this sense can be considered redox active species. Figure 12 shows that CdS nanoparticles can diffuse to, and react with an electrode in an electrochemical cell in a manner similar to an aqueous ion (Kukur et al. 2003). The potential at which the nanoparticles can be reduced (i.e., charged by a single electron) varies with particle size in agreement with confinement effects. However, even for nonaggregated nanoparticles, diffusion rates are considerably slower than dissolved ions or molecules (Scholz and Meyer 1998). The Brownian diffusion rate for nanoparticle transport is given by the Stokes-Einstein equation: D=
kBT 6 πηr
(13)
where K is the solution viscosity, and r is the particle radius. The implication of the results of Figure 12 is that nanoparticles are available to participate in molecular redox reactions with aqueous ions and biomolecules. Below, we discuss the important issue of the stability of individual nanoparticles during (photo)redox reactions. The example above is one of a number of experimental investigations of the charging of nanoparticles that was conducted at electrochemical electrode (Haram et al. 2001; Kukur et al. 2003; McKenzie and Marken 2001). In nature, redox active solution species can inject electrons into the conduction band of a mineral, provided that the redox potential of the aqueous redox reaction is more negative than the position of the CB minimum. For example, Cd(II) and Co(II) can be oxidized on the surface of ZnO and manganese (IV) oxides, respectively (Murray and Dillard 1979; Manceau et al. 1997). In the opposite direction, electrons may transfer from the mineral VB to a strongly oxidizing organic species such as ascorbic acid, which can cause the direct oxidation of manganese oxide minerals (Stone and Morgan 1984; Stumm and Morgan 1996). A negatively charged nanoparticle is free to act as a reductant with a suitable acceptor species. If further charge transfer to the nanoparticle carries an energy penalty (see below),
Figure 12. Semiconductor nanoparticles exhibit molecular-like redox behavior with size-dependent redox potentials. Electrochemical oxidation of a solution of CdSe nanoparticles in acetonitrile at a gold electrode shows a clear trend with increasing particle size (a to d). The position of the oxidation peak (Ep) indicates the valence band maximum and the trend is in quantitative agreement with an effective mass approximation calculation of electronic confinement energies. a = 3.23 nm diameter; b = 3.48 nm; c = 3.73 nm; d = 3.8 nm. [Used by permission of the American Institute of Physics, from Kucur et al. (2003) Journal of Chemical Physics, Vol. 119, Fig. 3, p. 2333-2337.]
Molecular-Scale Processes Involving Nanoparticulate Minerals
135
additional reactions with donor species are not favored the excess charge has been lost. An important question is whether oxidant and reductant must be simultaneously surface bound, or whether charged nanoparticles can be formed that are sufficiently stable in solution to act as reactive intermediates. The direct reaction scheme can be written D < O > A o D+ < O > A−
(14)
where O > D represents donor species D adsorbed onto a nanoparticle. Alternatively: D < O o D+(aq) + [O]−
(15a)
[O] + A(aq) o O > A
(15b)
−
−
For electron transfer reactions, the donor (or acceptor) species and the nanoparticle must (1) have a redox potential that coincides with electron energy bands in the minerals, and (2) attain sufficient wavefunction overlap with these bands (Huber et al. 2000). Many singleelectron transfer reactions can occur via electron tunneling to or from species bound to the surface by outer-shell adsorption. However, ligand-particle electron transfer rates are greatly enhanced by surface complexation (Moser et al. 1991); and certain charge transfer reactions, particularly involving Fe d-electron states, require inner-sphere surface coordination to proceed at all (e.g., Ennaoui and Tributsch 1986). The possibility of multiple oxidation states of nanoparticles. The energy required to singly charge a solvated nanoparticle (Fig. 11a) is sensitive to both the nanoparticle size and the dielectric constant of the solvent (Franceschetti et al. 2000). The addition of subsequent electrons to an already charged nanoparticle is possible, but additional energy may be required to compensate for Coulomb repulsion if there is electronic overlap between CB electrons (Brus 1984). In this case, nanoparticles can behave more like atoms with variable redox states (Banin et al. 1999), than bulk minerals within which excess charges may diffuse apart. Atomic-like redox behavior would lead to a quenching of bioreductive processes involving nanoparticles, because the successive charging energies would eventually exceed the reducing power of extracellular electron shuttle molecules. However, this is not observed for the biological reduction of ferric iron minerals, since phases with higher surface areas (i.e., smaller particle size) are more completely reduced (Roden and Zachara 1996; Hansel et al. 2004). For minerals composed of atoms susceptible to valence changes, mineral dissolution is an effective pathway for shedding excess charge. Furthermore, in the small polaron model of charge transport in localized carrier materials, an additional electron at an iron site is spatially localized within a radius less than the near-neighbor bond length (Cox 1992). This implies that interactions between multiple ferrous iron sites will be weak, and that the energy required to add an electron to a ferric iron nanoparticle will not depend on the number of excess electrons already hosted, in contrast to the behavior of delocalized band semiconductors. Reductive transformation of halogenated organic contaminants. Many relevant investigations have been motivated by the desire to identify natural pathways for immobilizing or transforming organic or inorganic contaminants. For example, Fe(II) adsorbed to the surface of ferric iron and non-iron-containing minerals can be a powerful reductant, one that can transform hazardous chlorinated hydrocarbons such as carbon tetrachloride (CT) (Pecher et al. 2002; Elsner et al. 2004) and chromate (Wielinga et al. 2001). Mineral surfaces that stabilize the Fe(III) product of the oxidation of surface-bound Fe(II) can lower the Fe(II)Fe(III) redox potential (Stumm and Morgan 1996; Amonette et al. 2000; Pecher et al. 2002). Structural Fe(II) in mixed-valence iron oxide compounds such as magnetite, particularly biogenic magnetite nanoparticles, can also transform CT. As shown by Figure 13, numerous electron shuttle molecules used by anaerobic DFeRB also possess reduction potentials that can degrade CT, and co-metabolic pathways
136
Gilbert & Banęeld
Figure 13. Structural Fe(II) in biogenic magnetite nanoparticles (shown in TEM image, left) is a potent reductant of halogenated organic solvents. Although the redox potentials of common biological electron shuttle molecules are also sufficient to drive the reduction of carbon tetrachloride (right), the mineral nanoparticle driven process is almost 100 times more effective. [Used by permission of the American Chemical Society, from McCormick et al. (2002), Environmental Science and Technology, Vol. 36, Figs. 1 & 4, p. 403-410.]
do contribute to the natural attenuation of this compound. However, in laboratory studies, biogenic magnetite is approximately two orders of magnitude more effective than biomolecular pathways (McCormick et al. 2002; McCormick and Adriaens 2004). Nanoscale magnetite also reduces U(VI) to U(IV) under anaerobic conditions (following surface adsorption) much more rapidly than occurs in solution under reducing conditions (Missana et al. 2003). Surface-promoted redox reactions. Bulk mineral surfaces can mediate charge transfer between solution species that otherwise interact too weakly for effective redox pathways. For example, sulfide minerals—including pyrite, galena, and several doped sphalerite minerals— catalyze the oxidation of thiosulfate to tetrathionate by dissolved molecular oxygen (Xu and Schoonen 1995). A significant nanosize effect was recently observed for hematite-promoted Mn oxidation (Madden and Hochella 2005). While the oxidation of aqueous Mn(II) by oxygen is very slow at pH < ~8.5, it may be promoted following adsorption to mineral surfaces. Surface hydroxyl groups (denoted >OH) mediate electron transfer from molecular oxygen to adsorbed manganese, facilitating the reaction: Mn 2+ +
1 3 OH O2 + H 2O ⎯>⎯⎯ → Mn(III)OOH + 2H + 4 2
(16)
As shown in Figure 14, the kinetics of this reaction, normalized to surface area, exhibit an increase of more than one order of magnitude for 7 nm diameter hematite nanoparticles compared with 37 nm particles. Madden and Hochella (2005) discuss the possible origins of this striking enhancement of reactivity. Hematite energy bands do not play a direct role in this process; hence, electronic confinement effects are unlikely to be responsible. Possible explanations of the rate enhancement may be understood from Marcus’s original description of the rate of electron transfer (Marcus 1993). By setting 'G* = ('G° + O)2/4O in Equation (5),
(
⎛ ΔG o + λ ket = κν exp ⎜⎜ − 4λkBT ⎜ ⎝
)
2
⎞ ⎟ ⎟ ⎟ ⎠
(17)
where 'G° is the standard free energy of the reaction (positive or negative) and O is the reorganization energy (always positive). Size-dependent changes in either 'G° or O are plausible and would modify the reaction kinetics, provided that electron transfer is the rate-limiting step.
Molecular-Scale Processes Involving Nanoparticulate Minerals
137
Figure 14. The rate of heterogeneous oxidation of Mn(II) promoted by 7 nm and 37 nm diameter hematite nanoparticles. The smaller hematite nanoparticles promote oxidation at a rate that is almost two orders of magnitude larger than the larger particles. [Reprinted with permission of Elsevier, from Madden and Hochella (2005) Geochimica et Cosmochimica Acta, Vol. 69, Fig. 5, p. 389-398.]
For example, it is likely that the redox potential of Mn(II) adsorbed to the smaller particles is shifted because of a size-dependent modification in the Lewis base character of oxygen atoms on the surface of the hematite to which Mn adsorbs (Noguera et al. 2002, Lewis et al. 2001). If this drives the 'G° of Reaction (16) more negative, Mn oxidation would not only be more favorable, but ket would increase. Alternatively, small particles may exhibit a higher density of surface sites at which the coordination geometry of adsorbed ions is distorted from the perfectly octahedral configuration preferred by Mn(II). However, Mn(III) complexes tend to prefer a distorted octahedral coordination. Therefore, if the smaller nanoparticles possess greater surface disorder, less structural reorganization may be necessary for the reaction to proceed. This effect would reduce O, thereby increasing ket The results of Madden and Hochella (2005) demonstrate that the redistribution of both charge and atoms at the surfaces of nanoparticles may strongly influence their reactivity. EXAFS investigations into changes in the coordination environment of Mn(II) bound to hematite nanoparticles in the absence of oxygen may help evaluate these two models.
PHOTOCHEMISTRY A photon of energy greater than the band gap can excite a valence electron to the CB, which leaves a vacant orbital (hole) in the VB. The excited electron (hole) has the ability to reduce (oxidize) chemical species at the surface of the nanoparticle. As with redox chemistry, the ability to do this depends on the absolute electron or hole energy, and hence can be affected by particle size (and pH), as described above.
Size effects on nanoparticle photochemistry Kinetics of recombination and reaction. Following photoexcitation of a nanoparticle, several processes can occur that facilitate or prevent reaction, and these processes may exhibit distinct small-size effects (Gratzel and Frank 1982; Gerischer 1993). Diffusion of an excited electron or hole to the surface and transfer to surface species competes with the recombination of the electron-hole pair and trapping at surface states (Zhang 2000). The transit time to the surface varies as the square of the particle radius, and is generally less than 1 ps for few-nm
138
Gilbert & Banęeld
diameter particles (Gratzel and Frank 1982; Huber et al. 2000). The recombination time is principally material dependent, with a weak size dependence caused by enhanced electronhole overlap. Since the recombination time is generally in the range 0.1–1 ns, exited electrons have a far greater probability of reaching the surface of nanoparticles than larger colloidal particles, such as >100 nm diameter iron oxide colloids, in which most electron-hole pairs recombine before reaching the surface (Leland and Bard 1987). Nanoparticle surface states can act as traps for excited electrons with lifetimes that may vary by many orders of magnitude for different nanoparticles. If a photoexcited electron or hole is scavenged by a solution or surface species, recombination within the nanoparticle is no longer possible, and the nanoparticle can remain excited for a considerable time (e.g., minutes) (Leland and Bard 1987). Because both a hole and electron are created following light absorption, both cathodic (i.e., reduction) and anodic (i.e., oxidation) reactions are possible at a nanoparticle surface and may proceed in very close proximity. The kinetics of these reactions are seldom equivalent, providing an opportunity for reaction intermediates to interact. Several studies have concluded that competition between the above processes, plus variation in surface area:volume ratio, leads to an optimum particle size for the maximum efficiency of a given photoreaction that is frequently in the 5–20 nm diameter range (Wang et al. 1997; Almquist and Biswas 2002). Reactions requiring multiphoton absorption. The probability of a photoexcited nanoparticle absorbing a second photon declines with particle size for statistical reasons (Wang et al. 2003), and hence reactions requiring rapid multielectron transfer are highly unlikely for nanoscale particles under environmentally relevant illumination conditions. For example, the products of the photooxidation of ethanol are different for micron-sized versus nanometer-sized ZnS colloids (Müller et al. 1997). Under constant illumination, transfer of two photoexcited holes to adsorbed ethanol can occur readily within 200 ns on the surface of the larger particles. By contrast, the mean time to create two holes in a nanoparticle reaches several seconds, permitting partially oxidized ethanol radicals to diffuse into solution and form more complex organic species. Shifts in electronic band energy positions. The effect of particle size on the photoredox activity of nanoparticles can be illustrated through analogy, with the effect of pH on the photoreduction of methylviologen ions (MV2+) at the surface of colloidal TiO2 particles (Duongdong et al. 1982). The half-reaction, MV+ l MV2+ + e−, has the redox potential E0 = −440 mV versus NHE that is independent of pH. By contrast, the electrochemical potential of the TiO2 CB varies with pH as ECB (TiO2) = ECB (TiO2, pH 0) – 0.059(pH) V (vs. NHE)
(18)
As shown in Figure 15, photoexcited electrons in the CB are sufficiently reducing only above pH around 4–5. Photoreduction of MV2+ is thermodynamically forbidden below this pH threshold. As shown below, for materials that exhibit size-dependent shifts in CB position, thresholds in particle size can exist below which photoredox reactions are enabled. For completeness, it should be recalled that changes in pH can strongly affect the affinity of ionic sorbates to surface binding sites, particularly around the point of zero surface charge (pHzpc) for a material (Kormann et al. 1991). Such effects can complement or compete with shifts of the nominal redox potentials of CB electrons and VB holes.
Nanoparticle interactions with biomolecules It is clear from the study of environmental colloids that mineral surfaces can exhibit high affinities for organic molecules (Yariv and Cross 1979; Amal et al. 1992; Tiller and O’Melia 1993), and many groups have demonstrated effective surface binding of molecules to sulfide
Molecular-Scale Processes Involving Nanoparticulate Minerals
139
Figure 15. The photoreduction of methylviologen (MV) at the surface of TiO2 colloids shows a strong pH dependence. a). The energy position of the TiO2 conduction band (CB) displays a linear Nernstian response to increasing pH, while the redox potential of the MV+/MV2+ couple is pH independent. b). The yield of the reduced aqueous ion MV+ vs. pH shows a strong increase around the pH at which electrons in the TiO2 CB are more reducing than MV+. Used by permission of the American Chemical Society, from Duongdong et al. (1982), Journal of the American Chemical Society, Vol. 104, Pages 2977-2985, Figure 4.
and oxide nanoparticles via assorted terminal functional groups. In particular, biomolecules such as amino acids, phospholipids, siderophores, and even DNA have been shown to stabilize sites on nanoparticle surfaces (Konovalova et al. 1999; Jones et al. 2000; Torres-Martínez et al. 2001; Dwarakanath et al. 2004). Recent studies have addressed the detailed electronic structure associated with functional groups on bacterial surfaces, including the position of the Fermi level (Vyalikh et al. 2004; Ireta et al. 1998), which will permit quantitative treatments of nanoparticle-microorganism interactions. As discussed above, strong chemical interactions can create new electronic states in the mineral, modifying (photo)redox reactivity. The coupled redox reactions of iron and manganese oxides and biomolecules play a vital role in the transformation of organic matter and the production of humic materials. Interestingly, while hydrated biofilms may considerably coat the surfaces of minerals, they appear not to seriously hinder the surface adsorption and reaction of either small molecules or metal cations (Templeton et al. 2003; Toner and Sposito 2005), although certain aqueous ions may partition between mineral surface sites and organic functional groups depending upon pH (Warren and Haack 2001). Roles of adsorbed surface species in redox and photochemistry. The complexation of surface atoms of a nanoparticle by adsorbed molecules can introduce additional electronic states within the semiconducting band gap (see Figs. 11f and 16), a phenomenon termed sensitization. Sorbates can significantly increase the rate of photochemical reactions, because the photon energy threshold for creating an excited electron or hole in electronic bands of the nanoparticle can be greatly reduced (Konovalova et al. 1999; Rajh et al. 2002). Charge injection from the adsorbate to the nanoparticle is generally extremely fast (< 0.1 ps), while electron transfer back to the adsorbate, which would permit electron-hole recombination, may take milli- or even microseconds (Moser et al. 1991; Huber et al. 2000).
140
Gilbert & Banęeld
A series of important experiments by the group of Rajh have shown that organic molecules possessing enediol groups (–CHOH=COH–) bind to and hybridize with several metal oxide nanoparticles (Fig. 16, Rajh et al. 2002). This process is particularly efficient because undercoordinated cations on the surfaces of Fe2O3 and TiO2 nanoparticles sit within considerably distorted sites. Ligand binding restores local octahedral symmetry and is energetically very favorable. Furthermore, Rajh et al. (2004) showed that single-stranded DNA binds to the surface of TiO2 nanoparticles and retains the ability to hybridize with complementary DNA. Following direct photoexcitation of the nanoparticle, charge transfer occurs readily onto double stranded DNA, but not single-stranded DNA.
Figure 16. Organic molecules containing the endiol group sorb readily to the surfaces of hematite nanoparticles and introduce electronic states into the mineral band gap. These surface ligands “sensitize” the nanoparticles: much less energy is required to excite electrons in these mid-gap states to the mineral CB, enhancing the probability of generating excited electrons with high reducing power following light illumination. After Rajh et al. 2002.
Examples of nanoparticle photochemistry Photofixation of CO2. There is a considerable technological effort behind using colloidal particles for harvesting solar energy, not only for electrical energy production, but also for performing benign photochemistry, such as the splitting of water (Bard and Fox 1995) or the photocatalytic degradation of organic environmental pollutants (Hoffmann 1995). Following Inoue et al. (1995), the photoreductive “fixation” of atmospheric CO2 has been studied by many groups. In most engineered systems, this pathway has always been rather inefficient, although several groups have claimed improvements using chalcogenide nanoparticles including ZnS and CdS (Fujiwara et al. 1997; Fujiwara et al. 1998). The reaction begins with the step: >CO2 ⎯hν ⎯→ >CO2• −
(19)
where >CO2• − indicates a surface-bound CO2 radical. CO2• − is extremely reactive and, following desorption into water at pH 7, produces formic acid (HCOOH), CO, and H2 (Fujita and DuBois 2003). First-principles calculations have shown that two effects (one structural, one purely electronic) can together explain the experimental observation that nanoparticles of CdSe are capable of photofixation of CO2 (Wang et al. 2002), a process not observed for bulk CdSe (Nedeljkovic et al. 1986). As shown in Figure 17, CO2 molecules may chemisorb at Se
Molecular-Scale Processes Involving Nanoparticulate Minerals
141
Figure 17. Nanoparticles of CdSe can catalyze a step in the photostimulated fixation of molecular CO2, a role that bulk CdSe cannot play. Left. CO2 adsorbed at a site of a selenium vacancy on the nanocrystal surface achieves electronic overlap with the nanoparticle band structure. Following light absorption by the nanoparticle, a conduction band (CB) electron can be transferred to the CO2. The reactive charged molecule has a low barrier for desorption. Right. Energetic diagram for the photoexcitation of CO2. Nonbonding electrons on surface Se atoms produce localized occupied states above the valence band (VB) maximum in the band gap. Light absorption can excite these electrons to the CB. Due to confinement effects, CB electrons in nanoparticles less than ~5 nm in diameter are sufficiently high in energy to transfer to the lowest unoccupied molecular orbital of CO2. The CB minimum in bulk CdSe lies at too low an energy for this step to proceed. After Wang et al. 2002.
vacancies on a nanocrystal surface. Because the CB lies at higher energy in the nanocrystals than in the bulk, photon absorption creates an excited electron with a redox potential capable of reducing the sorbed molecule to produce a reactive charged radical, with a low energy barrier to desorption. Subsequent reactions can create small organic molecules such as formic acid. There is no evidence that nanoparticle production fulfills a biological role of encouraging CO2 fixation. Nevertheless, the above mechanism is one way that nanoscale minerals affect organic carbon transformations. Moreover, it illustrates the capacity for nanoscale minerals to generate reactive radicals. Photogeneration of reactive oxygen species. Photogenerated radicals derived from water or oxygen are commonly found to be reactive intermediates during heterogeneous photochemical reactions (Gerischer 1993; Hoffmann et al. 1995; Riegel and Bolton 1995; Hall 2000; Torres-Martínez et al. 2001; Garrett et al. 2005). The principal reactive species − + ) or hole (hVB ) by surface-adsorbed are formed by the capture of a photoexcited electron (eCB molecular oxygen or water, respectively: ν + >O2 ⎯h⎯ → >O2• − + hVB
(20a )
ν − → >OH• + H + (aq) + eCB >H 2O ⎯h⎯
(20 b)
Hydroxyl radicals typically remain surface bound and can be considered as holes trapped at surface states (Lawless et al. 1991), while the superoxide anion, O2• −, may diffuse into solution. Further reduction of O2• − can generate hydrogen peroxide, H2O2, but H2O2 is not evolved under anaerobic conditions. All of the reactive oxygen species can cause cellular damage (Hall 2000), and interactions between nanoparticles and biomolecules can increase the type and number of reactive oxygen species produced photochemically. For example, the yield of O2• − during photoexcitation of TiO2 is greatly enhanced by the presence of low-concentration carotenoid sensitizers (Konovalova et al. 2004). Furthermore, extracellular electron shuttles such as quinones
142
Gilbert & Banęeld
(Nevin and Lovely 2000; Newman and Kolter 2000) can act as diffusive secondary reactive intermediates that propagate cell toxicity (Bolton et al. 2000). However, certain strongly bound surface ligands such as halogenated acetic acids may be oxidized directly without a role for reactive intermediates (Pehkonen et al. 1995). The photoactivity of specific minerals cannot always be predicted from thermodynamic considerations and many environmental minerals are not well studied. The combination of sunlight and dissolved oxygen is required for significant photogeneration of cytotoxic radicals, limiting the impact of these processes to near-surface environments.
The stability of nanoparticles during redox chemistry and photochemistry Stability during redox reactions. An excess or deficiency of charge in a nanoparticle may be delocalized within electronic bands or localized at atomic sites, depending upon the mobility of charge carriers within the mineral. Redox active atoms within a nanoparticle may capture the electron or hole through a valence state change, which can lead to nanoparticle dissolution. Dissolution of insoluble ferric iron and manganese oxide minerals may occur following charge injection from a solution donor (Fig. 11a) (Hering and Stumm 1990), which can include biological electron-transfer molecules (Newman and Kolter 2000; Cheah et al. 2003) or molecular “nanowires” (Reguera et al. 2005), sufficiently reducing inorganic (Missana et al. 2003) or organic (McCormick et al. 2002) species, or photoexcited ligands (Voelker et al. 1997). Reductive dissolution of hematite. Direct electrochemical measurements of Fe2O3 nanoparticles drive dissolution, once the electrode potential is sufficiently negative to reduce the iron oxide particles (McKenzie and Marken 2001). The chemical reductive dissolution of hematite can be driven by numerous reductants (Stumm and Morgan 1996), including dissolved sulfide (Dos Santos Afonso et al. 1992; Poulton et al. 2004). When the reductive dissolution of ferric iron oxides was quantified (using a radiologically generated reductant), the amount of dissolved Fe(II) plus adsorbed Fe(II) could not account for all the reductant consumed (Mulvaney et al. 1988). The reductive dissolution of hematite can be written: Fe 2O3 + 6H + + 2e − ⎯⎯ → aFe 2+ (aq) + bFe 2+ (sorb)+ cFe 2+ (inc) + 3H 2O
(21)
where the prefactor a is the fraction of reduced iron liberated into solution, b is the fraction adsorbed at the surface, and c is the fraction of electrons incorporated in the interior of the colloidal particles (a + b + c = 2). The prefactors exhibit a strong pH dependence as expected, and vary with colloidal particle size. Around neutral pH, c ≈ 0.25 for 5 nm diameter particles, but c ≈ 0.7 for micron-sized colloids. Thus, some ferrous iron sites are indefinitely stabilized within ferric iron minerals. The partially reduced minerals are likely an intermediate step in the solid-state transformation to magnetite, perhaps with a disordered structure analogous to the that found as a thin layer upon hematite colloids (Fig. 2; Hansel et al. 2004). The partially transformed nanoparticles are reductants themselves, with an activity that depends both on the effective redox potential of structurally incorporated Fe(II) and its mobility, and partitioning between the surface and interior (Williams and Scherer 2004). As expected, higher-surfacearea particles are more effectively dissolved, but even the smallest nanoparticles retain a number of ferric sites. Stability during photoredox reactions. Many semiconductors that are stable against reductive surface processes can be subject to photocorrosion (Gerischer 1980; Memming 2001). If a nanoparticle participates in the light-stimulated reduction of an acceptor molecule, a hole remains in the VB (Fig. 11e or f). From a molecular perspective, a hole is a partially broken bond (albeit a potentially mobile one). Similarly, a photo-oxidation event (Fig. 11d) entails the production of excited electrons that may drive a local valence state change at Fe(III) and Mn(IV) sites and detachment of the atom (i.e., dissolution).
Molecular-Scale Processes Involving Nanoparticulate Minerals
143
Photoreductive dissolution of hematite. Sherman (2005) combines oxygen X-ray absorption and emission spectroscopy to determine the conduction and valence-band energy positions of bulk iron and manganese oxides and oxyhydroxides. The position of the hematite CB relative to the redox potential for hematite dissolution determines whether photoexcitation of the mineral (Fig. 11c) can lead to dissolution. Since at pH 2, E0 = 0.655 V for Fe2+/D-Fe2O3, assuming an aqueous concentration of ferrous iron to be [Fe2+] = 10 nM, and ECBhematite = 0.3 eV, direct photodissolution will occur at pH 2, but not at circumneutral pH. At pH 8.3, the bulk hematite CB is predicted to lie ~0.4 eV below the Fe2+/D-Fe2O3 couple on the AVS scale (Sherman 2005). However, as indicated in Figure 8b, hematite nanoparticles with a diameter of ~2 nm are predicted to possess sufficiently reducing CB electrons for photodissolution to proceed at pH 8. Because of the increase in the band gap, higher energy photons would be required to drive photodissolution of the smaller particles. The presence of additional solution species can also favor the photoreduction of hematite, either by sensitizing the mineral surface (Pehkonen et al. 1995) or by complexing soluble Fe(II) so that the electrochemical potential for iron reduction is made more positive (Kraemer 2004) and lies beneath the CB. Ligand promoted photoreductive dissolution of manganese oxide. Manganese oxides in the presence of dissolved organic matter are sensitive to photoreduction (Sunda et al. 1983; Scott et al. 2002; Haack and Warren 2003). Following light absorption by an adsorbed ligand (e.g., humic and fulvic acids; ascorbic acid), fast injection of an electron into the mineral VB (Fig. 11f) can drive reduction of Mn(IV) to Mn(II), which is subsequently soluble. Since this is a two-electron process, the dissolution rate will depend upon the mobility of electrons in the mineral and is likely to exhibit a significant dependence on particle size. Manganese reduction performs an important role in the redox cycling of Mn, and can impact the bioavailability of nutrient and contaminant adsorbates by releasing them into solution (Crerar et al. 1976). Daily cycles in the quantity of oxidized Mn in a biofilm of Mn oxidizers are consistent with sunlightdriven photodissolution (Bourg and Bertin 1996; Haack and Warren 2003). Photodecomposition of sulfides. Metal sulfide particles are susceptible to photodecomposition in the presence of oxygen (which acts as an electron acceptor), producing soluble metal and sulfate ions. Although stability is greater in anaerobic environments, other solution species, such as sulfite ions, can act as electron donors. For example: CdS(s) + SO32 − + H 2O ⎯hv ⎯→ Cd 0 + SO24 − + SH − + H +
(22)
While the thermodynamics of photodecomposition reactions are known in many cases (Gerischer 1980; Memming 2001), it can be hard to predict particle stability for arbitrary solution chemistry (Kormann et al. 1989).
Nanoparticle interactions with microorganisms The possibility of nanoparticle uptake. When biomineralization serves no known structural, navigational, or nutrient storage function, microorganisms almost universally attempt to restrict the precipitation of solids to the extracellular regions. The cell walls of both Gram positive and Gram negative bacteria (both negatively charged at circumneutral pH) present a considerable barrier to nanoparticle transport (Beveridge 1981; Fortin et al. 1997). However, as illustrated by Figure 18, nanoparticle precipitation frequently occurs to high densities in the periplasm. Presently, most studies on nanoparticle uptake are limited to mammalian cell lines, which in contrast to prokaryotic cells are able to acquire nanoparticles by endocytosis (Parak et al. 2002; Alivisatos et al. 2005). Mechanisms of prokaryotic nanoparticle uptake are (1) nonspecific diffusion through membranes, (2) nonspecific membrane damage-mediated uptake and (3) specific uptake following membrane binding. Metal chalcogenide nanoparticles
144
Gilbert & Banęeld
Figure 18. Transmission electron microscopy (TEM) micrograph of a 70 nm section of a sulfate reducing bacterium showing periplasmic accumulation of metal sulfide nanoparticles (dark contrast, labeled “ZnS”). Outer and inner cell membranes are marked by arrows and a mineral-free section of the periplasm is labeled “p.” Aqueous metal cations are likely brought into the periplasm as a result of weak chelation by organic acids (e.g. citrate and lactate) during nutrient uptake, where they precipitate with sulfide ions produced by sulfate reduction. Image courtesy of Ken Williams; see Williams et al. 2005.
(such as CdSe) can be internalized within both Gram positive and Gram negative bacterial species via a pyrine-dependent mechanism provided that the surface is labeled with adenine or (AMP) and that the diameter of the coated nanoparticle is less than 5 nm (Kloepfer et al. 2005). As particle uptake exhibits both a dependence on surface label and light exposure, it is likely that a combination of mechanisms 2 and 3 above is responsible for the nanoparticle uptake. Nanoparticle uptake may facilitate gene transfer. It has been shown that the association of DNA with nanoscale precipitates of calcium phosphate minerals greatly enhanced the efficiency of gene transfer into human cell cultures over what was observed for aqueous DNA in the absence of minerals (Shen et al. 2004). It was unclear whether nanoparticles acted as a vector that carried DNA into the cell, or whether the DNA was released from the nanocomposite before uptake. Nevertheless, such studies indicate that extra-cellular biomineral-associated DNA has the potential for colloid-facilitated transport within the environment, while retaining the capacity for subsequent gene transfer.
Nanoparticle aggregation and its consequences The electron micrographs of Figure 1 suggest that biogenic nanoparticles are seldom present as individual particles, but exhibit a marked tendency for aggregation and deposition onto cell bodies. These processes are governed by particle-particle and particle-cell interaction forces that include electrostatic Coulombic forces (resulting from net charge on the nanoparticle surfaces) and short-range dispersion or van der Waals forces. The classical description of colloid stability—DVLO theory—has been intensely investigated for microscopic colloids (Verwey and Overbeek 1948; Lyklema 2001), although quantitative discrepancies remain, particularly at high ionic strength (Israelachvilli 1992; Boström et al. 2001). In particular, suspensions of colloids separated by net repulsive forces are generally found to be less stable against aggregation than predicted by DVLO theory. Furthermore, the validity of this description has not been established for nanoscale particles, for which a continuum description of the electrical double layer may not be appropriate. Nanoparticle transport and settling behavior is highly affected by the colloid properties of the individual particles, but remains a difficult process to quantify (Tiller and O’Melia 1993; Elimelich et al. 1995). Nanoparticle aggregation processes are beyond the scope of this chapter, so we simply state that numerous experimental studies have shown that mineral particles can be unstable against aggregation
Molecular-Scale Processes Involving Nanoparticulate Minerals
145
at circumneutral pH, and that the resulting aggregates commonly possess a complex interior porosity with the characteristics of geometric fractals (Meakin 1988; Dickinson 1989; Amal et al. 1990; Mylon et al 2004). Charge transport in aggregated nanoparticles. Aggregates of semiconductor nanoparticles have been shown to be surprisingly efficient at transporting electrons that have been excited to the conduction band (Fig. 11g) (Wang et al. 2003). This process is initiated particularly effectively by photoexcitation of surface sensitizer molecules (Fig. 11f, where A = second nanoparticle). When the rate of back transfer is slow, the lifetime of the excited electron is sufficiently long to permit its transport to a CB of a neighboring nanoparticle. Particle-particle charge transfer separates the original electron and hole, which then persist until consumed in a chemical step, such as redox reaction or radical formation. Charge transfer between two nanoparticles occurs via a mechanism analogous to electron hopping between localized sites in a crystal. The analogy is quite good, because electronic states on the nanoparticle surfaces trap the electron between particle-particle transfer steps. Typical shallow electron traps on TiO2 surfaces are 25–50 meV below the CB (Hoffmann et al. 1995), so thermally activated transport is possible at room temperature (kBT | 25 meV at 25 °C). However, while a single activation energy barrier typically limits hopping between atomic sites in a crystal, there is generally a broad range of surface states on nanoparticles and hence a distribution of activation energies (Nelson 1999). There are now numerous measurements of the conductivity of nanoparticle aggregates. Theoretical descriptions of conductivity are based on percolation (for fractal aggregates; Avnir 1989) or diffusion models (for nonfractal compact aggregates; Nelson 1999). These approaches are not too sensitive to the details of the particle-particle transfer mechanism and can provide good agreement with experiment. The factors that determine whether electron transport occurs predominantly via nanoparticle surface or interior states remain unclear. This issue has been addressed with temperature-dependent conductivity measurements across arrays of magnetite nanoparticles. In one study on 5.5 nm diameter nanoparticles, a conductivity drop was seen below metalinsulator transition temperature, a clear sign of bulk-mineral-like conductivity (Poddar et al. 2002). In a second independent study of 14 nm particles, no temperature-dependent effect was observed, suggesting that surface-mediated conduction dominated (Redl et al. 2004). Significantly, many investigations of the conductivity through aggregated nanoparticles have been performed on dried layers of deposited particles. However, surface hydration can increase electron transport by orders of magnitude, even when direct conductivity through the liquid is not possible. As shown by Brus (1996), in a series of calculations for porous Si, electrons can couple to the dynamics of solvent molecules, which provides an activated intermediate state for transfer between particles. Charge transfer is considerably more favorable in a polar solvent than in air or vacuum because as a consequence of the solvent, the donor and acceptor energy levels do not have to be closely spaced. Exciton transport in aggregated nanoparticles. Long-range energy transfer (also known as Förster energy transfer) is an electrostatically mediated transfer of energy between two molecules or nanoparticles that have resonant excitation energies (Fig. 11h). Significant energy transfer is only possible if the acceptor has a fast-energy-loss pathway to trap the excitation that otherwise can transfer back to the donor. No activation energy is required, but diffusion of excitations is the dominant process for separations less than ~5 Å. Long-range energy has been demonstrated among aggregated nanoparticles (Kagan et al. 1996) and between nanoparticles and a surface (Achermann 2004), but it is presently not known to be significant in biogenic nanoparticle aggregates.
146
Gilbert & Banęeld CONCLUSIONS
Nanoparticles are integral constituents of water bodies, sediments, and soils, and many microorganisms that rely on an inorganic component to their metabolism inevitably interact with nanoscale minerals. Individual nanoparticles have the capacity to act as mobile redox active species that participate in molecular-style redox reactions. The redox potentials of valence and conduction band electrons, and the kinetics of charge transport and particle diffusion can exhibit a strong dependence on particle size. However, the susceptibility of minerals to dissolution upon valence change means that, in contrast to true molecular reagents, charged or photoexcited nanoparticles generally have mechanisms for transformation and energy loss that are not observed in molecular species. Biogenic nanoparticles form extended aggregates with complex structural, surface chemical and charge transport properties. The surfaces of nanoparticles and their aggregates generally exhibit strong affinity for aqueous nutrients, contaminants and organic biomolecules, including DNA, and can promote (bio)geochemical redox reactions, in some cases at significantly greater rates than observed at the surfaces of bulk minerals.
ACKNOWLEDGMENTS We thank Pupa de Stasio, Glenn Waychunas, Ken Nealson and Dan Hawkes for reviewing the manuscript, and Clara Chan, John Moreau, Yohey Suzuki, and Ken Williams for generously permitting reproduction of electron micrographs.
REFERENCES Abdelouas A, Lutze W, Gong WL, Nuttall EH, Strietelmeier BA, Travis BJ (2000) Biological reduction of uranium in groundwater and subsurface soil. Sci Total Environ 250:21-35 Achermann M, Petruska MA, Kos S, Smith DL, Koleske DD, Klimov VI (2004) Energy-transfer pumping of semiconductor nanocrystals using an epitaxial quantum well. Nature 429:642-646. Adams MA et al. (2003) Charge transfer on the nanoscale: Current status. J Phys Chem B 107:6668-6697 Alivisatos AP (1996) Perspectives on the physical chemistry of semiconductor nanocrystals J Phys Chem 100: 13226-13239 Alivisatos AP, Gu W, Larabell C (2005) Quantum dots as cellular probes. Annu Rev Biomed Eng 7:8.1-8.16 Almquist CB, Biswas P (2002) Role of the synthesis method and particle size of nanostructured TiO2 on its photoactivity. J Catalysis 212:145-156 Amal R, Raper JA, Waite TD (1992) Effect of fulvic acid adsorption on the aggregation kinetics and structure of hematite particles. J Colloid Interf Sci 151:244-257 Amonette JE, Workman DJ, Kennedy DW, Fruchter JS, Gorby YA (2000) Dechlorination of carbon tetrachloride by Fe(II) associated with goethite. Environ Sci Technol 34:4606-4613. Ashcroft NW, Mermin ND (1976) Solid State Physics. Brooks Cole Avnir D (1989) The Fractal Approach to Heterogeneous Chemistry: Surfaces, Colloids, Polymers. Wiley, Chichester Banfield JF, Nealson KH (eds) (1997) Geomicrobiology: Interactions Between Microbes and Minerals. Rev Mineral Geochem Vol 35, Mineralogical Society of America, Washington, DC Banfield JF, Navrotsky A (eds) (2001) Nanoparticles in the Environment. Rev Mineral Geochem Vol 44, Mineralogical Society of America, Washington, DC Banfield JF, Welch SA, Zhang H, Ebert TT, Penn RL (2000). Aggregation-based crystal growth and microstructure development in natural iron oxyhydroxide biomineralization products. Science 289:751–754 Barbara PF, Meyer TJ, Ratner MA (1996) Contemporary issues in electron transfer research. J Phys Chem 100: 13148-13168 Bard AJ, Fox MA (1995) Artificial photosynthesis – solar splitting of water to hydrogen and oxygen. Acc Chem Res 28:141-145 Bargar JR, Tebo BM, Villinski JE (2000) In situ characterization of Mn(II) oxidation by spores of the marine Bacillus sp. strain SG-1. Geochim Cosmochim Acta 64:2775-2778 Bargar JR, Tebo BM, Bergmann U, Webb SM, Glatzel P, Chiu VQ, Villalobos M. (2005) Biotic and abiotic products of Mn(II) oxidation by spores of the marine Bacillus sp. strain SG-1. Am Mineral 90:143-154
Molecular-Scale Processes Involving Nanoparticulate Minerals
147
Bazylinski DA, Frankel RB (2004) Magnetosome formation in prokaryotes. Nature Rev Microbio 2:217-230 Bebie J, Schoonen MAA, Fuhrmann M, Strongin DR (1998) Surface charge development on transition metal sulfides: an electrokinetic study. Geochim Cosmochim Acta 62:633-642 Bekyarova E, Fornasiero P, Kaspar J, Graziani M (1998) CO oxidation on Pd/CeO2–ZrO2 catalysts. Catal Today 45:179-183 Belin T, Millot N, Villieras F, Bertrand O, Bellat JP (2004) Structural variations as a function of surface adsorption in nanostructured particles. J Phys Chem B 108:5333-5340 Benner SG, Hansel CM, Wielinga BW, Barber TM, Fendorf S (2002) Reductive dissolution and biomineralization of iron hydroxide under dynamic flow conditions. Environ Sci Technol 36:1705–1711 Benning L, Wilkin RT, Barnes HL (2000) Reaction pathways in the Fe-S system below 100 °C. Chem Geol 167:25-51 Berhault G, Lacroix M, Breysse M, Maugé F, Lavalley JC, Nie H, Qu L (1998) Characterization of acidic sites of silica-supported transition metal sulfides by pyridine and 2,6 dimethylpyridine adsorption: relation to activity in CH3SH condensation. J Catal 178:555–565 Beveridge TJ (1981) Ultrastructure, chemistry and function of the bacterial cell wall. Int Rev Cytol 72:229-317 Billinge SJL, Thorpe MF (eds) (1998) Local Structure from Diffraction. Plenum Press, New York Bolton JL, Trush MA, Penning TM, Dryhurst G, Monks TJ (2000) Role of quinones in toxicology. Chem Res Toxicol 13:135-160 Bourg ACM, Bertin C (1996) Diurnal variations in the water chemistry of a river contaminated by heavy metals: Natural biological cycling and anthropic influence. Water Air Soil Poll 86:101-116 Boström M, Williams DRM, Ninham BW (2001) Specific ion effects: Why DLVO theory fails for biology and colloid systems. Phys Rev Lett 87:168103 Bratina BJ, Stevenson BS, Green WJ, Schmidt TM (1998) Manganese reduction by microbes from oxic regions of the Lake Vanda (Antarctica) water column. Appl Environ Microbiol 64:3791-3797 Brown GE Jr., Foster AL, Ostergren JD (1999) Mineral surfaces and bioavailability of heavy metals: a molecular scale perspective. Proc Natl Acad Sci 96:3388-3395 Brus LEA (1983) Simple model for the ionization potential, electron affinity, and aqueous redox potentials of small semiconductor crystallites. J Chem Phys 79:5566-5571 Brus LEA (1984) Electron-electron and electron-hole interactions in small semiconductor crystallites: The size dependence of the lowest excited electronic state. J Chem Phys 80:4403-4409 Brus LEA (1996) Model for carrier dynamics and photoluminescence quenching in wet and dry porous silicon thin films. Phys Rev B 53:4649-4656 Bryan JD, Heald SM, Chambers SA, Gamelin DR (2004) Strong room-temperature ferromagnetism in Co2+doped TiO2 made from colloidal nanocrystals. J Am Chem Soc 126:11540-11647 Büker K, Fiechter S, Eyert V, Tributsch H (1999) Photochemistry of highly Zn-doped pyrite as compared with isostructural FeS2. J Electrochem Soc 146:261-265 Burns RG, Burns RM (1979) Marine minerals. Rev Mineral 6:1-46 Car R, Parrinello M (1985) Unified approach for molecular dynamics and density functional theory. Phys Rev Lett 55:2471-2473 Cartoixa X, Wang LW (2005) Microscopic dielectric response functions in semiconductor quantum dots. Phys Rev Lett 94:236804 Casey, WH, Swaddle, TW (2003) Why small? The use of small inorganic clusters to understand mineral surface and dissolution reactions in geochemistry. Rev Geophys 41:1-20 Cheah SF, Kraemer SM, Cervini-Silva J, Sposito G (2003) Steady state dissolution kinetics of goethite in the presence of Desferrioxamine-B and oxalate ligands: Implications for the microbial acquisition of iron. Chem Geol 198:63–75 Chen W, Wang ZG, Lin ZJ, Lin LY (1997) Absorption and luminescence of the surface states in ZnS nanoparticles. J Appl Phys 82:3111-3115 Cheng L, Fenter P, Nagy KL, Schlegel ML, Sturchio MC. (2001) Molecular-scale density oscillations in water adjacent to a mica surface. Phys Rev Lett 87:156103 Cornell RM, Schwertmann U. (1979) Influence of organic anions on the crystallization of ferrihydrite. Clays Clay Miner 27:402-410 Cornell RM, Schwertmann U (2003) The Iron Oxides: Structure, Properties, Reactions, Occurrences and Uses. Wiley-VCH,Weinheim Cox PA (1995) Transition Metal Oxides: An Introduction to Their Electronic Structure and Properties. Clarenden Press Davis KJ, Dove PM, De Yoreo JJ (2000) The role of Mg2+ as an impurity in calcite growth. Science 290:11341137 Delerue C, Allan G, Lannoo M (2001) Electron-phonon coupling and optical transitions for indirect-gap semiconductor nanocrystals. Phys Rev B 64:193402 De Yoreo JJ, Vekilov PG (2003) Principles of nucleation and growth. Rev Mineral Geochem 54:57-93
148
Gilbert & Banęeld
Dickinson E (1989) Structure of simulated colloidal deposits. Colloids Surf 39:143-159 Dos Santos Afonso M, Stumm W (1992) Reductive dissolution of iron(III) (hydr)oxides by hydrogen sulfide. Langmuir 8:1671-1675 Douglas S, Beveridge TJ (1998) Mineral formation by bacteria in natural microbial communities. FEMS Microbiol Ecol 26:79-88 Drits VA, Tchoubar C (1990) X-ray Diffraction by Disordered Lamellar Structures: Theory and Applications to Microdivided Silicates and Carbons. Springer Verlag, Berlin Duonghong D, Ramsden J, Grätzel M (1982) Dynamics of interfacial electron-transfer processes in colloidal semiconductor systems. J Am Chem Soc 104:2977-2985 Dwarakanath S, Bruno JG, Shastry A, Phillips T, John A, Kumar A, Stephenson LD (2004) Quantum dotantibody and aptamer conjugates shift fluorescence upon binding bacteria. Biochem Biophys Res Commun 325:739–743 Edelbro R, Sandström A, Paul J (2003) Full potential calculations on the electronic bandstructure of sphalerite, pyrite and chalcopyrite. Appl Surf Sci 206:300-313 Edwards KJ, Bond PJ, Gihring TM, Banfield JF. (2000) An archaeal iron-oxidizing extreme acidophile important in acid mine drainage. Science 287:1796-1799 Efros AL, Rosen M (2000) The electronic structure of semiconductor nanocrystals. Annu Rev Mater Sci 30: 475–521 Ehrlich HL (2002) Geomicrobiology. Marcel Dekker, New York Elimelech M, Gregory J, Jia X, Williams R (1995) Particle Deposition and Aggregation: Measurement, Modelling and Simulation. Butterworth Heinemann, Oxford Elsner M, Schwarzenbach RP, Haderlein SB (2004) Reactivity of Fe(II)-bearing minerals to reductive transformation of organic contaminants. Environ Sci Technol 38:799-807 Ennaoui A, Tributsch H (1986) Light-induced electron transfer and photoelectrocatalysis of chlorine evolution at FeS2 electrodes. J Electroanal Chem 205:185-195 Eng PJ, Trainor TP, Brown GE, Waychunas GA, Newville M, Sutton SR, Rivers ML (2000) Structure of the hydrated alpha-Al2O3 (0001) surface. Science 288:1029-1033 Oberdorster G, Oberdorster E, Oberdorster J (2005) Nanotoxicology: An emerging discipline evolving from studies of ultrafine particles. Environ Health Perspect 113:823-839 Erwin SC, Zu L, Haftel MI, Efros AL, Kennedy TA, Norris DJ (2005) Doping semiconductor nanocrystals. Nature 436:91-95 Ferreyra JM, Proetto CR (1999) Quantum size effects on excitonic Coulomb and exchange energies in finitebarrier semiconductor quantum dots. Phys Rev B 60:10672-10675 Ferris FG (2005) Biogeochemical properties of bacteriogenic iron oxides. Geomicrobiology J 22:79-85 Fistul VI (2004) Impurities in Semiconductors : Solubility, Migration, and Interactions. CRC Press, Boca Raton, Florida Fortin D, Ferris FF, Beveridge TJ (1997) Surface-mediated mineral development by bacteria. Rev Mineral Geochem 35:161–180 Fowler TA, Holmes PR, Crundwell FK (1999) Mechanism of pyrite dissolution in the presence of Thiobacillus ferrooxidans. Appl Environ Microbiol 65:2987-2993 Franceschetti A, Zunger A (1997) Direct pseudopotential calculations of exciton Coulomb and exchange energies in semiconductor quantum dots. Phys Rev Lett 78:915-917 Franceschetti A, Williamson A, Zunger A (2000) Addition spectra of quantum dots: The role of dielectric mismatch. J Phys Chem B 104:3398-3401 Frankel RB, Bazylinski DA Biologically induced mineralization by bacteria. (2003) Rev Mineral Geochem 54: 95-114 Fredrickson JK, Zachara JM, Kennedy DW, Duff MC, Gorby YA (2000) Reduction of U(VI) in goethite (D-FeOOH) suspensions by a dissimilatory metal-reducing bacterium. Geochim Cosmochim Acta 64: 3085-3098 Fredrickson JK, Kota S, Kukkadapu RK, Liu C, Zachara JM (2003) Influence of electron donor/acceptor concentrations on hydrous ferric oxide (HFO) bioreduction. Biodegradation 14:91–103 Fukushi K, Sato T (2005) Using a surface complexation model to predict the nature and stability of nanoparticles. Environ Sci Technol 39:1250-1256 Fujimori A, Saeki M, Kimizuka N, Taniguchi M, Suga S (1986) Photoemission satellites and electronic structure of D-Fe2O3. Phys Rev B 34:7318-7327 Fujita E, DuBois DL (2003) Carbon dioxide fixation. In: Photoconversion of Solar Energy Photochemical and Photoelectrochemical Approaches to Solar Energy Conversion. Archer MD, Nozik AJ (eds) Imperial College Press, London Fujiwara H, Kanemoto M, Ankyu H, Murakoshi K, Wada Y, Yanagida S (1997) Visible-light induced photofixation of carbon dioxide into aromatic ketones and benzyl halides catalyzed by CdS nanocrystals. J Chem Soc Perkin Trans 2:317-321
Molecular-Scale Processes Involving Nanoparticulate Minerals
149
Fujiwara H, Hosokawa H, Murakoshi K, Wada Y, Yanagida S (1998) Surface Characteristics of ZnS nanocrystallites relating to their photocatalysis for CO2 reduction. Langmuir 14:5154-5159 Galli G (2005) Doping the undopable. Nature 436:32-33 Galli G, Parrinello M (1992) Large scale electronic structure calculations. Phys Rev Lett 69:3547-3550 Gaponenko SV (1998) Optical Properties of Semiconductor Nanocrystals. Cambridge University Press, Cambridge. Garrett BC et al. (2005) Role of water in electron-initiated processes and radical chemistry: Issues and scientific advances. Chem Rev 105:355−389 Gerischer S (1980) Photodecomposition of semiconductors: Thermodynamics, kinetics and application to solar cells. Faraday Disc Chem Soc 70:137-151 Gerischer S (1993) Photoelectrochemical catalysts of the oxidation of organic molecules by oxygen on small semiconductor particles with TiO2 as an example. Electrochim Acta 38:3-9 Gilbert B, Huang F, Zhang HZ, Waychunas GA, Banfield JF (2004) Nanoparticles: Strained and stiff. Science 305:651-654 Gilbert B, Frazer BH, Belz A, Conrad PG, Nealson KH, Haskel D, Lang JH, Srajer G, De Stasio G (2003) Multiple scattering calculations of bonding and X-ray absorption spectroscopy of manganese oxides. J Phys Chem A 107:2839-2847 Gratzel M, Frank A (1982) Interfacial electron-transfer reactions in colloidal semiconductor dispersions. Kinetic analysis. J Phys Chem 86:2964-2967 Green M, O’Brien P (1999) Recent advances in the preparation of semiconductors as isolated nanometric particles: new routes to quantum dots. Chem Commun 22:2235-2241 Guo J (2004) Synchrotron radiation, soft-X-ray spectroscopy and nanomaterials. Int J Nanotechnol 1:193-225 Gunnars A, Blomqvist S, Johansson P, Andersson C (2002) Formation of Fe(III) oxyhydroxide colloids in freshwater and brackish seawater, with incorporation of phosphate and calcium. Geochim Cosmochim Acta 66:745-758 Haack EA, Warren LA (2003) Biofilm hydrous manganese hydroxides and metal dynamics in acid rock drainage. Environ Sci Technol 37:4138-4147 Hall EJ (2000) Radiobiology for the Radiologist. Lippincott Williams and Wilkins Hansel CM, Benner SG, Neiss J, Dohnalkova A, Kukkadapu RK, Fendorf S (2003) Secondary mineralization pathways induced by dissimilatory iron reduction of ferrihydrite under advective flow Geochim Cosmochim Acta 67:2977-2992 Hansel CM, Benner SG, Nico P, Fendorf S (2004) Structural constraints of ferric (hydr)oxides on dissimilatory iron reduction and the fate of Fe(II). Geochim Cosmochim Acta 68:3217-3229 Haram SK, Quinn BN, Bard AJ (2001) Electrochemistry of CdS nanoparticles: A correlation between optical and electrochemical band gaps. J Am Chem Soc 123:8860-8861 Henderson MA (2002) The interaction of water with solid surfaces: Fundamental aspects revisited. Surf Sci Rep 46:5-308 Hering JG, Stumm W (1990) Oxidative and reductive dissolution of minerals. Rev Mineral 23:427-464 Hill NA, Whaley KB (1995) Size dependence of excitons in silicon nanocrystals. Phys Rev Lett 75:1130-1133 Hochella MF Jr., White AF (eds) (1990) Mineral-water interface geochemistry. Reviews in Mineralogy Vol 23, Mineralogical Society of America, Washington DC Hochella MF Jr., Moore JN, Putnis C, Putnis A, Kasama T, Eberl DD (2005a) Direct observation of toxic metal-mineral association from a massive acid mine drainage system: Implications for metal transport and bioavailability. Geochem Cosmochim Acta 69:1651-1663 Hochella MF Jr., Kasama T, Putnis A, Putnis C, Moore JN (2005b) Environmentally important, poorly crystalline Fe/Mn hydrous oxides: Ferrihydrite and a vernadite-like mineral from a massive acid mine drainage system. Am Mineral 90:718-724 Huber R, Spörlein S, Moser JE, Grätzel M (2000) The role of surface states in the ultrafast photoinduced electron transfer from sensitizing dye molecules to semiconductor colloids. J Phys Chem B 104:8995-9003 Inoue H, Moriwaki H, Maeka K, Yoneyam H (1995) Photoreduction of carbon-dioxide using chalcogenide semiconductor nanocrystals. J Photochem Photobiol A 86:191-196 Ireta J, Galván M, Cho K, Joannopoulos JD (1998) Local reactivity of charybdotoxin, a K+ channel blocker. J Am Chem Soc 120:9771-9778 Isaure MP, Manceau A, Tamura NO, Marcus MA (2005) Zinc mobility and speciation in soil covered by contaminated dredged sediment using micrometer-scale and bulk-averaging X-ray fluorescence, absorption and diffraction techniques. Geochim Cosmochim Acta 69:1173-1198 Israelachvili J (1992) Intermolecular and Surface Forces. Academic Press, San Diego. Iwamato M, Abe T, Tachibana Y (2000) Control of bandgap of iron oxide through its encapsulation into SiO2based mesoporous materials. Hoffmann MR, Martin ST, Choi W, Bahneman DW (1995) Environmental applications of semiconductor photocatalysis. Chem Rev 95:69-96
150
Gilbert & Banęeld
Jones F, Cölfen H, Antonietti M (2000) Iron oxyhydroxide colloids stabilized with polysaccharides. Colloid Polym Sci 278:491-501 Kagan CR, Murray CB, Bawendi MG (1996) Long-range resonance transfer of electronic excitations in closepacked CdSe quantum-dot solids. Phys Rev B 54:8633-8643 Kennedy CB, Scott SD, Ferris FG (2004) Hydrothermal phase stabilization of 2-line ferrihydrite by bacteria. Chemical Geology 212:269-277 Kennedy CB, Scott SD, Ferris FG (2003a) Characterization of bacteriogenic iron oxide: Deposits from Axial Volcano, Juan de Fuca Ridge, Northeast Pacific Ocean. Geomicrobiol J 20:199-214 Kennedy CB, Scott SD, Ferris FG (2003b) Ultrastructure and potential sub-seafloor evidence of bacteriogenic iron oxides from Axial Volcano, Juan de Fuca Ridge, north-east Pacific Ocean. FEMS Microbiol Ecol 43: 247-254 Kerisit S, Cooke DJ, Spagnoli D, Parker SC (2005) Molecular dynamics simulations of the interactions between water and inorganic solids. J Mater Chem 15:1454-1462 Kimball BA, Callender E, Axtmann EV (1995) Effects of colloids on metal transport in a river receiving acidmine drainage, Upper Arkansas River, Colorado, USA. Appl Geochem 10:285-306 Kloepfer JA, Mielke RE, Nadeau JL (2005) Uptake of CdSe and CdSe/ZnS quantum dots into bacteria via purine-dependent mechanisms. Appl Environ Microbiol 71:2548-2557 Konhauser KO (1998) Diversity of bacterial iron mineralization. Earth Sci Rev 43:91-121 Konovalova TA, Konovalov VV, Kispert LD (1999) Surface modification of TiO2 nanoparticles with carotenoids. EPR Study. J Phys Chem B 103:4672-4699 Konovalova TA, Lawrence J, Kispert LD (2004) Generation of superoxide anion and most likely singlet oxygen in irradiated TiO2 nanoparticles modified by carotenoids. J Photochem Photobiol A 162:1–8 Kormann C, Bahnemann DW, Hoffmann MR (1989) Environmental photochemistry: Is iron oxide (hematite) an active photocatalyst? A comparative study: D-Fe2O3, ZnS, TiO2. J Photochem Photobiol A 48:161-169 Kormann C, Bahnemann DW, Hoffmann MR (1991) Photolysis of chloroform and other organic molecules in aqueous TiO2 suspensions. Environ Sci Technol 25:494-500 Kraemer SM (2004) Iron oxide dissolution and solubility in the presence of siderophores. Aquati Sci 66;3-88 Kucur E, Riegler J, Urban GA, Nann T (2003) Determination of quantum confinement in CdSe nanocrystals by cyclic voltammetry. J Chem Phys 119:2333-2337 Labrenz M, Druschel GK, Thomsen-Ebert T, Gilbert B, Welch SA, Kemner KM, Logan GA, Summons RE, De Stasio G, Bond PL, Lai B, Kelly SD, Banfield JF (2000) Sphalerite (ZnS) deposits forming in natural biofilms of sulfate-reducing bacteria. Science 290:1744-1747 Landolt-Bernstein (1983) Numerical data and functional relationships in science and technology, New Series Springer, Berlin Langmuir D (1996) Aqueous Environmental Geochemistry. Prentice Hall Lawless D, Sepone N, Meisel D (1991) Role of OH• radicals and trapped holes in photocatalysis. A pulse radiolysis study. J Phys Chem 95:5166-5170 Leland JK, Bard AJ (1987) Photochemistry of colloidal semiconducting iron oxide polymorphs. J Phys Chem 91:5076-5083 Lewis EA, Smith JRL, Walton PH, Archibald SJ, Foxton SP, Giblin GMP (2001) Tuning the metal-based redox potentials of manganese cis, cis-1,3,5-triaminohexane complexes. J Chem Soc Dalton Trans 2001:11591161 Lippens PE, Lannoo M (1989) Calculations of band gap for small CdS and ZnS crystallites. Phys Rev B 39: 10935-10941 Lodziana Z, Topsoe NY, Norskov JK (2004) A negative surface energy for alumina. Nature Mater 3:289-293 Lovely DR (1987) Organic matter mineralization with the reduction of ferric iron: A review. Geomicrobiol J 5: 375-399 Lovley DR, Stolz JF, Nord GL, Phillips EJP (1987) Anaerobic production of magnetite by a dissimilatory ironreducing microorganism. Nature 330:252-254 Lovely DR, Phillips EJP, Gorby YA, Landa ER (1991) Microbial reduction of uranium. Nature 350:413-416 Lovely DR (1993) Dissimilatory metal reduction. Ann Rev Microbiol 47:263-290 Lovely DR (1997) Microbial Fe(III) reduction in subsurface environments. FEMS Microbiol Rev 20:305-313 Lucas E, Decker S, Khaleel A, Seitz A, Fultz S, Ponce A, Carnes C, Klabunde KJ (2001) Nanocrystalline metal oxides as unique chemical reagents/sorbents. Chem Eur J 7:2505-2510 Lüning J, Rockenberger J, Eisbitt S, Rubensson JE, Karl A, Kornowski A, Weller H, Eberhardt W (1999) Soft X-ray spectroscopy of single size CdS nanocrystals: Size confinement and electronic structure. Solid State Commun 112:5-9 Lyklema J (2001) Fundamentals of Interface and Colloid Science Volume II: Solid-Liquid Interfaces. Academic Press, San Diego Madden AS, Hochella MF Jr. (2005) A test of geochemical reactivity as a function of mineral size: Manganese oxidation promoted by hematite nanoparticles. Geochim Cosmochim Acta 69:389-398
Molecular-Scale Processes Involving Nanoparticulate Minerals
151
Manceau A, Drits, VA Silvester E, Bartoli C, Lanson B (1997) Structural mechanism of Co2+ oxidation by the phyllomanganate buserite. Am Mineral 82:1150-1175 Manceau A, Tommaseo C, Rihs S, Geoffroy N, Chateigner D, Schlegel M, Tisserand D, Marcus MA, Tamura M, Chen ZS (2005) Natural speciation of Mn, Ni, and Zn at the micrometer scale in a clayey paddy soil using X-ray fluorescence, absorption, and diffraction. Goechim Cosmochim Acta 69:4007-4034 Mann S (2000) Biomineralization. Oxford University Press, Oxford Marcus MA (1993) Electron transfer reactions in chemistry. Theory and experiment. Rev Mod Phys 65:599610 Mayers IT, Beveridge TJ (1989) The sorption of metals to Bacillus subtilis walls from dilute solutions and simulated Hamilton Harbour (Lake Ontario) water. Can J Microbiol 35:764-770 McCormick ML, Bouwer EJ, Adriaens (2002) Carbon tetrachloride transformation in a model iron-reducing culture: Relative kinetics of biotic and abiotic reactions. Environ Sci Technol 36:403-410 McCormick ML, Adriaens P (2004) Carbon tetrachloride transformation on the surface of nanoscale biogenic magnetite nanoparticles. Environ Sci Technol 38:1045-1053 McKenzie KJ, Marken F (2001) Direct electrochemistry of nanoparticulate Fe2O3 in aqueous solution and adsorbed onto tin-doped indium oxide. Pure Appl Chem 73:1885-1894 Meakin P (1988) Fractal aggregates. Adv Colloid Interface Sci 28:249-331 Memming R (2001) Semiconductor Electrochemistry. Wiley-VCH, Winheim Missana T, Maffiotte C, Garcîa-Gutiérreza M (2003) Surface reaction kinetics between nanocrystalline magnetite and uranyl. J Colloid Interf Sci 261:154-160 Monticone S, Tufeu R, Kanaev AV, Scolan E, Sanchez C (2000) Quantum size effect on TiO2 nanoparticles: Does it exist? Appl Surf Sci 162-163:565-570 Moreau JW, Webb RI, Banfield JF (2004) Ultrastructure, aggregation state and crystal growth of biogenic nanocrystalline sphalerite and wurtzite. Am Mineral 89:950-960 Morrison SR (1980) Electrochemistry at Semiconductor and Oxidized Metal Interfaces. Plenum Press, New York Moser J, Punchihewa S, Infelta PP, Gratzel M (1991) Surface complexation of colloidal semiconductors strongly enhances interfacial electron-transfer rates. Langmuir 7:3012-3018 Moser CC, Keske JM, Warncke K, Farid RS, Dutton PL (1992) Nature of biological electron transfer. Nature 355:796-802 Müller BR, Majoni S, Memming R, Meissner D (1997) Particle size and surface chemistry in photoelectrochemical reactions at semiconductor particles. J Phys Chem B 101:2501-2507 Mulvaney P, Cooper R, Grieser F, Meisel D (1988) Charge trapping in the reductive dissolution of colloidal suspensions of iron(III) oxides. Langmuir 4:1206-1211 Murray JW, Dillard JG (1979) The oxidation of cobalt(II) adsorbed on manganese dioxide. Geochim Cosmochim Acta 43:781-787 Murray CB, Kagan CR, Bawendi MG (2000) Synthesis and characterization of monodisperse nanocrystals and close-packed nanocrystal assemblies. Annu Rev Mater Sci 30:545-610 Mylon SE, Chem KL, Elimelech M (2004) Influence of natural organic matter and ionic composition on the kinetics and structure of hematite colloid aggregation: Implications to iron depletion in estuaries. Langmuir 20:9000-9006 Nanda KK, Kruis FE, Fissan H, Behera SN (2004) Effective mass approximation for two extreme semiconductors: Band gap of PbS and CuBr nanoparticles. J Appl Phys 95:5035-5041 Navrotsky A (2004) Energetic clues to pathways to biomineralization: Precursors, clusters and nanoparticles. Proc Natl Sci Acad 101:12096-12101 Nedeljkovic JM, Nenadovic MT, Micic OI, Nozik AJ (1986) Enhanced photoredox chemistry in quantized semiconductor colloids. J Phys Chem 90:12-13 Nelson J (1999) Continuous-time random walk model of electron transport in nanocrystalline TiO2 electrodes. Phys Rev B 59:15374-15380 Newman DK, Kolter R (2000) A role for excreted quinines in extracellular electron transfer. Nature 405:94-97 Nevin KP, Lovley DR (2000) Potential for nonenzymatic reduction of Fe(III) via electron shuttling in subsurface sediments. Environ Sci Technol 34:2472-2478 Noguera C, Pojani A, Casek P, Finocchi F (2002) Electron redistribution in low-dimensional oxide structures. Surface Scie 507-510:245-255 Oberdorster G, Oberdorster E, Oberdorster J (2005) Nanotoxicology: An emerging discipline evolving from studies of ultrafine particles. Environ Heath Perspect 113:823-839 O’Connor MV, Sposito G (2004) Investigation of biogenic manganese oxide by density functional theory. Abstr Papers Am Chem Soc 228:U548-549 043-ENVR O’Loughlin EJ, Kelly SD, Cook RE, Csencsits R, Kemner KM (2003) Reduction of uranium(VI) by mixed iron(II/iron(III) hydroxide (green rust): Formation of UO2 nanoparticles. Environ Sci Technol 37:721-727
152
Gilbert & Banęeld
Palosz B, Grzanka E, Gierlotka S, Stel’Mahk S, Pielaszek R, Bismayer U, Neuefeind, J, Weber HP, Palosz W (2002) Diffraction studies of nanocrystals: Theory and experiment. Acta Physica Polonica 102:57-82 Page CC, Moser CC, Chen X, Dutton L (1999) Natural engineering principles of electron tunnelling in biological oxidation-reduction. Nature 402:47-52 Parak WJ, Boudreau R, Le Gros M, Gerion D, Zanchet D, Micheel CM, Williams SC, Alivisatos AP, Larabell C (2002) Cell motility and metastatic potential studies based on quantum dot imaging of phagokinetic tracks. Adv Mater 14:882-885 Patterson AL (1939) The Scherrer formula for X-ray particle size determination. Phys Rev 56:978-982 Park H, Choi W (2005) Photocatalytic conversion of benzene to phenol using modified TiO2 and polyoxometalates. Catalysis Today 101:291-297 Parak WJ, Boudreau R, Le Gros M, Gerion D, Zanchet D, Micheel CM, Williams SC, Alivisatos AP, Larabell C (2002) Cell motility and metastatic potential studies based on quantum dot imaging of phagokinetic tracks. Adv Mater 14:882-885 Park JH, Tjeng LH, Allen JW, Metcalf P, Chen CT (1997) Single-particle gap above the Verwey transition in Fe3O4. Phys Rev B 57:12813-12817 Peak D (2005) In situ ATR-FTIR spectroscopic studies of the kinetics of oxyanion/metal oxide adsorption. Abstr Papers Am Chem Soc 228:U900 113-GEOC Pecher K, Haderlein SB, Schwartzenbach RP (2002) Reduction of polyhalogenated methanes by surfacebound Fe(II) in aqueous suspensions of iron oxides. Environ Sci Technol 36:1734-1741 Pehkonen SO, Seifert RL, Hoffman MR (1995) Photoreduction of iron oxyhydroxide and the photooxidation of halogenated acetic acids Environ Sci Technol 29:1215-1222 Pellegrini G, Mattei G, Mazzoldi P (2005) Finite depth square well model: Applicability and limitations. J Appl Phys 97:073706 Penn RL, Banfield JF (1998) Oriented attachment and growth, twinning, polytypism, and formation of metastable phases: Insights from nanocrystalline TiO2. Am Mineral 83:1077-1082 Penn RL, Zhu C, Xu H, Veblen DR. (2001) Iron oxide coatings on sand grains from the Atlantic coastal plain: High-resolution transmission electron microscopy characterization. Geology 29:843-846 Phoenix VR, Konhauser KO, Adams DG, Bottrell SH (2001) Role of biomineralization as an ultraviolet shield: Implications for Archean life. Geology 29:823-826 Poddar P, Fried T, Markovich G (2002) First-order metal-insulator transition and spin-polarized tunneling in Fe3O4 nanocrystals. Phys Rev B 65:172405 Pokrant S, Whaley KB (1999) Tight-binding studies of surface effects on electronic structure of CdSe nanocrystals: The role or organic ligands, surface reconstruction and inorganic capping shells. Eur J Phys 6:255-267 Poulton SW, Krom MD, Raiswell R (2004) A revised scheme for the reactivity of iron (oxyhydr)oxide minerals towards dissolved sulfide. Geochim Cosmochim Acta 68:3703-3715 Preisinger M, Krispin M, Rudolf T, Horn S, Strongin DR (2005) Electronic structure of nanoscale iron oxide particles measured by scanning tunneling and photoelectronic spectroscopies. Phys Rev B 71:165409 Puzder A, Williamson AJ, Reboredo FA, Galli G (2003) Structural stability and optical properties of nanomaterials with reconstructed surfaces. Phys Rev Lett 91:157405 Qadri SB, Skelton EF, Dinsmore AD, Yang J, Gray HF, Ratna BR (1999) Size-induced transition-temperature reduction in nanoparticles of ZnS. Phys Rev B 60:9191-9193 Quantin C, Becquer T, Rouiller JH, Berthelin J (2001) Oxide weathering and trace metal release by bacterial reduction in a New Caledonia Ferralsol. Biogeochemistry 53:323-340 Rabani E, Hetenyi B, Berne BJ (1999) Electronic properties of CdSe nanocrystals in the absence and presence of a dielectric medium. J Chem Phys 110:5355-5368 Rabani E (2001) Structure and electrostatic properties of passivated CdSe nanocrystals. J Chem Phys 115: 1493-1497 Rajh T, Chen LX, Lukas K, Liu T, Thurnauer MC, Tiede DM (2002) Surface restructuring of nanoparticles: An efficient route for ligand-metal oxide crosstalk. J Phys Chem B 106:10543- 10552 Rajh T, Saponjic Z, Liu JQ, Dimitrijevic NM, Scherer NF, Vega-Arroyo M, Zapol P, Curtiss LA, Thurnauer MC (2004) Charge transfer across the nanocrystalline-DNA interface: Probing DNA recognition. Nano Lett 4:1017-1023 Rancourt DG (2001) Magnetism of earth, planetary and environmental nanomaterials. Rev Mineral Geochem 44:217–292 Rancourt DG, Thibault PJ, Mavrocordatos D, Lamarche G (2005) Hydrous ferric oxide precipitation in the presence of nonmetabolizing bacteria: Constraints on the mechanism of a biotic effect. Geochim Cosmochim Acta 69:553-577 Redl FX, Black CT, Papaefthymiou GC, Sandstrom RL, Yin M, Zeng H, Murray CB, O’Brien SP (2004) Magnetic, electronic, and structural characterization of nonstoichiometric iron oxides at the nanoscale. J Am Chem Soc 126:14583-14599
Molecular-Scale Processes Involving Nanoparticulate Minerals
153
Reguera G, McCarthy KD, Mehta T, Nicoll JS, Tuominen MT, Lovley DR (2005) Extracellular electron transfer via microbial nanowires. Nature 435:1098-1101 Roden EE, Zachara JM (1996) Microbial reduction of crystalline iron (III) oxides: influence of oxide surface area and potential for cell growth. Environ Sci Technol 30:1618-1628 Roden EE, Urrutia MM, Mann, CJ (2000) Bacterial reductive dissolution of crystalline Fe(III) oxide in continuous-flow column reactors. Appl Environ Microbiol 66:1062-1065 Rodriguez JA, Chaturvedi S, Kuhn M, Hrbek J (1998) Reaction of H2S and S2 with metal/oxide surfaces: Bandgap size and chemical reactivity. J Phys Chem B 102:5511-5519 Rosso KM, Smith DMA, Dupuis M (2003) An ab intio model of electron transport in hematite (D-Fe2O3) basal planes. J Chem Phys 118:6455-6466 Rozan TF, Lassman ME, Ridge DP, Luther GW (2000) Evidence for iron, copper and zinc complexation as multinuclear sulphide clusters in oxic rivers. Nature 406:879-882 Rustad JR, Felmy AR (2005) The influence of edge sites on the development of surface charge on goethite nanoparticles: A molecular dynamics investigation. Geochim Cosmochim Acta 69:1405-1411 Scholz F, Meyer B (1998) Voltammetry of solid microparticles immobilized on electrode surfaces. Electroanal Chem 20:1-86 Schooss D, Mews A, Eychmüller A, Welller H (1994) Quantum-dot quantum well CdS/HgS/CdS: Theory and experiment. Phys Rev B 49:17072-17078 Schüring J, Schulz HD, Fischer WR, Böttcher J, Duijnisveld WHM (2000) Redox: Fundamental Processes and Applications. Springer-Verlag, Berlin Schwertmann U, Gasser U, Sticher H (1989) Chromium-for-iron substitution in synthetic goethites. Geochim Cosmochim Acta 53:1293-1297 Schwertmann U, Pfab G (1994) Structural vanadium in synthetic goethite. Geochim Cosmochim Acta 58: 4349-4352 Schwertmann U, Friedl J, Stanjek, H (1999) From Fe(III) ions to ferrihydrite and then to hematite. J Colloid Interf Sci 209:215-223 Scott SD, Barnes HL (1972) Sphalerite-wurtzite equilibria and stoichiometry. Geochim Cosmochim Acta 36: 1276-1295 Scott DT, McKnight DM, Voelker BM, Hrncir DC (2002) Redox processes controlling manganese fate and transport in a mountain stream. Environ Sci Technol 36:453-459 Serpone N, Lawless D, Khairutdinovt R (1995) Size Effects on the photophysical properties of colloidal anatase TiO2 particles: Size quantization or direct transitions in this indirect semiconductor? J Phys Chem 99:16646-16654 Shen H, Tan J, Saltzmann WM (2004) Surface-meditated gene transfer from nanocomposites of controlled texture. Nature Materials 3:569-574 Sherman DM (1984) Electronic structure of manganese oxide minerals. Am Mineral 69:788-799 Sherman DM (1985) Electronic structures of Fe3+ coordination sites in iron oxides: applications to spectra, bonding and magnetism. Phys Chem Mineral 12:161–175 Sherman DM (2005) Electronic structures of iron (III) and manganese (IV) (hydr)oxide minerals: Thermodynamics of photochemical reductive dissolution in aquatic sediments. Geochim Cosmochim Acta 69:3249-3255 Sparks NHC, Mann S, Bazylinski DA, Lovely DR, Jannasch HW, Franekl RB (1990) Structure and morphology of magnetite anaerobically-produced by a marine magnetotactic bacterium and a dissimilatory ironreducing bacterium. Earth Planet Sci Lett 98:14-22 Stack AG, Erni R, Browning ND, Casey WH (2004) Pyromorphite growth on lead-sulfide surfaces. Environ Sci Technol 38:5529-5534 Stone AT, Morgan JJ (1984) Reduction and dissolution of manganese(III) and manganese(IV) oxides by organics. 2. Survey of the reactivity of organics. Environ Sci Technol 18:617-624 Stumm W, Morgan JJ (1996) Aquatic chemistry: Chemical Equilibria and Rates in Natural Waters. Wiley, NY Sunda WG, Huntsman SA, Harvey GR (1983) Photoreduction of manganese oxides in seawater and its geochemical and biological implications. Nature 301:234-236 Suzuki Y, Kelly SD, Kemner KM, Banfield JF (2002) Nanometre-size products of uranium bioreduction. Nature 419:134-134. Tang J, Myers M, Bosnik KA, Brus LE (2003) Magnetite Fe3O4 nanocrystals: Spectroscopic observation of aqueous oxidation kinetics. J Phys Chem B 107:7501-7506 Tartaj P, del Puerto Morales M, Veintemillas-Verdaguer S, González-Carreño T, Serna CJ (2003) The preparation of magnetic nanoparticles for applications in biomedicine. J Phys D: Appl Phys 36:R182-R197 Tebo BM, Bargar JR, Clement BG, Dick GJ, Murray KJ, Parker D, Verity R, Webb SM (2004) Biogenic manganese oxides: Properties and mechanisms of formation. Annu Rev Earth Planet Sci 32:287-328
154
Gilbert & Banęeld
Tebo BM, Ghiorse WC, van Waasbergen LG, Siering PL, Caspi R (1997) Bacterially-mediated mineral formation: insights into manganese(II) oxidation from molecular genetic and biochemical studies. Rev Mineral Geochem 35:225-266 Templeton AS, Spormann AM, Brown GE (2003) Speciation of Pb(II) sorbed by Burkholderia cepacia/goethite composites. Environ Sci Technol 37:2166-2172 Thomas TN, Land TA, Johnson M, Casey WH (2004) Molecular properties of adsorbates that affect the growth kinetics of archerite (KDP). J Colloid Interf Sci 280:18-26 Tiller CL, O’Melia CR (1993) Natural organic matter and colloidal stability: Models and measurements. Colloids Surf A 73:89-102 Todo S, Takeshita N, Kanehara T, Mori T, Mri N (2001) Metallization of magnetite (Fe3O4) under high pressure. J Appl Phys 89:7347-7349 Tolbert SH, Herhold AB, Johnson CS, Alivisatos AP (1994) Comparison of quantum confinement effects on the electronic absorption spectra of direct and indirect gap semiconductor nanocrystals. Phys Rev Lett 73:3266-3269 Torres-Martínez CL, Kho R, Mian OI, Mehra RK (2001) Efficient photocatalytic degredation of environmental pollutants with mass-produced ZnS nanocrystals. J Colloid Interface Sci 240:525-532. Tran Thoai DB, Hu YZ, Koch SW (1990) Influence of the confinement potential on the electron-hole-pair states in semiconductor microcrystallites. Phys Rev B 42:11261-11266 Trindade T, O’Brien P, Pickett NL (2001) Nanocrystalline semiconductors: Synthesis, properties, and perspectives. Chem Mater 13:3847-3858 Tronc E, Belleville P, Jolivet JP, Livage J (1992) Transformation of ferric hydroxide into spinel by Fe(II) adsorption. Langmuir 8:313-319 Tronc E, Jolivet JP, Lefevre J, Massart R (1984) Iron adsorption and electron transfer in spinel-like iron oxide colloids. J Chem Soc 80:2619-2629 Urrutia MM, Roden, EE, Zachara, JM (1999) Influence of aqueous and solid-phase Fe(II) complexants on microbial reduction of crystalline iron(III) oxides. Environ Sci Technol 33:4022-4028 van der Zee C, Roberts DR, Rancourt DG, Slomp CP (2003) Nanogoethite is the dominant reactive oxyhydroxide phase in lake and marine sediments. Geology 31:993-996 Vaughan DJ, Craig JR (1978) Mineral Chemistry of Metal Sulfides. Cambridge University Press, Cambridge, MA Vayssiéres L, Chaneac C, Tronc E, Jolivet JP (1998) Size tailoring of magnetite particles formed by aqueous precipitation: An example of thermodynamic stability of nanometric oxide particles. J Colloid Interf Sci 205:205-212 Verwey EJW, Overbeek JThG (1948) Theory of the Stability of Lyophobic Colloids. Elsevier, Amsterdam Villalobos M, Toner B, Bargar JR, Sposito G (2003) Characterization of the manganese oxide produced by Pseudomonas putida strain MnB1. Geochim Cosmochim Acta 67:2649-2662 Voelker BM, Morel FMM, Sulzberger B (1997) Iron redox cycling in surface waters: Effects of humic substances and light. Environ Sci Technol 31:1004-1011 Vyalikh DV, Dänzenbacher S, Mertig M, Kirchner A, Pompe W, Dedkov YS, Molodtsov SL (2004) Electronic structure of regular bacterial surface layers. Phys Rev Lett 93:238103 Waite TD (1990) Photo-redox processes at the mineral-water interface. Rev Mineral 23:559-603 Wang CC, Zhang Z, Ying JY (1997) Photocatalytic decomposition of halogenated organics over nanocrystalline titania. Nanostruct Mater 9:583-586 Wang CS, Klein (1981) First-principles electronic structure of Si, Ge, GaP, GaAs, ZnS, and ZnSe. I. Selfconsistent energy bands, charge densities, and effective masses. Phys Rev B 24:3393-3416 Wang CY, Böttcher C, Bahnemannn DW, Dohrmann JK (2003) A comparative study of nanometer sized Fe(III)-doped TiO2 photocatalysts: synthesis, characterization and activity. J Mater Chem 13:2322-2329 Wang LG, Pennycock SJ, Pantelides ST (2002) The role of the nanoscale in surface reactions: CO2 on CdSe. Phys Rev Lett 89:075506 Wang LW, Zunger A (1996) Pseudopotential calculations of nanoscale CdSe quantum dots. Phys Rev B 53: 9579-9581 Warren LA, Ferris FG (1998) Continuum between sorption and precipitation of Fe(III) on microbial surfaces. Environ Sci Technol 32:2331-2337 Warren LA, Haack EA (2001) Biogeochemical controls on metal behaviour in freshwater environments. Earth Sci Rev 54:261-320 Watson JHP, Cressey BA, Roberts AP, Ellwood DC, Charnock JM, Soper AK (2000) Structural and magnetic studies on heavy-metal-adsorbing iron sulphide nanoparticles produced by sulphate-reducing bacteria. J Magnetism Magnetic Mater 214:13-30 Waychunas GA, Kim CS, Banfield JF (2005) Nanoparticulate iron oxide minerals in soild and sediments: Unique properties and contaminant scavenging mechanism. J. Nanoparticle Res 7:409-433
Molecular-Scale Processes Involving Nanoparticulate Minerals
155
Webb SM, Tebo BM, Bargar JR (2005) Structural influences of sodium and calcium ions on the biogenic manganese oxides produced by the marine Bacillus sp., strain SG-1. Geomicrobiol J 22:181-193 Wielinga B, Mizuba, MM, Hansel CM, Fendorf S (2001) Iron promoted reduction of chromate by dissimilatory iron-reducing bacteria. Environ Sci Technol 35:522-527 Williams AGB, Scherer MM (2004) Spectroscopic evidence for Fe(II)-Fe(III) electron transfer at the iron oxide – water interface. Environ Sci Technol 38:4782-4790 Williams KH, Ntarlagiannis D, Slater LD, Dohnalkova A, Hubbard SS, Banfield JF (2005) Geophysical imaging of stimulated microbial biomineralization, Environ Sci Technol in press Wolthers M, van der Gaast SJ, Rickard D (2003) The structure of disordered mackinawite. Am Mineral 88: 2007–2015 Xu Y, Schoonen MAA (1995) The stability of thiosulfate in the presence of pyrite in low-temperature aqueous solutions. Geochim Cosmochim Acta 59:4605-4622 Xu Y, Schoonen MAA (2000) Absolute energy positions of conduction and valence bands of selected semiconducting minerals. Am Mineral 85:543-556 Yariv S, Cross H (1979) Geochemistry of Colloid Systems. Springer-Verlag, Berlin Yu I, Isobe T, Senna M (1996) Optical properties and characteristics of ZnS nanoparticles with homogeneous Mn distribution. J Phys Chem Solids 57:373-379 Zhang H, Penn RL, Hamers, RJ, Banfield JF (1999) Enhanced adsorption of molecules on the surface of nanocrystalline particles. J Phys Chem B 103:4656-4662 Zhang H, Gilbert B, Huang F, Banfield JF (2003) Water-driven structure transformation in nanoparticles at room temperature. Nature 424:1025-1029 Zhang H, Huang F, Gilbert B, Banfield JF (2003) Molecular dynamics simulations, thermodynamic analysis, and experimental study of phase stability of zinc sulfide nanoparticles. J Phys Chem B 107:1305113060 Zhang JZ (2000) Interfacial charge carrier dynamics of colloidal semiconductor nanoparticles. J Phys Chem B 104:7239-7253 Zhang Z, Wang CC, Zakaria R, Ying JY (1998) Role of particle size in nanocrystalline TiO2-based photocatalysts. J Phys Chem B102:10871-10878
7
Reviews in Mineralogy & Geochemistry Vol. 59, pp. 157-185, 2005 Copyright © Mineralogical Society of America
The Organic-Mineral Interface in Biominerals P. U. P. A. Gilbert*, Mike Abrecht, Bradley H. Frazer University of Wisconsin-Madison Department of Physics, and Synchrotron Radiation Center 3731 Schneider Drive Stoughton, Wisconsin, 53589, U.S.A. [email protected] * previously publishing as Gelsomina De Stasio
BIOMINERALS: TOUGH STRUCTURES OF LIFE Introduction to biominerals Numerous living organisms form minerals. These biogenic minerals, or biominerals, are composite materials containing an organic matrix and nano- or micro-scale amorphous or crystalline minerals. In this chapter we will review the molecular aspects of biomineralization and describe as completely as is currently possible the organic-mineral interface, the location in which organic-mineral interactions occur. Biomineral composite materials include bone, dentine, enamel, statoliths, otoliths, mollusk and crustacean shells, coccolith scales, eggshells, sponge silica skeletons, algal, radiolarian and diatom silica micro-shells, and a variety of transition metal minerals produced by different bacteria (Lowenstam and Weiner 1989; Addadi and Weiner 1997; Banfield and Nealson 1997; Fortin et al. 1997; Fitts et al. 1999; Templeton et al. 1999; Lower et al. 2001a; Mann 2001; Glasauer et al. 2002; De Yoreo and Vekilov 2003; Weiner and Dove 2003; De Yoreo and Dove 2004). From a materials science perspective, organic molecules are soft, compliant and fracture resistant while inorganic crystals are hard and brittle. Biomineral composites combine the best of these properties and minimize the weaknesses: they are both hard and fracture resistant (tough) (Currey 1977; Jackson et al. 1988; Schäffer et al. 1997; Kamat et al. 2000; Gao et al 2003). This is due to several factors: structure, nano-size and chemical composition. Only recently materials scientists have begun to learn how to build a synthetic composite material that outperforms each component taken separately, and have done so inspired by shell nacre (Tang et al. 2003). The mechanisms of biomineral formation are not fully understood (Mount et al. 2004) and while they are of interest in their own right, they may also provide models for new materials concepts, inspire design solutions and give new insights into the genetic control of biological structure (e.g., Schäffer et al. 1997). Lowenstam (1981) introduced the distinction between the biologically induced mineralization, which is enacted extracellularly or on the cell surface by many algae and bacterial species, and the organic-matrix mediated mineralization performed by many animals (later termed biologically controlled mineralization) (Bazylinski and Frankel 2003; Frankel and Bazylinski 2003; Veis 2003). Eukaryotic biominerals often show complex hierarchical structure from the nanometer to the macroscopic scale. This structure confers mechanical strength and toughness: despite being highly mineralized, with the organic component constituting not more than a few percent of the composite material, the fracture toughness exceeds that of single crystals of the 1529-6466/05/0059-0007$05.00
DOI: 10.2138/rmg.2005.59.7
158
Gilbert, Abrecht, Frazer
pure mineral by two to three orders of magnitude (Kamat et al. 2000). The recent discovery of the silica skeleton in Euplectella sp., and its seven levels of structural organization illustrates one brilliant such hierarchy (Aizenberg at al. 2005), as reported in Figures 1 and 2. In eukaryotes biominerals provide a variety of functions including mechanical protection, movement, grinding, gravity or magnetic field sensing. Conversely in prokaryotes biominerals are often formed as a byproduct of a biochemical pathway in which the bacteria oxidize or reduce transition metals or other species in solution, often for metabolic energy generation (Nealson and Stahl 1997; Frankel and Bazylinski 2003).
Why biominerals For prokaryotes and eukaryotes the complex bioinorganic chemistry involved in biomineralization constitutes a distinct evolutionary advantage for the organism performing it. That advantage is the reason biomineralization became as widely spread as is observed in the three kingdoms of life: Archaea, Bacteria, and Eukarya (protists, fungi, plants, and animals), although very few Archaea are known to be biomineral producers. In the cases of eukaryotic biominerals, the biomineral products are clearly of direct use and benefit. In the case of microbial biomineralization, metal oxidation or reduction can be induced - or exploited - by the bacterium, but mineralization itself may have only indirect advantages or even disadvantages. Biomineral formation often occurs extracellularly and is subsequent to oxidation or reduction. In some cases it is detrimental: entombment of the bacterium in its own biomineral products is possible, and the cell either dies or develops an evasion strategy, such as the formation of mineral sheaths (e.g., Leptothrix spp) or stalks (Gallionella ferruginea).
The organic-mineral interface Many biomineralization mechanisms are poorly understood at the molecular level. These include all cases in which highly oriented crystals are formed with the growth of a particular crystal phase, or polymorph (Falini et al. 1996; De Yoreo and Dove 2004). Mollusk shell, bone and some bacterial filaments are examples of such biomineralization: a highly specialized organic matrix directs the formation of a specific crystal phase, habit, size and orientation. In these composites the organic-mineral interaction is so specialized that a mechanism of epitaxial overgrowth, or templation, can be invoked. The particular matrix of organic molecules, produced by the living organism, acts as a template upon which crystals grow epitaxially, or simply, growth is nucleated, and crystal structure, phase, orientation and often habit of the mineral are determined by the organic matrix. Figure 3 shows a biomineralization paradigm. The paradigm of Figure 3 is not general: it applies to some prokaryotic and many eukaryotic biominerals. It is simply intended to guide our reasoning and give a visual model to refer to in this discussion; it is by no means intended to describe and include every biomineral formation mechanism. Many prokaryotic biominerals, in fact, do not follow such a model. Consistently, however, whether the paradigm applies or not, the organic macromolecules are formed first and they direct or induce the growth of specific minerals and their polymorphs. To this day, the organic macromolecular components have been identified in only a few biominerals. This paradigm, therefore, is to be interpreted as a conceptual mechanism, not as a detailed model of interaction between known molecules. The present chapter discusses the possibility of investigating the organic mineral interface, and the chemical bonds formed at that interface, in essence, zooming in on the interface as shown in Figure 3D. In both biologically controlled and mediated biomineralization (Lowenstam 1981), the organic components are formed first, then these bind a few ions, which serve as nucleation sites for crystal growth (Lowenstam and Weiner 1989; Falini et al. 1996; Gotliv et al. 2005). Self-assembly and epitaxial crystal growth subsequently complete the composite structure discussed in Figure 3. We propose that the exploitation of such templation mechanisms can be
Figure 1
Figure 1. Structural analysis of the mineralized silica skeleton of Euplectella sp., a deep sea sponge from the Pacific Ocean. (A) Photograph of the entire skeleton, showing the cylindrical glass cage. (B) Fragment of the cage structure showing the square-grid lattice of vertical and horizontal struts with diagonal elements arranged in a chessboard manner. Orthogonal ridges on the cylinder surface are indicated by arrows. (C) Scanning electron micrograph (SEM) showing that each strut (enclosed by a bracket) is composed of bundled multiple spicules (the arrow indicates the long axis of the skeletal lattice). (D) SEM of a fractured and partially HF-etched single beam revealing its ceramic fiber-composite structure. (E) SEM of the HF-etched junction area showing that the lattice is cemented with laminated silica layers. (F) Contrast-enhanced SEM image of a cross section through one of the spicular struts, revealing that they are composed of a wide range of different-sized spicules surrounded by a laminated silica matrix. (G) SEM of a cross section through a typical spicule in a strut, showing its characteristic laminated architecture. (H) SEM of a fractured spicule, revealing an organic interlayer. (I) Bleaching of biosilica surface revealing its consolidated nanoparticulate nature. Reprinted with permission of AAAS, from Aizenberg et al. (2005), Science, Vol. 309, Fig. 1, p. 275-278.
Organic-Mineral Interface in Biominerals 159
160
Gilbert, Abrecht, Frazer
Figure 2. The Euplectella sp. Skeletal system structure (left) resembles that of the Swiss Re Tower in London (top right), the Hotel Arts in Barcelona (center right), and the Eiffel Tower in Paris (fragment shown bottom right). The characteristic structure with vertical and horizontal struts to form a checkerboard pattern, and diagonal struts at every other square is optimized for mechanical strength. Image courtesy of Joanna Aizenberg.
Figure 3. Paradigm for the epitaxial overgrowth, or templation, mechanism in biomineralization. The organic matrix (A) is composed of macromolecules, which depending on the particular biomineral may include a single organic molecule, e.g., a polysaccharide or a complex arrangement of proteins and glycoproteins. In all cases the organic components have charged functional groups that attract ions from solution (B). The steric arrangement of organic macromolecules, their sequence, and folding determines the precise position in three dimensions of the ions. Such positions are only compatible with a specific mineral, even more: they are only compatible with a well-determined polymorph of a specific mineral (C). The crystal structure shown (C) is aragonite, the large white ions in (B) are Ca2+, while the small-white and large-dark atoms are C and O, respectively in (C). (D) Zooming in on the organic-mineral interface: the inter-atomic bonds are indicated by dashed lines. A similar mechanism of epitaxial overgrowth takes place in many matrix-mediated eukaryotic and some biologically induced prokaryotic biomineralization mechanisms.
Organic-Mineral Interface in Biominerals
161
considered a “genome shortcut”, naturally selected for minimizing the amount of information the organism must transfer down the lineage, while maximizing the performance of the final composite material. Specifically, self-assembly and epitaxial crystal growth are harnessed by the organism, therefore the only information stored in the genome is that involving the synthesis of the organic macromolecules of Figure 3A.
Zooming in on the organic-mineral interface Several authors suggested that the negatively charged amino acids, aspartate and glutamate, along their protein sequences attract positive ions from solution and initiate crystal nucleation and growth (Mann 2001; Weiner and Dove 2003; Gotliv et al 2005). Certainly the concentration of these amino acids in the known and sequenced organic matrix proteins is very high. They usually constitute between 30 and 40 mol% of the matrix protein, and in some cases even more. The recently discovered “Asprich” family of proteins from the bivalve mollusk Atrina rigida contain more than 50 mol% of aspartate and 10 mol% glutamate, hence their name (Gotliv et al. 2005). Therefore, the paradigm by which negatively charged amino acids collect ions from solution, provide the nucleation sites, and direct the epitaxial growth of biominerals deserves further investigation. A novel set of tools is necessary to discover exactly which molecules interact at the organic-mineral interface, and at which specific molecular sites the first chemical bonds are formed, that is, how biogenic mineral formation begins. X-ray spectromicroscopy, used in combination with other microscopic and biological methods, is one such novel tool to explore the chemistry of templation mechanisms at this interface.
SPECTROMICROSCOPY OF BIOMINERALS XANES spectroscopy of biominerals Only recently has the study begun of templation mechanisms in biominerals using X-ray absorption near edge structure (XANES) spectroscopy. We believe that the understanding of organic-mineral templation can be significantly improved with XANES spectroscopy, because this powerful chemical analysis is sensitive to elemental composition, oxidation state, coordination number, and crystal or molecular structure and orientation of minerals and organic molecules (Stöhr 1992). XANES spectroscopy is a technique first introduced in the early 1980s—under X-ray illumination the sample emits electrons and photons, which constitute a spectrum as the X-ray energy varies. In this section a more detailed description will introduce the biomineralogist to this spectroscopy, to the microscopy version of it, and to the combination of spectroscopy and microscopy, termed spectromicroscopy. The best tool for understanding the chemical and physical properties of any material is one that reports on the x,y,z coordinates of atoms in the material. This can be done with great accuracy (1 Å resolution) using X-ray diffraction on periodic structures, such as bulk mineral crystals or crystallized organic macromolecules, when these can be crystallized. For all other systems, which are not periodic—for example, organic macromolecules that cannot be crystallized—one is left with information that can be retrieved with spectroscopies. Various kinds of spectroscopies detect different characteristics of the specimen: the resonances of nuclei, the vibrational states, the electronic structure and many more. All these approaches are limited, compared to diffraction, but they are all that is available for the majority of organic molecules. XANES is one such spectroscopy, and a very powerful one compared to others, although not quite as informative as diffraction. Its main advantage is its wide range of applicability: it can in fact detect and report on the electronic structure of ordered and disordered materials, minerals surfaces, organic macromolecules, their molecular structure, composition, and the chemical bonds that these molecules form with minerals and nano-crystalline mineral precursors.
162
Gilbert, Abrecht, Frazer
For a complete review of the XANES approach see Stöhr 1992. Briefly, XANES spectroscopy probes a specific element according to its absorption of X-ray photons, at energies that are characteristic of the element and the absorption edge. Absorption edges correspond to transitions between occupied atomic-like electronic shells (e.g., 1s, 2p, 3d, etc.) to unoccupied electronic states (molecular antibonding orbitals such as S*, V*) that are strongly affected by both the absorbing atom itself and by its neighboring atoms. Transitions from the 1st(e.g., 1s), 2nd(e.g., 2s or 2p), 3rd, etc. atomic shells to molecular orbitals are called K- or L- or M-edges. These probe bonds of the absorbing atom to intra-molecular and, to a lesser degree, extramolecular neighbors. For example the transition from 1s to S* of the C=O in the carboxyl group (COOH) has a distinct resonance (peak in the XANES spectrum) at 288.6 eV. XANES spectroscopy can also detect the presence of specific bonds in molecules, and determine the orientation of molecules or functional groups on the surface of solids. Since the absorption edges of low-Z elements (up to atomic number Z = 30, including all non-gaseous elements from Li through Zn), which are the most relevant for biominerals, are in the 10-1000 eV range of binding energies, a source of photons with such energies must be used to observe such edges with XANES. The only tunable sources of 10–1000 eV photons, called the softX-ray range, are synchrotrons. Synchrotron radiation is also emitted by accelerated ions in the universe such as galaxies and nebulas, but those sources are too distant, their photon flux is therefore too low, screened by the atmosphere, and not easily tunable; therefore galaxies and nebulas are not useful as illuminating sources for XANES of materials on Earth. Thus, XANES spectra are acquired at synchrotron facilities while scanning the photon energy across the absorption edges of the relevant elements. When the photon energy reaches or exceeds the binding energy of electrons in a specific atomic shell, the sample photoemits, that is, it emits electrons by the photoelectric effect. The photoelectric effect was first observed by H. Hertz in 1887 (Hertz 1887); but only explained in 1905 by A. Einstein (Einstein 1905; the centennial celebration is undergoing this year). With his explanation Einstein introduced the concept of a photon, which is a quantum of electromagnetic energy. For this fundamental leap in the understanding of light and matter, and not for the more famous special and general relativity theories, Einstein earned the Nobel prize in 1921. In an effort to avoid a quantum-mechanical presentation, we provide in Figures 4-6 an overview of all the information afforded by XANES, and provide via examples an introduction to this extremely powerful approach, tailored to entice the biomineralogist and the geomicrobiologist. Figure 4 illustrates the sensitivity of XANES spectromicroscopy to the elemental composition of samples, and the possibility of spatially mapping the elemental distributions. Figure 5 shows the sensitivity of XANES spectra to the oxidation states of two transition metals at the L-edges. The dramatic differences introduced in the XANES spectral lineshape by changes in oxidation states make it possible to identify with this spectroscopy the chemical species present in the sample. By combining this information with the imaging capability demonstrated in Figure 4, the spatial distribution of elements and their oxidation states can be determined. As mentioned above, XANES spectroscopy is also sensitive to the crystal structure. Figure 6 shows the difference in spectra acquired from CaCO3 and ZnS mineral polymorphs, that is, minerals in which the chemical formula is identical but the crystal unit cell has a different arrangement. Slight differences in the local structural and electronic environment of elements in alternative crystal polymorphs can give clear fingerprints in XANES spectra. XANES spectroscopy is also sensitive to coordination, that is, the number of atoms to which the element under analysis is bonded. Calcium in calcite is 6-coordinated, that is, each Ca atom is bonded to six oxygen atoms all at the same distance (2.35 Å). In aragonite Ca
Organic-Mineral Interface in Biominerals
163
Figure 4. X-ray photoelectron emission spectromicroscopy (X-PEEM) image (top left) of Calothrix cyanobacteria embedded in epoxy and microtomed to a 60 nm thick section. In the top left portion of the field of view a Calothrix filament, containing seven bacteria, is visible, while at the center is the cross section of a single-cell, or possibly a filament extending along the direction perpendicular to the image. The distribution maps of sodium, uranium (from uranyl acetate stain), sulfur, phosphorus and calcium are also reported. The distribution maps were obtained by digital ratio of two images, on- and off-peak at the Na L-edge, U O-edge, S L-edge, P L-edge and Ca L-edge respectively, and represent the local concentration of the relevant element: darker gray levels indicate greater elemental density. Notice the high concentration of Na, S, U and Ca in the outer sheaths, and the high density of P corresponding to bacterial DNA. Sample courtesy of Susanne Douglas.
has 9-fold coordination, with five distinct bond lengths; these are: one oxygen at 2.32 Å, two oxygens at 2.43 Å, two oxygens at 2.51 Å, two oxygens at 2.57 Å and two oxygens at 2.66 Å. Consequently, the differences in the crystal field peaks (arrows in Fig. 6A) between aragonite and calcite may be due to both coordination and crystal structure. In both ZnS polymorphs, sphalerite and wurtzite, sulfur atoms are 4–coordinated (as are the Zn atoms), and the nearneighbor environments are almost identical. The crystal structures are different (cubic and hexagonal), therefore the distribution of atoms in the third and higher shell of atoms around the sulfur sites are distinct, and this is the origin of the spectral differences in Figure 6B. XANES spectroscopy has been successfully used to reveal the presence and oxidation state of specific elements in geologic minerals (Sturchio et al. 1998), the structure of synthetic
164
A
Gilbert, Abrecht, Frazer
B
Figure 5. (A) Manganese L-edge X-ray absorption near edge structure (XANES) spectra of manganese oxides. The formal Mn oxidation states are given on the right. (Data from Gilbert et al. 2003a). (B) Iron L-edge XANES spectra from ferric (III), ferrous (II) and metallic iron (0), in the minerals and metal indicated. (Data from Frazer et al. 2005)
A
B
Figure 6. (A) Ca L-edge XANES spectra from calcite and aragonite, trigonal-rhombohedral and orthorhombic polymorphs of CaCO3, respectively. The two main peaks, common to both spectra are the L3 and L2 edges, respectively. Two additional peaks at ~346 and ~350 eV (arrows), due to the crystal field, are prominent in calcite but have lower intensity and different line shape in aragonite. (B) XANES sulfur L-edge spectra from sphalerite and wurtzite, cubic and hexagonal polymorphs of ZnS, respectively. Notice the difference in line shape between 165 and 170 eV. Used with permission of the American Chemical Society, from Gilbert et al. (2003), J. Phys. Chem. A, Vol. 107, Fig. 1, p. 2839-2847.
Organic-Mineral Interface in Biominerals
165
materials (Bozek et al. 1990), elemental speciation in soils and sediments (Myneni et al. 1997; Beauchemin et al. 2003; Zawislanski et al. 2003) and other environmentally relevant samples (Myneni 2002a,b; Myneni et al. 1999). Many other experiments on the microlocalization of trace elements in eukaryotic cells (De Stasio et al. 1993, 1996, 2001; Gilbert et al. 2000) and the identification of prokaryotic biomineral products (Labrenz et al. 2000; Lawrence et al. 2003; Lopez-Garcia 2003; Chan et al. 2004), also attest to the power and breadth of XANES spectroscopy and spectromicroscopy. As mentioned, the lineshape of XANES spectra gives information on the molecular and/ or crystal structures surrounding the element under analysis. The interpretation of spectral lineshape and peak assignment, however, can be complicated. When the molecular or crystal structure is known, and relatively simple, ab initio calculations can be used to simulate the XANES spectrum. A comparison of experimental and calculated spectra enables peak assignment to specific molecular structures. Specific peaks can be considered “spectral signatures” of specific molecular features. XANES is extremely sensitive to carbon chemistry: examples of molecular features that generate well-established spectral signatures are C{C, C=C, C–O, C=O, C–O, as well as C–C–C bond angles, conjugation of adjacent bonds, etc. A material that contains several of these molecular features exhibits a XANES spectrum resulting from the combination of their corresponding spectral signatures: the “building blocks” (Stöhr 1992). For other edges, e.g., Si or S at the L-edge, simulations of XANES spectra are not currently adequate because the electronic structure is too complex to be calculated. In these cases, the spectral signatures do exist and are measurable, but they are not univocally assigned to specific bonds or molecular structures. Unknown minerals, however, such as sub-micron silicate inclusions, can still be identified by empirical comparison with spectra from known, macroscopic, reference silicate minerals (De Stasio et al. 2003; Gilbert et al. 2003b).
XANES microscopy of biominerals XANES spectroscopy has been used to study the same kind of molecular interactions discussed hereafter, but without spatial resolution. Examples include organic-mineral interaction at the binding sites in metalloproteins (Benfatto et al. 2003) or between metal ion and humic macromolecules (Myneni et al. 1999; 2002a). There are practical reasons that, until recently, completely precluded the spectromicroscopy of biomineralized structures, as described below first from a spectroscopy, then from a microscopy point of view. XANES spectroscopy can be performed in two ways: by detecting either fluorescence photons or photoemission electrons (photoelectrons) from a solid sample surface. Fluorescence XANES signal is most intense for high Z elements (Z > 30). These elements have their core shell electrons at binding energies much greater than 1000 eV, therefore the corresponding absorption edges detectable by XANES spectroscopy can only be detected in the “hard-X-ray” regime. On the contrary, low Z elements, which include all the organic elements C, N and O, have their absorption edges below 1000 eV: the C K-edge is at 285 eV, the N K-edge at 400 eV, and the O K-edge at 531 eV. Since none of these edges is easily accessible to the hard-Xray fluorescence range, the organic components of biominerals have never before been studied with fluorescence XANES. Photoelectron XANES, also known as total electron yield or TEY-XANES, is much more intense than fluorescence below 1 keV, where the Si, P, S, and Ca L-edges, and the C, N and O K-edges are located. In this spectral region, a strongly space-averaged TEY spectroscopy
166
Gilbert, Abrecht, Frazer
has always been possible on an insulating biomineral. This is, however, not particularly informative, given the highly organized microscopic structure of biominerals. Spectromicroscopy with X-ray PhotoElectron Emission Spectromicroscope (X-PEEM) adds spatial resolution to the TEY-XANES experiment, down to the 10 nm level (Frazer et al. 2004). Until recently, however, X-PEEM could only image and analyze the chemistry of conductive sample surfaces. Insulating samples such as minerals and biominerals could not be analyzed without major charging problems. Transmission X-ray microscopy experiments (e.g., scanning transmission X-ray microscopy, STXM (Kilcoyne 2003; Tyliszczak 2004), which do not suffer from charging, are limited to very thin solid samples (few atomic monolayers) or dilute liquid samples. Most biominerals, therefore, are excluded from this powerful analysis.
Overcoming charging effects We recently optimized a differential-thickness coating method (De Stasio et al. 2003) that enabled us to extensively study mineral and biominerals surface with X-PEEM and do highresolution imaging and XANES analysis on them (35 nm or better) (Gilbert et al. 2003-2). The coating approach is shown in Figure 7. We have used this coating approach on a variety of insulators, including wood, quartz, zircons, glass slides, tribological polyphosphate and nano-diamond films, cells in culture, mollusk shells and bone. In all these cases the coating completely removed charging and enabled micro- and nano-XANES spectroscopy of insulators. Figure 8 shows a representative example of the results enabled by differential-thickness coating. As aforementioned, the combination of
Figure 7. Schematic diagram showing the preparation steps (top to bottom) for the differential thickness coating. First the biomineral (e.g., a mollusk shell) is embedded in epoxy, then the surface is polished with grit, down to 50 nm if high-resolution imaging is desired, then a thick coating (500 Å) of platinum is deposited by magnetron sputtering on the sample, while masking and not coating the central area, typically 3 mm in diameter, which will then be analyzed by X-PEEM. Finally, a thin coating (10 Å) is deposited on the whole sample surface. The photoelectron escape depth is on the order of 30 Å at the C K-edge, therefore photoelectrons from the shell can be collected through the 10 Å coating at the center. The thicker coating layer around the central region ensures perfect conductivity and a good electrical contact with the sample holder, therefore the sample can be kept at a reliable and stable voltage, it does not charge when electrons are extracted by X-ray illumination, and XANES analysis can be performed (De Stasio et al. 2003).
Organic-Mineral Interface in Biominerals
167
Figure 8. Distribution map of Ca in the nacreous layer of pinctada margaritifera, the Tahitian black pearl oyster. Dark indicates higher Ca concentration. The Ca-poor regions between nacre tablets are thicker organic matrix strata that could be due to seasonal changes, as suggested by other researchers of abalone nacre (Lin and Meyers 2005), although the thickness and spacing are different in pinctada. This map was acquired using the spectromicroscope for photoelectron imaging of nanostructures with X-ray s (SPHINX) instrument, which is an XPEEM (Frazer et al. 2004), on a fragment of nacreous layer from pinctada embedded in epoxy and polished.
XANES spectroscopy and X-PEEM microscopy is called spectromicroscopy. From an image such as the one in Figure 8, specific regions of interest can be selected (with the computer mouse), and spectra (e.g., C K-edge XANES spectra) can be extracted, showing different spectroscopic signatures characteristic of the crystals and the organic matrix. This powerful technique can investigate both the organic and the inorganic components of biominerals. Real-time, full-field imaging can be done with a maximum field of view of 180 μm in diameter. At this low magnification the area of interest in a biomineral can easily be identified, then zooming in to higher magnification down to a field of view of 1.7 μm allows highresolution imaging and spectroscopic analysis of biomineral nanostructures. The usual mode of data acquisition consists of acquiring stacks of images while scanning the photon energy, therefore obtaining “movies” that can then be played independent of the synchrotron source. In these movies the third coordinate is energy rather than time, and each pixel (typically 512 u 512 pixels in each image) contains the full XANES spectrum. The number of spectra simultaneously acquired is therefore 2 u 105. The resulting complexity in data analysis and interpretation initiated a considerable effort in software design, which is in constant evolution. From each one of these movies, all the elemental composition, oxidation state, coordination number, molecular or crystal structure information is available, and can be retrieved after data acquisition. Once carbon XANES spectra from the bound mineral-templating and unbound organic matrices of biominerals are obtained, the difference between those spectra reveals the organic-mineral interaction. Interpretation of the data is then done by comparison with the extensive literature on carbon XANES spectroscopy in individual amino acids and organic compounds (Stöhr 1992; Kaznacheyev et al. 2002; Carravetta et al. 1998; Myneni 2002b; Lawrence et al. 2003), or by comparison with reference molecules prepared and analyzed separately for a specific interaction. Two main limitations remain for XANES spectromicroscopy with the X-PEEM approach: the samples must be compatible with ultra-high vacuum, and must be flat. The vacuum compatibility requirement arises from the necessity to collect photoelectrons, which would recombine with gas molecules if these were present in the experimental chamber. The flatness requirement arises from the necessity to keep the sample at high voltage (typically –20 keV) to accelerate electrons away from the sample surface and towards the electron optics column. If the samples have high surface corrugation, greater than ~1 μm, severe distortions of the electric field provoke imaging artifacts and distortions, and in extreme cases even arching and
168
Gilbert, Abrecht, Frazer
sparking which preclude analysis. Surface corrugations lower than 0.5 μm in height, however, are very easy to obtain on solid samples such as minerals and biominerals by conventional surface polishing. Another complication in the XANES X-PEEM approach is the difficulty in separating co-localized mixed phases. In the presence of multiple proteins in a biomineral (for example bone), carbon K-edge spectra may be too complicated to interpret. In that case it is necessary to acquire spectra from separate single-components and deconvolve individual contributions to XANES spectra of the mixture. Separation and/or purification of single components may not be possible. Furthermore, the components may not be spectroscopically distinguishable. If the individual organic components contributing to XANES spectra are known and spectroscopically distinct, singular value decomposition or cluster analysis methods can be used to deconvolve and quantify their contributions (Pickering et al. 2000; Lerotic et al. 2004).
THE ORGANIC-MINERAL INTERFACE IN MICROBIAL BIOMINERALS Prokaryotic biominerals Microbes or prokaryotic cells, which include Bacteria and Archea, are single-celled organisms. They are small, ranging in size from 200 nm to 7 μm, and lack the tissue differentiation and sophisticated external structures immediately apparent in single- and multicelled eukaryotes. They also lack nuclei and membrane-bound internal organelles, with the notable exception of magnetosomes, surrounded by a phospholipid bilayer, in magnetotactic bacteria. Another exception are Gemmatata obscuriglobus, recently discovered bacteria with a double membrane surrounding their nucleoid, making them appear very similar to eukaryotes (Fuerst and Webb 1991; Lindsay et al. 2001). Prokaryotes, however, are among the most abundant organisms on Earth and can be found in virtually every known environment. In the driest location on Earth, the Atacama desert in Chile, 103 bacteria per gram of soil, can be found in the immediate underground (Maier et al. 2004). That number increases dramatically in more hospitable locations, up to 109 bacteria/g of soil in the rolling hills of Tuscany or the rain forests. Bacteria have also been found as deep under the Earth’s crust as man has drilled: over 6000 m underground in a South African mine (Takai et al. 2001; Newman and Banfield 2002). Prokaryotes not only inhabit all natural waters, soils and sediments, they are also capable of surviving in extremes of temperature, pH, or salinity. Additionally, unlike eukaryotes, which depend on glycolysis and require glucose as an energy source and oxygen as an oxidant, prokaryotes adapt to extract energy from diverse and often even multiple chemical reactions (Nealson and Stahl 1997). Sources of metabolic energy include redox reactions of minerals and ions in solution, as well as other inorganic molecules. One of the most eclectic of bacteria, Shewanella putrefaciens, can extract energy from reducing iron and manganese oxides, or sulfur, or fumarate or nitrate or many other compounds, in anaerobic conditions, depending on their availability. If oxygen is available instead, Shewanella becomes an aerobic organism using molecular oxygen to oxidize its energy source (organic carbon or hydrogen) (Myers and Nealson 1990). Returning to the definitions of the different biomineralizations, microbes mostly perform biologically induced mineralization (Lowenstam 1981; Frankel and Bazylinski 2003). Magnetotactic bacteria are an exception, and are, together with coccoliths, the most studied microbes to exhibit biologically controlled mineralization (Bazylinski and Frankel 2003). Biologically induced mineralization is especially significant for bacteria in anaerobic habitats, because in these conditions bacteria respire with sulfate and/or various metals as terminal electron acceptors in electron transport (Frankel and Bazylinski 2003).
Organic-Mineral Interface in Biominerals
169
Bacterial communities and biofilms thrive in environments rich in metal ions in solution and play an important role in mineral and/or rock dissolution, formation and deposition. From a materials science point of view, prokaryotes can be considered rock-catalysts: they enact or induce chemical transformations that lead to geochemical cycling and biomineral formation. Minerals formed by biologically induced mineralization are generally nucleated and grown extracellularly as a result of metabolic activity of the organism and subsequent chemical reactions involving metabolic byproducts. Microbes secrete one or more organic macromolecules that react with ions or compounds in the environment, resulting in the subsequent deposition of mineral particles. This biomineralization may be unintended (Frankel and Bazylinski 2003) or advantageous for the organism (Chan et al. 2004). The minerals formed are often nanoparticles with considerable particle-size distributions (Frankel and Bazylinski 2003). A more thorough review of the general characteristics of prokaryotic nanoparticulate biominerals is given elsewhere in this volume (Gilbert and Banfield 2005). As catalysts of biomineralization, however, prokaryotes are ideally configured. The larger the volume of an organism, the smaller the surface/volume ratio. Therefore the smallest organisms, microbes, are the most efficient in rapidly exchanging nutrients and waste byproducts with the surrounding environment. This metabolic advantage also implies that every bacterium can produce many times its body weight in biominerals. This efficiency has a price: bacteria, more likely than other larger organisms, are prone to become encrusted in their biomineral products. Furthermore, the microbial cell walls have a strong negative charge, with multiple sites available for metal binding. Metal ions in solution interact with the charged surface of the cell wall and initiate the formation of minerals. In other microbes, additional structures such as sheaths, capsules, S-layers and filaments provide binding and nucleation sites for mineralization. In addition, bacteria can induce mineralization by secreting extracellular polysaccharides and enzymes that, when released into the surrounding environment, transform minerals already present or induce the precipitation of new minerals and metastable mineral precursors. In the first case, the organic-mineral interface of Figure 3D is located on the surface of bacteria or on extruded but still connected structures, whereas in the second case the biomineralization occurs entirely extracellularly and away from the cell bodies. In both cases, the organic macromolecules induce nucleation and growth of the minerals, and are formed first. In prokaryotic biomineralization, however, a combination of the cell physiology and the chemistry of the surrounding environment determine the mineralization process and the final mineral product. No general statements, therefore, can confidently be made, and the paradigm of Figure 3A is certainly not widely applicable to prokaryotic biomineralization. The only general conclusion, perhaps, is that as a result of prokaryotic biomineralization the mineral changes redox state and the microbe gains energy, while in eukaryotic mineralization there is seldom a redox change, and the organism expends energy to form the biomineral. The structure and dynamics of the microbe-mineral interface can be studied with atomic force microscopy (Lower et al 2001a). The interactions at that interface were also reviewed by Juniper and Tebo (1995). Several groups did spectroscopic analysis of the minerals formed by microbes. Among these, several studies used extended X-ray absorption fine structure (EXAFS) spectroscopy, which explores the structure of the 2-3 nearest neighboring shells of atoms in minerals of biogenic origin. These studies include Suzuki et al. (2002), Tebo et al. (2004), and Villalobos et al. (2005). Another article analyzed the changes in elemental concentrations between adhering and suspended bacteria using hard X-ray fluorescence spectromicroscopy (Kemner et al. 2004). Other studies used XANES or STXM-XANES spectromicroscopy, to analyze the oxidation states of biomineral products (Grush et al. 1996; Tonner et al. 1999; Toner et al. 2005). The latter studies, being all in the soft-X-ray region have the potential of analyzing both the mineral and the organic components of biominerals. This is, again, due to the location in energy of the absorption thresholds of organic elements, C, N, O, etc. However, to
170
Gilbert, Abrecht, Frazer
the best of our knowledge all those studies have focused on the mineral components of bacterial biomineralization. We will later describe the first two cases in which the organic and mineral components, and the interface between them was analyzed using XANES spectromicroscopy (Chan et al 2004; Lawrence et al. 2003). Biomineralization on various prokaryotic structures is reviewed hereafter, including cell walls, capsules, S-layers, sheaths, and filaments.
Bacterial cell walls Bacterial cell walls can be classified into one of two groups based on their reaction to Gram’s stain, a stain used for visible light microscopy. The cell walls of both Gram-positive and Gram-negative bacteria are negatively charged and may induce biomineral formation. However, Gram-negative cells have been shown to precipitate only a fraction of the quantity of minerals produced by Gram-positive cells (Beveridge and Fyfe 1985). The cell wall for Gram-positive bacteria is made up of a layer of peptidoglycans and is separated from the interior of the cell by the plasma membrane. Peptidoglycans are composed of repeating dimers of N-acetylglucosamine and N-acetylmuramic acid. Each N-acetylmuramic acid molecule exhibits a side stem, which is a peptide with four or five amino acids. These stems covalently bond with other stems on neighboring peptidoglycan strands to form a strong and enduring 3-dimensional macromolecular structure that surrounds the bacterium. This cell wall is 15-25 nm thick (Fortin and Beveridge 2000). Both the glycan strands and peptide stems of peptidoglycans are rich in carboxyl groups and give the cell wall a net negative charge. Secondary polymers like teichoic or teichuronic acids, which contain negatively charged phosphoryl groups, are also bound in the peptidoglycan structure and increase the negativity of the cell surface. The large number of anionic reactive sites provided by the peptidoglycan layer is the main source of surface catalysis or mineralization in Gram-positive bacteria. The cell walls of Gram-negative bacteria are more complex, both structurally and chemically. The peptidoglycan layer is much thinner than in Gram-positive cells (3 nm), contains no secondary polymers and is bound on both sides by membranes composed of lipid-protein bilayers. The outer membrane of Gram-negative bacteria is unique and asymmetric: the inner layer is composed of phospholipids but the outer layer contains an unusual lipopolysaccharide (LPS) layer, which is found uniquely in prokaryotes. LPS is a large complex molecule with three components: a lipid core, a core polysaccharide and a short polysaccharide chain that contains unique and species-specific sugar sidechains. The core polysaccharide is rich in anionic phosphate and carboxyl groups and gives the cell wall a net negative charge. The sugar sidechains can extend up to 40 nm from core polysaccharides and may also contain negatively charged carboxyl groups (Langley and Beveridge 1999). In contrast to Gram-positive bacteria, the peptidoglycan layer is not only considerably thinner, but also shielded by the outer membrane in Gram-negative bacteria. Metal ions in the environment, therefore, cannot reach the peptidoglycans, presumably by the same mechanism excluding the Gram stain, and the biomineralization site is constituted of the numerous phosphate and carboxyl groups in the LPS layer (Fig. 9). Active cell metabolism can slow down biomineral formation on the cell wall. A clear example of this behavior is given by Bacillus subtilis cells. During metabolism, a membraneinduced proton motive force continuously pumps protons into the cell wall. Therefore metal ions must compete with protons for anionic cell wall sites, and the result is that these bacteria bind more minerals dead than alive (Urrutia et al. 1992).
Capsules Both Gram-positive and Gram-negative cells can possess additional outer layers that also
Organic-Mineral Interface in Biominerals
171
Figure 9. Transmission electron micrograph of Shewanella putrefaciens, a Gram-negative bacterium, exposed to nanocrystalline hematite. The crystals adhere to the cell wall due to its negative charge. This example illustrates that the bacterial cell wall not only binds ions from solution, but also alreadyformed mineral crystals. Reproduced with permission of the American Society of Microbiology, from Glasauer et al. (2001), Applied and Environmental Microbiology, Vol. 67, Fig. 5, p. 5544-5550.
induce biomineralization. Among these, capsules are highly hydrated amorphous matrices of exopolysaccharides or polypeptides, and strongly attached to the cell wall (see Fig. 10A). Capsules extend up to 1 μm away from the cell, and serve as protective shields for bacteria and, as cell walls, contain numerous carboxyl groups (see Fig. 10B). They contain 99 % water and allow for efficient transport of nutrients and waste products (Schultze-Lam et al. 1993). The negatively charged polysaccharides filter and capture the positive cations from solution and induce precipitation away from the cell, thereby protecting the organism from becoming encrusted with minerals.
A B
Figure 10. (A) TEM micrograph of bacteria, surrounded by exopolysaccharide (EPS) capsules, to which clay nanoparticles adhere. Reproduced with permission from www.nwri.ca/envirozine/images/bacteria_ e.gif. (B) SEM image of another bacterium exhibiting the remains of a capsule. Bacteria in this ground water sample were not fixed, nor treated in any way, therefore the morphology of the 99% water-containing capsule is altered by dehydration. Sample courtesy of Clara S. Chan.
172
Gilbert, Abrecht, Frazer
Capsules also stabilize the metal ion concentration around the cell wall. This is particularly advantageous when the metal ion concentration in the surrounding environment, which naturally fluctuates, reaches toxic levels. Experiments have shown that mutated forms of Klebsiella aerogenes, which do not produce capsules, were unable to survive in concentrations of metals in which the capsule-forming wild-type strains thrived (Bitton and Freihofer 1978).
S-layers S-layers are paracrystalline surface layers 5 to 25 nm thick, containing many ordered repeats of a single protein or glycoprotein. Both Archea and Bacteria may form S-layers. These self-assemble into a well-ordered two-dimensional shell around the bacterium (Sleytr 1997). S-layer proteins or glycoproteins assemble into regular patterns in which the unit cell has 2-, 3- 4- or 6-fold rotational symmetry. The well ordered lattice contains pores that are identical in size and morphology. Since the S-layer becomes the outermost layer for the bacterium, it can serve several functions. In addition to determining the external morphology and shape of the cell, S-layers can be extremely resistant to external chemical challenges such as salts, detergents and even enzymes, and thus provide a protective armor for the cell (Schultze-Lam and Beveridge 1994). An S-layer with well-defined pore size is a barrier for compounds with a large molecular weight and therefore acts as a molecular sieve. S-layers may promote cell adhesion to crystalline surfaces and can also provide a method of surface recognition. Before S-layer formation, the proteins and glycoproteins forming this layer have negative charges, while after formation, as the proteins self-assemble into the ordered structure, the charged amino acids are embedded within the layer, and in most cases the final S-layer presents a net neutral charge at the cell surface. However, some S-layer proteins retain exposed anionic residues and are capable of inducing biomineralization (Schultze-Lam et al. 1993). The cyanobacteria Synechococcus spp, have a 6-fold symmetry S-layer as their outermost surface. This strain showed that strontium and calcium carbonates and other minerals can form on the S-layer (Fortin and Beveridge 2000).
Sheaths Sheaths are well-defined biomineralized structures, such as hollow cylinders, that often surround chains of filamentous cells, and can be sites of biomineralization. Once biomineralized, the sheaths can remain long after the bacteria have died and decomposed. Leptothrix spp oxidizes ferrous iron in solution by secreting a complex matrix of heteropolysaccharides that catalyzes Fe oxidation and precipitation as iron oxyhydroxide (FeOOH) nanoparticles (Banfield et al. 2000). This bacterium thrives in high concentration of Fe and Mn, and leaves behind long sheaths as shown in Figure 11.
Filaments Other bacteria induce the formation of biomineral filaments. The microbial mineral filaments of Figure 12 are formed by iron-oxidizing bacteria that have not yet been isolated nor phylogenetically identified. All these filaments show an unprecedented ~ 2 nm wide, up to 10 Pm-long, curved pseudo-single crystals of akaganeite (E-FeOOH) in their cores (Chan et al. 2004), as presented in Figure 12B. The filaments are 20-200 nm wide, tangled, and composed of 2-line ferrihydrite (FeOOH·nH2O), surrounding the akaganeite cores (Fig. 12B). Formation of akaganeite in solution requires the presence of chloride, and is unexpected in fresh water. Chan et al. (2004) therefore suggested that akaganeite formation is catalyzed by organic polymers extruded by the bacteria. In this model, chemical bonds are formed between an organic molecule and ions in solution or amorphous nanoparticles, which are precursors of the crystal cores. As in other biominerals, the organic molecule acts as a template for a particular mineral polymorph, in this case, akaganeite. The paradigm of Figure 3A therefore
Organic-Mineral Interface in Biominerals
173
Figure 11. SEM micrograph of the FeOOH sheaths formed by Leptothrix spp in the Piquette mine, Tennyson, WI. Sample courtesy of Clara S. Chan.
B A
Figure 12. (A) SEM image of mineralized filaments produced by Fe-oxidizing bacteria in the Piquette abandoned and flooded mine in Tennyson WI. The filaments, approximately 100 nm in diameter are mineralized by FeOOH adhesion to the polysaccharide chains immediately after being extruded by the bacterium. On the right hand-side of the image a thinner, faint, strand is visible, possibly a non-mineralized polysaccharide fibril. Image used with permission of the American Journal of Science from De Stasio et al. (2005), American Journal of Science, Vol. 305, Fig. 4. Sample courtesy of Clara S. Chan. (B) TEM micrograph of a mineralized filament similar to the one in (A). The outer structure is formed by 1-2 nm wide 2-line ferrihydrite nanoparticles, while the central core of each filament exhibits a ~2 nmwide crystalline core of akaganeite (E-FeOOH). This crystal core is only 2-3 unit cells wide, and can be identified as akaganeite by its distinctive crystal spacing (0.75 nm). Image courtesy of Jillian F. Banfield.
174
Gilbert, Abrecht, Frazer
applies to this biomineral formation, although akaganeite crystal cores are formed upon aging of the mineral filaments, not as FeOOH nanoparticles are nucleated and grown. Bacterially extruded polymer fibrils were analyzed using the SPHINX spectromicroscope, and identified as polysaccharides by comparison of their carbon K-edge XANES spectra with those from representative reference compounds (Fig. 13). Mineralized filaments also revealed a polysaccharide spectrum at the carbon K-edge. FeOOH nanoparticles form a ~50 nm thick coating around the polysaccharide fibrils, hence the carbon signal is much lower, relative to the uncoated filaments. Most interestingly, carbon spectroscopy from mineralized filaments revealed a new peak, which was absent from spectra of non-mineralized polysaccharide fibrils. This spectral signature was interpreted as a V* resonance of a C-O single bond involved in FeOOH binding. It is likely that the C-O groups that interact with FeOOH originate from the carboxyl groups (O=C-O−) of acidic polysaccharides (e.g., alginate). Acidic polysaccharides have an excess of COO− groups that have high affinity for binding positive ions. Chan et al. (2004) concluded that carboxyl groups in the unidentified biofilm polysaccharide chains must be the sites at which FeOOH amorphous nano-precipitates form chemical bonds, templating for the formation of akaganeite crystal cores upon aging (Fig. 13). This is a relatively simple biomineral, in which the biomineral composite has only three components: an unidentified COO−-rich polysaccharide, akaganeite crystal fibers and ferrihydrite nanoparticles. Because of its simplicity, its analysis (still incomplete) suggested a possible templation mechanism, which could be inferred at the molecular level (Chan et al. 2004). Biomineralization of these bacterial filaments has common features with many other biominerals. As a careful reader may have already noticed in all the biominerals reviewed thus far, it is always negatively charged groups along the organic macromolecules that direct
Figure 13. SPHINX image and spectra of the filaments produced by iron-oxidizing bacteria. (A) mineralized filaments from the biofilm contain the akaganeite crystal core described in the text. (B) Carbon K-edge XANES spectra from non-mineralized (NM) fibrils and the mineralized (M) filament in (B), and reference organic molecules: alginate, albumin, lipid and DNA. Notice the similarity of the spectra from the NM fibrils and M filaments with the polysaccharide spectrum, and the additional structure in the one from the M filament: the peak at 292.4 eV was assigned to the C-O bond in carboxyl groups. Data from Chan et al. 2004.
Organic-Mineral Interface in Biominerals
175
the interaction with positively charged mineral ions, such as Fe3+ or Ca2+. In the case of the microbial acidic polysaccharides, negatively charged COO− groups are responsible. In cell walls, capsules, S-layers and sheaths, either acidic polysaccharides (rich in COO− groups) or peptide sequences rich in negatively charged amino acids (also exhibiting carboxyl groups) enact the nucleation and biomineral growth. The paradigm of Figure 3, therefore, has one more identified component: at the interface of the inorganic and mineral components is most frequently, perhaps always, a carboxyl group. We will now discuss the biomineralization paradigm in eukaryotes, and highlight the similarities of the core mechanisms.
THE ORGANIC-MINERAL INTERFACE IN EUKARYOTIC BIOMINERALS Eukaryotic biominerals The majority of animals mineralize at least part of their bodies, usually as internal skeletons or external armors, using a variety of proteins and minerals with calcium carbonates, calcium phosphates, and silica being the most common (Currey 2005). Other eukaryotic biominerals contain a variety of elements, including barium, strontium, iron, manganese, magnesium, copper, zinc, and sulphur. These complex composites, often hierarchically organized, include bone, teeth, eggshell, mollusk shells, crustacean shells, corals, sponge skeletons, the statoliths through which trees sense gravity and grow vertically even on the steepest mountain slopes, the otoliths in the inner ear of most animals, from humans to zebra fish (Söllner et al. 2003), warm jaws (Lichtenegger et al. 2002), and many more composites, in excess of 70 biominerals known nowadays. See Weiner and Dove (2003) and Mann (2001) for the most recent complete lists of biominerals. Eukaryotic biominerals can be distinguished from their abiotic counterparts because of their uniform crystal size and habit and the regular nanostructures that result from biologically controlled mineralization (Weiner and Dove 2003). The control, again, is enacted by the organic matrix and its macromolecules: proteins, glycoproteins, and carbohydrates. Mollusk shells, and in particular that of red abalone (Haliotis rufescens), have been widely studied for their very regular repeating crystalline domains and astounding properties. The nacre layer, or mother of pearl, at the inner surface of the abalone shell has a fracture resistance 3000 times greater than that of aragonite, the pure mineral of which it is composed. The toughening effect is due to well-defined nanolayers of organics at the interfaces between micro-tiles of aragonite (Kamat et al. 2000; Currey 2005). In nacre and many other eukaryotic biomineral structures, the stiff mineral tiles absorb the bulk of the externally applied loads. The alternating organic layers, in turn, provide toughness, prevent the spread of the cracks into the interior of the structure, and even confer a remarkable capacity for recovery after deformation (Smith et al. 1999). Two other structural characteristics of eukaryotic biominerals contribute to the superior mechanical properties of skeletons made from them. First, at the lowest level, they are often made of tiny crystals that are smaller than the “Griffith length” necessary for cracks to spread (Gao et al. 2003). Second, the precision with which they can be laid down (changing their main orientation over a few micrometers, for instance) allows exquisite adaptations to the loads to which the skeletons are subjected (Currey 2005). Nacre is composed of approximately 95 mass percent aragonite and 5 mass percent organic macromolecules. We note that various groups have studied other systems of marine biominerals. For instance, in studies on marine sponges such as Tethya aurantia that form silica needles, research has focused on the role of the proteins and their possible use in organosilicon chemistry. The ultimate goal there is to manufacture silicon based polymeric materials in milder
176
Gilbert, Abrecht, Frazer
conditions than those used in today’s industry. The proteins responsible for biological silica synthesis have received a lot of attention recently, including their very own name, “silicateins” (Shimizu et al. 1998; Shimizu and Morse 2000; Weaver and Morse 2003; Pozzolini et al. 2004). In this section, we will focus on nacre and promote our opinion that the key to nacre formation lies at the organic-mineral interface. Understanding the role of that interface is thus pivotal to the development of biomimetics, that is, the field that imports biologically inspired concepts and mechanisms into the design and fabrication of new materials.
The nano-structure of nacre Mollusk shell and pearl nacre presents a highly regular brick and mortar arrangement in which aragonite tiles, 500 nm thick along the c-axis, 10-20 μm wide along the a and b axes (Mann 2001), and polygonal in shape, form extremely flat layers (Fig. 14). Subsequent layers of aragonite tiles and organic matrix, composed of silk-like proteins and glycoproteins, keep alternating across the entire thickness of the nacreous layer (Currey 1977; Jackson et al. 1988; Schäffer et al. 1997). The regularly repeating layering of nacre, the semi-transparency of aragonite and the pitch of this periodic structure (500 nm), which falls in the middle of the visible light wavelength range (400-700 nm), all combine to generate the iridescence typical of mother of pearl. As the observation angle varies, the color perceived changes due to the variation in apparent spacing between the semi-transparent layers of crystals. Furthermore, there is considerable crystallographic alignment, with the c-axes of most tiles lying in the direction perpendicular to the tiled planes. Aragonite is an orthorhombic polymorph of CaCO3, whereas the outer prismatic layer of all mollusk shells is formed by columns of the trigonal-rhombohedral calcite polymorph. In the prismatic layer the c-axes are along the long axis of each prismatic column, perpendicular to the shell surface and parallel to the nacreous layer c-axes. Epithelial cells form a layer along the inner surface of the shell, called mantle, and secrete all the macromolecules of the organic matrix (see Figs. 15 and 16). Mechanically nacre is stiff and resistant to fracture; it therefore combines the behavior of flexible materials that can absorb energy by rearranging their molecular conformation (distortion and deformation), and that of hard and stiff materials. On the other hand, it does not suffer from the limitations of its components, as it is neither compliant (as most soft materials)
Figure 14. SEM micrograph of red abalone nacre tiles seen at a fractured edge.
Organic-Mineral Interface in Biominerals
177
Figure 15. Schematic, not to scale, of a vertical cross-section of the outer edge of the shell and mantle of red abalone (Haliotis rufescens) with an enlargement indicating the thickness of each shell structure. The size of the extrapallial space is exaggerated for clarity. Used by permission of the American Chemical Society, from Zaremba et al. (1996) Chemistry of Materials, Vol. 8, Fig. 1a, p. 680.
Figure 16. A proposed model for the organic matrix structure in nacre of the bivavlve shell Atrina serrata, observed in the hydrated state by cryo-TEM. Note that silk was found to be present in both phases, the water-soluble and water-insoluble matrices. Reproduced with permission of Elsevier, from Levi-Kalisman et al. (2001), J. Structural Biology, Vol. 135, Fig. 1, p. 8-17.
nor brittle (as most hard materials). Jackson et al. (1988) reported the Young’s modulus of nacre in the bivalve Pinctada umbricata to be approximately 70 GPa and 60 GPa for dry and wet samples, respectively, whereas the tensile strength is a corresponding 170 MPa and 140 MPa. The work of fracture varies between 350 and 1240 J/m2 (up to 3000u higher than that of CaCO3) (Jackson et al. 1988).
178
Gilbert, Abrecht, Frazer
Interestingly, the organic layers are thick along the c-axis, very thin and hard to detect, or non-existent on the lateral surfaces of tiles (see Fig. 16). The thick organic layers between tile layers are consistent with the model in which sliding of the tiles give nacre its resistance to fracture (Lin and Meyers 2005). It is conceivable that upon sliding, the chains of looped organic macromolecules stretch and break loops without breaking the main molecular chain, thus conferring nacre with its elastic behavior (Smith et al. 1999).
Start and stop signals in nacre growth Several groups studied the growth of abalone nacre and other mollusks (Addadi and Weiner 1985; Lowenstam and Weiner 1989; Belcher et al. 1996; Zaremba et al. 1996; Lin and Meyers 2005). In nacre the organic matrix is a true matrix: its continuous sheets are formed first (Fig. 3A) and they provide the many nucleation sites, which initiate crystal growth to fill the voids in the three-dimensional organic matrix. This the “start” signal. The position and nature of the nucleation points determines the crystal species and polymorph (Falini et al. 1996), while the structure of the voids in the matrix, presumably, determines crystal habit and size. Laterally, along the a and b axes, crystal growth is stopped by crystal-crystal contacts. At the surface of nacre, which is the growth front, tiles are piled up as stacks of coins, or cones, or Christmas trees, as many authors have called them (see Fig. 15). Lateral growth along the a and b (in plane) directions occurs in these cones until adjoining terraces come in contact. This is one of the “stop” signals, and explains the polygonal appearance of nacre tiles. Vertically, however, the reproducibly perfect thickness of 500 nm must be controlled by another extremely accurate “stop” signal, transduced by the preformed matrix macromolecules. Such signals, and the matrix molecules involved in the growth cessation, are still unknown (Lowenstam and Weiner 1989). Since the aragonite tiles have a relatively small thickness in the c direction (the pure mineral aragonite crystals are much more elongated along that direction, and are much longer than 500 nm), there must be a signal stopping this growth. This signal may be linked to stereochemical adsorption of proteins in the growth of calcite crystals demonstrated by Addadi and Weiner (1985) and Addadi et al. (1987). It can be speculated that the host animal produces the proteins that stop growth in a periodic manner (Lin and Meyers 2005). Another relevant observation is that the size of the aragonite tiles does not depend on the size of the animal. The growth of nacre in space and time has been analyzed in vivo and in vitro using the flat pearl system (Fritz et al. 1994). They found that nacre growth begins with the secretion of proteins that mediate the precipitation of calcite. Other proteins then induce a phase transition from calcite to aragonite (Zaremba 1996; Belcher and Gooch 2000; Lin and Meyers 2005). Some of the matrix macromolecules involved in nacre formation have been identified. Among the known molecules are the insoluble E-chitin central sheet in each organic matrix layer (Addadi and Weiner 1985), insoluble silk fibroin protein layers above and below this sheet, and unidentified soluble acidic macromolecules. Even without identification, however, these macromolecules can be extracted from nacre, exposed to non-shell E-chitin and silk fibroin in a saturated solution of CaCO3 and induce nucleation and growth of aragonite, not calcite (Falini 1996). Aragonite formation is induced by the macromolecules even when seeding calcite crystals! (Thompson et al. 2000). This is particularly clear proof of the role of these unknown acidic macromolecules in polymorph selection, since aragonite is much less stable than calcite. The Thompson et al. (2000) experiment proves that nucleation and polymorph selection are independent in nacre formation. The recent discovery and sequence of Asprich proteins contributes to the clarification of the nature of these acidic macromolecules (Gotliv et al. 2005). Again, as already noted in microbial biominerals, it is the negatively
Organic-Mineral Interface in Biominerals
179
charged amino acids aspartate and glutamate in acidic glycoproteins in mollusk shell that are believed to initiate biomineral formation (Mann 1988, 2001; Mann et al. 2000; Weiss et al. 2000; Weiner and Dove 2003; Gotliv et al. 2005). Stereochemical recognition determines the specific interactions between aspartic acidrich proteins and certain faces of various calcium dicarboxylate crystals, which are used as model systems. The specific faces have carboxylate groups oriented perpendicular to the face and can therefore optimally complete the coordination polyhedron around the protein bound calcium ions (Addadi and Weiner 1985). A more recent study, which explored the subtle links between atomic scale dynamics and macroscopic crystal faces, clarifies further this issue and reconciles the stereochemical recognition model with the simple mechanistic model of crystal growth by step propagation across crystallographic faces, the terrace-ledge-kink model (De Yoreo and Dove 2004). A possible stereochemical recognition model for abalone nacre is reported in Figure 17.
Synergy of mechanisms for nacre growth Several mechanisms likely conjoin in the formation of nacre. These are:
x Heteroepitaxial nucleation: in this case nucleation and growth of each aragonite tile are detrmined by the organic matrix sheet beneath it (Schäffer et al. 1997).
Figure 17. Unit cell of aragonite: (a) perspective view (b) normal view showing schematic position of (Asp-Y)n and E-pleated organic matrix sheet. Notice protruding Ca ions on (001) face: black atoms are Ca, small black are C and gray are oxygen. This model is in perfect agreement with the paradigm of Figure 3. Reproduced with permission of Elsevier, from Lin and Meyers (2005), Materials Science & Engineering, Vol. 390, Fig. 5, p. 27-41.
180
Gilbert, Abrecht, Frazer x Epitaxial crystal growth of the ith crystal layer, connected to the (i − 1)th crystal layer by mineral bridges. In this case the crystal would be uninterrupted across different tiles (Schäffer et al. 1997).
x After nucleation on the organic matrix sheet, the growth of aragonite may be mediated or catalyzed by proteins in solution (Falini et al. 1996). All of these mechanisms, and possibly others not yet discovered, are likely to control in synergy the growth and architecture of nacre.
BIOMINERAL GLUE: THE CARBOXYL GROUP. We have already highlighted the similarity of all organic-mineral interface in prokaryotic biominerals. In the few biominerals thus far analyzed at the molecular level, including prokaryotic and eukaryotic, it is often negatively charged carboxyl groups (COO-) that attract positive ions from solution, and these nucleate for biomineral crystal growth. The carboxyl groups are located either along polysaccharide chains or in acidic amino acids, along the sequences of protein and glycoprotein rich in aspartate or glutamate (Mann 1988, 2001; Mann et al. 2000; Weiss et al. 2000; Weiner and Dove 2003; Gotliv et al. 2005). The very reason the latter are commonly called aspartate and glutamate, and not aspartic and glutamic acid, highlights the fact that they are nearly always deprotonated, and therefore their carboxyl group terminations are negatively charged at physiological pH (the typical pK for both is 4.4; Stryer 1995). Carboxyl-group-rich proteins and/or polysaccharides are the most common and most effective cation-binding macromolecules that any organism can assemble to bind mineral precursors and either control or induce biomineralization. We hypothesize that this is why this molecular functional group was selected in many biominerals as the organic-mineral interface of Figure 3D. In this hypothesis, the carboxyl group is a molecular “glue” of choice for biominerals. Interestingly, even when this hypothesis is not confirmed in specific biominerals, by analyzing with XANES an intact and pristine biomineral from both the mineral and the macromolecule perspective, it is always possible to identify spectral signatures, even if the bond sites and functional groups involved are not those expected.
CONCLUSION Frequently in biology a gene or a protein is identified but its function is unknown for decades. Even now, in the most intensely studied genomes, 25% or more of the genes are yet to be associated with a function. In biomineralization it is quite the contrary: most often the function, namely, the formation of a specific biomineral structure is identified, but the molecule or molecules responsible for it are unknown. We know, however, that composite biominerals form as a result of complex chemical interactions between organic and inorganic matrices, and that the former acts as a template for the latter, according to a paradigm presented in Figure 3. Few approaches enable the simultaneous analysis of both the organic and mineral components in biominerals and their interface. XANES spectromicroscopy studies of that interface might reveal some of the molecular details of templation mechanisms (e.g., Figs. 13 and 17). We note that at this interface, in diverse eukaryotic and prokaryotic biomineralization, there is frequently a carboxyl group. Acidic amino acids or polysaccharides with excess carboxyl groups are the most common and most effective cation-binding chemical species that any organism can assemble to bind mineral precursors and initiate templation. In this sense COO- is a biomineral preferred “glue”.
Organic-Mineral Interface in Biominerals
181
Ultimately, once the molecular-scale chemistry of the interface is elucidated in more biominerals, it may be possible to harness it and synthesize novel biomimetic composite materials that self-assemble and, as natural biominerals, outperform the sum of their components. Two conceivable avenues towards bio-inspired synthetic materials are: (i) templation by structured organic surfaces, such as self-assembled monolayers or Langmuir-Blodgett films and functionalized polymers; and (ii) precipitation from solution with growth modifiers, such as ions, proteins, and synthetic polymers (Han and Aizenberg 2003). The first biomineral-inspired man-made material synthetically reproduced the nacre assembly with alternating organic and inorganic matrices, using synthetic organic molecules and clay crystals. Remarkably, the tensile strength of the prepared multilayers was similar to that of nacre, and the Young’s modulus approached that of lamellar bone (Tang et al. 2004). We envision a future with many more of these synthetic materials, assembling and structuring themselves at different scales as biominerals have done for well over 500 million years. Impact resistant cars, trains and spacecrafts, in which cracks do not propagate might one day have an attractive mother of pearl luster. In the meantime, the best we can do is to analyze and understand at the molecular level the formation mechanisms of biominerals. The paradigm introduced here includes some prokaryotic and many eukaryotic biomineralization mechanisms. In prokaryotic biominerals, however, the organic components are fewer and simpler to analyze, while the mineral diversity is enormous. This is a distinct advantage offered by prokaryotes for understanding biomineral formation. Following that paradigm as an incomplete but useful starting point, and analyzing as many prokaryotic biominerals as possible, we anticipate that the mechanisms of biomineral formation will be further elucidated. The general rules, the exceptions and the anomalies that are characteristic of the living world will eventually be clear for the biomineral world.
ACKNOWLEDGMENTS We thank Jill Banfield and Clara Chan for their expert, friendly and continued collaboration, and most importantly for bringing GDS into the exciting adventure of discovering templation of akaganeite crystal fibers. That experiment sparked her interest in biomineralization mechanisms, a field now impossible to abandon! We thank Ben Gilbert and Ronke Olabisi for critically reviewing this manuscript. GDS acknowledges the support of the UW-Graduate School, the Department of Physics, the Synchrotron Radiation Center, Air Force grant FA9550-05-1-0204 and NSF grant PHY-0523905. X-PEEM experiments were performed at the UW-Synchrotron Radiation Center, supported by NSF-DMR 0084402.
REFERENCES Addadi L, Moradian J, Shay E, Maroudas NG, Weiner S (1987) A chemical model for the cooperation of sulfates and carboxylates in calcite crystal nucleation: relevance to biomineralization. Proc Natl Acad Sci USA 84:2732-2736 Addadi L, Weiner S (1985) Interactions between acidic proteins and crystals: stereochemical requirements in biomineralization. Proc Natl Acad Sci USA 82(12):4110-4114 Addadi L, Weiner S (1997) Biomineralization: a pavement of pearl. Nature 389:912-915 Aizenberg J, Weaver JC, Thanawala MS, Sundar VC, Morse DE, Fratzl P (2005) Skeleton of Euplectella sp.: structural hierarchy from the nanoscale to the macroscale. Science 309:275-278 Banfield JF, Nealson KH (eds) (1997) Geomicrobiology: Interactions Between Microbes and Minerals. Reviews in Mineralogy, Volume 35. Mineralogical Society of America, Washington D.C.
182
Gilbert, Abrecht, Frazer
Banfield JF, Welch SA, Zhang H, Thomsen-Ebert T, Penn RL (2000) Aggregation-based crystal growth and microstructure development in natural iron oxyhydroxide biomineralization products. Science 289:751754 Bazylinski DA, Frankel RB (2003) Biologically controlled biomineralization in prokaryotes. Rev Mineral Geochem 54:217-247 Beauchemin S, Hesterberg D, Chou J, Beauchemin M, Simard RR, Sayers DE (2003) Speciation of phosphorus in phosphorus-enriched agricultural soils using X-ray absorption near-edge structure spectroscopy and chemical fractionation. J Environ Qual 32(5):1809-1819 Belcher AM, Gooch EE (2000) Protein components and inorganic structure in shell nacre. In: Biomineralization. Baeuerlein E (ed) Wiley-VCH, Weinheim, Germany, p 221–249 Belcher AM, Wu XH, Christensen RJ, Hansma PK, Stucky GD, Morse DE (1996) Control of crystal phase switching and orientation by soluble mollusk-shell proteins. Nature 381:56-58 Benfatto M, Della Longa S, Natoli CR (2003) The MXAN procedure: a new method for analysing the XANES spectra of metalloproteins to obtain structural quantitative information. J Synchro Radiat 10:51-57 Beveridge TJ, Fyfe WS (1985) Metal fixation by bacterial cell walls. Can J Earth Sci 22:1893-1898 Bitton G, Freihofer V (1978) Influence of extracellular polysaccharide on the toxicity of copper and cadmium toward Klebsiella aerogenes. Microb Ecol 4:119-125 Bozek JD, Bancroft GM, Cutler JN, Tan KH (1990) Vibrationally resolved core-level photoelectron spectroscopy: Si 2p levels of SiH4 and SiF4 molecules. Phys Rev Lett 65(22):2757-2760 Carravetta V, Plashkevych O, Ågren H (1998) A theoretical study of the near-edge X-ray absorption spectra of some larger amino acids. J Chem Phys 109:1456-1464 Chan CS, De Stasio G, Welch SA, Girasole M, Frazer BH, Nesterova MV, Fakra S, Banfield JF (2004) Microbial polysaccharides template assembly of nanocrystal fibers. Science 303:1656-1658 Currey JD (1977) Mechanical properties of mother of pearl in tension. Proc R Soc Lond B 196:443-463 Currey JD (2005) Hierarchies in biomineral structures. Science 309:253-254 De Stasio G, Casalbore P, Pallini R, Gilbert B, Sanita F, Ciotti MT, Rosi G, Festinesi A, Larocca LM, Rinelli A, Perret D, Mogk DW, Perfetti P, Mehta MP, Mercanti D (2001) Gadolinium in human glioblastoma cells for gadolinium neutron capture therapy. Cancer Res 61:4272-4277 De Stasio G, Dunham D, Tonner BP, Mercanti D, Ciotti MT, Coluzza C, Perfetti P, Margaritondo G (1993) Aluminum in rat cerebellar neural cultures. Neuroreport 4:1175-1178 De Stasio G, Frazer BH, Gilbert B, Richter KL, Valley JW (2003) Compensation of charging in X-PEEM: a successful test on mineral inclusions in 4.4 Ga old zircon. Ultramicroscopy 98:57-62 De Stasio G, Mercanti D, Ciotti MT, Droubay TC, Perfetti P, Margaritondo G, Tonner BP (1996) Synchrotron spectromicroscopy of cobalt accumulation in granule cells, glial cells and GABAergic neurons. J Physics D29:259-262 De Stasio G, Schmitt MA, Gellman SH (2005) Spectromicroscopy at the organic-inorganic interface in biominerals. Am J Sci 305: De Yoreo JJ, Dove PM (2004) Shaping crystals with biomolecules. Science 306:1301-1302 De Yoreo JJ, Vekilov PG (2003) Principles of crystal nucleation and growth. Rev Mineral Geochem 54:57-93 Einstein A (1905) Über einen die Erzeugung und Verwandlung des Lichtes betreffenden heuristischen Gesichtpunkt (On a Heuristic point of view about the creation and conversion of light). Annalen der Physik 17:132-148 Falini G, Albeck S, Weiner S, Addadi L (1996) Control of aragonite or calcite polymorphism by mollusk shell macromolecules. Science 271:67-69 Fitts JP, Persson P, Brown GE Jr, Parks GA (1999) Structure and bonding of Cu(II)-glutamate complexes at the gamma-Al2O3-water interface. J Colloid Interface Sci 220:133-147 Fortin D, Beveridge TJ (2000) Mechanistic routes to biomineral surface development. In: Biomineralization. Baeuerlein E (ed) Wiley-VCH, Weinheim, Germany, p 7-24 Fortin D, Ferris FG, Beveridge TJ (1997) Surface-mediated mineral development by bacteria. Rev Mineral 35: 161-180 Frankel RB, Bazylinski DA (2003) Biologically induced mineralization by bacteria. Rev Mineral Geochem 54:95-114 Frazer BH, Girasole M, Wiese LM, Franz T, De Stasio G (2004) Spectromicroscope for the PHotoelectron Imaging of Nanostructures with X-rays (SPHINX): performance in biology, medicine and geology. Ultramicroscopy 99:87-94 Frazer BH, Waychunas GA, Xu H, De Stasio G (2005) Quantitative mapping of the ferrous/ferric iron ratio in oxide minerals using synchrotron spectromicroscopy. Am Mineral, submitted Fritz M, Belcher AM, Radmacher M, Walters DA, Hansma PK, Stucky GD, Morse DE (1994) Flat pearls from biofabrication of organized composites on inorganic substrates. Nature 371:49-51 Fuerst JA, Webb RI (1991) Membrane-bounded nucleoid in the eubacterium Gemmatata obscuriglobus. Proc Natl Acad Sci 88:8184-8188
Organic-Mineral Interface in Biominerals
183
Gao H, Ji B, Jäger IL, Arzt E, Fratzl P (2003) Materials become insensitive to flaws at nanoscale: lessons from nature. Proc Natl Acad Sci 100:5597-5600 Gilbert B, Banfield JF (2005) Molecular scale processes involving nanoparticulate minerals in biogeochemical systems. Rev Mineral Geochem 59:109-156 Gilbert B, Frazer BH, Belz A, Conrad PG, Nealson KH, Haskel D, Lang JC, Srajer G, De Stasio G (2003a) Multiple scattering calculations of bonding and X-ray absorption spectroscopy of manganese oxides. J Phys Chem A 107:2839-2847 Gilbert B, Frazer BH, Naab F, Fournelle J, Valley JW, De Stasio G (2003b) X-ray absorption spectroscopy of silicates for in situ sub-micrometer mineral identification. Am Mineral 88:763-769 Gilbert B, Frazer BH, Zhang H, Huang F, Banfield JF, Haskel D, Lang JC, Srajer G, De Stasio G (2002) X-ray absorption spectroscopy of the cubic and hexagonal polytypes of zinc sulfide. Phys Rev B 66(245205) Gilbert B, Perfetti L, Fauchoux O, Redondo J, Baudat PA, Andres R, Neumann M, Steen S, Gabel D, Mercanti D, Ciotti MT, Perfetti P, Margaritondo G, De Stasio G (2000) The spectromicroscopy of boron in human glioblastomas following administration of BSH. Phys Rev E 62:1110-1118 Glasauer S, Langley S, Beveridge TJ (2001) Sorption of Fe (hydr)oxides to the surface of shewanella putrifaciens: cell-bound fine-grained minerals are not always formed de novo. Appl Environ Microbiol 67:5544-5550 Gotliv BA, Kessler N, Sumerel JL, Morse DE, Tuross N, Addadi L, Weiner S (2005) Asprich: a novel aspartic acid-rich protein family from the prismatic shell matrix of the bivalve Atrina rigida. Chembiochem 6: 304-314 Grush MM, Chen J, Stemmler TL, George SJ, Ralston CY, Stibrany RT, Gelasco A, Christou G, Gorum SM, Penner-Hahn JE, Cramer SP (1996) Manganese L-edge X-ray absorption spectroscopy of manganese catalase from Lactobacillus plantarum and mixed valence manganese complexes. J Am Chem Soc 118: 65-69 Han Y-J, Aizenberg J (2003) Effect of magnesium ions on oriented growth of calcite on carboxylic acid functionalized self-assembled monolayer. J Am Chem Soc 125:4032-4033 Hertz H (1887) Über einen Einfluß des ultravioletten Lichtes auf die electrische Entladung (An effect of ultraviolet light on electrical discharge). Annalen der Physik Chemie 31:983-1000 Jackson AP, Vincent JF, Turner RM (1988) The mechanical design of nacre. Proc R Soc London B 234:415440 Juniper SK, Tebo BM (1995) Microbe-metal interactions and mineral deposition at hydrothermal vents. In: The Microbiology of Deep-Sea Hydrothermal Vents. Karl DM (ed) CRC Press, New York, p. 219–253 Kamat S, Su X, Ballarini R, Heuer AH (2000) Structural basis for the fracture toughness of the shell of the conch strombus gigas. Nature 405:1036-1040 Kaznacheyev K, Osanna A, Jacobsen C, Plashkevych O, Vahtras O, Ågren H, Carravetta V, Hitchcock AP (2002) Innershell absorption spectroscopy of amino acids. J Phys Chem A 106:3153-3168 Kemner KM, Kelly SD, Lai B, Maser J, O’loughlin EJ, Sholto-Douglas D, Cai Z, Schneegurt MA, Kulpa CF Jr, Nealson KH (2004) Elemental and redox analysis of single bacterial cells by X-ray microbeam analysis. Science 306:686-7 Kilcoyne ALD, Tyliszczak T, Steele WF, Fakra S, Hitchcock P, Franck K, Anderson E, Harteneck B, Rightor EG, Mitchell GE, Hitchcock AP, Yang L, Warwick T, Ade H (2003) Interferometer-controlled scanning transmission X-ray microscopes at the Advanced Light Source. J Synchrotron Rad 10:125-136 Labrenz M, Druschel GK, Thomsen-Ebert T, Gilbert B, Welch SA, Kemner KM, Logan GA, Summons RE, De Stasio G, Bond PL, Lai B, Kelly SD, Banfield JF (2000) Formation of sphalerite (ZnS) deposits in natural biofilms of sulfate-reducing bacteria. Science 290:1744-1747 Langley S, Beveridge TJ (1999) Effect of O-side-chain-lipopolysaccharide chemistry on metal binding. Appl Environ Microbiol 65:489-498 Lawrence JR, Swerhone GD, Leppard GG, Araki T, Zhang X, West MM, Hitchock AP (2003) Scanning transmission X-ray, laser scanning, and transmission electron microscopy mapping of the exopolymeric matrix of microbial biofilms. Appl Environ Microbiol 69:5543-5554 Lerotic M, Jacobsen C, Schafer T, Vogt S (2004) Cluster analysis of soft X-ray spectromicroscopy data. Ultramicroscopy 100:35-57 Levi-Kalisman Y, Falini G, Addadi L, Weiner S (2001) Structure of the nacreous organic matrix of a bivalve mollusk shell examined in the hydrated state using cryo-TEM. J Struct Biol 135(1):8-17 Lichtenegger HC, Schöberl T, Bartl MH, Waite H, Stucky GD (2002) High abrasion resistance with sparse mineralization: copper biomineral in worm jaws. Science 298:389-392 Lin A, Meyers MA (2005) Growth and structure in abalone shell. Mater Sci Eng A 390:27-41 Lindsay MR, Webb RI, Strous M, Jetten MS, Butler MK, Forde RJ, Fuerst JA (2001) Cell compartmentalisation in planctomycetes: novel types of structural organisation for the bacterial cell. Arch Microbiol 175:413429
184
Gilbert, Abrecht, Frazer
Lopez-Garcia P, Duperron S, Philippot P, Foriel J, Susini J, Moreira D (2003) Bacterial diversity in hydrothermal sediment and epsilonproteobacterial dominance in experimental microcolonizers at the Mid-Atlantic Ridge. Environon Microbiol 5:961-976 Lowenstam HA (1981) Minerals formed by organisms. Science 211(4487):1126-1131 Lowenstam HA, Weiner S (1989) On Biomineralization. Oxford University Press, Oxford Lower SK, Hochella MF Jr, Beveridge TJ (2001a) Bacterial recognition of mineral surfaces: nanoscale interactions between Shewanella and -FeOOH. Science 292:1360-1363 Lower SK, Tadanier CJ, Hochella MF Jr (2001b) Dynamics of the mineral–microbe interface: use of biological force microscopy in biogeochemistry and geomicrobiology. Geomicrobiology J 8:63-76 Maier RM, Drees KP, Neilson JW, Henderson DA, Quade J, Betancourt JL (2004) Microbial life in the Atacama desert. Science 306:1289 Mann K, Weiss IM, Andre S, Gabius HJ, Fritz M (2000) The amino-acid sequence of the abalone (Haliotis laevigata) nacre protein perlucin. Eur J Biochem FEBS 267:5257-5264 Mann S (1988) Molecular recognition in biomineralization. Nature 332:119-124 Mann S (2001) Biomineralization: Principles and Concepts in Bioinorganic Materials Chemistry. Vol 17. Oxford University Press, Oxford Mount AS, Wheeler AP, Paradkar RP, Snider D (2004) Hemocyte-mediated shell mineralization in the eastern oyster. Science 304(5668):297-300 Myers CR, Nealson KH (1990) Respiration-linked proton translocation coupled to anaerobic reduction of manganese(IV) and iron(III) in Shewanella putrefaciens MR 1. J Bacteriol 172:6232-8 Myneni SC, Tokunaga TK, Brown GE Jr (1997) Abiotic selenium redox transformations in the presence of Fe(II,III) oxides. Science 278:1106-1110 Myneni SCB (2002a) Formation of stable chlorinated hydrocarbons in weathering plant material. Science 295: 1039-1041 Myneni SCB (2002b) Soft X-ray spectroscopy and spectromicroscopy studies of organic molecules in the environment. Rev Mineral Geochem 49:485-579 Myneni SCB, Brown JT, Martinez GA, Meyer-Ilse W (1999) Imaging of humic substance macromolecular structures in water and soils. Science 286:1335-1337 Nealson KH, Stahl DH (1997) Microorganisms and biogeochemical cycles: what can we learn from stratified communities? Rev Mineral 35:5-34 Newman DK, Banfield JF (2002) Geomicrobiology: how molecular-scale interactions underpin biogeochemical systems. Science 296:1071-1077 Pickering IJ, Prince RC, Salt DE, George GN (2000) Quantitative, chemically specific imaging of selenium transformation in plants. Proc Natl Acad Sci USA 97:10717-10722 Pozzolini M, Sturla L, Cerrano C, Bavestrello G, Camardella L, Parodi AM, Raheli F, Benatti U, Muller WEG, Giovine M (2004) Molecular cloning of silicatein gene from marine sponge Petrosia ficiformis (Porifera, Demospongiae) and development of primmorphs as a model for biosilicification studies. Marine Biotech 6:594-603 Schäffer TE, Ionescu-Zanetti C, Proksch R, Fritz M, Walters DA, Almqvist N, Zaremba CM, Belcher AM, Smith BL, Stucky GD, Morse DE, Hansma PK (1997) Does abalone nacre form by heteroepitaxial nucleation or by growth through mineral bridges? Chem Mater 9:1731-1740 Schultze-Lam S, Beveridge TJ (1994) Physicochemical characteristics of the mineral-forming S-layer from the cyanobacterium synechococcus strain GL24. Can J Microbiol 40:216-223 Schultze-Lam S, Thompsom JB, Beveridge TJ (1993) Metal ion immobilization by bacterial surfaces in fresh water environments. Water Poll Res J Canada 28:51-81 Shimizu K, Cha J, Stucky GD, Morse DE (1998) Silicatein alpha: Cathepsin L-like protein in sponge biosilica. Proc Natl Acad Sci USA 95:6234-6238 Shimizu K, Morse DE (2000) The biological and biomimetic synthesis of silica and other polysiloxanes. In: Biomineralization. Baeuerlein E (ed) Wiley-VCH, Weinheim, Germany, p 207–220 Sleytr UB (1997) Basic and applied S-layer research: an overview. FEMS Microbiol Rev 20:5-12 Smith BL, Schaffer TE, Viani M, Thompson JB, Frederick NA, Kindt J, Belcher A, Stucky GD, Morse DE, Hansma PK (1999) Molecular mechanistic origin of the toughness of natural adhesives, fibres and composites. Nature 399:761-763 Söllner C, Burghammer M, Busch-Nentwich E, Berger J, Schwarz H, Riekel C, Nicolson T (2003) Control of crystal size and lattice formation by Starmaker in Otolith biomineralization. Science 302:282-286 Stöhr J (1992) NEXAFS Spectroscopy. Springer-Verlag, Berlin Stryer L (1995) Biochemistry, 4th edition, WH Freeman and Co, New York. See page 22. Sturchio NC, Antonio MR, Soderholm L, Sutton SR, Brannon JC (1998) Tetravalent uranium in calcite. Science 281:971-973 Suzuki Y, Kelly SD, Kemner KM, Banfield JF (2002) Radionuclide contamination: Nanometre-size products of uranium bioreduction. Nature 419:134
-
Organic-Mineral Interface in Biominerals
185
Takai K, Moser DP, DeFlaun M, Onstott TC, Fredrickson JK (2001) Archaeal diversity in waters from deep South African gold mines. Appl Environ Microbiol 67:5750-5760 Tang Z, Kotov NA, Magonov S, Ozturk B (2003) Nanostructured artificial nacre. Nature Mat 2:413-418 Tebo BM, Bargar JR, Clement BG, Dick GJ, Murray KJ, Parker D, Verity R, Webb SM (2004) Biogenic manganese oxides: properties and mechanisms of formation. Ann Rev Earth Planet Sci 32:287-328 Templeton AS, Ostergren JD, Trainor TP, Foster AL, Traina SJ, Spormann A, Brown GE Jr (1999) XAFS and XSW study of the distribution of Pb(II) sorbed to biofilms on alpha-Al2O3 and alpha-FeOOH surfaces. J Synchrotron Radiat 6:642-644 Thompson JB, Paloczi GT, Kindt JH, Michenfelder M, Smith BL, Stucky GD, Morse DE and Hansma PK (2000) Direct observation of the transition from calcite to aragonite growth as induced by abalone shell proteins. Biophys J 79:3307-3312 Toner B, Fakra S, Villalobos M, Warwick T, Sposito G (2005) Spatially resolved characterization of biogenic manganese oxide production within a bacterial biofilm. Appl Environ Microbiol 71:1300-1310 Tonner BP, Droubay T, Denlinger J, Meyer-Ilse W, Warwick T, Rothe J, Kneedler E, Pecher K, Nealson KH, Grundl T (1999) Soft X-ray spectroscopy and imaging of interfacial chemistry in environmental specimens. Surf Interface Anal 27:247-258 Tyliszczak T, Warwick T, Kilcoyne ALD, Fakra S, Shuh DK (2004) Soft X-ray scanning transmission microscope working in an extended energy range at the Advanced Light Source. AIP Conference Proceedings, SRI. San Francisco Urrutia M, Kemper M, Doyle R, Beveridge TJ (1992) The membrane-induced proton motive force influences the metal binding ability of Bacillus subtilis cell walls. Appl Environ Microbiol 58:3837-3844 Veis A (2003) Mineralization in organic matrix frameworks. Rev Mineral Geochem 54:249-289 Villalobos M, Bargar J, Sposito G (2005) Mechanisms of Pb(II) sorption on a biogenic manganese oxide. Environ Sci Technol 39(2):569-76 Weaver JC, Morse DE (2003) Molecular biology of demosponge axial filaments and their roles in biosilicification. Microscopy Res Tech 62(4):356-367 Weiner S, Dove PM (2003) An overview of biomineralization processes and the problem of the vital effect. Rev Mineral Geochem 54:1-29 Weiss IM, Kaufmann S, Mann K, Fritz M (2000) Purification and characterization of perlucin and perlustrin, two new proteins from the shell of the mollusk haliotis laevigata. Biochem Biophys Res Commun 267: 17-21 Zaremba CM, Belcher AM, Fritz M, Li Y, Mann S, Hansma PK, Morse DE, Speck JS, Stucky GD (1996) Critical transitions in the biofabrication of abalone shells and flat pearls. Chem Mater 8:679-690 Zawislanski PT, Benson SM, Terberg R, Borglin SE (2003) Selenium speciation, solubility, and mobility in land-disposed dredged sediments. Environ Sci Technol 37(11):2415-2420
8
Reviews in Mineralogy & Geochemistry Vol. 59, pp. 187-210, 2005 Copyright © Mineralogical Society of America
Catalysis and Prebiotic Synthesis James P. Ferris NY Center for Studies on the Origins of Life and Department of Chemistry Rensselaer Polytechnic Institute Troy, New York, 12180-3590, U.S.A. [email protected]
INTRODUCTION Little is know about the origins of life on Earth. Most scientists believe this event occurred some time within a billion years after the Earth formed 4.6 billion years ago (Ga). It is also possible that the Earth was “seeded” by life transported here by another body like a meteorite or by extra-terrestrials. Most scientists in this field assume that life originated on Earth or in our solar system because there would be little data on which to base a proposal for the origin of life at a location outside our solar system. As it is we have a very rudimentary knowledge of the environments on the primitive Earth in the first billion years on our planet. Some relevant books and reviews include Brack (1998), Fry (2000), Zubay (2000), Orgel (2004), and Ferris (2005). Ten years ago it appeared that we had made good progress on understanding about when life arose and what the environmental conditions on the Earth were at that time. Carbon isotope studies on rocks present on the Earth 3.8 Ga suggested life arose in or slightly after that time period (Mojizsis et al. 1996). In addition, microfossils found in rocks dated to be 3.5 Ga suggested were consistent with the presence of life 3.5 Ga (Schopf 1993). These data have been challenged recently (Brasier et al. 2002) so it is not certain the proposed microfossils were originally living organisms. Also the carbon isotope studies have been challenged (Moorbath 2005). But new and entirely different findings suggest that that the Earth had liquid water and an environment suitable for life 4.3 Ga. (Watson and Harrison 2005). In addition it has been proposed that the early Earth had an atmosphere with a mixing ratio of hydrogen of 0.3 (Tian et al. 2005). This suggests the possibility of an atmosphere compatible with reduced organic compounds. So the good news is that this is an active area of research and there is a chance that enough data will accumulated so that a more accurate picture of the conditions on the early Earth will arise from the current confusion. One of the first problems to consider in studies on origin of life is what is life? How would the first, very primitive life form be recognized? This life form would have just barely transited from the non-living to the living so may be lost in the large excess of inanimate material from which it arose. The first life was probably expending all its energy just staying alive so would be hard to recognize. Another problem is the only models of life we have are the highly evolved forms that surround us on the Earth today. Was the biochemistry of the first life just a simpler form of our protein – DNA world or was it entirely different? We don’t know. Many scientists have proposed a definition of life. The definitions proposed often describe a model of the first life that the individual is investigating. Those postulating an RNA world propose the need for RNA or structures that were precursors to RNA. Those investigating the need for cell membranes propose the need for the origin of life in a contained like a vesicle to 1529-6466/05/0059-0008$05.00
DOI: 10.2138/rmg.2005.59.8
188
Ferris
protect it from losing the essential molecules to maintain this first life. My favored definition is a system of biomolecules that it capable of replication and mutation. This definition does not require that the assemblage of molecules be confined within a membrane nor does it specify the nature of the replicating system present. It has the advantage of being applicable to a variety of different replicating systems that may live in a variety of different environments.
FORMATION OF THE SOLAR SYSTEM The Big Bang, the starting point for the formation of the universe occurred 13.7 Ga. This event has been described as the simultaneous appearance of plasmas of primary particles everywhere at the same time in the Universe. The next stage in the evolution in the Universe was the spontaneous formation of the lighter elements (hydrogen, helium, lithium and beryllium) from the primary particles by the spontaneous combination of neutrons and protons. Star formation occurred next where there was a greater density of particles and elements in the Universe. This process was the result of a greater density of elements and particles in a region of the Universe that condensed to form stars. Once star formation took place there was a sufficiently high concentration of particles and elements to form carbon in a three-body reaction. The next stage in the evolution of the universe was star formation where the primary particles were concentrated in a star with the initial elements where the close proximity resulted in the formation of carbon via a three-body reaction. Once carbon formed the elements up to and including iron-58 formed spontaneously. Additional energy was required to form the elements with atomic masses greater that iron. This additional energy was provided when the star’s fusion reactor shut down because the nuclear fuel, hydrogen and helium, were consumed. The star then collapsed and then exploded violently and the energy released powered the formation of the elements with masses greater than that of iron-58. The energy released during the supernova blew the elements that formed by the nuclear fusion reactions into the interstellar medium. Some stars containing high levels of carbon distributed large amounts of carbon into the interstellar medium. These violent explosions distributed clouds of dust in the interstellar medium that contained carbon, silicates and an array of other elements. The action of cosmic rays and other energy sources on the carbon initiated reactions with the abundant interstellar hydrogen to generate simple hydrocarbons. These dust clouds have a lifetime of about 108 years. They then collapse, possibly as a result of an external force like a supernova, and star formation together with the formation of the planets and other bodies in the solar system was repeated. When a dust cloud collapses to form a solar system the bulk if the material in the cloud forms the protostar and the remainder of the dust forms small bodies called planetismals that continue to accrete dust and smaller bodies to eventually form plants as they orbit the protostar. Comets form in the outer solar system where they accumulate gases, water, ice, silicates, and organic compounds. The material in comets has undergone the least change of all the orbiting material because it is far away from the radiation released by the protostar when it accumulated sufficient mass to initiate fusion reactions. Comets may have delivered organics and water to the surface of the primitive Earth. After the comets formed they orbited the Sun in the vicinity of the giant planets, Jupiter, Saturn and Uranus. The strong gravitational forces of these planets accelerated many of these comets out of the Solar System to the Oort cloud. This process probably resulted in the passage of comets near the inner solar system and some of the comets may have impacted with the Earth and brought organics and water to its surface. Asteroids orbit the Sun between Mars and Jupiter in our solar system. This collection of small bodies never coalesced to planets because the strong gravitational field emanating from
Catalysis & Prebiotic Synthesis
189
Jupiter perturbs them. There are collisions between asteroids as they orbit the Sun. These collisions resulted in the formation of dust and smaller bodies (meteorites) that are ejected from the asteroid belt. Some of this material impacts on the Earth. It is postulated from spectral studies that that some of the asteroids contain organic compounds and the dust and meteorites may released from these asteroids may have brought the organic compounds and water to the primitive Earth that initiated the origin of life. This process of accumulating dust and meteorites on the Earth continues today but at a much slower rate than it occurred on the primitive Earth. It is estimated that about 30,000 tons of dust per year is accreted on the surface of the Earth today. This general model for the formation of our solar system suggests that there will be an abundance of solar systems around other stars in the universe. This appears to be the case since over 150 extrasolar planets have been discovered. Most of the extrasolar planets are equal to or greater than the size of Uranus while few even approach the size of Earth. Planets the size of Uranus or greater may be gas giants and would not be likely to have life, as we know it, on them. The failure to detect Earth-size planets is probably not due to their absence but rather to the detection method used. It is based on the gravitational perturbation of the motion of their star, which is very small for low mass, Earth-size planets. If Earth-size planets are discovered does this mean that the conditions on them are conducive to life? Not necessarily, but it does seem likely that some of these rocky bodies will at least have microbial life. It should be noted that some scientists believe that the Earth was formed under a very restricted set of favorable conditions that may not be present on comparable Earth-size bodies. They also feel that civilizations of the type present on Earth are unlikely to be present on these Earth-size planets (Ward and Brownlee 2000).
THE EARLY EARTH It is difficult to obtain data greater than 4 Ga about the primitive Earth’s from the rock record. This is because plate tectonics has resulted in the subduction of most of the Earth’s crust where it was subjected to high temperatures and pressures. This resulted in the destruction of much of the evidence in the rock record of earliest life on Earth. One thing that appears to be known from the rock record is that the oxidation level of the Earth’s crust and mantle 3.8 Ga is the same as it is today (Delano 2001). The discovery of zircons that are 4.0–4.3 Ga old opened up a new window on the primitive Earth in the 4–4.5 Ga time period (Watson and Harrison 2005). This suggests that the impacts of larger bodies, such as comets or meteorites that would have heated the Earth to over 100 °C had decreased to a low level by 4.3 Ga. The high temperatures and pressures resulting from plate tectonics do not alter these refractory zircons. They also contain inclusions of other elements that may provide additional insight into the chemical processes on the primitive Earth prior to 4 Ga. There is evidence from lunar material of a sharp increase in the impacts with the Moon at 3.9 Ga. If it is assumed that the same heavy bombardment occurred on the Earth at 3.9 Ga it could have extinguished much of the life on Earth at that time. If this happened it might have required that the origin of life occurred again after these impact decreased in intensity. It is possible that some life survived the impacts in a niche, like the deep ocean, and this life was the ancestor of life on Earth today. Alternatively, the first life on Earth may have arisen after 3.9 Ga.
Atmosphere If the oxidation level of the Earth’s crust and mantle was the same 3.9 Ga as today then it is unlikely that a reducing atmosphere was present on the primitive Earth (Delano 2001). If the recent claim that the Earth’s atmosphere contained 30% hydrogen is correct (Tian et al. 2005)
190
Ferris
this hydrogen may have altered the overall oxidation state of the atmosphere but may not have changed the oxidation states of the other gases present in the atmosphere. The atmosphere of the Earth is believed to have formed as a result of outgasing the Earth’s crust and mantle. It is unlikely that the gases emitted 3.8 Ga would differ from the carbon dioxide, water, sulfur dioxide and other oxidized gases emitted from volcanoes today. It is not clear whether the presence of 30% hydrogen in an atmosphere containing oxidized gases atmosphere could have been a precursor to the reduced organics that resulted in the protein and nucleic acids, central to life on the Earth today. The large deposits of limestone and other carbonates on Earth suggest that carbon dioxide was an important constituent of the primitive atmosphere. The oceans may have been slightly acidic as a consequence the dissolved carbon dioxide and the acidic oxides of sulfur emanating from volcanoes. The rate of precipitation carbonate minerals would have determined the length of time the oceans and other bodies of water were acidic and were probably not favorable for the origin of life. It is encouraging that there are an increasing number of new findings about the ancient Earth. The field of the origins of life suffers from the lack of definitive data about the environment on the primitive Earth. Consequently, there are a plethora of hypotheses but few facts the support or refute them.
Primary sources of simple organics Earth’s atmosphere. The Miller-Urey experiment was the first laboratory experiment designed to investigate routes to organic compounds on the primitive Earth. In this experiment Stanley Miller passed an electric discharge through a mixture of methane, ammonia, hydrogen and water vapor at 100 °C. After allowing the experiment to proceed for one week the water was analyzed and Miller detected the presence of amino acids. Later he also found hydroxy acids, carboxylic acids and other products. This experiment was carried out with reduced carbon and nitrogen compounds because Harold Urey believed that the atmosphere of the early Earth contained these gases. Up to the present time scientists did not think the primitive Earth had a reducing atmosphere and it was generally agreed that he Miller–Urey reaction conditions are not a valid model for the source of simple organics on the primitive Earth. The proposal that the atmosphere of the primitive Earth contained 30% hydrogen reopens the debate on whether reduced carbon and nitrogen compounds were formed by the Miller–Urey reaction. Even if reduced organics are formed, the rapid photolysis of carbon, nitrogen and sulfur compounds such as methane, ammonia and hydrogen sulfide by solar ultraviolet light suggests that they were present in very small amounts. Meteorites. Meteorites emanating from the asteroid belt may have been an important source of organics on the primitive Earth. It is estimated that greater than 1021 kg of the original asteroid belt reached the Earth’s surface in the form of dust and meteorites (Vokrouhlicky and Farinella 2000). This would correspond to a layer of material weighing 5 u 106 kg/m2 if spread evenly over the surface of the Earth. If the carbon content of that material is about ~1% this would have been equivalent to a layer of carbon 25 m thick over the surface of the Earth (Private communication from Michael Gaffey). Small meteorites are not destroyed when they hit the Earth’s atmosphere or surface since they break into small chunks. Large meteorites also survive their impact with the atmosphere but they generate so much energy when they hit the Earth’s surface that the organics present in them are destroyed. Dust particles from asteroids and comets float down through the atmosphere and make a soft landing on the Earth’s surface. Meteorites are particularly important since they are a direct source of the extraterrestrial material delivered to the primitive Earth. The Murchison meteorite, which fell in the town of Murchison, Australia, was collected shortly after it fell and was therefore less likely to have been contaminated organic compounds indigenous to the Earth. It contains about 2% organic material
Catalysis & Prebiotic Synthesis
191
with the bulk of it present as a polymeric organic matrix called kerogen and the remainder of the material present as soluble small organic molecules. The latter is a complex mixture of organic compounds including amino acids, purines, pyrimidines, and carboxylic acids (Table 1) (Pizzarello et al. 2001). Other carbonaceous meteorites contain some of the same compounds so it appears likely that these compounds were present on the primitive Earth. Comets. As noted previously comets formed in the outer regions of the solar system where the solar radiation is lower so the structures of the organics more closely reflect those in the dust cloud from which the solar was formed. It has been possible to determine the structures of some of the compounds by spectroscopic analysis of the coma and tails of comets (Table 2). The energetic particles and UV radiation of the Sun not only melts the ice in a comet to release the organics it also degrades high molecular weight organics and generates the lower molecular weight degradation products. Missions are in progress to directly collect cometary dust and return it to the Earth for structure analysis. For example, the Stardust mission sent a probe that arrived at comet Wild2 in January 2004. It collected dust emanating from the comet and is now returning to Earth where the captured dust will be parachuted to Earth on January 15, 2006. The European Space Agencies Rosetta Mission launched a probe to comet in March 2004. Upon arrival in 2014
Table 1. Soluble organics in the Murchison meteorite.a Class Aliphatic hydrocarbons Aromatic hydrocarbons Dicarboxylic acids Carboxylic acids Pyridine carboxylic acids Dicarboximides Sulfonic acids Amino acids Amines Amides Hydroxy acids
Concentration (ppm)
Compounds Identified
> 35 15-28 >30 >300 >7 >50 67 60 8 n.d. 15
140 87 17 20 7 3 4 74 10 4 7
a
Adapted from (Pizzarello 2001)
Table 2. Some organic compounds observed in comets. Name
Formula
Name
Formula
Methanol
CH3OH
Formic acid
HCOOH
Formamide
HCONH2
Methyl formate
HCOOCH3
Methane
CH4
Acetylene
C2H2
Ethylene
C2H4
Ethane
C2H6
Methylacetylene
CH3C2H
Hydrogen cyanide
HCN
Acetonitrile
CH3CN
192
Ferris
it will launch a lander to the comet to analyze it’s surface and subsurface. The probe will undertake extensive analysis of the comet and volatiles emanating from it. Hydrothermal systems. Hydrothermal systems provide an ecosystem where heat from the Earth’s interior, rather than sun light, provides the energy to support life at the bottom of the sea. These “black” and “white smokers” occur at crustal spreading centers where heat driven circulation of water through crustal material brings dissolved compounds in proximity to iron-containing magma. Here the iron reduces oxidized substances in the water. For example, dissolved sulfate is converted to sulfides and the resultant smoker is a precipitate of metal sulfides formed in the neighborhood of the vents when they exit the 300 °C vent into the 4 °C ocean water. Laboratory studies have demonstrated the reduction of molecular nitrogen at temperatures of 500-700 °C and pressures of 0.1 GPa. Nitrogen oxides have also been reduced under high temperature and pressures of hydrothermal systems using iron sulfides and magnetite as reductants (Brandes et al. 1998). More complex organics that may have been destroyed by the high temperatures in a hydrothermal vent would have been stable if formed a short distance away from the vent. The heat flow from the vent also drives the circulation of ocean water through vent regions that is “off axis” or away from the area close to the magma. The combination of the reducing agents, e.g. metal sulfides that precipitated in the vicinity of the vent, the possible mineral catalysts in the crust and the lower temperatures could have served to generate complex structures that were stable under these reaction conditions. Some laboratory studies have been successful modeling the chemistry in hydrothermal systems. Laboratory findings have demonstrated the possibility of generating methane thiol (CH3SH) from carbon dioxide (Heinen and Lauwers 1996). Carbon dioxide is reduced to acetic acid in the presence of methane thiol (Huber and Wachtershauser 1997). Dipeptides are formed in the reaction of amino acids with carbon monoxide, an iron and nickel sulfide catalyst or methane thiol at 100 °C (Huber and Wachtershauser 1998). Reaction of carbon monoxide with iron sulfate at 250 °C generates the Krebs cycle compound pyruvate (Cody et al. 2000). So far it has not been possible to demonstrate the formation of more complex biomolecules in simulations of the reactions in hydrothermal systems but studies of this type are in progress. At the present time it appears that hydrothermal systems may have served as a source of simple organics that were converted to more complex structures in other environments on the primitive Earth.
PREBIOTIC ROUTES TO BIOPOLYMER PRECURSORS RNA world Biopolymers are essential structures in life today. Protein enzymes catalyze the synthesis and transformation of chemical processes that drive metabolic and other processes in the cell. DNA stores the genetic information in its sequences. DNA transfers this information to RNA, which in turn brings it to the ribosome, the site of protein synthesis. RNA brings genetic information to the ribosome and it also catalyzes a key step in protein synthesis in the ribosome. The observation that RNA could both store genetic information in its sequences and catalyze reactions, process that are carried our by the DNA and proteins in contemporary life, led to the proposal that the first life could have had one essential biopolymer, RNA. This was the genesis of the RNA world. A big advantage of this postulate was only one biopolymer would have to be formed by prebiotic processes rather than two. Perhaps some simple peptides may have served as catalysts in the RNA world. Eventually the RNA evolved the ability to catalyze the synthesis of proteins that in turn evolved to catalyze the synthesis of DNA.
Catalysis & Prebiotic Synthesis
193
Since the emphasis in this review is a world where one type of biopolymer that can both store information and catalyze reactions the prebiotic synthesis of proteins or protein-like structures will not be emphasized.
The structure of and prebiotic synthesis of RNA monomers RNA is a biopolymer composed of monomers linked together. The monomer is composed of three units, bases, ribose and phosphate (Fig. 1). Bases. Two purines, adenine and guanine and two pyrimidines, uracil and cytosine are the principal bases in RNA. Purines are present in small amounts in the Murchison and other carbonaceous meteorites. They are also formed from hydrogen cyanide (HCN) via two routes. The polymerization of HCN generates a black substance called the “HCN Polymer” from which adenine may be extracted in low yields after water hydrolysis. The second route is via the HCN tetramer, an intermediate in the polymerization process, that when photolyzed yields a substituted imidazole (Fig. 2). This imidazole may also be prepared by the reaction of the HCN tetramer with formamidine. Reaction of the substituted imidazole with HCN generates adenine. A variety of other purines can be prepared by the reaction of the imidazole formed by photolysis of the HCN tetramer with other simple molecules.
B (a)
RNA Monomers
HO 5'
O 3'
B
O P O 5'
-O
2'
O-
OH OH nucleoside
N Bases
B= N N H adenine
N
N
N 2'
O
N
O
N H cytosine
O
NH2
HN
NH2 RNA Oligomer
N N HO 5'-end
N N
O 3' O OH O P O 5' O OO O P O-
O N
NH
N
N
OH O
O O
NH2 O
HN N
NH2 N
O OH O O P O O O3'-end
Figure 1. RNA structural elements.
N H uracil
Pyrimidines
Purines
(c)
2'
NH2 NH
N N H guanine
O 3'
OH OH activated nucleotide
O N
P O
5'
O-
OH OH nucleotide
NH2 (b)
O 3'
B
O
N
OH OH
194
Ferris
Figure 2. The reaction pathway from HCN to some purine bases.
Pyrimidines may be synthesized by the reaction of cyanoacetylene or cyanoacetaldehyde, (the hydrolysis product of cyanoacetylene) with cyanate, guanidine or urea. Pyrimidines have also been isolated from the product mixture obtained by the hydrolysis of the HCN polymer (Ferris and Hagan 1984). Purines and pyrimidines have also been isolated by the hydrolysis of the products formed the polymerization of a mixture of HCN and ammonia that was kept at −78 °C for 27 years (Miyakawa et al. 2002). Most of the products obtained in this study were comparable to those obtained in the reactions carried out for shorter times at room temperature (Ferris et al. 1978). The various sources observed for purines and pyrimidines described above suggest that it is likely that they were present on the primitive Earth. Ribose. The five-carbon sugar ribose is the backbone of nucleoside monomers. Initially it was proposed that the prebiotic synthesis of ribose proceeded by the Formose reaction, the self-condensation of formaldehyde catalyzed by divalent metal ions like calcium. This route dropped from favor because the yield was very low and about 35 other sugars that would have reactivity comparable to that of ribose were also formed so that it was not obvious why these didn’t compete with ribose in subsequent reactions to form nucleosides. Recent investigations suggest that ribose could have been present on the primitive Earth. It may have been possible to selectively isolate the cyanamide (NH2C{N) adduct of ribose from other reaction products (Springsteen and Joyce 2004). The adduct forms 7-fold faster than the comparable adduct with arabinose and 30 times faster than the adduct with glucose. It crystallizes from water under conditions where none of the other adducts crystallize and this adduct is much more stable than free ribose. The only problem is that cyanamide reacts with formaldehyde, glycolaldehyde and glyceraldehydes, compounds present in the Formose reaction mixture to give adducts that do not react further to give the ribose adduct. So it is necessary to postulate that cyanamide appeared in these mixtures after these intermediates were consumed. Three other routes to ribose have been reported that suggest that ribose was present on the primitive Earth. In one approach the use of a magnesium ion - lead ion mixture as a catalyst for the Formose reaction. This catalytic cocktail reduced the number of products from 35 to the 4 possible pentoses (Zubay 1998). Also of interest was the observation that the catalyst also directs the conversion of any one of the 4 pentoses to a mixture of the all four of them. This lead-magnesium ion mixture also catalyzes the conversion of hexoses to the 4 pentoses. A second prebiotic approach to ribose is the reaction of formaldehyde with calcium hydroxide in the presence of borate. The borate forms a complex with the hydroxyl groups
Catalysis & Prebiotic Synthesis
195
of ribose and ribose precursors so that the subsequent reaction with formaldehyde is to form hexoses and polymeric products are inhibited (Ricardo et al. 2004). A third route to ribose is a stepwise synthesis by first reacting glycolaldehyde phosphate with formaldehyde to generate glyceraldehydes phosphate. This in turn reacts with glycolaldehyde to give ribose 2,4- diphosphate. Unfortunately neither phosphate is in 5c-position where it may have functioned as a point for linking nucleotides together via the 5c-phosphate group (Müller et al. 1990). Nucleosides. There is an early report of a prebiotic synthesis of purine nucleosides. It is a dry phase heating reaction of purine bases with ribose in the presence of sea salts or MgCl2 to get 1–8% yields of purine nucleosides (Fuller et al. 1972). No nucleosides were observed when the same reaction procedure was performed using pyrimidine bases in place of the purine. The low yields of purine nucleosides and the absence of formation of pyrimidine nucleosides indicates that this is not a likely prebiotic pathway to nucleosides. Limited progress has been made in other approaches to the synthesis of nucleosides but so far none of the proposed prebiotic syntheses has generated nucleosides in sufficiently high yields to believe that these monomers would be present in amounts large enough to have been starting materials for RNA synthesis. This is an area that requires new ideas and experiments. Nucleotides. Nucleotides can be synthesized from nucleosides by heating them in the solid phase with acid phosphates like ammonium dihydrogen phosphate (NH4H2P04) (Osterberg and Orgel 1972; Osterberg et al. 1973). The reactions are catalyzed by amides like urea. The reaction probably proceeds by driving off the ammonia of the ammonium dihydrogen phosphate to give phosphoric acid that catalyzes the phosphorylation. When this dry heating reaction is carried out with uridine about a 70% yield of a mixtures of the phosphorylated adducts of uridine is obtained. Linear polyphosphates are formed by heating acid phosphates like sodium dihydrogen phosphate (NaH2PO4) (Osterberg and Orgel 1972). The linear polyphosphates are converted to cyclic trimetaphosphate (Fig. 3), which reacts with nucleosides in basic solution to yield triphosphates or with 5c-nucleotides under less basic conditions to give triphosphates in a series of reaction steps (Fig. 3). The yields of phosphorylated products formed by dry heating suggest that these may have been abundant on the primitive Earth if there was a plausible prebiotic synthesis of nucleosides. Another concern is that the conditions under which ribose synthesis and
Figure 3. A reaction pathway from a 5c-AMP and trimetaphosphate to ATP.
196
Ferris
phosphorylation reactions occur are very different. It is difficult to imagine how this series of steps required for nucleoside synthesis occurred on the primitive Earth. More experimental studies are required here.
Vesicles Vesicles, also called lipsomes, are small enclosed, compartments separated from their aqueous environments by a lipid bilayer. It is proposed that enclosed compartments similar to vesicles may have contained a suite of molecules that constituted the first life. It has been observed that an organic fraction obtained from the Murchison meteorite formed vesicles and other structures when mixed with water (Deamer and Pashley 1989). It is not likely that these vesicles are enclosed within a lipid bilayer. It is known that under the proper conditions vesicles form from linear carboxylic acids containing 9 or more carbon atoms when the pH of the solution is close to the pKa of the carboxylic acids. Since carboxylic acids are present in the Murchison meteorite this may be a possible explanation for the formation of vesicles. As discussed in detail below, montmorillonite clay, which enhances the rate of formation of vesicles from carboxylic acids, also catalyzes the formation of RNA oligomers (Hanczyc et al. 2003; see discussion in “Prebiotic Polymerization of RNA Oligomers.” The prebiotic synthesis of linear carboxylic acids may have proceeded in hydrothermal systems where the high temperatures, pressures and the presence of iron may have produced them from carbon monoxide and carbon dioxide (McCollum et al. 1999; Rushdi and Simoneit 2001). The above discussion assumes that the first life required a container to maintain the integrity of the living system. Since this first replicater was extremely simple and probably was unable to catalyze the formation of the fatty acids needed to form vesicles it may have replicated while attached to a surface. In the simplest case the community of RNAs may have been attached to a mineral surface where it captured the necessary nutrients of life as they flowed past. There they could have also bound the metal ions that may have been required for the functioning of this extremely primitive system.
CHIRALITY Life on Earth is composed of a specific handedness of the molecules that it utilizes. For example the proteins are composed of L-amino acids and the RNA and DNA of D-nucleotides (Fig. 4). An L-amino acid is the mirror image of the corresponding D-amino acid and each mirror image molecule is called an enantiomer. It is not known why contemporary life has amino acids with the L-configuration and nucleotides with the D-conformation. One proposal is that it was a chance event that occurred during evolution when life based on D-amino acids and L-nucleotides was not able to compete with L-amino acids and D-nucleotides because of a favorable mutation in the latter. The latter life forms gradually took over the Earth and these configurations have been frozen in place ever since. Another theory is based on the observation of circularly polarized infrared light in the vicinity of interstellar dust clouds (Bailey et al. 1998). Circularly polarized light can be either left- or right-handed. It is proposed that if there is circularly polarized infrared radiation then there will also be circularly polarized UV radiation as well. It is known from laboratory studies that irradiation of a mixtures of enantiomers with one handed circularly polarized UV light results in the faster rate of loss of one of the enantiomers so that an excess of the other enantiomer is left behind (Flores et al. 1977). This postulate has some support by the observation of an excess of the L-enantiomer in some of the amino acids found in the Murchison meteorite (Pizzarello and Cronin 2000). If it is assumed that there is a correlation between the handedness of the circularly polarized light and the L-configurations of the interstellar amino acids reaching the Earth via meteorites then one could conclude that the
Catalysis & Prebiotic Synthesis
197
Figure 4. Enantiomers. (a) the amino acid alanine, (b) the nucleoside adenosine.
observed conformations resulted from the interstellar circularly polarized light. So far there has been no proof of this postulate.
PREBIOTIC POLYMERIZATION OF RNA MONOMERS The condensation of RNA monomers to oligomers in aqueous solution at pHs near neutrality is not favored energetically. The reactivity of the 5c-phosphate group must be activated for the reaction to proceed. In contemporary biochemistry the 5c-phosphate group is activated by the attachment of a diphosphate group to the 5c-nucleotide. The nucleotide triphosphate group is quite stable in aqueous solution and only generates RNA polymers in the presence of a polymerase enzyme. It was observed that some amine derivatives of the 5cphosphates (phosphoramidates) are effective activating groups for the monomeric nucleotides. Adducts of imidazole (Fig. 5a,b) and 1-methyladenine (Fig. 5c) have been observed to be effective activating agents (Weimann et al. 1968; Prabahar and Ferris 1997). Some montmorillonite clays have been shown to be effective catalysts of the oligomerization of both phosphorimidazolides and phosphoro-1-methyladenylides. It was possible to generate oligomers (short polymers) that contained 10 monomer units (10 mers) (Ferris and Ertem 1992). It was then observed that a synthetic 10 mer could be elongated to a 40-50 mer using “feeding reactions” where the activated monomer is added daily to the reaction mixture. The 40-50 mers were observed after feeding for 14 days (Ferris et al. 1996;
Figure 5. Activated nucleotide monomers where B is a purine or pyrimidine base. (a) nucleoside 5cphosphorimidazolide (ImpB), (b) nucleoside 5c-phosphoro-2-methylimidazolide (2-MeImpB), (c) nucleoside 5c-phosphoro-1-methyladenium (1-MeadpB), (d) D- nucleoside 5c-phosphorimidazolide (D-ImpB).
198
Ferris
Ferris 2002). The previous studies were performed using imidazole as the activating group. It was recently observed that 40 mers were formed in 1 day when 1-methyladenine is used as the activating group (Huang and Ferris 2003). It is possible to form longer oligomers of RNA because the catalyst selectively directs the reaction pathway to the formation of a limited number of reaction products. If the catalyst were not selective then the formation of longer oligomers would not occur because all possible isomers would be formed and these side reactions would consume all the activated monomers before 40-50 mers are formed. It has been calculated that it would be required to form 1048 isomers weighting 1028 grams, an amount equal to the mass of the Earth, to prepare a mixture that contained two identical 40 mers (Joyce and Orgel 1999). Sequence selectivity was demonstrated in the montmorillonite-catalyzed reaction of a mixture of the four activated nucleotides. Here 80 % of the dimers formed were 8 of the 16 possible dimers (Ertem and Ferris 2000; Miyakawa and Ferris 2003). In the second study of the reaction of active ImpA with ImpC the pentamer fraction contained 4 main products in yields of 4.3–13 % while random synthesis would have generated 512 products with a 0.2% yield of each (Miyakawa and Ferris 2003). Selectivity was also observed in the formation of phosphodiester bonds. The montmorillonite-catalyzed reaction of ImpA generates oligomers in which about 67% of bonds formed were 3c,5c-linked. In the absence of catalysis the percentage of 3c,5c-phosphodiester bonds are about 20%. The outcome of the reaction of D,L- ImpA has been investigated to determine if oligomers form from a D,L-mixture. It was not expected that there would a selective reaction of only one of the enantiomers during montmorillonite catalysis because montmorillonite does not have D- and L-conformations. A preponderance of homochiral oligomers over what was expected was observed. That is there was an excess of both all D and all L-enantiomers over the expected yields of D,L- and L,D- dimers. Similar results were observed with the trimers formed. Heterochiral products predominate in the reaction of D,L-ImpU.
NON-ENZYMATIC TEMPLATE-DIRECTED SYNTHESIS OF RNA RNA is essential to early life because information is stored in its sequences of purines and pyrimidines. The process of template-directed synthesis preserves this information. Information is preserved in contemporary biological systems because the sequences in the RNA can be replicated in a two-step process from the complementary chain (Fig. 6a). The key to the replication process is the selective hydrogen bonded interactions with G and C (Fig. 6b) and those with A and U. In contemporary biology the monomers of the nucleotides that are activated
Figure 6. Template-directed synthesis. (a) schematic replication of a template of the 8 mer of C and the formation of an 8 mer of G, (b) Watson-Crick hydrogen bonding between G and G.
Catalysis & Prebiotic Synthesis
199
with the triphosphate group interact with their complementary bases in the RNA and then the monomers are coupled by a polymerase enzyme to form the complementary chain. The original chain and the complementary chains dissociate and the template directed synthesis takes place on the complementary chain to regenerate the original chain. The errors in this process provide a mechanism by which evolution occurs. Leslie Orgel and coworkers discovered that template-directed synthesis does occur to a limited extent in the absence of catalysis. The best example of this is the formation of oligomers of G by the reaction of 2-MeImpG (Fig. 5b) on a poly(C) template (Fig. 6a) (Inoue and Orgel 1981). Unfortunately the other possible template-directed syntheses are not as successful. The synthesis of oligo(A)s on a poly(U) template gives lower yields of shorter of oligo(A)s. The reactions of activated pyrimidine nucleotides on polypurine templates does not yield oligopyrimidines. Replication of an RNA chain is not possible in the G–C system because the formation of the complementary oligo(C)s on a poly(G) template was not successful. These observations suggest that the RNA world will need a catalyst (RNA?) or some changes in the reaction conditions or reagents to initiate the replication of RNA. It has been estimated that a library consisting of about 1020 sequences of 40 mers is likely to contain at least one self-replicating RNA molecule (Joyce and Orgel 1999). Mineral and/or metal ion catalysis may have generated the catalytic RNAs that catalyzed RNA replication but to date none been discovered.
ALTERNATIVE GENETIC SYSTEMS It was noted in “Nucleosides” that there are deficiencies with the currently proposed prebiotic syntheses of nucleosides and nucleotides. In addition, a plausible prebiotic formation of the activated monomers has not been accomplished. These deficiencies prompted the search for simpler monomers from which to form a replicating system with the expectation that this simpler system would in turn invent the RNA world. Carboxylic acid ester groups, polypeptides with interacting charged side chains, link some of the proposed polymers. In one instance it was proposed that a replicating clay mineral initiated the first life that catalyzed the formation of organic molecules that were more efficient than the clay as catalysts and they took over clay life to form life based on organic molecules (Cairns-Smith 1982). There are no experimental data to support the later hypothesis. A more complicated group of alternative biopolymers have incorporated some of the structural features of RNA, such as being linked by phosphoester bonds and the utilization of the same bases and base pairings as RNA. Eschenmoser and coworkers initiated a research program to undertake a systematic investigation of structures that are similar to RNA and not the prebiotic synthesis of biopolymers (Eschenmoser 1999). Their first synthetic target was homo-DNA in which the five-membered ring of RNA was replaced with a six-membered ring. Next they prepared pyranose-RNA (p-RNA), Figure 7. Nucleotide which also had a six-member ring in which the phosphodiester bond of threose. differed in location from that of homo-DNA. p-RNA also differed from homo-DNA in that would form a double helix with a complementary strand. A recent addition to the RNA analogs is TNA, which is based on the four-carbon sugar threose (Fig. 7). This is especially interesting since it not only forms double helices with complementary TNA strands it also forms a double helix with a complementary RNA strand even though threose only contains one less carbon atom than ribose (Schoning et al. 2000). This structure has the advantage of a simple evolution of RNA from TNA by template-directed synthesis of RNA monomers on a TNA template. The TNA would have to have catalyzed the biosynthesis of the RNA monomers.
200
Ferris
A similar approach to preRNAs is peptide RNA (PNA), which was prepared as an analog of RNA, since it has about the same distances between the monomer units as RNA (Fig. 8). The other advantage of PNA is that it has no chiral centers. It forms double helices with itself and with RNA. Once it forms a double helix with RNA it assumes the chirality of the RNA to which it is bound. It can be used as a template for the formation of the complementary RNA (Böhler et al. 1995; Schmidt et al. 1997). One problem is that it has no charges on its backbone so longer oligomers are not likely to be soluble in water. There are no complete prebiotic synthesis of any of these pre-RNAs so it has not been demonstrated how they could have been formed on the primitive Earth (Miller 1997).
Figure 8. PNA. (a) monomer, (b) oligomer.
EXAMPLES OF MINERAL AND METAL ION CATALYSIS IN PREBIOTIC CHEMISTRY Minerals and metal ions have been investigated as potential catalysts for prebiotic reactions. There are few general principles to guide the experimentalist in choosing a particular metal ion to catalyze a proposed prebiotic process. Their selection has been mainly based on (1) their ability to bind reactants (2) their utilization in contemporary biological systems to catalyze reactions similar to proposed prebiotic reactions (3) just try available metal ions. Examples of minerals and metal ions used to bring about prebiotic reactions and what is known about the source of their catalytic activity will be outlined here. It is my view that these catalysts were central to the formation of the biopolymers that were essential to the origin of life since it is unlikely that polymers could have formed without them.
Non-catalytic formation of biopolymers; polypeptides The simplest role that a mineral could play in the formation of biopolymer is to serve as a matrix on which polymers would bind and growth. These minerals are not catalysts so the key to the polymer growth is the increase in the strength of binding of the oligomer to the mineral as it increases in length. In addition, the rate of oligomer formation must be greater than its rate of hydrolysis. This procedure requires that the substrate binds to the mineral but does not require that the mineral catalyze the reaction (Ferris et al. 1996; Orgel 1998). Feeding reactions in which a condensing agent that is used to drive polypeptide formation from amino acids on mineral surfaces may generate polypeptides containing up to 50 monomer units. Hydroxyapatite, Ca5(PO4)3(OH), binds the acidic amino acid glutamic acid via the Ca2+ of the mineral. After 50 feedings of the glutamic acid together with the condensing agent, 1,1c-carbonyldiimidazole (CDI) (Fig. 9), in the presence of hydroxyapatite yields polypeptides containing up to 45 monomer units. Similar results
Figure 9. The condensing agent 1,1c-carbonyldiimidazole (CDI).
Catalysis & Prebiotic Synthesis
201
were obtained using the clay mineral illite (Hill et al. 1998). Aspartic acid oligomers were formed on hydroxyapatite using 1-ethyl-3-(3-dimethylaminopropyl) carbodiimide (EDAC) as the condensing agent but oligomer formation decreased when CDI was used as the condensing agent (Liu and Orgel 1998). The positively charged amino acid arginine was elongated on both illite and FeS2 using CDI as the condensing agent. Variation of the structure of the amino acids used and the surface of the mineral indicates that the extent of oligomer formation depends on a number of factors (Hill and Orgel 1999). This procedure has not been successful with amino acids with not net charge, such as alanine, since they have weak binding interactions with the mineral surfaces.
Montmorillonite catalysis of RNA synthesis Structure and properties of montmorillonite. Montmorillonite is a 2D sheet of corner linked SiO4 tetrahedra bound to layers of edge-linked AlO6 octahedra (Fig. 10). The montmorillonite platelets associate with each other via interlayer cations and van der Waals forces. Montmorillonite is a clay mineral Key: formed by the weathering of volcanic Oxygen ash. Its composition varies depending on the other elements present in the Hydroxyl exchangeable cations environment where it is formed. Mag2+ 2+ water layers Aluminum nesium ion (Mg ) ferrous ion (Fe ) and ferric ion (Fe3+) are often incorporated Silicon into the octahedral layer positions. In addition, Al3+ may be substituted for Magnesium, Iron tetravalent silicon (Si4+) in the tetrahedral silicate layer. While the theoretical formula is Al4Si8O20OH)4, the actual formula for a Wyoming montmorillonite, with Fe3+ and Mg2+ in the octahedral layer and Al in the tetrahedral layer and 0.67 monovalent exchangeable cations is (Al2.33Fe0.68Mg0.47)(Si7.71 Figure 10. The layer structure of montmorillonite. Al0.29O20(OH)4X0.67. Since the number of oxygen atoms in the montmorillonite sheet is constant the lattice has a net negative charge that is balanced by the charge of 0.67 cations. The associated cations that neutralize this negative charge usually reside in the interlayers between the montmorillonite sheets. Dry montmorillonite expands when water is added due to the solvation of the interlayer cations. When organics bind in the interlayer the sheets come further apart if the binding energy between the sheets is less than the binding energy of the organic compound. Van der Waals interaction between organic molecules and the silicate layer is often the force that attracts organic compounds to bind in the clay interlayer. Montmorillonite found in deposits on Earth usually contains a mixture of cations in its interlayer that reflect those present in the environment where the montmorillonite is formed. Na+, Ca2+ usually predominate. It is possible to exchange this mixture of cations with a single cation in the laboratory to obtain a homoionic montmorillonite. This is usually done before investigating possible catalytic activity so as to avoid chemical processes due to the interlayer cations. Substances with multiple negative charges may bind at the acidic edges of the montmorillonite sheets. These include polyphosphates, dicarboxylic acids and polyanionic polymers. The edges have Al+3 with three oxygens bound to it. The fourth oxygen atom is not there because that is the bond where the sheet was broken. A water molecule will bind at Al+3 via the lone pair of electrons on the water molecule. This coordination enhances the acidity
202
Ferris
of the water molecules and generates an acidic site that can transfer a proton to a basic or a negatively charged molecule. RNA oligomer formation. In most of our studies on the montmorillonite-catalyzed formation of RNA oligomers homoionic Na+-montmorillonite was used. It was observed that other alkali and alkaline earth cations also gave catalytically active montmorillonites with the exception of Mg2+. When other divalent cations like Ni2+ and Cu2+ serve as the exchangeable cations the montmorillonite does not catalyze RNA oligomer formation. It was also observed that the acid titration exchange procedure of (Banin 1973; Banin et al. 1985) was essential for the preparation of most of these catalytically active montmorillonite. In most instances an alternative procedure where the clay is treated with an excess of NaCl to give Na+montmorillonite does not generate a catalytic montmorillonite. Not all montmorillonites catalyze oligomer formation. There may be a correlation between the increase in the iron content of the clay lattice and the increase in catalytic activity (Ferris et al. 1990). This potential correlation breaks down for the nontronites where Fe3+ replaces almost all the Al3+. Binding studies established that purine nucleotides bind more strongly to montmorillonite than do the pyrimidine nucleotides. This is consistent with the greater van der Waals interactions between the purine ring and the silicate surfaces of the montmorillonite than the smaller pyrimidine ring (Kawamura and Ferris 1999; Ertem and Ferris 2000). That the reaction of activated mononucleotides occurs in the clay interlayer was determined by first treating the montmorillonite with tetraalkyl ammonium salts (Ertem and Ferris 1998). Dodecyltrimethylammonium cations (Fig. 11a) inhibit oligomer formation while tetramethyl ammonium ions (Fig. 11b) did not. The inhibition resulting from the substituted quarternary ammonium salts is due to the positively charged quarternary ammonium group binding to the negatively charged clay lattice and hydrophobic interactions between the long alkyl groups of the quarternary ammonium salts in the interlayer. These alkyl groups fill up the interlayer and bind so strongly that they are not replaced by the activated RNA monomers.
Figure 11. Quarternary ammonium salts. (a) dodecyltrimethylammonium, (b) tetramethylammonium.
It has also been observed that the deoxypyrophosphate derivative, dA5cppdA, (Fig. 12) inhibits oligomer formation (Wang and Ferris 2001). It is proposed that the strong inhibition by dA5cppdA is the result of the van der Waals interaction of both adenine rings to the silicate layers so that it is not possible for an RNA monomer, with only one adenine ring, to displace it from the interlayer. The chemical reactivity of the 3c-OH of deoxynucleotides is much less than that of the 2c,3c-hydroxyl groups of ribonucleotides so that reaction at the 3chydroxyls of dA5cppdA does not occur (Ferris and Kamaluddin 1989). The possibility that the catalysis occurred at the edge sites of montmorillonite was also
Figure 12. Deoxyadenosine pyrophosphate (dA5cpp5cdA).
Catalysis & Prebiotic Synthesis
203
investigated (Ertem and Ferris 1998). Trimethylsilyl groups bound to the edge silanol groups or fluoride ion bound to the trisubstituted edge aluminum groups (Fig. 10) resulted in some levels of inhibition as determined from the slightly shortened chain lengths of the oligomers formed. This finding suggests the absence of edge catalysis because the formation of oligomers was not strongly inhibited. As noted in “Prebiotic Polymerization of RNA Monomers,” the preparation of oligomers containing 40–50 mers has been achieved by two experimental approaches. These are feeding reactions where activated monomers are added daily for 14 days to a decamer primer yielded 50 mers and reactions where 1-methyladenine is used instead of imidazole as an activating group generate 35–40 mers in a one day (Huang and Ferris 2003). It is not clear why it has not been possible to generate oligomers longer than 40–50 mers. One possibility is the binding of the oligomers to montmorillonite increases, as the oligomers grow longer. Since oligomers must be mobile on the clay surface for them to react with activated monomers to increase in length, very strong binding may decreases their mobility on the surface so they block the catalytic sites in the interlayer. Another possibility is that the oligomers formed fill up the interlayer so no more activated monomers can be accommodated there. Uranyl ion catalysis of RNA oligomer formation. Uranyl ion (UO22−) catalyzes of the formation of oligo(C)s, oligo(A)s and oligo(U)s with chain lengths up to 10, 16 and 10 mers, respectively, from the corresponding phosphorimidazolides of nucleotides starting compounds (Sawai et al. 1989) (Sawai et al. 1992). There are some similarities between the reactions catalyzed by UO22− and montmorillonite. The optimal pH for both catalysts is 8; cyclic dimers are formed in high yields from the activated pyrimidine nucleotides. Mainly 2c,5c- phosphodiester bonds form in reactions of activated pyrimidine nucleotides catalyzed by either UO22− or montmorillonite. There are some differences in the reaction of ImpA catalyzed by UO22− or montmorillonite. Neither cyclic dimers nor high yields of 3c,5c-linked oligomers are formed in the UO22− catalyzed reactions of ImpA. Higher yields of oligomers are observed in the UO22− catalyzed reactions because the extent of the hydrolysis reaction of the activated monomers is much lower than that observed with montmorillonite. Catalysis of RNA oligomer formation by lead and other metal ions. Lead (Pb2+), zinc (Zn2+) and lanthanide metal ions have been observed to catalyze the formation of 5–10 mers from ImpA. Pb2+ is second only to UO22− as a catalyst. The ratio of the yields of oligomers formed from the lanthanide metal ions to the yield of hydrolyzed activated monomer increases with the atomic weight of the metal ion where the highest ratio is 49 with Lutitium (Lu3+) (Sawai 1988; Sawai and Yamamto 1996). Zn2+ gave results similar to those of Pb2+ except the longest oligomers observed were only tetramers and the oligomers formed had mainly 2c,5clinks (Sawai and Orgel 1975). The Pb2+ catalysis is enhanced when the reaction is performed in the eutectic liquid phase of water at −18 °C for 20–40 days when most of the water is present as ice crystals. Ice predominates reactants and the Pb2+ catalysts are concentrated in the small liquid phase. Here oligomers as long as 17 mers are formed with overall yields of 80–90% (Kanavarioti et al. 2001; Monnard et al. 2002, 2003). The higher yields and longer oligomers are due in part to the high concentrations of reactants and the slower rate of hydrolysis of the activated monomers. It is postulated that base stacking and ordered monomer assemblies on the ice surfaces enhances the chain lengths in the eutectic phase but there is no specific data that supports this claim.
Metal ion catalysis of template-directed synthesis Zn2+ and Pb2+ catalyze the template-directed synthesis of RNA oligomers from ImpG and ImpA (Fig. 6a) (Sleeper et al. 1979; Lohrmann et al. 1980). Pb2+ catalyzes the poly(C) template-directed synthesis of mainly 2c,5c-linked oligo(G)s that containing up to 40 mers.
204
Ferris
Pb2+ also catalyzes the formation oligo(A)s on a poly(U) template but the maximum chain length is only 7 mers. Here 75% of the phosphodiester bonds are 3c,5c-linked. Zn2+ catalysis of the template-directed synthesis of oligo(G)s in the reaction of ImpG on a poly(C) template gives oligomers as long as 30 mers that are 75% 3c,5c-linked. When the reaction is performed in the absence of Zn2+ the oligomers formed are mainly 2c,5c-linked. Zn2+ does not catalyze the template-directed formation of oligo(A)s. In the investigation of the reaction pathway it was observed that 2 Zn2+ per ImpG gave optimal oligomer yields. One of the zinc ions can be replaced with Mg2+. X-ray structure analysis of the Zn2+-nucleotides complexes show Zn2+ binding at both N7 and the phosphate of the nucleotide. It is tentatively proposed that in this complex one Zn2+ binds to N(7) and either Zn2+ or possibly Mg2+ binds to the imidazole (Birdson and Orgel 1980). No postulates on the reaction pathway of the template-directed reactions catalyzed by Pb2+ have been proposed other than the coordination of the lead ion with the 2c-hydroxyl of the nucleotide. The main basis for this suggestion is the preferential formation of 2c,5c-phosphodiester bonds (Sleeper et al. 1979). Other metal ions have been tested as catalysts for the template-directed synthesis of oligo(G)s from ImpG besides Pb2+ and Zn2+ (van Rode and Orgel 1980). Of the 17 tested, 4 (Bi3+, Sn2+, Sb3+, and Mn2+) exhibited catalytic activity. All of these generated lower yields of oligomers than were formed by Pb2+catalysis and all the oligomers were linked by 2c,5cphosphodiester bonds. The divalent transition metal ions that would be expected to coordinate with imidazole (Co2+, Ni2+, Cu2+and Cd2+) protect ImpG from hydrolysis and also inhibited catalysis. It is proposed that these metal ions bind to the imidazole of the activating group where they protect ImpG from hydrolysis and at the same time they inhibit oligomer formation. The research on the metal ion catalysis of template-directed synthesis stopped when it was observed that when the imidazole activating group was replaced with 2-methylimidazole metal ions were not required to enhance the formation 30 mers of oligo (G) s on a poly(C) template (Inoue and Orgel 1981).
POSSIBLE CATALYTIC REACTION PATHWAYS Since metal ions, RNA templates and montmorillonite clay all catalyze the reactions of nucleotides activated with imidazole at the 5c-position it may be possible to gain insight into the reaction pathway on montmorillonite by reviewing the mechanisms proposed for the catalysis by metal ions and RNA templates.
Metal ions UO22− and Pb2+ are effective while Zn2+ and lanthanides metal ions are much less effective catalysts of the reactions of ImpN where N is A, U, G, C and I. In most cases the products formed are mainly 2c,5c-linked. It is proposed that UO22− forms a complex with the activated monomers that binds them in the correct orientations for the 2c-hydroxyl group of one monomer to react with the activated phosphate of the other monomer (Shimazu et al. 1993). In studies where the nucleotide base is inverted in the nucleotide, a D-nucleotide, (Fig. 5d) the longest oligomers formed are half as long as those formed from the natural E-nucleotide and the bonds formed were linked mainly by 3c,5c-phosphodiester bonds (Sawai et al. 1997). It was not noted whether the UO22− complex, formed from UO22− monomers, binds D-ImpA in the proper orientations for reaction and whether this complex can also bind oligomers in the correct orientation for elongation. Reactions catalyzed by soluble metal ions are probably initiated by complex formation between the metal ion and the activated nucleotide. If the metal ion binds two or more activated
Catalysis & Prebiotic Synthesis
205
nucleotides then they may be held in the proper orientation for reaction in the complex. An alternative proposal is the metal ion binds the activated nucleotide in a way that activates the 2c-hydroxyl group of the activated nucleotide. This postulate is supported by the observation that the best catalyst among the lanthanide series of metal ions is Lu3+, in which the bound water has the greater acidity, and as such should be the most effective metal ion for activating the 2c-hydroxyl group of the nucleotide (Sawai and Yamamto 1996).
Metal ion catalysis of template-directed synthesis of RNA oligomers Metal ion catalyzed template-directed synthesis enhances the length of the oligomers formed over that of the catalysis by either the metal ions or the templates alone. The most successful metal ion catalysts are Pb2+ and Zn2+. Pb2+ catalyzes the poly(C) template-directed synthesis of mainly 2c,5c- linked G oligomers and the synthesis of mainly 3c,5c-linked an oligomers on a poly (U) template. Zn2+ catalyzes the template-directed synthesis of a mainly 3c,5c-linked G oligomers on a poly(C) template. The observation that metal ions were not responsible for catalysis when the mononucleotide is activated with 2-methylimidazole suggests that they may not have a direct role in the activation of the mononucleotide for reaction. Rather the metal ion may just change the geometry of the double helix of the poly(C) template with the growing G oligomers so that the activated nucleotides are lined up for reaction (Birdson and Orgel 1980). This favorable orientation does not require the activation of either the 2c- or 3c-hydroxyl groups by a metal ion.
A postulate for montmorillonite catalysis If it is assumed that similar pathways are followed in oligomer formation for metal ion, template-directed and montmorillonite-catalyzed synthesis of RNA oligomers it may be possible propose a possible mechanism for the montmorillonite-catalyzed synthesis of RNA oligomers. The observation that a 2-methylimidazole activating group is all that is needed to generate long oligomers from activated nucleotides suggests that the optimal orientation of the activated monomers for reaction is the key factor in the montmorillonite-catalyzed reaction. The failure of certain montmorillonites to be catalysts may be due to differences in the geometry of their interlayer from those of the catalytic clays. The proper orientation of the activated bound nucleotides has also been proposed to be an important factor in UO22− and Pb2+ catalysis as well. While activation of the 2c-hydroxyl group may be a factor with some of the metal ions it appears not to be a factor in the montmorillonite catalysis. The selectivity observed for reaction at either the 2c- or 3c-hydroxyl groups may be due to factors specific for each catalyst. The difference in selectivity for montmorillonite may be due to a difference in the orientation of the activated nucleotide when bound to the clay interlayer. This difference in orientation may be responsible for the selectivity for the formation of the 3c, 5c-link with purine nucleotides and 2c, 5c- links with pyrimidine nucleotides.
POTENTIAL STEPS TO THE ORIGIN OF LIFE FROM OLIGOMERS Research on the formation of RNA oligomers is based on the assumption that the requisite activated RNA monomers formed spontaneously on the primitive Earth. Progress has been made in their formation but no plausible prebiotic synthesis of the activated RNA monomers or the monomers that would the basis of any other genetic polymer has been reported at the time of this writing (see discussion in “Alternative Genetic Systems”). In this Section we will assume that a catalyst was found that generated a mixture of informational biopolymers on the primitive Earth that were sufficiently long to store genetic information and to catalyze reactions.
206
Ferris
The next question is how far away are these biopolymers from the formation of the first life? Since these polymers were formed catalytically it is reasonable to assume that there was selectivity in the synthesis of these oligomers so a limited number of isomers were produced (see discussion in “Prebiotic Polymerization of RNA Monomers”). Because it is a catalytic process a continuous supply of these structurally related oligomers were formed continuously. If the first life was based on a self-replicating system capable of mutations then the key step was the origin of the replication of these oligomers. In one scenario it is assumed that the first life is an array of oligomers bound on the mineral that catalyzed their formation. This would require that a subgroup of these oligomers, or the mineral-oligomer-complex, had the ability to catalyze their own synthesis while bound to the mineral. This group of catalytic oligomers would rapidly take over the mineral surface if their rates of replication were greater than the catalytic formation of oligomers by the mineral. In this scenario the subgroup of oligomers would serve as the catalysts and the templates for the synthesis. It is assumed that the rate of catalysis by the biopolymer will increase as a consequence of the selection of the more rapidly forming oligomers. Another important catalyst was one that catalyzed the ligation of the oligomers formed by mineral catalysis. This generates longer biopolymers with greater capability of storing more genetic information. Greater information storage will be essential for the evolution of the more complex biochemical machinery needed for the formation of more sophisticated forms of life. At some point in the above process the biomolecules will have to become independent from the mineral catalyst to which they are bound. This is because the higher molecular weight oligomers will bind more strongly to the minerals surface and block the catalytic sites. This dissociation could be a stepwise process where the oligomer-catalyst complex is encapsulated within a vesicle and then the oligomers are released from the catalyst. The direct incorporation of the catalyst-oligomer complex into a vesicle is an alternative to life originating on the surface of a mineral catalyst. A possible scenario for such an event has been described (Hanczyc et al. 2003; also see discussion in “Vesicles”). Here montmorillonite catalyzes both the formation of RNA oligomers and the vesicle that encapsulated the oligomercatalyst complex. The one flaw with this particular scenario is that the conditions necessary for the formation of the biopolymer destroys the vesicle (Monnard et al. 2002). It seems likely that there may be an alternative approach that will be successful in the incorporation of the mineral-catalyst inside a vesicle without destroying it. One can imagine the ingestion of molecules in the vesicle that elute the oligomers from the catalyst. Of course these molecules should do this without inhibiting the catalyst. The stages leading to a self-replicating system after the initial trapping of the biopolymer inside a vesicle will be similar to the ones described above for life originating in a family of biopolymers bound to a catalytic mineral. The main difference will be the need for the fission of the vesicle into two or more vesicles once it has reached a critical size (Walde et al. 1994).
PROPOSED EXPERIMENTS Selection of oligomers that bind to other biomolecules The oligomers formed by montmorillonite catalysis are long enough to fold into threedimensional structure that can bind to other RNA oligomers or other biomolecules (Joyce and Orgel 1999). Studies should be performed to determine if this binding does indeed occur. The selectivity observed in the oligomers formed by montmorillonite catalysis suggests that it is likely, if binding is observed, that an appreciable fraction of these oligomers will bind. If
Catalysis & Prebiotic Synthesis
207
this occurs it possible that a small fraction of these oligomers will catalyze reaction(s) of the biomolecules to which they are bound.
Catalysis of template-directed synthesis One of the essential catalytic processes required for the first life if the replication of RNA by template-directed synthesis. This is essential for the reservation of genetic material as well as the preservation of catalytic RNA. As noted in “Non-enzymatic Template – Directed Synthesis,” the non-enzymatic template-directed synthesis is only successful in the formation of G oligomers on a C-template or on a template that contains more cytidine nucleotides than guanosine nucleotides. Catalysis is needed to enhance the rates of formation of RNAs that contain A, U and C nucleotides. The potential catalysts include RNA oligomers and minerals. There are examples of the template-directed synthesis of G-oligomers on a polyC template bound to minerals (Schwartz and Orgel 1985; Holm et al. 1993). So far no minerals have been detected that enhance the rates of template-directed synthesis of activated nucleotides over that from RNA templates alone.
Catalysis of RNA ligation Some of the oligomers formed by montmorillonite catalysis are long enough to be catalysts but the bulk of the oligomers are not. A ligation catalyst that would link these smaller oligomers would enhance the pool of longer oligomers. An RNA catalyst of this type would generate longer oligomers that have similar structures because it would have a template that would simultaneously bind two oligomers close enough so that they could form a phosphodiester bond between them. While it is likely that the ligation catalyst would be another RNA molecule it is also possible that a mineral would catalyze phosphodiester bond formation between two oligomers.
ACKNOWLEDGMENTS Research support was provided by NSF grant CHE-0413739 and NASA grant NAGS12750 that supports the NY Center for Studies on the Origins of Life.
REFERENCES Bailey J, Chrysostomou A, Hough JH, Gledhill TM, McCall A, Clark S, Menard F, Tamura M (1998) Circular polarization in star-formation regions: Implications for biomolecular homochirality. Science 281:672-674 Banin A (1973) Quantitative ion exchange process for clays. U.S. Patent Nd 3,725,528 Banin A, Lawless JG, Mazzurco J, Church FM, Margulies L, Orenberg JB (1985) pH profile of the adsorption of nucleotides onto montmorillonite. Origins Life Evol Biosphere 15:89-101 Birdson PK, Orgel LE (1980) Catalysis of accurate poly(C)-directed synthesis of 3c-5c-linked oligoadenylates by Zn2+. J Mol Biol 144:567-577 Böhler C, Nielsen PE, Orgel LE (1995) Template switching between PNA and RNA oligonucleotides. Nature 376:578-581 Brack A (1998) The Molecular Origins of Life: Assembling the Pieces of the Puzzle. Cambridge, Cambridge University Press Brandes JA, Boctor NZ, Cody GD, Cooper BA (1998) Abiotic nitrogen reduction on the early Earth. Nature 395:365-367 Brasier MD, Green OR, Jephcoat AP, Kleppe AK, Van Kranendonk MJ, Lindsay JF, Steele A, Grassineau NV (2002) Questioning the evidence for the Earth’s oldest fossils. Nature 416:76-81 Cairns-Smith AG (1982) Genetic Takeover and the Mineral Origins of Life. Cambridge (Great Britain), Cambridge University Press Cody GD, Boctor NZ, Filley TR, Hazen RM, Scott JH, Sharma A, Yoder Jr. HS (2000) Primordial carbonylated iron-sulfur compounds and the synthesis of pyruvate. Science 289:1337-1340 Deamer DW, Pashley RM (1989) Amphiphilic components of the Murchison carbonaceous chondrite: Surface properties and membrane formation. Origins Life Evol Biosphere 19:21-38
208
Ferris
Delano J (2001) Redox History of the Earth’s Interior since ~3900 Ma: implications for prebiotic molecules. Origins Life Evol Biosphere 31:311-341. Ertem G, Ferris JP (2000) Sequence- and regio-selectivity in the montmorillonite-catalyzed synthesis of RNA. Origins Life Evol Biosphere 30:411-422 Ertem G, Ferris JP (1998) Formation of RNA oligomers on montmorillonite: site of catalysis. Origins Life Evol Biosphere 28:485-499 Eschenmoser A (1999) Chemical etiology of nucleic acid structure. Science 284:2118-2124 Ferris JP (2005) Origins of life, molecular basis of. In: Encyclopedia of Molecular Cell Biology and Molecular Medicine. Meyers RA (ed), Weinheim, Germany, Wiley-VCH Verlag, p 1-27 Ferris JP (2002) Montmorillonite catalysis of 30-50 mer oligonucleotides: laboratory demonstration of potential steps in the origin of the RNA world. Origins Life Evol Biosphere 32:311-332. Ferris JP, Ertem G (1992) Oligomerization reactions of ribonucleotides on montmorillonite: reaction of the 5’phosphorimidazolide of adenosine. Science 257:1387-1389 Ferris JP, Hagan Jr. WJ (1984) HCN and chemical evolution: The possible role of cyano compounds in prebiotic synthesis. Tetrahedron 40:1093-1120 Ferris JP, Hill Jr. AR, Liu R, Orgel LE (1996) Synthesis of long prebiotic oligomers on mineral surfaces. Nature 381:59-61 Ferris JP, Joshi PC, Edelson EH, Lawless JG (1978) HCN: A plausible source of purines, pyrimidines, and amino acids on the primitive Earth. J Mol Evol 11:293-311 Ferris JP, Kamaluddin (1989) Oligomerization reactions of deoxyribonucleotides on montmorillonite clay: The effect of mononucleotide structure on phosphodiester bond formation. Origins Life Evol Biosphere 19: 609-619 Ferris JP, Kamaluddin, Ertem G (1990) Oligomerization reactions of deoxyribonucleotides on montmorillonite clay: the effect of mononucleotide structure, phosphate activation and montmorillonite composition on phosphodiester bond formation. Origins Life Evol Biosphere 20:279-297 Flores JJ, Bonner WA, Massey GA (1977) Asymmetric photolysis. J Amer Chem Soc 99:3622-3625 Fry I (2000) The Emergence of Life on Earth. New Brunswick, N. J., Rutgers University Press Fuller WD, Sanchez RA, Orgel LE (1972) Studies in prebiotic synthesis IV. Synthesis of purine nucleosides. J Mol Biol 67:25-33 Hanczyc MM, Fujikawa SM, Szostak JW (2003) Experimental models of primitive cellular compartments: Encapsulation, growth and division. Science 302:618 - 622 Heinen W, Lauwers AM (1996) Organic sulfur compounds resulting from interaction of iron sulfide, hydrogen sulfide and carbon dioxide in an aqueous environment. Origins Life Evol Biosphere 26:1-20 Hill Jr. AR, Böhler C, Orgel LE (1998) Polymerization on the rocks: negatively-charged D-amino acids. Origins Life Evol Biosphere 28:235-243 Hill Jr. AR, Orgel LE (1999) Oligomerization of L-J-carboxyglutamic acid. Origins Life Evol Biosphere 29: 115-122 Holm NG, Ertem G, Ferris JP (1993) The binding and reactions of nucleotides and polynucleotides on Iron oxide polymorphs. Origins Life Evol Biosphere 23:195-215 Huang W, Ferris JP (2003) Synthesis of 35-40 mers of RNA oligomers from unblocked monomers. A simple approach to the RNA world. Chem Commun:1458-1459 Huber C, Wachtershauser G (1998) Peptides by activation of amino acids with CO on (Ni,Fe)S surfaces: Implications for the origin of life. Science 281:670-672 Huber C, Wachtershauser G (1997) Activated acetic acid by carbon fixation on (Fe,Ni)S under primordial conditions. Science 2776:245-247 Inoue T, Orgel LE (1981) Substituent control of the poly(C)-directed oligomerization of guanosine 5cphosphoroimidazolide. J Am Chem Soc 103:7666-7667 Joyce GF, Orgel LE (1999) Prospects for understanding the origin of the RNA world. In: The RNA World: The Nature of Modern RNA Suggests a Prebiotic RNA. Gesteland RF, Cech TR, Atkins JF (eds), Cold Spring Harbor Laboratory Press, Cold Spring Harbor, New York, p. 49-77 Kanavarioti A, Monnard P-A, Deamer DW (2001) Eutectic phases in ice facilitate nonenzymatic nucleic acid synthesis. Astrobiology 1:271-281 Kawamura K, Ferris JP (1999) Clay catalysis of oligonucleotide formation: kinetics of the reaction of the 5cphosphorimidazolides of nucleotides with the non-basic heterocycles uracil and hypoxanthine. Origins Life Evol Biosphere 29:563-591 Liu R, Orgel LE (1998) Polymerization on the rocks: E-amino acids and arginine. Origins Life Evol Biosphere 28:245-257 Lohrmann R, Bridson PK, Orgel LE (1980) Efficient metal-ion catalyzed template-directed oligonucleotide synthesis. Science 208:1464-1465 McCollum TM, Ritter G, Simoneit BRT (1999) Lipid synthesis under hydrothermal conditions. Origins Life Evol Biosphere 29:153-166
Catalysis & Prebiotic Synthesis
209
Miller SL (1997) Peptide nucleic acids and prebiotic chemistry. Nature Structural Biology 4:167-169 Miyakawa S, Cleaves HJ, Miller SL (2002) The cold origins of life: B. Implications based on pyrimidines and purines produced from frozen ammonium cyanide solutions. Origins Life Evol Biosphere 32:209-218 Miyakawa S, Ferris JP (2003) Sequence- and regioselectivity in the montmorillonite-catalyzed synthesis of RNA. J Am Chem Soc 125:8202-8208 Mojizsis SJ, Arrhenius G, McKeegan KD, Harrison TM, Nutman AP, Friend CRL (1996) Evidence for life on Earth before 3,800 million years ago. Nature 384:55-59 Monnard P-A, Apel CL, Kanavarioti A, Deamer DW (2002) Influence of ionic inorganic solutes on selfassembly and polymerization processes related to early forms of life: implications for a prebiotic aqueous medium. Astrobiology 2:139-152 Monnard P-A, Kanavarioti A, Deamer DW (2003) Eutectic phase polymerization of activated ribonucleotide mixtures yields quasi-equimolar incorporation of purine and pyrimidine nucleobases. J Am Chem Soc 125:13734-13740 Moorbath S (2005) Dating earliest life. Nature 434:155-155 Müller D, Pitsch S, Kittaka A, Wagner E, Wintner CE, Eschenmoser A (1990) Chemie von DAminonitrilen Aldomerisierung von Glycolaldehyd-phosphat zu racemischen Hexose-2,4,6-triphosphaten und (in Gegenwart von Formaldehyd) racemischen Pentose-2,4-diphosphaten: rac-Allose-2,4,6-triphosphat und rac-Ribose-2,4-diphosphat sind die Reaktionshauptprodukte. Helvetica Chimica Acta 73:1410-1468. Orgel LE (2004) Prebiotic chemistry and the origin of the RNA world. Critical Revs Biochem Mol Biol 39: 99-123 Orgel LE (1998) Polymerization on the rocks: theoretical introduction. Origins Life Evol Biosphere 28:227234 Osterberg R, Orgel LE (1972) Polyphosphate and trimetaphosphate formation under potentially prebiotic conditions. J Mol Evol 1:241-248 Osterberg R, Orgel LE, Lohrmann R (1973) Further studies of urea-catalyzed phosphorylation reactions. J Mol Evol 2:231-234 Pizzarello S, Cronin JR (2000) Non-racemic amino acids in the Murray and Murchison meteorites. Geochim Cosmochim Acta 64:329-338 Pizzarello S, Huang Y, Becker L, Poreda RJ, Nieman RE, Cooper G, Williams M (2001) The organic content of the Tagish Lake meteorite. Science 293:2236-2240 Prabahar KJ, Ferris JP (1997) Adenine derivatives as phosphate-activating groups for the regioselective formation of 3c,5c-linked oligoadenylates on montmorillonite: possible phosphate-activating groups for the prebiotic synthesis of RNA. J Am Chem Soc 119:4330-4337 Ricardo A, Carrigan MA, Olcott AN, Benner S (2004) Borate minerals stabilize ribose. Science 303:196 Rushdi AI, Simoneit BRT (2001) Lipid formation by aqueous Fischer-Tropsch-type synthesis over a temperature range of 100-400 °C. Origins Life Evol Biosphere 31:103-118 Sawai H (1988) Oligonucleotide formation catalyzed by divalent metal ions. The uniqueness of the ribosyl system. J Mol Evol 27:181-186 Sawai H, Higa K, Kuroda K (1992) Synthesis of cyclic and acyclic oligocytidylates by uranyl ion catalyst in aqueous solution. J Chem Soc Perkin I:505-508 Sawai H, Itoh T, Kokaji K, Shinozuka K (1997) An approach to prebiotic synthesis of D-oligoribonucleotides and description of their properties: selective advantage of E-RNA over D-RNA. J Mol Evol 45:209-215 Sawai H, Kuroda K, Hojo T (1989) Uranyl ion as a highly effective catalyst for internucleotide bond formation. Bull Chem Soc Jpn 62:2018-2023 Sawai H, Orgel LE (1975) Oligonucleotide synthesis catalyzed by the Zn2+ ion. J Amer Chem Soc 97:35323533 Sawai H, Yamamto K (1996) Lanthanide ion as a catalyst for internucleotide bond formation. Bull Chem Soc Jpn 69:1701-1704 Schmidt JG, Nielson PE, Orgel LE (1997) Information transfer from peptide nucleic acids to RNA by templatedirected synthesis. Nucleic Acids Res 25:4797-4802 Schoning K-U, Scholz P, Guntha S, Wu X, Krishnamurthy R, Eschenmoser A (2000) Chemical etiology of nucleic acid structure: The D-threofuranosyl-(3 -2c) oligonucleotide system. Science 290:1347-1351 Schopf WJ (1993) Microfossils of the early Archean Apex chert: new evidence of the antiquity of life. Science 260:640-646 Schwartz AW, Orgel LE (1985) Template-directed polynucleotide synthesis on mineral surfaces. Letter to the Editor. J Mol Evol 21:299-300 Shimazu M, Shinozuka K, Sawai H (1993) UO22+-catalyzed oligothioadenylate synthesis with high regio- and stereoselectivity. Angew Chem Int Ed Engl 32:870-872 Sleeper HL, Lohrmann R, Orgel LE (1979) Template-directed synthesis of oligoadenylates catalyzed by Pb2+ ions. J Mol Evol 13:203-214
210
Ferris
Springsteen G, Joyce GF (2004) Selective derivatization and sequestration of ribose from a prebiotic mix. J Am Chem Soc 126:9578-9583 Tian F, Toon OB, Pavlov AA, De Sterck H (2005) A hydrogen-rich early Earth atmosphere. Science 308: 1014-1017 van Rode JHG, Orgel LE (1980) Template-directed synthesis of oligoguanylates in the presence of metal ions. J Mol Biol 144:579-585 Vokrouhlicky D, Farinella P (2000) Efficient delivery of meteorites to the Earth from a wide range of asteroid parent bodies. Nature 407:606-608 Walde P, Wick R, Fresto M, Mangone A, Luisi PL (1994) Autopoietic self-replication of fatty acid vesicles. J Am Chem Soc 116:11649-11654 Wang K-J, Ferris JP (2001) Effect of inhibitors on the montmorillonite clay-catalyzed formation of RNA: Studies on the reaction pathway. Origins Life Evol Biosphere 31:381-402 Ward PD, Brownlee D (2000) Rare Earth. Copernicus, New York Watson EB, Harrison TM (2005) New thermometer reveals minimum melting conditions on earliest Earth. Science 308 Weimann BJ, Lohrmann R, Orgel LE, Schneider-Bernloehr H, Sulston JE (1968) Template-directed synthesis with adenosine-5c-phosphorimidazolide. Science 161:387-388 Zubay G (2000) Origins of Life on the Earth and in the Cosmos. Academic Press, San Diego, CA Zubay G (1998) Studies on the lead-catalyzed synthesis of aldopentoses. Origins Life Evol Biosphere 28: 13-26
9
Reviews in Mineralogy & Geochemistry Vol. 59, pp. 211-231, 2005 Copyright © Mineralogical Society of America
The Evolution of Biological Carbon and Nitrogen Cycling—a Genomic Perspective Jason Raymond Microbial Systems Division Biosciences Directorate Lawrence Livermore National Laboratory Livermore, California, 94550, U.S.A. [email protected]
INTRODUCTION Carbon and nitrogen are essential to all living organisms, owing to their abundance and remarkable characteristics when participating in chemical bonds. Their essentiality dates back to the very origin of life, where current theories hypothesize either a prebiotic abundance of organic compounds rich in carbon and nitrogen, or an ability to assimilate them inorganically through abiotic reactions that might have been catalyzed on ancient mineral surfaces. This chapter details the core reactions essential to the assimilation of these elements in biologically useful forms—the so-called fixation of carbon and nitrogen—focusing on recent literature and insights from comparative genomics and phylogenetics. Though considerable debate continues on the antiquity of these pathways, especially whether or not they might have been present in the last common ancestor (LCA) of modern organisms, it is clear that carbon and nitrogen fixation pathways were of crucial importance to the primitive ancestors of extant life. Furthermore, the biological assimilation of inorganic carbon (autotrophy) and atmospheric nitrogen (diazotrophy) represent pivotal juxtapositions of biological and geological cycles. It is thought that atmospheric CO2 concentrations have decreased substantially since the proposed origin of life some 3.8 billion years ago, due in large part to either primary (fixation) or secondary (e.g., weathering) influence by biota (Hayes 1994; Rye et al. 1995; Des Marais 1997; Lowe and Tice 2004). Though the biosphere accounts for a relatively small fraction of the total carbon on Earth, the rate of carbon flux through the biosphere far exceeds that through any geological reservoirs (Des Marais 1997). Biological carbon fixation is closely balanced to carbon recycling through biological oxidation, and the future stability of this and other CO2 reservoirs (and our ability to influence or understand them) depends critically on these biological underpinnings (e.g., Falkowski et al. 2000). Conversely, nitrogen, especially the atmospheric N2 reservoir, is remarkably stable, owing largely to the stability of the N-N triple bond and the relative inertness of the molecule. In fact, many environments are considered nitrogen limited, meaning that biologically available nitrogen is essentially locked up in biomass. Thus many ecosystems are dependent upon diazotrophs, prokaryotes that can convert atmospheric N2 into ammonia by way of the enzyme nitrogenase. As is detailed below, this enzyme is thought to be ancient and is extremely sensitive to oxygen; nitrogen-fixing bacteria and archaea are either anaerobic or have evolved elaborate mechanisms for shielding nitrogenase from molecular oxygen. It is estimated that as nitrogenase fixes of the same order per year as all anthropogenic and abiotic processes combined, including the industrial Haber-Bosch process and the lightning-catalyzed production of nitrate that (prior to Haber’s revolutionary invention) formed the basis for profitable mining industries, especially in arid areas such as Chile’s Atacama. 1529-6466/05/0059-0009$05.00
DOI: 10.2138/rmg.2005.59.9
212
Raymond USING GENOMICS TO UNDERSTAND THE PRESENT (AND INFER THE PAST)
At present, 254 prokaryotic and 20 eukaryotic genomes have been completed, with over 400 and 200 more, respectively, progressing through various pipelines around the world. The term comparative genomics—once an applied discipline unto itself—is arguably redundant, as the wealth of sequence data now available obliges genomics to be inherently comparative. More specifically, given a single gene or chromosome sequence, ab initio prediction of a protein’s structure, function, and interactions are still far beyond current capabilities, and simply predicting the position and arrangement of coding sites given a “universal” genetic code is imprecise even in the simplest prokaryotic genomes. The bootstraps upon which our vast repositories of genetic information are propped stem ultimately from the comparison of new sequences with previously characterized evolutionary “relatives”—homologous proteins that have been painstakingly expressed and characterized. Thus our understanding hinges on our knowledge of molecular evolution, how processes such as natural selection and horizontal gene transfer alter gene sequences and the function of an organism’s proteins. Widely used function prediction front-ends, such as NCBI’s BLAST sequence vs. database comparison tool, are essentially distilled algorithms for determining a protein’s phylogeny, in particular for finding homologs with known functions. Fast database search tools are typically sufficient for assessing homology between sequences and annotating a newly sequenced genome, but a wealth of additional information can be obtained by looking not just at whether a group of sequences is related, but how they have changed through time. The textbook example is how natural selection has promulgated variability in the immunoglobulin antigen-recognition domain, thereby increasing the robustness of vertebrate immune systems (Tanaka and Nei 1989). Phylogenetic analysis of enzyme families, such as those presented in this chapter for proteins involved directly in carbon and nitrogen cycling, give insight into how metabolic capabilities and pathways have evolved. For example (as is discussed below), since diverging from its homologs in chlorophyll biosynthesis pathways, it is possible to elucidate how the enzyme nitrogenase has become progressively more specific for atmospheric dinitrogen as a substrate, even though the mechanism, structure, and cofactor complement of the enzyme has been largely retained in these functionally diverse pathways. Likewise, one can envisage how the reductive tricarboxylic acid cycle, used by diverse and deeply-branching organisms for “fixing” CO2 into biomass, likely evolved from a much simpler pathway by duplication of a few ancient genes followed by improved substrate specificity. Taken as a whole, the function of the expressed protein complement encoded within an organism’s genome comprises its metabolome and, in essence, comprises its phenotype: how and under what conditions an organism can thrive. Connecting the dots between the genome-encoded genotype and the functional phenotype represents the next major frontier in biology, with two major hurdles that so-called functional genomics must overcome. The first is that, at a given time and under varying conditions, not all of the protein complement of a genome is translated into protein. High-throughput determination of this “business end” is presently being attacked both at the transcriptional level, using microarrays and gene chips to quantify mRNA levels, and also at the proteome level, in particular using high resolution mass spectrometers to identify fragments of proteins being expressed by an organism under varying conditions. Theoretical advances have also been made using metabolic network modeling methods such as flux balance analysis, which can correctly segregate important versus redundant metabolic pathways by optimizing flux through a metabolic network under a given set of (environmentally-imposed) boundary conditions. The second major hurdle in connecting genotype to phenotype is the remarkable paradox presented by so-called hypothetical proteins of unknown function, paradoxical because their
Evolution of Biologic C & N CyclingȰGenomic Perspective
213
presence and relative abundance has continued almost unabated since the first genomes became available a decade ago. Specifically, this means that every new genome sequenced will have on average of 1/3 of its putative proteins with no clear homologs in any protein database or in any other genome (Bork 2000)—a veritable Red Queen principle that appears only to be solvable by bench-top biochemical characterization. However, it is not difficult to envision how high-throughput proteomics and microarray analysis will give insight into the function of hypothetical proteins, giving insight into whether and when a particular protein is expressed (Ram et al. 2005). As we learn how to decode and interpret their genomes and proteomes, microorganisms present an unrivalled diagnostic tool for understanding the physical chemistry and dynamics of natural environments, highly-tuned to their surroundings and possessing a remarkable capacity to adjust their metabolic repertoire and/or community organization in response to changing conditions. This raises the attractive possibility that an understanding of microbial evolution can provide a glimpse into the past. While this appears to hold true for many cases, for example the near-concurrence in the geological and biological records of the evolution of oxygenic photosynthesis and mitochondrial-based respiration, the plasticity with which organisms, pathways, and individual genes have evolved and, in the latter case, been horizontally transferred stand as important caveats. In particular, relying on so-called “universal” phylogenies to infer characteristics of ancient organisms is fraught by the assumption that modern lineages have somehow remained metabolically “frozen,” a difficult tenet to hold in light of the remarkable geological changes the Earth has undergone and given the proclivity and non-linearity through which evolution sometimes acts.
BIOLOGICAL NITROGEN CYCLING AND DIAZOTROPHY In modern organisms, assimilation of inorganic nitrogen is universally shunted through ammonia (as the ammonium cation), representing the central inorganic nitrogen source and further suggestive of a pivotal role in the early evolution of life. Though nitrate and nitrite are important inorganic nitrogen sources for extant organisms, these compounds were of fleeting abundance on the early Earth and probably played a minor role until their concentration increased following the oxidation of Earth’s atmosphere (see discussion below). Numerous transmembrane permeases transport ammonium into cells, whereafter it is enzymatically incorporated into carbon skeletons of central metabolites. This juxtaposition of the carbon and nitrogen cycles is carried out by a highly conserved set of enzymes comprising the GS/GOGAT cycle, illustrated in Figure 1. The enzyme glutamine synthetase (GS) adds ammonium to glutamate to form glutamine, which then is used as a substrate in the amination of 2-oxoglutarate by glutamine:2-oxoglutarate aminotransferase (GOGAT or glutamate synthase). This results in the cyclic formation of two molecules of glutamate—regenerating the original glutamate substrate and freeing a second glutamate to be used in other metabolic reactions. The products of this central cycle, glutamate and glutamine, serve as the ultimate nitrogen donors for all additional nitrogen-containing metabolites through a cascade of aminotransferase reactions. Regulatory response to combined nitrogen availability is tightly queued to the intracellular ratio of glutamine to 2-oxoglutarate, further underscoring the centrality of this intersection between carbon and nitrogen assimilatory pathways. This overlap between pathways has also garnered substantial interest in the evolutionary history of the key enzymes, glutamine synthetase and glutamate synthase. Glutamine synthetase is a multisubunit enzyme (homododecameric in bacteria, homooctamer in many eukaryotes, including Homo sapiens) that catalyzes the ATP-dependent condensation of ammonium with glutamate. The wide distribution of this enzyme across all three domains of life argues that the enzyme is ancient, notably comprising two major classes
214
Raymond
Figure 1. GS/GOGAT cycle, as discussed in the text. Boxes over arrows indicate enzymes responsible for the biochemical reactions shown. Pathways are abbreviated for simplification.
(GSI and GSII) of enzymes whose duplication origin has been argued to predate the LCA. Early attempts to date major divergences on the tree of life used this early duplication as time zero, along with an argued “clock-like” evolution among GS proteins that remains controversial (Pesole et al. 1991; Brown et al. 1994). So far, the GSI family is exclusive to bacteria, whereas eukaryotes possess only GSII. Some bacteria, most notably the rhizobia, express both forms of GS (Turner and Young 2000). Archaea also contain GSI, with euryarchaeotes sharing a highly similar GSI (GSI-D) with Gram-positive bacteria and Thermotoga, with horizontal gene transfer as a very likely explanation for this distribution (see below). Sulfolobus and other crenarchaeotes, however, possess GSI’s that are phylogenetically distinct from the GSI-D or GSI-E (bacterial) clades, with functional and phylogenetic features intermediate between the bacterial and euryarchaeal enzymes (Cabello et al. 2004). Within both classes of GS are examples of HGT, potentially confounding their evolutionary history. Some of the strongest early evidence for HGT came from analysis of the GSI family, where interdomain transfer between Gram-positive bacteria and euryarchaeotes is clear) which, intriguingly, is similar to the pattern of interdomain (bacteria l archaea) transfer evident in analysis of nitrogenase genes (discussed below) (Pesole et al. 1995; Nesbo et al. 2001). It is not yet clear whether these similar patterns of gene transfer are in fact linked—for example, as an adaptation specific to biological nitrogen cycling—or the result of a more extensive, nonspecific exchange of genetic information (as is suggested by recent whole genome analysis of methanogens; e.g., Deppenmeier et al. 2002). HGT also obfuscates the phylogeny of the GSII family, noted originally among the rhizobia (Turner and Young 2000). The evolution of GOGAT/glutamate synthase, shown in Figure 2, is even more perplexing. The enzyme itself comes in several different flavors that vary by their obligatory (two) electron donor, which can be ferredoxin, NADH, or NADPH. Most bacteria possess NADH- or NADPH-dependent GOGAT’s, with some specificity within taxa such as NADH dependence in many proteobacteria versus NADPH dependence in Gram-positive Bacillus subtilis (Suzuki and Knaff 2005). The GOGAT from cyanobacteria is ferredoxin-dependent, as is that found in the plastids of photosynthetic eukaryotes. Alternatively, non-photosynthetic eukaryotes
daii
0.2
du sd
no
ge n
2 M.maripaludishii sc n na M.ja eri ark i M.b aze .m M
is1 lud i pa ni ari o m t M. ur .b M
NADPHdependent (truncated)
F.acidarmanus ilum P.aeroph
S.solfataricus
S.toko
lgi
the
P. sm fur 43 ios us es 04 T.m 19 arit 5 ima msb 8 M.ther moacet ica
D.e
ut o
M .th
er m oa
vo r an s
M. ac eti m S.
ilo el
tro ph
ti1
ic um 2
ge lla tus
nd ler i M.k a
M.th e r m o auto troph utotroph icum icum1 3
A. fu
G.sulfurreducens1 e n s1 educ tallir G.me gh orou m enb cans lu i hild r is el r u lga ulf oc D.vu es m r d . e D th C.
NADPH (NADH)dependent
olicu
Ferredoxindependent
T.elongatus C.w Sy atsonii S.e necho cy s l on N. tis ga 6 80 tus A pun 31 .v ar ctifo ia r m bi e lis
G.violaceus
A.ae
s 4 MED rinus a 2 .m P s WH810 cu oc oc Synech
e ns ie fn tilis a h b s D. .su ran B lodu is a e ns h y . e B O.ih A 2 52 i MRS n ju reus C.je ureus au S.a
cs
M. fla
m
Figure 2. GOGAT (glutamate synthase) protein evolutionary tree, based on homologs found in completed prokaryotic genomes. The different clades bear strong correlation with the electron donor, as shown. There are exceptions, for example the cyanobacterium Synechocystis PCC6803 has two GOGAT homologs, one of which is ferredoxin-dependent and the other NADH-dependent, though it clusters with NADPH-dependent enzymes. Truncated sequences are typically less than half the size of their ferredoxin- and NADPH-dependent homologs and are characteristic of archaeal genomes, though are also found among diverse bacteria. Numbers following binomen indicate duplicate gene copies within a single genome. Alignments for all phylogenies were constructed with TCoffee and trees subsequently inferred and bootstrapped (500 replicates) using MEGA v3, using the Neighbor-Joining model and a pairwise deletion of gap-aligned sites. ic u
09 A0 CG ris ium st lu zob p a hi R. sor oti2 Me.melil S us ulat aps ns M.c iodura D.rad a D.aromatic B.fungorum R.me tall id u ra ns C.ace to b u tylicu C.hu m tchin s on Pir ii ellu l a C C.a sp S .te ggre y ne pidu gatu m ch m oc y B. j
ap on
G. su lfu r r ed G.m etall uc ir e duc ens ens 2 2 D.ace to xi da ns2 T.thermophil us HB27
2 68 03
st is
sto No
M.therm oa
Evolution of Biologic C & N CyclingȰGenomic Perspective 215
s m de oi cu er acti a t h o t e sp R. agn 1 m m ns M. ubru ida r tox H7 R. e c 57 D.a O1 li co eri 2a . Eexn S.fl S.typhi
p
C.violaceum M.degradans A.vine landii P.a er u gi n osa
216
Raymond
and the non-plastid (e.g., nuclear) component of plants and algae contains NADH-dependent GOGAT’s, suggesting a linear recruitment of cyanobacterial GOGAT by algae following plastid endosymbiosis. Archaea contain NADPH-dependent GOGAT enzymes, though highly truncated in structure and evidently not possessing the two-subunit heterodimeric structure endemic to bacterial GOGAT’s (Vanoni and Curti 1999). Temple et al. (1998) have suggested that this abridged gene may represent an ancestral, minimal form of the enzyme. Subsequently, Dincturk and Knaff (2000; Dincturk 2001) and Nesbo et al. (2001) noted patterns of homology suggesting one or multiple interdomain transfers between archaea and bacteria. The centrality of these enzymes in ammonia assimilation strongly suggests that the GS/GOGAT cycle—or an analogous pathway—was operational in the LCA, which leads to the conclusion that observed HGT’s were in fact orthologous replacements, whereby the acquisition of a more efficient pathway assumes the role of a preexisting one, which is eventually lost due to purifying selection. Biologically-utilizable nitrogen compounds are often in limited supply in natural systems, and a complex array of mechanisms for assimilating and recycling nitrogenous compounds are known. For instance, while ammonia represents the nucleus of the biological nitrogen cycle, most organisms have mechanisms for transporting nitrogenous compounds (particularly nitrogen-rich amino acids such as lysine and glutamine) across the membrane for assimilation, effectively bypassing potential dependence upon ammonia. Found exclusively among prokaryotes (more specifically, bacteria and methanogenic archaea) are a diverse group of so-called diazotrophs that are able to assimilate nitrogen from atmospheric N2 using a heterotetrameric enzyme known as nitrogenase. Using a high potential electron donor such as ferredoxin, the nitrogenase complex successively reduces atmospheric dinitrogen into two molecules of ammonia, with an optimal net reaction of: N2 + 8H+ + 8e− + 16 ATP o 2NH3 + H2 + 16 ADP + 16Pi The metabolic “cost” of dinitrogen reduction—16 ATP’s hydrolyzed—is unparalleled among biochemical reactions and may be two or more times as high under natural conditions. Active nitrogen fixation is thought to account for as much as 40% of the total ATP synthesized in diazotrophs (Daesch and Mortenson 1968). Therefore it is not surprising that nitrogenase is expressed in diazotrophs as a last-resort enzyme, when other more readily assimilated nitrogenous compounds are exhausted. It is worth noting that the net reduction of dinitrogen as shown is an exergonic reaction (dG° = −15.2 kJ/mol) and at least in theory could be used to generate energy (the high cost of running nitrogenase is thought to be involved with breaking the highly stable N–N triple bond) (Howard and Rees 1996). The evolutionary history of nitrogenase has been of considerable interest since sequences for its component proteins first became available. Though prebiotic sources of nitrogen might have been prevalent on the early earth as a result of planetary accretion and impact events, in particular NH3 would have been subject to ultraviolet photolysis and thereby progressively depleted (Kuhn and Atreya 1979; Raven and Yin 1998). The abiotic synthesis of nitrates and nitrites, an important source of fixed nitrogen generated by lightning strikes in the modern oxidized atmosphere, is thought to have been limited under an early neutral-to-mildly-reducing atmosphere, especially as Archean CO2 levels decreased (Navarro-Gonzalez et al. 2001). Navarro-Gonzales et al. argue that these conditions culminated in a nitrogen crisis during the Neoproterozoic or Archean, and that such conditions would have favored the development of the nitrogenase enzyme complex. It is feasible that alternative sources of nitrogen might have been abiotically synthesized under conditions hypothesized for the early Earth, such as cyanide if methane were present in quantities assumed by some models (Pavlov et al. 2000), and potentially offset or delayed the onset of this fixed nitrogen crisis. While such hypotheses are still in need of validation, some interesting correlations can be drawn from examination of the biological record. The evolutionary history of nitrogenase
Evolution of Biologic C & N CyclingȰGenomic Perspective
217
suggests that it likely evolved from a complex not directly involved in reduction of dinitrogen, and which may have had a broad specificity that may (or may not) have been associated with nitrogen assimilation (Silver and Postgate 1973; Burke et al. 1993; Fani et al. 2000; Raymond et al. 2004). For example, site-directed nitrogenase mutants as well as nitrogenase itself have been shown to have some competency for reducing cyanide, generating methane as well as ammonia, which could then serve as a nitrogen source (Kao et al. 2003; Pickett et al. 2004). This idea is intriguing given the hypothesis that Archean nitrogen reservoirs might have progressed from ammonia to cyanide and ultimately to dinitrogen, transitions quite possibly captured in the evolutionary history of nitrogenase and other nitrogen assimilating enzymes. The importance of ammonia to early organisms, arguments for an early Earth nitrogen crisis, and the solitary role of nitrogenase as a shunt into the atmospheric dinitrogen reservoir suggest that this enzyme might have been of critical importance to early life, especially as increasing numbers of organisms depleted the limited supply of bio-available nitrogen. The presence of the nitrogenase enzyme among diverse phyla of bacteria and in methanogenic archaea have led some authors to argue that nitrogenase was present in the last common ancestor (LCA) of extant organisms (Fani et al. 2000; Normand et al. 1992). While compelling based on the arguments above, the evolution of nitrogenase has been very complex and includes examples of: gene duplication resulting in numerous families of nitrogenase homologs; horizontal gene transfer within and between the bacterial and archaeal domains; and apparent loss of nitrogenase from many lineages. Raymond et al. (2004) recently proposed a scenario whereby nitrogenase was not present in the LCA, but was “invented” in methanogenic archaea and subsequently horizontally transferred into bacteria. While difficult to argue whether this late-origin proposal is more parsimonious than the LCA hypothesis, the former has an advantage in not invoking the perplexing disappearance of nitrogenase from many early branching lineages, such as eukaryotes, crenarchaeotes, and most phyla of early branching bacteria.
GEOLOGICAL CLUES TO THE EARLY NITROGEN CYCLE Phylogenetic and genomic analyses, the essential role of nitrogenous compounds in biochemistry, and the ubiquity of nitrogen-assimilating enzymes suggests that biological interactions with N2, NH3, and possibly other nitrogenous compounds such as cyanide began early in the evolution of life. Determining which of these pathways might be the most primitive or could have been dominant among early organisms remains considerably more ambiguous. The GS/GOGAT pathway, universally required for the synthesis of nitrogenous compounds by amine and amide transfers, appears to have been an early invention, possibly predating the LCA as it is found across all three domains of life. This system might have been sufficient to support the synthesis of nitrogenous compounds if ammonia was present in ample concentrations on the Archean Earth. However, arguments for an early nitrogen crisis (or, at the very least, as a limited supply of nitrogenous compounds became locked up in biomass) suggest a rapidly increasing necessity for alternative shunts for assimilating nitrogen from the environment, such as nitrogenase for reducing atmospheric dinitrogen to ammonia (Kasting and Siefert 2001). Though there remains debate as to whether nitrogenase was present in the LCA, it seems likely that the enzyme evolved during the Archean, prior to the evolution of cyanobacteria and the ensuing oxidation of the Earth’s atmosphere (Navarro-Gonzalez et al. 2001). Unfortunately the arguably diagnostic isotopic signatures in carbon fractionation that result from different modes of autotrophy have thus far been substantially less forthcoming for nitrogen isotopes. Nitrogenous compounds are typically very soluble and characterized by a short residence time in sediments and crustal rocks. Beaumont and Robert (Beaumont and Robert 1998, 1999) determined isotopic compositions of cherts ranging from 3.5 billion to 500 million years in age, noting a transition from mostly negative to all positive values
218
Raymond
occurring during the transition from the Archean to the Proterozoic. This concurs with the invention of oxygenic photosynthesis and the ensuing oxidation of Earth’s atmosphere, likely representing the increasing availability (due to abiotic fixation of nitrogen as well as O2dependent biological nitrification) of soluble oxidized nitrogen such as NO3−2. Importantly, though negative excursions during the Archean are consistent with assimilation of NH3 as well as the biological fixation of dinitrogen by nitrogenase, these signatures typically not regarded as diagnostic for either process.
BIOLOGICAL CARBON CYCLING AND AUTOTROPHY Autotrophy is typically defined as the autocatalytic, reductive conversion of CO2 into the low-molecular-weight building blocks of biosynthesis (e.g., Hugler et al. 2003), and by root derivation (self-nourishing) applies to organisms that derive energy for this reaction from light (photosynthesis) or inorganic compounds (chemotrophy). The following discussion gives a broad glimpse of the four known pathways used by autotrophs to assimilate CO2, focusing in brief on the unique or key enzymes of each pathway and discussing the current evolutionary understanding of these enzymes. The four pathways are summarized in Figure 3, and it must be emphasized that key steps in the 3-hydroxypropionate pathway are still being elucidated. Finally, the distribution of these pathways in the three domains is discussed, as is the possible relevance to the origin and early evolution of life. Though not covered in detail here, it is worthwhile to briefly detail and clarify some of the other carbon assimilatory pathways that have been elucidated. A remarkable diversity of organisms exist which can use various C1 compounds—organic or inorganic compounds containing, among other elements, only a single carbon atom—as sources of both energy and cell carbon. Methylotrophs are an evolutionary distinct class of organisms that can utilize C1 compounds in oxidation states ranging from formaldehyde to methanol to methane (including aminated, sulfurated, and halogenated methane). Methanotrophs are a subset of methylotrophs that specifically metabolize methane using either O2-dependent methane monooxygenases, as is found in recently sequenced Methylococcos capsulatus and other proteobacteria, or a recently elucidated anaerobic pathway found in domain Archaea that roughly appears to operate as methanogenesis in reverse (Hallam et al. 2004). C1 assimilation pathways are also known for numerous other compounds, such as formate, cyanide, and carbon monoxide, and organisms able to use CO as both sole carbon and energy source raise intriguing exceptions to the long-held “CO2-only” definition of autotrophy. Carbon fixation in methanotrophs, on the other hand, takes place through one of two non-autotrophic pathways, the serine or ribulose monophosphate/allulose pathways, by which formaldehyde (the common product of C1-utilization) is incorporated. Intriguingly, these two pathways also incorporate CO2, but are effectively mixotrophic because of their dependence on formaldehyde. However, some methanotrophs, such as M. capsulatus, also fix carbon via the Calvin cycle and thereby are true autotrophs. Yet another class of so-called anaplerotic pathways are important in both autotrophs and heterotrophs, and anaplerotic enzymes catalyze the direct incorporation of CO2 into organic compounds for the regeneration of essential intermediates of central metabolism. The familiar Krebs/TCA cycle, which carries out the energy-generating breakdown of pyruvate into three CO2 molecules, occupies a central position in metabolism as its products serve as biosynthetic precursors for an enormous repertoire of compounds, including amino acids, nucleotides, cofactors, and lipids. Anaplerotic enzymes allow the direct replenishment of Krebs/TCA cycle intermediates, effectively “recapturing” CO2 that is lost by running the cycle. The very presence of these anaplerotic shunts gives some insight into how CO2-fixing pathways might
Evolution of Biologic C & N CyclingȰGenomic Perspective
219
Figure 3. Four known pathways for autotrophic carbon fixation. Enzymes are in boxes, denoting in particular those that are discussed in the text. The 3-hydroxypropionate cycle schema adapted from (Herter et al. 2002).
have evolved. Indeed, there are over distinct 400 reactions—almost 5% of the total—annotated in the KEGG database that directly consume or produce CO2, arguing that biological interactions with CO2 have been of foremost importance in the evolution of life.
WOOD-LJUNGDAHL (REDUCTIVE ACETYL-COA) PATHWAY In recent years, considerable progress has been made in enzymatic and mechanistic understanding of the Wood-Ljungdahl or reductive acetyl-CoA pathway. This progress has come particularly in the way of crystal structures for two key enzymes in the pathway. The Wood-Ljungdahl pathway and enzymes involved are of particular interest to evolutionary biologists, bearing many hallmarks that suggest an ancient origin and an important role among primitive autotrophs. For instance, the stepwise condensation of C1 units to form C2 and C3 compounds such as acetate and pyruvate, respectively, represents schematically the simplest form of autotrophy. Furthermore, the enzymes catalyzing each step bear arguably “primitive” characteristics—unique metal clusters and a corresponding sensitivity to molecular oxygen, as well as a distribution among many early-branching lineages on the tree of life. Note that the
220
Raymond
pathway is not cyclic/autocatalytic, though the Wood-Ljungdahl pathway has the distinction among all known autotrophic pathways in being net exergonic, according to: 2CO2 + 4H2 + n ADP + nPi o CH3COOH + 2H2O + n ATP with an overall change in free energy of dG° = −95 kJ/mol (Muller 2003). This pathway is unique among known autotrophic assimilation pathways in allowing fixation concomitant with generation of ATP. Importantly, this dual role of energy generation and carbon fixation is not universal among microorganisms, many of which have components of the Wood-Ljungdahl pathway but are not autotrophs. Whereas methanogens, acetogens, and aerobic carboxydotrophs depend upon the pathway for chemoautotrophy and subsequent biosynthesis (and thereby actively take up CO2 from the environment), many non-autotrophic anaerobic fermenters utilize this pathway to further reduce CO2 generated from pyruvate decarboxylation to CO (Ragsdale 2004). The key enzyme for the reduction of CO2 to CO is carbon monoxide dehydrogenase (CODH), which catalyzes this reversible reaction using a variety of electron donors. The enzyme is one of a handful of enzymes that requires elemental nickel, though an oxygen-tolerant CODH that apparently utilizes molybdenum rather than nickel has been characterized from carboxydotrophs (Meyer et al. 1990). The other key enzyme in this pathway, acetyl-CoA synthase (ACS), has also been shown to contain two nickel atoms complexed to an ironsulfur cluster (despite their common nickel-containing metal clusters, ACS and CODH are not thought to be homologous) (Hegg 2004). In autotrophs, the ACS enzyme forms a bifunctional complex with CODH, where CO generated by CO2 reduction is passed through a protein “channel” from CODH to ACS, then combined with methane and coenzyme A (CoA) to form acetyl-CoA (Hegg 2004; Ragsdale 2004). Figure 4 shows the CODH phylogeny, inferred from sequences of completely sequenced genomes. As can be observed, gene duplication has been extensive, and there is a lack of overall taxonomic cohesion, as in the paraphyly of methanogens. Bootstrap support and conserved sequence signatures suggest that the phylogeny is robust overall, and that horizontal gene transfer is a good explanation for some of the topology. A number of more distant CODH homologs are excluded from this tree. These include the hydroxylamine reductase/hybrid cluster protein—to which CODH is still closely related enough to be “converted” into by sitedirected mutagenesis (Heo et al. 2002)—along with very distantly related CODH homologs from other bacteria and archaea that may carry out unrelated functions.
THE rTCA CYCLE With the exception of aerobic carboxydotrophs briefly mentioned above, both the WoodLjungdahl pathway and reverse or reductive tricarboxylic acid (rTCA) cycle are typically the realm of anaerobic or microaerobic autotrophs, thanks in part to O2-sensitivity of many of their key enzymes. The rTCA cycle, as its name implies, is the conceptual “reverse” of the familiar TCA (also Krebs or citric acid) cycle which, rather than oxidizing acetate (to two molecules of CO2) concomitant with the production of reducing equivalents, uses reducing equivalents to fix CO2 ultimately to acetyl-CoA. The net production of acetyl-CoA is also found in the WoodLjungdahl pathway, though the rTCA cycle differs in being endergonic and cyclic/network autocatalytic (cycle intermediates can serve as templates for their own synthesis and—as “carriers” of assimilated carbon—are not consumed as the cycle propagates). Three key enzymes of the rTCA cycle distinguish it from the archetype Krebs cycle: fumarate reductase, ATP citrate lyase, and 2-oxoglutarate:ferredoxin oxidoreductase. 2-oxoglutarate:ferredoxin oxidoreductase catalyzes the carboxylation of succinyl-CoA, forming 2-oxoglutarate. ATP
Evolution of Biologic C & N CyclingȰGenomic Perspective 99 100 71 50
65 99
100 71 99 100 100 100 100 86 100
100 93 100 70
221
D.hafniense2 R.rubrum H.mobilis2 M.thermoacetica1 D.hafniense1 A.vinelandii G.sulfurreducens pca D.desulfuricans D.vulgaris M.barkeri2 M.acetivorans2 M.mazei2 M.thermoacetica2 C.thermocellum G.metallireducens M.jannaschii M.kandleri C.acetobutylicum1 H.mobilis1 C.acetobutylicum2 100 D.hafniense3 a. fulgidus dsm4304 M.barkeri1 M.acetivorans1 100 M.mazei1 91
0.1
Figure 4. CODH protein phylogeny, constructed as described in the legend for Figure 2. Numbers indicate duplicate CODH copies in a single genome. Many organisms in fact have two or more CODH paralogs, and the interspersed bacterial-archaeal phyla indicate a highly nonvertical evolution likely beset by horizontal gene transfer. Methods as given in Figure 2.
citrate lyase catalyzes the citrate “cleavage” that closes the cycle, forming oxaloacetate and acetyl-CoA. 2-oxoglutarate:ferredoxin oxidoreductase is a member of the diverse thimine diphosphate-dependent 2-oxoacid oxidoreductases and, along with its homolog pyruvate: ferredoxin oxidoreductase (PFOR), is able to “reverse” the oxidative decarboxylations carried out by unrelated dehydrogenases of the Krebs cycle, incorporating CO2 into biomolecules. The evolutionary history of PFOR, key in synthesizing pyruvate from acetyl-CoA in WoodLjungdahl as well as rTCA autotrophs, is shown in Figure 5. The phylogeny is congruent in many respects with the 16S rRNA-based tree of life, but the enzymes are clearly overrepresented in organisms that have an obligately or facultatively anaerobic lifestyle (with notable exceptions to both of the previous points). As with the Wood-Ljungdahl pathway, the rTCA cycle is also found among diverse prokaryotes, many of which are early-branching lineages on the tree of life. The pathway was first described from the obligately anaerobic, non-oxygen producing phototroph Chlorobium tepidum, where the electrons generated during photosynthesis eventually enter into the rTCA cycle for carbon fixation (Evans et al. 1966). So-called Knallgas bacteria (metabolizing via 2H2 + O2 o 2H2O), such as members of phylum Aquificales, are microaerophiles that use the rTCA cycle. The pathway is also found in autotrophic Crenarchaeota, sulfate-reducing bacteria, and in some chemolithotrophic epsilon Proteobacteria (Shiba et al. 1985; Schafer et al. 1986; Schauder et al. 1987; Hugler et al. 2005). Remarkably, several of the key enzymes from the rTCA cycle are found among a broad range of aerobic heterotrophs. Citrate lyase, for example, has homologs in humans and other vertebrates that function in fatty acid metabolism
222
Raymond
A.variabilis|1964 Nostoc sp|2284 C.watsonii|1367 100 Synechocystis 6803|2805 99 75 A.variabilis|4948 Nostoc sp|3176 100 87 S.elongatus|858 C.aggregatum|1493 36 C.tepidum tls|1594 100 100 D.acetoxidans|1527 D.acetoxidans|5881 74 G.metallireducens|1832 100 G.sulfurreducens pca|97 100 D.aromatica|1842 97 R.rubrum|2304 60 C.aurantiacus|1199 68 M.capsulatus|13637 91 S.typhi|1244 100 E.coli O157H7|2086 100 100 S.flexneri 2a|1720 L.lactis|422 100 D.desulfuricans|1201 90 D.vulgaris hildenborough|2993 90 M.thermoacetica|732 C.jejuni|1392 95 H.mobilis|1691 76 100 C.perfringens|2124 88 C.acetobutylicum|2199 D.hafniense|204 38 C.acetobutylicum|2466 97 C.thermocellum|1873 100 D.hafniense|2349 54 100 S.solfataricus|1088 46 S.tokodaii|1662 S.tokodaii|1937 74 S.solfataricus|2501 100 A.fulgidus dsm4304|2021 M.thermoacetica|326 65 C.thermocellum|2458 * M.thermoacetica|2093 49 100 T.acidophilum|618 T.volcanium|849 24 100 M.barkeri|2496 100 M.mazei|1340 100 M.acetivorans|32 24 60 M.burtonii|1125 A.fulgidus dsm4304|1678 M.thermoautotrophicum|1700 35 M.kandleri|82 45 99 M.jannaschii|271 48 M.maripaludis|1505 P.furiosus|966 61 P.abyssi|1344 100 P.horikoshii|710 99 100
73
Cyanobacteria
Green sulfur bacteria
Proteobacteria/ ChloroÀexus
Gram-positive (Clostridia/Bacilli)
Crenarchaeotes *
Euryarchaeotes
0.1
Figure 5. Pyruvate:ferredoxin oxidoreductase (PFOR) protein phylogeny. As discussed in the text, PFOR is a decarboxylating enzyme found in both heterotrophs and autotrophs and functions reversibly as a key carboxylating enzyme in the rTCA and Wood-Ljungdahl pathways. There is a clear stratification of bacteria (top clade) and archaea (bottom clade), with distributions loosely consistent with phylum-level taxonomy (shown in boxes; asterisks indicate notable deviations). Methods as given in Figure 2.
Evolution of Biologic C & N CyclingȰGenomic Perspective
223
and biosynthesis (Wahlund and Tabita 1997). Thus detection of the rTCA cycle as a suspected autotrophic pathway in new organisms must be based on multiple factors—phenotype and the presence of all key genes—rather than the presence of any single diagnostic gene. The rTCA cycle has been argued by some authors to have been a pivotal pathway not only in the evolution of life but in the origin of metabolism. The pathway occupies a unique position at the hub of most metabolic networks, with metabolites used as precursors in biosynthesis of all major classes of biochemical compounds. Several of the enzymatic steps have plausible prebiotic analogs, most notably discussed by Wächtershäuser in his hypothesis for primitive sulfur-linked “thioanalogs” of modern rTCA cycle intermediates (Wächtershäuser 1990). This had the argued advantage of overcoming the unfavorable kinetics of several reactions, e.g., beta-carboxylations, of the rTCA cycle as well as inevitably linking this early metabolism with a sulfur/pyrite-rich interface. Thermodynamically unfavorable reactions could thereby be coupled to pyrite oxidation, much as coupling to ATP hydrolysis provides the basis for difficult modern biochemical reactions (Bebie and Cody 2000). These arguments have also been carried forth by Smith and Morowitz (2004), who argue that such a network-autocatalytic (self-replicating), redox-intermediate cycle is exactly what natural selection might be expected to produce. However, in the absence of catalysis, detractors point out that several critical steps in the pathway are simply not expected as favored outcomes (Orgel 2000). Because many of these arguments focus on pre-LCA metabolism, they are simply beyond the resolution of comparative genomics and phylogenetics. While the centrality of the rTCA cycle in metabolic charts is striking, it could just as likely represent a favorable but relatively recent reorganization of pre-existing metabolic pathways.
THE CALVIN-BENSON-BASSHAM CYCLE The Calvin-Benson-Bassham (CBB) cycle represents the best known of the autotrophic pathways, most notably because it is the only one present in eukaryotes, making it amenable to now-infamous large scale preparations from e.g., spinach for biochemical and biophysical studies. The key enzyme of the pathway, ribulose-1,5-bisphosphate carboxylase/oxygenase (RuBisCO), is the key enzyme of the cycle. The enzyme itself falls somewhere between evolutionary enigma and embarrassment, having a turnover rate of only a few carboxylation reactions per second and also carrying an intrinsic, energetically wasteful proclivity for using molecular oxygen, rather than carbon dioxide, as a substrate. Photoautotrophs, plants in particular, attempt to compensate for RuBisCO’s inefficiencies by overexpressing the enzyme, and as a result RuBisCO is by far the most abundant protein in perhaps the largest biomass group on the planet, making it arguably the most abundant enzyme on Earth. The CBB cycle is in essence split into three separate phases. The first stage, carboxylation or carbon fixation, takes place by the RuBisCO-catalyzed addition of CO2 to ribulose bisphosphate, a C5 sugar that is synthesized from ribose-1,5-bisphosphate by the other key/ unique enzyme of the Calvin cycle, phosphoribulokinase (PRK). The carboxylation step is exergonic and essentially irreversible, though the overall cycle is net endergonic. The resultant C6 sugar is subsequently cleaved to two C3 3-phosphoglycerates, which are converted to glyceraldehydes 3-phosphates (G3P)—a highly utilized carbon “currency” in many cells— during the so-called reductive phase of the CBB cycle. The reductive phase requires a net input of ATP and NADPH. Because a 3C compound is output, the Cycle must turn three times per G3P generated, so that cycle intermediates are not depleted. The regeneration phase of the cycle then incorporates a number of ATP-dependent aldolase and isomerase steps to regenerate the 5C precursor to RuBisCO carboxylation. The competing oxygenase activity of RuBisCO results in a process termed photorespiration, whereby O2 rather than CO2 combines with ribulose-1,5-bisphosphate, yielding one molecule
224
Raymond
of 3-phosphoglycerate and another of 2-phosphoglycolate. This latter compound must be salvaged—reconverted into usable 3-phosphoglycerate in a series of reactions that require both ATP and NADH. As this salvage pathway does not result in fixed carbon and requires energy and reducing equivalents to amend, photorespiration may reduce the efficiency of the Calvin cycle by as much as 50%. To counter the effects of photorespiration, a suite of novel carbon concentrating mechanisms (CCM’s) have evolved to ramp up the ratio of CO2 to O2 inside cells and chloroplasts (e.g., Badger et al. 2002), responsible for, among other adaptations, the carboxysome that is among the largest known enzyme aggregates. Notably, some recent evidence suggests that photorespiration may in fact be important in higher plants as an energy sink or source of metabolites (Wingler et al. 2000). The evolutionary history and diversity of the Calvin cycle has been studied in great detail, as evidenced by the enormous repository of RuBisCO gene sequences (~25,000) available in GenBank. A disproportionately large number of these sequences are from eukaryotes, so the focus here is constrained to the more diverse RuBisCO (large subunit) sequences available from completed prokaryotic genomes. As illustrated in Figure 6, several distinct clades are evident in the phylogenetic tree, and importantly some of these represent proteins not known to function within the Calvin cycle, as evident based on active site substitutions, absence of PRK, and experimental verification. True RuBisCO’s fall into two groups, so-called form I and form II (with subgroups within each) that highlighted on the tree. Form III and IV homologs of RuBisCO, the so-called RuBisCO-like-proteins (RLP’s), have become a recent focus of several investigations. A suite of recent experiments by Tabita and colleages has illustrated quite compellingly that the form III RuBisCO homologs are able to fix atmospheric CO2, using a functional analog of PRK to generate a substrate for the enzyme (Finn and Tabita 2004). While it is not evident that these methanogens use this alternative pathway (most are Wood-Ljungdahl autotrophs) as a primary mode of carbon fixation (Sprott et al. 1993), this may serve an important anaplerotic role and provides an exciting window into RuBisCO evolution and possible engineering. Conversely, the distantly-related form IV RuBisCO homologs, found in a diverse range of organisms including several anoxygenic phototrophs (Ashida et al. 2003), is argued to be involved with methionine salvage pathways and is not able to fix CO2. Importantly, with the exception of RuBisCO and PRK, all of the enzymes used in the Calvin cycle are found in functions known from other pathways. At least schematically, the Calvin cycle bears tantalizing similarities with the aforementioned ribulose monophosphate (RuMP) pathway found in many methanotrophs, functioning to incorporate C1 units in the form of formate rather than CO2 (analogously driving C1 + C5 o C6 fixation in the process). Thus it can be argued that most of the enzymes of the Calvin cycle were already present in the ancestors of the first Calvin cycle autotrophs, and that “invention” of RuBisCO and PRK, combined with recruitment of enzymes from the RuMP pathway, could have resulted in a new, O2-tolerant form of autotrophy. The timing of the appearance of the Calvin cycle appears to have been closely linked to the development of bacterial aerobic respiration and photosynthesis, events that were both tied to the progressive and irreversible oxidation of Earth’s atmosphere. As the rTCA cycle and Wood-Ljungdahl pathways are both inhibited at high oxygen concentrations, it seems reasonable that RuBisCO came about in response to the challenge of an atmosphere that was increasingly oxic and with decreasing CO2 availability. The taxonomically-diverse RLP’s, recently discovered to be involved with methionine salvage, present a plausible ancestral pathway from which RuBisCO was recruited and came to function as a carboxylase, and structure-function analyses are presently providing a testbed for this hypothesis (Ashida et al. 2005). The unique dual oxygenase/carboxylase role of the enzyme would have been much less of a disadvantage as the Precambrian CO2:O2 ratio was still high, and feasibly could have served a useful additional role in ameliorating high levels of oxygen.
Evolution of Biologic C & N CyclingȰGenomic Perspective
225
C.watsonii Synechocystis 6803 T.erythraeum 46 N.punctiforme Form IA 35 100 A.variabilis (cyanobacteria) N.ostoc sp 100 83 G.violaceus 100 T.elongatus S.elongatus 100 R.metallidurans 92 100 N.europaea Form IB M.capsulatus (ȕ,Ȗ-proteobacteria, Synechococcus WH8102 99 marine cyanos) 100 P.marinus MED4 100 100 P.marinus CCMP1375 58 P.marinus MIT9313 B.fungorum Form II R.sphaeroides 100 100 (Į,ȕ-proteobacteria) S.meliloti B.japonicum 36 R.palustris CGA009 100 97 P.abyssi 100 P.horikoshii P.furiosus A.fulgidus dsm4304 Form III M.jannaschii (Archaea: M.acetivorans euryarchaeotes) M.barkeri 100 M.mazei 95 M.burtonii Form IV (b) M.magnetotacticum (Bacteria, D.aromatica 100 Archaea) R.rubrum 92 C.tepidum tls 100 C.aggregatum B.bronchiseptica Form IV (a) H.mobilis (Bacteria) Exiguobacterium B.subtilis 100 B.anthracis Ames 0581 99 100 B.cereus ATCC14579 100
65
61
49 100 89 42
100
40
53
0.1
Figure 6. RuBisCO large subunit phylogeny, showing the four different clades or Forms of RuBisCO that have been established in previous evolutionary studies. As discussed in the text, Forms I and II are key enzymes in Calvin-Benson-Bassham cycles, whereas Forms III and IV are RuBisCO-like proteins, recently shown to function in alternative carbon fixation or methionine salvage pathways, respectively. Methods as given in Figure 2.
3-HYDROXYPROPIONATE CYCLE This pathway was first discovered only fairly recently in the filamentous anoxygenic phototroph Chloroflexus aurantiacus, of evolutionary interest because of its early-branching position on the tree of life. In fact many of the steps in this unique pathway are only now being fully resolved, particularly by the investigations of Fuchs and colleagues (Herter et al. 2002). However, it has also recently become clear that the cycle is more widespread than previously thought, apparently functioning in many aerobic autotrophic crenarchaeota (Hugler
226
Raymond
et al. 2003). Schematically, the pathway as presently elucidated incorporates a combination of novel reactions with enzymatic steps recruited from other metabolic pathways, including the rTCA cycle and propionyl-CoA pathway which carries out odd-chain fatty acid oxidation. Carbon fixation ultimately leading to pyruvate actually comprises a bicyclic pathway; in the first cycle, two carboxylations take place to give rise to a glyoxylate intermediate, which then condenses with an intermediate product from the first half of the first cycle (which accounts for the third carbon) (Herter et al. 2002). Several rearrangements, schematically similar to a reversed glyoxylate cycle but technically like a reversed citramalate pathway, eventually give rise to the cleaved pyruvate end-product. Though this remarkable pathway has now been solved in considerable detail, its evolution still remains enigmatic. Somewhat perplexing is that, despite its discovery in type strain C. aurantiacus, some close relatives of this organism (within phylum Chloroflexi) apparently do not have a 3-hydroxypropionate cycle, instead apparently having a functioning CBB cycle (Ivanovsky et al. 1999). Furthermore, many of these organisms are content to grow (photo)heterotrophically and are often found in microbial mats with abundant biomass to facilitate such a lifestyle. As shown in Figure 7, this pathway is found only in a few different groups of aerobic prokaryotes, suggesting that it, as with the Calvin cycle, might have arisen as an ad hoc autotrophic solution to the oxidation of Earth’s atmosphere, bypassing the oxygen-sensitive enzymes that catalyze critical roles in the rTCA cycle and Wood-Ljungdahl pathway. This speculation has some support from genomic data as it appears that, while homologs to several of the key enzymes that C. aurantiacus uses are present in crenarchaeotes, some enzymatic steps may be different in different crenarchaeota, suggesting evolutionary convergence or some plasticity in pathway operation (Menendez et al. 1999). The relatively recent discovery of this cycle and the apparently diverse means by which organisms carry it out suggest that there are pathways for autotrophic carbon fixation that have yet to be discovered, and resolving these as well as known pathways will no doubt shed additional light on the origin and evolution of microbial-environmental interactions.
AUTOTROPHY, HETEROTROPHY, AND THE ORIGIN OF METABOLISM For several decades, origin of life research focused on establishing a diverse synthetic library of prebiotic compounds upon which early life might have been built. A so-called heterotrophic origin assumes that a relatively complex milieu of chemical compounds would have been present on the early earth, supplied exogenously (e.g., during cometary accretion) or through abiotic reactions involving prevalent inorganic precursors such as N2, CO2, and H2 (and typically involving a mineral catalyst and/or an energy source such as lightning to overcome energetic barriers). Plausible synthetic sources for many essential ingredients of prokaryotic cells have been illustrated, and it is thought that as early cells became more complex, enzymatic routes of synthesis eventually replaced their prebiotic counterparts as their prebiotic precursors became increasingly scarce. While impressively successful in the breadth of biologically-relevant metabolites that have been obtained, heterotrophic theories have not been without criticism. Opponents cite that reaction conditions often invoke conditions that are quite different than geochemical evidence suggests might have been available on the early Earth, as well as the fact that it is difficult to imagine a single environment where all of the necessary catalysts and conditions would allow precursors to accumulate. Thus about two decades ago, autotrophic origin of life theories proposed that prebiotic reactions might have involved only inorganic precursors, catalyzed for example on mineral surfaces or within FeS “membranes” (Russell et al. 1988; Wächtershäuser 1988). Such schemes arguably allow for locally high concentrations of metabolites to accumulate and invoke a comparably simple set
Figure 7. Distribution of autotrophs on the tree of life, based on the established carbon fixation pathways discussed in the text, signature genes present in completed genomes, and experimental detection of pathways as inferred from current literature. squares=reductive TCA cycle, circles=Calvin-Benson-Bassham cycle, triangles=Wood-Ljungdahl pathway, diamonds=3-hydroxypropionate cycle. Gradient-filled shapes indicate pathways that are found in some, but not all, members of a particular clade. For example, members of the gamma proteobacteria, which includes A. vinelandii and P. aeruginosa, are known to use the Calvin cycle, though neither of these two organisms specifically is an autotroph.
Evolution of Biologic C & N CyclingȰGenomic Perspective 227
228
Raymond
of necessary catalysts and precursors, for example envisaging environments not unlike modern hydrothermal systems. Experimental corroboration of the metabolic world attainable by autotrophic prebiotic pathways is providing support, but a number of important gaps remain to be filled (see e.g., Cody 2004). Both schools of thought at least broadly agree that the individual abiotic steps within an increasingly complex metabolic network were progressively assumed by enzyme (or ribozyme) catalysts. Of relevance to this discussion, if the autotrophic theory were true, the simplest—though by no means the most likely—assumption would be that primitive carbon and nitrogen cycles were functioning in the earliest organisms so as to directly assimilate N2 and CO2. Certainly enzymes such as nitrogenase and carbon monoxide dehydrogenase have been noted for their unique metal cluster complement (Rees and Howard 2003), which poses the intriguing idea (though without much support) that these metal clusters represent the stillfunctional remnants of prebiotic mineral catalysts that carried out analogous reactions. While these putative glimpses of prebiotic chemistry through modern enzymology are tantalizing, it seems just as likely that many generations of overprinting have occurred; distinct and unrelated enzymes have evolved to carry out these ancient reactions more efficiently than their predecessors. The rTCA cycle and the Wood-Ljungdahl pathway both bear hallmarks of a primitive autotrophy, as compellingly argued by a number of authors (Wächtershäuser 1990; Morowitz 1999; Cody 2004; Smith and Morowitz 2004). As Figure 7 illustrates, both pathways operate in a number of deeply-branching anaerobes, whereas the CBB and 3hydroxypropionate cycles are found in clades closer to the “tips” of the tree of life, suggesting more recent origins. Furthermore, the rTCA and W-L pathways contain enzymes with diverse metal clusters that show sensitivity to molecular oxygen, and concomitantly are found predominantly in anaerobes and microaerobes. Each pathway also boasts specific attractive features such as being network autocatalytic (rTCA), net exergonic (W-L), centrally connected to diverse biosynthetic pathways (rTCA), and catalyzing reactions between arguably “primitive” metabolites (W-L). Importantly however, their sporadic though widespread distribution on the tree of life prevents either of these pathways from being definitively argued to have been present in the last common ancestor, and the possibility remains open that they originated as specific, convergent CO2-fixing adaptations in early Earth niches—still ancient, but far removed from the de facto origin of life. Contrarily, several lines of reasoning suggest that the Calvin-Bensen-Bassham cycle represents the youngest autotrophic pathway. This is especially remarkable as the pathway is the dominant mechanism for autotrophic carbon fixation on the modern Earth, primarily as a result of the cyanobacterial endosymbiosis that gave rise to plastids and chloroplasts in modern algae and plants. Based on phylogenetic analysis of RuBisCO and its diverse homologs not involved in the Calvin-Benson-Bassham cycle, the CBB cycle appears likely to have originated during the anoxic-oxic transition, in close conjunction with the invention of oxygenic photosynthesis and O2-based respiration. This new autotrophy permitted a new legion of aerobic autotrophs the ability to fix carbon while using O2 as a high potential terminal electron acceptor and was tightly linked to both photosynthesis and respiration, allowing CO2 fixation to occur within a much more favorable energetic milieu than anaerobic habitats previously afforded. In the 2-2.5 billion years that have ensued since the appearance of the Calvin cycle, it is perhaps surprising that autotrophy has maintained any predominance, especially as heterotrophy—the ability to degrade and recycle organic biomass—has assumed hegemony in many families of microorganisms and most higher eukaryotes. However, as our understanding of global carbon cycling improves, it seems clear that the role of autotrophs has anything but diminished.
Evolution of Biologic C & N CyclingȰGenomic Perspective
229
REFERENCES Ashida H, Danchin A, Yokota A (2005) Was photosynthetic RuBisCO recruited by acquisitive evolution from RuBisCO-like proteins involved in sulfur metabolism? Res Microbiol 156(5-6):611-618 Ashida H, Saito Y, Kojima C, Kobayashi K, Ogasawara N, Yokota A (2003) A functional link between RuBisCO-like protein of Bacillus and photosynthetic RuBisCO. Science 302(5643):286-290 Badger MR, Hanson D, Price GD (2002) Evolution and diversity of CO2 concentrating mechanisms in cyanobacteria. Funct Plant Biol 29(2-3):161-173 Beaumont V, Robert F (1998) Nitrogen isotopic composition of organic matter from Precambrian cherts: new keys for nitrogen cycle evolution? B Soc Geol Fr 169(2):211-220 Beaumont V, Robert F (1999) Nitrogen isotope ratios of kerogens in Precambrian cherts: a record of the evolution of atmosphere chemistry? Precambrian Res 96(1-2):63-82 Bebie J, Cody G (2000) Pyruvic acid condensation chemistry on transition-metal sulfide surfaces. Abstr Pap Am Chem S 219:U697-U697 Bork P (2000) Powers and pitfalls in sequence analysis: the 70% hurdle. Genome Res 10:398-400 Brown JR, Masuchi Y, Robb FT, Doolittle WF (1994) Evolutionary relationships of bacterial and archaeal glutamine synthetase genes. J Mol Evol 38(6):566-76 Burke DH, Hearst JE, Sidow A (1993) Early evolution of photosynthesis: clues from nitrogenase and chlorophyll iron proteins. Proc Natl Acad Sci 90(15):7134-8 Cody GD (2004) Transition metal sulfides and the origins of metabolism. Annu Rev Earth Pl Sc 32:569-599 Deppenmeier U, Johann A, et al. (2002) The genome of Methanosarcina mazei: evidence for lateral gene transfer between bacteria and archaea. J Mol Microbiol Biotechnol 4(4):453-61 DesMarais DJ (1997) Long-term evolution of the biogeochemical carbon cycle. Rev Mineral 35:429-448 Dincturk HB (2001) Glutamate synthase: An archaeal horizontal gene transfer? J Biosciences 26(1):13-14 Dincturk HB, Knaff DB (2000) The evolution of glutamate synthase. Mol Biol Rep 27(3):141-148 Evans MC, Buchanan BB, Arnon DI (1966) A new ferredoxin-dependent carbon reduction cycle in a photosynthetic bacterium. Proc Natl Acad Sci USA 55(4):928-34 Falkowski P, Scholes RJ, et al. (2000) The global carbon cycle: a test of our knowledge of Earth as a system. Science 290(5490):291-6 Fani R, Gallo R, Lio P (2000) Molecular evolution of nitrogen fixation: the evolutionary history of the nifD, nifK, nifE, and nifN genes. J Mol Evol 51(1):1-11 Finn MW, Tabita FR (2004) Modified pathway to synthesize ribulose 1,5-bisphosphate in methanogenic archaea. J Bacteriol 186(19):6360-6366 Hallam SJ, Putnam N, Preston CM, Detter JC, Rokhsar D, Richardson PM, DeLong EF (2004) Reverse methanogenesis: testing the hypothesis with environmental genomics. Science 305(5689):1457-62 Hayes JM (1994) Global methanotrophy at the Archean-Proterozoic transition. In: Early life on Earth. Bengtson S (ed), New York, Columbia University Press, p 220-236 Hegg EL (2004) Unraveling the structure and mechanism of acetyl-coenzyme A synthase. Accounts Chem Res 37(10):775-783 Heo J, Wolfe MT, Staples CR, Ludden PW (2002) Converting the NiFeS carbon monoxide dehydrogenase to a hydrogenase and a hydroxylamine reductase. J Bacteriol 184(21):5894-5897 Herter S, Fuchs G, Bacher A, Eisenreich W (2002) A bicyclic autotrophic CO2 fixation pathway in Chloroflexus aurantiacus. J Biol Chem 277(23):20277-83 Howard JB, Rees DC (1996) Structural basis of biological nitrogen fixation. Chem Rev 96(7):2965-2982 Hugler M, Huber H, Stetter KO, Fuchs G (2003) Autotrophic CO2 fixation pathways in archaea (Crenarchaeota). Arch Microbiol 179(3):160-73 Hugler M, Wirsen CO, Fuchs G, Taylor CD, Sievert SM (2005) Evidence for autotrophic CO2 fixation via the reductive tricarboxylic acid cycle by members of the epsilon subdivision of proteobacteria. J Bacteriol 187(9):3020-7 Ivanovsky RN, Fal YI, et al. (1999) Evidence for the presence of the reductive pentose phosphate cycle in a filamentous anoxygenic photosynthetic bacterium, Oscillochloris trichoides strain DG-6. Microbiol-Sgm 145:1743-1748 Kao CM, Liu JK, Lou HR, Lin CS, Chen SC (2003) Biotransformation of cyanide to methane and ammonia by Klebsiella oxytoca. Chemosphere 50(8):1055-61 Kasting JF, Siefert JL (2001) Biogeochemistry. The nitrogen fix. Nature 412(6842):26-7 Kuhn WR, Atreya SK (1979) Solar radiation incident on the Martian surface. J Mol Evol 14(1-3):57-64 Lowe DR, Tice MM (2004) Geologic evidence for Archean atmospheric and climatic evolution: Fluctuating levels of CO2, CH4, and O2 with an overriding tectonic control. Geology 32(6):493-6 Menendez C, Bauer Z, Huber H, Gad’on N, Stetter KO, Fuchs G (1999) Presence of acetyl coenzyme A (CoA) carboxylase and propionyl-CoA carboxylase in autotrophic Crenarchaeota and indication for operation of a 3-hydroxypropionate cycle in autotrophic carbon fixation. J Bacteriol 181(4):1088-1098
230
Raymond
Meyer O, Frunzke K, Gadkari D, Jacobitz S, Hugendieck I, Kraut M (1990) Utilization of carbon-monoxide by aerobes - recent advances. FEMS Microbiol Rev 87(3-4):253-260 Morowitz H (1999) A theory of biochemical organization, metabolic pathways, and evolution. Complexity 4(6):39-53 Muller V (2003) Energy conservation in acetogenic bacteria. Appl Environ Microbiol 69(11):6345-53 Navarro-Gonzalez R, McKay CP, Mvondo DN (2001) A possible nitrogen crisis for Archaean life due to reduced nitrogen fixation by lightning. Nature 412(6842):61-4 Nesbo CL, L’Haridon S, Stetter KO, Doolittle WF (2001) Phylogenetic analyses of two “archaeal” genes in thermotoga maritima reveal multiple transfers between archaea and bacteria. Mol Biol Evol 18(3):36275 Normand P, Gouy M, Cournoyer B, Simonet P (1992) Nucleotide sequence of nifD from Frankia alni strain ArI3: phylogenetic inferences. Mol Biol Evol 9(3):495-506 Orgel LE (2000) Self-organizing biochemical cycles. Proc Natl Acad Sci U S A 97(23):12503-12507 Pavlov AA, Kasting JF, Brown LL, Rages KA, Freedman R (2000) Greenhouse warming by CH4 in the atmosphere of early Earth. J Geophys Res 105(E5):11981-90 Pesole G, Bozzetti MP, Lanave C, Preparata G, Saccone C (1991) Glutamine synthetase gene evolution: a good molecular clock. Proc Natl Acad Sci U S A 88(2):522-6 Pesole G, Gissi C, Lanave C, Saccone C (1995) Glutamine synthetase gene evolution in bacteria. Mol Biol Evol 12(2):189-97 Pickett CJ, Vincent KA, Ibrahim SK, Gormal CA, Smith BE, Fairhurst SA, Best SP (2004) Synergic binding of carbon monoxide and cyanide to the FeMo cofactor of nitrogenase: relic chemistry of an ancient enzyme? Chemistry 10(19):4770-6 Ragsdale SW (2004) Life with carbon monoxide. Crit Rev Biochem Mol Biol 39(3):165-95 Ram R, VerBerkmoes N, Thelen MP, Tyson GW, Baker BJ, Blake RC, Shah M, Hettich R, Banfield JF (2005) Community proteomics of a natural microbial biofilms. Science 308(5730):1915-20 Raven JA, Yin Z-H (1998) The past, present and future of nitrogenous compounds in the atmosphere, and their interactions with plants. New Phytology 139:205-219 Raymond J, Siefert JL, Staples CR, Blankenship RE (2004) The natural history of nitrogen fixation. Mol Biol Evol 21(3):541-54 Rees DC, Howard JB (2003) The interface between the biological and inorganic worlds: iron-sulfur metalloclusters. Science 300(5621):929-31 Russell MJ, Hall AJ, Cairnssmith AG, Braterman PS (1988) Submarine hot springs and the origin of life. Nature 336(6195):117-117 Rye R, Kuo PH, Holland HD (1995) Atmospheric carbon dioxide concentrations before 2.2. billion years ago. Nature 378:603-5 Schafer S, Barkowski C, Fuchs G (1986) Carbon assimilation by the autotrophic thermophilic archaebacterium Thermoproteus-Neutrophilus. Arch Microbiol 146(3):301-308 Schauder R, Widdel F, Fuchs G (1987) Carbon assimilation pathways in sulfate-reducing bacteria .2. Enzymes of a reductive citric-acid cycle in the autotrophic Desulfobacter-Hydrogenophilus. Arch Microbiol 148(3):218-225 Shiba H, Kawasumi T, Igarashi Y, Kodama T, Minoda Y (1985) The Co2 assimilation via the reductive tricarboxylic-acid cycle in an obligately autotrophic, aerobic hydrogen-oxidizing bacterium, Hydrogenobacter-Thermophilus. Arch Microbiol 141(3):198-203 Silver WS, Postgate JR (1973) Evolution of asymbiotic nitrogen fixation. J Theor Biol 40(1):1-10 Smith E, Morowitz HJ (2004) Universality in intermediary metabolism. Proc Natl Acad Sci U S A 101(36): 13168-73 Sprott GD, Ekiel I, Patel GB (1993) Metabolic pathways in Methanococcus-Jannaschii and other methanogenic bacteria. Appl Environ Microbiol 59(4):1092-1098 Suzuki A, Knaff DB (2005) Glutamate synthase: structural, mechanistic and regulatory properties, and role in the amino acid metabolism. Photosyn Res 83(2):191-217 Tanaka T, Nei M (1989) Positive Darwinian selection observed at the variable-region genes of immunoglobulins. Mol Biol Evol 6(5):447-59 Temple SJ, Vance CP, Gantt JS (1998) Glutamate synthase and nitrogen assimilation. Trends Plant Sci 3(2): 51-56 Turner SL, Young JP (2000) The glutamine synthetases of rhizobia: phylogenetics and evolutionary implications. Mol Biol Evol 17(2):309-19 Vanoni MA, Curti B (1999) Glutamate synthase: a complex iron-sulfur flavoprotein. Cell Mol Life Sci 55(4): 617-38 Wächtershäuser G (1988) Before enzymes and templates - theory of surface metabolism. Microbiol Rev 52(4): 452-484 Wächtershäuser G (1990) Evolution of the 1st metabolic cycles. Proc Natl Acad Sci U S A 87(1):200-204
Evolution of Biologic C & N CyclingȰGenomic Perspective
231
Wahlund TM, Tabita FR (1997) The reductive tricarboxylic acid cycle of carbon dioxide assimilation: Initial studies and purification of ATP-citrate lyase from the green sulfur bacterium Chlorobium tepidum. J Bacteriol 179(15):4859-4867 Wingler A, Lea PJ, Quick WP, Leegood RC (2000) Photorespiration: metabolic pathways and their role in stress protection. Philos T Roy Soc B 355(1402):1517-1529
10
Reviews in Mineralogy & Geochemistry Vol. 59, pp. 233-258, 2005 Copyright © Mineralogical Society of America
Building the Biomarker Tree of Life Jochen J. Brocks Research School of Earth Sciences The Australian National University Canberra, ACT 0200, Australia [email protected]
Ann Pearson Department of Earth & Planetary Sciences Harvard University Cambridge, Massachusetts, 02138, U.S.A. [email protected]
INTRODUCTION It is the great challenge of geomicrobiology to study microorganisms in the context of their environments, both in Earth’s distant past and in the present. Planet Earth and its biosphere have evolved together, and a chronicle of Earth’s ecosystems and their geochemical cycles is recorded in sedimentary rocks spanning billions of years. A relatively new and very powerful approach to read these subtle microbial and environmental signatures in ancient rocks is the study of molecular fossils, or biomarkers, within the context of the biochemistry and phylogeny of their origins. Biomarkers are organic compounds (primarily lipids) that have particular biosynthetic origins and can be preserved in sediments and sedimentary rocks. The most valuable biomarkers are taxonomically specific, i.e., they can be assigned to a defined group of organisms, and are resistant to degradation. Reading the biomarker signatures in rocks can give information about the ancient record of anoxic conditions in the water column (e.g., Summons and Powell 1986), the intensity of UV radiation penetrating lakes (Leavitt et al. 1997), hypersalinity in evaporitic environments (Grice et al. 1998), and the function of microbial communities at methane seeps (Hinrichs et al. 1999). Biomarkers have helped to reconstruct the first appearance of major groups of organisms (e.g., McCaffrey et al. 1994; Moldowan et al. 1994; Moldowan and Talyzina 1998; Brocks et al. 2005), elucidate events of global climate change (e.g., Brassell et al. 1986), record major perturbations and reorganization of geochemical cycles (e.g., Logan et al. 1995; Kuypers et al. 1999) and document catastrophic losses in biodiversity (e.g., Grice et al. 2005). They are even used as tools to help in the discovery of major new petroleum reservoirs (for a review see Peters et al. 2004). The field of biomarker research is young and many new applications wait to be discovered. This review will explain how biomarkers form, how they are extracted from sedimentary rocks, and how they are used to reconstruct ancient and modern microbial ecosystems. It ends with a look to the future of biomarker research and the on-going efforts to reconcile the biomarker record with the tree of life. The review includes examples of the detection of important metabolic pathways, of the appearance of new biomarkers (and by inference new taxonomic groups) in the rock record, and of the reconstruction of geochemical processes. We will concentrate on biomarkers from bacteria, archaea and unicellular eukaryotes, excluding 1529-6466/05/0059-0010$05.00
DOI: 10.2138/rmg.2005.59.10
234
Brocks & Pearson
the molecular fossils of plants and other non-microscopic eukaryotes. We highlight biomarker research using outstanding recent examples with a pedagogic emphasis on concepts but with no claim for completeness. More encyclopedic reviews were given by Peters et al. (2004) and Brocks and Summons (2004). For readers who desire more background in organic geochemistry, excellent introductions to the nomenclature, chemistry, and biology of lipids can be found in textbooks by Killops and Killops (2005) and Madigan and Martinko (2005).
The biomarker principle The origin of biomarkers. In lakes and oceans, the organic matter from dead organisms usually is almost quantitatively (> 99.9%) recycled back into carbon dioxide and water (Hedges and Keil 1995). The biological degradation of most proteins, nucleic acids and carbohydrates proceeds rapidly as dead biomass sinks through the water column, and it continues in the surface layers of the sediments. However, a small fraction of organic matter escapes the remineralization process and accumulates. Molecules that are especially recalcitrant, such as pigments, lipids and many structural macromolecules, will become concentrated (Tegelaar et al. 1989). With the onset of reducing conditions, the remaining sedimentary organic matter is degraded further by anaerobic heterotrophic organisms such as sulfate reducers, fermenters and methanogens (Megonigal et al. 2004); the chemical structure of the remains is altered by biological and chemical processes (Hedges and Keil 1995; Hedges et al. 1997; Rullkötter 1999). These alterations are referred to collectively as diagenesis. Smaller molecular units and degradation-resistant macromolecules are cross-linked and form kerogen, an amorphous and exceedingly complex structural network of biochemical subunits (e.g., Derenne et al. 1991; de Leeuw and Largeau 1993). During the formation of kerogen, vulcanization reactions mediated by sulfur and polysulphides often play an important role in connecting smaller molecular units, such as lipids, to the macromolecular aggregate, thus protecting them against further structural alterations (Sinninghe Damsté and de Leeuw 1990). Over millions of years, and with increasing burial depth and geothermal heat, most lipids will undergo structural rearrangement via cracking and isomerization reactions. These processes create a vast range of homologues and stereo- and structural isomers. Through reduction, elimination and aromatization the biomarkers typically lose all of their functional groups. The resultant products are geologically-stable hydrocarbon skeletons. Structures 1 and 2; 3 and 4; and 5 and 6 show examples of biolipids and their diagenetic hydrocarbon products. Bitumen is defined as the fraction of organic matter that can be extracted from sediments and sedimentary rocks using organic solvents, and it includes diagenetic components that have been thermally cracked, or released, from the kerogen. With increasing burial temperature and pressure, the thermal degradation of kerogen in organic-rich sedimentary rocks will generate enough liquid bitumen and natural gas for the expulsion of hydrocarbons in the form of petroleum. Petroleum reservoirs are, in fact, gigantic accumulations of biomarkers and other cracking products of sedimentary organic matter. However, at burial temperatures in the sedimentary unit exceeding 150–250 qC, most residual gas and liquid hydrocarbons have been expelled and the kerogen dehydrogenated to a highly aromatic, black carbon phase. This is the upper survival temperature for biological molecules over geologic time (Brocks and Summons 2004). The thermal destruction of biomarkers with deep burial is the primary complication in the search for biogenic molecular remains in very ancient, billion-year-old sedimentary rocks (Brocks et al. 2003a). During the experimental analysis of biomarkers, organic-rich, black sedimentary rocks are crushed to powder, and the powder is extracted with solvents such as methanol and dichloromethane using conventional reflux extraction or automated solved extractors (ASE). The bitumen extracts are usually yellow to dark brown, highly complex mixtures, containing hundreds of thousands of compounds. To simplify further analyses, the bitumen is fractionated into saturated hydrocarbons, aromatics, and polar compounds (usually those containing the
Building the Biomarker Tree of Life
1
isorenieratene
2
isorenieratane
3
235
lanosterol HO
4
14
lanostane 4
OH OH
X
5
bacteriohopanepolyols (BHP)
Y 2 3
OH
Z
X, Y = H, OH Z = OH, OR, NHR
22 30
*
6
pentakishomohopane
R1 R2
35
28 2 3
a: R1 = H; R2 = H b: R1 = H; R2 = Me c: R1 = Me; R2 = H
heteroatoms O, N, and S) using normal-phase (SiO2-gel) chromatography. The fractions are then analyzed by gas chromatography-mass spectrometry (GC-MS). The ratios of different homologues and stereo- and structural isomers contained in a sample of bitumen may contain a plethora of information about conditions during burial and diagenesis, as well as the source organisms. For example, the relative abundance of stereoisomers such as 22S vs. 22R hopanes (see 6), 20S vs. 20R steranes (see 7), or triaromatic steroids 8 with intact and cleaved side chain, often helps to estimate relative burial temperatures (e.g., Brocks et al. 2003a). A high relative abundance of biomarkers such as aromatic carotenoids (e.g., 2), 28,30-bisnorhopanes (hopanes 6 lacking the C-28 and C-30 methyl groups) (Schoell et al. 1992), or the pentacyclic triterpane gammacerane 9, produced by ciliates grazing on bacteria in the anoxic zone (Sinninghe Damsté et al. 1995), may indicate anoxic and/or sulfidic conditions. Molecular fossils as markers for biosynthetic pathways. For many geobiologists, the most interesting application of biomarkers is the reconstruction of ancient microbial ecosystems and the concurrent environmental conditions, at time-scales of millions to billions
236
Brocks & Pearson R 20
*
7
24
steranes
R
8
triaromatic steroids
R = H, Me, Et 4
9
gammacerane
of years. Although lipids usually lose their functional groups during diagenesis, and often also stereochemical specificity, the remaining hydrocarbon skeletons retain useful biological and ecological information. For instance, the aromatic carotenoid okenane 10, a molecule detected in 1,640 million-year-old sedimentary rocks of the McArthur Basin in northern Australia, is regarded as a biomarker for purple sulfur bacteria of the family Chromatiaceae (Brocks et al. 2005). The only known biological precursor of okenane is the red-colored phototrophic pigment okenone 11, and okenone is found exclusively in Chromatiaceae. As the Chromatiaceae have a very specific ecology, the presence of okenane has been used to predict that the waters of the McArthur Basin 1,640 million years ago were sulfidic up into the photic zone.
10
okenane
11
okenone
O
Me O
The distribution of carotenoids in the biosphere is comparatively well known due to their intense color. Therefore, the interpretation of okenane as a biomarker for purple sulfur bacteria appears to be robust. However, the interpretation of many other biomarkers is more complex. Strictly speaking, biomarkers are not markers for taxonomic groups or for environmental conditions. Biomarkers are the products of biosynthetic pathways that may occur in unrelated organisms. An example of potential misinterpretation is the carotenoid isorenieratane 2. Isorenieratane 2 is commonly interpreted as a specific biomarker for green sulfur bacteria (Chlorobiaceae). However, the precursor of isorenieratane 2, isorenieratene 1, also occurs in the gram positive bacterial group Actinomycetales (Krügel et al. 1999; Phadwal 2005), and a genome library search for genes involved in isorenieratene biosynthesis suggests that cyanobacteria may have this capacity as well (Woodward Fischer, personal communication).
Building the Biomarker Tree of Life
237
In general, the distribution of genes for carotenoid biosynthesis in Bacteria is characterized by horizontal gene transfer and gene duplication events (Phadwal 2005). Thus the capacity for biosynthesis of isorenieratene 1 might appear in other lineages as well. Additionally, the aromatic end-group of isorenieratene also may form by abiotic, diagenetic aromatization of cyclohexyl (ionene) end-groups (Koopmans et al. 1996). Thus, isorenieratane may form in sedimentary environments by alteration of a wide range of carotenoids, including E-carotene. Therefore, isorenieratane 2 is not a biomarker solely for Chlorobiaceae. Isorenieratane is a product of all biosynthetic and abiotic pathways that can produce and alter suitable precursors. A second example of the ambiguities in the interpretation of biomarkers is the phylogenetic distribution of the biosynthetic pathway leading to sterols. The C30 steroid hydrocarbon lanostane 4 has two common diagenetic precursors, lanosterol (produced by animals and fungi) and cycloartenol (biosynthesized by plants). The enzyme oxidosqualene cyclase (OSC) catalyzes the formation of lanosterol 3 and cycloartenol from the precursor compound oxidosqualene 12. These compounds are the initial steroidal products that feed the long, complex biosynthetic pathways that produce all known eukaryotic steroids. However, although most biology textbooks state that steroid biosynthesis is one of the defining characteristics of eukaryotes, lanostane 4 is not always a biomarker for Eucarya. OSC also is expressed in at least three groups of bacteria: the Methylococcales (Bird et al. 1971), Myxococcales (Kohl et al. 1983), and Planctomycetales (Pearson et al. 2003). Several of these species produce detectable amounts of lanosterol, as well as down-stream (modified) sterols. Therefore, the compound lanostane is a biomarker for eukaryotes and bacteria. However, fossil steroids that have an additional alkyl substituent at position C-24 (see 7) in the side chain must still be regarded as diagnostic for eukaryotes, as no group of bacteria is known (yet) to possess the biosynthetic capacity to alkylate the steroid side chain (Brocks et al. 2003b; Volkman 2003).
12
oxidosqualene O
The carbon isotopic composition of biomarkers Fractionation of the stable isotopes of carbon, 12C and 13C, occurs in association with biological reactions and remains imprinted in the isotopic signatures of biomarker molecules. In addition to the intrinsic taxonomic utility of certain lipids, the isotopic ratios of these compounds can provide insight about the environmental conditions and metabolic capabilities of the source organisms. As such, compound-specific isotopic analysis is a valuable additional tool for understanding the modern and ancient geologic record. Carbon occurs naturally as three isotopes, 12C, 13C, and 14C; with fractional abundances of 0.989, 0.011, and 10−12, respectively. The last, 14C, is radioactive, and its half-life of 5730 years yields useful radiocarbon chronologies only over the most recent few tens of thousands of years. Therefore, most isotopic analyses of individual biomarkers focus primarily on the two stable isotopes of carbon. Isotopic composition is expressed most commonly as the ratio of 13C to 12C in the substance, relative to the ratio in a standard material. The units of isotopic fractionation are parts per thousand, or “permil” (‰), and the standard reference material is a carbonate rock (VPDB; Vienna Pee Dee Belemnite), which by definition has a G13CVPDB value of 0‰.
238
Brocks & Pearson ⎛ 13 C 12 C Sample δ13C = ⎜ 13 12 ⎜ C C Standard ⎝
⎞ ⎟ <1000 ⎟ ⎠
There are numerous factors that determine the final G13C values of total biomass and of individual biomarker compounds. Some of the principles most fundamental to geobiological interpretations are summarized below; however, the reader is encouraged to examine the more comprehensive reviews by Hayes (1993, 2001), from which most of this material was adapted. The isotopic composition of the carbon source. The G13C values of biomarkers depend in complex ways on the pathway(s) and condition(s) of carbon fixation, as described below; but the baseline for these values necessarily is that of the inorganic carbon source from which the biomass is produced. The speciation of inorganic carbon is governed by acid-base equilibria between CO2, HCO3−, and CO32− species. CO2 + H2O l H2CO3 l HCO3− + H+ l CO32− + 2H+ The relative abundance of each component is dependent on the pH of the local environment and varies among fresh-water, marine, fluvial, hydrothermal, and other systems of geologic interest. The isotopic distribution, however, is a function primarily of temperature, and in the case of CO32−, also of the partitioning between dissolved and mineral [M[II]CO3(s)] phases (Bottinga 1969; Emrich and Vogel 1970). These equilibrium isotope exchange reactions favor the incorporation of 13C into the more stable (lower energy) bonding environment; the primary result is a relative isotopic depletion of 13C in CO2(aq) and CO2(g) relative to HCO3− or CO32−. The equilibrium fractionation factor, DA-B, is defined as the 13C/12C ratio of A (RA) divided by the 13C/12C ratio of B (RB): Al B α A− B ≡
RA (1000 + δ A ) = RB (1000 + δ B )
Equilibrium fractionation factors at common biosynthetic or environmental temperatures were summarized by Falkowski and Raven (1997). However, in many systems of interest to geobiology, such as thermal springs, temperatures may exceed the values presented here. Bottinga (1969) and Richet et al. (1977) have presented equations to extrapolate values of D for the reaction CO2(aq) l HCO3− to higher temperatures. Values ofDA-B decrease at higher temperatures, resulting in smaller isotopic differences between the carbon species. Typical values of G13C for inorganic carbon substrates in geological settings are −6 to −8‰ for atmospheric CO2; −2 to +2‰ for dissolved HCO3− and CO32−; and a range of values for CO2(aq) dependent largely on the relative amount of i) respiration-derived CO2 (having lower G13C values), or ii) residual, isotopically heavy CO2 such as is found in strongly methanogenic systems. Fractionation associated with fixation of inorganic carbon to biomass. Carbon isotope fractionation in biological reactions most commonly results from unidirectional kinetic isotope effects (KIE). These effects result from the effectively slower rate of reaction for a 13 C-containing bond relative to the same bond in which the carbon atom is 12C. Thus, isotopic fraction ultimately is controlled at the atomic level by the reaction rates at individual sites within molecules. A o 13B, rate k1
13 12
A o 12B, rate k2; k2 > k1
Building the Biomarker Tree of Life
239
When inorganic carbon is fixed into biomass, these reactions necessarily are controlled by the activity of specific enzymes, each of which has an associated KIE. The biological transformation of substrate (A) to product (B) is accompanied by a fractionation factor that most commonly is written using the H notation, for the subsequent convenience of relating HA-B to GA and GB when H is a small number. Because 13C preferentially remains in A, HA-B always is a positive number and products are “lighter” than reactants. HA-B { (DA-B − 1)1000 HA-B ≈ GA − GB The enzymes utilized by organisms to fix carbon are categorized most easily by the metabolic pathways in which they are used and by the species of inorganic carbon substrate for which they are specific (see Bott and Thauer 1989; and Hayes 2001, for compilations of substrates and isotopic fractionations, respectively). The latter is important, as it is clear that organisms utilizing pathways specific for HCO3− necessarily begin with a substrate that is heavier isotopically than organisms that fix CO2 directly. The recent discovery of novel metabolic pathways in some species of microbes (e.g., the newly discovered 3-HP pathway; Strauss and Fuchs 1993; Raymond, this volume)—and the possibility that mixotrophic or hybrid metabolisms are expressed by species in the environment—also complicates the picture considerably. However, the currently available information can be divided into pathways that typically yield isotopically “heavy” biomass (rTCA and 3-HP); pathways yielding isotopically intermediate biomass (Calvin-Benson cycle and some methanogens); and pathways yielding isotopically light biomass (homoacetogens, some methanogens, other Acetyl-CoA pathway organisms, and all methanotrophs). The above discussion does not include strict heterotrophs, because the carbon isotopic composition of their lipids and biomass broadly reflects their carbon sources. The G13C values of biomass of heterotrophic microbes and macroscopic heterotrophs appear to be united by the principle “you are what you eat, plus 1‰” (DeNiro and Epstein 1978). This rule of thumb is based on the weak carbon isotopic fractionation associated with the glycolytic respiratory metabolism of most heterotrophs. Methanotrophy and methylotrophy, on the other hand, may be considered here as special cases of autotrophy rather than heterotrophy, as they involve fixation of C1 metabolites and thus are accompanied by large H values. For further discussion of fractionations associated with aerobic methanotrophy see Summons (1994); and for separate treatment of methylotrophic metabolism see Summons (1998). Anaerobic methanotrophy has not yet been explained mechanistically, although the first in situ isotopic measurements (Hinrichs et al. 1999) immediately indicated large values of HCH4-biomass. Application of δ13C analyses at the molecular level. Isotopic analysis of lipid biomarker molecules can provide valuable information about the geobiology and biogeochemistry of contemporary and ancient systems. Compound-specific measurements usually employ the “continuous-flow,” isotope-ratio mass spectrometric methods developed by Hayes (Matthews and Hayes 1978; Hayes et al. 1990). Initial studies focused on lipids extracted from samples of ancient geologic age (e.g., Freeman et al. 1990) and showed the utility of this approach to describe a diversity of biomarkers and their origins. Such molecular-level analyses rely on the intrinsic advantages provided by lipids: their volatility permits separation by gas chromatography, and lipids are thermally and diagenetically stable. An important, but complicating, factor in the interpretation of G13C values of individual lipids is the extent to which the lipids themselves are fractionated isotopically relative to the total biomass of the source. Intracellular fractionations are the consequence of the diversion of metabolic intermediates such as pyruvate and acetate, which are necessary for the biosynthesis of lipids, into other pathways such as the citric acid cycle and/or for the biosynthesis of amino
240
Brocks & Pearson
acids. A detailed mathematical treatment of the isotopic consequences of such branched pathways is given in Hayes (2001), but in general, the fractionation between biomass and lipids (Hbiomass-lipid) results in a more negative value of G13C for the lipid due to fractionation during the decarboxylation of pyruvate to acetate. This is true for organisms expressing the Calvin cycle, but it is not necessarily true for species that synthesize acetate directly or for those that have alternative biosynthetic routes to acetate (e.g., van der Meer et al. 2001) or isoprenoids (Schouten et al. 1998a). Organisms that have unusual metabolisms have not yet been studied thoroughly, and the range of variability in expression of Hbiomass-lipid needs further exploration.
BIOMARKERS IN GEOMICROBIOLOGY There are far too many examples of the informative use of biomarkers in geobiology to review all of them in this chapter. Therefore, in the section that follows we present a series of case studies and outstanding examples of biomarker geochemistry. These examples are grouped by metabolic pathway, biogeochemical process, and/or by the phylogeny of the source organism. Each is an attempt to illustrate the unique contributions that the analysis of lipid biomarkers can make to the field of geomicrobiology.
Biomarkers as indicators of metabolism Methanotrophic methanogens: the anaerobic oxidation of methane. The need for an anaerobic sink for the methane produced in marine sediments was recognized by geochemists as early as the 1970s-1980s (e.g., Reeburgh 1976; Alperin and Reeburgh 1985). Profiles of dissolved CH4 in sedimentary pore waters indicated that in most environments it did not reach the sediment-water interface and therefore was not oxidized by O2 in the deep ocean. Zehnder and Brock (1979) first proposed—and later Hoehler et al. (1994) expanded upon—the hypothesis that the anaerobic oxidation of methane (AOM) could be achieved by methanogenic archaea utilizing a specialized metabolism designed to run “in reverse.” They suggested that the energetic expense of this reaction could be overcome by consumption of the H2 by-product or other reducing equivalents by syntrophic, sulfate-reducing bacteria (SRB). Such a process would require a close physical association in the form of an aggregate or consortium. However, it was only recently that the microorganisms were identified that putatively are involved in this process. Currently they are classified broadly among three new categories of Euryarchaeota, ANME-1, ANME-2, and ANME-3 (Boetius et al. 2000; Orphan et al. 2001, 2002; Knittel et al. 2005). At least one of these groups (ANME-2) indeed appears to live in consortia with SRB. Much still remains to be learned about the biology of AOM, including the possibility that there are ANME-group archaea or SRB that are capable of oxidizing CH4 independently, without a syntrophic partner. Prior to the discovery of the consortia that mediate AOM, however, there was evidence from G13C values of biomarker lipids that archaea were involved in AOM. The history behind the discovery of this process represents an outstanding case in which isotopic analysis of biomarkers led directly to conclusions about geomicrobiology and environmental metabolisms. Bian (1994) first observed (but could not yet explain) depleted values of G13C for crocetane 13, a C20 isoprenoid isomer of phytane, in sediments of the Kattegat Strait between Denmark and Sweden. Subsequent work by Hinrichs et al. (1999) on sediments from coastal California, USA, showed similarly extreme isotopic depletions for both archaeal and bacterial biomarkers from a CH4-rich, anaerobic sediment. Hinrichs et al. (1999) showed that the lipids archaeol 14 and sn-2-hydroxyarchaeol, which are glycerol diethers typical of methanogenic euryarchaeota, had G13C values ≤ −100‰. Such light values indicated that consumption of isotopically-depleted CH4 must serve as the primary carbon source for the archaea from which the lipids were derived. The earlier G13C values for crocetane 13 and the related isoprenoid
Building the Biomarker Tree of Life
241
hydrocarbon 2,6,10,15,19-pentamethylicosane (PMI), could finally be explained as products of similar CH4-consuming archaea (Bian et al. 2001). tail-to-tail
13
crocetane
O
14
archaeol O OH
Recent work has suggested that crocetane and C20 isoprenoids derived from archaeal diethers may be biomarkers specific for the archaea associated with ANME-2-type consortia. The ANME-1 archaea (frequently observed as individual cells and filaments; Orphan et al. 2002) may be typified by the C40 isoprenoids associated with tetraethers 15 (Blumenberg et al. 2004). There may be further taxonomic potential to be discovered within archaeal biomarkers, and more may be learned if ANME archaea are brought into pure or enrichment culture. head-to-head
HO
15
Crenarchaeol
O O
O O HO
After the early reports of the assimilation of CH4 by relatives of the normally methanogenic archaea, numerous other cases of AOM were documented using lipid biomarkers. Isotopicallydepleted isoprenoid ethers have been found in association with Mediterranean mud volcanoes (Pancost et al. 2000); cold-temperature CH4 seeps (Pancost et al. 2001; Zhang et al. 2003); hot-temperature CH4 seeps (Teske et al. 2002; Schouten et al. 2003b); in the Black Sea (Thiel et al. 2001; Michaelis et al. 2002; Wakeham et al. 2003); and in the spectacular carbonate chimneys of the serpentinite-hosted hydrothermal system of the Lost City (Kelley et al. 2005). There is also considerable evidence for the association of bacterial groups with the AOM process. These microbes are probably involved in the metabolism of the organic end-products of AOM and/or in the incorporation of 13C-depleted DIC. However, it remains possible that some unidentified groups of bacteria assimilate CH4 directly. Hopanoids (Elvert et al. 2000; Pancost et al. 2000; Thiel et al. 2001, 2003) and fatty acids derived from phospholipids (e.g., Hinrichs et al. 2000) with highly depleted G13C signatures are frequently found in the same samples as the archaeal biomarkers for AOM. Anammox: the discovery of autotrophic denitrification. In a now-classic paper entitled “2 kinds of lithotrophs missing in nature”, Broda (1977) postulated the anaerobic oxidation of ammonia by nitrate or nitrite-reducing bacteria. Oxidation of NH4+ with subsequent reduction
242
Brocks & Pearson
of NO2− would represent both a means to provide energy for lithoautotrophic fixation of CO2 to biomass and a form of denitrification with associated effects on the global nitrogen cycle. NH4+ + NO2− o N2 + 2H2O
'G° = −360 kJ/mol
The elegance and simplicity of Broda (1977) make the paper virtually required reading for the student of geobiology; however, the predicted “anammox” reaction and more specifically the associated organisms remained undiscovered for a further 20 years. Anammox was finally revealed in association with nitrogen-rich wastewater reactors (Mulder et al. 1995; Strous et al. 1997; van de Graaf et al. 1997), and the organisms responsible for the reaction were identified as members of an unusual bacterial group, the Planctomycetales (Strous et al. 1999). Recently it has been suggested that anammox may be responsible for up to 30–50% of the denitrification occurring in the global ocean (Dalsgaard et al. 2003, 2005; Kuypers et al. 2005), all of which had been previously assigned to the activity of denitrifying, anaerobic heterotrophs. Not all members of the Planctomycetales are capable of anammox metabolism; most members of this group appear to be heterotrophs or chemoorganotrophs. However, it is within the anammox genera (Brocadia, Kuenenia, Scalindua) that the unique lipids known as ladderanes 16 are found (Sinninghe Damsté et al. 2002). Ladderanes are believed to be critical components of the anammox organelle, the “anammoxosome” (van Niftrik et al. 2004). Specifically, ladderanes may provide a diffusional barrier to the toxic intermediate of ammonium oxidation, hydrazine (N2H4). For this purpose, ladderanes possess a unique ‘ladder’ of concatenated cyclobutane rings (see 16) that can be stacked into a dense membrane; and due to a lack of branched methyl groups, they are apparently biosynthesized from acetate rather than from isoprene. The C20 moieties may be connected via ether or ester linkages to a glycerol backbone (Sinninghe Damsté et al. 2002).
16
OMe
[5]-ladderane O
It is unknown at present to what extent intact ladderanes, or more likely, their degradation products, are preserved in the geologic record. Because of the highly strained nature of cyclobutane rings, these high-energy structures should be unstable and prone to rapid degradation. However, the ring-opening products of the cyclobutane groups may yield diagnostic and geologically stable biomarker products. Searching for these products, it may eventually be feasible to determine how far back into the geologic record the anammox process persists. Simple consideration of biogeochemical cycles suggests that anammox would not have developed as a significant process until after the advent of oxygenic photosynthesis, since the reaction is dependent on sufficient quantities of NO2−. Nitrite is a product of the aerobic oxidation of NH4+ by O2 (nitrosification, by genera such as Nitrosomonas or Nitrosobacter). The limited G13C data that are currently available for ladderane lipids are consistent with an autotrophic metabolism for the anammox bacteria. Schouten et al. (2004) observed G13C values between −55‰ and −58‰ for samples of ladderanes from the water column of the Black Sea. The isotopic fractionation of lipid relative to substrate (CO2) was 32‰ to 49‰ (lipids depleted relative to substrate) for the samples from the Black Sea and for samples taken from laboratory enrichment cultures. These data could be consistent with a metabolic pathway dependent on autotrophic synthesis of Acetyl-CoA. Such metabolism is also broadly consistent with an ancient origin of these species and of this chemoautotrophic pathway. Ladderanes are not the only unusual lipids to be found within the Planctomycetales. Species of Pirellula and Planctomyces (Kerger et al. 1988) contained abundant C18:1Z9 fatty
Building the Biomarker Tree of Life
243
acid 17, more commonly a component of eukaryotes (in the above nomenclature for fatty acids, C18 refers to the total number of carbon atoms in the molecule, ‘:1’ to the number of C=C double bonds in the chain, and ‘Z9’ designates the position of the double bond counted from the last (Z omega) carbon atom in the chain). They also contained unique distributions of 3-hydroxy-fatty acids, which were suggested to be sufficiently diagnostic biomarkers for planctomycetes in some environmental settings. Unlike most bacteria, the Planctomycetales lack peptidoglycan in their cell walls and as such contain no muramic acid (e.g., König et al. 1984; Stackebrandt et al. 1986). Although many planctomycetes, including the anammox genera, contain “nucleoids” which confine the cellular DNA, Gemmata obscuriglobus is the only species known to contain a “nucleoid” which is double membrane-bound as found in eukaryotes (Fuerst and Webb 1991; Lindsay et al. 2001). G. obscuriglobus also is among the few bacterial species that biosynthesize sterols, and it is the only species (prokaryotic or eukaryotic) in which those sterols are not subsequently demethylated at position C14 (see lanostane 4) (Pearson et al. 2003). It remains unknown what intracellular roles all of the unusual planctomycete lipids serve, or how far back in the geologic record the molecular fossils of this group may extend. O
17
C18:1ω9 fatty acid
ω2 18
ω9
2
1
OH
The Planctomycetales represent an unusual and divergent microbial lineage which traditionally has been difficult to place within the tree of life. Using approaches based on alternative phylogenetic treeing methods for 16S rRNA genes (Brochier and Philippe 2002) and on the relationships among C1 metabolic pathway genes (Chistoserdova et al. 2004), it has been suggested that the Planctomycetales may be the most deeply branching of the bacterial taxa. By these analyses, the planctomycetes are basal to the rest of the bacteria and are the closest bacterial relatives to the archaea and eukaryotes. Aromatic carotenoids, biomarkers for phototrophic oxidation of sulfide. Anoxic conditions in aquatic systems, and particularly the enigmatic Oceanic Anoxic Events such as OAE1b in the mid-Cretaceous, have become critical research areas for the geosciences. Periods of prevailing anoxia in large basins might be responsible for the widespread deposition of black shales, increased accumulation of petroleum source rocks, changes in global biogeochemical cycles, extreme shifts in climate, major mass extinctions, and concomitant biological radiations. Currently the only biomarker proxies available to study the most extreme form of anoxia, photic zone euxinia, are biomarkers of the phototrophic green and purple sulfur bacteria (Summons and Powell 1986; Requejo et al. 1992; Brocks et al. 2005; Grice et al. 2005). Green sulfur bacteria (family Chlorobiaceae) are only distantly related to other phototrophic bacterial groups (Fig. 1). Chlorobiaceae only use photosystem I (PS I) and are strictly anaerobic, exploiting reduced sulfur species, such as hydrogen sulphide, as electron sources. In microbial mats, the requirement for sulfide and light restricts their habitat to the anoxic zone millimeters below the mat surface. In planktonic environments they live in a layer below the anoxic-oxic boundary, but within the photic zone. To adjust to the wavelength distribution and attenuated intensity of light at depth, Chlorobiaceae commonly possess an abundance of accessory carotenoid pigments. Green-pigmented species of planktonic Chlorobiaceae grow in a thin layer at water depths up to ~13 m, and their major carotenoid pigments are chlorobactene 18 and hydroxychlorobactene (Imhoff 1995), both of which yield the sedimentary biomarker, chlorobactane 19. Brown-pigmented Chlorobiaceae inhabit a zone deeper than the green-pigmented species; they are usually found at water depths up to 18 m,
244
Brocks & Pearson
but were also observed in the Black Sea at 80 m (Repeta et al. 1989). Their pigment system is dominated by the carotenoids isorenieratene 1 and E-isorenieratene, the precursors for the hydrocarbon biomarkers isorenieratane 2 and E-isorenieratane (Liaaen-Jensen 1965).
18
chlorobactene
19
chlorobactane
Purple sulfur bacteria of the family Chromatiaceae are a sub-group of the J-proteobacteria and utilize the PS II photosynthetic reaction center. Although unrelated to Chlorobiaceae, the Chromatiaceae have similar environmental requirements. Their preferred physiology is phototrophic oxidation of reduced sulfur under anoxic conditions. However, they are generally more tolerant to oxygen and can exploit a more versatile range of electron donors, including hydrogen. In microbial mats, as well as in planktonic environments, they grow in a thin layer directly above the zone of green sulfur bacteria but below the oxycline. Several species of planktonic Chromatiaceae have an accessory pigment system based on the red-
Eucarya 8, 4
Animals Flagellates
9
Plants
Microsporidia
Ciliates
Fungi
Slime moulds
Bacteria
Green non-sulfur bacteria
55
11, 6b
Diplomonads
15
Desulfurococcus Thermotoga
Thermoproteus
Pyrodictium
Pyrobaculum
Nitrospira
6c
Archaea
Sulfolobus
Gram positive bacteria Proteobacteria
Crenarchaeota
Cyanobacteria
Methanobacterium
Pyrococcus
Thermoplasma
2, 19
Green sulfur bacteria
Archaeoglobus Thermodesulfobacterium
Methanopyrus
Halobacterium
Methanococcus
Euryarchaeota
Aquifex
Methanosarcina
13, 14
Figure 1. SSU rRNA phylogenetic tree annotated with structure numbers of biomarkers discussed in the text (adapted after Brocks and Summons 2004).
Building the Biomarker Tree of Life
245
colored monoaromatic carotenoid okenone 10, which has a 2,3,4-trimethylaryl end-group. Planktonic species are commonly observed at water depths around 10 meters or less, and very rarely deeper than 20 meters (Van Gemerden and Mas 1995). Okenone 11 is the only known precursor for the hydrocarbon biomarker okenane 10, which represents the sole known proxy for purple sulfur bacteria in the fossil record. Biomarkers of green and purple sulfur bacteria are particularly valuable tracers for the study of marine anoxic conditions in the Precambrian (> 542 million years (Ma) ago), as body fossils of animals that give evidence about anoxic conditions in younger rocks do not exist in this period.
Biomarkers as indicators of the evolution of life and the environment Phototrophic sulfur bacteria and a sulfidic ocean in the Proterozoic. Today, Earth’s oceans are teeming with complex life, and even deep marine trenches contain enough oxygen to support macroscopic organisms. However, oceans in the distant past were fundamentally different. For the first two billion years of its existence, the ocean-atmosphere system was almost entirely anoxic (Fig. 2) (Holland 1994), but around 2450 to 2320 Ma ago, the disappearance of mass-independent fractionation of sulfur isotopes indicates that the concentration of atmospheric oxygen rose from previously trace levels to at least 10−5u the present level (Farquhar et al. 2000; Bekker et al. 2004; Holland 2004). Soon after this initial rise of oxygen, fossil soils (paleosols) begin to show typical oxic weathering patterns that suggest atmospheric O2 quickly may have reached 15% of its present value (Rye and Holland 1998). However, the deep oceans remained mostly or entirely anoxic until at least ~1,800 Ma ago, the point in geological history when the last Paleoproterozoic banded iron formations (BIFs; iron silicates and iron carbonates) disappeared (Fig. 2). Surprisingly, the state of the ocean in the following “mid-Proterozoic” interval (~1,800 to ~800 Ma) remains particularly mysterious. One model suggests that deposition of BIFs ceased ~1,800 Ma ago because FeII emitted from mid-oceanic ridges was precipitated immediately on the oxygenated sea-floor as FeIII-hydroxides (Holland 1994). However, according to a competing model (Canfield 1998), FeII was not removed as oxidized rust but precipitated as FeII-sulfides in sulfidic ocean waters. Evidence is accumulating from the isotopic composition and distribution of sulfides (Canfield 1998; Shen et al. 2003; Poulton et al. 2004), sulfates (Kah et al. 2001) and molybdenum (Arnold et al. 2004), that appears to support Canfield’s model. It is also possible that a hybrid of both models existed, resembling a ‘marble cake’ ocean (A. H. Knoll, personal communication). If large areas of the world ocean were euxinic (anoxic and sulfidic) in the midProterozoic, then our understanding of more than one fifth of Earth history would change
(c) (a)
(f) ‘mid-Proterozoic’ (e)
Paleo-
Archean 4.5
(d)
(b)
Meso-
Neo-
Proterozoic 2.5
1.6
(g)
1.0
P
M
C
Phanerozoic
0.54
Ga
Figure 2. Geological time chart beginning with (a) the formation of Earth ~4.6 billion years ago (Ga); (b) anoxic, non-sulfidic oceans; (c) onset of oxygenation of the atmosphere (Bekker et al. 2004; Holland 2004); (d) disappearance of banded iron formations as indicator of changing ocean chemistry (Holland 2004); (e) the informally defined “mid-Proterozoic” interval with possible widespread, anoxic and sulfidic marine conditions (Canfield 1998); (f) major radiation of eukaryotic algae (Knoll 1992); (g) first appearance and major radiation of multicellular organisms and animals. 0.54 Ga marks the PrecambrianCambrian boundary. P = Paleozoic, M = Mesozoic, C = Cenozoic.
246
Brocks & Pearson
radically. Geochemical cycles would have been altered, and many bioessential elements, such as nitrogen, molybdenum, and copper would have been rare. Trace-metal limitation may explain why familiar forms of life, such as modern algae and animals, arose so late in Earth history (Anbar and Knoll 2002). In the euxinic ocean, organisms requiring oxygen would have been marginalized, restricted to surface waters and shorelines. The ocean would have promoted extensive growth of green and purple sulfur bacteria wherever sulfidic conditions rose into the photic zone. The earliest evidence for the existence of phototrophic sulfur bacteria comes from a biomarker study on the 1,640 Ma Barney Creek Formation in the McArthur Basin, northern Australia (Brocks et al. 2005). Well preserved, organicrich dolostones of the Barney Creek Formation were deposited in deep waters of the rift basin. The lipids extracted from these sedimentary rocks contain some of the oldest, clearly indigenous biomarkers known to date (Summons et al. 1988b). Significantly, the samples contain relatively high concentrations of isorenieratane 2, chlorobactane 19, and okenane 10. This indicates that the basin was stratified, and euxinic conditions extended—at least episodically—into the photic zone of the water column. This ancient assemblage of biomarkers had two further characteristics which were radically different from any younger bitumen. Steroids alkylated at C-24 in the side chain and diagnostic for eukaryotic organisms were present at levels close to or below detection limits. In contrast, aromatic steroids without side chain alkylation but which were methylated at C-4 (see 8) were very abundant. These biomarkers, together with high relative concentrations of 3E-methyl-hopanes, suggest aerobic type-I methanotrophic bacteria were abundant members of the population. Aerobic methanotrophs are typically found in sulfate-starved environments (<0.5 mM) (Hoehler et al. 1998). Thus, these biomarkers corroborate isotopic evidence for marine sulfate concentrations below 0.5–2.5 mM in the mid-Proterozoic (Kah et al. 2004), far below present levels of about 28 mM. The paucity of diagnostic eukaryotic steroids in these bitumens, despite the abundance of typical bacterial steroids, is unique in Earth history. It suggests that eukaryotic algae were insignificant in the off-shore habitat of the McArthur Basin, possibly because they were asphyxiated by hydrogen sulfide (Martin et al. 2003), and/ or because permanent sulfidic conditions depleted the pool of bioessential transition metals (Anbar and Knoll 2002). This scenario agrees with the distribution of algal fossils observed in the mid-Proterozoic Roper group, where algal diversity and fossil abundance were highest in the agitated, presumably nutrient-rich shore-line facies, but radically declined towards increasingly deeper waters (Javaux et al. 2001). Apparent radiation of crenarchaeota associated with a Cretaceous OAE. Membrane lipids of crenarchaeota typically are composed of C86 compounds having glycerol dialkyl glycerol tetraether (GDGT; e.g., 15) structures (e.g., De Rosa and Gambacorta 1988; Koga et al. 1993). The alkyl chains of such molecules are acyclic, mono-, or poly-cyclic tetraterpenoids with the characteristic head-head linkage (as in 15) found in archaeal isoprenoids. These intact, parent lipids can be found in a diverse range of contemporary environmental settings, from the coldest lakes and oceans to the hottest thermal springs (e.g., Schouten et al. 2000, 2003b; Pearson et al. 2004; Powers et al. 2004; Pancost et al. 2005). The GDGTs and their C40isoprenoid hydrocarbon degradation products also are common throughout recent geologic history (e.g., Chappe et al. 1982; Kohnen et al. 1992; Hoefs et al. 1997). The archaea thought to be responsible for the production of these compounds in marine settings have been classified as Marine Group I Crenarchaeota (DeLong 1992; Fuhrman et al. 1992), although some GDGTs also may derive from the Marine Group II Euryarchaeota. Enumeration of archaeal cells by FISH (fluorescent in situ hybridization) has revealed that these groups comprise as many as 40% of the free-living prokaryotic cells in the sub-euphotic zone and as many as 20% of the total prokaryotic cells in the open ocean today (Karner et al. 2001). This finding of a major archaeal population in the global ocean represents a major shift
Building the Biomarker Tree of Life
247
from previous ecological views, which had held archaea to be the dominant species only in “extreme” environments. The GDGTs of marine archaea hold promise not only as taxonomic biomarkers, but also as paleotemperature indicators and as isotopic tracers of changes in the 13C-concentration of dissolved inorganic carbon (DIC) in the ocean. The GDGT paleotemperature proxy, TEX86 (Schouten et al. 2002), shows promise to reconstruct ocean temperatures in the past. TEX86 is a parameter calculated in a fashion similar to the U kc37 alkenone paleotemperature proxy (Brassell et al. 1986; Prahl and Wakeham 1987); it uses the ratio of the number of pentacyclic rings contained in the GDGT homologues that contain 1, 2, 3, and 5 rings. TEX86 has been approximated as a linear function of temperature: TEX86 = 0.015T(°C) + 0.028 (Schouten et al. 2002). Temperature reconstructions based on this calibration appear to be accurate over a wide range of environmental settings (including lakes; Powers et al. 2004) and apply to temperature regimes from 0°C to ~35°C. Recently, TEX86 has been used to determine that seasurface temperatures were warm and the pole-equator temperature gradient was small in the Cretaceous (Schouten et al. 2003a; Jenkyns et al. 2004). A fundamental goal of biogeochemistry is to understand major reorganizations in the global carbon cycle. This requires the ability to accurately reconstruct the carbon isotopic composition of dissolved inorganic carbon (DIC) in the oceans. Paleoproxies based on the G13C values of calcium carbonate can be subject to diagenetic recrystallization, and often they are not continuous through time due to the high solubility of CaCO3. Hence, the archaeal GDGTs may play a critically important role for biogeochemistry: they can be used to reconstruct the G13C value of DIC. The isotopic fractionation expressed between GDGTs and DIC (Hlipid-DIC) appears to be constant over a wide range of environmental settings and geologic age. Values of G13C for these lipids were first measured by Kohnen et al. (1992) and in more detail by Hoefs et al. (1997). The latter paper reported G13C values for archaeal C40 hydrocarbons from suspended particulate matter, contemporary marine sediments, and Pleistocene, Pleiocene, and Miocene-age materials. The samples represented both oxic and anoxic environments with a range of depositional settings, yet the range in G13C values of C40:0 (0-ring) to C40:3 (3-ring) isoprenoids was only −23.4‰ to −18.7‰, and the average value was −21 ± 1‰ (data averaged from: Hoefs et al. 1997; Schouten et al. 1998b; Pearson et al. 2001). This value is isotopically heavier than most sedimentary lipids, and Hoefs et al. (1997) suggested that it might reflect the utilization of an autotrophic pathway with a small fractionation factor, Hbiomass-DIC. Apparent confirmation of autotrophy in these marine archaea was obtained by Pearson et al. (2001) who showed compound-specific 14C evidence that the archaea utilize DIC from below the euphotic zone; and also by Wuchter et al. (2003), who showed the uptake of 13C-labeled DIC into archaeal biomass in a mesocosm incubation experiment. If it is assumed that the offset between G13CDIC and G13CGDGT is consistent throughout geologic time, the G13CDIC values of past oceans can be reconstructed. This proxy is not limited to intervals of time or locations in which carbonate (e.g., in the form of foraminifera) is preserved, and potentially extends throughout much of the Phanerozoic. However, as yet it is unknown how far back in geologic time the marine archaea that produce these lipids extend. Recently, Kuypers et al. (2001) suggested the major radiation of this group occurred in association with Cretaceous OAE 1b (~112 Ma). Values of G13C for archaeal isoprenoids throughout the OAE were ~ −18‰, which is 3‰ heavier than observed in contemporary oceans. This is consistent with the increased burial of organic matter in marine sediments during the OAE, which would drive the G13C of oceanic DIC to heavier values. Significantly, the G13C value of total buried organic carbon (TOC) in these sediments also increased from values of ~ −25‰ to ~ −20‰ over the duration of the OAE. Kuypers et al. (2001) argue that deposition of isotopically-heavy archaeal biomass accounts for this change, and that up to 80% of the TOC in these sediments is derived from the biomass of archaea.
248
Brocks & Pearson
Thus, the warm, stratified OAE conditions may have been the trigger that permitted the radiation of archaea throughout the world ocean (Kuypers et al. 2001). However, it is possible that in select cases the record of marine archaeal lipids may be extended farther back in time. Peckmann and Thiel (2004) recently reviewed data for fossilized CH4 seeps extending back to the late Jurassic. C40:0 and C40:1 archaeal isoprenoids were found in the oldest samples (Peckmann et al. 1999), suggesting that the marine crenarchaeota could predate the Cretaceous, although they may have been confined to sedimentary rather than pelagic origins. Regular acylic isoprenoids with 25 carbon atoms even date back to the 1,640 Ma Barney Creek Formation in northern Australia, and they are likely derived from unspecific Archaea (Summons et al. 1988b). However, crenarchaeol 15, the cyclohexane ring-containing diagnostic compound for marine pelagic archaea, has not been found prior to the Cretaceous.
Orphan biomarkers and unknown pathways Hopanes, formerly orphans. More than one thousand billion tons of hopanes 6 are stored in sedimentary rocks and oil reservoirs, a mass that is almost as high as the combined mass of carbon in all living organisms (Ourisson 1994). Although hopanes are among the most abundant organic molecules on Earth, their biological source remained obscure for a long time (Ourisson 1994). A search for the biological origins of these “orphan biomarkers” led to the discovery of their parent compounds, the bacteriohopanepolyols 5 (for an overview see Rohmer et al. 1984). Hopanoids now are recognized as one of the most important and abundant classes of lipids in bacteria, although not all—indeed, not even a majority of—bacteria contain hopanoids. The main function of hopanoids is usually thought to be modification of membrane properties similar to the role of sterols in eukaryotes. The search for the biological origins of hopanoids also led to the discovery of the fundamentally new methylerythritol phosphate (MEP) pathway responsible for the biosynthesis of the C5 isoprenoid building block in bacteria (Rohmer et al. 1993). Pentacyclic terpenoids with the C30 hopane skeleton have also been detected in some plants, but the bacteriohopanepolyols 5, with an extended side chain and 35 carbon atoms, appear to be diagnostic for bacteria. However, below the level of Domain, the taxonomic value of hopanes appears somewhat limited. Hopanoids occur in some, but not all, groups of bacteria and their distribution among these groups does not appear to follow a clear rule (Rohmer et al. 1984). Hopanes that have an additional methyl group at ring-A, however, can be used as taxonomic markers. These products include the 2-methyl and 3-methylhopanoids. The 3E-methylhopanoids 6b appear to be diagnostic for microaerophilic methanotrophs, methylotrophs, and acetic acid bacteria (Zundel and Rohmer 1985; Summons and Jahnke 1992). The values of G13C measured for 3E-methylhopanoids are often strongly depleted in 13C (Jahnke et al. 1999), confirming that aerobic methanotrophs are an important source of these lipids in sedimentary environments where they metabolize 13C-depleted methane. The second class of ring-A methylated hopanoids, the 2-methylhopanepolyols, are believed to be products exclusively of cyanobacteria, and 2D-methylhopanes 6c in ancient sedimentary rocks were, thus, interpreted to be indicators for oxygenic photosynthesis (Summons et al. 1999). The biological origin of the formerly parentless hopanes is solved. However, the sources of many other orphan biomarkers remain mysterious, and their discovery may yield profound insights into unknown biosynthetic pathways or even lead to the discovery of unnoticed organisms. Among these classes of enigmatic and elusive orphans are cheilanthanes and BAQCs. Cheilanthanes. One group of particularly abundant, orphan biomarkers in sedimentary rocks and petroleums of all ages, which is found from the Precambrian (Summons et al. 1988a) to the present (Simoneit et al. 2004), is the cheilanthanes 20 (Aquino Neto et al. 1982). This family of tricyclic terpanes contains homologues having from 19 to at least 45 carbon atoms (Moldowan and Seifert 1983). Natural products bearing the cheilanthane skeleton are
Building the Biomarker Tree of Life
249
known from sponges (Manes et al. 1988; Buchanan et al. 2001), nudibranchs (Miyamoto et al. 1992) and ferns (Khan et al. 1971). However, these organisms do not contribute high mass of organic matter to sediments and they are certainly not the biological sources of the ubiquitous and abundant cheilanthanes.
R
20
cheilanthane R = isoprenyl
Cheilanthanes 20 are particularly interesting for scientists studying the earliest history of life and the evolution of biosynthetic pathways. (Ourisson 1994) recognized that the biosynthesis of membrane lipids based on the cheilanthane skeleton could follow a “primitive” pathway that might have predated the evolution of C40 isoprenoids (e.g., 15) in archaea, bacteriohopanepolyols 5 in bacteria, and sterols (e.g. 3) in eukaryotes. The biosynthesis of the acyclic precursors to cheilanthanes involves, from a chemical point of view, a less complex process than the complicated syntheses required for these other classes of lipids. First, hexaprenol 21 or hexaprene, plausible acyclic precursors of cheilanthanes, are solely constructed of head-to-tail linked C5 isoprene units. The generation of head-to-tail linkages is relatively simple, either chemically (abiotic) or enzymatically. In contrast, the biosynthesis of C40 isoprenoids of archaea requires head-to-head (as in 15) condensation of two C20 units; and squalene (12 without the oxygen atom), the precursor of sterols and hopanoids, requires tail-to-tail condensation (as in 13) of two C15 units. Both of these linkages are more difficult to achieve from a chemical standpoint, and they include enzymatic reactions which are not well understood. Second, the cyclization of hexaprenol to the cheilanthane skeleton follows a chemically favorable stereochemistry that could, in principle, even proceed by simple acid catalysis without the aid of enzymes (Ourisson 1994). Third, in contrast to the synthesis of sterols, the production of cheilanthanes probably follows an anaerobic pathway and could have evolved early in Earth history before the rise of oxygen. These observations led Ourisson to speculate that cheilanthanes might have a very ancient biological origin as membrane lipids. head-to-tail
21
hexaprenol
OH
However, there is also evidence that the biological precursor compounds that eventually degrade to form cheilanthanes do not occur as free membrane lipids. The origin of cheilanthanes may be from the cell walls of eukaryotic algae. Evidence comes from the Late Carboniferous to Early Permian Tasmanite Oil Shale in Tasmania, which contains very high concentrations of cheilanthanes. It also contains abundant, preserved cells of Tasmanites (Simoneit et al. 1986). Laser pyrolysis experiments on the cell walls of Tasmanites (Greenwood et al. 2000), as well as chemical degradation of the kerogen with subsequent determination of the G13C values of the generated lipids (Simoneit et al. 2005) suggests that cheilanthanes are derived directly from the algal cell wall material. However, the data could also be consistent with an independent biological source of cheilanthanes from microorganisms feeding on decaying cells of Tasmanites. Thus, the cheilanthanes will remain orphans until they are detected in living organisms.
250
Brocks & Pearson
BAQCs (Branched Alkanes with Quaternary Carbon). In 1988, Mycke et al. detected a suite of previously unknown molecules in a shale and a massive sulfide from the 1,653 Ma (Page and Sweet 1998) McNamara Group, Mount Isa Basin, Australia. The same set of compounds was also found in a ~2,000 Ma coal from the Zaonezhskaya Formation in Russia. According to gas chromatograms and mass spectra, the molecules appeared to be branched alkanes having exclusively odd numbers of carbon atoms in the range of C17 to C31. Alkanes with the same 100%-odd distribution and identical mass spectra later were discovered in several other Precambrian and Phanerozoic sedimentary rocks and preliminarily (and wrongly) identified as 3,7-dimethylalkanes (for overviews see Brocks and Summons 2004; Greenwood et al. 2004; Kenig et al. 2005). Using a chemically synthesized standard, Kenig et al. (2003) later identified the branched compounds as a homologous series of 5,5-diethylalkanes 22; this group of compounds possesses a quaternary carbon atom (a central carbon with four carbon substituents) and as such they are called BAQCs. Kenig identified a total of 12 different series of BAQCs with one or two quaternary carbon centers, including 2,2-dimethyl- and 3,3,Z3,Z3tetraethylalkanes 23. Each homologous series contains exclusively even or exclusively odd numbers of carbons. Once identified, BAQCS were recognized to occur in many ancient sedimentary rocks, in recent sediments, and even in crustal fluids emanating from a borehole in the sea floor (Kenig et al. 2003, 2005).
22
R
5,5-diethylalkanes
R = n-alkyl
23
3,3,ω3,ω3-tetraethylalkanes
n
BAQCs are orphan biomarkers, and their biological source and the entire biosynthetic pathway leading to their quaternary carbon atoms remains unknown, although they would appear to be produced from acetate, rather than from isoprene. Generally, acyclic biochemicals with quaternary carbon atoms are exceedingly rare in nature. The only notable exceptions appear to be the highly branched isoprenoids from algae of the genus Botryococcus and fatty acid-based toxins found in one species of cyanobacteria (Orjala et al. 1995), although both sources are unlikely precursors to the BAQCs described here. What is the physiology and habitat of the BAQC organisms? Kenig et al. (2003), appraising the absence and presence of BAQCs in different recent and palaecological settings, suggested that the unknown source organisms are non-photosynthetic, thermophilic prokaryotes that oxidize sulfide at benthic redox boundaries. They may use oxygen or nitrate as electron sources, and these BAQC organisms might have inhabited sedimentary environments dating back to at least 2,000 Ma. However, this assessment can not be entirely correct. The 1,653 Ma McNamara Group and ~2,000 Ma Zaonezhskaya Formation, in which the BAQCs were first detected, have both experienced greenschist facies metamorphisms at temperatures above 200 to 250 qC. These temperatures are conclusively inconsistent with the preservation of 100% odd over even carbon number predominances; degradation of the homologous series to include a measurable odd:even carbon number ratio would have occurred. The carbon number ratios of biomarkers are modified during thermal alteration, due to generation of shorter products by thermal cracking. Therefore, the BAQCs must have entered the samples
Building the Biomarker Tree of Life
251
after metamorphism. There is additional evidence that the mysterious BAQC organisms may inhabit rock surfaces and fissures but are not always part of the original environments where the sedimentary rocks were deposited. For instance, in a recent appraisal of Paleoproterozoic rocks from the McArthur Basin in Australia and a Neoproterozoic carbonate from China (J. J. Brocks, unpublished results), BAQCs were detected on surfaces of rock samples but appeared to be absent from the interior. They were particularly abundant in decaying shales containing oxidized sulfides. Thus, it is at least plausible that BAQCs are often derived from organisms inhabiting recent environments, such as rock surfaces, where they might be involved in the aerobic decomposition of sulfide minerals or organic matter.
BUILDING THE BIOMARKER TREE OF LIFE One of the most fascinating aims of geobiology is to reconstruct the co-evolution of life and environment throughout the history of Earth. When did the major metabolic pathways, such as oxygenic photosynthesis and anaerobic and aerobic oxidation of methane, first appear in the geologic record? What were the impacts of these pathways on environmental conditions and on geochemical cycles? How did the associated global change, in turn, affect subsequent biological evolution? Biomarkers extracted from sedimentary rocks have the potential to tie together information about these historical events with the advent of specific microbial metabolisms. Biomarkers can help to detect the activity of sulfide-oxidizing phototrophs, anaerobic methanotrophs, and oxygenic phototrophs, to name only a few examples. However, utilizing these biomarker proxies to understand Earth history is not equivalent to reconstructing the origin of individual microbial species or groups. Such notions of the temporal stability of taxonomic groups are not well defined, and taxonomic lineages (Fig. 1) may be quite incongruent with a time-line of Earth history (Fig. 2) if metabolic pathways can be transferred horizontally between unrelated organisms. What the chemical structures of hydrocarbon biomarkers and their associated carbon isotopic compositions do provide are records of the metabolic pathways of carbon assimilation and of lipid biosynthesis. As such, phylogenetic trees based not on 16S rRNA sequences, but on the amino acid sequences of enzymes critical to the metabolic pathways, may yield a record of the origin and distribution of some of these fundamental processes. Biomarkers extracted from the rock record represent a means to validate any hypotheses resulting from these phylogenetic reconstructions. We must view the traditional 16S rRNAbased tree of life as only one possible template on which to superimpose information about the evolution of biosynthetic capabilities. Therefore, future investigations of the origins of biomarkers in the context of Earth history are likely to include more emphasis on the phylogenetic distribution of the pathways of lipid biosynthesis. This approach has been enabled recently by the revolution in genomic sequencing. Now organic geochemists have the ability to investigate molecular markers not only as found in post-depositional settings that integrate the associated, complex ecosystems, but also within the enzymatic and phylogenetic contexts of their biosynthetic pathways. As such, the “biomarker tree of life” may eventually be constructed and used as a tool in the quest to interpret the record of biomarkers in sedimentary rocks.
A phylogenetic approach to the origin and distribution of biomarkers Early attempts to define the phylogenetic distribution of particular classes of biomarkers relied on the broad survey—or screening—approach. An example is the seminal paper by Rohmer et al. (1984) on the distribution of bacteriohopanepolyols 5 in prokaryotes. In this work, more than 90 bacterial and archaeal taxa were grown in pure culture and their lipids were analyzed for the abundance and diversity of hopanoid products. Several fundamental
252
Brocks & Pearson
conclusions resulted from this study, namely that hopanoids are absent in archaea (then called “archaebacteria”), and that hopanoids are not universally or even systematically distributed among the bacteria. In addition, this work also suggested that obligate anaerobes did not make hopanoids, despite the absence of a requirement for O2 in hopanoid biosynthesis. The only anaerobes shown to make hopanoids (Rohmer et al. 1984; Neunlist et al. 1985; Ourisson et al. 1987) were facultative anaerobes belonging to the purple non-sulfur bacteria (Dproteobacteria). Only more recently have hopanoids been found in additional species growing anaerobically, including anammox planctomycetes (Sinninghe Damsté et al. 2004), Geobacter metallireducens, Geobacter sulfurreducens, and Magnetospirillum magnetotacticum (Fischer et al. 2005; Härtner et al. 2005). Significantly, the Geobacter and Magnetospirillum sp. were initially identified as producers of hopanoids based solely on their genome sequences, which contain genes for a central enzyme in the production of hopanoids, squalene-hopene cyclase (Fischer et al. 2005). This approach suggests that future investigations of the source-specificity of biomarkers will focus on simultaneous characterization both of the lipid products and of the genes that produce them (e.g., Bode et al. 2003; Pearson et al. 2003; Fischer et al. 2005). To extend the application of biomarker analysis to geobiology, it is critical to use a comprehensive genomic, molecular, biochemical, and isotopic approach to understand the distribution of lipids in environmental samples. With this information, more will be learned about the evolutionary and taxonomic roles these lipids can illuminate. In particular, it is only through analysis of the amino acid sequences of lipid biosynthesis genes that questions about the origins of particular biomarkers will be answered. Such information is the key to resolving questions of the antiquity of biosynthetic pathways, vertical inheritance of these genes, and/or evolutionary scrambling via horizontal gene transfer.
ACKNOWLEDGMENTS We thank Sam Burgess, Woody Fischer and Jill Banfield for critical reviews of an earlier version of this manuscript.
REFERENCES Alperin MJ, Reeburgh WS (1985) Inhibition experiments on anaerobic methane oxidation. Appl Environ Microbiol 50:940-945 Anbar AD, Knoll AH (2002) Proterozoic ocean chemistry and evolution: a bioinorganic bridge? Science 297: 1137-1142 Aquino Neto FR, Restle A, Connan J, Albrech P, Ourisson G (1982) Novel tricyclic terpanes (C19,C20) in sediments and petroleums. Tetrahedron Lett 23:2027-2030 Arnold GL, Anbar AD, Barling J, Lyons TW (2004) Molybdenum isotope evidence for widespread anoxia in mid-Proterozoic oceans. Science 304:87-90 Bekker A, Holland HD, Wang P-L, Rumble III D, Stein HJ, Hannah JL, Coetzee LL, Beukes NJ (2004) Dating the rise of atmospheric oxygen. Nature 427:117-120 Bian L (1994) Isotopic biogeochemistry of individual compounds in a modern coastal marine sediment (Kattegat, Denmark and Sweden). PhD Thesis, Indiana University Bian L, Hinrichs K-U, Xie T, Brassell SC, Iversen N, Fossing H, Jørgensen BB, Sylva SP, Hayes JM (2001) Algal and archaeal polyisoprenoids in a recent marine sediment: molecular isotopic evidence for anaerobic oxidation of methane. Geochem Geophy Geosys 2:2000GC000112 Bird CW, Lynch JM, Pirt FJ, Reid WW, Brooks CJW, Middleditch BS (1971) Steroids and squalene in Methylococcus capsulatus grown on methane. Nature 230:473-474 Blumenberg M, Seifert R, Reitner J, Pape T, Michaelis W (2004) Membrane lipid patterns typify distinct anaerobic methanotrophic consortia. PNAS 101:11111-11116
Building the Biomarker Tree of Life
253
Bode HB, Zeggel B, Silakowski B, Wenzel SC, Hans R, Müller R (2003) Steroid biosynthesis in prokaryotes: identification of myxobacterial steroids and cloning of the first bacterial 2,3(S)-oxidosqualene cyclase from the myxobacterium Stigmatella aurantiaca. Molec Microbiol 47:471-481 Boetius A, Ravenschlag k, Schubert CJ, Rickert D, Widdel F, Gieseke A, Amann R, Jørgensen BB, Witte U, Pfannkuche O (2000) A marine microbial consortium apparently mediating anaerobic oxidation of methane. Nature 407:623-626 Bott M, Thauer RK (1989) The active species of “CO2” formed by carbon monoxide dehydrogenase from Peptostreptococcus productus. Z Naturforsch 44c:392-396 Bottinga Y (1969) Calculated fractionation factors for carbon and hydrogen isotope exchange in the system calcite-carbon dioxide-graphite-methane-hydrogen-water vapor. Geochim Cosmochim Acta 33:49-64 Brassell SC, Eglinton G, Marlowe IT, Pflaumann U, Sarnthein M (1986) Molecular stratigraphy: a new tool for climatic assessment. Nature 320:129-133 Brochier C, Philippe H (2002) Phylogeny: a non-hyperthermophilic ancestor for bacteria. Nature 417:244 Brocks JJ, Buick R, Logan GA, Summons RE (2003a) Composition and syngeneity of molecular fossils from the 2.78 - 2.45 billion year old Mount Bruce Supergroup, Pilbara Craton, Western Australia. Geochim Cosmochim Acta 67:4289-4319 Brocks JJ, Buick R, Summons RE, Logan GA (2003b) A reconstruction of Archean biological diversity based on molecular fossils from the 2.78 - 2.45 billion year old Mount Bruce Supergroup, Hamersley Basin, Western Australia. Geochim Cosmochim Acta 67:4321-4335 Brocks JJ, Love GD, Summons RE, Knoll AH, Logan GA, Bowden SA (2005) Biomarker evidence for green and purple sulphur bacteria in a stratified Paleoproterozoic sea. Nature 437:866-870 Brocks JJ, Summons RE (2004) Sedimentary hydrocarbons, biomarkers for early life. In: Treatise on Geochemistry Vol 8, Biogeochemistry. Schlesinger WH (ed) Elsevier - Pergamon, Oxford, p 63-115 Broda E (1977) 2 kinds of lithotrophs missing in nature. Zeitschrift Für Allgemeine Mikrobiologie 17:491493 Buchanan MS, Edser A, King G, Whitmore J, Quinn RJ (2001) Cheilanthane sesterterpenes, protein kinase inhibitors, from a marine sponge of the genus Ircinia. J Natural Products 64:300-303 Canfield DE (1998) A new model for Proterozoic ocean chemistry. Nature 396:450-453 Chappe B, Albrecht P, Michaelis W (1982) Polar lipids of archaebacteria in sediments and petroleums. Science 217:65-66 Chistoserdova L, Jenkins C, Kalyuzhnaya MG, Marx CJ, Lapidus A, Vorholt JA, Staley JT, Lidstrom ME (2004) The enigmatic Planctomycetes may hold a key to the origins of methanogenesis and methylotrophy. Mol Biol Evol 21:1234-1241 Dalsgaard T, Canfield DE, Petersen J, Thamdrup B, Acuna-Gonzalez J (2003) N2 production by the anammox reaction in the anoxic water column of Golfo Dulce, Costa Rica. Nature 422:606-608 Dalsgaard T, Thamdrup B, Canfield DE (2005) Anaerobic ammonium oxidation (anammox) in the marine environment. Res Microbiol 156:457-464 de Leeuw JW, Largeau C (1993) A review of macromolecular organic compounds that comprise living organisms and their role in kerogen, coal and petroleum formation. In: Organic Geochemistry. Engel MH, Macko SA (eds) Plenum Press, New York, p 23-72 De Rosa M, Gambacorta A (1988) The lipids of archaebacteria. Prog Lip Res 27:153-175 DeLong EF (1992) Archaea in coastal marine environments. PNAS 89:5685-5689 DeNiro MJ, Epstein S (1978) Influence of diet on distribution of carbon isotopes in animals. Geochim Cosmochim Acta 42:495-506 Derenne S, Largeau C, Casadevall E, Berkaloff C, Rousseau B (1991) Chemical evidence of kerogen formation in source rocks and oil shales via selective preservation of thin resistant outer walls of microalgae: origin of ultralaminae. Geochim Cosmochim Acta 55:1041-1050 Elvert M, Suess E, Greinert J, Whiticar MJ (2000) Archaea mediating anaerobic methane oxidation in deep-sea sediments at cold seeps of the eastern Aleutian subduction zone. Org Geochem 31:1175-1187 Emrich K, Vogel JC (1970) Carbon isotope fractionation during precipitation of calcium carbonate. Earth Planet Sci Lett 8:363-371 Falkowski PG, Raven JA (1997) Aquatic Photosynthesis. Blackwell Science, Malden, Mass. Farquhar J, Bao H, Thiemens M (2000) Atmospheric influence of Earth’s earliest sulfur cycle. Science 289: 756-758 Fischer WW, Summons RE, Pearson A (2005) Targeted genomic discovery of biosynthetic pathways: anaerobic synthesis of hopanoids by Geobacter sulfurreducens. Geobiology 3(1):33-40 doi: 10.1111/ j.1472-4669.2005.00041.x Freeman KH, Hayes JM, Trendel JM, Albrecht P (1990) Evidence from carbon isotope measurements for diverse origins of sedimentary hydrocarbons. Nature 343:254-256 Fuerst JA, Webb RI (1991) Membrane-bounded nucleoid in the eubacterium Gemmata obscuriglobus. PNAS 88:8184-8188
254
Brocks & Pearson
Fuhrman JA, McCallum K, Davis AA (1992) Novel major archaebacterial group from marine plankton. Nature 356:148-149 Greenwood PF, Arouri KR, George SC (2000) Tricyclic terpenoid composition of Tasmanites kerogen as determined by pyrolysis GC-MS. Geochim Cosmochim Acta 64:1249-1263 Greenwood PF, Arouri KR, Logan GA, Summons RE (2004) Abundance and geochemical significance of C2n dialkylalkanes and highly branched C3n alkanes in diverse Meso- and Neoproterozoic sediments. Orga Geochem 35:331-346 Grice K, Cao C, Love GD, Böttcher ME, Twitchett RJ, Grosjean E, Summons RE, Turgeon SC, Dunning W, Jin Y (2005) Photic zone euxinia during the Permian-Triassic superanoxic event. Science 307:706-709 Grice K, Schouten S, Nissenbaum A, Charrach J, Sinninghe Damsté JS (1998) Isotopically heavy carbon in the C21 to C25 regular isoprenoids in halite-rich deposits from the Sdom Formation, Dead Sea Basin, Israel. Org Geochem 28:349-359 Härtner T, Straub KL, Kannenberg E (2005) Occurrence of hopanoid lipids in anaerobic Geobacter species. Fems Microbiol Lett 243:59-64 Hayes JM (1993) Factors controlling 13C contents of sedimentary organic compounds: principles and evidence. Marine Geol 113:111-125 Hayes JM (2001) Fractionation of carbon and hydrogen isotopes in biosynthetic processes. In: Stable Isotope Geochem 43:225-277 Hayes JM, Freeman KH, Popp BN, Hoham CH (1990) Compound-specific isotopic analyses: a novel tool for reconstruction of ancient biogeochemical processes. Org Geochem 16:1115-1128 Hedges JI, Keil RG (1995) Sedimentary organic matter preservation: an assessment and speculative synthesis. Mar Chem 49:81-115 Hedges JI, Keil RG, Benner R (1997) What happens to terrestrial organic matter in the ocean? Org Geochem 27:195-212 Hinrichs K-U, Hayes JM, Sylva SP, Brewer PG, DeLong EF (1999) Methane-consuming archaebacteria in marine sediments. Nature 398:802-805 Hinrichs K-U, Summons RE, Orphan V, Sylva SP, Hayes JM (2000) Molecular and isotopic analysis of anaerobic methane-oxidising communities in marine sediments. Org Geochem 31:1685-1701 Hoefs MJL, Schouten S, King L, Wakeham SG, de Leeuw JW, Sinninghe Damsté JS (1997) Ether lipids of planktonic archaea in the marine water column. Appl Environ Microbiol 63:3090-3095 Hoehler TM, Alperin MJ, Albert DB, Martens CS (1994) Field and laboratory studies of methane oxidation in an anoxic marine sediment: evidence for a methanogen-sulfate reducer consortium. Global Biogeochem Cycles 8:451-464 Hoehler TM, Alperin MJ, Albert DB, Martens CS (1998) Thermodynamic control on hydrogen concentrations in anoxic sediments. Geochim Cosmochim Acta 62:1745-1756 Holland HD (1994) Early Proterozoic atmospheric change. In: Early life on Earth. Vol 84. Bengtson S (ed) Columbia University Press, New York, p 237-244 Holland HD (2004) The geologic history of seawater. In: Treatise on Geochemistry Vol 6, The Oceans and Marine Geochemistry. Vol 6. Elderfield H (ed) Elsevier - Pergamon, Oxford, p 583-625 Imhoff JF (1995) Taxonomy and physiology of phototrophic purple bacteria and green sulfur bacteria. In: Anoxygenic Photosynthetic Bacteria. Blankenship RE, Madigan MT, Bauer CE (eds) Kluwer Academic Publishers, Dordrecht, p 1-15 Jahnke LL, Summons RE, Hope JM, Des Marais DJ (1999) Carbon isotopic fractionation in lipids from methanotrophic bacteria II: the effects of physiology and environmental parameters on the biosynthesis and isotopic signatures of biomarkers. Geochim Cosmochim Acta 63:79-93 Javaux E, Knoll AH, Walter MR (2001) Morphological and ecological complexity in early eukaryotic ecosystems. Nature 412:66-69 Jenkyns HC, Forster A, Schouten S, Sinninghe Damsté JS (2004) High temperatures in the Late Cretaceous Arctic Ocean. Nature 432:888-892 Kah LC, Lyons TW, Chesley JT (2001) Geochemistry of a 1.2 Ga carbonate-evaporite succession, northern Baffin and Bylot Islands: implications for Mesoproterozoic marine evolution. Precambrian Res 111: 203-234 Kah LC, Lyons TW, Frank TD (2004) Low marine sulphate and protracted oxygenation of the Proterozoic biosphere. Nature 431:834-838 Karner MB, DeLong EF, Karl DM (2001) Archaeal dominance in the mesopelagic zone of the Pacific Ocean. Nature 409:507-510 Kelley DS, Karson JA, Früh-Green GL, Yoerger DR, Shank TM, Butterfield DA, Hayes JM, Schrenk MO, Olson EJ, Proskurowski G, Jakuba M, Bradley A, Larson B, Ludwig K, Glickson D, Buckman K, Bradley AS, Brazelton WJ, Roe K, Elend MJ, Delacour A, Bernasconi SM, Lilley MD, Baross JA, Summons RE, Sylva SP (2005) A serpentinite-hosted ecosystem: the lost city hydrothermal field. Science 307: 1428-1434
Building the Biomarker Tree of Life
255
Kenig F, Simons D-JH, Crich D, Cowen JP, Ventura GT, Rehbein-Khalily T, Brown TC, Anderson KB (2003) Branched aliphatic alkanes with quaternary substituted carbon atoms in modern and ancient geologic samples. PNAS 100:12554-12558 Kenig F, Simons D-JH, Critch D, Cowen JP, Ventura GT, Rehbein-Khalily T (2005) Structure and distribution of branched aliphatic alkanes with quaternary carbon atoms in Cenomanian and Turonian black shales of Pasquia Hills (Saskatchewan, Canada). Org Geochem 36:117-138 Kerger BD, Mancuso CA, Nichols PD, White DC, Langworthy T, Sittig M, Schlesner H, Hirsch P (1988) The budding bacteria, Pirellula and Planctomyces, with atypical 16s ribosomal-RNA and absence of peptidoglycan, show eubacterial phospholipids and uniquely high proportions of long-chain betahydroxy fatty-acids in the lipopolysaccharide Lipid-A. Arch Microbiol 149:255-260 Khan H, Zaman A, Chetty GL, Gupta AS, Dev S (1971) Cheilanthatriol - a new fundamental type in sesterterpenes. Tetrahedron Lett 12:4443-4446 Killops SD, Killops VJ (2005) Introduction to Org Geochem, Second Edition. Blackwell Publishing, Malden, Massachusetts. Knittel K, Losekann T, Boetius A, Kort R, Amann R (2005) Diversity and distribution of methanotrophic archaea at cold seeps. Appl Environ Microbiol 71:467-479 Knoll AH (1992) The early evolution of eukaryotes: a geological perspective. Science 256:622-627 Koga Y, Nishihara M, Morii H, Akagawa-Matsushita M (1993) Ether polar lipids of methanogenic bacteria: structures, comparative aspects, and biosynthesis. Microbiol Rev 57:164-182 Kohl W, Gloe A, Reichenbach H (1983) Steroids from the myxobacterium Nannocystis exedens. J Gen Microbiol 129:1629-1635 Kohnen MEL, Schouten S, Sinninghe Damsté JS, de Leeuw JW, Merrit DA, Hayes JM (1992) Recognition of paleobiochemicals by a combined molecular sulphur and isotope geochemical approach. Science 256: 358-362 König E, Schlesner H, Hirsch P (1984) Cell-wall studies on budding bacteria of the Planctomyces Pasteuria group and on a Prosthecomicrobium sp. Arch Microbiol 138:200-205 Koopmans MP, Schouten S, Kohnen MEL, Sinninghe Damsté JS (1996) Restricted utility of aryl isoprenoids for photic zone anoxia. Geochim Cosmochim Acta 60:4873-4876 Krügel H, Krubasik P, Weber K, Saluz HP, Sandmann G (1999) Functional analysis of genes from Streptomyces griseus involved in the synthesis of isorenieratene, a carotenoid with aromatic end groups, revealed a novel type of carotenoid desaturase. Biochim Biophys Acta 1439:57-64 Kuypers MMM, Blokker P, Erbacher J, Kinkel H, Pancost RD, Schouten S, Sinninghe Damsté JS (2001) Massive expansion of marine archaea during a mid-Cretaceous oceanic anoxic event. Science 293:92-94 Kuypers MMM, Lavik G, Woebken D, Schmid M, Fuchs BM, Amann R, Jørgensen BB, Jetten MSM (2005) Massive nitrogen loss from the Benguela upwelling system through anaerobic ammonium oxidation. PNAS 102:6478-6483 Kuypers MMM, Pancost RD, Sinninghe Damsté JS (1999) A large and abrupt fall in atmospheric CO2 concentration during Cretaceous times. Nature 399:342-345 Leavitt P, Vinebrooke RD, Donald DB, Smol JP, Schindler DW (1997) Past ultraviolet radiation environments in lakes derived from fossil pigments. Nature 388:457-459 Liaaen-Jensen S (1965) Bacterial carotenoids XVIII. Aryl-carotenes from Phaeobium. Acta Chem Scand 19: 1025-1030 Lindsay MR, Webb RI, Strous M, Jetten MS, Butler MK, Forde RJ, Fuerst JA (2001) Cell compartmentalisation in planctomycetes: novel types of structural organisation for the bacterial cell. Arch Microbiol 175:413429 Logan GA, Hayes JM, Hieshima GB, Summons RE (1995) Terminal Proterozoic reorganisation of biogeochemical cycles. Nature 376:53-56 Madigan MT, Martinko JM (2005) Brock Biology of Microorganisms, Eleventh Edition. Prentice Hall, Upper Saddle River, NJ Manes LV, Crews P, Kernan MR, Faulkner DJ, Fronczek FR, Gandour RD (1988) Chemistry and revised structure of suvanine. J Org Chem 53:570-575 Martin W, Rotte C, Hoffmeister M, Theissen U, Gelius-Dietrich G, Ahr S, Henze K (2003) Early cell evolution, eukaryotes, anoxia, sulfide, oxygen, fungi first, and a tree of genomes revisited. IUBMB Life 55:193204 Matthews DE, Hayes JM (1978) Isotope-ratio-monitoring gas chromatography-mass spectrometry. Anal Chem 50:1465-1473 McCaffrey MA, Moldowan JM, Lipton PA, Summons RE, Peters KE, Jeganathan A, Watt DS (1994) Paleoenvironmental implications of novel C30 steranes in Precambrian to Cenozoic age petroleum and bitumen. Geochim Cosmochim Acta 58:529-532
256
Brocks & Pearson
Megonigal JP, Hines ME, Visscher PT (2004) Anaerobic metabolism: linkages to trace gases and aerobic processes. In: Treatise on Geochemistry Vol. 8, Biogeochemistry. Schlesinger WH (ed) ElsevierPergamon, Oxford, p 317-424 Michaelis W, Seifert R, Nauhaus K, Treude T, Thiel V, Blumenberg M, Knittel K, Gieseke A, Peterknecht K, Pape T, Boetius A, Amann R, Jørgensen BB, Widdel F, Peckmann J, Pimenov NV, Gulin MB (2002) Microbial reefs in the Black Sea fueled by anaerobic oxidation of methane. Science 297:1013-1015 Miyamoto T, Sakamoto K, Amano H, Higuchi R, Komori T, Sasaki T (1992) Three new cytotoxic sesterterpenoids, inorolide A, B, and C from the nudibranch Chromodoris inomata. Tetrahedron Lett 33: 5811-5814 Moldowan JM, Dahl JEP, Huizinga BJ, Fago FJ, Hickey LJ, Peakman TM, Taylor DW (1994) The molecular fossil record of oleanane and its relation to angiosperms. Science 265:768-771 Moldowan JM, Seifert WK (1983) Identification of an extended series of tricyclic terpanes in petroleum. Geochim Cosmochim Acta 47:1531-1534 Moldowan JM, Talyzina NM (1998) Biogeochemical evidence for dinoflagellate ancestors in the Early Cambrian. Science 281:1168-1170 Mulder A, van de Graaf AA, Robertson LA, Kuenen JG (1995) Anaerobic ammonium oxidation discovered in a denitrifying fluidized-bed reactor. Fems Microbiol Ecol 16:177-183 Mycke B, Michaelis W, Degens ET (1988) Biomarkers in sedimentary sulfides of Precambrian age. Org Geochem 13:619-625 Neunlist S, Holst O, Rohmer M (1985) Prokaryotic triterpenoids: the hopanoids of the purple non-sulfur bacterium Rhodomicrobium vannielii: an aminotriol and its aminoacyl derivatives, N-tryptophanyl and N-ornithinyl aminotriol. Eur J Biochem 147:561-568 Orjala J, Nagle DG, Hsu VL, Gerwick WH (1995) Antillatoxin - an exceptionally ichthyotoxic cyclic lipopeptide from the tropical cyanobacterium Lyngbya majuscula. J Am Chem Soc 117:8281-8282 Orphan VJ, House CH, Hinrichs KU, McKeegan KD, DeLong EF (2001) Methane-consuming archaea revealed by directly coupled isotopic and phylogenetic analysis. Science 293:484-487 Orphan VJ, House CH, Hinrichs KU, McKeegan KD, DeLong EF (2002) Multiple archaeal groups mediate methane oxidation in anoxic cold seep sediments. PNAS 99:7663-7668 Ourisson G (1994) Biomarkers in the Proterozoic record. In: Early life on Earth. Nobel Symposium Vol. 84. Bengtson S (ed) Columbia University Press, New York, p 259-269 Ourisson G, Rohmer M, Poralla K (1987) Prokaryotic hopanoids and other polyterpenoid sterol surrogates. Ann Rev Microbiol 41:301-333 Page RW, Sweet IP (1998) Geochronology of basin phases in the western Mt Isa Inlier, and correlation with the McArthur Basin. Aust J Earth Sci 45:219-232 Pancost RD, Hopmans EC, Sinninghe Damsté JS (2001) Archaeal lipids in Mediterranean cold seeps: molecular proxies for anaerobic methane oxidation. Geochim Cosmochim Acta 65:1611-1627 Pancost RD, Pressley S, Coleman JM, Benning LG, Mountain BW (2005) Lipid biomolecules in silica sinters: indicators of microbial biodiversity. Environ Microbiol 7:66-77 Pancost RD, Sinninghe Damsté JS, de Lint S, van der Maarel M, Gottschal JC (2000) Biomarker evidence for widespread anaerobic methane oxidation in Mediterranean sediments by a consortium of methanogenic archaea and bacteria. Appl Environ Microbiol 66:1126-1132 Pearson A, Budin M, Brocks JJ (2003) Phylogenetic and biochemical evidence for sterol synthesis in the bacterium Gemmata obscuriglobus. Proc Natl Acad Sci 100:15352–15357 Pearson A, Huang Z, Ingalls AE, Romanek CS, Wiegel J, Freeman KH, Smittenberg RH, Zhang CL (2004) Nonmarine crenarchaeol in Nevada hot springs. Appl Environ Microbiol 70:5229-5237 Pearson A, McNichol AP, Benitez-Nelson BC, Hayes JM, Eglinton TI (2001) Origins of lipid biomarkers in Santa Monica Basin surface sediment: a case study using compound-specific '14C analysis. Geochim Cosmochim Acta 65:3123-3137 Peckmann J, Thiel V (2004) Carbon cycling at ancient methane-seeps. Chem Geol 205:443-467 Peckmann J, Walliser OH, Riegel W, Reitner J (1999) Signatures of hydrocarbon venting Middle Devonian carbonate mound (Hollard Mound) at the Hamar Laghdad (Antiatlas, Morocco). Facies 40:281-296 Peters KE, Walters CC, Moldowan JM (2004) The Biomarker Guide, ed 2. Cambridge University Press Phadwal K (2005) Carotenoid biosynthetic pathways: molecular phylogenies and evolutionary behaviour of crt genes in eubacteria. Gene 345:35-43 Poulton SW, Fralick PW, Canfield DE (2004) The transition to a sulphidic ocean ~1.84 billion years ago. Nature 431:173-177 Powers LA, Werne JP, Johnson TC, Hopmans EC, Sinninghe Damsté JS, Schouten S (2004) Crenarchaeotal membrane lipids in lake sediments: a new paleotemperature proxy for continental paleoclimate reconstruction? Geology 32:613-616 Prahl FG, Wakeham SG (1987) Calibration of unsaturation patterns in long-chain ketone compositions for paleotemperature assessment. Nature 330:367-369
Building the Biomarker Tree of Life
257
Reeburgh WS (1976) Methane consumption in Cariaco Trench waters and sediments. Earth Planet Sci Lett 28:337-344 Repeta DJ, Simpson DJ, Jørgensen BB, Jannasch HW (1989) Evidence for the existence of anoxygenic photosynthesis from the distribution of bacteriochlorophylls in the Black Sea. Nature 342:69-72 Requejo AG, Creaney S, Allan J, Gray NR, Cole KS (1992) Aryl isoprenoids and diaromatic carotenoids in Paleozoic source rocks and oils from the Western Canada and Williston Basins. Org Geochem 19:245264 Richet P, Bottinga Y, Javoy M (1977) Review of hydrogen, carbon, nitrogen, oxygen, sulfur, and chlorine stable isotope fractionation among gaseous molecules. Annu Rev Earth Planet Sci 5:65-110 Rohmer M, Bouvier-Navé P, Ourisson G (1984) Distribution of hopanoid triterpenes in prokaryotes. J Gen Microbiol 130:1137-1150 Rohmer M, Knani M, Simonin P, Sutter B, Sahm H (1993) Isoprenoid biosynthesis in bacteria: a novel pathway for the early steps leading to isopentenyl diphosphate. Biochem J 295:517-524 Rullkötter J (1999) Organic matter: the driving force for early diagenesis. In: Marine Geochemistry. Schulz HD, Zabel M (eds) Springer, Heidelberg, p 129-172 Rye R, Holland HD (1998) Paleosols and the evolution of atmospheric oxygen: a critical review. Am J Sci 298:621-672 Schoell M, McCaffrey AM, Fago FJ, Moldowan JM (1992) Carbon isotopic compositions of 28,30bisnorhopanes and other biological markers in a Monterey crude oil. Geochim Cosmochim Acta 56: 1391-1399 Schouten S, Breteler W, Blokker P, Schogt N, Rijpstra WIC, Grice K, Baas M, Sinninghe Damsté JS (1998a) Biosynthetic effects on the stable carbon isotopic compositions of algal lipids: implications for deciphering the carbon isotopic biomarker record. Geochim Cosmochim Acta 62:1397-1406 Schouten S, Hoefs MJL, Koopmans MP, Bosch HJ, Sinninghe Damsté JS (1998b) Structural characterization, occurrence and fate of archaeal ether-bound acyclic and cyclic biphytanes and corresponding diols in sediments. Org Geochem 29:1305-1319 Schouten S, Hopmans EC, Forster A, van Breugel Y, Kuenen JG, Sinninghe Damsté JS (2003a) Extremely high sea-surface temperatures at low latitudes during the middle Cretaceous as revealed by archaeal membrane lipids. Geology 31:1069-1072 Schouten S, Hopmans EC, Pancost RD, Sinninghe Damsté JS (2000) Widespread occurrence of structurally diverse tetraether membrane lipids: evidence for the ubiquitous presence of low-temperature relatives of hyperthermophiles. PNAS 97:14421-14426 Schouten S, Hopmans EC, Schefuss E, Sinninghe Damsté JS (2002) Distributional variations in marine crenarchaeotal membrane lipids: a new tool for reconstructing ancient sea water temperatures? Earth Planet Sci Lett 204:265-274 Schouten S, Strous M, Kuypers MMM, Rijpstra WIC, Baas M, Schubert CJ, Jetten MSM, Sinninghe Damsté JS (2004) Stable carbon isotopic fractionations associated with inorganic carbon fixation by anaerobic ammonium-oxidizing bacteria. Appl Environ Microbiol 70:3785-3788 Schouten S, Wakeham SG, Hopmans EC, Sinninghe Damsté JS (2003b) Biogeochemical evidence that thermophilic archaea mediate the anaerobic oxidation of methane. Appl Environ Microbiol 69:16801686 Shen Y, Knoll AH, Walter MR (2003) Evidence for low sulphate and anoxia in a mid-Proterozoic marine basin. Nature 423:632-635 Simoneit BRT, Grimalt JO, Hwang TG, Cox RE, Hatcher PG, Nissenbaum A (1986) Cyclic terpenoids of contemporary resinous plant detritus and of fossil woods, ambers and coals. Org Geochem 10:877-889 Simoneit BRT, Lein AY, Peresypkin VI, Osipov GA (2004) Composition and origin of hydrothermal petroleum and associated lipids in the sulfide deposits of the Rainbow field (Mid-Atlantic Ridge at 36°N). Geochim Cosmochim Acta 68:2275-2294 Simoneit BRT, McCaffrey AM, Schoell M (2005) Tasmanian tasmanite: II—compound specific isotope analyses of kerogen oxidation and Raney Ni reduction products. Org Geochem 36:399-404 Sinninghe Damsté JS, de Leeuw JW (1990) Analysis, structure and geochemical significance of organicallybound sulphur in the geosphere: state of the art and future research. Org Geochem 16:1077-1101 Sinninghe Damsté JS, Kenig F, Koopmans MP, Köster J, Schouten S, Hayes JM, De Leeuw JW (1995) Evidence for gammacerane as an indicator of water column stratification. Geochim Cosmochim Acta 59:1895-1900 Sinninghe Damsté JS, Rijpstra WIC, Schouten S, Fuerst JA, Jetten MSM, Strous M (2004) The occurrence of hopanoids in planctomycetes: implications for the sedimentary biomarker record. Org Geochem 35: 561-566 Sinninghe Damsté JS, Strous M, Rijpstra WIC, Hopmans EC, Geenevasen JAJ, van Duin ACT, van Niftrik LA, Jetten MSM (2002) Linearly concatenated cyclobutane lipids form a dense bacterial membrane. Nature 419:708-712
258
Brocks & Pearson
Stackebrandt E, Wehmeyer U, Liesack W (1986) 16s ribosomal-RNA and cell-wall analysis of Gemmata obscuriglobus, a new member of the order Planctomycetales. Fems Microbiol Lett 37:289-292 Strauss G, Fuchs G (1993) Enzymes of a novel autotrophic CO2 fixation pathway in the phototrophic bacterium Chloroflexus aurantiacus, the 3-hydroxypropionate cycle. Eur J Biochem 215:633-643 Strous M, Fuerst JA, Kramer EHM, Logemann S, Muyzer G, van de Pas-Schoonen KT, Webb R, Kuenen JG, Jetten MSM (1999) Missing lithotroph identified as new planctomycete. Nature 400:446-449 Strous M, van Gerven E, Kuenen JG, Jetten M (1997) Effects of aerobic and microaerobic conditions on anaerobic ammonium-oxidizing (Anammox) sludge. Appl Environ Microbiol 63:2446-2448 Summons RE, Brassell SC, Eglinton G, Evans E, Horodyski RJ, Robinson N, Ward DM (1988a) Distinctive hydrocarbon biomarkers from fossiliferous sediments of the Late Proterozoic Walcott Member, Chuar Group, Grand Canyon, Arizona. Geochim Cosmochim Acta 52:2625-2637 Summons RE, Franzmann PD, Nichols PD (1998) Carbon isotopic fractionation associated with methylotrophic methanogenesis. Org Geochem 28:465-475 Summons RE, Jahnke LL (1992) Hopenes and hopanes methylated in ring-A: correlation of the hopanoids from extant methylotrophic bacteria with their fossil analogues. In: Biological Markers in Sediments and Petroleum. Moldowan JM, Albrecht P, Philp RP (eds) Prentice Hall, Englewood Cliffs, New Jersey, p 182-200 Summons RE, Jahnke LL, Hope JM, Logan GA (1999) 2-Methylhopanoids as biomarkers for cyanobacterial oxygenic photosynthesis. Nature 400:554-557 Summons RE, Jahnke LL, Roksandic Z (1994) Carbon isotopic fractionation in lipids from methanotrophic bacteria: relevance for interpretation of the geochemical record of biomarkers. Geochim Cosmochim Acta 58:2853-2863 Summons RE, Powell TG (1986) Chlorobiaceae in Paleozoic seas revealed by biological markers, isotopes and geology. Nature 319:763-765 Summons RE, Powell TG, Boreham CJ (1988b) Petroleum geology and geochemistry of the Middle Proterozoic McArthur Basin, northern Australia: III. Composition of extractable hydrocarbons. Geochim Cosmochim Acta 52:1747-1763 Tegelaar EW, de Leeuw JW, Derenne S, Largeau C (1989) A reappraisal of kerogen formation. Geochim Cosmochim Acta 53:3103-3106 Teske A, Hinrichs KU, Edgcomb V, Gomez AD, Kysela D, Sylva SP, Sogin ML, Jannasch HW (2002) Microbial diversity of hydrothermal sediments in the Guaymas Basin: evidence for anaerobic methanotrophic communities. Appl Environ Microbiol 68:1994-2007 Thiel V, Blumenberg M, Pape T, Seifert R, Michaelis W (2003) Unexpected occurrence of hopanoids at gas seeps in the Black Sea. Org Geochem 34:81-87 Thiel V, Peckmann J, Richnow HH, Luth U, Reitner J, Michaelis W (2001) Molecular signals for anaerobic methane oxidation in Black Sea seep carbonates and a microbial mat. Mar Chem 73:97-112 van de Graaf AA, deBruijn P, Robertson LA, Jetten MSM, Kuenen JG (1997) Metabolic pathway of anaerobic ammonium oxidation on the basis of N-15 studies in a fluidized bed reactor. Microbiol-UK 143:24152421 van der Meer MTJ, Schouten S, van Dongen BE, Rijpstra WIC, Fuchs G, Sinninghe Damsté JS, de Leeuw JW, Ward DM (2001) Biosynthetic controls on the 13C contents of organic components in the photoautotrophic bacterium Chloroflexus aurantiacus. J Biol Chem 276:10971-10976 Van Gemerden H, Mas J (1995) Ecology of phototrophic sulfur bacteria. In: Anoxygenic Photosynthetic Bacteria. Blankenship RE, Madigan MT, Bauer CE (eds) Kluwer Academic Publishers, Dordrecht, p 49-85 van Niftrik LA, Fuerst JA, Sinninghe Damsté JS, Kuenen JG, Jetten MSM, Strous M (2004) The anammoxosome: an intracytoplasmic compartment in anammox bacteria. Fems Microbiol Lett 233:7-13 Volkman JK (2003) Sterols in microorganisms. Appl Microbiol Biotech 60:496-506 Wakeham SG, Lewis CM, Hopmans EC, Schouten S, Sinninghe Damsté JS (2003) Archaea mediate anaerobic oxidation of methane in deep euxinic waters of the Black Sea. Geochim Cosmochim Acta 67:1359-1374 Wuchter C, Schouten S, Boschker HTS, Sinninghe Damsté JS (2003) Bicarbonate uptake by marine Crenarchaeota. Fems Microbiol Lett 219:203-207 Zehnder AJB, Brock TD (1979) Methane formation and methane oxidation by methanogenic bacteria. J Bacteriol 137:420-432 Zhang CL, Pancost RD, Sassen R, Qian Y, Macko SA (2003) Archaeal lipid biomarkers and isotopic evidence of anaerobic methane oxidation associated with gas hydrates in the Gulf of Mexico. Org Geochem 34: 827-836 Zundel M, Rohmer M (1985) Prokaryotic triterpenoids 1. 3-methylhopanoids from Acetobacter sp. and Methylococcus capsulatus. Eur J Biochem 150:23-27
11
Reviews in Mineralogy & Geochemistry Vol. 59, pp. 259-277, 2005 Copyright © Mineralogical Society of America
Population Dynamics Through the Lens of Extreme Environments Rachel J. Whitaker Department of Environmental Science, Policy, and Management, University of California Berkeley Berkeley, California, 94720-3114, U.S.A. [email protected]
Jillian F. Banfield Department of Earth and Planetary Sciences and Department of Environmental Science, Policy, and Management, University of California Berkeley Berkeley, California, 94720-4767, U.S.A. [email protected]
INTRODUCTION Small variations in phenotypic characteristics (the length or shape of a bird’s beak or the color of its plumage, the timing of flowering in plants, the level of resistance to disease) have been used as markers to trace evolutionary processes in macroorganisms since Darwin’s Origin of Species (Darwin 1859). Until recently, microbiologists have had difficulty recognizing evolutionary processes in natural microbial populations because phenotypic characters and adaptations unique to certain populations have been virtually impossible to identify at the individual scale. High-resolution molecular techniques, such as multi-locus sequence analysis and environmental genomics, today provide the means to survey microheterogeneity in natural microbial systems. Already these molecular surveys have uncovered fine-scale patterns of diversity within populations previously thought to be homogeneous (Palenik 1994; Palys et al. 1997; Schleper et al. 1998; Whitaker et al. 2003; Acinas et al. 2004; Papke et al. 2004; Tyson et al. 2004; Venter et al. 2004; Thompson et al. 2005) and are beginning to provide clues to evolutionary mechanisms through which diversity is generated and maintained at this scale. Coming in the wake of studies that assessed microbial diversity through amplification and sequencing of single genes (particularly 16S rRNA) (Pace 1997), high resolution molecular tools have revealed a microbial world that is much more vast and far more complex than anyone had anticipated. How do we make sense of this diversity? What can it tell us about how microbial ecosystems are structured and how they function in their geochemical contexts? Is biodiversity consistently partitioned into species, and are species the most ecologically relevant units of diversity in microbial systems? Can we monitor diversity to determine how changes in environmental conditions shape communities and drive the evolution of new functions? The answers to these questions will in part result from integration of genetic and geological molecular tools to measure evolutionary and environmental dynamics simultaneously. The distribution of genetic variations within and between individuals within populations holds clues to the evolutionary forces through which they develop (Smith 1995). Geomicrobiologists who learn to recognize and interpret patterns of individual level variation within populations and combine them with fine scale measurements of environmental parameters will have 1529-6466/05/0059-0011$05.00
DOI: 10.2138/rmg.2005.59.11
260
Whitaker & Banęeld
the potential to answer fundamental questions about the interaction between geologic and evolutionary dynamics that shape diversity within the microbial world. The following chapter outlines population genetic methods necessary to describe evolutionary processes in natural microbial populations. We begin by describing extreme environments that have become model systems for this type of analysis because their physical and chemical boundaries ensure distinctive, easily recognizable microbial communities. We review the forms of variation between individuals within microbial populations and describe high resolution multilocus sequence typing and population genomic tools that may be used to assess the distribution of this variation in natural microbial communities. We describe the primary evolutionary forces that occur in all natural populations (selection, recombination, and genetic drift) and discuss how these population processes interact to shape population structure. We conclude by describing how, once population structure has been defined, we may identify genetic traits that allow microorganism to adapt to environmental change.
DEFINING A POPULATION – THE LENS OF EXTREME ENVIRONMENTS Many of the initial insights about natural selection and the origins of species were based on phenotypic differences that emerged within island populations (Darwin 1859; Wallace 1870). The observation that differences in specific phenotypic characters (such as the beaks on Darwin’s finches) appeared to suit distinct adaptive lifestyles on isolated islands led to the theory of natural selection. Following a great deal of subsequent work, we now know island population dynamics result from barriers to dispersal which unlink the evolutionary processes in different environments, and allow endemic populations to become specifically adapted to particular local environmental conditions (MacArthur and Wilson 1967). Over evolutionary time, the rate of migration between populations will influence the level of divergence between them. Local adaptation and neutral divergence among populations separated by barriers to dispersal are major drivers of diversification and speciation. Recognizing these barriers to dispersal in microbial communities will greatly improve methods to link local environmental characteristics or perturbations to their evolutionary effects because isolated endemic populations record in their genomes information about the natural history of the environments in which they live. As described above for macroorganisms, barriers to dispersal, should they exist, will greatly affect processes of local adaptation and diversification in microorganisms (Papke and Ward 2004). Until recently, it was widely believed that microorganisms were not affected by limits to dispersal in the manner of macroorganisms because of their small cell size and enormous abundance (Bass Becking 1934; Finlay 2002). Recent work has shown that the inability to recognize difference between populations may have stemmed from the absence of tools adequate to reveal population differences (Whitaker et al. 2003). Extreme environments provide clear-cut examples of microbial communities with the potential for “island” dynamics (Staley and Gosink 1999). While these environments are typically identified as extreme in relation to a human perspective, they host resident organisms well-adapted to life within them. Extreme environments are often easy to recognize because of the steep geochemical gradients that generally occur at their boundaries. Examples of extreme environments that may host island populations of microbes include low temperature ice cores, high temperature geothermal hot springs, deep sea hydrothermal vents, high salinity ponds, and lakes with pH values above 9 or below 3. These sites are often widely separated from each other, reducing dispersal of individuals among them. For example, thermoacidophilic Sulfolobus species thrive in geothermal hot springs at pH 3 and 80 qC (Brock et al. 1972). When temperatures are reduced, Sulfolobus cells freeze and are no longer able to maintain
Population Dynamics in Extreme Environments
261
cytoplasm pH above their highly acidic environment. Acidification of the cytoplasm results in DNA degradation and cells die (Hjort and Bernander 1999). This decreased survival rate outside of geothermal conditions may limit dispersal of these organisms between isolated geothermal regions. Observations of different species in geochemically similar, geographically isolated extreme environments provided the first indication that microbial communities of extreme environments may exhibit interesting island dynamics (Castenholz 1996; Garcia-Pichel et al. 1996). Initially, however, it was difficult to determine the form of these dynamics, because failure to observe a particular microbial species is not proof of its absence). Confirmation that barriers to dispersal can geographically isolate populations of extremophilic microorganisms came with the use of high resolution molecular tools (Whitaker et al. 2003). This work used multilocus sequence typing (MLST) in which multiple genes were amplified and sequenced from 78 isolated strains of the thermoacidophile Sulfolobus islandicus collected from five globally distributed geothermal regions. Population genetic analysis of genetic differentiation among these strains identified five endemic populations from two sites in Kamchatka, Russia, Yellowstone and Lassen National Park in North America and Iceland. Strong correlations between genetic distance and geographic distance suggested that barriers to dispersal, rather than environmental conditions, were responsible for observed genetic differences (Slatkin and Maddison 1989; Whitaker et al. 2003). A subsequent study of thermophilic cyanobacteria inhabiting geothermal hot springs from North America, New Zealand and Japan also showed evidence for isolated populations that were inferred to result from lack of dispersal rather than differences in environmental conditions (Papke et al. 2003). This study showed that genetic differences between populations did not correlate with environmental differences between isolated areas. Isolated populations of microorganisms have been documented in non-extreme environments (Cho and Tiedje 2000; Bell et al. 2005). While we focus here on extreme environments, there may be many other types of environmental islands in which examinations of microbial population dynamics are possible. Focusing on extreme island populations enables identification of fundamental evolutionary processes that may be tested in systems that are less extreme, but may be more difficult to identify.
SOURCES OF GENOMIC VARIATION Evolutionary processes act on variation within populations. Because fine-scale phenotypic differences among individuals are difficult to observe in microorganisms, molecular tools are used as markers to trace evolutionary processes. Molecular tools have identified many different types of DNA sequence variation that occur, from the level of the nucleotide to the structure of the genome. Figure 1 outlines the primary sources of variation uncovered in microbial populations. The simplest to model are single nucleotide polymorphisms (SNPs), which may be a change in nucleotide or the insertion or deletion of a single base. Most SNPs result from rare mutation events (see Sniegowski et al. 2000 for exceptions), and are assumed to occur randomly. These mutations result from errors in DNA replication or through the repair of DNA damage caused by environmental mutagens. The population mutation rate is equal to the mutation rate per individual genome (P) multiplied by the number of individuals (N) in a population. Thus, in natural microbial populations with vast sizes (up to 1012 cells per cm3 in biofilm populations), population mutation rates are extremely high. The effect of a SNP on the phenotype of an individual will vary greatly depending on its location (see Fig. 1A). SNPs may occur within protein encoding gene sequences or in intergenic regions. Insertions or deletions of a single nucleotide within a coding region will result in a frame shift that may dramatically alter the amino acid sequence of the protein. SNPs
262
Whitaker & Banęeld 1
A. Geneome maps
1800001
200001 1
1600001
400001
1400001
600001
1200001
800001
B. Mutation
synonymous
nonsynonymous
A C T T T G A G C T C C A C T T T A A G C T C C Threonine Lycine Serine Serine Threonine Lycine Serine Serine
G C G A C G Alanine Threonine
deletion
C. Recombination
A C T A C T Threonine Threonine
T T
T G A G C T C C T A A C T C C A Lycine Serine Serine Threonine Proline Lycine
G C G C G A Alanine Arginine
recombinant D. Gene content and order insertion deletion transposon rearrangement Figure 1. Forms of variation in microbial genomes. A. Aligned genome maps from two different individuals. B. Differences between the same gene in the first and second genome resulting from single nucleotide polymorphisms (SNPs). On the first line, two SNPs are shown, one changes the amino acid (nonsynonymous) and the other does not (synonymous). On the second line a deletion is shown that causes the second sequence to be out of frame and changes each downstream amino acid in translation. C. Recombination between the two genomes results in three different genotypes. Above the two original types solid and outlined differ from one another by SNPs within their sequence as illustrated in A. Below the recombinant genotypes results from a recombination event in the third gene. D. Differences in gene content results from insertion of a new gene through horizontal gene transfer (striped), or deletion. Differences in gene order result from the insertion of a mobile element (lightning bolt) or a rearrangement.
Population Dynamics in Extreme Environments
263
that change a single base may alter or leave intact the amino acid sequence encoded by a gene (i.e., nonsynonymous and synonymous changes, respectively). Nonsynonymous changes are more likely when the substitution occurs in the first or second position of the codon. Because nonsynonymous changes can modify the structure and/or function of the protein produced, this type of variation may be acted on by natural selection, as described below. SNPs in the third codon position often do not change the amino acid sequence. Synonymous changes are considered essentially neutral. Some SNPs in the third codon position introduce a stop codon (e.g., UAC to UAA), resulting in truncation in the gene product and loss of function. SNPs in intergenic regions may change the regulation of gene expression, and consequently may also alter the phenotype of an individual. Variation in gene content is a major source of variation among individuals in microbial populations. Comparative genomic analyses using full genome sequences of cultured microbial genomes has shown that unique genes may be acquired separately or in groups from divergent lineages through horizontal gene transfer (HGT) (Doolittle 1999). Mechanisms of HGT are unclear, but may be associated with genome integration of self-replicating mobile genetic elements such as viruses, plasmids and transposons. Horizontally transferred genes can be recognized through analysis of molecular signatures, including differences in codon usage and the GC content of the DNA sequence relative to the surrounding chromosome (Lawrence and Ochman 1997), or through identification of anomalous phylogenetic relationships (Nelson and Methé 2005). Horizontally transferred genes have been recognized in ancient evolutionary relationships (Doolittle and Brown 1994). The variable presence of horizontally acquired genes within a single population has most often been observed under extreme selective regimes, such as the transfer of antibiotic resistance among pathogenic bacteria (Groisman and Casadesus 2005). Variation in gene content may also result from gene duplications. Duplications are a significant evolutionary force in large genomes, such as those of animals and plants, because once genes are duplicated, they may diverge from one another to evolve new functions. Gene duplication has also been shown to have adaptive consequences in bacteria (Hendrickson et al. 2002). However, it has recently been suggested that gene duplication does not play a significant role in evolution of microorganisms because they are less accommodating than macroorganisms of additional sequences that are not immediately advantageous (Lynch and Conery 2003). Individual differences in gene content between individuals may also result from gene loss. Genes that confer no function to an organism may be a burden to maintain, and thus may be lost from a lineage. In addition, loss of function under certain conditions may be selectively advantageous to the cell (Zinser and Kolter 2004). Extreme cases of gene loss within microbial lineages are well documented outcomes of the formation of symbiotic associations with other cells (Moran 2003). Selective gene loss has been documented in laboratory cultures maintained under starvation conditions (Finkel and Kolter 1999). The mechanisms of gene excision are poorly understood (Nilsson et al. 2005). The movement of mobile genetic elements within a chromosome may itself be the source of genomic variation among individuals (Kazazian 2004). Genes may become inactivated if mobile elements insert into coding sequences. Alternatively, a mobile element may insert into a regulatory region, leading to inactivation or up-regulation of genes in their vicinity (Saedler et al. 1974; Schneider et al. 2000; Schneider and Lenski 2004). The movement of some genetic elements within the genome has been shown to occur quite rapidly and therefore is thought to be a primary source of variation on relatively short time scales (Allen and Banfield 2005).
264
Whitaker & Banęeld
Variation in gene order among individuals is also a source of population heterogeneity. Genome rearrangements (loss of genome synteny) may involve a few genes or large chromosomal blocks (Arber 2000; Rocap et al. 2003; Brugger K 2004). Again the mechanisms of these rearrangements are not well understood, however integration of mobile elements has been suggested to play a role. Rearrangement of the position of a gene or group of co-regulated genes (operon) within the genome may modify gene (or operon) expression. It may also create new gene combinations, changing the ways that genes are co-regulated. The phenotypic results of genome rearrangements remain unclear.
METHODS FOR IDENTIFYING GENOMIC VARIATION The development of molecular tools to PCR-amplify and sequence single genes directly from the environment was a major breakthrough in the study of microbial ecology and evolution (Olsen et al. 1986; Schmidt et al. 1991). Genes that are highly conserved through the evolutionary history of cellular life (primarily 16S rRNA) have been used to catalog a vast diversity of microorganisms (Pace 1997) and to unveil ancient evolutionary relationships across the tree of life (Woese et al. 1990). However, single conserved genes have limited use for describing population dynamics. Molecular tools based on highly conserved genes miss variation that accumulates over relatively short evolutionary time scales. In addition, the use of a single gene only allows description of gene relationships and precludes the delineation of independently evolving lineages, because genes may evolve at different rates in different lineages and relationships may be complicated by HGT or recombination. Furthermore, single genes only allow specifically targeted patterns of diversity, and are therefore blind to changes occurring elsewhere in the genome that may drive evolutionary processes. Multilocus methods were developed to describe individual level variation among cultured clones (Maiden et al. 1998). In this approach, multiple genetic loci distributed around the genome of a particular species are used as markers for genome dynamics. As described below, MLSTs have been used to uncover some of the basic evolutionary processes through which diversity is generated and maintained at the population scale (Maiden et al. 1998; Spratt et al. 2001; Whitaker et al. 2003; Papke et al. 2004; Hanage et al. 2005; Whitaker et al. 2005). If a large number of isolates can be obtained, this approach has the advantage that extensive sampling of individuals from a targeted population is possible. In addition, the use of multiple markers provides a more accurate picture than may be inferred from a single gene. Still, multiple genetic markers only cover a tiny fraction of the microorganism’s genome and so important evolutionary processes may be missed. In addition, most MLST methods depend upon the ability to culture organisms, and so they can only be applied to a small minority of microbial species. Until very recently, the full genome sequence of microorganisms was only available from strains of microorganisms that were isolated and grown in the laboratory. While divergent isolate genome sequences provide insights into metabolic function and ancient relationships among lineages, they say nothing about individual-level variation. A much more comprehensive genome view of individual-level variation in microorganisms finally was possible with the advent of genomic sequencing of environmental samples (Tyson et al. 2004; Venter et al. 2004). As illustrated in Figure 2, DNA from the entire microbial community is isolated directly from a natural sample, fragmented, cloned, and sequenced. Sequences are assembled into contiguous fragments (contigs) by tiling overlapping fragments based on sequence similarity. Contigs may be linked to form larger fragments (scaffolds) using paired ends of sequencing reads. Due to the vast number of cells in the samples of communities used for library construction, each cloned sequence fragment in a genomic library is likely to be from a different individual cell. Therefore, these approaches provide genome-wide information
Population Dynamics in Extreme Environments
265
about individual-level variation in gene sequence, content and order, as well as the position of inserted mobile elements and horizontally transferred genes. Identifying variation within microbial populations using environmental genomics requires repeated sampling of the same genomic region of individuals from the same species. Models of random sampling of shotgun libraries predict that an average of at least six times (6u) sampling redundancy of any particular locus is required for >95% genomic coverage (Lander and Waterman 1988). Figure 3 relates species abundance, sequencing effort, and genome coverage for a community of microorganisms. As shown, a sequencing budget in the range of 100 Mbp should allow analysis of population dynamics for the more abundant species of any community or for the majority of species in relatively simple communities (i.e., those with few members). In highly diverse populations, population variability in target species may be assessed though directed approaches that screen for clones from certain organism types before sequencing (Stein et al. 1996; Handelsman et al. 1998; Henne et al. 1999; Beja et al. 2000; Rondon et al. 2000; DeLong 2002; Hallam et al. 2003; Brady et al. 2004; Handelsman 2004; Riesenfeld et al. 2004; Daniel 2005; DeLong 2005; Schleper et al. 2005). In addition, variation in specific genome regions of interest may be identified by combining environmental genomics with targeted PCR amplification and gene sequencing.
BASIC POPULATION PARAMETERS: SELECTION, RECOMBINATION AND GENETIC DRIFT We have described how to define microbial populations and recognize fine-scale patterns of variation within them. The patterns of individual-level variation observed in a population (through the methods described above) result from the dynamic interaction of evolutionary
Collect sample of microbial community
Extract genomic DNA
Fragment DNA
Clone into vector and transform E.coli
Sequence random clones Assemble sequenes
Figure 2. Methods for environmental genomics. Microbial cells are sampled from the environment. DNA extraction results in a mixture of genomes in proportion to their representation in the sample if there is no bias in DNA extraction between species. DNA is fragmented using restriction digests or by sheering in to fragments that are approximately the same size. Each fragment is inserted into a vector to make a clone library. Each species representation in the clone library should be proportional to their representation in the extracted DNA if there is no cloning bias. A random sample from the clone library is then sequenced in two directions. Resulting paired-end sequences are then assembled using assembly software.
266
Whitaker & Banęeld
A. 20
abundance 15
10
B. 5
C.
0 1
Species rank
19 22 25 28 31 34 37 40 43 46 49 52 55 58
fraction genome of each species sampled
16
10X
13
2.5X
7 10
100%
Average depth of coverage
4
93%
40%
13%
1%
61 64
Figure 3. A. Rank abundance curve showing the relative distribution of different species in a model community. Proportion of the library with sequence from each species relates to both its relative abundance in the community and its genome size relative to all other community members. B. The average depth of coverage for each species from the model community, assuming every species has same genome size of 2Mb and a total of 100 Mbp were sequenced from the library and that there is no bias in cloning from different species. Thick bars represent consensus sequence. Thin bars represent individual sequences. Connections between thin bars represent paired end sequences from the same clone. C. The proportion of the genome of each species that is sequenced estimated as 1-(e−C) where C is the estimated coverage of each species genome and e−C is an estimate of the proportion of the genome that will not be sampled given a Poisson distribution for sampling each base in the genome.
forces, including selection, recombination and neutral genetic drift. We describe each of these forces, and then discuss how they interact to structure diversity in natural populations. One of the primary forces that shape populations is natural selection. There are many different types of natural selection which act to fix or preserve variation within a population. For example, when a mutation confers a selective advantage, that mutation will be selected for across generations and in time may become fixed (i.e., variation is removed) in the population through positive selection. Alternatively, when mutations are deleterious, purifying selection (i.e., selection against individuals with a harmful mutation) will generally remove it from the population. Natural selection may also preserve diversity within a population by favoring multiple variants in a process referred to as diversifying selection (Kreitman and Hudson 1991). The relative intensity of selection for different mutations or genome changes will vary. The relative importance of selection as an evolutionary force has been the subject of great debate in evolutionary literature (Nei 2005). Another important evolutionary force in natural populations is the redistribution of genetic variation among individuals. This occurs through transfer of DNA between cells and its incorporation into the recipient chromosome via recombination. In most microorganisms, these processes are not linked to reproduction as they are in sexually reproducing eukaryotes. Instead, genes are transferred between individuals though transduction (i.e., by viruses), transformation (i.e., direct uptake of DNA from the environment), or conjugation (i.e., unidirectional transfer of chromosomes between individuals). The processes of gene transfer and recombination lead to greater variation in individual fitness within a population, because
Population Dynamics in Extreme Environments
267
both beneficial and deleterious mutations are continually re-sorted into new combinations (Burt 2000; Goddard et al. 2005). Genetic drift is an evolutionary process in which gene frequencies change at random from one generation to the next (Fisher 1930; Kimura 1983). These random deviations generally have a greater effect on small populations than on large ones. Genetic drift may result in the fixation or removal of mutations from a population without any selection, and is therefore considered a neutral force. Variation introduced into a population may be fixed or removed by selection or random genetic drift and it can be redistributed between individuals through recombination. However, these forces do not act in isolation. Instead, the interaction among evolutionary forces influences the overall structure of diversity within a population. There is a substantial body of work in theoretical population biology and experimental evolutionary biology that predicts the characteristic footprints that each of these evolutionary processes leave in the patterns of sequence variation (Li 1997; Souza et al. 2002). Based on this work, it is possible to interpret historic evolutionary processes from the distribution of variation among individuals in a population.
SHAPING POPULATION STRUCTURE THROUGH SELECTION AND RECOMBINATION The structure of diversity within a population (e.g., the extent of genome-level heterogeneity, its distribution among individuals within the population, and the abundance distribution of the genotypes) represents the outcome of interactions among several evolutionary forces. Conversely, after identifying the structure of a microbial population, we can infer the combination of forces that created it. One of the primary interactions that defines microbial population structure is the balance between selection and recombination. We begin a discussion of the interaction between recombination and selection by considering extremes of population structure (also see Fig. 4): (i) a clonal structure, resulting from natural selection in populations where recombination events are rare, and (ii) a recombinant structure, in which recombination occurs fast enough to widely distribute genetic variation prior to selection events. (i) When all genes in the genome are physically linked to one another, natural selection that effects one position must affect the entire genome. As clonal populations evolve in natural environments, the linked fate (linkage) of genes across the genome results in a dynamic process known as periodic selection. This process begins when a single individual randomly acquires an adaptive mutation that increases its fitness (i.e., its survival and rate of asexual reproduction relative to other individuals in the population). The faster reproduction of this individual clone relative to other individuals within a population results in an increase in the overall frequency of its genotype (clonal expansion). Eventually, if the adaptive mutation confers a great enough advantage, this single adaptive genotype may outcompete all other types in the population and become fixed. Replacement of all individuals in a population by a single genotype periodically purges all variation from the population and is known a selective sweep. After a selective sweep, individuals in the population will diversify as they acquire random neutral genetic mutations until the next adaptive mutation is introduced, resulting in another genome-wide selection event. Population structures of some bacteria show evidence of periodic selection events that purge genetic diversity (Majewski and Cohan 1999; Palys et al. 2000; Feil et al. 2003). This process has also been documented in experimental populations of E. coli, at least during the initial period of adaptation (Levin 1981; Lenski and Travisano 1994). Cohan predicts
268
Whitaker & Banęeld C. Diversity over time in clonal and recombining populations Number of genotypes
A. Periodic selection purges diversity in a clonal population
Time Time
Number of genotypes
B. Neutral genome diversity is resistant to purging in a recombining population
Time
Time
Figure 4. Comparing clonal and recombining populations. A simplified model showing the difference in diversity (number of genome types) for two populations that differ only in recombination rate. A. Shows a clonal population structure which begins with a single clone represented here by a single black circle. Over time, this clone acquires random neutral mutations (solid arrows) at different positions shown by small white spots. When a selection event occurs (grey rectangle) only the individual with the mutation at approximately seven o’clock position in the genome can survive and the population is purged of diversity. This clone will begin the process of neutral divergence again at the beginning. B. Shows a recombining population structure. Between mutation events recombination distributes mutations among individuals to create new genotypes (dashed arrows). This processes results in an increases the total number of genotypes in the population. Here again there is a selection event (for the same adaptive mutation) however, because this mutation has been distributed between individuals through recombination three different genotypes survive. This shows that in recombining populations some of the diversity that has accumulated is preserved. In this model three clones are left after the selection event to diversify through mutation and recombination. C. Illustrates the difference in diversity estimated as number of different genotypes in a clonal (top) and recombining (bottom) population over time. As above all other population parameters; mutation rate, population size and the type and frequency of selection are the same between populations.
diversification between clonal populations will lead to the development of ecological species (ecotypes) in which each clonal population is specifically adapted to a unique environmental niche (Cohan 1994; Cohan 2002). In this model of ecological speciation, ecotypes are defined as populations that are genetically cohesive (cohesion is the result of periodic selection events that purge diversity) and ecologically distinct (Gevers et al. 2005). (ii) Recombination disrupts the physical linkage between regions of the genome, and thus reduces the ability of selection events to purge diversity from the population (see Fig. 4). This occurs because gene variants are distributed among individuals such that selection for a gene that confers an adaptive advantage increases the frequency of that gene in the population without affecting the frequency of unlinked regions of the genome. Recombination is a cohesive force because a beneficial adaptation can be spread throughout the population, restricting the divergence of the lineage in which the gene arose. Conversely, barriers to recombination allow species divergence. The rise of independent lineages as the result of barriers to recombination is analogous to the biological speciation in sexual eukaryotes.
Population Dynamics in Extreme Environments
269
Evidence for recombination among members of archaeal populations was first observed through community genomic analysis of a single biofilm growing in extremely metal rich acid mine drainage (Tyson et al. 2004). Tyson et al. reconstructed partial and near complete composite genome sequences for the five dominant organism types in the biofilm community. Each genome sequence was a composite because it was derived from closely related but not identical sequence reads. Population level analyses were possible because sequencing reads can be arrayed against the composite sequence. The authors recognized evidence for recombination in transitions between two types of sequences observed within a single sequence read (see Fig. 5). One recombination event was detected on average every 3–5 Kbp across the entire genome of the archaeal species Ferroplasma type II. Ferroplasma type II is one of two discrete coexisting Ferroplasma lineages that would have been grouped as a single species based on 16S rRNA gene sequence analysis. Despite extensive evidence of recombination within Ferroplasma type I and Ferroplasma type II populations, there was evidence for only very limited recombination between them. The authors suggested that the decrease in recombination rates with increasing genetic divergence might represent a species boundary. It may be inferred that the level of sequence divergence between these populations (on average 77% nucleotide identity) prevents homologous recombination from initiating (Majewski and Cohan 1998). Genome rearrangements and differences in gene content may also create barriers to homologous recombination and lead to sympatric speciation (occurring within a contiguous population) (Vetsigian and Goldenfeld 2005). A second study of archaea cultured from extremely high salinity salterns environments used multilocus sequence analysis of 40 Haloarculum strains to identify evidence for recombination (Papke et al. 2004). This study suggests that the recombination occurs at 5u the rate of mutation in this species. Further analysis revealed that all but one of the recent recombination events observed in this population occurred between individual clones that were closely related (Whitaker et al. 2005). The decrease in extent of genetic exchange with increasing evolutionary distance is a phenomenon that can ultimately result in the formation of biological species, as described above. It should be possible to use genetic information to infer the relative rates of recombination and selection within populations. Figure 4 shows, for example, two cases where selection events occur with the same frequency for two organisms but the organisms differ in their recombination rates. In one population, recombination events are infrequent so that after a selection event genome diversity is purged (a single genome type is observed), where in the second the recombination events are frequent and their effects can accumulate, thus maintaining greater levels of genetic diversity after selection. Multilocus sequence studies of bacteria associated with human and plant disease have revealed a range of population structures from purely clonal to completely recombinant (Suerbaum et al. 1998; Feil et al. 2000; Falush et al. 2001; Feil and Spratt 2001; Suerbaum et al. 2001; Enright et al. 2002; Feil et al. 2003; Sarkar and Guttman 2004). Population structures between the two extremes have evidence for clonal expansion of one clonal type (possibly resulting from natural selection) and recombinant genomes. This is called an epidemic population structure, where a single clone is overrepresented but does not completely overtake the entire population (Smith et al. 1993; Fraser et al. 2005). Multilocus analysis of the thermoacidophilic crenarchaea Sulfolobus islandicus from a geothermal hot spring in Kamchatka, Russia represents the first in-depth analysis of the balance between recombination and selection within a single geographically isolated endemic population (Whitaker et al. 2005). The boundaries of this population were defined prior to this study, facilitating assessment of the interaction between selection and recombination and their relative effects on population structure. Whitaker et al. (2005) showed that recombination is
270
Whitaker & Banęeld A. Environmental Genomics
B. Multilocus Sequence Typing
Clonal Populations Composite sequence Sequence ecotype 1 reads ecotype 2
{
ttatgtctataactgtatatcaaaatttatagttcagagc ........................................ ..a.................c.....t..........a.. ..a.................c.....t..........a.. t ..a.................c.....t..........a..
Assembled sequence fragment Paired end sequences
Genotype 1
Genotype 2
Genotype 3
Genotype 4
{ Recombining Populations
cggcgggggaggacatcttacactcgaattgatataattatataatgc Sequence type 1 ................................................ ...c..g.....................t................... Recombinant Sequence type 2 ...c..g.....................t....a..a...g...g..a ...c..g.....................t....a..a...g...g..a
Composite sequence
{
Sequence reads
Assembled sequence fragment
{
Paired end sequences
Figure 5. Recognizing population structure using environmental genomics or MLST molecular methods. A. Illustrates alignments of sequencing reads to the composite sequence (above) and alignments of paired end sequences (below) in clonal and recombining population structures. Dots indicate nucleotides that are identical to the composite sequence. Letters identify SNPs. Because each sequence comes from a different individual in the population, genotypes are inferred through assembly. Sampling of variation at each position is limited by the amount of coverage in the clone library. B. Illustrates how multilocus sequence analysis can be used to detect recombination in genomes of cultured isolates. Genotypes 1 and 2 show variants at each of the seven genetic markers (represented as black or grey segments). Mosaic combinations of loci resulting from recombination between Genotypes 1 and 2 are shown below (Genotypes 3 and 4).
three to six times as frequent as mutation within this single hot spring community. This study also identified evidence for natural selection in one of the six protein-encoding genes analyzed, indicating that recombination was rapid enough to allow genetic loci to evolve independently. In addition, this population was shown to have an epidemic population structure in which clonal expansions increased the frequency of a single clone but did not completely purge diversity. The Tyson et al. (2004) environmental genomics study demonstrated that environmental genomics analysis will allow simultaneous sampling of multiple populations within the same sample and comparison of population dynamics among them. Notably, significant differences in population dynamics were inferred for bacterial and archaeal groups in the biofilm through methods described in Figure 5A. A very low incidence of nucleotide polymorphisms was seen in the Leptospirillum group II population, suggesting a near clonal structure that may have resulted from a recent selective sweep or from a decrease in diversity following a founding event by a single clone (Tyson et al. 2004). By comparison, the genomic heterogeneity of the Ferroplasma type II population indicated that it had not recently experienced a genome-wide selective sweep. The higher diversity in this population may have resulted from frequent recombination limiting the purging effects of negative selection or from a rarity of adaptive mutations or selection events leading to dominance by a single genotype. Above we introduced two extremes of population structures that are clonal and recombinant. We discussed three extreme island-like environments in which population dynamics have been described (high salt, high temperature, high acidity) and in which the archaeal recombination rates are rapid compared to selection rates. However, in the case of the acid mine drainage biofilm, the bacteria exhibit an apparently clonal population structure,
Population Dynamics in Extreme Environments
271
suggesting lower recombination rates relative to selection. It remains to be seen whether high relative recombination rates are a more common characteristic of archaeal than bacterial populations in extreme environments. Identifying the structure of a population is essential to understanding how diversity is shaped by environmental change. Below we will describe how defining a population also determines the methods that may be used to identify specific traits that are under natural selection in natural microbial systems.
IDENTIFYING ADAPTIVE TRAITS There are innumerable examples that illustrate how microbial communities are shaped by, and shape their environments (for example see Kappler and Straub 2005). However, much remains to be learned about the interplay between the environment and natural selection on microbial populations at the genome level. This is because until the advent of environmental genomics, we lacked the ability to correlate subtly different genotypes and phenotypes to the microenvironments to which they are adapted. Genomic characterization of microbial communities allows for the comprehensive identification of genetic traits that lead to differential adaptations within and among lineages. With enough genome coverage and population genomics tools, it may be possible to discern the environmental parameters that exert key selective pressures. For example, consider one clonal type found in a geothermally heated stream at 45 qC and a second found only above 65 qC (Miller and Castenholz 2000). Population genomics will lead to identification of the genetic differences that result in their niche specificity. The availability of genome sequences also enables the development of methods to evaluate gene expression, an approach that may help identify traits important for adaptation to specific conditions. For example, relative levels of expression can be monitored using microarrays that specifically bind mRNAs predicted from gene sequence information (Nelson and Methé 2005). In addition, proteomics on environmental samples can be used to identify the more abundant proteins in a culture or natural sample. For example, Ram et al. (2005) assessed the protein composition from an acid mine drainage biofilm sample. Similar proteomics experiments could also provide some information about relative protein abundance between samples. Prior microarry and proteomic studies have used genome sequences from isolated organisms. The availability of new data that capture gene sequence heterogeneity within populations will allow expression analyses with resolution to the strain level. The combination of genomic and gene expression analysis methods may provide an unprecedented opportunity to link the effects of natural selection to environmental dynamics within microbial communities. Below, we discuss how the environmental genomics data itself can be used to identify traits that are under selective pressure by exploring individual-level variation across the genomes of a population.
Recognizing genes under selection in recombining populations Many methods have been developed for identifying genes under selection in sexual eukaryotes (Bamshad and Wooding 2003). The application of these tools to recombinant microbial populations is appropriate because recombinant microbial populations lack the extensive hitchhiking (physical linkage of genes, thus shared fate) that is a characteristic of clonal populations. One pattern within environmental genomic data that may be used to identify genes under positive selection relies on the assumption that positive selection in recombining populations may result in relatively low levels of neutral diversity relative to the rest of the genome. Purging of neutral diversity from regions of the genome subject to positive selection is analgous to the purging of diversity in clonal populations through selective sweeps. However, because the population is recombinant, selective forces act upon the gene rather than the genome. As
272
Whitaker & Banęeld
shown in Figure 4, adaptive genes at a single genome position become fixed in a population while the other regions are left variable. Large regions of low variation were found in the genomes of two Ferroplasma species identified within the acid mine drainage community (Tyson et al. 2004). Identification of the function of genes within invariant regions will lead to determining genes that are under positive selection in this environment. Comparisons of invariant regions among samples collected across space and time may provide insight into ecologically relevant adaptations to specific environmental conditions. Where genes vary between individuals within a recombinant population, comparison of the relative proportion of nonsynonymous and synonymous substitutions among gene variants may identify the action of natural selection. As described above, nonsynonymous substitutions that change the amino acid sequence of a protein may result in a phenotypic change. If there were no natural selection, the relative frequency of nonsynonymous substitutions per nonsynonymous site (Ka) to synonymous substitutions per synonymous site (Ks) will be equal. A skew toward a higher relative frequency of synonymous substitutions suggests that nonsynonymous mutations are quickly removed because they are deleterious (negative selection). On the other hand, a higher relative frequency of nonsynonymous substitutions observed among gene variants in a population suggests that amino acid changes are beneficial (positive selection). Estimating the Ka/Ks ratio for different variable genes across the genome can be used to identify loci that are under positive and negative selection (McDonald and Kreitman 1991). Using codon-based methods for determining relative rates of nonsynonymous and synonymous substitutions (Yang 1997) Beilawski et al. identified specific residues responsible for differential light adaptation in proteorhodopsin genes recovered across light gradients in the ocean environment (Bielawski et al. 2004). Testing for genes under positive or diversifying selection across the genome without a priori assumptions of where they occur can uncover unexpected adaptive responses to different environmental conditions.
Recognizing genes under selection in clonal populations Identifying specific genes under selection in populations with a clonal structure is difficult, because the action of selection on different genome regions cannot be isolated in a linked genome. However, if the presence of a novel gene acquired through HGT or the position of a mobile element confers a selective advantage, it may be recognized through careful assembly and comparative genomic analyses between clonal types. In community genomic data, the conserved location of mobile elements or novel genes within a single clonal type indicates an adaptive function. Differential position between individuals within a clonal population indicates that they move within a genome faster than they can be selected for or that they are essentially neutral. Recognizing of differences in gene content or position is also possible using similar methods in recombinant populations. For example, comparisons between syntenous genomic regions of the Ferroplasma type I populations from the acid mine drainage community and the near complete genome sequence of a Ferroplasma type I strain isolated from the same environment revealed differences in the position of mobile elements and differential insertion of novel genes (Allen and Banfield 2005 Figure 2). If the differential position of a mobile element is identified within an assembled genome sequence, its adaptive function may be inferred by examining the function of genes in its vicinity. For example, insertion of a novel gene into a recognizable regulatory element may suggest that modified expression confers adaptive function (Schneider and Lenski 2004). Similarly, if mobile elements are inserted within a gene, this suggests that loss of a particular function confers some advantage (Zinser et al. 2003). If the function of the genes around mobile elements is known, this allows a connection between the position of element and the adaptive trait (Cooper et al. 2001).
Population Dynamics in Extreme Environments
273
Likewise, the adaptive significance of novel genes acquired through horizontal gene transfer may be inferred if their function is known. One challenge with such analyses to date is that the functions of many of the inserted genes are unknown. Without known function, it is difficult to determine the adaptive significance or even whether novel genes are expressed. Ram et al. (2005) presented an interesting approach to resolving this challenge using the detection of protein products (via mass spectrometry) in a natural biofilm community. The authors noted that protein products of novel, hypothetical genes were detected less commonly than those of genes for which a probable function could be ascribed. In addition, detection rates were especially low for genes encoded in blocks of putative phage or plasmid origin that were apparently inserted into the genome of a bacterial species of the Leptospirillum genera. Because proteins must be expressed to confer a function, this approach may be used to determine the adaptive importance of novel genes. This approach may further be used to determine the levels of expression of genes in different populations through comparative proteomics.
CONCLUSION: INTEGRATING GENETIC AND GEOCHEMICAL MOLECULAR TOOLS The focus of this chapter has been the relatively unexplored subject of microbial population dynamics. Because the topic is new, there is only a small literature to review. Consequently, we have emphasized tools and approaches that could be applied as data become available. We have described forms of variation, methods to assess them, and what their patterns can tell us about microbial evolution. At the beginning of this chapter, we asked a series of questions concerning how best to describe diversity within microbial populations. While we have described the tools needed to resolve these fundamental challenges, we have left these questions unanswered. For example, we asked whether biodiversity is partitioned into definable species and whether species are even the most ecologically relevant units of diversity in microbial systems. It is our view that both the genetic characteristics that unite groups and the processes that subdivide them into divergent phenotypes are best evaluated through population genomic analyses. With such information in hand, we may be better positioned to establish meaningful delineations between species and to understand mechanisms of diversification and lineage cohesion in microorganisms. As the field develops, two additional steps will be necessary. The first is the use of these methods to sample populations over time and across space. Each analysis described here represents a single snapshot in the natural history of a population. These snapshots allow develop-ment of hypotheses about mechanisms generating diversity (e.g., through rapid recombination, through selection for a certain genetic trait) that can be tested through comparisons between samples collected across time and space. For example, if an inserted mobile element is hypothesized to up-regulate genes important in metal resistance, sampling strategies designed to target multiple populations with different levels of metal contaminants might reveal the loss of this adaptation. Especially exciting are comparisons among geographically isolated endemic populations adapted to distinct local environments. Comparative population dynamics among isolated populations of similar microbes will shed light on their unique natural history and provide a means by which to correlate evolutionary and geological dynamics. The second step is to place microbial communities into a well-defined geochemical context. Characterizations of the geochemical gradients in time and space along which populations evolve will provide an essential basis for linking specific adaptations to environmental change. It is our hope that the methods described here, in combination with molecular tools to simultaneously characterize the organic and inorganic structure
274
Whitaker & Banęeld
of microbial communities (Gilbert et al. 2005), set the stage for this development. We urge geomicrobiologists to embrace all of these new molecular-level methods to explore population dynamics. With these tools, we can begin to unravel the intimate links between microorganisms and their environment and how geochemical changes drive microbial evolution.
ACKNOWLEDGMENTS We thank Javiera Cervini-Silva, Chris Belnap, K. Blake Suttle and Stephen M. Wald for helpful reviews and the National Science Foundation Biocomplexity Program, the NASA Astrobiology Institute, and the Department of Energy Microbial Genome Program and Genomics: Genomes to Life programs for support of research and development of ideas presented in this chapter.
REFERENCES Acinas SG, Klepac-Ceraj V, Hunt DE, Pharino C, Ceraj I, Distel DL, Polz MF (2004) Fine-scale phylogenetic architecture of a complex bacterial community. Nature 430:551-554 Allen EE, Banfield JF (2005) Community genomics in microbial ecology and evolution. Nat Rev Microbiol 3:489-98 Arber W (2000) Genetic variation: molecular mechanisms and impact on microbial evolution. FEMS Microbiol Rev 24:1-7 Bamshad M, Wooding SP (2003) Signatures of natural selection in the human genome. Nat Rev Genet 4: 99-111 Bass Becking LGM (1934) Geobiologie of Inleiding Tot de Milieukunde. The Hague, Van Stockum & Zoon Beja O, Aravind L, Koonin EV, Suzuki MT, Hadd A, Nguyen LP, Jovanovich SB, Gates CM, Feldman RA, Spudich JL, Spudich EN, DeLong EF (2000) Bacterial rhodopsin: evidence for a new type of phototrophy in the sea. Science 289:1902-1906 Bell T, Ager D, Song J-I, Newman JA, Thompson IP, Lilley AK, van der Gast CJ (2005) Larger islands house more bacterial taxa. Science 308:1884 Bielawski JP, Dunn KA, Sabehi G, Beja O (2004) Darwinian adaptation of proteorhodopsin to different light intensities in the marine environment. Proc Natl Acad Sci USA 101:14824-14829 Brady SF, Chao CJ, Clardy J (2004) Long-chain N-acyltyrosine synthases from environmental DNA. Appl Environ Microbiol 70:6865-6870 Brock T, Brock K, Belly R, Weiss R (1972) Sulfolobus: a new genus of sulfur-oxidizing bacteria living at low pH and high temperature. Archiv fur Mikrobiologie 84:54-68 Brugger K TE, Redder P, Chen L, Garrett RA (2004) Shuffling of Sulfolobus genomes by autonomous and non-autonomous mobile elements. Biochem Soc Trans 32:179-183 Burt A (2000) Perspective: sex, recombination, and the efficacy of selection--was Weismann right? Evolution Int J Org Evolution 54:337-351 Castenholz RW (1996) Endemism and biodiversity of thermophilic cyanobacteria. Nova Hedwigia 112:33-47 Cho J-C, Tiedje JM (2000) Biogeography and Degree of Endemicity of Fluorescent Pseudomonas Strains in Soil. Appl Environ Microbiol 66:5448-5456 Cohan FM (2002) What Are Bacterial Species? Annu Rev Microbiol 56:457-487 Cohan FM (1994) The effects of rare but promiscuous genetic exchange on evolutionary divergence in prokaryotes. American Naturalist 143:965-986 Cooper VS, Schneider D, Blot M, Lenski RE (2001) Mechanisms causing rapid and parallel losses of ribose catabolism in evolving populations of Escherichia coli B. JBacteriol 183:2834-2841 Daniel R (2005) The metagenomics of soil. Nat Rev Microbiol 3:470-478 Darwin C (1859) On the Origin of Species. London, W.Clowes and Sons DeLong EF (2005) Microbial community genomics in the ocean. Nat Rev Microbiol 3:459-469 DeLong EF (2002) Microbial population genomics and ecology. Curr Opin Microbiol 5:520-524 Doolittle WF (1999) Phylogenetic classification and the universal tree. Science 284:2124-2128. Doolittle WF, Brown JR (1994) Tempo, mode the progenote and the universal root. Proc Natl Acad Sci USA 91:6721-6728
Population Dynamics in Extreme Environments
275
Enright MC, Robinson DA, Randle G, Feil EJ, Grundmann H, Spratt BG (2002) The evolutionary history of methicillin-resistant Staphylococcus aureus (MRSA). Proc Natl Acad Sci USA 99:7687-7692 Falush D, Kraft C, Taylor NS, Correa P, Foz JG, Achtman M, Suerbaum S (2001) Recombination and mutation during long-term gastric colonization by Helicobacter pylori: estimates of clock rates, recombination size, and minimal age. Proc Natl Acad Sci USA 98:15056-15061 Feil EJ, Cooper JE, Grundmann H, Robinson DA, Enright MC, Berendt T, Peacock SJ, Smith JM, Murphy M, Spratt BG, Moore CE, Day NPJ (2003) How Clonal is Staphylococcus aureus? J Bacteriol 185:33073316 Feil EJ, Smith JM, Enright MC, Spratt BG (2000) Estimating recombinational parameters in Streptococcus pneumoniae from multilocus sequence typing data. Genetics 154:1439-1450 Feil EJ, Spratt BG (2001) Recombination and the population structures of bacterial pathogens. Annu Rev Microbiol 55:561-590 Finkel SE, Kolter R (1999) Evolution of microbial diversity during prolonged starvation. Proc Natl Acad Sci USA 96:4023-4027 Finlay BJ (2002) Global Dispersal of free-living microbial eukaryote species. Science 296:1061-1063 Fisher RA (1930) The distribution of gene ratios for rare mutations. Proc Royal Soc London: Biol Sci 50: 205-220 Fraser C, Hanage WP, Spratt BG (2005) Neutral microepidemic evolution of bacterial pathogens. Proc Natl Acad Sci USA 102:1968-1973 Garcia-Pichel F, Prufert-Bebout L, Muyzer G (1996) Phenotypic and phylogenetic analyses show Microcoleus chthonoplastes to be a cosmopolitan cyanobacterium. Appl Environ Microbiol 62:3284-3291 Gevers D, Cohan FM, Lawrence JG, Spratt BG, Coenye T, Feil EJ, Stackebrandt E, Van de Peer Y, Vandamme P, Thompson FL, Swings J (2005) Opinion: re-evaluating prokaryotic species. Nat Rev Microbiol 3: 733-739 Gilbert PUPA, Abrecht M, Frazer BH (2005) The organic-mineral interface in biominerals. Rev Mineral Geochem 59:157-185 Goddard MR, Godfray HCJ, Burt A (2005) Sex increases the efficacy of natural selection in experimental yeast populations. Nature 434:636-640 Groisman EA, Casadesus J (2005) The origin and evolution of human pathogens. Mol Microbiol 56:1-7 Hallam SJ, Girguis PR, Preston CM, Richardson PM, DeLong EF (2003) Identification of methyl coenzyme M reductase A (mcrA) genes associated with methane-oxidizing archaea. Appl Environ Microbiol 69: 5483-5491 Hanage WP, Fraser C, Spratt BG (2005) Fuzzy species among recombinogenic bacteria. BMC Biol 3:6 Handelsman J (2004) Metagenomics: application of genomics to uncultured microorganisms. Microbiol Mol Biol Rev 68:669-685 Handelsman J, Rondon MR, Brady SF, Clardy J, Goodman RM (1998) Molecular biological access to the chemistry of unknown soil microbes: a new frontier for natural products. Chem Biol 5:R245-249 Hendrickson H, Slechta ES, Bergthorsson U, Andersson DI, Roth JR (2002) Amplification-mutagenesis: evidence that “directed” adaptive mutation and general hypermutability result from growth with a selected gene amplification. Proc Natl Acad Sci USA 99:2164-2169 Henne A, Daniel R, Schmitz RA, Gottschalk G (1999) Construction of environmental DNA libraries in Escherichia coli and screening for the presence of genes conferring utilization of 4-hydroxybutyrate. Appl Environ Microbiol 65:3901-3907 Hjort K, Bernander R (1999) Changes in cell size and DNA content in Sulfolobus cultures during dilution and temperature shift experiments. J Bacteriol 181:5669-5675 Kappler A, Straub KL (2005) Geomicrobiological cycling of iron. Rev Mineral Geochem 59:85-108 Kazazian HH, Jr. (2004) Mobile elements: drivers of genome evolution. Science 303:1626-1632 Kimura M (1983) The Neutral Theory of Molecular Evolution. Cambridge, Cambridge University Press Kreitman M, Hudson RR (1991) Inferring the evolutionary histories of the Adh and Adh-dup loci in Drosophila melanogaster from patterns of polymorphism and divergence. Genetics 127:565-582 Lander ES, Waterman MS (1988) Genomic mapping by fingerprinting random clones: a mathematical analysis. Genomics 2:231-239 Lawrence JG, Ochman H (1997) Amelioration of bacterial genomes: rates of change and exchange. J Molec Evol 44:383-397. Lenski RE, Travisano M (1994) Dynamics of adaptation and diversification: A 10,000-generation experiment with bacterial populations. Proc Natl Acad Sci USA 91:6808-6814 Levin BR (1981) Periodic selection, infectious gene exchange and the genetic structure of Escherichia coli populations. Genetics 99:1-23 Li W (1997) Molecular Evolution. Sunderland, MA, Sinauer Associates, Inc. Lynch M, Conery JS (2003) The origins of genome complexity. Science 302:1401-1404
276
Whitaker & Banęeld
MacArthur RH, Wilson EO (1967) The Theory of Island Biogeography. Princeton, NJ, Princeton University Press Maiden MCJ, Bygraves JA, Feil E, Morelli G, Russell JE, Urwin R, Zhang Q, Zhou J, Zurth K, Caugant DA, Feavers IM, Achtman M, Spratt BG (1998) Multilocus sequence typing: A portable approach to the identification of clones within populations of pathogenic microorganisms. Proc Natl Acad Sci USA 95: 3140-3145 Majewski J, Cohan FM (1999) Adapt globally, act locally: The effect of selective sweeps on bacterial sequence diversity. Genetics 152:1459-1474 Majewski J, Cohan FM (1998) The effect of mismatch repair and heteroduplex formation on sexual isolation in Bacillus. Genetics 148:13-18 McDonald H, Kreitman M (1991) Adaptive protein evolution at the Adh locus in Drosophila. Nature 351: 652-654 Miller SR, Castenholz RW (2000) Evolution of thermotolerance in hot spring cyanobacteria of the genus Synechococcus. Appl Environ Microbiol 66:4222-4229 Moran NA (2003) Tracing the evolution of gene loss in obligate bacterial symbionts. Curr Opin Microbiol 6: 512-518 Nei M (2005) Selectionism and Neutralism in Molecular Evolution. Mol Biol Evol doi:10.1093/molbev/ msi242 Nelson KE, Methé B (2005) Metabolism and genomics: adventures derived from complete genome sequencing. Rev Mineral Geochem 59:279-294 Nilsson AI, Koskiniemi S, Eriksson S, Kugelberg E, Hinton JCD, Andersson DI (2005) Bacterial genome size reduction by experimental evolution. Proc Natl Acad Sci USA 102:12112-12116 Olsen GJ, Lane DJ, Giovannoni SJ, Pace NR, Stahl DA (1986) Microbial ecology and evolution: a ribosomal RNA approach. Annu Rev Microbiol 40:337-365 Pace N (1997) A molecular view of microbial diversity and the biosphere. Science 276:730-734 Palenik B (1994) Cyanobacterial community structure as seen from RNA polymerase gene sequence analysis. Appl Environ Microbiol 60:3212-3219 Palys T, Berger E, Mitrica I, Nakamura LK, Cohan FM (2000) Protein-coding genes as molecular markers for ecologically distinct populations: The case of two Bacillus species. Int J Syst Evol Microbiol 50: 1021-1028 Palys T, Nakamura LK, Cohan FM (1997) Discovery and classification of ecological diversity in the bacterial world: The role of DNA sequence data. Int J Syst Bacteriol 47:1145-1156 Papke RT, Koenig JE, Rodriguez-Valera F, Doolittle WF (2004) Frequent recombination in a saltern population of Halorubrum. Science 306:1928-1929 Papke RT, Ramsing NB, Bateson MM, Ward DM (2003) Geographical isolation in hot spring cyanobacteria. Environ Microbiol 5:650-659 Papke RT, Ward DM (2004) The importance of physical isolation to microbial diversification. FEMS Microbial Ecol 48:293-303 Ram RJ, VerBerkmoes NC, Thelen MP, Tyson GW, Baker BJ, Blake RC, Shah M, Hettich RL, Banfield, JF (2005) Community proteomics of a natural microbial biofilm. Science 308:1915-1920 Riesenfeld CS, Schloss PD, Handelsman J (2004) Metagenomics: genomic analysis of microbial communities. Annu Rev Genet 38:525-552 Rocap G, Larimer FW, Lamerdin J, Malfatti S, Chain P, Ahlgren NA, Arellano A, Coleman M, Hauser L, Hess WR, Johnson ZI, Land M, Lindell D, Post AF, Regala W, Shah M, Shaw SL, Steglich C, Sullivan MB, Ting CS, Tolonen A, Webb EA, Zinser ER, Chisholm SW (2003) Genome divergence in two Prochlorococcus ecotypes reflects oceanic niche differentiation. Nature 424:1042-1047 Rondon MR, August PR, Bettermann AD, Brady SF, Grossman TH, Liles MR, Loiacono KA, Lynch BA, MacNeil IA, Minor C, Tiong CL, Gilman M, Osburne MS, Clardy J, Handelsman J, Goodman RM (2000) Cloning the soil metagenome: a strategy for accessing the genetic and functional diversity of uncultured microorganisms. Appl Environ Microbiol 66:2541-2547 Saedler H, Reif HJ, Hu S, Davidson N (1974) IS2, a genetic element for turn-off and turn-on of gene activity in E. coli. Mol Gen Genet 132:265-289 Sarkar SF, Guttman DS (2004) Evolution of the core genome of Pseudomonas syringae, a highly clonal, endemic plant pathogen. Appl Environ Microbiol 70:1999-2012 Schleper C, Delong EF, Preston CM, Feldman RA, Wu K-Y, Swanson RV (1998) Genomic analysis reveals chromosomal variation in natural populations of the uncultured psychrophilic archaeon Cenarchaeum symbiosum. J Bacteriol 180:5003-5009. Schleper C, Jurgens G, Jonuscheit M (2005) Genomic studies of uncultivated archaea. Nat Rev Microbiol 3: 479-488 Schmidt TM, Delong EF, Pace NR (1991) Analysis of a marine picoplankton community by 16s ribosomalRNA gene cloning and sequencing. 173:4371-4378
Population Dynamics in Extreme Environments
277
Schneider D, Duperchy E, Coursange E, Lenski RE, Blot M (2000) Long-term experimental evolution in Escherichia coli. IX. Characterization of insertion sequence-mediated mutations and rearrangements. Genetics 156:477-488 Schneider D, Lenski RE (2004) Dynamics of insertion sequence elements during experimental evolution of bacteria. Res Microbiol 155:319-327 Slatkin M, Maddison WP (1989) A cladistic measure of gene flow inferred from the phylogenies of alleles. Genetics 123:603-614 Smith JM (1995) Do Bacteria have population genetics? In: SGM Symposium 52: Population Genetics of Bacteria. Baumberg S, Young JPW, Wellington EMH, Saunders JR (eds) Cambridge University Press, New York, p. 1-12 Smith JM, Smith NH, O’Rourke M, Spratt BG (1993) How clonal are bacteria? Proc Natl Acad Sci USA 90: 4384-4388 Sniegowski PD, Gerrish PJ, Johnson T, Shaver A (2000) The evolution of mutation rates: separating causes from consequences. Bioessays 22:1057-1066 Souza V, Travisano M, Turner PE, Eguiarte LE (2002) Does experimental evolution reflect patterns in natural populations? E.coli strains from long-term studies compared with wild isolates. Antonie van Leeuwenhoek 81:143-153 Spratt BG, Hanage WP, Feil EJ (2001) The relative contributions of recombination and point mutation to the diversification of bacterial clones. Curr Opin Microbiol 4:602-606 Staley JT, Gosink JJ (1999) Poles apart: biodiversity and biogeography of sea ice bacteria. Annu Rev Microbiol 53:189-215 Stein JL, Marsh TL, Wu KY, Shizuya H, DeLong EF (1996) Characterization of uncultivated prokaryotes: isolation and analysis of a 40-kilobase-pair genome fragment from a planktonic marine archaeon. J Bacteriol 178:591-599 Suerbaum S, Lohrengel M, Sonnevend A, Ruberg F, Kist M (2001) Allelic diversity and recombination in Campylobacter jejuni. J Bacteriol 183:2553-2559 Suerbaum S, Smith JM, Bapumia K, Morelli G, Smith NH, Kunstmann E, Dyrek I, Achtman M (1998) Free recombination within Helicobacter pylori. Proc Natl Acad Sci USA 43:A7. Thompson JR, Pacocha S, Pharino C, Klepac-Ceraj V, Hunt DE, Benoit J, Sarma-Rupavtarm R, Distel DL, Polz MF (2005) Genotypic diversity within a natural coastal bacterioplankton population. Science 307: 1311-1313 Tyson GW, Chapman J, Hugenholtz P, Allen EE, Ram RJ, Richarson PM, Solovyev VV, Rubin E, Rokhsar DS, Banfield JF (2004) Community structure and metabolism through reconstruction of microbial genomes from the environment. Nature 428:37-43 Venter JC, Remington K, Heidelberg JF, Halpern AL, Rusch D, Eisen JA, Wu D, Paulsen I, Nelson KE, Nelson W, Fouts DE, Levy S, Knap AH, Lomas MW, Nealson K, White O, Peterson J, Hoffman J, Parsons R, Baden-Tillson H, Pfannkoch C, Rogers Y-H, Smith HO (2004) Environmental genome shotgun sequencing of the Sargasso Sea. Science 304:66-74 Vetsigian K, Goldenfeld N (2005) Global divergence of microbial genome sequences mediated by propagating fronts. Proc Natl Acad Sci USA 102:7332-7337 Wallace AR (1870) On the tendency of varieties to depart indefinitely from the original type. In: Natural Selection. London, Macmillan, 40-41 Whitaker RJ, Grogan DW, Taylor JW (2005) Recombination shapes the natural population structure of the hyperthermophilic archaeon Sulfolobus ‘islandicus’. Molec Biol Evol 22:1-8 Whitaker RJ, Grogan DW, Taylor JW (2003) Geographic barriers isolated endemic population of hyperthermophilic archaea. Science 301:976-978 Woese CR, Kandler O, Wheelis ML (1990) Towards a natural system of organisms: proposal for the domains archaea, bacteria, and eucarya. Proc Natl Acad Sci USA 87:4576-4579 Yang Z (1997) PAML: a program package for phylogenetic analysis by maximum likelihood. Comput Appl Biosci 13:555-556 Zinser ER, Kolter R (2004) Escherichia coli evolution during stationary phase. Res Microbiol 155:328-336 Zinser ER, Schneider D, Blot M, Kolter R (2003) Bacterial evolution through the selective loss of beneficial Genes. Trade-offs in expression involving two loci. Genetics 164:1271-1277
12
Reviews in Mineralogy & Geochemistry Vol. 59, pp. 279-294, 2005 Copyright © Mineralogical Society of America
Metabolism and Genomics: Adventures Derived From Complete Genome Sequencing Karen E. Nelson and Barbara Methé The Institute for Genomic Research 9712 Medical Center Drive Rockville, Maryland, 20850, U.S.A. [email protected]
[email protected]
INTRODUCTION The genomic era has provided us with hundreds of complete microbial genome sequences (current estimates as of July 12, 2005, are 266 microbial genomes completed and an additional 730 in progress; see http://www.GenomesOnline.org) (Mongodin et al. 2005a). Collectively, the sequencing of individual genomes and whole communities has enabled the realization of a level of genetic diversity and complexity that was previously unappreciated (Venter et al. 2004; Mongodin et al. 2005b). This is particularly evident when the results of these endeavors are related to the study of physiological processes and metabolic capabilities of both the individual species and community members from a range of environments. Often, species are found to harbor the genetic material for metabolic pathways that had not been identified or tested in the laboratory setting, and it has become increasingly evident that we are some distance away from understanding the tremendous biological, physiological and metabolic diversity and potential that clearly exists in the microbial world. The chemical process of sequencing allows for the determination of the primary structure of a region of DNA (the main information carrier in a cell). The result of this process is a determination of the exact order of the four-nucleotide building blocks (adenine, cytosine, guanine and thymidine abbreviated A, C, G, T, respectively) that make up the DNA region in question. Completing the entire genome sequence of an organism thus provides a comprehensive representation of the entire sequence of the organism under study and its genome structure including the presence of chromosomes and in the case of prokaryotes, the presence of plasmids.
GENOME SEQUENCING AND ASSEMBLY Upon completing the sequence of a microbial genome, a thorough analysis of the genetic data should follow (detailed in Fig. 1). This process typically begins with the identification of all open reading frames (ORFs). A variety of ORF finding software is available to enable gene identification. Once gene predictions are completed, assignment of biological functions is made possible by searching all the ORFs against a database of non-redundant sequences. Among the most popular tools for searching sequence databases is BLAST (Basic Local Alignment Search Tool) (Altschul et al. 1990), which performs pair-wise sequence comparisons and seeks to define regions of local similarity, as opposed to optimal global alignments between entire sequences. Hidden Markov models (HMMs), which are statistical representations of consensus sequences describing a family of protein sequences, are also frequently used to accurately search large data sets of genome sequence. The goal of HMM 1529-6466/05/0059-0012$05.00
DOI: 10.2138/rmg.2005.59.12
280
Nelson & Methé
Overview of Genome Sequencing and Analysis
Sequencing and Assembly Library construction
Annotation and Analysis
Functional Analysis
Gene finding
Microarrays
Template preparation
Homology searches
Metabolomics
Sequencing reactions
Initial role assignments
Proteomics
Initial random assembly
Metabolic pathways Gene families
Gap closure sequence editing
Comparative genomics
Re-assembly
Structural Proteomics
Metabolomics Operon prediction regulatory elements repeats
Closed Genome Sequence
Figure 1. A schematic of some of the major components of a microbial genome sequencing project, as well as some of the post genomic applications that can be applied.
searches is to determine if the query sequence is a member of a protein family for which an HMM has been described. The collective results of investigations such as BLAST and HMM searches are used to characterize the gene prediction and the results are stored in relational databases designed to allow for further data mining. Typical information that is obtained about an ORF prediction includes: assignment of a biological role, common name, percent identity and similarity of other sequence matches, the pair-wise sequence alignment, and taxonomy associated with the match assigned to the predicted coding region. In addition to ORF analysis and gene identification, a number of other features of the genome can be identified using a variety of computer algorithms. TopPred for example allows for the identification of membrane-spanning domains (Claros and von Heijne 1994). Signal peptides and the probable position of a cleavage site in secreted proteins can be detected with SignalP (Nielsen et al. 1997). Genes coding for untranslated RNAs can be identified by database searches at the nucleotide level, and searches for tRNAs can be performed using tRNAScan-SE (Lowe and Eddy 1997). Repetitive sequences can be identified by various repeat finding programs, as well as by using an algorithm based on suffix trees which are versatile data structures that are particularly useful in genomic analyses for solving many string (sequences of characters) matching problems (Delcher et al. 1999). The determination of metabolic pathways can be aided by comparison of genome annotation to known pathways. Resources which can enable this analysis include the Kyoto Encyclopedia of Genes and Genomes or KEGG database (http://www.genome.ad.jp/kegg/). Operons represent a basic organizational unit of genes on prokaryotic chromosomes. A variety of computational methods have been suggested which can predict operon structure (Chen et al. 2004) although no one method of choice currently exists.
Metabolism & Genomics
281
SIMULTANEOUS COMPARISON OF MULTIPLE GENOMES Bioinformatics tools have had to be (and continue to be) developed and refined so that they can handle large quantities of biological sequence information, as well as provide the capacity to compare genome information derived from closely as well as distantly related strains and species. MUMmer (Delcher et al. 1999) allows the rapid alignment of whole genome sequences. This is made possible by an algorithm that is based on a suffix tree data structure. The NUCmer utility that is also included with the system can align sequences from genomes that have not been closed, being capable of aligning thousands of smaller assemblies to another sequence data set. The PROmer utility permits the alignment of genomes for which the proteins are similar but the DNA sequence is too divergent to detect similarity. The Comprehensive Microbial Resource (CMR) (http://www.tigr.org/tigr-scripts/CMR2/ CMRHomePage.spl) is one of the few publicly available tools that allows for access to all the prokaryotic genomes or any subset of prokaryotic genomes that have been completed to date (Peterson et al. 2001). The CMR was introduced primarily to reduce annotation inconsistency across completed genome, and displays the primary annotation taken from the original sequencing center where the data was generated, and an annotation generated by an automated annotation process at The Institute for Genomic Research (TIGR) (Peterson et al. 2001). Complex queries based on role assignments, database matches, protein families, membrane topology and other features are feasible. The CMR also provides access to web-based tools that allow for data mining using pre-run homology searches, whole genome dot-plots, batch downloading and traversal across genomes using a variety of datatypes. Querying data can be based on a variety of gene properties including molecular weight, hydrophobicity, G+C-content, functional role assignments, and taxonomy. When viewing an individual genome, graphical displays highlight genes placed linearly on regions of the chromosome, or as a complete circle for an entire chromosome. At an even broader level, the CMR presents comparative information between microbial genomes (Peterson et al. 2001). The Genome Properties (Haft et al. 2005) is a relational database system that includes tools and web interfaces for the investigation of the metabolism, phenotypes, and other biological properties of microbial species. The results of searches from the Genome Properties system reflects gene content, phenotype, and phylogeny for example, with the results of HMM searches allowing for a deduction of basic characteristics that include families of proteins that are conserved in function. In addition, some properties can be derived from curation, publications on the organism of interest, and other forms of evidence (Haft et al. 2005). Finally, reconstruction of biochemical pathways and transporter profiles associated with an organism of interest provides an overview of the metabolic capacity of the cell, and often reveals new aspects of the basic biochemistry of the species (see for example Nelson et al. 1999, 2002; Nierman et al. 2001). Some environmental species such as Pseudomonas putida for example (Nelson et al. 2002) have revealed a higher number of metabolic pathways for the conversion of atypical compounds than have been previously identified. Other organisms such as Caulobacter crescentus that have been sequenced for insights into biological processes such as cell cycle control have revealed the presence of unsuspected pathways such as the beta ketoadipate pathway for the metabolism of atypical compounds (Nierman et al. 2001). Considering that on average 40% of each microbial genome is considered to be hypothetical or conserved hypothetical proteins, it is obvious that a significant amount remains to be elucidated about the biology of microbial species. It should be highlighted that although tremendous insight is gained into the metabolic diversity of the species that is being analyzed, many other pathways are likely missed due to the limited characterization of many of these species that is reflected in the high number of conserved hypothetical and hypothetical proteins that remain at the end of the average genome sequencing project.
282
Nelson & Methé FUNCTIONAL GENOMICS – A SYSTEMS-LEVEL APPROACH
The burgeoning information produced from genome sequencing, annotation and comparative analyses has led to advances in the field of functional genomics. Functional genomic approaches seek to capitalize on the knowledge of genomes through the application of technologies in a comprehensive manner (from a whole organism or “systems-level”) to elucidate genes, their functions and products, and how these products interact with the ultimate goal of understanding how an organism functions in the manner in which it does. Examples of functional genomic approaches include but are certainly not limited to the following discussion. Microarray technology (Dharmadi and Gonzalez 2004) can be used to examine gene expression patterns by measuring relative gene transcript abundance of the cellular mRNA pool (the transcriptome) or can be used to determine the presence or absence of genes (using DNA) in a query genome relative to a reference genome in a process known as comparative genomic hybridization (CGH). Proteomic approaches include 2-dimensional gel electrophoresis and mass spectrometry which seek to measure proteins synthesized in a cell (the proteome) and can provide information on how those proteins function and interact with each other. Metabolomic approaches can measure changes in low molecular weight chemical complement of a cell (metabolome) using among other techniques liquid and gas chromatography, mass spectrometry and nuclear magnetic resonance (NMR) spectroscopy (Nielsen and Oliver 2005). Structural proteomics is another field of study benefiting from the increase in genome information. This area of research aims to provide information on protein identification at the level of the genome (proteome identification), characterizing three-dimensional structures of proteins and determining structure-function relationships. Experimental methods for determining protein structures typically include techniques such as X-ray crystallography or NMR spectroscopy (Forster 2002). However, elucidation of three-dimensional structures by these techniques is still limited. Therefore, computational methods are an active area of interest for providing new tools that can augment traditional experimental techniques in determining three-dimensional structure. Approaches include comparative or homology modeling which seeks to create a three-dimensional protein model of an unknown structure using sequence similarity to proteins of known structure (proteins whose structures have been solved; Centeno et al. 2005). Other approaches rely on de novo or ab initio structure prediction of proteins to elucidate three-dimensional protein structure based on using only the primary amino acid sequence (Klepeis et al. 2005).
EXAMPLES OF WHOLE GENOME RECONSTRUCTIONS AND DERIVED INFORMATION Metabolic reconstructions for the genomes of a number of microbial species of both environmental and pathogenic significance have been successfully completed. The reconstruction of biochemical pathways and transporter profiles associated with an organism of interest provides an overview of the metabolic capacity of the cell, and often reveals new aspects of the basic biochemistry of the species. Although at present no computational tool can accurately predict all of the potential metabolic pathways and regulatory networks of the cell, the development of these reconstructions has been aided through the use of a variety of genome tools and information including genome annotations, in some cases predictions based on the Genome Properties tool (http://www.tigr.org/Genome_Properties/) and sequence searches against transporter databases (http://www.membranetransport.org/) as well as other comparative genomic and functional genomic approaches. Presented in detail below are several examples of genome analyses in which various computational and functional genomic approaches have been applied to understand the organism in question at a systems-level of biology.
Metabolism & Genomics
283
One example of a successful approach using computational predictions to elucidate metabolic functions is shown by the results of the data mining of P. putida KT2440, a metabolically versatile saprophytic soil bacterium that has been certified as a biosafety host for the cloning of foreign genes. The genome of P. putida strain KT2440 is a single circular chromosome, 6,181,863 bp in length with an average G+C content of 61.6% (Nelson et al. 2002). A total of 5420 ORFs with an average length of 998 bp were identified. Genome analysis reveals metabolic pathways for the transformation of a variety of aromatic compounds including ferulate, coniferyl- and coumaryl alcohols, aldehydes and acids, vanillate, phydroxybenzoate, protocatechuate, many of which may arise during the decomposition of plant materials (Nelson et al. 2002). P. putida KT2440 appears to modify the diverse structures of these aromatics to common intermediates that can be fed into central pathways. Initial steps in the metabolism of ferulic acid, 4-hydroxybenzoate and benzoate for example, could be mediated by different enzymes with all routes ultimately converging via protocatechuate or catechol to the 3-oxoadipate pathway. This convergent strategy is also seen with substrates that can be metabolized by the phenylacetyl-CoA pathway (Nelson et al. 2002). Consistent with the extensive metabolic versatility for the degradation of aromatics, the genome sequence of P. putida KT2440 includes many putative transporters for aromatic substrates, including multiple homologs of the Acinetobacter calcoaceticus BenE benzoate transporter, and of the P. putida PcaK 4-hydroxybenzoate transporter. In addition, KT2440 has 23 members of the BenF/PhaK/OprD family of porins that includes outer membrane channels implicated in the uptake of aromatic substrates. Strain KT2440 also possesses approximately 350 cytoplasmic membrane transport systems, 15% more than P. aeruginosa, including twice as many predicted ATP-Binding Cassette (ABC) amino acid uptake transporters. This is consistent with its ability to colonize plant roots, since root exudates are rich in amino acids, and reflects a physiological emphasis on the metabolism of amino acids and their derivatives for successful competition in the rhizosphere. The details of this study, metabolic reconstruction and all references associated with the publication of the genome can be found in (Nelson et al. 2002).
GEOBACTER SULFURREDUCENS Analysis of the Geobacter sulfurreducens genome (Methé et al. 2003), a bacterium known primarily for its ability to carry out extensive metal reduction in subsurface environments revealed many significant and unsuspected capabilities, including evidence of aerobic metabolism, one-carbon and complex carbon metabolism, motility, and chemotactic behavior, which had not been previously revealed even though this bacterium has been extensively studied. These characteristics coupled with the possession of many c-type cytochromes (111 putative c-type cytochromes were identified) and many other genes predicted to be important in electron transport revealed an ability of this organism to create alternative, redundant electron transport networks offering new insights into the process of metal reduction in subsurface environments. As a member of a family of dissimilatory metal-ion reducers, G. sulfurreducens prefers to couple acetate or hydrogen oxidation to the dissimilatory reduction of iron (III) to iron (II), thereby linking the global iron and carbon cycles. In this respiratory process, G. sulfurreducens and other members of its family have solved the riddle of using insoluble metal-oxides as terminal electron acceptors. They employ a strategy of direct contact on the metal-oxide facilitating deposition of transported electrons external to the cell. This contrasts with its use of other soluble electron acceptors such as fumarate and with most other forms of respiration including aerobic respiration, in which the terminal electron acceptor is reduced inside the cytoplasm of the cell. Among the metals reduced by Geobacter spp. is uranium
284
Nelson & Methé
(VI) to uranium (IV), which has the added benefit of decreasing uranium solubility and leading to its precipitation. This ability to precipitate uranium from solution is currently under investigation as an in situ (in place) strategy for bioremediating uranium contaminated subsurface environments (Anderson et al. 2003). The capacity to move electrons external to the cytoplasm as part of its respiratory process also creates an electrical current, which can be captured via the growth of Geobacter spp. as a biofilm on energy harvesting electrodes (Anderson et al. 2003; Bond and Lovley 2003). The genome analysis and metabolic prediction analysis of G. sulfurreducens revealed conclusively that this bacterium, possesses an ability to play critical roles in the global cycling of metals and carbon, and provided new insights into its potential as an agent of bioremediation of metals including uranium and in the generation of electricity (Anderson et al. 2003; Bond and Lovley 2003; Methé et al. 2003). Functional genomic approaches such as the use of microarray technology to examine global gene expression patterns have provided confirmations of genome predictions and discerned new information regarding G. sulfurreducens physiology. For instance a G. sulfurreducens microarray fabricated from PCR amplicons representing the complete genome and printed on glass slides was used to examine growth when using soluble iron as a sole electron acceptor. cDNA targets synthesized from mRNA extracted from cells grown when using soluble iron as a sole electron acceptor were compared to those derived from cells grown under identical conditions except for using fumarate as a sole electron acceptor. In this experiment differential expression of a number of transcription factors was determined consistent with the prediction based on genome analyses of tight gene regulation in this organism. Elucidation of increased expression of a number of metal efflux transporters during growth with iron suggested they may play an important role in metal homeostasis under this condition which was previously unknown (Methé et al. 2005b).
THERMOTOGA MARITIMA METABOLISM BASED ON GENOMICS AND COMPARATIVE GENOME HYBRIDIZATION The Thermotoga maritima strain MSB8 genome revealed a number of pathways for the metabolism of plant compounds including hemicellulose and xylan, as well for the metabolism of sugars (Nelson et al. 1999). The bacterium also has a significantly high number of transporter systems that are devoted to the import of polysaccharides and oligopeptides and that appear to be a reflection of the environmental niche that this bacterium occupies. The results of a recent study (Mongodin et al. 2005b) highlight the dynamic nature of the genome of members of this genus and support the idea that there has been extensive lateral gene transfer (LGT) in the Thermotoga lineage. This genome variability is independent of the closeness of strains based on 16S rRNA phylogenetic analysis, and it highlights the limitations of using 16S rDNA sequencing and analysis as a tool to describe microbial species diversity (also see Whitaker and Banfield 2005). Although T. maritima has so far not been shown to be competent, most certainly due to the lack of efficient molecular biology tools, various type II secretion pathway proteins and type IV pilin-related proteins that function in natural competence in other bacterial species could be identified in the T. maritima MSB8 genome (Nelson et al. 1999). Homologs of various competence genes could also be identified, suggesting that there may be an inherent system for the uptake of exogenous DNA, thereby facilitating the exchange of DNA with other organisms. From the whole-genome CGH study (in which genomic DNA from query strains of T. maritima were compared to a reference strain, T. maritima MSB8, using microarray technology), it is evident that T. maritima strains vary in the total number of genes and metabolic capabilities when compared to the reference T. maritima MSB8 (Mongodin et al. 2005b).
Metabolism & Genomics
285
For example, strain PB1platt is most divergent in terms of metabolic capabilities, and either does not use the plant polymers pectin or xylan, or glycerol, maltose, tagatose, or cellobiose for energy, or it uses systems that are divergent from those employed by strain MSB8 and were therefore not detectable using microarrays. Compared to the other Thermotoga strains used in this study, strain PB1platt was isolated from a unique environment, the upcoming produced fluids (oil-water-gas mixtures) from the Prudhoe Bay oil fields (for details of the organic chemistry of such materials see Brock and Pearson 2005). These geothermally heated reservoirs may represent isolated pockets of microbial communities situated deep down below the permafrost soil hostile to hyperthermophilic life. Therefore, microorganisms such as PB1platt could represent survivors from the times where this crude oil had been formed. It is also possible that they have invaded their hot biotope very recently during the procedure used for secondary oil recovery, i.e., when seawater (which may possibly harbor some dormant hyperthermophiles which had originated from submarine vents) is pumped down into the oil reservoirs. In both hypotheses, strain PB1platt had to adapt to an environment in which sugars and plant polymers are not (or are no longer) available. Therefore, LGT and genome plasticity are important features for genetic and metabolic evolution of the Thermotogales, and most likely in other microbial species. It is also likely that shared regulatory elements/promoters among microbial species have enabled the efficient activity of acquired genes. Alternatively, regulatory elements from other locations in the chromosome can be tapped to regulate these acquired genes and/or pathways, allowing for the success of these transfer events.
COMPARATIVE GENOMICS AND PROTEOMICS, COLWELLIA PSYCHRERYTHRAEA 34H By volume, most of Earth’s biosphere is cold and marine, with 90% of the ocean’s waters at 5 °C or colder and fully 20% of Earth’s surface environment is frozen, including permanently frozen soil (permafrost), terrestrial ice sheets (glacial ice), polar sea ice, and snow cover (Bowman et al. 1997). In terms of metabolically active biomass, these permanently cold environments are colonized principally by cold-adapted microorganisms. Psychrophilic bacteria which make up much of this active biomass are generally defined as having growth temperature optima of <15 qC; and growth maxima, < 20 qC (Bowman et al. 1997). Through comparative genomic analyses, the recently completed genome of the psychrophile, Colwellia psychrerythraea 34H (Methé et al. 2005a), has provided a model for the study of life in permanently cold environments including other planets or moons and reveals capabilities important to carbon and nutrient cycling, bioremediation, production of secondary metabolites and cold-adapted enzymes. From a genome-level perspective, adaptations potentially beneficial to life in cold environments can be seen in several broad categories. Several of the adaptive strategies appear to increase fitness by effectively overcoming multiple obstacles at low temperature, including temperature-dependent barriers to carbon and nitrogen uptake. Cold-adaptive strategies include expansions (the creation of multiple copies of a gene in the genome) of gene families related to cell membrane synthesis such as homologs of the 3-oxoacyl (acyl-carrier-protein) reductase which can catalyze the first reduction step in fatty acid biosynthesis and an ability to synthesize polyunsaturated fatty acids for incorporation into the cell membrane, which has the effect of maintaining membrane fluidity at low temperatures. Additional strategies include a capacity for uptake or synthesis of compounds that in part may confer cryotolerance such as polyhydroxyalkanoates, cyanophycin-like compounds and glycine betaine, as well as the capacity to produce copious quantities of extracellular enzymes and polysaccharides (Methé et al. 2005a). To successfully thrive in cold environments psychrophiles must synthesize enzymes capable of effective performance at low temperatures. Cold temperature environments present
286
Nelson & Methé
several challenges, in particular reduced reactions rates, increased viscosity and altered microscopic structure (including phase changes) of the surrounding medium. To cope with these conditions cold-adapted enzymes have been found to increase enzyme turnover or improve catalytic efficiency (measured biochemically as Kcat and Kcat/KM, respectively) at a given temperature, compared to their mesophilic (or moderate optimal growth temperature) counterparts (Georlette et al. 2004). Current biochemical theories have suggested that these changes may originate from localized increases in enzyme flexibility or “molecular plasticity” in critical locations of the protein architecture. Following this logic, the increased flexibility is believed to result in a lowering of the transition state barrier for the catalyzed reaction, relative to mesophiles, which ultimately would require lower thermodynamic stability (Feller and Gerday 2003; Georlette et al. 2004) leading to an instability of the cold-adapted enzyme once a temperature of approximately 30 °C is reached. The availability of whole genome sequence provides an important opportunity to investigate these phenomena from a proteome-level for the first time in the bacterial domain (Methé et al. 2005a). The predicted amino acid composition of the C. psychrerythraea proteome was compared with those from twenty-one other predicted proteomes from bacteria across a range of optimal growth temperatures (OGTs) and genome %G+C content. The proteomes of each organism were first compared based on the primary amino acid compositions of their full complement of predicted genes. Next, in a process known as three-dimensional protein homology modeling, a suite of computer algorithms were used to examine the predicted amino acid sequences for matches to known three-dimensional protein structures. Those sequences with a significant match to a three-dimensional structure could then be further evaluated to determine those amino acid residues that would most likely be localized to protein surfaces versus those buried in the protein interior. The overall amino acid compositions of these surface and buried residue subsets were then determined. Finally, the amino acid composition from each data set (primary, surface and buried) was analyzed for statistically significant differences between thermal classes (psychrophile, mesophile, thermophile) that may be related to OGT using a procedure known as Canonical Discriminant Analysis (CDA). Results from CDA performed on each data set were used to identify and rank amino acid proportions that could discriminate among the three OGT classes. For each data set, CDA correctly grouped each organism based on amino acid composition into one of the three types of thermal classes (Fig. 2) despite the fact that many divergent bacterial lineages (organisms not closely related to one another) were included in the analysis. Differences likely to enhance architectural changes to enzymes favoring their effectiveness at cold temperatures appear consistent with some previously reported trends. In particular, a trend towards increased polar residues (particularly serine), the substitution of aspartate for glutamate and a general decrease in charged residues on the surface of proteins were noted. Each of these changes is consistent with prevailing theories that increased flexibility and reduced thermostability contribute to enzyme cold-adaptation.
COMPARISONS OF MULTIPLE GENOMES, THE VIBRIOS AS AN EXAMPLE The importance of Vibrios to health and the environment has resulted in a number of these species being the subject of whole genome sequencing. These include the pathogenic Vibrio species that cause human diseases—V. cholerae (Heidelberg et al. 2000), V. parahaemolyticus (Makino et al. 2003), and V. vulnificus (Chen et al. 2003), along with the non-pathogenic V. fischeri ES114 (Ruby et al. 2005), which enters into a mutualistic symbiosis in the light organ of the bobtail squid. The genome of V. cholerae El Tor N16961 is 4,033,460 bp, and consists of two circular chromosomes of 2,961,146 bp and 1,072,314 bp that together were predicted to encode 3,885 ORFs. From the genome sequence, the diversity of substrate utilization patterns was evident (Heidelberg et al. 2000).
Metabolism & Genomics
287
a
b
c
Figure 2. Scatterplot of the scores of the first two canonical discriminant functions (CDF 1 and CDF 2) from CDA of twenty two genomes indicating separation based on optimal growth temperature. Panel a, represents the scatterplot from the total primary residue analysis, panel b, the surface exposed residue analysis and panel c, the scatterplot from the buried residue analysis.
288
Nelson & Methé
V. vulnificus, which is abundantly present in waters throughout the world, can result in human mortality from seafood-borne infections (Tanabe et al. 1995; Ghittino et al. 2003). The genome of V. vulnificus strain YJ016 (biotype 1) (Chen et al. 2003) includes two chromosomes of an estimated 3377 kb and 1857 kb in size, and a plasmid of 48,508 bp. Comparison of the genome of V. vulnificus (Chen et al. 2003) to that of V. cholerae (Heidelberg et al. 2000), revealed that the V. vulnificus YJ016 genome contained 1143 more genes than in V. cholerae El Tor N16961. A significant proportion of the V. vulnificus chromosomal genes are hypothetical proteins, and they also account for the majority of genes that are unique to the V. vulnificus genome. Again, when compared with the genome of V. cholerae, V. vulnificus was found to be slightly larger in three functional subgroups (transcription, carbohydrate transport and metabolism, and secondary metabolism biosynthesis), suggesting that V. vulnificus shares much of the genome content with V. cholerae, although a significant number of new features seem to have evolved, most likely related to environmental adaptations (Chen et al. 2003). V. parahaemolyticus is a natural inhabitant of coastal waters, and causes gastroenteritis in humans if contaminated seafood is consumed (for review see Yeung and Boor 2004; Heitmann et al. 2005; McLaughlin et al. 2005). As with the Vibrios described above, the genome of V. parahaemolyticus consists of two circular chromosomes of 3,288,558 bp and 1,877,212 bp respectively, and with a predicted 4,832 ORFs (Makino et al. 2003). Comparison of the V. parahaemolyticus genome with that of V. cholerae revealed rearrangements within and between the two chromosomes, with most of the essential genes required for growth and viability on chromosome 1 of V. parahaemolyticus. V. fischeri is a symbiont in the light-emitting organs of certain squids and fishes (for review see Haygood 1993). Of all the Vibrios sequenced, V. fischeri was found to have the lowest G+C content with an average of 38.3% (compared to V. cholerae at 47.5%) (Ruby et al. 2005). As with the pathogenic Vibrios, V. fischeri has two chromosomes, which total 4,284,050 bp (Ruby et al. 2005). The sequenced V. fischeri strain also harbors a 45.8 kb plasmid. The three replicons together encode for 3,802 ORFs (Ruby et al. 2005). A comparative genomic approach using the BLAST Score Ratio (BSR) analysis tool (Rasko et al. 2005) was used to identify strain-specific genes and probable pathways from the genomes of the sequenced Vibrios (Nelson and Mongodin 2005). This approach classifies all putative peptides within three genomes at a time, using a measure of similarity based on the ratio of BLAST scores. For the computation of the BSR, the BLAST raw score for each peptide of the reference against itself is stored as the reference score. Then, each reference peptide is compared to each peptide of the two query proteomes. The BSR score is calculated by dividing the query score by the reference score for each reference peptide. The use of a 0.4 BSR cutoff leads to approximately 30% amino acid identity over 30% of the length of the peptide. This analysis was used to pull out the genes that are unique to the individual Vibrio strains and species. That is genes that are specific to V. cholerae O1 when compared to the other four species, genes unique to V. parahaemolyticus when compared to the other four species, genes unique to V. fischeri strain ES114 when compared to the other four, genes in common to the two V. vulnificus strains but unique when compared to the other three species, and genes that are shared by the five species (Nelson and Mongodin 2005). A total of 2,547 predicted ORFs were shared across these five Vibrios, but there are wide variations in the number of species-specific genes that could be identified. The discrepancy in gene number may also be a reflection of the way that annotations were conducted at the different sites where these genome projects were completed. Among the metabolically relevant processes that are shared by the Vibrios are pathways for the biosynthesis and degradation of a amino acids including tryptophan, asparagine, serine, glutamate and histidine. Also conserved are glycolysis, gluconeogenesis, the tricarboxylic acid (TCA) cycle, and the pentose phosphate
Metabolism & Genomics
289
pathway. The comparison of genomes from multiple closely related species as presented above highlights the major differences and similarities between the species and allows for the definition of a “core genome.”
METAGENOMICS AND MICROBIAL DIVERSITY IN NATURAL ENVIRONMENTS Microorganisms and complex microbial communities are responsible for the majority of biochemical transformations in the environment, and many play major roles in elemental recycling and conversion of biomass. Similar to human and animal microbial communities, the vast majority of environmental microorganisms are not culturable and therefore, we have a very limited understanding of the capabilities of most environmental microbial species. Studies on the metabolic potential of microbes have been limited by a lack of appropriate tools to culture most species, as well as limited knowledge on growth requirements. Many environmental communities have been analyzed by 16S rDNA phylogenetic analysis, which is limited in that it only allows for an estimate of the microbial species diversity and the populations that are present, but does not give any insight into the genetic diversity of the population. As such, for any environment, the physiological role that is being played by individual species that have been identified by 16S rDNA sequencing cannot be readily defined. Some level of analogy may be drawn by relative closeness to other characterized species based on 16S rDNA sequence similarity, but it is becoming increasingly apparent from whole genome sequencing, that species that appear to be closely related from 16S rDNA sequences may have tremendous differences in genome composition (Mongodin et al. 2005b). Deciphering the genetic information of uncultured species can currently be achieved by sequencing genomic libraries created directly from environmental DNA (Beja et al. 2000a,b, 2001, 2002a,b) When sequences from uncultured organisms can be associated with phylogenetic markers (sequences that can be assigned to related genetic groups based on their evolutionary history) by their physical presence on the same DNA fragment, links of metabolic capacity to phylogeny can be made. This development has taken advantage primarily of the successful construction of large insert Bacterial Artificial Chromosome (BAC) and fosmid libraries (up to 120 kb in size). Initial surveys have demonstrated an unanticipated level of microbial diversity that remains to be explored in a number of environments including the oceans (Beja et al. 2000a,b, 2001, 2002a,b) and soils (Rondon et al. 2000). DeLong and colleagues were the pioneers of the sequencing of large fragments of DNA to characterize genes from uncultivated species (DeLong 1992; Beja et al. 2000a). In the first of a series of reports, they analyzed a 40 kb genomic DNA fragment from a planktonic marine archaeon that had been cloned into a fosmid library (DeLong 1992). By using large fragments that have a ribosomal or other phylogenetically relevant sequence present as a marker, it is possible to relate the sequenced fragment to previously characterized species, rather than just analyzing a piece of DNA that is derived from an unknown source. DeLong and colleagues subsequently constructed BAC libraries with an average insert size of 80 kb, and a maximum insert size of 155 kb (Beja et al. 2000b). That group has demonstrated the value and utility of BAC libraries for providing genetic information on uncultivated species, and laid the foundation for subsequent metagenomic studies in other environments. The analysis of these large DNA fragments has provided information on gene composition, gene organization, and putative functional role, while simultaneously providing a phylogenetic link enabling definition of the closest relatives of the uncultivated species. Since demonstrating the utility of the metagenomic approach, a number of other studies have been undertaken to examine the microbial diversity and genetic potential of a variety of environments. For instance, soils are being studied for important enzyme activities, industrial
290
Nelson & Methé
biocatalysts, and novel antibiotics. Voget et al. (2003) have examined a soil metagenomic library to identify more than 15 different genes encoding novel biocatalysts, and Sebat et al. (2003) have screened a metagenomic library that was constructed from a microcosm of groundwater microorganisms to identify a series of genes of ecological importance, including some with hydrogen oxidation, nitrate reduction, and transposition activities. Rondon and colleagues (Handelsman et al. 1998; Rondon et al. 2000) used a BAC vector to construct libraries of genomic DNA isolated directly from soil. Phylogenetic analysis of 16S rRNA gene sequences recovered from one of the libraries indicates that the BAC libraries contain DNA from a wide diversity of microbial phyla, including sequences from diverse taxa such as the low-G+C Gram-positive Acidobacterium, Cytophagales, and Proteobacteria. Initial screening of the libraries in Escherichia coli identified several clones that express heterologous genes from the inserts, confirming that the BAC vector can be used to maintain, express, and analyze environmental DNA. The phenotypes expressed by these clones include antibacterial, lipase, amylase, nuclease, and hemolytic activities. Knietsch et al. (2003a,b) constructed metagenomic DNA libraries from three different soil samples (meadow, sugar beet field, cropland), which comprised approximately 1,267,000 independent clones and harbored approximately 4.05 Gbp of environmental DNA. Recombinant E. coli strains of each library per test substrate were screened for the production of carbonyls from short-chain polyols such as 1,2-ethanediol, 2,3-butanediol, and a mixture of glycerol and 1,2-propanediol. Drinking water biofilms (Schmeisser et al. 2003) have been studied with a metagenomics approach, whereby a study was initiated to characterize drinking water biofilms grown on rubber-coated valves by employing three different strategies. Sequence analysis of 650 16S rRNA clones indicated a high diversity within the biofilm communities, with the majority of the microbes being closely related to the Proteobacteria. Homology searches with 5,000 random sequences from a small insert library resulted in the identification of 2,200 putative protein-coding sequences, of which 1,026 could be classified into functional groups. Similarity analyses indicated that significant fractions of the genes and proteins identified were highly similar to known proteins observed in the genera Rhizobium, Pseudomonas, and Escherichia. The sequence information was used to set up a database containing the phylogenetic and genomic information on this model microbial community. Acid mine drainage (AMD) is a worldwide environmental problem that arises largely from a combination of mining and microbial activity. Banfield and colleagues analyzed a lowcomplexity AMD microbial biofilm growing hundreds of feet underground within a pyrite (FeS2) ore body, which represented a self-contained biogeochemical system (Baker et al. 2004). Random shotgun sequencing of the biofilm was used to obtain the first reconstruction of multiple genomes directly from a natural sample. Screening using group-specific fluorescence in situ hybridization (FISH) revealed that all biofilms contained mixtures of bacteria (Leptospirillum, Sulfobacillus and, in a few cases, Acidimicrobium) and archaea (Ferroplasma and other members of the Thermoplasmatales). This work also examined genome sequence from coexisting individual organisms that was assembled to generate composite genomic information for species populations. Discussion of this approach to the analysis of population structure and dynamics is presented in the chapter by Whitaker and Banfield (2005). In a continuation of this work, they have recently used both genomic and mass spectrometrybased proteomic methods to evaluated gene expression and examine partitioning of metabolic functions in an AMD microbial biofilm community (Ram et al. 2005). In that more recent study, they detected 2,033 proteins from the five most abundant species in the biofilm, including 48% of the predicted proteins from the dominant biofilm organism, Leptospirillum group II. Proteins involved in protein refolding and response to oxidative stress appeared to be highly expressed, which suggests that damage to biomolecules is a key challenge for survival.
Metabolism & Genomics
291
Whole-genome shotgun sequencing of microbial populations collected on tangential flow and impact filters from seawater samples from the Sargasso Sea generated a total of 1.045 billion base pairs of non-redundant sequence (Venter et al. 2004). This sequence was annotated, and analyzed to elucidate the gene content, diversity, and relative abundance of the organisms within these environmental samples, and are estimated to derive from at least 1,800 genomic species based on sequence relatedness, including 148 previously unknown bacterial phylotypes. In addition, from this study, over 1.2 million previously unknown genes were identified as being present in these samples. Variation in species present and stoichiometry suggests substantial oceanic microbial diversity (Venter et al. 2004). The human body is colonized with a dynamic and intricate microbial community that covers the surfaces of the skin, oral cavity and gastrointestinal tract. This microbial community and the human host co-exist in a mutually beneficial or commensal relationship, with the microbes playing a pivotal role in human development and evolution. Microbial density is highest in the gastrointestinal tract, where the population is estimated to outnumber the surrounding host cells by an order of magnitude and can account for as much as 50% of fecal material dry weight. At TIGR, we have recently concluded a metagenomic analysis of the human gastrointestinal tract (Gill et al., in prep), whereby a total of 139,521 sequences were generated for the random shotgun metagenomic libraries, and a total of 6,000 16S rDNA clones were also sequenced. Assembly of these sequences resulted in 17,668 contigs covering 33,753,108 base pairs of unique DNA sequence that represented diverse microbial species from both the archaeal and bacterial domains. From the comparative genome analyses, we were able to identify novel virulence factors, and recreate a metabolic reconstruction of some of the ongoing processes in the gastrointestinal tract of these humans. The analysis of the data demonstrated a very high level of microbial diversity with an estimated 465 microbial species, and highlights the limits to our current understanding of microbial diversity associated with the human body, due in part to our dependence on culture dependent techniques. The annotated sequence data was evaluated for metabolic capabilities by reconstructing the presence of various pathways. In this way, we were able to assign metabolic function to this environment without definite knowledge of the exact species or strain that the pathway may have been derived from. As would be expected, there is evidence for a diverse metabolism heavily dependent on hydrogen and methane production, and sulfate reduction. There is evidence for the metabolism of a number of simple and complex sugars and plant polymers including cellulose, cellobiose, xylan, pectin, glucose, fucose, sucrose and mannitol, and the major end products of fermentation include butyrate, formate, acetate, lactate, and pyruvate.
OTHER TOOLS TO UNDERSTAND GENE FUNCTION Other tools to understand gene function in microbial species include proteomics technologies to investigate protein-protein interactions, Biolog substrate utilization techniques to investigate putative pathways that may be present and transporter analysis. Biolog phenotype arrays allow for the simultaneous measurement of hundreds of different cellular phenotypes (http://www.biolog.com/phenoMicro.html). This analysis is made possible by the (currently) approximately 2000 phenotypic test wells that are preconfigured in 96 well trays, with each well capable of testing the function of a different enzyme, pathway or physiological property of the individual cell. Each phenotype is measured by a simple color change. Current tests include utilization of a wide variety of C, N, P, and S sources (~800 tests), pH growth range (~100 tests), ionic and non ionic osmotic sensitivity (~100 tests), and sensitivity to chemical agents that disrupt various biological pathways (~1,000 tests) (http://www.biolog.com/ phenoMicro.html). Biolog tests have been successfully implemented for a wide variety of model microbial cells including Escherichia coli, Salmonella enterica, Pseudomonas
292
Nelson & Methé
aeruginosa, P. putida, Sinorhizobium meliloti, Saccharomyces cerevisiae, Bacillus subtilis, B. cereus, and Proteus mirabilis (http://www.biolog.com/phenoMicro.html).
SUMMARY In closing, the advent of whole genome and community (metagenomic) sequencing, has increased our awareness of microbial diversity and microbial metabolic capacities. The analysis of this sequence data is revealing unanticipated microbial metabolic capabilities. However continued development of bioinformatics tools and databases is necessary to improve our ability to effectively analyze the increase in sequence data. In addition, these predictions ultimately need to be tested experimentally and these experimental results used to further enhance our computational predictions, creating a synergistic loop (Fig. 1). It is further hoped that current technologies for characterizing microbial physiology at the single gene level can be scaled up to meet the rising increase in sequence data production. For example, developments are currently underway to enable high throughput culturing of previously uncultured species (Connon and Giovannoni 2002). These types of improvements will continue to increase our opportunities to understand the physiological diversity that exists in the environment.
REFERENCES Altschul SF, Gish W, Miller W, Myers EW, Lipman DJ (1990) Basic local alignment search tool. J Mol Biol 215:403-410 Anderson RT, Vrionis HA, Ortiz-Bernad I, Resch CT, Long PE, Dayvault R, Karp K, Marutzky S, Metzler DR, Peacock A, White DC, Lowe M, Lovley DR (2003) Stimulating the in situ activity of Geobacter species to remove uranium from the groundwater of a uranium-contaminated aquifer. Appl Environ Microbiol 69:5884-5891 Baker BJ, Lutz MA, Dawson SC, Bond PL, Banfield JF (2004) Metabolically active eukaryotic communities in extremely acidic mine drainage. Appl Environ Microbiol 70:6264-6271 Beja O, Aravind L, Koonin EV, Suzuki MT, Hadd A, Nguyen LP, Jovanovich SB, Gates CM, Feldman RA, Spudich JL, Spudich EN, DeLong EF (2000a) Bacterial rhodopsin: evidence for a new type of phototrophy in the sea. Science 289:1902-1906 Beja O, Koonin EV, Aravind L, Taylor LT, Seitz H, Stein JL, Bensen DC, Feldman RA, Swanson RV, DeLong EF (2002a) Comparative genomic analysis of archaeal genotypic variants in a single population and in two different oceanic provinces. Appl Environ Microbiol 68:335-345 Beja O, Spudich EN, Spudich JL, Leclerc M, DeLong EF (2001) Proteorhodopsin phototrophy in the ocean. Nature 411:786-789 Beja O, Suzuki MT, Heidelberg JF, Nelson WC, Preston CM, Hamada T, Eisen JA, Fraser CM, DeLong EF (2002b) Unsuspected diversity among marine aerobic anoxygenic phototrophs. Nature 415:630-633 Beja O, Suzuki MT, Koonin EV, Aravind L, Hadd A, Nguyen LP, Villacorta R, Amjadi M, Garrigues C, Jovanovich SB, Feldman RA, DeLong EF (2000b) Construction and analysis of bacterial artificial chromosome libraries from a marine microbial assemblage. Environ Microbiol 2:516-529 Bond DR, Lovley DR (2003) Electricity production by Geobacter sulfurreducens attached to electrodes. Appl Environ Microbiol 69:1548-1555 Bowman JP, McCammon SA, Brown MV, Nichols DS, McMeekin TA (1997) Diversity and association of psychrophilic bacteria in Antarctic sea ice. Appl Environ Microbiol 63:3068-3078 Brocks JJ, Pearson A (2005) Building the biomarker tree of life. Rev Mineral Geochem 59:233-258 Centeno NB, Planas-Iglesias J, Oliva B (2005) Comparative modelling of protein structure and its impact on microbial cell factories. Microb Cell Fact 4:20 Chen CY, Wu KM, Chang YC, Chang CH, Tsai HC, Liao TL, Liu YM, Chen HJ, Shen AB, Li JC, Su TL, Shao CP, Lee CT, Hor LI, Tsai SF (2003) Comparative genome analysis of Vibrio vulnificus, a marine pathogen. Genome Res 13:2577-2587 Chen X, Su Z, Dam P, Palenik B, Xu Y, Jiang T (2004) Operon prediction by comparative genomics: an application to the Synechococcus sp. WH8102 genome. Nucleic Acids Res 32:2147-2157 Claros MG, von Heijne G (1994) TopPred II: an improved software for membrane protein structure predictions. Comput Appl Biosci 10:685-686
Metabolism & Genomics
293
Connon SA, Giovannoni SJ (2002) High-throughput methods for culturing microorganisms in very-low-nutrient media yield diverse new marine isolates. Appl Environ Microbiol 68:3878-3885 Delcher AL, Harmon D, Kasif S, White O, Salzberg SL (1999) Improved microbial gene identification with GLIMMER. Nucleic Acids Res 27:4636-4641 DeLong EF (1992) Archaea in coastal marine environments. Proc Natl Acad Sci U S A 89:5685-5689 Dharmadi Y, Gonzalez R (2004) DNA microarrays: experimental issues, data analysis, and application to bacterial systems. Biotechnol Prog 20:1309-1324 Feller G, Gerday C (2003) Psychrophilic enzymes: hot topics in cold adaptation. Nat Rev Microbiol 1:200-208 Forster MJ (2002) Molecular modelling in structural biology. Micron 33:365-384 Georlette D, Blaise V, Collins T, D’Amico S, Gratia E, Hoyoux A, Marx JC, Sonan G, Feller G, Gerday C (2004) Some like it cold: biocatalysis at low temperatures. FEMS Microbiol Rev 28:25-42 Ghittino C, Latini M, Agnetti F, Panzieri C, Lauro L, Ciappelloni R, Petracca G (2003) Emerging pathologies in aquaculture: effects on production and food safety. Vet Res Commun 27 Suppl 1:471-479 Haft DH, Selengut JD, Brinkac LM, Zafar N, White O (2005) Genome Properties: a system for the investigation of prokaryotic genetic content for microbiology, genome annotation and comparative genomics. Bioinformatics 21:293-306 Handelsman J, Rondon MR, Brady SF, Clardy J, Goodman RM (1998) Molecular biological access to the chemistry of unknown soil microbes: a new frontier for natural products. Chem Biol 5:R245-249 Haygood MG (1993) Light organ symbioses in fishes. Crit Rev Microbiol 19:191-216 Heidelberg JF, Eisen JA, Nelson WC, Clayton RA, Gwinn ML, Dodson RJ, Haft DH, Hickey EK, Peterson JD, Umayam L, Gill SR, Nelson KE, Read TD, Tettelin H, Richardson D, Ermolaeva MD, Vamathevan J, Bass S, Qin H, Dragoi I, Sellers P, McDonald L, Utterback T, Fleishmann RD, Nierman WC, White O, Salzberg SL, Smith HO, Colwell RR, Mekalanos JJ, Venter JC, Fraser CM (2000) DNA sequence of both chromosomes of the cholera pathogen Vibrio cholerae. Nature 406:477-483 Heitmann I, Jofre L, Hormazabal JC, Olea A, Vallebuona C, Valdes C (2005) (Review and guidelines for treatment of diarrhea caused by Vibrio parahaemolyticus). Rev Chilena Infectol 22:131-140 Klepeis JL, Wei Y, Hecht MH, Floudas CA (2005) Ab initio prediction of the three-dimensional structure of a de novo designed protein: a double-blind case study. Proteins 58:560-570 Knietsch A, Waschkowitz T, Bowien S, Henne A, Daniel R (2003a) Construction and screening of metagenomic libraries derived from enrichment cultures: generation of a gene bank for genes conferring alcohol oxidoreductase activity on Escherichia coli. Appl Environ Microbiol 69:1408-1416 Knietsch A, Waschkowitz T, Bowien S, Henne A, Daniel R (2003b) Metagenomes of complex microbial consortia derived from different soils as sources for novel genes conferring formation of carbonyls from short-chain polyols on Escherichia coli. J Mol Microbiol Biotechnol 5:46-56 Lowe TM, Eddy SR (1997) tRNAscan-SE: a program for improved detection of transfer RNA genes in genomic sequence. Nucleic Acids Res 25:955-964 Makino K, Oshima K, Kurokawa K, Yokoyama K, Uda T, Tagomori K, Iijima Y, Najima M, Nakano M, Yamashita A, Kubota Y, Kimura S, Yasunaga T, Honda T, Shinagawa H, Hattori M, Iida T (2003) Genome sequence of Vibrio parahaemolyticus: a pathogenic mechanism distinct from that of V. cholerae. Lancet 361:743-749 McLaughlin JB, DePaola A, Bopp CA, Martinek KA, Napolilli NP, Allison CG, Murray SL, Thompson EC, Bird MM, Middaugh JP (2005) Outbreak of Vibrio parahaemolyticus gastroenteritis associated with Alaskan oysters. N Engl J Med 353:1463-1470 Methé BA, Nelson KE, Deming JW, Momen B, Melamud E, Zhang X, Moult J, Madupu R, Nelson WC, Dodson RJ, Brinkac LM, Daugherty SC, Durkin AS, DeBoy RT, Kolonay JF, Sullivan SA, Zhou L, Davidsen TM, Wu M, Huston AL, Lewis M, Weaver B, Weidman JF, Khouri H, Utterback TR, Feldblyum TV, Fraser CM (2005a) The psychrophilic lifestyle as revealed by the genome sequence of Colwellia psychrerythraea 34H through genomic and proteomic analyses. Proc Natl Acad Sci U S A 102:10913-10918 Methé BA, Nelson KE, Eisen JA, Paulsen IT, Nelson W, Heidelberg JF, Wu D, Wu M, Ward N, Beanan MJ, Dodson RJ, Madupu R, Brinkac LM, Daugherty SC, DeBoy RT, Durkin AS, Gwinn M, Kolonay JF, Sullivan SA, Haft DH, Selengut J, Davidsen TM, Zafar N, White O, Tran B, Romero C, Forberger HA, Weidman J, Khouri H, Feldblyum TV, Utterback TR, Van Aken SE, Lovley DR, Fraser CM (2003) Genome of Geobacter sulfurreducens: metal reduction in subsurface environments. Science 302:1967-1969 Methé BA, Webster J, Nevin K, Butler J, Lovley DR (2005b) DNA microarray analysis of nitrogen fixation and Fe(III) reduction in Geobacter sulfurreducens. Appl Environ Microbiol 71:2530-2538 Mongodin EF, Emerson JB, Nelson KE (2005a) Microbial metagenomics. Genome Biol 6:347 Mongodin EF, Hance IR, Deboy RT, Gill SR, Daugherty S, Huber R, Fraser CM, Stetter K, Nelson KE (2005b) Gene transfer and genome plasticity in Thermotoga maritima, a model hyperthermophilic species. J Bacteriol 187:4935-4944
294
Nelson & Methé
Nelson KE, Clayton RA, Gill SR, Gwinn ML, Dodson RJ, Haft DH, Hickey EK, Peterson JD, Nelson WC, Ketchum KA, McDonald L, Utterback TR, Malek JA, Linher KD, Garrett MM, Stewart AM, Cotton MD, Pratt MS, Phillips CA, Richardson D, Heidelberg J, Sutton GG, Fleischmann RD, Eisen JA, Fraser CM, et al. (1999) Evidence for lateral gene transfer between Archaea and bacteria from genome sequence of Thermotoga maritima. Nature 399:323-329 Nelson KE, Mogodin EF (2005) The metabolism of Vibrios. In: The Biology of Vibrios. ASM Press. Nelson KE, Weinel C, Paulsen IT, Dodson RJ, Hilbert H, Martins dos Santos VA, Fouts DE, Gill SR, Pop M, Holmes M, Brinkac L, Beanan M, DeBoy RT, Daugherty S, Kolonay J, Madupu R, Nelson W, White O, Peterson J, Khouri H, Hance I, Chris Lee P, Holtzapple E, Scanlan D, Tran K, Moazzez A, Utterback T, Rizzo M, Lee K, Kosack D, Moestl D, Wedler H, Lauber J, Stjepandic D, Hoheisel J, Straetz M, Heim S, Kiewitz C, Eisen JA, Timmis KN, Dusterhoft A, Tummler B, Fraser CM (2002) Complete genome sequence and comparative analysis of the metabolically versatile Pseudomonas putida KT2440. Environ Microbiol 4:799-808 Nielsen H, Engelbrecht J, Brunak S, von Heijne G (1997) Identification of prokaryotic and eukaryotic signal peptides and prediction of their cleavage sites. Protein Eng 10:1-6 Nielsen J, Oliver S (2005) The next wave in metabolome analysis. Trends Biotechnol, in press Nierman WC, Feldblyum TV, Laub MT, Paulsen IT, Nelson KE, Eisen JA, Heidelberg JF, Alley MR, Ohta N, Maddock JR, Potocka I, Nelson WC, Newton A, Stephens C, Phadke ND, Ely B, DeBoy RT, Dodson RJ, Durkin AS, Gwinn ML, Haft DH, Kolonay JF, Smit J, Craven MB, Khouri H, Shetty J, Berry K, Utterback T, Tran K, Wolf A, Vamathevan J, Ermolaeva M, White O, Salzberg SL, Venter JC, Shapiro L, Fraser CM (2001) Complete genome sequence of Caulobacter crescentus. Proc Natl Acad Sci U S A 98: 4136-4141 Peterson JD, Umayam LA, Dickinson T, Hickey EK, White O (2001) The comprehensive microbial resource. Nucleic Acids Res 29:123-125 Ram RJ, Verberkmoes NC, Thelen MP, Tyson GW, Baker BJ, Blake RC, 2nd, Shah M, Hettich RL, Banfield JF (2005) Community proteomics of a natural microbial biofilm. Science 308:1915-1920 Rasko DA, Myers GS, Ravel J (2005) Visualization of comparative genomic analyses by BLAST score ratio. BMC Bioinformatics 6:2 Rondon MR, August PR, Bettermann AD, Brady SF, Grossman TH, Liles MR, Loiacono KA, Lynch BA, MacNeil IA, Minor C, Tiong CL, Gilman M, Osburne MS, Clardy J, Handelsman J, Goodman RM (2000) Cloning the soil metagenome: a strategy for accessing the genetic and functional diversity of uncultured microorganisms. Appl Environ Microbiol 66:2541-2547 Ruby EG, Urbanowski M, Campbell J, Dunn A, Faini M, Gunsalus R, Lostroh P, Lupp C, McCann J, Millikan D, Schaefer A, Stabb E, Stevens A, Visick K, Whistler C, Greenberg EP (2005) Complete genome sequence of Vibrio fischeri: a symbiotic bacterium with pathogenic congeners. Proc Natl Acad Sci U S A 102:3004-3009 Schmeisser C, Stockigt C, Raasch C, Wingender J, Timmis KN, Wenderoth DF, Flemming HC, Liesegang H, Schmitz RA, Jaeger KE, Streit WR (2003) Metagenome survey of biofilms in drinking-water networks. Appl Environ Microbiol 69:7298-7309 Sebat JL, Colwell FS, Crawford RL (2003) Metagenomic profiling: microarray analysis of an environmental genomic library. Appl Environ Microbiol 69:4927-4934 Tanabe I, Kusaba K, Nagasawa Z, Tajima Y, Tadano J, Fujisawa N, Yamada H (1995) (Clinical bacteriological analysis of Vibrio vulnificus infection--a report of five case). Kansenshogaku Zasshi 69:170-174 Venter JC, Remington K, Heidelberg JF, Halpern AL, Rusch D, Eisen JA, Wu D, Paulsen I, Nelson KE, Nelson W, Fouts DE, Levy S, Knap AH, Lomas MW, Nealson K, White O, Peterson J, Hoffman J, Parsons R, Baden-Tillson H, Pfannkoch C, Rogers YH, Smith HO (2004) Environmental genome shotgun sequencing of the Sargasso Sea. Science 304:66-74 Voget S, Leggewie C, Uesbeck A, Raasch C, Jaeger KE, Streit WR (2003) Prospecting for novel biocatalysts in a soil metagenome. Appl Environ Microbiol 69:6235-6242 Whitaker RJ, Banfield JF (2005) Population dynamics through the lens of extreme environments. Rev Mineral Geochem 59:259-277 Yeung PS, Boor KJ (2004) Epidemiology, pathogenesis, and prevention of foodborne Vibrio parahaemolyticus infections. Foodborne Pathog Dis 1:74-88