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Natural Bacterial Communities Serve as Quantitative Geochemical Biosensors

Biological sensors can be engineered to measure a wide range of environmental conditions. Here we show that statistical analysis of DNA from natural microbial communities can be used to accurately identify environmental contaminants, including uranium and nitrate at a nuclear waste site. In addition...

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Autores principales: Smith, Mark B., Rocha, Andrea M., Smillie, Chris S., Olesen, Scott W., Paradis, Charles, Wu, Liyou, Campbell, James H., Fortney, Julian L., Mehlhorn, Tonia L., Lowe, Kenneth A., Earles, Jennifer E., Phillips, Jana, Techtmann, Steve M., Joyner, Dominique C., Elias, Dwayne A., Bailey, Kathryn L., Hurt, Richard A., Preheim, Sarah P., Sanders, Matthew C., Yang, Joy, Mueller, Marcella A., Brooks, Scott, Watson, David B., Zhang, Ping, He, Zhili, Dubinsky, Eric A., Adams, Paul D., Arkin, Adam P., Fields, Matthew W., Zhou, Jizhong, Alm, Eric J., Hazen, Terry C.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Society of Microbiology 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4436078/
https://www.ncbi.nlm.nih.gov/pubmed/25968645
http://dx.doi.org/10.1128/mBio.00326-15
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author Smith, Mark B.
Rocha, Andrea M.
Smillie, Chris S.
Olesen, Scott W.
Paradis, Charles
Wu, Liyou
Campbell, James H.
Fortney, Julian L.
Mehlhorn, Tonia L.
Lowe, Kenneth A.
Earles, Jennifer E.
Phillips, Jana
Techtmann, Steve M.
Joyner, Dominique C.
Elias, Dwayne A.
Bailey, Kathryn L.
Hurt, Richard A.
Preheim, Sarah P.
Sanders, Matthew C.
Yang, Joy
Mueller, Marcella A.
Brooks, Scott
Watson, David B.
Zhang, Ping
He, Zhili
Dubinsky, Eric A.
Adams, Paul D.
Arkin, Adam P.
Fields, Matthew W.
Zhou, Jizhong
Alm, Eric J.
Hazen, Terry C.
author_facet Smith, Mark B.
Rocha, Andrea M.
Smillie, Chris S.
Olesen, Scott W.
Paradis, Charles
Wu, Liyou
Campbell, James H.
Fortney, Julian L.
Mehlhorn, Tonia L.
Lowe, Kenneth A.
Earles, Jennifer E.
Phillips, Jana
Techtmann, Steve M.
Joyner, Dominique C.
Elias, Dwayne A.
Bailey, Kathryn L.
Hurt, Richard A.
Preheim, Sarah P.
Sanders, Matthew C.
Yang, Joy
Mueller, Marcella A.
Brooks, Scott
Watson, David B.
Zhang, Ping
He, Zhili
Dubinsky, Eric A.
Adams, Paul D.
Arkin, Adam P.
Fields, Matthew W.
Zhou, Jizhong
Alm, Eric J.
Hazen, Terry C.
author_sort Smith, Mark B.
collection PubMed
description Biological sensors can be engineered to measure a wide range of environmental conditions. Here we show that statistical analysis of DNA from natural microbial communities can be used to accurately identify environmental contaminants, including uranium and nitrate at a nuclear waste site. In addition to contamination, sequence data from the 16S rRNA gene alone can quantitatively predict a rich catalogue of 26 geochemical features collected from 93 wells with highly differing geochemistry characteristics. We extend this approach to identify sites contaminated with hydrocarbons from the Deepwater Horizon oil spill, finding that altered bacterial communities encode a memory of prior contamination, even after the contaminants themselves have been fully degraded. We show that the bacterial strains that are most useful for detecting oil and uranium are known to interact with these substrates, indicating that this statistical approach uncovers ecologically meaningful interactions consistent with previous experimental observations. Future efforts should focus on evaluating the geographical generalizability of these associations. Taken as a whole, these results indicate that ubiquitous, natural bacterial communities can be used as in situ environmental sensors that respond to and capture perturbations caused by human impacts. These in situ biosensors rely on environmental selection rather than directed engineering, and so this approach could be rapidly deployed and scaled as sequencing technology continues to become faster, simpler, and less expensive.
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spelling pubmed-44360782015-05-25 Natural Bacterial Communities Serve as Quantitative Geochemical Biosensors Smith, Mark B. Rocha, Andrea M. Smillie, Chris S. Olesen, Scott W. Paradis, Charles Wu, Liyou Campbell, James H. Fortney, Julian L. Mehlhorn, Tonia L. Lowe, Kenneth A. Earles, Jennifer E. Phillips, Jana Techtmann, Steve M. Joyner, Dominique C. Elias, Dwayne A. Bailey, Kathryn L. Hurt, Richard A. Preheim, Sarah P. Sanders, Matthew C. Yang, Joy Mueller, Marcella A. Brooks, Scott Watson, David B. Zhang, Ping He, Zhili Dubinsky, Eric A. Adams, Paul D. Arkin, Adam P. Fields, Matthew W. Zhou, Jizhong Alm, Eric J. Hazen, Terry C. mBio Research Article Biological sensors can be engineered to measure a wide range of environmental conditions. Here we show that statistical analysis of DNA from natural microbial communities can be used to accurately identify environmental contaminants, including uranium and nitrate at a nuclear waste site. In addition to contamination, sequence data from the 16S rRNA gene alone can quantitatively predict a rich catalogue of 26 geochemical features collected from 93 wells with highly differing geochemistry characteristics. We extend this approach to identify sites contaminated with hydrocarbons from the Deepwater Horizon oil spill, finding that altered bacterial communities encode a memory of prior contamination, even after the contaminants themselves have been fully degraded. We show that the bacterial strains that are most useful for detecting oil and uranium are known to interact with these substrates, indicating that this statistical approach uncovers ecologically meaningful interactions consistent with previous experimental observations. Future efforts should focus on evaluating the geographical generalizability of these associations. Taken as a whole, these results indicate that ubiquitous, natural bacterial communities can be used as in situ environmental sensors that respond to and capture perturbations caused by human impacts. These in situ biosensors rely on environmental selection rather than directed engineering, and so this approach could be rapidly deployed and scaled as sequencing technology continues to become faster, simpler, and less expensive. American Society of Microbiology 2015-05-12 /pmc/articles/PMC4436078/ /pubmed/25968645 http://dx.doi.org/10.1128/mBio.00326-15 Text en Copyright © 2015 Smith et al. http://creativecommons.org/licenses/by-nc-sa/3.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution-Noncommercial-ShareAlike 3.0 Unported license (http://creativecommons.org/licenses/by-nc-sa/3.0/) , which permits unrestricted noncommercial use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Smith, Mark B.
Rocha, Andrea M.
Smillie, Chris S.
Olesen, Scott W.
Paradis, Charles
Wu, Liyou
Campbell, James H.
Fortney, Julian L.
Mehlhorn, Tonia L.
Lowe, Kenneth A.
Earles, Jennifer E.
Phillips, Jana
Techtmann, Steve M.
Joyner, Dominique C.
Elias, Dwayne A.
Bailey, Kathryn L.
Hurt, Richard A.
Preheim, Sarah P.
Sanders, Matthew C.
Yang, Joy
Mueller, Marcella A.
Brooks, Scott
Watson, David B.
Zhang, Ping
He, Zhili
Dubinsky, Eric A.
Adams, Paul D.
Arkin, Adam P.
Fields, Matthew W.
Zhou, Jizhong
Alm, Eric J.
Hazen, Terry C.
Natural Bacterial Communities Serve as Quantitative Geochemical Biosensors
title Natural Bacterial Communities Serve as Quantitative Geochemical Biosensors
title_full Natural Bacterial Communities Serve as Quantitative Geochemical Biosensors
title_fullStr Natural Bacterial Communities Serve as Quantitative Geochemical Biosensors
title_full_unstemmed Natural Bacterial Communities Serve as Quantitative Geochemical Biosensors
title_short Natural Bacterial Communities Serve as Quantitative Geochemical Biosensors
title_sort natural bacterial communities serve as quantitative geochemical biosensors
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4436078/
https://www.ncbi.nlm.nih.gov/pubmed/25968645
http://dx.doi.org/10.1128/mBio.00326-15
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