Natural Bacterial Communities Serve as Quantitative Geochemical Biosensors

Mark Smith(Massachusetts Institute of Technology), Andrea M. Rocha(Oak Ridge National Laboratory), Christopher S. Smillie(Massachusetts Institute of Technology), Scott W. Olesen(Massachusetts Institute of Technology), Charles J. Paradis(University of Tennessee at Knoxville), Liyou Wu(University of Oklahoma), James H. Campbell(Northwest Missouri State University), Julian L. Fortney(University of Tennessee at Knoxville), Tonia L. Mehlhorn(Oak Ridge National Laboratory), Kenneth A. Lowe(Oak Ridge National Laboratory), Jennifer Earles(Oak Ridge National Laboratory), Jana R. Phillips(Oak Ridge National Laboratory), Steve M. Techtmann(University of Tennessee at Knoxville), Dominique C. Joyner(University of Tennessee at Knoxville), Dwayne A. Elias(Oak Ridge National Laboratory), Kathryn L. Bailey(Oak Ridge National Laboratory), Richard A. Hurt(Oak Ridge National Laboratory), Sarah P. Preheim(Massachusetts Institute of Technology), Matthew C. Sanders(Massachusetts Institute of Technology), Joy Yang(Massachusetts Institute of Technology), Marcella A. Mueller(Oak Ridge National Laboratory), Scott C. Brooks(Oak Ridge National Laboratory), David B. Watson(Oak Ridge National Laboratory), Ping Zhang(University of Oklahoma), Zhili He(University of Oklahoma), Eric A. Dubinsky(Lawrence Berkeley National Laboratory), Paul D. Adams(Lawrence Berkeley National Laboratory), Adam P. Arkin(Lawrence Berkeley National Laboratory), Matthew W. Fields(Montana State University), Jizhong Zhou(University of Oklahoma), Eric J. Alm(Massachusetts Institute of Technology), Terry C. Hazen(Oak Ridge National Laboratory)
mBio
May 14, 2015
Cited by 251Open Access
Full Text

Abstract

UNLABELLED: 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. IMPORTANCE: Here we show that DNA from natural bacterial communities can be used as a quantitative biosensor to accurately distinguish unpolluted sites from those contaminated with uranium, nitrate, or oil. These results indicate that bacterial communities can be used as environmental sensors that respond to and capture perturbations caused by human impacts.


Related Papers

No related papers found

Powered by citation graph analysis