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
Microbiology Graduate Program, Massachusetts Institute of Technology, Cambridge, Massachusetts, USA.
Biosciences Division, Oak Ridge National Laboratory, Oak Ridge, Tennessee, USA.
mBio. 2015 May 12;6(3):e00326-15. doi: 10.1128/mBio.00326-15.
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.
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.
生物传感器经过设计可测量多种环境条件。在此我们表明,对天然微生物群落的DNA进行统计分析可用于准确识别环境污染物,包括核废料场中的铀和硝酸盐。除了污染情况,仅来自16S rRNA基因的序列数据就能定量预测从93口具有高度不同地球化学特征的井中收集到的26种地球化学特征的丰富目录。我们将此方法扩展到识别受深水地平线漏油事件中烃类污染的地点,发现即使污染物本身已完全降解,改变的细菌群落仍编码着先前污染的记忆。我们表明,对检测石油和铀最有用的细菌菌株已知与这些底物相互作用,这表明这种统计方法揭示了与先前实验观察结果一致的具有生态意义的相互作用。未来的工作应集中于评估这些关联的地理普遍性。总体而言,这些结果表明,无处不在的天然细菌群落可作为原位环境传感器,对人类影响引起的扰动做出反应并捕捉这些扰动。这些原位生物传感器依赖于环境选择而非定向工程,因此随着测序技术继续变得更快、更简单且成本更低,这种方法可以迅速部署并扩大规模。
在此我们表明,天然细菌群落的DNA可作为定量生物传感器,准确区分未受污染的地点与受铀、硝酸盐或石油污染的地点。这些结果表明,细菌群落可作为环境传感器,对人类影响引起的扰动做出反应并捕捉这些扰动。