水质
污染
地表水
环境科学
废水
环境化学
自来水
重金属
分析物
化学
环境工程
生物
生态学
物理化学
作者
Hong Wei,Yixing Huang,Peter J. Santiago,Khachik E. Labachyan,Sasha Ronaghi,Martin Paul Banda Magana,Yen-Hsiang Huang,Sunny C. Jiang,Allon I. Hochbaum,Regina Ragan
标识
DOI:10.1073/pnas.2210061120
摘要
Heavy metal contamination due to industrial and agricultural waste represents a growing threat to water supplies. Frequent and widespread monitoring for toxic metals in drinking and agricultural water sources is necessary to prevent their accumulation in humans, plants, and animals, which results in disease and environmental damage. Here, the metabolic stress response of bacteria is used to report the presence of heavy metal ions in water by transducing ions into chemical signals that can be fingerprinted using machine learning analysis of vibrational spectra. Surface-enhanced Raman scattering surfaces amplify chemical signals from bacterial lysate and rapidly generate large, reproducible datasets needed for machine learning algorithms to decode the complex spectral data. Classification and regression algorithms achieve limits of detection of 0.5 pM for As 3+ and 6.8 pM for Cr 6+ , 100,000 times lower than the World Health Organization recommended limits, and accurately quantify concentrations of analytes across six orders of magnitude, enabling early warning of rising contaminant levels. Trained algorithms are generalizable across water samples with different impurities; water quality of tap water and wastewater was evaluated with 92% accuracy.
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