Machine Learning-Enhanced MEC Sensors with Feature Engineering for Quantitative Analysis of Multi-Component Toxicants.

IF 5.6 3区 工程技术 Q1 CHEMISTRY, ANALYTICAL
Jiaguo Yan, Renxin Liang, Wenqing Yan, Xin Wang
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引用次数: 0

Abstract

Accelerated industrialization has caused complex mixed toxicant pollution, where synergistic or antagonistic interactions render conventional detection methods inadequate. Herein, we develop an integrated framework by pioneering the integration of microbial electrochemical systems (MECs) with machine learning (ML) for quantifying formaldehyde, tetracycline, Ag+, and Cu2+ in multi-component, multi-ratio, and multi-concentration mixtures. MECs generated dynamic current-time (I-t) signals responsive to toxicant stress, though signal overlap from mixed toxicants hindered direct quantification. Guided by toxicokinetics and electrochemical mechanisms, we developed a novel mechanism-driven feature engineering strategy with exclusively original indicators, which extracted 22 multidimensional features capturing instantaneous characteristics, kinetic patterns, and microbial stress-adaptive responses to resolve signal ambiguity, and provided biologically meaningful, high-information feature inputs that effectively bridge electrochemical response signals and ML modeling. Comparative analysis of four ML models (SVM, KNN, PLS, and RF) showed RF outperformed others, achieving R2 > 0.9 for all toxicants (formaldehyde: 0.959; tetracycline: 0.934; Ag+: 0.936; Cu2+: 0.957) with minimized MAE and RMSE. Microbial community analysis identified Geobacter anodireducens (71.5%, electroactive for heavy metals) and Comamonas testosteroni (12.9%, organic degrader) as key functional taxa, supported by KEGG enzyme abundance data. This work overcomes traditional MEC limitations via innovative feature engineering and pioneering ML integration, providing a rapid, low-cost, and high-accuracy tool for environmental mixed toxicant monitoring.

基于特征工程的机器学习增强MEC传感器用于多组分毒物定量分析。
加速的工业化造成了复杂的混合毒物污染,其中协同或拮抗相互作用使得传统的检测方法不足。在此,我们开发了一个集成框架,通过开创性地将微生物电化学系统(MECs)与机器学习(ML)集成,用于定量多组分,多比例和多浓度混合物中的甲醛,四环素,Ag+和Cu2+。mec产生响应毒物胁迫的动态电流时间(I-t)信号,尽管混合毒物的信号重叠阻碍了直接量化。在毒物动力学和电化学机制的指导下,我们开发了一种新的机制驱动的特征工程策略,该策略采用独特的原始指标,提取22个多维特征,捕捉瞬时特征、动力学模式和微生物应力适应反应,以解决信号模糊问题,并提供具有生物学意义的高信息特征输入,有效地连接电化学响应信号和ML建模。四种ML模型(SVM, KNN, PLS和RF)的对比分析表明,RF优于其他模型,在最小的MAE和RMSE下,所有毒物(甲醛:0.959,四环素:0.934,Ag+: 0.936, Cu2+: 0.957)的R2为>.9。微生物群落分析发现,Geobacter anodireducens(71.5%,对重金属具有电活性)和Comamonas testosterone(12.9%,有机降解)是关键功能类群,KEGG酶丰度数据支持这一结果。这项工作通过创新的特征工程和开创性的ML集成克服了传统MEC的局限性,为环境混合毒物监测提供了快速、低成本和高精度的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Biosensors-Basel
Biosensors-Basel Biochemistry, Genetics and Molecular Biology-Clinical Biochemistry
CiteScore
6.60
自引率
14.80%
发文量
983
审稿时长
11 weeks
期刊介绍: Biosensors (ISSN 2079-6374) provides an advanced forum for studies related to the science and technology of biosensors and biosensing. It publishes original research papers, comprehensive reviews and communications. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced. Electronic files and software regarding the full details of the calculation or experimental procedure, if unable to be published in a normal way, can be deposited as supplementary electronic material.
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