Biodegradation of CAHs and BTEX in groundwater at a multi-polluted pesticide site undergoing natural attenuation: Insights from identifying key bioindicators using machine learning methods based on microbiome data

IF 6.1 2区 环境科学与生态学 Q1 ENVIRONMENTAL SCIENCES Ecotoxicology and Environmental Safety Pub Date : 2025-02-01 DOI:10.1016/j.ecoenv.2024.117609
Feiyang Xia, Tingting Fan, Mengjie Wang, Lu Yang, Da Ding, Jing Wei, Yan Zhou, Dengdeng Jiang, Shaopo Deng
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Abstract

Groundwater pollution, particularly in retired pesticide sites, is a significant environmental concern due to the presence of chlorinated aliphatic hydrocarbons (CAHs) and benzene, toluene, ethylbenzene, and xylene (BTEX). These contaminants pose serious risks to ecosystems and human health. Natural attenuation (NA) has emerged as a sustainable solution, with microorganisms playing a crucial role in pollutant biodegradation. However, the interpretation of the diverse microbial communities in relation to complex pollutants is still challenging, and there is limited research in multi-polluted groundwater. Advanced machine learning (ML) algorithms help identify key microbial indicators for different pollution types (CAHs, BTEX plumes, and mixed plumes). The accuracy and Area Under the Curve (AUC) achieved by Support Vector Machines (SVM) were impressive, with values of 0.87 and 0.99, respectively. With the assistance of model explanation methods, we identified key bioindicators for different pollution types which were then analyzed using co-occurrence network analysis to better understand their potential roles in pollution degradation. The identified key genera indicate that oxidation and co-metabolism predominantly drive dechlorination processes within the CAHs group. In the BTEX group, the primary mechanism for BTEX degradation was observed to be anaerobic degradation under sulfate-reducing conditions. However, in the CAHs&BTEX groups, the indicative genera suggested that BTEX degradation occurred under iron-reducing conditions and reductive dechlorination existed. Overall, this study establishes a framework for harnessing the power of ML alongside co-occurrence network analysis based on microbiome data to enhance understanding and provide a robust assessment of the natural attenuation degradation process at multi-polluted sites.
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在一个多重污染的农药现场,地下水中CAHs和BTEX的生物降解经历了自然衰减:利用基于微生物组数据的机器学习方法识别关键生物指标的见解
地下水污染,特别是在废弃的农药场所,由于存在氯化脂肪烃(CAHs)和苯、甲苯、乙苯和二甲苯(BTEX),是一个重大的环境问题。这些污染物对生态系统和人类健康构成严重风险。自然衰减(NA)已成为一种可持续的解决方案,微生物在污染物的生物降解中起着至关重要的作用。然而,解释复杂污染物与不同微生物群落的关系仍然具有挑战性,对多重污染地下水的研究也很有限。先进的机器学习(ML)算法有助于识别不同污染类型(CAHs, BTEX羽状物和混合羽状物)的关键微生物指标。支持向量机(SVM)的准确率和曲线下面积(AUC)分别为0.87和0.99,令人印象深刻。在模型解释方法的帮助下,我们确定了不同污染类型的关键生物指标,然后使用共现网络分析对其进行分析,以更好地了解其在污染降解中的潜在作用。鉴定出的关键属表明,氧化和共代谢主要驱动CAHs组的脱氯过程。在BTEX组中,观察到BTEX降解的主要机制是硫酸盐还原条件下的厌氧降解。然而,在cahs和BTEX组中,指示性属表明BTEX在铁还原条件下发生降解,并且存在还原性脱氯作用。总体而言,本研究建立了一个框架,用于利用机器学习的力量以及基于微生物组数据的共现网络分析,以增强对多重污染地点自然衰减降解过程的理解并提供可靠的评估。
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来源期刊
CiteScore
12.10
自引率
5.90%
发文量
1234
审稿时长
88 days
期刊介绍: Ecotoxicology and Environmental Safety is a multi-disciplinary journal that focuses on understanding the exposure and effects of environmental contamination on organisms including human health. The scope of the journal covers three main themes. The topics within these themes, indicated below, include (but are not limited to) the following: Ecotoxicology、Environmental Chemistry、Environmental Safety etc.
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