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通过非靶向筛查和聚类分析揭示河流中有机微量污染物的纵向污染模式。

Unraveling longitudinal pollution patterns of organic micropollutants in a river by non-target screening and cluster analysis.

机构信息

Helmholtz Centre for Environmental Research - UFZ, Department of Effect-Directed Analysis, Permoserstr.15, 04318 Leipzig, Germany; RWTH Aachen University, Institute for Environmental Research (Biology V), Department of Ecosystem Analysis (ESA), Worringer Weg 1, 52074 Aachen, Germany.

Helmholtz Centre for Environmental Research - UFZ, Department of Effect-Directed Analysis, Permoserstr.15, 04318 Leipzig, Germany; RWTH Aachen University, Institute for Environmental Research (Biology V), Department of Ecosystem Analysis (ESA), Worringer Weg 1, 52074 Aachen, Germany.

出版信息

Sci Total Environ. 2020 Jul 20;727:138388. doi: 10.1016/j.scitotenv.2020.138388. Epub 2020 Apr 6.

Abstract

The pollution of aquatic ecosystems with complex and largely unknown mixtures of organic micropollutants is not sufficiently addressed with current monitoring strategies based on target screening methods. In this study, we implemented an open-source workflow based on non-target screening to unravel longitudinal pollution patterns of organic micropollutants along a river course. The 47 km long Holtemme River, a tributary of the Bode River (both Saxony-Anhalt, Germany), was used as a case study. Sixteen grab samples were taken along the river and analyzed by liquid chromatography coupled to high-resolution mass spectrometry. We applied a cluster analysis specifically designed for longitudinal data sets to identify spatial pollutant patterns and prioritize peaks for compound identification. Three main pollution patterns were identified representing pollutants entering a) from wastewater treatment plants, b) at the confluence with the Bode River and c) from diffuse and random inputs via small point sources and groundwater input. By further sub-clustering of the main patterns, source-related fingerprints were revealed. The main patterns were characterized by specific isotopologue signatures and the abundance of peaks in homologue series representing the major (pollution) sources. Furthermore, we identified 25 out of 38 representative compounds for the patterns by structure elucidation. The workflow represents an important contribution to the ongoing attempts to understand, monitor, prioritize and manage complex environmental mixtures and may be applied to other settings.

摘要

水生生态系统受到复杂且大部分未知的有机微量污染物混合物的污染,而当前基于目标筛选方法的监测策略并不能充分解决这一问题。在本研究中,我们采用了基于非目标筛选的开源工作流程,以揭示沿河道有机微量污染物的纵向污染模式。47 公里长的 Holtemme 河是德国萨克森-安哈尔特州 Bode 河的一条支流,被用作案例研究。沿河流采集了 16 个抓取样本,并通过液相色谱-高分辨率质谱进行分析。我们应用了专门为纵向数据集设计的聚类分析来识别空间污染物模式,并为化合物鉴定确定优先级峰。确定了三个主要的污染模式,代表污染物进入河流的来源:a)来自污水处理厂,b)在与 Bode 河的汇合处,c)来自小型点源和地下水输入的扩散和随机输入。通过对主要模式的进一步子聚类,揭示了与来源相关的指纹。主要模式的特征是特定的同位素特征以及同系物系列中代表主要(污染)来源的峰的丰度。此外,我们通过结构阐明鉴定出 38 种代表性化合物中的 25 种。该工作流程为理解、监测、优先排序和管理复杂环境混合物的持续尝试做出了重要贡献,并可应用于其他环境。

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