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基于特征的分子网络用于鉴定有机微量污染物(包括代谢物),通过非靶向分析应用于河岸过滤。

Feature-based molecular networking for identification of organic micropollutants including metabolites by non-target analysis applied to riverbank filtration.

机构信息

Institute of Geology and Palaeontology - Applied Geology, University of Münster, Corrensstraße 24, 48149, Münster, Germany.

Institute of Inorganic and Analytical Chemistry, University of Münster, Corrensstraße 28/30, 48149, Münster, Germany.

出版信息

Anal Bioanal Chem. 2021 Sep;413(21):5291-5300. doi: 10.1007/s00216-021-03500-7. Epub 2021 Jul 20.

Abstract

Due to growing concern about organic micropollutants and their transformation products (TP) in surface and drinking water, reliable identification of unknowns is required. Here, we demonstrate how non-target liquid chromatography (LC)-high-resolution tandem mass spectrometry (MS/MS) and the feature-based molecular networking (FBMN) workflow provide insight into water samples from four riverbank filtration sites with different redox conditions. First, FBMN prioritized and connected drinking water relevant and seasonally dependent compounds based on a modification-aware MS/MS cosine similarity. Within the resulting molecular networks, forty-three compounds were annotated. Here, carbamazepine, sartans, and their respective TP were investigated exemplarily. With chromatographic information and spectral similarity, four additional TP (dealkylated valsartan, dealkylated irbesartan, two oxygenated irbesartan isomers) and olmesartan were identified and partly verified with an authentic standard. In this study, sartans and TP were investigated and grouped regarding their removal behavior under different redox conditions and seasons for the first time. Antihypertensives were grouped into compounds being well removed during riverbank filtration, those primarily removed under anoxic conditions, and rather persistent compounds. Observed seasonal variations were mainly limited to varying river water concentrations. FBMN is a powerful tool for identifying previously unknown or unexpected compounds and their TP in water samples by non-target analysis.

摘要

由于人们对地表水和饮用水中的有机微量污染物及其转化产物 (TP) 越来越关注,因此需要可靠地识别未知物。在这里,我们展示了非靶向液相色谱 (LC)-高分辨率串联质谱 (MS/MS) 和基于特征的分子网络 (FBMN) 工作流程如何深入了解来自四个具有不同氧化还原条件的河岸过滤点的水样。首先,FBMN 根据基于 MS/MS 余弦相似性的修饰感知对与饮用水相关且具有季节性依赖性的化合物进行优先级排序和连接。在所得到的分子网络中,注释了四十三种化合物。在这里,卡马西平、沙坦类药物及其各自的 TP 被作为示例进行了研究。根据色谱信息和光谱相似性,鉴定出了另外四种 TP(去烷基缬沙坦、去烷基厄贝沙坦、两种含氧厄贝沙坦异构体)和奥美沙坦,并使用真实标准对其中一些进行了部分验证。在这项研究中,首次研究了沙坦类药物及其 TP 在不同氧化还原条件和季节下的去除行为,并进行了分组。降压药被分为在河岸过滤过程中去除效果良好的化合物、主要在缺氧条件下去除的化合物和相对持久的化合物。观察到的季节性变化主要限于河水浓度的变化。FBMN 是一种通过非靶向分析识别水样中以前未知或意外的化合物及其 TP 的强大工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d5f8/8405475/d05e6bc8d0a6/216_2021_3500_Fig1_HTML.jpg

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