IWW Water Centre, Moritzstraße 26, 45476, Muelheim an der Ruhr, Germany.
Instrumental Analytical Chemistry and Centre for Water and Environmental Research (ZWU), Universitaetsstrasse 5, 45141, Essen, Germany.
Anal Bioanal Chem. 2022 Jan;414(1):425-438. doi: 10.1007/s00216-021-03263-1. Epub 2021 Mar 25.
The anthropogenic entry of organic micropollutants into the aquatic environment leads to a potential risk for drinking water resources and the drinking water itself. Therefore, sensitive screening analysis methods are needed to monitor the raw and drinking water quality continuously. Non-target screening analysis has been shown to allow for a more comprehensive investigation of drinking water processes compared to target analysis alone. However, non-target screening is challenging due to the many features that can be detected. Thus, data processing techniques to reduce the high number of features are necessary, and prioritization techniques are important to find the features of interest for identification, as identification of unknown substances is challenging as well. In this study, a drinking water production process, where drinking water is supplied by a water reservoir, was investigated. Since the water reservoir provides surface water, which is anthropogenically influenced by wastewater treatment plant (WWTP) effluents, substances originating from WWTP effluents and reaching the drinking water were investigated, because this indicates that they cannot be removed by the drinking water production process. For this purpose, ultra-performance liquid chromatography coupled with an ion-mobility high-resolution mass spectrometer (UPLC-IM-HRMS) was used in a combined approach including target, suspect and non-target screening analysis to identify known and unknown substances. Additionally, the role of ion-mobility-derived collision cross sections (CCS) in identification is discussed. To that end, six samples (two WWTP effluent samples, a surface water sample that received the effluents, a raw water sample from a downstream water reservoir, a process sample and the drinking water) were analyzed. Positive findings for a total of 60 substances in at least one sample were obtained through quantitative screening. Sixty-five percent (15 out of 23) of the identified substances in the drinking water sample were pharmaceuticals and transformation products of pharmaceuticals. Using suspect screening, further 33 substances were tentatively identified in one or more samples, where for 19 of these substances, CCS values could be compared with CCS values from the literature, which supported the tentative identification. Eight substances were identified by reference standards. In the non-target screening, a total of ten features detected in all six samples were prioritized, whereby metoprolol acid/atenolol acid (a transformation product of the two β-blockers metoprolol and atenolol) and 1,3-benzothiazol-2-sulfonic acid (a transformation product of the vulcanization accelerator 2-mercaptobenzothiazole) were identified with reference standards. Overall, this study demonstrates the added value of a comprehensive water monitoring approach based on UPLC-IM-HRMS analysis.
人为将有机微污染物输入到水生环境中,会对饮用水资源和饮用水本身带来潜在风险。因此,需要采用灵敏的筛选分析方法来持续监测原水和饮用水的水质。与仅进行目标分析相比,非目标筛选分析可更全面地调查饮用水处理过程。然而,由于可以检测到许多特征,因此非目标筛选具有一定的挑战性。因此,需要使用数据处理技术来减少大量的特征,并使用优先级技术来找到感兴趣的特征进行识别,因为识别未知物质也具有挑战性。在本研究中,调查了一个饮用水生产过程,其中饮用水由水库供应。由于水库提供地表水,而地表水受到污水处理厂(WWTP)出水的人为影响,因此研究了源自 WWTP 出水并进入饮用水的物质,因为这表明它们不能被饮用水生产过程去除。为此,采用超高效液相色谱-离子淌度高分辨质谱联用(UPLC-IM-HRMS),结合目标、可疑和非目标筛选分析,采用包括已知和未知物质的综合方法进行研究。此外,还讨论了离子淌度衍生碰撞截面(CCS)在识别中的作用。为此,分析了六个样品(两个 WWTP 出水样品、一个接收出水的地表水样品、一个下游水库的原水样品、一个处理样品和饮用水)。通过定量筛选,在至少一个样品中总共发现了 60 种物质。在饮用水样品中,有 65%(23 种中的 15 种)被鉴定的物质为药物及其药物转化产物。通过可疑筛选,在一个或多个样品中,又有 33 种物质被初步鉴定,其中对于其中的 19 种物质,CCS 值可以与文献中的 CCS 值进行比较,这支持了初步鉴定。通过参考标准,共鉴定了 8 种物质。在非目标筛选中,对所有六个样品中总共检测到的十个特征进行了优先级排序,其中发现了 metoprolol acid/atenolol acid(两种β受体阻滞剂 metoprolol 和 atenolol 的转化产物)和 1,3-benzothiazol-2-sulfonic acid(硫化促进剂 2-巯基苯并噻唑的转化产物),并用参考标准进行了鉴定。总体而言,本研究证明了基于 UPLC-IM-HRMS 分析的综合水监测方法的附加值。