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基于分子网络的废水中抗菌转化产物的非靶向发现。

Nontarget Discovery of Antimicrobial Transformation Products in Wastewater Based on Molecular Networks.

机构信息

State Key Laboratory of Pollution Control and Resource Reuse, School of Environment, Nanjing University, Nanjing 210046, People's Republic of China.

Jiangsu Province Ecology and Environment Protection Key Laboratory of Chemical Safety and Health Risk, Nanjing, Jiangsu 210023, China.

出版信息

Environ Sci Technol. 2023 Jun 6;57(22):8335-8346. doi: 10.1021/acs.est.2c07774. Epub 2023 May 21.

Abstract

Antimicrobial transformation products (ATPs) in the environment have raised extensive concerns in recent years due to their potential health risks. However, only a few ATPs have been investigated, and most of the transformation pathways of antimicrobials have not been completely elucidated. In this study, we developed a nontarget screening strategy based on molecular networks to detect and identify ATPs in pharmaceutical wastewater. We identified 52 antimicrobials and 49 transformation products (TPs) with a confidence level of three or above. Thirty of the TPs had not been previously reported in the environment. We assessed whether TPs could be classified as persistent, mobile, and toxic (PMT) substances based on recent European criteria for industrial substances. Owing to poor experimental data, definitive PMT classifications could not be established for novel ATPs. PMT assessment based on structurally predictive physicochemical properties revealed that 47 TPs were potential PMT substances. These results provide evidence that novel ATPs should be the focus of future research.

摘要

近年来,环境中的抗菌转化产物(ATPs)因其潜在的健康风险而引起了广泛关注。然而,目前仅对少数 ATPs 进行了研究,大多数抗菌药物的转化途径尚未完全阐明。在本研究中,我们开发了一种基于分子网络的非靶向筛选策略,用于检测和鉴定制药废水中的 ATPs。我们鉴定出 52 种抗生素和 49 种转化产物(TPs),置信水平为三或以上。其中 30 种 TPs 以前在环境中没有报道过。我们评估了 TPs 是否可以根据最近的欧洲工业物质标准被归类为持久性、迁移性和毒性(PMT)物质。由于实验数据较差,无法对新型 ATP 进行明确的 PMT 分类。基于结构预测理化性质的 PMT 评估表明,47 种 TPs 可能是 PMT 物质。这些结果表明,新型 ATPs 应该是未来研究的重点。

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