基于网络药理学分析预测抗抑郁药作为新兴污染物在鱼类中造成的潜在风险

IF 2.6 3区 医学 Q3 TOXICOLOGY Toxicology in Vitro Pub Date : 2024-06-06 DOI:10.1016/j.tiv.2024.105872
Jinru Zhao , Jian Gao , Sijia Ma, Xintong Chen, Jun Wang
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引用次数: 0

摘要

抗抑郁药是一类常见的新出现的药物污染物(PECs),具有复杂的药理学特征,本研究采用基于网络药理学的分析方法,同时鉴别抗抑郁药的广泛潜在环境风险和健康影响,并对在实际暴露情况下鱼类因暴露于抗抑郁药及其混合物而可能出现的不良表型进行硅预测。结果表明,在全球 50 个国家的水环境中检测到了 39 种抗抑郁药中的 24 种。以中国的环境现实暴露情景为例,根据鱼类血浆模型生成的暴露鱼类抗抑郁药残留的预测血药浓度从 37.89(阿普唑仑)到 16,772.05 (舍曲林)纳克/升不等。在不考虑浓度数据的情况下,基于危害的生物活性网络由 148 个潜在靶点和 701 个抗抑郁药-靶点相互作用组成。根据中国实际暴露情况下鱼类血液中药物浓度的预测值,对每个抗抑郁药-靶点相互作用节点进行过滤后,完善了基于环境风险的网络,结果表明,鱼类体内浓度等于或低于环境暴露水平的抗抑郁药及其混合物可能会调节11个靶点,包括毒蕈碱乙酰胆碱受体M1、α-2B肾上腺素能受体、5-羟色胺2 A受体等。中国水样中环境相关浓度的抗抑郁剂可能会干扰暴露鱼类的行为、应激反应、趋光性和发育。
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Predicting the potential risks posed by antidepressants as emerging contaminants in fish based on network pharmacological analysis

This study conducted a network pharmacology-based analysis to simultaneously discern a broad spectrum of potential environmental risks and health effects of antidepressants, a common class of pharmaceutical emerging contaminants (PECs) possessing a complex pharmacological profile, and in silico predict the adverse phenotypes potentially occurring in fish associated with exposure to antidepressants and their mixtures under realistic exposure scenarios. Results showed that 24 of the included 39 antidepressants had been detected worldwide in water environment across 50 countries. Using the environmentally realistic exposure scenario for China as an example, the predicted blood concentrations of antidepressant residues that were generated based on the Fish Plasma Model ranged from 37.89 (Alprazolam) to 16,772.05 (Sertraline) ng/L in exposed fish. Hazard-based bioactivity network without regard to concentration data was composed of 148 potential targets and 701 antidepressant-target interactions. After filtering each antidepressant-target interaction node using the predicted drug concentrations in the blood of fish under realistic exposure scenarios in China, an environmental risk-based network was refined and showed that 11 targets, including muscarinic acetylcholine receptor M1, alpha-2B adrenergic receptor, serotonin 2 A receptor, etc. might be modulated by antidepressants at concentrations equal to or below the environmental exposure levels and their mixtures in fish. Environmentally relevant concentrations of antidepressants in water samples from China might perturb the behavior, stress response, phototaxis, and development in exposed fish.

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来源期刊
Toxicology in Vitro
Toxicology in Vitro 医学-毒理学
CiteScore
6.50
自引率
3.10%
发文量
181
审稿时长
65 days
期刊介绍: Toxicology in Vitro publishes original research papers and reviews on the application and use of in vitro systems for assessing or predicting the toxic effects of chemicals and elucidating their mechanisms of action. These in vitro techniques include utilizing cell or tissue cultures, isolated cells, tissue slices, subcellular fractions, transgenic cell cultures, and cells from transgenic organisms, as well as in silico modelling. The Journal will focus on investigations that involve the development and validation of new in vitro methods, e.g. for prediction of toxic effects based on traditional and in silico modelling; on the use of methods in high-throughput toxicology and pharmacology; elucidation of mechanisms of toxic action; the application of genomics, transcriptomics and proteomics in toxicology, as well as on comparative studies that characterise the relationship between in vitro and in vivo findings. The Journal strongly encourages the submission of manuscripts that focus on the development of in vitro methods, their practical applications and regulatory use (e.g. in the areas of food components cosmetics, pharmaceuticals, pesticides, and industrial chemicals). Toxicology in Vitro discourages papers that record reporting on toxicological effects from materials, such as plant extracts or herbal medicines, that have not been chemically characterized.
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