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基于AOP的转录组分析目录加速斑马鱼环境毒物的发现

AOP-Anchored Transcriptome Analysis Catalogue Accelerates the Discovery of Environmental Toxicants in Zebrafish.

作者信息

Chen Jierong, Wang Congcong, Tu Wenqing, Zhang Kun, Fent Karl, Dai Jiayin, Hecker Markus, Giesy John P, Zhao Yanbin

机构信息

State Environmental Protection Key Laboratory of Environmental Health Impact Assessment of Emerging Contaminants, School of Environmental Science and Engineering, Shanghai Jiao Tong University, 800 Dongchuan Road, Shanghai 200240, China.

School of Land Resources and Environment, Jiangxi Agricultural University, Nanchang 330045, China.

出版信息

Environ Sci Technol. 2024 Jul 17. doi: 10.1021/acs.est.4c03100.

Abstract

Current toxicity screening approaches to evaluate the vast number of environmental chemicals that require assessment are hampered due to their significant costs, time requirements, and reliance on live animal testing. The aim of the present study was to develop an adverse outcome pathway (AOP)-anchored transcriptome analysis (AATA) catalogue to expedite the discovery of environmental toxicants. 437 AOPs from the AOPwiki (https://aopwiki.org/) and 2280 transcriptomics data sets from NCBI Gene Expression Omnibus (GEO) and EMBL-EBI ArrayExpress (AE) repositories were comprehensively reviewed and analyzed. By using the differentially expressed molecular key event (mKE) genes as connection nodes, we created a large-scale environmental substance─target gene (mKE)─predicted adverse outcomes (SGAs) network that included 78 substances, 1099 genes, and 354 adverse outcomes (AOs). To validate the reliability of the network, comprehensive literature verification was conducted. We demonstrated that 164 of the 354 AOs identified have been previously characterized in the literature. The results for 136 of these AOs were consistent with the predictions of the AATA catalogue, representing an accuracy rate of 82.9%. Besides, distinct patterns in molecular KEs and AOs among categories of substances, such as biocides and metals, were demonstrated. Some representative substances, including atrazine and copper, pose significant risks to fish at various levels of biological organization. Moreover, experimental verification of the AATA predictions was conducted, including exposures of zebrafish to perfluorooctanesulfonate, cresyl diphenyl phosphate, and lanthanum. Results demonstrated consistency with predictions of the AATA catalogue, with an accuracy rate of 92.3%. Collectively, the present findings support the AATA catalogue as an efficient and promising platform for identifying environmental toxicants to fish and thereby provide novel insights into the understanding of potential risks of environmental contaminants.

摘要

由于成本高昂、耗时较长且依赖活体动物试验,当前用于评估大量需要检测的环境化学物质的毒性筛选方法受到了阻碍。本研究的目的是开发一种基于不良结局途径(AOP)的转录组分析(AATA)目录,以加速环境毒物的发现。对来自AOPwiki(https://aopwiki.org/)的437条AOP以及来自NCBI基因表达综合数据库(GEO)和欧洲生物信息研究所阵列表达库(AE)的2280个转录组数据集进行了全面审查和分析。通过使用差异表达的分子关键事件(mKE)基因作为连接节点,我们构建了一个大规模的环境物质-靶基因(mKE)-预测不良结局(SGA)网络,该网络包含78种物质、1099个基因和354个不良结局(AO)。为了验证该网络的可靠性,进行了全面的文献验证。我们证明,在已识别的354个AO中,有164个在文献中已有特征描述。其中136个AO的结果与AATA目录的预测一致,准确率为82.9%。此外,还展示了不同类别物质(如杀生物剂和金属)在分子KE和AO方面的独特模式。一些代表性物质,包括阿特拉津和铜,在生物组织的各个层面都对鱼类构成重大风险。此外,还对AATA预测进行了实验验证,包括将斑马鱼暴露于全氟辛烷磺酸、磷酸三甲苯酯和镧。结果表明与AATA目录的预测一致,准确率为92.3%。总体而言,本研究结果支持AATA目录作为识别鱼类环境毒物的有效且有前景的平台,从而为理解环境污染物的潜在风险提供了新的见解。

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