毒物
芳香烃受体
生物测定
化学
优先次序
指纹(计算)
环境化学
类金刚石
计算生物学
生物
人工智能
计算机科学
毒性
生物化学
生态学
有机化学
管理科学
分子
转录因子
经济
基因
作者
Fei Cheng,Beate I. Escher,Huizhen Li,Maria König,Yujun Tong,Jiehui Huang,Liwei He,Xinyan Wu,Xiaohan Lou,Dali Wang,Fan Wu,Yuanyuan Pei,Zhiqiang Yu,Bryan W. Brooks,Eddy Y. Zeng,Jing You
标识
DOI:10.1021/acs.est.3c10814
摘要
Identifying causative toxicants in mixtures is critical, but this task is challenging when mixtures contain multiple chemical classes. Effect-based methods are used to complement chemical analyses to identify toxicants, yet conventional bioassays typically rely on an apical and/or single endpoint, providing limited diagnostic potential to guide chemical prioritization. We proposed an event-driven taxonomy framework for mixture risk assessment that relied on high-throughput screening bioassays and toxicant identification integrated by deep learning. In this work, the framework was evaluated using chemical mixtures in sediments eliciting aryl-hydrocarbon receptor activation and oxidative stress response. Mixture prediction using target analysis explained <10% of observed sediment bioactivity. To identify additional contaminants, two deep learning models were developed to predict fingerprints of a pool of bioactive substances (event driver fingerprint, EDFP) and convert these candidates to MS-readable information (event driver ion, EDION) for nontarget analysis. Two libraries with 121 and 118 fingerprints were established, and 247 bioactive compounds were identified at confidence level 2 or 3 in sediment extract using GC-qToF-MS. Among them, 12 toxicants were analytically confirmed using reference standards. Collectively, we present a "bioactivity-signature-toxicant" strategy to deconvolute mixtures and to connect patchy data sets and guide nontarget analysis for diverse chemicals that elicit the same bioactivity.
科研通智能强力驱动
Strongly Powered by AbleSci AI