背景(考古学)
毒物动力学
计算机科学
终点
选择(遗传算法)
生化工程
制药工业
毒性
计算生物学
化学
毒物动力学
机器学习
药理学
生物
工程类
古生物学
有机化学
实时计算
作者
H. Moustakas,M. Date,M. Kumar,T.W. Schultz,Daniel C. Liebler,T.M. Penning,D. Salvito,A.M. Api
标识
DOI:10.1021/acs.chemrestox.2c00286
摘要
Integrating computational chemistry and toxicology can improve the read-across analog approach to fill data gaps in chemical safety assessment. In read-across, structure-related parameters are compared between a target chemical with insufficient test data and one or more materials with sufficient data. Recent advances have focused on enhancing the grouping or clustering of chemicals to facilitate toxicity prediction via read-across. Analog selection ascertains relevant features, such as physical-chemical properties, toxicokinetic-related properties (bioavailability, metabolism, and degradation pathways), and toxicodynamic properties of chemicals with an emphasis on mechanisms or modes of action. However, each human health end point (genotoxicity, skin sensitization, phototoxicity, repeated dose toxicity, reproductive toxicity, and local respiratory toxicity) provides a different critical context for analog selection. Here six end point-specific, rule-based schemes are described. Each scheme creates an end point-specific workflow for filling the target material data gap by read-across. These schemes are intended to create a transparent rationale that supports the selected read-across analog(s) for the specific end point under study. This framework can systematically drive the selection of read-across analogs for each end point, thereby accelerating the safety assessment process.
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