Identifying chemicals based on receptor binding/bioactivation/mechanistic explanation associated with potential to elicit hepatotoxicity and to support structure activity relationship-based read-across

IF 2.9 Q2 TOXICOLOGY
Shengde Wu, George Daston, Jane Rose, Karen Blackburn, Joan Fisher, Allison Reis, Bastian Selman, Jorge Naciff
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引用次数: 0

Abstract

The liver is the most common target organ in toxicology studies. The development of chemical structural alerts for identifying hepatotoxicity will play an important role in in silico model prediction and help strengthen the identification of analogs used in structure activity relationship (SAR)- based read-across. The aim of the current study is development of an SAR-based expert-system decision tree for screening of hepatotoxicants across a wide range of chemistry space and proposed modes of action for clustering of chemicals using defined core chemical categories based on receptor-binding or bioactivation. The decision tree is based on ∼ 1180 different chemicals that were reviewed for hepatotoxicity information. Knowledge of chemical receptor binding, metabolism and mechanistic information were used to group these chemicals into 16 different categories and 102 subcategories: four categories describe binders to 9 different receptors, 11 categories are associated with possible reactive metabolites (RMs) and there is one miscellaneous category. Each chemical subcategory has been associated with possible modes of action (MOAs) or similar key structural features. This decision tree can help to screen potential liver toxicants associated with core structural alerts of receptor binding and/or RMs and be used as a component of weight of evidence decisions based on SAR read-across, and to fill data gaps.

Abstract Image

基于受体结合/生物激活/机制解释识别可能引起肝毒性的化学物质,并支持基于结构活性关系的跨读
肝脏是毒理学研究中最常见的靶器官。用于识别肝毒性的化学结构警报的开发将在计算机模型预测中发挥重要作用,并有助于加强基于结构-活性关系(SAR)的阅读中使用的类似物的识别。当前研究的目的是开发一种基于SAR的专家系统决策树,用于在广泛的化学空间中筛选肝毒物,并提出了使用基于受体结合或生物活化的定义核心化学类别对化学品进行聚类的作用模式。决策树基于~1180种不同的化学物质,这些化学物质已被审查用于肝毒性信息。利用化学受体结合、代谢和机制信息的知识,将这些化学物质分为16个不同类别和102个子类别:4个类别描述了9个不同受体的结合物,11个类别与可能的反应性代谢产物(RM)有关,还有一个杂类。每个化学子类别都与可能的作用模式(MOAs)或类似的关键结构特征有关。该决策树可以帮助筛选与受体结合和/或RM的核心结构警报相关的潜在肝脏毒物,并被用作基于SAR读数的证据权重决策的组成部分,并填补数据空白。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Current Research in Toxicology
Current Research in Toxicology Environmental Science-Health, Toxicology and Mutagenesis
CiteScore
4.70
自引率
3.00%
发文量
33
审稿时长
82 days
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