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基于化学结构和生物数据组合预测产前发育毒性。

Predicting Prenatal Developmental Toxicity Based On the Combination of Chemical Structures and Biological Data.

机构信息

Center for Computational and Integrative Biology, Rutgers University, Camden, New Jersey 08103, United States.

Department of Chemistry, Rutgers University, Camden, New Jersey 08102, United States.

出版信息

Environ Sci Technol. 2022 May 3;56(9):5984-5998. doi: 10.1021/acs.est.2c01040. Epub 2022 Apr 22.

Abstract

For hazard identification, classification, and labeling purposes, animal testing guidelines are required by law to evaluate the developmental toxicity potential of new and existing chemical products. However, guideline developmental toxicity studies are costly, time-consuming, and require many laboratory animals. Computational modeling has emerged as a promising, animal-sparing, and cost-effective method for evaluating the developmental toxicity potential of chemicals, such as endocrine disruptors, without the use of animals. We aimed to develop a predictive and explainable computational model for developmental toxicants. To this end, a comprehensive dataset of 1244 chemicals with developmental toxicity classifications was curated from public repositories and literature sources. Data from 2140 toxicological high-throughput screening assays were extracted from PubChem and the ToxCast program for this dataset and combined with information about 834 chemical fragments to group assays based on their chemical-mechanistic relationships. This effort revealed two assay clusters containing 83 and 76 assays, respectively, with high positive predictive rates for developmental toxicants identified with animal testing guidelines (PPV = 72.4 and 77.3% during cross-validation). These two assay clusters can be used as developmental toxicity models and were applied to predict new chemicals for external validation. This study provides a new strategy for constructing alternative chemical developmental toxicity evaluations that can be replicated for other toxicity modeling studies.

摘要

为了进行危害识别、分类和标签目的,法律要求动物测试指南用于评估新的和现有的化学产品的发育毒性潜力。然而,指导方针发育毒性研究既昂贵又耗时,并且需要大量的实验动物。计算建模已经成为一种有前途的、节省动物和具有成本效益的方法,可用于评估内分泌干扰物等化学物质的发育毒性潜力,而无需使用动物。我们旨在开发一种用于发育毒物的预测和可解释的计算模型。为此,从公共存储库和文献来源中整理了一个包含 1244 种具有发育毒性分类的化学物质的综合数据集。从 PubChem 和 ToxCast 计划中提取了 2140 个毒理学高通量筛选测定的数据,并将其与关于 834 个化学片段的信息结合在一起,根据其化学机制关系对测定进行分组。这项工作揭示了两个包含 83 和 76 个测定的测定集,它们对用动物测试指南识别的发育毒物具有较高的阳性预测率(交叉验证时的 PPV = 72.4%和 77.3%)。这两个测定集可作为发育毒性模型,并应用于预测新的化学物质进行外部验证。本研究为构建可用于其他毒性建模研究的替代化学发育毒性评估提供了一种新策略。

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