Wang Zhongyu, Chen Jingwen, Hong Huixiao
Key Laboratory of Industrial Ecology and Environmental Engineering (MOE), School of Environmental Science and Technology, Dalian University of Technology, Dalian 116024, China.
National Center for Toxicological Research, U.S. Food and Drug Administration, Jefferson, Arkansas, United States.
Chem Res Toxicol. 2020 Jun 15;33(6):1382-1388. doi: 10.1021/acs.chemrestox.9b00498. Epub 2020 Feb 17.
Peroxisome proliferator activator receptor gamma (PPARγ) agonist activity of chemicals is an indicator of concerned health conditions such as fatty liver and obesity. screening PPARγ agonists based on quantitative structure-activity relationship (QSAR) models could serve as an efficient and pragmatic strategy. Owing to the broad research interests in discovery of PPARγ-targeted drugs, a large amount of PPARγ agonist activity data has been produced in the field of medicinal chemistry, facilitating development of robust QSAR models. In this study, random forest classifiers were developed based on the binary-category data transformed from the heterogeneous PPARγ agonist activity data of drug-like compounds. Coupling with applicability domains, capability of the established classifiers for predicting environmental chemicals was evaluated using two external data sets. Our results demonstrated that applicability domains could enhance application of the developed classifiers to predict environmental PPARγ agonists.
化学物质的过氧化物酶体增殖物激活受体γ(PPARγ)激动剂活性是脂肪肝和肥胖等相关健康状况的一个指标。基于定量构效关系(QSAR)模型筛选PPARγ激动剂可作为一种有效且实用的策略。由于在发现PPARγ靶向药物方面有广泛的研究兴趣,药物化学领域已产生了大量的PPARγ激动剂活性数据,这有助于开发强大的QSAR模型。在本研究中,基于从类药物化合物的异质PPARγ激动剂活性数据转换而来的二元分类数据开发了随机森林分类器。结合适用域,使用两个外部数据集评估了所建立分类器预测环境化学物质的能力。我们的结果表明,适用域可以增强所开发分类器在预测环境PPARγ激动剂方面的应用。