Predicting Hepatotoxicity Using ToxCast in Vitro Bioactivity and Chemical Structure

被引:98
|
作者
Liu, Jie [1 ,2 ,3 ]
Mansouri, Kamel [1 ,3 ]
Judson, Richard S. [1 ]
Martin, Matthew T. [1 ]
Hong, Huixiao [4 ]
Chen, Minjun [4 ]
Xu, Xiaowei [2 ,4 ]
Thomas, Russell S. [1 ]
Shah, Imran [1 ]
机构
[1] US EPA, Natl Ctr Computat Toxicol, Off Res & Dev, Res Triangle Pk, NC 27711 USA
[2] Univ Arkansas, Dept Informat Sci, Little Rock, AR 72204 USA
[3] Oak Ridge Inst Sci & Educ, Oak Ridge, TN 37831 USA
[4] US FDA, Div Bioinformat & Biostat, Natl Ctr Toxicol Res, Jefferson, AR 72079 USA
关键词
DECISION-SUPPORT TOOLS; PROTEIN; 18; KDA; TRANSLOCATOR PROTEIN; ENVIRONMENTAL CHEMICALS; REPRODUCTIVE TOXICITY; CLASSIFICATION; MODELS; HAZARD; DISEASE; RAT;
D O I
10.1021/tx500501h
中图分类号
R914 [药物化学];
学科分类号
100701 ;
摘要
The U.S. Tox21 and EPA ToxCast program screen thousands of environmental chemicals for bioactivity using hundreds of high-throughput in vitro assays to build predictive models of toxicity. We represented chemicals based on bioactivity and chemical structure descriptors, then used supervised machine learning to predict in vivo hepatotoxic effects. A set of 677 chemicals was represented by 711 in vitro bioactivity descriptors (from ToxCast assays), 4,376 chemical structure descriptors (from QikProp, OpenBabel, PaDEL, and PubChem), and three hepatotoxicity categories (from animal studies). Hepatotoxicants were defined by rat liver histopathology observed after chronic chemical testing and grouped into hypertrophy (161), injury (101) and proliferative lesions (99). Classifiers were built using six machine learning algorithms: linear discriminant analysis (LDA), Naive Bayes (NB), support vector machines (SVM), classification and regression trees (CART), k-nearest neighbors (KNN), and an ensemble of these classifiers (ENSMB). Classifiers of hepatotoxicity were built using chemical structure descriptors, ToxCast bioactivity descriptors, and hybrid descriptors. Predictive performance was evaluated using 10-fold cross-validation testing and in-loop, filter-based, feature subset selection. Hybrid classifiers had the best balanced accuracy for predicting hypertrophy (0.84 +/- 0.08), injury (0.80 +/- 0.09), and proliferative lesions (0.80 +/- 0.10). Though chemical and bioactivity classifiers had a similar balanced accuracy, the former were more sensitive, and the latter were more specific. CART, ENSMB, and SVM classifiers performed the best, and nuclear receptor activation and mitochondrial functions were frequently found in highly predictive classifiers of hepatotoxicity. ToxCast and ToxRefDB provide the largest and richest publicly available data sets for mining linkages between the in vitro bioactivity of environmental chemicals and their adverse histopathological outcomes. Our findings demonstrate the utility of high-throughput assays for characterizing rodent hepatotoxicants, the benefit of using hybrid representations that integrate bioactivity and chemical structure, and the need for objective evaluation of classification performance.
引用
收藏
页码:738 / 751
页数:14
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