| Literature DB >> 32670548 |
Changsheng Jiang1, Piaopiao Zhao1, Weihua Li1, Yun Tang1, Guixia Liu1.
Abstract
Neurotoxicity is one of the main causes of drug withdrawal, and the biological experimental methods of detecting neurotoxic toxicity are time-consuming and laborious. In addition, the existing computational prediction models of neurotoxicity still have some shortcomings. In response to these shortcomings, we collected a large number of data set of neurotoxicity and used PyBioMed molecular descriptors and eight machine learning algorithms to construct regression prediction models of chemical neurotoxicity. Through the cross-validation and test set validation of the models, it was found that the extra-trees regressor model had the best predictive effect on neurotoxicity ([Formula: see text] = 0.784). In addition, we get the applicability domain of the models by calculating the standard deviation distance and the lever distance of the training set. We also found that some molecular descriptors are closely related to neurotoxicity by calculating the contribution of the molecular descriptors to the models. Considering the accuracy of the regression models, we recommend using the extra-trees regressor model to predict the chemical autonomic neurotoxicity.Entities:
Keywords: applicability domain; computational toxicology; machine learning; neurotoxicity
Year: 2020 PMID: 32670548 PMCID: PMC7329181 DOI: 10.1093/toxres/tfaa016
Source DB: PubMed Journal: Toxicol Res (Camb) ISSN: 2045-452X Impact factor: 3.524