| Literature DB >> 33421549 |
Huawei Feng1, Li Zhang2, Shimeng Li1, Lili Liu1, Tianzhou Yang1, Pengyu Yang3, Jian Zhao1, Isaiah Tuvia Arkin4, Hongsheng Liu5.
Abstract
Reproductive toxicity endpoints are a significant safety concern in the assessment of the adverse effects of chemicals in drug discovery. Computational models that can accurately predict a chemical's toxic potential are increasingly pursued to replace traditional animal experiments. Thus, ensemble learning models were built to predict the reproductive toxicity of compounds. Our ensemble models were developed using support vector machine, random forest, and extreme gradient boosting methods and 9 molecular fingerprints calculated for a dataset containing 1823 chemicals. The best prediction performance was achieved by the Ensemble-Top12 model, with an accuracy (ACC) of 86.33 %, a sensitivity (SEN) of 82.02 %, a specificity (SPE) of 90.19 %, and an area under the receiver operating characteristic curve (AUC) of 0.937 in 5-fold cross-validation and ACC, SEN, SPE, and AUC values of 84.38 %, 86.90 %, 90.67 %, and 0.920, respectively, in external validation. We also defined the applicability domain (AD) of the ensemble model by calculating the Tanimoto distance of the training set. Compared with models in existing literature, our ensemble model achieves relatively high ACC, SPE and AUC values. We also identified several fingerprint features related to chemical reproductive toxicity. Considering the performance of model, we recommend using the Ensemble-Top12 model to predict reproductive toxicity in early drug development.Entities:
Keywords: Ensemble; Machine learning; Molecular fingerprint; Prediction models; Reproductive toxicity
Year: 2021 PMID: 33421549 DOI: 10.1016/j.toxlet.2021.01.002
Source DB: PubMed Journal: Toxicol Lett ISSN: 0378-4274 Impact factor: 4.372