Author:
Yang Xiaotong,Zhang Zhengbao,Li Qing,Cai Yongming
Abstract
AbstractMutagenicity exerts adverse effects on humans. Conventional methods cannot simultaneously predict the toxicity of a large number of compounds. Most mutagenicity prediction models are based on a single experimental type and lack other experimental combination data as support, resulting in limited application scope and predictive ability. In this study, we partitioned data from GENE-TOX, CPDB, and Chemical Carcinogenesis Research Information System according to the weight-of-evidence method for modelling. In our data set, in vivo and in vitro experiments in groups as well as prokaryotic and eukaryotic cell experiments were included in accordance with the ICH guideline. We compared the two experimental combinations mentioned in the weight-of-evidence method and reintegrated the experimental data into three groups. Nine sub-models and three fusion models were established using random forest (RF), support vector machine (SVM), and back propagation (BP) neural network algorithms. When fusing base models under the same algorithm according to the ensemble rules, all models showed excellent predictive performance. The RF, SVM, and BP fusion models reached a prediction accuracy rate of 83.4%, 80.5%, 79.0% respectively. The area under the curve (AUC) reached 0.853, 0.897, 0.865 respectively. Therefore, the established fusion QSAR models can serve as an early warning system for mutagenicity of compounds.
Publisher
Springer Science and Business Media LLC
Reference22 articles.
1. ICH-M7 (R1) ICH Harmonized Guideline. Assessment and Control of DNA Reactive (Mutagenic) Impurities in Pharmaceuticals to Limit Potential Carcinogenic Risk. Current Step 4 version dated 31 March. https://www.ich.org/home.html (2017).
2. Kasamoto, S. et al. Reference control data obtained from an in vivo comet-micronucleus combination assay using Sprague Dawley rats. Exp. Toxicol. Pathol. 69(4), 187–191 (2017).
3. Corvaro, M. et al. A critical assessment of the genotoxicity profile of the fungicide tricyclazole. Environ. Mol. Mutagen. 61(3), 300–315 (2020).
4. REACH: Registration, Evaluation and Authorisation and Restriction of Chemicals. http://europa.eu.int/comm/environment/chemicals/reach.htm (2006).
5. Steger-Hartmann, T. & Boyer, S. Computer-based prediction models in regulatory toxicology. In Regulatory Toxicology (eds Reichl, F. X. & Schwenk, M.) 123–131 (Springer, 2014).
Cited by
5 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献