Prediction on the mutagenicity of nitroaromatic compounds using quantum chemistry descriptors based QSAR and machine learning derived classification methods

Nitroaromatic compounds (NACs) are an important type of environmental organic pollutants. However, it is lack of sufficient information relating to their potential adverse effects on human health and the environment due to the limited resources. Thus, using in silico technologies to assess their pot...

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Veröffentlicht in:Ecotoxicology and environmental safety 2019-12, Vol.186, p.109822, Article 109822
Hauptverfasser: Hao, Yuxing, Sun, Guohui, Fan, Tengjiao, Sun, Xiaodong, Liu, Yongdong, Zhang, Na, Zhao, Lijiao, Zhong, Rugang, Peng, Yongzhen
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Sprache:eng
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Zusammenfassung:Nitroaromatic compounds (NACs) are an important type of environmental organic pollutants. However, it is lack of sufficient information relating to their potential adverse effects on human health and the environment due to the limited resources. Thus, using in silico technologies to assess their potential hazardous effects is urgent and promising. In this study, quantitative structure activity relationship (QSAR) and classification models were constructed using a set of NACs based on their mutagenicity against Salmonella typhimurium TA100 strain. For QSAR studies, DRAGON descriptors together with quantum chemistry descriptors were calculated for characterizing the detailed molecular information. Based on genetic algorithm (GA) and multiple linear regression (MLR) analyses, we screened descriptors and developed QSAR models. For classification studies, seven machine learning methods along with six molecular fingerprints were applied to develop qualitative classification models. The goodness of fitting, reliability, robustness and predictive performance of all developed models were measured by rigorous statistical validation criteria, then the best QSAR and classification models were chosen. Moreover, the QSAR models with quantum chemistry descriptors were compared to that without quantum chemistry descriptors and previously reported models. Notably, we also obtained some specific molecular properties or privileged substructures responsible for the high mutagenicity of NACs. Overall, the developed QSAR and classification models can be utilized as potential tools for rapidly predicting the mutagenicity of new or untested NACs for environmental hazard assessment and regulatory purposes, and may provide insights into the in vivo toxicity mechanisms of NACs and related compounds. [Display omitted] •An excellent QSAR model was developed for the mutagenicity of nitroaromatics.•Classification models were built to classify the high mutagenic nitroaromatics.•Specific molecular properties related to the high mutagenicity were obtained.•Privileged substructures provide better explanations for the high mutagenicity.•Our models can be used to rapidly predict the mutagenicity for hazard assessment.
ISSN:0147-6513
1090-2414
DOI:10.1016/j.ecoenv.2019.109822