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Predicting the mutagenic potential of chemicals in tobacco products usingin silicotoxicology tools

机译:在硅毒理学工具中预测烟草产品中化学品的致突变性潜力

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Tobacco products contain thousands of chemicals, including addictive and toxic chemicals. We utilizedin silicotoxicology tools to predict in a validation test and in a separate screening test, the mutagenic potential of chemicals reported in tobacco products and tobacco smoke. Different publicly available (quantitative) structure-activity relationship (Q)SAR software platforms were used in this study. The models were validated against 900 chemicals relevant to tobacco for which experimental Ames mutagenicity data are available from public sources. The predictive performance of the individual and combined (Q)SAR models was evaluated using various performance metrics. All the (Q)SAR models represented >95% of the tobacco chemical space indicating a high potential for screening tobacco products. All the models performed well and predicted mutagens and nonmutagens with 75-95% accuracy, 66-94% sensitivity and 73-97% specificity. Subsequently, in a screening test, a combination of complementary SAR-based and QSAR-based models was used to predict the mutagenicity of 6820 chemicals catalogued in tobacco products and/or tobacco smoke. More than 1200 chemicals identified in tobacco products are predicted to have mutagenic potential, with 900 potential mutagens in tobacco smoke. This research demonstrates the validity ofin silico(Q)SAR tools to make mutagenicity predictions for chemicals in tobacco products and/or tobacco smoke, and suggest they hold utility as screening tools for hazard identification to inform tobacco regulatory science.
机译:烟草产品含有数千种化学物质,包括成瘾性和有毒化学物质。我们利用硅毒理学工具在验证试验和单独筛选试验中预测烟草产品和烟草烟雾中报告的化学物质的致突变潜力。本研究使用了不同的公开(定量)构效关系(Q)SAR软件平台。这些模型针对900种与烟草有关的化学品进行了验证,艾姆斯的实验致突变性数据可从公共来源获得。使用各种性能指标评估单个和组合(Q)SAR模型的预测性能。所有(Q)SAR模型都代表了>95%的烟草化学空间,表明筛选烟草产品的潜力很大。所有模型均表现良好,预测诱变剂和非诱变剂的准确率为75-95%,敏感性为66-94%,特异性为73-97%。随后,在筛选试验中,使用基于SAR和QSAR的互补模型组合预测烟草产品和/或烟草烟雾中编目的6820种化学品的致突变性。据预测,在烟草产品中发现的1200多种化学物质具有致突变潜力,在烟草烟雾中有900种潜在致突变物质。这项研究证明了硅(Q)SAR工具对烟草产品和/或烟草烟雾中的化学物质进行致突变性预测的有效性,并表明它们可作为危害识别的筛查工具,为烟草监管科学提供信息。

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