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Prediction of genotoxicity of various environmental pollutants by artificial neural network simulation

机译:人工神经网络模拟预测各种环境污染物的遗传毒性

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In order to evaluate human carcinogenic risks, genotoxicity data such as animal cancer bioassay are often not available. In this study, to assess the relevance of indicator of carcinogenic risks, we used the "molecular diversity approach" to estimate the genotoxicity based upon Salmonella genotoxicity test using the umu test and systemic toxicity data of the 82 environmental chemicals predicted by neural network simulation. The 82 environmental chemicals were randomly selected for this study according to the production and usage in Japan. Even in this challenging trial for QSTR (Quantitative Structure Toxicity Relationship) study, approaches using artificial neural networks can account for about 94% of the variation in the genotoxicity results derived by the umu-test.
机译:为了评估人类致癌风险,通常没有诸如动物癌症生物测定等遗传毒性数据。在这项研究中,为了评估致癌风险指标的相关性,我们使用“分子多样性方法”,基于沙门氏菌的遗传毒性测试,使用umu测试和由神经网络模拟预测的82种环境化学物质的系统毒性数据来评估遗传毒性。根据日本的生产和使用情况,随机选择了82种环境化学品进行此项研究。即使在这项针对QSTR(定量结构毒性关系)研究的具有挑战性的试验中,使用人工神经网络的方法仍可占由umu检验得出的遗传毒性结果变化的约94%。

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