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Characteristic substructures and properties in chemical carcinogens studied by the cascade model

机译:级联模型研究化学致癌物的特征亚结构和性质

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Motivation: Chemical carcinogenicity is an important subject in health and environmental sciences, and a reliable method is expected to identify characteristic factors for carcinogenicity. The predictive toxicology challenge (PTC) 2000-2001 has provided the opportunity for various data mining methods to evaluate their performance. The cascade model, a data mining method developed by the author, has the capability to mine for local correlations in data sets with a large number of attributes. The current paper explores the effectiveness of the method on the problem of chemical carcinogenicity. Results: Rodent carcinogenicity of 417 compounds examined by the National Toxicology Program (NTP) was used as the training set. The analysis by the cascade model, for example, could obtain a rule 'Highly flexible molecules are carcinogenic, if they have no hydrogen bond acceptors in halogenated alkanes and alkenes'. Resulting rules are applied to predict the activity of 185 compounds examined by the FDA. The ROC analysis performed by the PTC organizers has shown that the current method has excellent predictive power for the female rat data.
机译:动机:化学致癌性是健康和环境科学中的重要主题,人们期望找到一种可靠的方法来鉴定致癌性的特征因素。预测毒理学挑战(PTC)2000-2001为各种数据挖掘方法评估其性能提供了机会。级联模型是作者开发的一种数据挖掘方法,具有挖掘具有大量属性的数据集中的局部相关性的能力。本文探讨了该方法在化学致癌性问题上的有效性。结果:使用国家毒理学计划(NTP)检查的417种化合物的啮齿动物致癌性作为训练集。例如,通过级联模型进行的分析可以获得一条规则:“如果在卤代烷烃和烯烃中没有氢键受体,则高度柔性的分子会致癌。”所得规则适用于预测FDA检查的185种化合物的活性。 PTC组织者进行的ROC分析表明,当前方法对雌性大鼠数据具有出色的预测能力。

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