支持向量机方法预测中药化合物的肝毒性

Ludi Jiang, Yusu He, Yanling Zhang
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引用次数: 7

摘要

本研究基于文献和网络数据库,选择490种肝毒性化合物和598种非肝毒性化合物作为肝毒性判别模型生成的数据集。计算了1664个分子描述符,包括物理化学、电荷分布和几何描述符,以表征肝毒性化合物的分子结构。结合CfsSubsetEval评价和BestFirst搜索选择分子描述符进行模型构建。在支持向量机(SVM)的帮助下,建立了一个准确率较高的判别模型。同时,该模型的准确率、灵敏度和特异性均在80%以上。并将23种具有肝毒性的中药化合物作为外部验证,进一步验证模型的准确性。然后,利用该模型对清开灵注射液中的肝毒性物质进行鉴定。结果表明,本研究为中药材研究中肝毒性化合物的预测提供了可靠的依据。
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Prediction of hepatotoxicity of traditional Chinese medicine compounds by support vector machine approach
In this study, based on literatures and web databases, 490 hepatotoxic compounds and 598 non-hepatotoxic compounds were selected as a data set for hepatotoxicity discriminative model generation. 1664 molecular descriptors, including physicochemical, charge distribution and geometrical descriptors, were calculated to characterize the molecular structure of liver toxic compounds. The combination of CfsSubsetEval valuation and BestFirst searching was used to choose molecular descriptors for model construction. With the help of support vector machine (SVM), a discriminative model with high accuracy was built. Meanwhile, the accuracy, sensitivity and specificity of this model were all above 80%. Besides, 23 traditional Chinese medicine compounds with hepatotoxicity were regarded as external validation, so as to further verify the model accuracy. Then, the present model was utilized to identify hepatotoxic compounds in Qingkailing injection. The results demonstrated that present study provides a reliable utility for the hepatotoxic compounds prediction in Chinese Medicinal Materials studies.
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