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A prediction model of drug-induced ototoxicity developed by an optimal support vector machine (SVM) method

机译:最优支持向量机(SVM)方法建立的药物诱发耳毒性的预测模型

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摘要

Drug-induced ototoxicity, as a toxic side effect, is an important issue needed to be considered in drug discovery. Nevertheless, current experimental methods used to evaluate drug-induced ototoxicity are often time-consurning and expensive, indicating that they are not suitable for a large-scale evaluation of drug-induced ototoxicity in the early stage of drug discovery. We thus, in this investigation, established an effective computational prediction model of drug-induced ototoxicity using an optimal support vector machine (SVM) method, GA-CG-SVM. Three GA-CG-SVM models were developed based on three training sets containing agents bearing different risk levels of drug-induced ototoxicity. For comparison, models based on naive Bayesian (NB) and recursive partitioning (RP) methods were also used on the same training sets. Among all the prediction models, the GA-CG-SVM model II showed the best performance, which offered prediction accuracies of 85.33% and 83.05% for two independent test sets, respectively. Overall, the good performance of the GA-CG-SVM model II indicates that it could be used for the prediction of drug-induced ototoxicity in the early stage of drug discovery.
机译:药物引起的耳毒性,作为一种毒性副作用,是药物发现中需要考虑的重要问题。然而,当前用于评估药物诱发的耳毒性的实验方法通常是费时且昂贵的,这表明它们不适合在药物发现的早期阶段大规模评估药物诱发的耳毒性。因此,在这项研究中,我们使用最佳支持向量机(SVM)方法GA-CG-SVM建立了药物诱导的耳毒性的有效计算预测模型。在三个训练集的基础上开发了三个GA-CG-SVM模型,这些训练集包含具有不同风险水平的药物诱发的耳毒性的药物。为了进行比较,在同一训练集上还使用了基于朴素贝叶斯(NB)和递归分区(RP)方法的模型。在所有预测模型中,GA-CG-SVM模型II表现出最佳性能,对于两个独立的测试集,其预测准确度分别为85.33%和83.05%。总体而言,GA-CG-SVM模型II的良好性能表明它可以用于预测药物发现早期的药物诱导的耳毒性。

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