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基于机器学习方法的 CYP2C8 抑制的计算机预测。

In Silico Prediction of CYP2C8 Inhibition with Machine-Learning Methods.

机构信息

Shanghai Key Laboratory of New Drug Design, School of Pharmacy, East China University of Science and Technology, Shanghai 200237, China.

出版信息

Chem Res Toxicol. 2021 Aug 16;34(8):1850-1859. doi: 10.1021/acs.chemrestox.1c00078. Epub 2021 Jul 13.

Abstract

Cytochrome P450 2C8 (CYP2C8) is a major drug-metabolizing enzyme in humans and is responsible for the metabolism of ∼5% drugs in clinical use. Thus, inhibition of CYP2C8, which causes potential adverse drug events, cannot be neglected. The in vitro drug interaction studies guidelines for industry issued by the FDA also point out that it needs to be determined whether investigated drugs are CYP2C8 inhibitors before clinical trials. However, current studies mainly focus on predicting the inhibitors of other major P450 enzymes, and the importance of CYP2C8 inhibition has been overlooked. Therefore, there is a need to develop models for identifying potential CYP2C8 inhibition. In this study, in silico classification models for predicting CYP2C8 inhibition were built by five machine-learning methods combined with nine molecular fingerprints. The performance of the models built was evaluated by test and external validation sets. The best model had AUC values of 0.85 and 0.90 for the test and external validation sets, respectively. The applicability domain was analyzed based on the molecular similarity and exhibited an impact on the improvement of prediction accuracy. Furthermore, several representative privileged substructures such as 1-benzo[]imidazole, 1-phenyl-1-pyrazole, and quinoline were identified by information gain and substructure frequency analysis. Overall, our results would be helpful for the prediction of CYP2C8 inhibition.

摘要

细胞色素 P450 2C8(CYP2C8)是人类中主要的药物代谢酶,负责代谢约 5%的临床应用药物。因此,不能忽视 CYP2C8 的抑制作用,否则可能会导致潜在的药物不良反应。美国 FDA 发布的《药物相互作用体外研究行业指南》也指出,在临床试验之前,需要确定所研究的药物是否为 CYP2C8 抑制剂。然而,目前的研究主要集中在预测其他主要 P450 酶的抑制剂上,而 CYP2C8 抑制作用的重要性被忽视了。因此,需要开发用于识别潜在 CYP2C8 抑制剂的模型。在这项研究中,我们使用五种机器学习方法结合九种分子指纹,构建了用于预测 CYP2C8 抑制作用的计算分类模型。通过测试集和外部验证集评估模型的性能。最佳模型在测试集和外部验证集上的 AUC 值分别为 0.85 和 0.90。我们基于分子相似性分析了适用域,并发现它对提高预测准确性有影响。此外,我们还通过信息增益和子结构频率分析确定了几个有代表性的优势子结构,如 1-苯并[]咪唑、1-苯基-1-吡唑和喹啉。总的来说,我们的研究结果有助于 CYP2C8 抑制作用的预测。

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