Laboratory of Biomedical Computation and Drug Design, Faculty of Pharmacy, Universitas Indonesia, Depok 16424, Indonesia.
Department of Mathematics, Faculty of Mathematics and Natural Sciences, Universitas Indonesia, Depok 16424, Indonesia.
Comput Biol Chem. 2021 Dec;95:107597. doi: 10.1016/j.compbiolchem.2021.107597. Epub 2021 Oct 30.
Dipeptidyl peptidase-4 (DPP-4) inhibitors are becoming an essential drug in the treatment of type 2 diabetes mellitus; however, some classes of these drugs exert side effects, including joint pain and pancreatitis. Studies suggest that these side effects might be related to secondary inhibition of DPP-8 and DPP-9. In this study, we identified DPP-4-inhibitor hit compounds selective against DPP-8 and DPP-9. We built a virtual screening workflow using a quantitative structure-activity relationship (QSAR) strategy based on artificial intelligence to allow faster screening of millions of molecules for the DPP-4 target relative to other screening methods. Five regression machine learning algorithms and four classification machine learning algorithms were applied to build virtual screening workflows, with the QSAR model applied using support vector regression (R 0.78) and the classification QSAR model using the random forest algorithm with 92.2% accuracy. Virtual screening results of > 10 million molecules obtained 2 716 hits compounds with a pIC value of > 7.5. Additionally, molecular docking results of several potential hit compounds for DPP-4, DPP-8, and DPP-9 identified CH0002 as showing high inhibitory potential against DPP-4 and low inhibitory potential for DPP-8 and DPP-9 enzymes. These results demonstrated the effectiveness of this technique for identifying DPP-4-inhibitor hit compounds selective for DPP-4 and against DPP-8 and DPP-9 and suggest its potential efficacy for applications to discover hit compounds of other targets.
二肽基肽酶-4(DPP-4)抑制剂在治疗 2 型糖尿病中成为一种重要的药物;然而,这些药物的一些类别会产生副作用,包括关节痛和胰腺炎。研究表明,这些副作用可能与 DPP-8 和 DPP-9 的二次抑制有关。在这项研究中,我们确定了针对 DPP-8 和 DPP-9 的 DPP-4 抑制剂命中化合物。我们建立了一个虚拟筛选工作流程,使用基于人工智能的定量构效关系(QSAR)策略,以便相对于其他筛选方法更快地筛选针对 DPP-4 靶标的数百万种分子。应用了五种回归机器学习算法和四种分类机器学习算法来构建虚拟筛选工作流程,QSAR 模型应用支持向量回归(R 0.78),分类 QSAR 模型应用随机森林算法,准确率为 92.2%。对超过 1000 万个分子进行虚拟筛选的结果获得了 2716 个 pIC 值>7.5 的命中化合物。此外,针对 DPP-4、DPP-8 和 DPP-9 的几种潜在命中化合物的分子对接结果表明,CH0002 对 DPP-4 具有高抑制潜力,对 DPP-8 和 DPP-9 酶的抑制潜力较低。这些结果表明,该技术对于识别针对 DPP-4 且针对 DPP-8 和 DPP-9 的 DPP-4 抑制剂命中化合物是有效的,并表明其在发现其他靶标命中化合物方面的潜在功效。