Predicting AAK1/GAK Dual-Target Inhibitor against SARS-CoV-2 Viral Entry into Host Cells: An in silico Approach

Xavier Chee Wezen, Cl Wen, Li Ping, Yeong Kah Ho, K. Qing, Christopher Ha, Hwang Siaw San
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Abstract

Clathrin-mediated endocytosis (CME) is a normal biological process where cellular contents are transported into the cells. However, this process is often hijacked by different viruses to enter host cells and cause infections. Recently, two proteins that regulate CME – AAK1 and GAK – have been proposed as potential therapeutic targets for designing broad-spectrum antiviral drugs. In this work, we curated two compound datasets containing 83 AAK1 inhibitors and 196 GAK inhibitors each. Subsequently, machine learning methods, namely Random Forest, Elastic Net and Sequential Minimal Optimization, were used to construct Quantitative Structure Activity Relationship (QSAR) models to predict small molecule inhibitors of AAK1 and GAK. To ensure predictivity, these models were evaluated by using Leave-One-Out (LOO) cross validation and with an external test set. In all cases, our QSAR models achieved a q2LOO in range of 0.64 to 0.84 (Root Mean Squared Error; RMSE = 0.41 to 0.52) and a q2ext in range of 0.57 to 0.92 (RMSE = 0.36 to 0.61). Besides, our QSAR models were evaluated by using additional QSAR performance metrics and y-randomization test. Finally, by using a concensus scoring approach, nine chemical compounds from the Drugbank compound library were predicted as AAK1/GAK dual-target inhibitors. The electrostatic potential maps for the nine compounds were generated and compared against two known dual-target inhibitors, sunitinib and baricitinib. Our work provides the rationale to validate these nine compounds experimentally against the protein targets AAK1 and GAK.
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预测AAK1/GAK双靶点抑制剂对SARS-CoV-2病毒进入宿主细胞的影响:一种计算机方法
网格蛋白介导的内吞作用(CME)是细胞内容物被转运到细胞内的正常生物过程。然而,这一过程经常被不同的病毒劫持,进入宿主细胞并引起感染。最近,两种调节CME的蛋白——AAK1和GAK——被认为是设计广谱抗病毒药物的潜在治疗靶点。在这项工作中,我们整理了两个化合物数据集,每个数据集包含83个AAK1抑制剂和196个GAK抑制剂。随后,采用随机森林(Random Forest)、弹性网络(Elastic Net)和顺序最小优化(Sequential Minimal Optimization)等机器学习方法构建定量结构活性关系(Quantitative Structure - Activity Relationship, QSAR)模型,预测AAK1和GAK的小分子抑制剂。为了确保预测性,这些模型通过使用Leave-One-Out (LOO)交叉验证和外部测试集进行评估。在所有情况下,我们的QSAR模型在0.64至0.84的范围内实现了q2LOO(均方根误差;RMSE = 0.41至0.52),q2ext的范围为0.57至0.92 (RMSE = 0.36至0.61)。此外,我们的QSAR模型通过使用附加的QSAR性能指标和y随机化检验进行评估。最后,通过一致性评分方法,从Drugbank化合物文库中预测9个化合物为AAK1/GAK双靶点抑制剂。生成了九种化合物的静电电位图,并与两种已知的双靶点抑制剂舒尼替尼和巴西替尼进行了比较。我们的工作为验证这9种化合物在AAK1和GAK蛋白靶点上的实验效果提供了理论依据。
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