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3D QSAR kNN-MFA studies on thiouracil derivatives as hepatitis C virus inhibitors

机译:关于硫尿嘧啶衍生物作为丙型肝炎病毒抑制剂的3D QSAR kNN-MFA研究

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The development of new therapies to treat hepatitis C virus (HCV) infection effectively is currently an intensive area of research. To achieve this objective quantitative structure–activity relationship (QSAR) study was carried as it provides the rationale for the changes in the structure to have more potent analogs. In this article, we report 3D QSAR studies for the set of 50 HCV NS5B RNA-dependent RNA polymerase inhibitors using k-Nearest Neighbor Molecular Field Analysis (kNN-MFA) method combined with various selection procedures. By using kNN-MFA approach, various 3D QSAR models were generated to study the effect of steric and electrostatic descriptors on anti-HCV activity. The model with good external and internal predictivity for the training and test set has shown cross validation (q 2) and external validation (pred_r 2) values of 0.85 and 0.75, respectively. The steric descriptors at the grid points S_430, S_1065, and S_1165 play an important role in the design of new molecule. It also suggests the importance of aromatic or large bulky ring substituent at R1 to increase the HCV inhibitory activity as well as large bulky substituent at R2 reduces activity. This model was found to yield reliable clues for further optimization of thiouracil derivatives in the data set.
机译:有效地治疗丙型肝炎病毒(HCV)感染的新疗法的开发是当前的研究重点。为了实现这一目标,进行了定量构效关系研究(QSAR),因为它为结构变化提供了更有效的类似物提供了理论依据。在本文中,我们使用k最近邻分子场分析(kNN-MFA)方法结合各种选择程序,报告了50种HCV NS5B RNA依赖性RNA聚合酶抑制剂的3D QSAR研究。通过使用kNN-MFA方法,生成了各种3D QSAR模型,以研究空间和静电描述符对抗​​HCV活性的影响。对训练和测试集具有良好外部和内部预测性的模型显示交叉验证(q 2 )和外部验证(pred_r 2 )的值分别为0.85和0.75 。网格点S_430,S_1065和S_1165上的空间描述符在新分子的设计中起着重要作用。这也表明在R 1 上的芳香或大体积取代基对提高HCV抑制活性的重要性以及在R 2 上的大体积取代基降低活性的重要性。发现该模型为进一步优化数据集中的硫尿嘧啶衍生物提供了可靠的线索。

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    《Medicinal Chemistry Research》 |2011年第9期|p.1616-1621|共6页
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