首页> 美国卫生研究院文献>Biochemistry Research International >Molecular Modeling of Antimalarial Agents by 3D-QSAR Study and Molecular Docking of Two Hybrids 4-Aminoquinoline-135-triazine and 4-Aminoquinoline-oxalamide Derivatives with the Receptor Protein in Its Both Wild and Mutant Types
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Molecular Modeling of Antimalarial Agents by 3D-QSAR Study and Molecular Docking of Two Hybrids 4-Aminoquinoline-135-triazine and 4-Aminoquinoline-oxalamide Derivatives with the Receptor Protein in Its Both Wild and Mutant Types

机译:通过3D-QSAR研究抗疟剂的分子模型以及野生型和突变型受体蛋白两个杂种4-氨基喹啉-135-三嗪和4-氨基喹啉-草酰胺衍生物的分子对接

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摘要

Modeling studies using 3D-QSAR and molecular docking methods were performed on a set of 34 hybrids of 4-aminoquinoline derivatives previously studied as effective antimalarial agents of wild type and quadruple mutant Plasmodium falciparum dihydrofolate reductase (DHFR). So, the famous mathematical method multiple linear regression (MLR) was explored to build the QSAR model. The DFT-B3LYP method with the basis set 6-31G was used to calculate the quantum chemical descriptors, chosen to represent the electronic descriptors of molecular structures. On the contrary, the MM2 method was used to calculate lipophilic, geometrical, physicochemical, and steric descriptors. The QSAR model tested with artificial neural network (ANN) method shows high performance towards its predictability. The predicted model was confirmed by three validation methods: leave-one-out (LOO) cross validation, Y-randomization, and validation external. The molecular docking study of three compounds >9, >11, and >26 on both wild and quadruple mutant types of pf-DHFR-TS as the protein target helps to understand more and then predict the binding modes with the binding sites.
机译:使用3D-QSAR和分子对接方法进行的建模研究是对一组34种4-氨基喹啉衍生物的杂种进行的,该杂种先前被研究为野生型和四倍突变型恶性疟原虫二氢叶酸还原酶(DHFR)的有效抗疟剂。因此,探索了著名的数学方法多元线性回归(MLR)以建立QSAR模型。使用具有基础集6-31G的DFT-B3LYP方法来计算量子化学描述符,选择该量子化学描述符来表示分子结构的电子描述符。相反,MM2方法用于计算亲脂性,几何,物理化学和空间描述符。用人工神经网络(ANN)方法测试的QSAR模型在可预测性方面显示出高性能。通过三种验证方法确认了预测模型:留一法(LOO)交叉验证,Y随机化和外部验证。三种化合物> 9 ,> 11 和> 26 的分子对接研究pf-DHFR-TS作为蛋白质的野生型和四型突变体目标有助于了解更多信息,然后预测与结合位点的结合方式。

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