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首页> 外文期刊>Structural Chemistry >Combination of radial distribution functions as structural descriptors with ligand-receptor interaction information in the QSAR study of some 4-anilinoquinazoline derivatives as potent EGFR inhibitors
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Combination of radial distribution functions as structural descriptors with ligand-receptor interaction information in the QSAR study of some 4-anilinoquinazoline derivatives as potent EGFR inhibitors

机译:径向分布函数的组合作为具有配体 - 受体相互作用信息的结构描述符,在一些4- anilinoquinazoline衍生物作为有效的EGFR抑制剂的QSAR研究中

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In this paper, we report the use of a mixture of radial distribution functions (RDFs) and molecular docking descriptors (MDDs), as a new group of descriptors, to construct a predictive quantitative structure-activity relationship (QSAR) model. The performance of the proposed mixed descriptors as the independent variables was checked with QSAR modeling of the anti-cancer activities of a series of 4-anilinoquinazoline analogs as the potent epidermal growth factor receptor (EGFR) inhibitors. The RDF descriptors were calculated using the available software. The docking descriptors were extracted by docking the understudied compounds into the active site of the protein with the PDB Code of 1M17 using molecular docking software. The stepwise linear regression was used to select the most important descriptors. The selected relevant descriptors were used as the inputs in the Bayesian regularization-artificial neural network (BR-ANN) as the QSAR model. The data set was randomly divided into training (35 compounds) and external test (8 compounds) sets. The mean square error (MSE) of the training set was applied for the selection of the optimal BR-ANN model. The validation of the proposed BR-ANN model was accomplished by the prediction of pIC(50) of compounds in the external test set and all molecules through the leave-one-out (LOO) technique. The results obtained confirmed the acceptable accuracy of the model (Rtest2=0.90andRLOO2=0.79).
机译:在本文中,我们报告使用径向分布函数(RDF)和分子对接描述符(MDD)的混合物作为新的描述符,构建预测定量结构 - 活动关系(QSAR)模型。用QSAR建模的抗癌活性的抗癌活动作为有效表皮生长因子受体(EGFR)抑制剂,检查所提出的混合描述符的性能。使用可用软件计算RDF描述符。通过使用分子对接软件将被分层的化合物对接到蛋白质的活性位点来提取对接描述符。逐步线性回归用于选择最重要的描述符。所选择的相关描述符被用作贝叶斯正则化 - 人工神经网络(BR-ANN)中的输入作为QSAR模型。将数据集随机分为培训(35种化合物)和外部测试(8种化合物)套。培训集的平均方误差(MSE)应用于选择最佳BR-ANN模型。所提出的BR-Ann模型的验证是通过通过休假(LOO)技术的外部测试组和所有分子的PIC(50)预测来实现的。获得的结果证实了模型的可接受准确性(rtest2 = 0.90andrloo2 = 0.79)。

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