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4D-QSAR study of HEPT derivatives by electron conformational-genetic algorithm method

机译:电子构象遗传算法方法对HEPT衍生物的4D-QSAR研究

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In this work, the EC-GA method, a hybrid 4D-QSAR approach that combines the electron conformational (EC) and genetic algorithm optimization (GA) methods, was applied in order to explain pharmacophore (Pha) and predict anti-HIV-1 activity by studying 115 compounds in the class of 1-[(2-hydroxyethoxy)-methyl]-6-(phenylthio) thymine (HEPT) derivatives as non-nucleoside reverse transcriptase inhibitors (NNRTIs). The series of NNRTIs were partitioned into four training and test sets from which corresponding quantitative structure-activity relationship (QSAR) models were constructed. Analysis of the four QSAR models suggests that the three models generated from the training and test sets used in previous works yielded comparable results with those of previous studies. Model 4, the data set of which was partitioned randomly into two training and test sets with 11 descriptors, including electronical and geometrical parameters, showed good statistics both in the regression (r(training)(2) = 0.867, r(test)(2) = 0.923) and cross-validation (q(2) = 0.811, q(ext1)(2) = 0.909, q(ext2)(2) = 0.909) for the training set of 80 compounds and the test set of 27 compounds. The prediction of the anti-HIV-1 activity of HEPT compounds by means of the EC-GA method allowed for a quantitatively consistent QSAR model. In addition, eight novel compounds never tested experimentally have been designed theoretically using model 4.
机译:在这项工作中,EC-GA方法是一种结合了电子构象(EC)和遗传算法优化(GA)方法的4D-QSAR混合方法,用于解释药效团(Pha)和预测抗HIV-1通过研究1-[(2-羟基乙氧基)-甲基] -6-(苯硫基)胸腺嘧啶(HEPT)衍生物中的115种化合物作为非核苷类逆转录酶抑制剂(NNRTIs)的活性。 NNRTIs系列被分为四个训练和测试集,从中构建了相应的定量构效关系(QSAR)模型。对四个QSAR模型的分析表明,从先前工作中使用的训练集和测试集生成的三个模型产生的结果与先前研究的结果相当。模型4的数据集被随机分为两个训练集和测试集,其中包含11个描述符,包括电子和几何参数,在回归分析中均显示出良好的统计性(r(training)(2)= 0.867,r(test)( 2)= 0.923)和交叉验证(q(2)= 0.811,q(ext1)(2)= 0.909,q(ext2)(2)= 0.909),用于80种化合物的训练集和27种测试集化合物。通过EC-GA方法预测HEPT化合物的抗HIV-1活性可实现定量一致的QSAR模型。此外,理论上使用模型4设计了八种从未进行过实验测试的新型化合物。

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