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首页> 外文期刊>Chemometrics and Intelligent Laboratory Systems >Ant colony optimization as a feature selection method in the QSAR modeling of anti-HIV-1 activities of 3-(3,5-dimethylbenzyl)uracil derivatives using MLR, PLS and SVM regressions
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Ant colony optimization as a feature selection method in the QSAR modeling of anti-HIV-1 activities of 3-(3,5-dimethylbenzyl)uracil derivatives using MLR, PLS and SVM regressions

机译:使用MLR,PLS和SVM回归,将蚁群优化作为QSAR建模3-(3,5-二甲基苄基)尿嘧啶衍生物抗HIV-1活性的特征选择方法

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摘要

A quantitative structure-activity relationship (QSAR) modeling was carried out for the anti-HIV-1 activities of 3-(3,5-dimethylbenzyl)uracil derivatives. The ant colony optimization (ACO) strategy was used as a feature selection (descriptor selection) and model development method. Modeling of the relationship between selected molecular descriptors and pEC_(50) data was achieved by linear (multiple linear regression-MLR, and partial least squares regression-PLS) and nonlinear (support-vector machine regression; SVMR) methods. The QSAR models were validated by cross-validation, as well as through the prediction of activities of an external set of compounds. Both linear and nonlinear methods were found to be better than a PLS-based method using forward stepwise (FS) selection, resulting in accurate predictions, especially for the SVM regression. The squared correlation coefficients of experimental versus predicted activities for the test set obtained by MLR, PLS and SVMR models using ACO feature selection were 0.942, 0.945 and 0.991, respectively.
机译:对3-(3,5-二甲基苄基)尿嘧啶衍生物的抗HIV-1活性进行了定量构效关系(QSAR)建模。蚁群优化(ACO)策略被用作特征选择(描述符选择)和模型开发方法。通过线性(多重线性回归-MLR和偏最小二乘回归-PLS)和非线性(支持向量机回归; SVMR)方法,对选定的分子描述符与pEC_(50)数据之间的关系进行建模。通过交叉验证以及通过预测一组外部化合物的活性来验证QSAR模型。发现线性和非线性方法都比使用正向逐步选择(FS)的基于PLS的方法更好,从而产生准确的预测,尤其是对于SVM回归而言。使用ACO特征选择通过MLR,PLS和SVMR模型获得的测试集的实验活动与预测活动的平方相关系数的平方分别为0.942、0.945和0.991。

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