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首页> 外文期刊>Chemometrics and Intelligent Laboratory Systems >Combination of least absolute shrinkage and selection operator with Bayesian Regularization artificial neural network (LASSO-BR-ANN) for QSAR studies using functional group and molecular docking mixed descriptors
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Combination of least absolute shrinkage and selection operator with Bayesian Regularization artificial neural network (LASSO-BR-ANN) for QSAR studies using functional group and molecular docking mixed descriptors

机译:使用官能团和分子对接混合描述符的拜耳正规化人工神经网络(Lasso-Br-Ann)与贝叶斯正则化人工神经网络(Lasso-Br-Ann)的组合。

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摘要

A combination of least absolute shrinkage and selection operator (LASSO) with Bayesian Regularization feedforward artificial neural network (LASSO-BR-ANN) was used as a new approach in the quantitative structureactivity relationship (QSAR) studies. A mixture of the docking derived descriptors with the simple functional group (structural) features was also introduced as a new ensemble of descriptors for accurate QSAR modeling. The performance of introduced approaches was tested with QSAR modeling of the biological activities (pEC(50)) of 73 azine derivatives as new non-nucleoside reverse transcriptase inhibitors (NNRTIs) for treatment of HIV disease. Molecular docking descriptors (MDDs) were generated from ligand-receptor interactions and functional group features derived using Dragon 5.5 software. The dataset was divided into three sets of training, validation, and test data. LASSO, as a penalized regression method, was applied to the training data set for the selection of the most relevant descriptors among the mixture of the structural and MDDs. LASSO selected descriptors were used as inputs in the construction of the Bayesian Regularization artificial neural network (BR-ANN) model. The results showed that the addition of functional group properties to the MDDs improves the accuracy of the model. Under the optimum conditions, LASSO-BR-ANN was successfully applied for the prediction of PEC50 values for compounds in the external test set with mean square error (MSE) and coefficient of determination (R-2) values of 0.07 and 0.88, respectively. Some of the prediction statistical parameters of the model were calculated and all of them were in their acceptable ranges, which confirm the validity of the proposed QSAR model.
机译:使用贝叶斯正则化的绝对收缩和选择操作员(套索)的组合用作定量结构性关系(QSAR)研究中的一种新方法。还引入了具有简单功能组(结构)特征的对接导出描述符的混合作为描述符的新集合,用于准确QSAR建模。用73个Azine衍生物的生物活性(PEC(50))作为新的非核苷逆转录酶抑制剂(NNRTIS)来测试引入方法的性能,用于治疗HIV疾病。分子对接描述符(MDDs)由配体 - 受体相互作用和使用Dragon 5.5软件推导的官能团特征产生。数据集分为三组培训,验证和测试数据。作为受到惩罚的回归方法的套索被应用于培训数据集,以选择结构和MDD的混合中最相关的描述符。套索所选择的描述符被用作贝叶斯正则化人工神经网络(BR-ANN)模型的构建中的输入。结果表明,对MDD的官能团属性的添加提高了模型的准确性。在最佳条件下,Lasso-BR-ANN被成功地应用于预测外部测试组中的化合物的PEC50值,其均方误差(MSE)和测定系数(R-2)值分别为0.07和0.88。计算模型的一些预测统计参数,所有这些统计参数都在其可接受的范围内,这证实了所提出的QSAR模型的有效性。

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