首页> 外文期刊>Journal of enzyme inhibition and medicinal chemistry. >Quantitative structure–activity relationship (QSAR) study of interleukin-1 receptor associated kinase 4 (IRAK-4) inhibitor activity by the genetic algorithm and multiple linear regression (GA-MLR) method
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Quantitative structure–activity relationship (QSAR) study of interleukin-1 receptor associated kinase 4 (IRAK-4) inhibitor activity by the genetic algorithm and multiple linear regression (GA-MLR) method

机译:白细胞介素-1受体相关激酶4(IRAK-4)抑制剂活性的定量结构 - 活性关系(QSAR)研究通过遗传算法和多元线性回归(GA-MLR)方法

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A linear quantitative structure–activity relationship (QSAR) model is presented for the modelling and prediction for the interleukin-1 receptor associated kinase 4 (IRAK-4) inhibition activity of amides and imidazo[1,2-α] pyridines. The model was produced using the multiple linear regression (MLR) technique on a database that consisted of 65 recently discovered amides and imidazo[1,2- α] pyridines. Among the different constitutional, topological, geometrical, electrostatic and quantum-chemical descriptors that were considered as inputs to the model, seven variables were selected using the genetic algorithm subset selection method (GA). The accuracy of the proposed MLR model was illustrated using the following evaluation techniques: cross-validation, validation through an external test set, and Y-randomisation. The predictive ability of the model was found to be satisfactory and could be used for designing a similar group of compounds.
机译:提出了线性定量结构 - 活性关系(QSAR)模型,用于对白细胞介素-1受体相关激酶4(IRAK-4)酰胺和咪唑吡啶的抑制活性的建模和预测。使用多元线性回归(MLR)技术在最近被发现的酰胺和咪唑[1,2-α]吡啶组成的数据库上的多元线性回归(MLR)技术产生。在被认为是模型的输入的不同宪法,拓扑,几何,静电和量子化学描述符中,使用遗传算法子集选择方法(GA)选择七个变量。使用以下评估技术说明所提出的MLR模型的准确性:交叉验证,通过外部测试集验证以及Y-ACORMATIONATION。发现模型的预测能力是令人满意的,可用于设计类似的化合物组。

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