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2D Autocorrelation modeling of the negative inotropic activity of calcium entry blockers using Bayesian-regularized genetic neural networks

机译:使用贝叶斯规则遗传神经网络的钙进入阻滞剂负性变力活动的二维自相关建模

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摘要

Negative inotropic potency of 60 benzothiazepine-like calcium entry blockers (CEBs), Diltiazem analogs, was successfully modeled using Bayesian-regularized genetic neural networks (BRGNNs) and 2D autocorrelation vectors. This approach yielded reliable and robust models whilst by means of a linear genetic algorithm (GA) search routine no multilinear regression model was found describing more than 50% of the training set. On the contrary, the optimum neural network predictor with five inputs described about 84% and 65% variances of 50 randomly selected training and test sets. Autocorrelation vectors in the nonlinear model contained information regarding 2D spatial distributions on the CEB structure of van der Waals volumes, electronegativities, and polarizabilities. However, a sensitivity analysis of the network inputs pointed out to the electronegativity and polarizability 2D topological distributions at substructural fragments of sizes 3 and 4 as the most relevant features governing the nonlinear modeling of the negative inotropic potency.
机译:使用贝叶斯调节遗传神经网络(BRGNN)和2D自相关向量成功地模拟了60种苯并硫氮杂-样钙进入阻滞剂(CEB)的负性肌力。这种方法产生了可靠且健壮的模型,而借助线性遗传算法(GA)搜索例程,未找到描述超过50%训练集的多线性回归模型。相反,具有五个输入的最优神经网络预测器描述了50个随机选择的训练和测试集的约84%和65%的方差。非线性模型中的自相关向量包含有关范德华体积,电负性和极化率的CEB结构上二维空间分布的信息。但是,对网络输入的敏感性分析指出,大小为3和4的子结构片段的电负性和极化率2D拓扑分布是控制负性变力效能的非线性建模的最相关特征。

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