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首页> 外文期刊>Bulletin of the Korean Chemical Society >Classification and Regression Tree Analysis for Molecular Descriptor Selection and Binding Affinities Prediction of Imidazobenzodiazepines in Quantitative Structure-Activity Relationship Studies
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Classification and Regression Tree Analysis for Molecular Descriptor Selection and Binding Affinities Prediction of Imidazobenzodiazepines in Quantitative Structure-Activity Relationship Studies

机译:定量结构-活性关系研究中咪唑并苯二氮杂类的分子描述符选择和结合亲和力预测的分类和回归树分析

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摘要

The use of the classification and regression tree (CART) methodology was studied in a quantitative structure-activity relationship (QSAR) context on a data set consisting of the binding affinities of 39 imidazobenzodiazepines for the α1 benzodiazepine receptor. The 3-D structures of these compounds were optimized using HyperChem software with semiempirical AM1 optimization method. After optimization a set of 1481 zero-to three-dimentional descriptors was calculated for each molecule in the data set. The response (dependent variable) in the tree model consisted of the binding affinities of drugs. Three descriptors (two topological and one 3D-Morse descriptors) were applied in the final tree structure to describe the binding affinities. The mean relative error percent for the data set is 3.20%, compared with a previous model with mean relative error percent of 6.63%. To evaluate the predictive power of CART cross validation method was also performed.
机译:在定量结构-活性关系(QSAR)上下文中,研究了分类回归树(CART)方法的使用,该数据集包含39个咪唑并苯并二氮杂for与α1苯并二氮杂receptor受体的结合亲和力。使用HyperChem软件和半经验AM1优化方法优化了这些化合物的3-D结构。优化后,为数据集中的每个分子计算了一组1481个零到三维描述符。树模型中的响应(因变量)由药物的结合亲和力组成。在最终的树结构中应用了三个描述符(两个拓扑和一个3D-摩尔斯描述符)来描述绑定亲和力。数据集的平均相对误差百分比为3.20%,而先前模型的平均相对误差百分比为6.63%。为了评估CART的预测能力,还进行了交叉验证方法。

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