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Classification of 5-HT1A Receptor Ligands on the Basis of Their Binding Affinities by Using PSO-Adaboost-SVM

机译:使用PSO-Adaboost-SVM根据结合亲和力对5-HT1A受体配体进行分类

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摘要

In the present work, the support vector machine (SVM) and Adaboost-SVM have been used to develop a classification model as a potential screening mechanism for a novel series of 5-HT1A selective ligands. Each compound is represented by calculated structural descriptors that encode topological features. The particle swarm optimization (PSO) and the stepwise multiple linear regression (Stepwise-MLR) methods have been used to search descriptor space and select the descriptors which are responsible for the inhibitory activity of these compounds. The model containing seven descriptors found by Adaboost-SVM, has showed better predictive capability than the other models. The total accuracy in prediction for the training and test set is 100.0% and 95.0% for PSO-Adaboost-SVM, 99.1% and 92.5% for PSO-SVM, 99.1% and 82.5% for Stepwise-MLR-Adaboost-SVM, 99.1% and 77.5% for Stepwise-MLR-SVM, respectively. The results indicate that Adaboost-SVM can be used as a useful modeling tool for QSAR studies.
机译:在当前的工作中,支持向量机(SVM)和Adaboost-SVM已用于开发分类模型,作为对一系列新型5-HT1A选择性配体的潜在筛选机制。每种化合物均由计算得出的编码拓扑特征的结构描述符表示。粒子群优化(PSO)和逐步多元线性回归(Stepwise-MLR)方法已用于搜索描述符空间并选择负责这些化合物抑制活性的描述符。由Adaboost-SVM发现的包含七个描述符的模型显示出比其他模型更好的预测能力。 PSO-Adaboost-SVM的训练和测试集预测的总准确性为100.0%和95.0%,PSO-SVM的预测的总准确性为99.1%和92.5%,Stepwise-MLR-Adaboost-SVM的为99.1%和82.5%,99.1%和Stepwise-MLR-SVM的77.5%。结果表明,Adaboost-SVM可以用作QSAR研究的有用建模工具。

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