Abstract
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. © 2009 by the authors; licensee Molecular Diversity Preservation International.
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CITATION STYLE
Cheng, Z., Zhang, Y., Zhou, C., Zhang, W., & Gao, S. (2009). Classification of 5-HT1A receptor ligands on the basis of their binding affinities by using PSO-Adaboost-SVM. International Journal of Molecular Sciences, 10(8), 3316–3337. https://doi.org/10.3390/ijms10083316
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