Publication | Closed Access
Nonlinear SVM Approaches to QSPR/QSAR Studies and Drug Design
91
Citations
4
References
2007
Year
Data ClassificationSupport Vector MachineClassification MethodEngineeringData SciencePattern RecognitionDrug DesignMedicineComputational BiologyAttractive Nonlinear ApproachRational Drug DesignChemometricsClassifier SystemNonlinear Svm ApproachesPharmacologyTarget PredictionDrug DiscoveryDrug Analysis
Recently, a new promising nonlinear method, the support vector machine (SVM), was proposed by Vapnik. It rapidly found numerous applications in chemistry, biochemistry and pharmacochemistry. Several attempts using SVM in drug design have been reported. It became an attractive nonlinear approach in this field. In this review, the theoretical basis of SVM in classification and regression is briefly described. Its applications in QSPR/QSAR studies, and particularly in drug design are discussed. Comparative studies with some linear and other nonlinear methods show SVMs high performance both in classification and correlation. Keywords: Support vector machine (SVM), QSPR/QSAR, drug-design, classification, correlation
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