Virtual Screening of Molecular Databases Using a Support Vector Machine 论文

2005Journal of Chemical Information and Modeling引用 263
Computational Drug Discovery MethodsAnalytical Chemistry and ChromatographyMetabolomics and Mass Spectrometry Studies

摘要

The Support Vector Machine (SVM) is an algorithm that derives a model used for the classification of data into two categories and which has good generalization properties. This study applies the SVM algorithm to the problem of virtual screening for molecules with a desired activity. In contrast to typical applications of the SVM, we emphasize not classification but enrichment of actives by using a modified version of the standard SVM function to rank molecules. The method employs a simple and novel criterion for picking molecular descriptors and uses cross-validation to select SVM parameters. The resulting method is more effective at enriching for active compounds with novel chemistries than binary fingerprint-based methods such as binary kernel discrimination.