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  4. Support-vector-machine-based ranking significantly improves the effectiveness of similarity searching using 2D fingerprints and multiple reference compounds
 
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2008
Journal Article
Title

Support-vector-machine-based ranking significantly improves the effectiveness of similarity searching using 2D fingerprints and multiple reference compounds

Abstract
Similarity searching using molecular fingerprints is computationally efficient and a surprisingly effective virtual screening tool. In this study, we have compared ranking methods for similarity searching using multiple active reference molecules. Different 2D fingerprints were used as search tools and also as descriptors for a support vector machine (SVM) algorithm. In systematic database search calculations, a SVM-based ranking scheme consistently outperformed nearest neighbor and centroid approaches, regardless of the fingerprints that were tested, even if only very small training sets were used for SVM learning. The superiority of SVM-based ranking over conventional fingerprint methods is ascribed to the fact that SVM makes use of information about database molecules, in addition to known active compounds, during the learning phase.
Author(s)
Geppert, H.
Horvath, Tamas  
Gärtner, Thomas  
Wrobel, Stefan  
Bajorath, J.
Journal
Journal of chemical information and modeling  
Open Access
DOI
10.1021/ci700461s
Language
English
Fraunhofer-Institut für Intelligente Analyse- und Informationssysteme IAIS  
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