Evaluation of machine-learning methods for ligand-based virtual screening

被引:0
|
作者
Beining Chen
Robert F. Harrison
George Papadatos
Peter Willett
David J. Wood
Xiao Qing Lewell
Paulette Greenidge
Nikolaus Stiefl
机构
[1] University of Sheffield,Department of Chemistry
[2] University of Sheffield,Department of Automatic Control and Systems Engineering
[3] University of Sheffield,Krebs Institute for Biomolecular Research and Department of Information Studies
[4] University of Sheffield,Krebs Institute for Biomolecular Research and Department of Information Studies
[5] GlaxoSmithKline Research and Development,undefined
[6] Novartis Pharma AG,undefined
来源
Journal of Computer-Aided Molecular Design | 2007年 / 21卷
关键词
Group fusion; Kernel discrimination; Ligand-based virtual screening; Machine learning; Naive Bayesian classifier; Similarity searching; Virtual screening;
D O I
暂无
中图分类号
学科分类号
摘要
Machine-learning methods can be used for virtual screening by analysing the structural characteristics of molecules of known (in)activity, and we here discuss the use of kernel discrimination and naive Bayesian classifier (NBC) methods for this purpose. We report a kernel method that allows the processing of molecules represented by binary, integer and real-valued descriptors, and show that it is little different in screening performance from a previously described kernel that had been developed specifically for the analysis of binary fingerprint representations of molecular structure. We then evaluate the performance of an NBC when the training-set contains only a very few active molecules. In such cases, a simpler approach based on group fusion would appear to provide superior screening performance, especially when structurally heterogeneous datasets are to be processed.
引用
收藏
页码:53 / 62
页数:9
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