Article
Improving Structure-Based Virtual Screening by Multivariate Analysis of Scoring Data
To whom correspondence should be addressed. Phone: +46 8 6972551. Fax: +46 8 6972320. E-mail: micael.jacobsson@biovitrum.com.
Biovitrum AB.
Uppsala University.
Compumine AB.
Stockholm University and Royal Institute of Technology.
AstraZeneca R&D Södertälje.
Abstract

Three different multivariate statistical methods, PLS discriminant analysis, rule-based methods, and Bayesian classification, have been applied to multidimensional scoring data from four different target proteins: estrogen receptor α (ERα), matrix metalloprotease 3 (MMP3), factor Xa (fXa), and acetylcholine esterase (AChE). The purpose was to build classifiers able to discriminate between active and inactive compounds, given a structure-based virtual screen. Seven different scoring functions were used to generate the scoring matrices. The classifiers were compared to classical consensus scoring and single scoring functions. The classifiers show a superior performance, with rule-based methods being most effective. The precision of correctly predicting an active compound is about 90% for three of the targets and about 25% for acetylcholine esterase. On the basis of these results, a new two-stage approach is suggested for structure-based virtual screening where limited activity information is available.
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History
- Published In Issue December 18, 2003
- Received May 15, 2003
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