4.4 Article

Application of self-organizing maps in compounds pattern recognition and combinatorial library design

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Publisher

BENTHAM SCIENCE PUBL LTD
DOI: 10.2174/138620706777698562

Keywords

neural networks; Kohonen self-organizing map (SOM); compounds pattern recognition; combinatorial libraries comparison; combinatorial library design; drug-like; nondrug-like

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In the computer-aided drug design, in order to find some new leads from a large library of compounds, the pattern recognition study of the diversity and similarity assessment of the chemical compounds is required; meanwhile in the combinatorial library design, more attention is given to design target focusing library along with diversity and drug-likeness criteria. This review presents the current state-of-art applications of Kohonen self-organizing maps (SOM) for studying the compounds pattern recognition, comparing the property of molecular surfaces, distinguishing drug-like and non-drug-like molecules, splitting a dataset into the proper training and test sets before constructing a QSAR (Quantitative Structural-Activity Relationship) model, and also for the combinatorial libraries comparison and the combinatorial library design. The Kohonen self-organizing map will continue to play an important role in drug discovery and library design.

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