Literature DB >> 19442064

Comparative analysis of machine learning methods in ligand-based virtual screening of large compound libraries.

Xiao H Ma1, Jia Jia, Feng Zhu, Ying Xue, Ze R Li, Yu Z Chen.   

Abstract

Machine learning methods have been explored as ligand-based virtual screening tools for facilitating drug lead discovery. These methods predict compounds of specific pharmacodynamic, pharmacokinetic or toxicological properties based on their structure-derived structural and physicochemical properties. Increasing attention has been directed at these methods because of their capability in predicting compounds of diverse structures and complex structure-activity relationships without requiring the knowledge of target 3D structure. This article reviews current progresses in using machine learning methods for virtual screening of pharmacodynamically active compounds from large compound libraries, and analyzes and compares the reported performances of machine learning tools with those of structure-based and other ligand-based (such as pharmacophore and clustering) virtual screening methods. The feasibility to improve the performance of machine learning methods in screening large libraries is discussed.

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Year:  2009        PMID: 19442064     DOI: 10.2174/138620709788167944

Source DB:  PubMed          Journal:  Comb Chem High Throughput Screen        ISSN: 1386-2073            Impact factor:   1.339


  15 in total

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8.  Development and experimental test of support vector machines virtual screening method for searching Src inhibitors from large compound libraries.

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9.  The influence of negative training set size on machine learning-based virtual screening.

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10.  Comparing structural and transcriptional drug networks reveals signatures of drug activity and toxicity in transcriptional responses.

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Journal:  NPJ Syst Biol Appl       Date:  2017-08-25
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