3.9 Article

Implementing Relevance Feedback in Ligand-Based Virtual Screening Using Bayesian Inference Network

期刊

JOURNAL OF BIOMOLECULAR SCREENING
卷 16, 期 9, 页码 1081-1088

出版社

SAGE PUBLICATIONS INC
DOI: 10.1177/1087057111416658

关键词

chemoinformatics; computational chemistry; structure-activity relationships; high-content screening

资金

  1. Malaysian Ministry of Science, Technology and Innovation [79304]

向作者/读者索取更多资源

Recently, the use of the Bayesian network as an alternative to existing tools for similarity-based virtual screening has received noticeable attention from researchers in the chemoinformatics field. The main aim of the Bayesian network model is to improve the retrieval effectiveness of similarity-based virtual screening. To this end, different models of the Bayesian network have been developed. In our previous works, the retrieval performance of the Bayesian network was observed to improve significantly when multiple reference structures or fragment weightings were used. In this article, the authors enhance the Bayesian inference network (BIN) using the relevance feedback information. In this approach, a few high-ranking structures of unknown activity were filtered from the outputs of BIN, based on a single active reference structure, to form a set of active reference structures. This set of active reference structures was used in two distinct techniques for carrying out such BIN searching: reweighting the fragments in the reference structures and group fusion techniques. Simulated virtual screening experiments with three MDL Drug Data Report data sets showed that the proposed techniques provide simple ways of enhancing the cost-effectiveness of ligand-based virtual screening searches, especially for higher diversity data sets. (Journal of Biomolecular Screening. 2011;16:1081-1088)

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