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Predicting Drug-Target Interactions of Nuclear Receptors Based on Molecular Descriptors Information

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Predicting the interaction between drugs and target proteins is one of the most important tasks for bioinformatics. Selecting suitable features for drug-target interaction prediction is an effective way for achieving this important goal. In this article, the molecular descriptors information of drugs combined with several important biological features of nuclear receptor (NR) proteins were first utilized for feature selection. Then, the incremental learning algorithm with support vector machines was used to obtain the optimal feature subset for drug-target interaction prediction. The results demonstrate that the feature selection method can lead to promising improvement on prediction accuracy of this target family.

Keywords: Drug-target interaction; Feature selection; Molecular descriptors

Document Type: Research Article

Publication date: 01 December 2013

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  • Letters in Drug Design & Discovery publishes original letters on all areas of rational drug design and discovery including medicinal chemistry, in-silico drug design, combinatorial chemistry, high-throughput screening, drug targets, and structure-activity relationships. The emphasis will be on publishing quality papers very rapidly. Letters will be processed rapidly by taking full advantage of Internet technology for both the submission and review of manuscripts. The journal is essential reading to all pharmaceutical scientists involved in research in drug design and discovery.
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