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2000
Volume 18, Issue 12
  • ISSN: 0929-8665
  • E-ISSN: 1875-5305

Abstract

This article describes a novel method for predicting ligand-binding sites of proteins. This method uses only 8 structural properties as input vector to train 9 random forest classifiers which are combined to predict binding residues. These predicted binding residues are then clustered into some predicted ligand-binding sites. According to our measurement criterion, this method achieved a success rate of 0.914 in the bound state dataset and 0.800 in the unbound state dataset, which are better than three other methods: Q-SiteFinder, SCREEN and Morita's method. It indicates that the proposed method here is successful for predicting ligand-binding sites.

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/content/journals/ppl/10.2174/092986611797642788
2011-12-01
2025-09-05
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