research-article
Localization of binding sites in protein structures by optimization of a composite scoring function
Article first published online: 1 JAN 2009
DOI: 10.1110/ps.062247506
Copyright © 2006 The Protein Society
Additional Information
How to Cite
Rossi, A., Marti-Renom, M. A. and Sali, A. (2006), Localization of binding sites in protein structures by optimization of a composite scoring function. Protein Science, 15: 2366–2380. doi: 10.1110/ps.062247506
Publication History
- Issue published online: 1 JAN 2009
- Article first published online: 1 JAN 2009
- Manuscript Accepted: 11 JUL 2006
- Manuscript Revised: 10 JUL 2006
- Manuscript Received: 28 MAR 2006
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Keywords:
- protein function annotation;
- small ligand binding-site localization
Abstract
The rise in the number of functionally uncharacterized protein structures is increasing the demand for structure-based methods for functional annotation. Here, we describe a method for predicting the location of a binding site of a given type on a target protein structure. The method begins by constructing a scoring function, followed by a Monte Carlo optimization, to find a good scoring patch on the protein surface. The scoring function is a weighted linear combination of the z-scores of various properties of protein structure and sequence, including amino acid residue conservation, compactness, protrusion, convexity, rigidity, hydrophobicity, and charge density; the weights are calculated from a set of previously identified instances of the binding-site type on known protein structures. The scoring function can easily incorporate different types of information useful in localization, thus increasing the applicability and accuracy of the approach. To test the method, 1008 known protein structures were split into 20 different groups according to the type of the bound ligand. For nonsugar ligands, such as various nucleotides, binding sites were correctly identified in 55%–73% of the cases. The method is completely automated (http://salilab.org/patcher) and can be applied on a large scale in a structural genomics setting.

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