Background: Identifying pockets on protein surfaces is of great importance for many structure-based drug design applications and protein-ligand docking algorithms. Over the last ten years, many geometric methods for the prediction of ligand-binding sites have been developed. Results: We present LIGSITE csc, an extension and implementation of the LIGSITE algorithm. LIGSITEcsc is based on the notion of surface-solvent-surface events and the degree of conservation of the involved surface residues. We compare our algorithm to four other approaches, LIGSITE, CAST, PASS, and SURFNET, and evaluate all on a dataset of 48 unbound/bound structures and 210 bound-structures. LIGSITEcsc performs slightly better than the other tools and achieves a success rate of 71% and 75%, respectively. Conclusion: The use of the Connolly surface leads to slight improvements, the prediction reranking by conservation to significant improvements of the binding site predictions. A web server for LIGSITEcsc and its source code is available at scoppi.biotec.tu-dresden.de/pocket. © 2006 Huang and Schroeder; licensee BioMed Central Ltd.
CITATION STYLE
Huang, B., & Schroeder, M. (2006). LIGSITEcsc: Predicting ligand binding sites using the Connolly surface and degree of conservation. BMC Structural Biology, 6. https://doi.org/10.1186/1472-6807-6-19
Mendeley helps you to discover research relevant for your work.