4.5 Review

Protein-protein Docking and Hot-spot Prediction for Drug Discovery

Journal

CURRENT PHARMACEUTICAL DESIGN
Volume 18, Issue 30, Pages 4607-4618

Publisher

BENTHAM SCIENCE PUBL LTD
DOI: 10.2174/138161212802651599

Keywords

Protein-protein interactions; docking; hot-spots; interface prediction; drug discovery

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Most processes in living organisms occur through an intricate network of protein-protein interactions, in which any malfunctioning can lead to pathological situations. Therefore, current research in biomedicine is starting to focus on protein interaction networks. A detailed structural knowledge of these interactions at molecular level will be necessary for drug discovery targeting protein-protein interactions. The challenge from a structural biology point of view is determining the structure of the specific complex formed upon interaction of two or several proteins, and/or locating the surface residues involved in the interaction and identify which of them are the most important ones for binding (hot-spots). In this line, an increasing number of computer tools are available to complement experimental efforts. Docking algorithms can achieve successful predictive rates in many complexes, as shown in the community assessment experiment CAPRI, and have already been applied to a variety of cases of biomedical interest. On the other side, many methods for interface and hot-spot prediction have been reported, based on a variety of evolutionary, geometrical and physico-chemical parameters. Computer predictions are reaching a significant level of maturity, and can be very useful to guide experiments and suggest mutations, or to provide a mechanistic framework to the experimental results on a given interaction. We will review here existing computer approaches for protein-protein docking, interface prediction and hot-spot identification, with focus to drug discovery targeting protein-protein interactions.

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