Abstract

BackgroundRecently, revealing the function of proteins with protein-protein interaction (PPI) networks is regarded as one of important issues in bioinformatics. With the development of experimental methods such as the yeast two-hybrid method, the data of protein interaction have been increasing extremely. Many databases dealing with these data comprehensively have been constructed and applied to analyzing PPI networks. However, few research on prediction interaction sites using both PPI networks and the 3D protein structures complementarily has explored.ResultsWe propose a method of predicting interaction sites in proteins with unknown function by using both of PPI networks and protein structures. For a protein with unknown function as a target, several clusters are extracted from the neighboring proteins based on their structural similarity. Then, interaction sites are predicted by extracting similar sites from the group of a protein cluster and the target protein. Moreover, the proposed method can improve the prediction accuracy by introducing repetitive prediction process.ConclusionsThe proposed method has been applied to small scale dataset, then the effectiveness of the method has been confirmed. The challenge will now be to apply the method to large-scale datasets.

Highlights

  • Revealing the function of proteins with protein-protein interaction (PPI) networks is regarded as one of important issues in bioinformatics

  • We propose a method of predicting interaction sites of a protein whose structure has been solved but whose interaction site is unknown using the information of 3D structures and PPI networks

  • We proposed a method of predicting interaction sites by comparing the pockets of proteins whose interaction sites are unknown to pockets of the neighboring proteins in the PPI networks

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Summary

Introduction

Revealing the function of proteins with protein-protein interaction (PPI) networks is regarded as one of important issues in bioinformatics. Few research on prediction interaction sites using both PPI networks and the 3D protein structures complementarily has explored. Sacan et al developed a tool for detecting family-specific local structural sites [1] In their method, geometrically significant structural centers of the protein are detected, features generated from the geometrical and biochemical environment around these centers are used to distinguish a family. Interface residues in a protein are deduced by use of neural networks which have been trained with surface patches in protein structures and sequence profiles [3,4,5,6]. Other methods involved in predicting interaction sites have been proposed [11]

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