DocumentCode :
1382079
Title :
Discovering Functional Interdependence Relationship in PPI Networks for Protein Complex Identification
Author :
Lam, Winnie W M ; Chan, Keith C C
Author_Institution :
Dept. of Comput., Hong Kong Polytech. Univ., Hong Kong, China
Volume :
59
Issue :
4
fYear :
2012
fDate :
4/1/2012 12:00:00 AM
Firstpage :
899
Lastpage :
908
Abstract :
Protein molecules interact with each other in protein complexes to perform many vital functions, and different computational techniques have been developed to identify protein complexes in protein-protein interaction (PPI) networks. These techniques are developed to search for subgraphs of high connectivity in PPI networks under the assumption that the proteins in a protein complex are highly interconnected. While these techniques have been shown to be quite effective, it is also possible that the matching rate between the protein complexes they discover and those that are previously determined experimentally be relatively low and the “false-alarm” rate can be relatively high. This is especially the case when the assumption of proteins in protein complexes being more highly interconnected be relatively invalid. To increase the matching rate and reduce the false-alarm rate, we have developed a technique that can work effectively without having to make this assumption. The name of the technique called protein complex identification by discovering functional interdependence (PCIFI) searches for protein complexes in PPI networks by taking into consideration both the functional interdependence relationship between protein molecules and the network topology of the network. The PCIFI works in several steps. The first step is to construct a multiple-function protein network graph by labeling each vertex with one or more of the molecular functions it performs. The second step is to filter out protein interactions between protein pairs that are not functionally interdependent of each other in the statistical sense. The third step is to make use of an information-theoretic measure to determine the strength of the functional interdependence between all remaining interacting protein pairs. Finally, the last step is to try to form protein complexes based on the measure of the strength of functional interdependence and the connectivity between proteins. For perfor- ance evaluation, PCIFI was used to identify protein complexes in real PPI network data and the protein complexes it found were matched against those that were previously known in MIPS. The results show that PCIFI can be an effective technique for the identification of protein complexes. The protein complexes it found can match more known protein complexes with a smaller false-alarm rate and can provide useful insights into the understanding of the functional interdependence relationships between proteins in protein complexes.
Keywords :
complex networks; graph theory; molecular biophysics; proteins; PCIFI method; PCIFI performance evaluation; PPI network topology; false alarm rate; functional interdependence discovery; functional interdependence relationship; high connectivity PPI networks; information theoretic measure; matching rate; multiple function protein network graph; protein complex identification; protein molecule interaction; protein-protein interaction networks; subgraph search; Clustering algorithms; Filtering; Joining processes; Mutual information; Proteins; Redundancy; Graph mining; protein complex discovery; protein–protein interactions (PPIs); Algorithms; Animals; Computer Simulation; Humans; Models, Biological; Protein Interaction Mapping; Proteins; Signal Transduction;
fLanguage :
English
Journal_Title :
Biomedical Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9294
Type :
jour
DOI :
10.1109/TBME.2010.2093524
Filename :
5639037
Link To Document :
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