Abstract

BackgroundMany research results show that the biological systems are composed of functional modules. Members in the same module usually have common functions. This is useful information to understand how biological systems work. Therefore, detecting functional modules is an important research topic in the post-genome era. One of functional module detecting methods is to find dense regions in Protein-Protein Interaction (PPI) networks. Most of current methods neglect confidence-scores of interactions, and pay little attention on using gene expression data to improve their results.ResultsIn this paper, we propose a novel hub-attachment based method to detect functional modules from confidence-scored protein interactions and expression profiles, and we name it HUNTER. Our method not only can extract functional modules from a weighted PPI network, but also use gene expression data as optional input to increase the quality of outcomes. Using HUNTER on yeast data, we found it can discover more novel components related with RNA polymerase complex than those existed methods from yeast interactome. And these new components show the close relationship with polymerase after functional analysis on Gene Ontology.ConclusionA C++ implementation of our prediction method, dataset and supplementary material are available at http://hub.iis.sinica.edu.tw/Hunter/. Our proposed HUNTER method has been applied on yeast data, and the empirical results show that our method can accurately identify functional modules. Such useful application derived from our algorithm can reconstruct the biological machinery, identify undiscovered components and decipher common sub-modules inside these complexes like RNA polymerases I, II, III.

Highlights

  • Many research results show that the biological systems are composed of functional modules

  • BMC Bioinformatics 2010, 11(Suppl 1):S25 http://www.biomedcentral.com/1471-2105/11/S1/S25 been applied on yeast data, and the empirical results show that our method can accurately identify functional modules

  • Identification of functional modules HUNTER method is designed for extracting functional modules from a weighted or unweighted Protein-Protein Interaction (PPI) network with option for using gene expression data to increase the quality of outcomes

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Summary

Introduction

Many research results show that the biological systems are composed of functional modules. Detecting functional modules is an important research topic in the post-genome era. One of functional module detecting methods is to find dense regions in Protein-Protein Interaction (PPI) networks. In the post-genome era, there are many high-throughput data such as yeast two-hybrid, genetics interaction and gene expression microarray data are generated. Analysis of these data becomes an important research issues. Proteins in a module work together to perform certain biological functions The interactions among these module components (proteins in this module) must be frequent. Based on this idea, a functional module should induce dense regions on the PPI network. Detecting a densely connected cluster is a good heuristics to find protein functional module

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