Searching for functional gene modules with interaction component models

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Volume Title

School of Science | A1 Alkuperäisartikkeli tieteellisessä aikakauslehdessä

Date

2010

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Degree programme

Language

en

Pages

pp. 4-11

Series

BMC Systems Biology, Vol. 4, nro 1

Abstract

Background:Functional gene modules and protein complexes are being sought from combinations of gene expression and protein-protein interaction data with various clustering-type methods. Central features missing from most of these methods are handling of uncertainty in both protein interaction and gene expression measurements, and in particular capability of modeling overlapping clusters. It would make sense to assume that proteins may play different roles in different functional modules, and the roles are evidenced in their interactions. Results:We formulate a generative probabilistic model for protein-protein interaction links and introduce two ways for including gene expression data into the model. The model finds interaction components, which can be interpreted as overlapping clusters or functional modules. We demonstrate the performance on two data sets of yeast Saccharomyces cerevisiae. Our methods outperform a representative set of earlier models in the task of finding biologically relevant modules having enriched functional classes. Conclusions:Combining protein interaction and gene expression data with a probabilistic generative model improves discovery of modules compared to approaches based on either data source alone. With a fairly simple model we can find biologically relevant modules better than with alternative methods, and in addition the modules may be inherently overlapping in the sense that different interactions may belong to different modules.

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Keywords

bioinformatics, machine learning, network analysis

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Citation

Parkkinen, Juuso & Kaski, Samuel. 2010. Searching for functional gene modules with interaction component models. BMC Systems Biology. Vol. 4, nro 1. P. 4-11. ISSN 1752-0509 (electronic). DOI: 10.1186/1752-0509-4-4.