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Unraveling Protein Networks with Power Graph Analysis

Overview of attention for article published in PLoS Computational Biology, July 2008
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Title
Unraveling Protein Networks with Power Graph Analysis
Published in
PLoS Computational Biology, July 2008
DOI 10.1371/journal.pcbi.1000108
Pubmed ID
Authors

Loïc Royer, Matthias Reimann, Bill Andreopoulos, Michael Schroeder

Abstract

Networks play a crucial role in computational biology, yet their analysis and representation is still an open problem. Power Graph Analysis is a lossless transformation of biological networks into a compact, less redundant representation, exploiting the abundance of cliques and bicliques as elementary topological motifs. We demonstrate with five examples the advantages of Power Graph Analysis. Investigating protein-protein interaction networks, we show how the catalytic subunits of the casein kinase II complex are distinguishable from the regulatory subunits, how interaction profiles and sequence phylogeny of SH3 domains correlate, and how false positive interactions among high-throughput interactions are spotted. Additionally, we demonstrate the generality of Power Graph Analysis by applying it to two other types of networks. We show how power graphs induce a clustering of both transcription factors and target genes in bipartite transcription networks, and how the erosion of a phosphatase domain in type 22 non-receptor tyrosine phosphatases is detected. We apply Power Graph Analysis to high-throughput protein interaction networks and show that up to 85% (56% on average) of the information is redundant. Experimental networks are more compressible than rewired ones of same degree distribution, indicating that experimental networks are rich in cliques and bicliques. Power Graphs are a novel representation of networks, which reduces network complexity by explicitly representing re-occurring network motifs. Power Graphs compress up to 85% of the edges in protein interaction networks and are applicable to all types of networks such as protein interactions, regulatory networks, or homology networks.

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Mendeley readers

Mendeley readers

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Geographical breakdown

Country Count As %
United States 15 5%
United Kingdom 12 4%
Germany 6 2%
Spain 5 2%
Slovenia 5 2%
France 4 1%
Netherlands 2 <1%
Brazil 1 <1%
Bulgaria 1 <1%
Other 7 3%
Unknown 216 79%

Demographic breakdown

Readers by professional status Count As %
Student > Ph. D. Student 79 29%
Researcher 75 27%
Student > Master 30 11%
Professor > Associate Professor 23 8%
Professor 16 6%
Other 38 14%
Unknown 13 5%
Readers by discipline Count As %
Agricultural and Biological Sciences 110 40%
Computer Science 68 25%
Biochemistry, Genetics and Molecular Biology 23 8%
Engineering 13 5%
Medicine and Dentistry 9 3%
Other 35 13%
Unknown 16 6%