Another Word For It Patrick Durusau on Topic Maps and Semantic Diversity

September 10, 2012

Graphlet-based edge clustering reveals pathogen-interacting proteins

Filed under: Clustering,Graphs,Networks,Similarity,Topology — Patrick Durusau @ 1:06 pm

Graphlet-based edge clustering reveals pathogen-interacting proteins by R. W. Solava, R. P. Michaels and T. Milenković. (Bioinformatics (2012) 28 (18): i480-i486. doi: 10.1093/bioinformatics/bts376)

Abstract:

Motivation: Prediction of protein function from protein interaction networks has received attention in the post-genomic era. A popular strategy has been to cluster the network into functionally coherent groups of proteins and assign the entire cluster with a function based on functions of its annotated members. Traditionally, network research has focused on clustering of nodes. However, clustering of edges may be preferred: nodes belong to multiple functional groups, but clustering of nodes typically cannot capture the group overlap, while clustering of edges can. Clustering of adjacent edges that share many neighbors was proposed recently, outperforming different node clustering methods. However, since some biological processes can have characteristic ‘signatures’ throughout the network, not just locally, it may be of interest to consider edges that are not necessarily adjacent.

Results: We design a sensitive measure of the ‘topological similarity’ of edges that can deal with edges that are not necessarily adjacent. We cluster edges that are similar according to our measure in different baker’s yeast protein interaction networks, outperforming existing node and edge clustering approaches. We apply our approach to the human network to predict new pathogen-interacting proteins. This is important, since these proteins represent drug target candidates.

Availability: Software executables are freely available upon request.

Contact: tmilenko@nd.edu

Of interest for bioinformatics but more broadly for its insights into topological similarity and edge clustering by topological similarity.

Being mindful that an “edge” is for all intents and purposes a “node” that records a connection between two (non-hyperedge and non-looping edge) other nodes. Nodes could, but don’t generally record their connection to other nodes, that connection being represented by an edge.

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