Literature DB >> 17992741

Graph kernels for disease outcome prediction from protein-protein interaction networks.

Karsten M Borgwardt1, Hans-Peter Kriegel, S V N Vishwanathan, Nicol N Schraudolph.   

Abstract

It is widely believed that comparing discrepancies in the protein-protein interaction (PPI) networks of individuals will become an important tool in understanding and preventing diseases. Currently PPI networks for individuals are not available, but gene expression data is becoming easier to obtain and allows us to represent individuals by a co-integrated gene expression/protein interaction network. Two major problems hamper the application of graph kernels - state-of-the-art methods for whole-graph comparison - to compare PPI networks. First, these methods do not scale to graphs of the size of a PPI network. Second, missing edges in these interaction networks are biologically relevant for detecting discrepancies, yet, these methods do not take this into account. In this article we present graph kernels for biological network comparison that are fast to compute and take into account missing interactions. We evaluate their practical performance on two datasets of co-integrated gene expression/PPI networks.

Mesh:

Year:  2007        PMID: 17992741

Source DB:  PubMed          Journal:  Pac Symp Biocomput        ISSN: 2335-6928


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