An algorithm for network-based gene prioritization that encodes knowledge both in nodes and in links

Chad Kimmel, Shyam Visweswaran. 

An algorithm for network-based gene prioritization that encodes knowledge both in nodes and in links.  PLoS One, 2013 Nov 19; 8(11):e79564 doi: 10.137/journal.pone.0079564. PMID: 24260251

http://www.plosone.org/article/info%3Adoi%2F10.1371%2Fjournal.pone.0079564

Background

Candidate gene prioritization aims to identify promising new genes associated with a disease or a biological process from a larger set of candidate genes. In recent years, network-based methods – which utilize a knowledge network derived from biological knowledge – have been utilized for gene prioritization. Biological knowledge can be encoded either through the network's links or nodes. Current network-based methods can only encode knowledge through links. This paper describes a new network-based method that can encode knowledge in links as well as in nodes.

 

Results

We developed a new network inference algorithm called the Knowledge Network Gene Prioritization (KNGP) algorithm which can incorporate both link and node knowledge. The performance of the KNGP algorithm was evaluated on both synthetic networks and on networks incorporating biological knowledge. The results showed that the combination of link knowledge and node knowledge provided a significant benefit across 19 experimental diseases over using link knowledge alone or node knowledge alone.

 

Conclusions

The KNGP algorithm provides an advance over current network-based algorithms, because the algorithm can encode both link and node knowledge. We hope the algorithm will aid researchers with gene prioritization.

Publication Year: 
2013
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