Authors
Shide Liang, Dandan Zheng, Daron M Standley, Huarong Guo, Chi Zhang
Publication date
2013/12
Journal
BMC systems biology
Volume
7
Pages
1-10
Publisher
BioMed Central
Description
Background
Construction of a reliable network remains the bottleneck for network-based protein function prediction. We built an artificial network model called protein overlap network (PON) for the entire genome of yeast, fly, worm, and human, respectively. Each node of the network represents a protein, and two proteins are connected if they share a domain according to InterPro database.
Results
The function of a protein can be predicted by counting the occurrence frequency of GO (gene ontology) terms associated with domains of direct neighbors. The average success rate and coverage were 34.3% and 43.9%, respectively, for the test genomes, and were increased to 37.9% and 51.3% when a composite PON of the four species was used for the prediction. As a comparison, the success rate was 7.0% in the random control procedure. We also made …
Total citations
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Scholar articles
S Liang, D Zheng, DM Standley, H Guo, C Zhang - BMC systems biology, 2013