Assessing Reliability of Protein-Protein Interactions by Semantic Data Integration
Young-Rae Cho
Woochang Hwang
Aidong Zhang
State Univ. of New York at Buffalo, Buffalo;
Abstract
The systematic analysis of protein-protein interactions is a fundamental step for understanding of cellular organization, processes and functions. Recent high-throughput experiments have produced an enormous amount of protein-protein interaction data. However, the analysis of protein-protein interactions has a limitation in effectiveness because of the unreliability of the interaction data. In this paper, we apply semantic similarity measures to quantifying the reliability of protein-protein interactions. We also propose a novel metric, which is called semantic interactivity, to measure the interaction reliability by the integration of gene ontology annotations. We evaluate the measurements by comparing the interaction reliability between proteins to their functional co-occurrence. The results show that the interaction reliability measured by semantic interactivity has a positive correlation with the functional association between the interacting proteins. Finally, we demonstrate that the semantic interactivity measure can accurately detect potential false positive interactions.
Index
Terms
Available to subscribers and IEEE members.
References
Available to subscribers and IEEE members.
Citing Documents
Available to subscribers and IEEE members.