Abstract

BackgroundFor understanding cellular systems and biological networks, it is important to analyze functions and interactions of proteins and domains. Many methods for predicting protein-protein interactions have been developed. It is known that mutual information between residues at interacting sites can be higher than that at non-interacting sites. It is based on the thought that amino acid residues at interacting sites have coevolved with those at the corresponding residues in the partner proteins. Several studies have shown that such mutual information is useful for identifying contact residues in interacting proteins.ResultsWe propose novel methods using conditional random fields for predicting protein-protein interactions. We focus on the mutual information between residues, and combine it with conditional random fields. In the methods, protein-protein interactions are modeled using domain-domain interactions. We perform computational experiments using protein-protein interaction datasets for several organisms, and calculate AUC (Area Under ROC Curve) score. The results suggest that our proposed methods with and without mutual information outperform EM (Expectation Maximization) method proposed by Deng et al., which is one of the best predictors based on domain-domain interactions.ConclusionsWe propose novel methods using conditional random fields with and without mutual information between domains. Our methods based on domain-domain interactions are useful for predicting protein-protein interactions.

Highlights

  • For understanding cellular systems and biological networks, it is important to analyze functions and interactions of proteins and domains

  • We propose prediction methods based on domain-domain interactions using conditional random fields with and without mutual information

  • We perform computational experiments for several protein-protein interaction datasets, compare the methods with the EM method proposed by Deng et al [10], which is one of the best predictors based on domaindomain interactions, and the association method proposed by Sprinzak and Margalit [13], and show that our methods outperform the EM method and the association method

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Summary

Results

We propose novel methods using conditional random fields for predicting protein-protein interactions. We focus on the mutual information between residues, and combine it with conditional random fields. Protein-protein interactions are modeled using domain-domain interactions. We perform computational experiments using protein-protein interaction datasets for several organisms, and calculate AUC (Area Under ROC Curve) score. The results suggest that our proposed methods with and without mutual information outperform EM (Expectation Maximization) method proposed by Deng et al, which is one of the best predictors based on domain-domain interactions

Background
It should be noted that the sum over all amino acids
Result
Conclusions
16. Bertsekas DP

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