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Prediction of Protein-Protein Interactions Using Protein Signature Profiling
Authors:Mahmood A Mahdavi  Yen-Han Lin
Institution:Department of Chemical Engineering, University of Saskatchewan, Saskatoon, SK S7N 5A9, Canada.
Abstract:Protein domains are conserved and functionally independent structures that play an important role in interactions among related proteins. Domain-domain inter- actions have been recently used to predict protein-protein interactions (PPI). In general, the interaction probability of a pair of domains is scored using a trained scoring function. Satisfying a threshold, the protein pairs carrying those domains are regarded as "interacting". In this study, the signature contents of proteins were utilized to predict PPI pairs in Saccharomyces cerevisiae, Caenorhabditis ele- gans, and Homo sapiens. Similarity between protein signature patterns was scored and PPI predictions were drawn based on the binary similarity scoring function. Results show that the true positive rate of prediction by the proposed approach is approximately 32% higher than that using the maximum likelihood estimation method when compared with a test set, resulting in 22% increase in the area un- der the receiver operating characteristic (ROC) curve. When proteins containing one or two signatures were removed, the sensitivity of the predicted PPI pairs in- creased significantly. The predicted PPI pairs are on average 11 times more likely to interact than the random selection at a confidence level of 0.95, and on aver- age 4 times better than those predicted by either phylogenetic profiling or gene expression profiling.
Keywords:protein-protein interaction  protein signature  ROC curve  Profiling  Signature  Protein  Interactions  better  phylogenetic  gene expression profiling  average  times  interact  random selection  confidence level  sensitivity  containing  curve  increase  area  receiver  operating  characteristic
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