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A computational tool for identifying minimotifs in protein-protein interactions and improving the accuracy of minimotif predictions
Authors:Rajasekaran Sanguthevar  Merlin Jerlin Camilus  Kundeti Vamsi  Mi Tian  Oommen Aaron  Vyas Jay  Alaniz Izua  Chung Keith  Chowdhury Farah  Deverasatty Sandeep  Irvey Tenisha M  Lacambacal David  Lara Darlene  Panchangam Subhasree  Rathnayake Viraj  Watts Paula  Schiller Martin R
Institution:Department of Computer Science and Engineering, University of Connecticut, Storrs, Connecticut 06269-2155, USA. rajasek@engr.uconn.edu
Abstract:Protein-protein interactions are important to understanding cell functions; however, our theoretical understanding is limited. There is a general discontinuity between the well-accepted physical and chemical forces that drive protein-protein interactions and the large collections of identified protein-protein interactions in various databases. Minimotifs are short functional peptide sequences that provide a basis to bridge this gap in knowledge. However, there is no systematic way to study minimotifs in the context of protein-protein interactions or vice versa. Here we have engineered a set of algorithms that can be used to identify minimotifs in known protein-protein interactions and implemented this for use by scientists in Minimotif Miner. By globally testing these algorithms on verified data and on 100 individual proteins as test cases, we demonstrate the utility of these new computation tools. This tool also can be used to reduce false-positive predictions in the discovery of novel minimotifs. The statistical significance of these algorithms is demonstrated by an ROC analysis (P = 0.001).
Keywords:Minimotif Miner  HomoloGene  BLAST  Grb2  SLiM  short linear motifs
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