Literature DB >> 16634043

Codep: maximizing co-evolutionary interdependencies to discover interacting proteins.

Elisabeth R M Tillier1, Laurence Biro, Ginny Li, Desiree Tillo.   

Abstract

Approaches for the determination of interacting partners from different protein families (such as ligands and their receptors) have made use of the property that interacting proteins follow similar patterns and relative rates of evolution. Interacting protein partners can then be predicted from the similarity of their phylogenetic trees or evolutionary distances matrices. We present a novel method called Codep, for the determination of interacting protein partners by maximizing co-evolutionary signals. The order of sequences in the multiple sequence alignments from two protein families is determined in such a manner as to maximize the similarity of substitution patterns at amino acid sites in the two alignments and, thus, phylogenetic congruency. This is achieved by maximizing the total number of interdependencies of amino acids sites between the alignments. Once ordered, the corresponding sequences in the two alignments indicate the predicted interacting partners. We demonstrate the efficacy of this approach with computer simulations and in analyses of several protein families. A program implementing our method, Codep, is freely available to academic users from our website: http://www.uhnresearch.ca/labs/tillier/. 2006 Wiley-Liss, Inc.

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Year:  2006        PMID: 16634043     DOI: 10.1002/prot.20948

Source DB:  PubMed          Journal:  Proteins        ISSN: 0887-3585


  10 in total

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Review 7.  Practical aspects of protein co-evolution.

Authors:  David Ochoa; Florencio Pazos
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8.  Coevolutive, evolutive and stochastic information in protein-protein interactions.

Authors:  Miguel Andrade; Camila Pontes; Werner Treptow
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9.  Initial implementation of a comparative data analysis ontology.

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  10 in total

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