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Jason Gertz, Georgiy Elfond, Anna Shustrova, Matt Weisinger, Matteo Pellegrini, Shawn Cokus, Bruce Rothschild, Inferring protein interactions from phylogenetic distance matrices, Bioinformatics, Volume 19, Issue 16, November 2003, Pages 2039–2045, https://doi.org/10.1093/bioinformatics/btg278
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Abstract
Finding the interacting pairs of proteins between two different protein families whose members are known to interact is an important problem in molecular biology. We developed and tested an algorithm that finds optimal matches between two families of proteins by comparing their distance matrices. A distance matrix provides a measure of the sequence similarity of proteins within a family. Since the protein sets of interest may have dozens of proteins each, the use of an efficient approximate solution is necessary. Therefore the approach we have developed consists of a Metropolis Monte Carlo optimization algorithm which explores the search space of possible matches between two distance matrices. We demonstrate that by using this algorithm we are able to accurately match chemokines and chemokine-receptors as well as the tgfβ family of ligands and their receptors.
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Author notes
1Department of Mathematics, 310 Malott Hall, Cornell University, Ithaca, NY 14853-4201, USA, 2Department of Mathematics, 970 Evans Hall #3840, University of California, Berkeley, CA 94720-3840, USA, 3Division of Engineering and Applied Sciences, Pierce Hall, 29 Oxford Street, Cambridge, MA 02138, USA, 4Protein Pathways, Woodland Hills, CA, USA and 5Department of Mathematics, University of California, Los Angeles, CA, USA