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Determining Protein Complex Connectivity Using a Probabilistic Deletion Network Derived from Quantitative Proteomics
Authors:Mihaela E. Sardiu  Joshua M. Gilmore  Michael J. Carrozza  Bing Li  Jerry L. Workman  Laurence Florens  Michael P. Washburn
Affiliation:1. Stowers Institute for Medical Research, Kansas City, Missouri, United States of America.; 2. Laboratory of Structural Biology, National Institute of Environmental Health Sciences, Research Triangle Park, North Carolina, United States of America.; 3. Department of Molecular Biology, UT Southwestern Medical Center, Dallas, Texas, United States of America.;University of Southampton, United Kingdom
Abstract:Protein complexes are key molecular machines executing a variety of essential cellular processes. Despite the availability of genome-wide protein-protein interaction studies, determining the connectivity between proteins within a complex remains a major challenge. Here we demonstrate a method that is able to predict the relationship of proteins within a stable protein complex. We employed a combination of computational approaches and a systematic collection of quantitative proteomics data from wild-type and deletion strain purifications to build a quantitative deletion-interaction network map and subsequently convert the resulting data into an interdependency-interaction model of a complex. We applied this approach to a data set generated from components of the Saccharomyces cerevisiae Rpd3 histone deacetylase complexes, which consists of two distinct small and large complexes that are held together by a module consisting of Rpd3, Sin3 and Ume1. The resulting representation reveals new protein-protein interactions and new submodule relationships, providing novel information for mapping the functional organization of a complex.
Keywords:
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