Deep interactome profiling of membrane proteins by co-interacting protein identification technology

通过共相互作用蛋白质识别技术对膜蛋白进行深度相互作用组分析

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作者:Sandra Pankow, Casimir Bamberger, Diego Calzolari, Andreas Bamberger, John R Yates 3rd

Abstract

Affinity purification coupled to mass spectrometry (AP-MS) is the method of choice for analyzing protein-protein interactions, but common protocols frequently recover only the most stable interactions and tend to result in low bait yield for membrane proteins. Here, we present a novel, deep interactome sequencing approach called CoPIT (co-interacting protein identification technology), which allows comprehensive identification and analysis of membrane protein interactomes and their dynamics. CoPIT integrates experimental and computational methods for a coimmunoprecipitation (Co-IP)-based workflow from sample preparation for mass spectrometric analysis to visualization of protein-protein interaction networks. The approach particularly improves the results for membrane protein interactomes, which have proven to be difficult to identify and analyze. CoPIT was used successfully to identify the interactome of the cystic fibrosis transmembrane conductance regulator (CFTR), demonstrating its validity and performance. The experimental step in this case achieved up to 100-fold-higher bait yield than previous methods by optimizing lysis, elution, sample clean-up and detection of interacting proteins by multidimensional protein identification technology (MudPIT). Here, we further provide evidence that CoPIT is applicable to other types of proteins as well, and that it can be successfully used as a general Co-IP method. The protocol describes all steps, ranging from considerations for experimental design, Co-IP, preparation of the sample for mass spectrometric analysis, and data analysis steps, to the final visualization of interaction networks. Although the experimental part can be performed in <3 d, data analysis may take up to a few weeks.

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