A quantitative mass spectrometry-based approach to monitor the dynamics of endogenous chromatin-associated protein complexes

Evangelia K. Papachristou(University of Cambridge), Kamal Kishore(University of Cambridge), Andrew N. Holding(University of Cambridge), Kate Harvey(Garvan Institute of Medical Research), Theodoros I. Roumeliotis(Wellcome Sanger Institute), Chandra Sekhar Reddy Chilamakuri(University of Cambridge), Soleilmane Omarjee(University of Cambridge), Kee Ming Chia(Garvan Institute of Medical Research), Alexander Swarbrick(Garvan Institute of Medical Research), Elgene Lim(Garvan Institute of Medical Research), Florian Markowetz(University of Cambridge), Matthew Eldridge(University of Cambridge), Rasmus Siersbæk(University of Cambridge), Clive S. D’Santos(University of Cambridge), Jason S. Carroll(University of Cambridge)
Nature Communications
June 7, 2018
Cited by 166Open Access
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Abstract

Understanding the dynamics of endogenous protein-protein interactions in complex networks is pivotal in deciphering disease mechanisms. To enable the in-depth analysis of protein interactions in chromatin-associated protein complexes, we have previously developed a method termed RIME (Rapid Immunoprecipitation Mass spectrometry of Endogenous proteins). Here, we present a quantitative multiplexed method (qPLEX-RIME), which integrates RIME with isobaric labelling and tribrid mass spectrometry for the study of protein interactome dynamics in a quantitative fashion with increased sensitivity. Using the qPLEX-RIME method, we delineate the temporal changes of the Estrogen Receptor alpha (ERα) interactome in breast cancer cells treated with 4-hydroxytamoxifen. Furthermore, we identify endogenous ERα-associated proteins in human Patient-Derived Xenograft tumours and in primary human breast cancer clinical tissue. Our results demonstrate that the combination of RIME with isobaric labelling offers a powerful tool for the in-depth and quantitative characterisation of protein interactome dynamics, which is applicable to clinical samples.


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