A proximity proteomics pipeline with improved reproducibility and throughput

Author:

Zhong XiaofangORCID,Li Qiongyu,Polacco Benjamin J,Patil Trupti,Marley Aaron,Foussard Helene,Khare Prachi,Vartak Rasika,Xu Jiewei,DiBerto Jeffrey F,Roth Bryan LORCID,Eckhardt ManonORCID,von Zastrow MarkORCID,Krogan Nevan JORCID,Hüttenhain RuthORCID

Abstract

AbstractProximity labeling (PL) via biotinylation coupled with mass spectrometry (MS) captures spatial proteomes in cells. Large-scale processing requires a workflow minimizing hands-on time and enhancing quantitative reproducibility. We introduced a scalable PL pipeline integrating automated enrichment of biotinylated proteins in a 96-well plate format. Combining this with optimized quantitative MS based on data-independent acquisition (DIA), we increased sample throughput and improved protein identification and quantification reproducibility. We applied this pipeline to delineate subcellular proteomes across various compartments. Using the 5HT2A serotonin receptor as a model, we studied temporal changes of proximal interaction networks induced by receptor activation. In addition, we modified the pipeline for reduced sample input to accommodate CRISPR-based gene knockout, assessing dynamics of the 5HT2A network in response to perturbation of selected interactors. This PL approach is universally applicable to PL proteomics using biotinylation-based PL enzymes, enhancing throughput and reproducibility of standard protocols.

Funder

HHS | NIH | National Institute on Drug Abuse

DOD | Defense Advanced Research Projects Agency

HHS | NIH | National Heart, Lung, and Blood Institute

Publisher

Springer Science and Business Media LLC

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