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一种具有更高重现性和通量的邻近蛋白质组学工作流程。

A proximity proteomics pipeline with improved reproducibility and throughput.

机构信息

Quantitative Biosciences Institute (QBI), University of California, San Francisco, San Francisco, CA, 94158, USA.

J. David Gladstone Institutes, San Francisco, CA, 94158, USA.

出版信息

Mol Syst Biol. 2024 Aug;20(8):952-971. doi: 10.1038/s44320-024-00049-2. Epub 2024 Jul 1.

Abstract

Proximity 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 5HT 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 5HT 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.

摘要

邻近标记 (PL) 通过生物素化结合质谱 (MS) 在细胞中捕获空间蛋白质组。大规模处理需要一个最大限度减少人工操作时间和增强定量重现性的工作流程。我们引入了一种可扩展的 PL 管道,该管道将生物素化蛋白质的自动富集集成到 96 孔板格式中。将其与基于数据独立采集 (DIA) 的优化定量 MS 相结合,我们提高了样品通量,并提高了蛋白质鉴定和定量重现性。我们应用该管道来描绘各种隔室的亚细胞蛋白质组。使用 5HT 血清素受体作为模型,我们研究了受体激活诱导的近端相互作用网络的时间变化。此外,我们修改了该管道以减少样品输入,以适应基于 CRISPR 的基因敲除,评估 5HT 网络对选定相互作用体扰动的反应动态。这种 PL 方法可普遍应用于基于生物素化 PL 酶的 PL 蛋白质组学,增强了标准方案的通量和重现性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8b5a/11297269/0e630e1569ff/44320_2024_49_Fig1_HTML.jpg

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