蛋白质组学
工作流程
蛋白质组
计算机科学
计算生物学
吞吐量
生物医学
药物发现
化学
生物信息学
生物
生物化学
电信
数据库
无线
基因
作者
Zilu Ye,Pierre Sabatier,Leander van der Hoeven,Teeradon Phlairaharn,David Hartlmayr,Fabiana Izaguirre,Anjali Seth,Hiren J. Joshi,Dorte B. Bekker-Jensen,Nicolai Bache,Jesper V. Olsen
标识
DOI:10.1101/2023.11.27.568953
摘要
Abstract The emergence of mass spectrometry (MS)-based single-cell proteomics (SCP) promise to revolutionize the study of cellular biology and biomedicine by providing an unparalleled view of the proteome in individual cells. Despite its groundbreaking potential, SCP is nascent and faces challenges including limited sequence depth, throughput, and reproducibility, which have constrained its broader utility. This study introduces key methodological advances, which considerably improve the sensitivity, coverage and dependability of protein identification from single cells. We developed an almost lossless SCP workflow encompassing sample preparation to MS analysis, doubling the number of identified proteins from roughly 2000 to over 5000 in individual HeLa cells. A comprehensive evaluation of analytical software tools, alongside strict false discovery rate (FDR) controls solidified the reliability of our results. These enhancements also facilitated the direct detection of post-translational modifications (PTMs) in single cells, negating the need for enrichment and thereby simplifying the analytical process. Although throughput in MS remains a challenge, our study demonstrates the feasibility of processing up to 80 label-free SCP samples per day. Moreover, an optimized tissue dissociation buffer enabled effective single cell disaggregation of drug-treated cancer cell spheroids, refining the overall proteomic analysis. Our workflow sets a new benchmark in SCP for sensitivity and throughput, with broad applications ranging from the study of cellular development to disease progression and the identification of cell type-specific markers and therapeutic targets.
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