Zilu Ye, Pierre Sabatier, Leander van der Hoeven, Maico Y. Lechner, Teeradon Phlairaharn, Ulises H. Guzman, Zhen Liu, Haoran Huang, Min Huang, Xiangjun Li, David Hartlmayr, Fabiana Izaguirre, Anjali Seth, Hiren J. Joshi, Sergey Rodin, Karl-Henrik Grinnemo, Ole B. Hørning, Dorte B. Bekker-Jensen, Nicolai Bache, Jesper V. Olsen
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引用次数: 0
Abstract
Single-cell proteomics (SCP) promises to revolutionize biomedicine by providing an unparalleled view of the proteome in individual cells. Here, we present a high-sensitivity SCP workflow named Chip-Tip, identifying >5,000 proteins in individual HeLa cells. It also facilitated direct detection of post-translational modifications in single cells, making the need for specific post-translational modification-enrichment unnecessary. Our study demonstrates the feasibility of processing up to 120 label-free SCP samples per day. An optimized tissue dissociation buffer enabled effective single-cell disaggregation of drug-treated cancer cell spheroids, refining overall SCP analysis. Analyzing nondirected human-induced pluripotent stem cell differentiation, we consistently quantified stem cell markers OCT4 and SOX2 in human-induced pluripotent stem cells and lineage markers such as GATA4 (endoderm), HAND1 (mesoderm) and MAP2 (ectoderm) in different embryoid body cells. Our workflow sets a benchmark in SCP for sensitivity and throughput, with broad applications in basic biology and biomedicine for identification of cell type-specific markers and therapeutic targets. Chip-Tip is a label-free quantification-based single-cell proteomics workflow for deep single-cell proteomics, which identifies over 5,000 proteins and 40,000 peptides in single HeLa cells.
Stephanie Shiau, Sean S Brummel, Elizabeth M Kennedy, Karen Hermetz, Stephen A Spector, Paige L Williams, Deborah Kacanek, Renee Smith, Stacy S Drury, Allison Agwu, Angela Ellis, Kunjal Patel, George R Seage, Russell B Van Dyke, Carmen J Marsit
Greg S Gojanovich, Denise L Jacobson, Jennifer Jao, Jonathan S Russell, Russell B Van Dyke, Daniel E Libutti, Tanvi S Sharma, Mitchell E Geffner, Mariana Gerschenson
期刊介绍:
Nature Methods is a monthly journal that focuses on publishing innovative methods and substantial enhancements to fundamental life sciences research techniques. Geared towards a diverse, interdisciplinary readership of researchers in academia and industry engaged in laboratory work, the journal offers new tools for research and emphasizes the immediate practical significance of the featured work. It publishes primary research papers and reviews recent technical and methodological advancements, with a particular interest in primary methods papers relevant to the biological and biomedical sciences. This includes methods rooted in chemistry with practical applications for studying biological problems.