生物
表型
祖细胞
祖细胞
遗传学
癌症研究
干细胞
基因
作者
Jacob Levine,Erin F. Simonds,Sean C. Bendall,Kara L. Davis,El-ad David Amir,Michelle D. Tadmor,Oren Litvin,Harris G. Fienberg,Astraea Jager,Eli R. Zunder,Rachel Finck,Amanda Larson Gedman,Ina Radtke,James R. Downing,Dana Pe’er,Garry P. Nolan
出处
期刊:Cell
[Cell Press]
日期:2015-06-18
卷期号:162 (1): 184-197
被引量:2142
标识
DOI:10.1016/j.cell.2015.05.047
摘要
Acute myeloid leukemia (AML) manifests as phenotypically and functionally diverse cells, often within the same patient. Intratumor phenotypic and functional heterogeneity have been linked primarily by physical sorting experiments, which assume that functionally distinct subpopulations can be prospectively isolated by surface phenotypes. This assumption has proven problematic, and we therefore developed a data-driven approach. Using mass cytometry, we profiled surface and intracellular signaling proteins simultaneously in millions of healthy and leukemic cells. We developed PhenoGraph, which algorithmically defines phenotypes in high-dimensional single-cell data. PhenoGraph revealed that the surface phenotypes of leukemic blasts do not necessarily reflect their intracellular state. Using hematopoietic progenitors, we defined a signaling-based measure of cellular phenotype, which led to isolation of a gene expression signature that was predictive of survival in independent cohorts. This study presents new methods for large-scale analysis of single-cell heterogeneity and demonstrates their utility, yielding insights into AML pathophysiology.
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