生物
髓系白血病
髓样
舱室(船)
干细胞
细胞分化
白血病
癌症研究
祖细胞
细胞
表型
细胞生物学
免疫学
基因
计算生物学
遗传学
海洋学
地质学
作者
Sergi Beneyto‐Calabuig,Anne Kathrin Merbach,Jonas-Alexander Kniffka,Magdalena Antes,Chelsea Szu‐Tu,Christian Rohde,Alexander Waclawiczek,Patrick Stelmach,Sarah Gräßle,Philip Pervan,Maike Janssen,Jonathan J. M. Landry,Vladimı́r Beneš,Anna Jauch,Michaela Brough,Marcus Bauer,Birgit Besenbeck,Julia Felden,Sebastian Bäumer,Michael Hundemer
出处
期刊:Cell Stem Cell
[Elsevier BV]
日期:2023-04-24
卷期号:30 (5): 706-721.e8
被引量:51
标识
DOI:10.1016/j.stem.2023.04.001
摘要
Inter-patient variability and the similarity of healthy and leukemic stem cells (LSCs) have impeded the characterization of LSCs in acute myeloid leukemia (AML) and their differentiation landscape. Here, we introduce CloneTracer, a novel method that adds clonal resolution to single-cell RNA-seq datasets. Applied to samples from 19 AML patients, CloneTracer revealed routes of leukemic differentiation. Although residual healthy and preleukemic cells dominated the dormant stem cell compartment, active LSCs resembled their healthy counterpart and retained erythroid capacity. By contrast, downstream myeloid progenitors constituted a highly aberrant, disease-defining compartment: their gene expression and differentiation state affected both the chemotherapy response and leukemia's ability to differentiate into transcriptomically normal monocytes. Finally, we demonstrated the potential of CloneTracer to identify surface markers misregulated specifically in leukemic cells. Taken together, CloneTracer reveals a differentiation landscape that mimics its healthy counterpart and may determine biology and therapy response in AML.
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