Convergence of oncogenic cooperation at single-cell and single-gene levels drives leukemic transformation Journal Article


Authors: Liu, Y.; Gu, Z.; Cao, H.; Kaphle, P.; Lyu, J.; Zhang, Y.; Hu, W.; Chung, S. S.; Dickerson, K. E.; Xu, J.
Article Title: Convergence of oncogenic cooperation at single-cell and single-gene levels drives leukemic transformation
Abstract: Cancers develop from the accumulation of somatic mutations, yet it remains unclear how oncogenic lesions cooperate to drive cancer progression. Using a mouse model harboring NRasG12D and EZH2 mutations that recapitulates leukemic progression, we employ single-cell transcriptomic profiling to map cellular composition and gene expression alterations in healthy or diseased bone marrows during leukemogenesis. At cellular level, NRasG12D induces myeloid lineage-biased differentiation and EZH2-deficiency impairs myeloid cell maturation, whereas they cooperate to promote myeloid neoplasms with dysregulated transcriptional programs. At gene level, NRasG12D and EZH2-deficiency independently and synergistically deregulate gene expression. We integrate results from histopathology, leukemia repopulation, and leukemia-initiating cell assays to validate transcriptome-based cellular profiles. We use this resource to relate developmental hierarchies to leukemia phenotypes, evaluate oncogenic cooperation at single-cell and single-gene levels, and identify GEM as a regulator of leukemia-initiating cells. Our studies establish an integrative approach to deconvolute cancer evolution at single-cell resolution in vivo. © 2021, The Author(s).
Keywords: mutation; gene expression; rna; cucurbita; cell component; cancer
Journal Title: Nature Communications
Volume: 12
Issue: 1
ISSN: 2041-1723
Publisher: Nature Publishing Group  
Date Published: 2021-11-03
Start Page: 6323
Language: English
DOI: 10.1038/s41467-021-26582-4
PROVIDER: scopus
PMCID: PMC8566485
PUBMED: 34732703
DOI/URL:
Notes: Article -- Export Date: 1 December 2021 -- Source: Scopus
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  1. Wenhuo Hu
    60 Hu