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Single cell RNA sequencing of AML initiating cells reveals RNA-based evolution during disease progression

Authors :
Banumathi Tamilselvan
Zachary Jackson
Susan Pereira Ribeiro
Jill S. Barnholtz-Sloan
Jaroslaw P. Maciejewski
David N. Wald
Kalpana Gupta
Ashish Sharma
Xuan Xu
Rafick-Pierre Sekaly
Robert Schauner
Anne Roe
Samuel Li
Robert S. Balderas
Tae Hyun Hwang
Lindsay Stetson
Slim Fourati
Marcos de Lima
Thomas LaFramboise
Dheepa Balasubramanian
Yogen Saunthararajah
Tammy Stefan
Source :
Leukemia
Publication Year :
2021
Publisher :
Springer Science and Business Media LLC, 2021.

Abstract

The prognosis of most patients with AML is poor due to frequent disease relapse. The cause of relapse is thought to be from the persistence of leukemia initiating cells (LIC's) following treatment. Here we assessed RNA based changes in LICs from matched patient diagnosis and relapse samples using single-cell RNA sequencing. Previous studies on AML progression have focused on genetic changes at the DNA mutation level mostly in bulk AML cells and demonstrated the existence of DNA clonal evolution. Here we identified in LICs that the phenomenon of RNA clonal evolution occurs during AML progression. Despite the presence of vast transcriptional heterogeneity at the single cell level, pathway analysis identified common signaling networks involving metabolism, apoptosis and chemokine signaling that evolved during AML progression and become a signature of relapse samples. A subset of this gene signature was validated at the protein level in LICs by flow cytometry from an independent AML cohort and functional studies were performed to demonstrate co-targeting BCL2 and CXCR4 signaling may help overcome therapeutic challenges with AML heterogeneity. It is hoped this work will facilitate a greater understanding of AML relapse leading to improved prognostic biomarkers and therapeutic strategies to target LIC's.

Details

ISSN :
14765551 and 08876924
Volume :
35
Database :
OpenAIRE
Journal :
Leukemia
Accession number :
edsair.doi.dedup.....a5a602a1f29de6b5360b3e7daf3b3d7d