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Data from Patterns of Oncogene Coexpression at Single-Cell Resolution Influence Survival in Lymphoma

Authors :
Anand D. Jeyasekharan
Claudio Tripodo
Siok-Bian Ng
Yen Lin Chee
Wee Joo Chng
Kasthuri Kannan
Gayatri Kumar
Jinmiao Chen
Jason J. Pitt
David W. Scott
Anja Mottok
Pedro Farinha
Daniel J. Hodson
Irina Mohorianu
Ilias Moutsopoulos
Hendrik F.P. Runge
Laura J. Gay
Alessia Bottos
Carl Harris
Hyungwon Choi
Joseph D. Khoury
Shaoying Li
Shih-Sung Chuang
Sheng-Tsung Chang
Susan Swee-Shan Hue
Soo-Yong Tan
Nicholas F. Grigoropoulos
Chandramouli Nagarajan
Soon Thye Lim
Tiffany Tang
Choon Kiat Ong
Joanne Lee
Esther Hian Li Chan
Limei Poon
Sanjay De Mel
Clementine Xin Liu
Phuong Mai Hoang
Shruti Sridhar
Yanfen Peng
Fan Shuangyi
Patrick Jaynes
Michal Marek Hoppe
Publication Year :
2023
Publisher :
American Association for Cancer Research (AACR), 2023.

Abstract

Cancers often overexpress multiple clinically relevant oncogenes, but it is not known if combinations of oncogenes in cellular subpopulations within a cancer influence clinical outcomes. Using quantitative multispectral imaging of the prognostically relevant oncogenes MYC, BCL2, and BCL6 in diffuse large B-cell lymphoma (DLBCL), we show that the percentage of cells with a unique combination MYC+BCL2+BCL6− (M+2+6−) consistently predicts survival across four independent cohorts (n = 449), an effect not observed with other combinations including M+2+6+. We show that the M+2+6− percentage can be mathematically derived from quantitative measurements of the individual oncogenes and correlates with survival in IHC (n = 316) and gene expression (n = 2,521) datasets. Comparative bulk/single-cell transcriptomic analyses of DLBCL samples and MYC/BCL2/BCL6-transformed primary B cells identify molecular features, including cyclin D2 and PI3K/AKT as candidate regulators of M+2+6− unfavorable biology. Similar analyses evaluating oncogenic combinations at single-cell resolution in other cancers may facilitate an understanding of cancer evolution and therapy resistance.Significance:Using single-cell–resolved multiplexed imaging, we show that selected subpopulations of cells expressing specific combinations of oncogenes influence clinical outcomes in lymphoma. We describe a probabilistic metric for the estimation of cellular oncogenic coexpression from IHC or bulk transcriptomes, with possible implications for prognostication and therapeutic target discovery in cancer.This article is highlighted in the In This Issue feature, p. 1027

Details

ISSN :
21598290
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....73ce1b219efa31d7bf84a26b29d07845
Full Text :
https://doi.org/10.1158/2159-8290.c.6605362.v2