Single cell transcriptomic profiling identifies tumor-acquired and therapy-resistant cell states in pediatric rhabdomyosarcoma

Author:

Danielli Sara G.ORCID,Wei Yun,Dyer Michael A.ORCID,Stewart ElizabethORCID,Sheppard HeatherORCID,Wachtel MarcoORCID,Schäfer Beat W.ORCID,Patel Anand G.ORCID,Langenau David M.ORCID

Abstract

AbstractRhabdomyosarcoma (RMS) is a pediatric tumor that resembles undifferentiated muscle cells; yet the extent to which cell state heterogeneity is shared with human development has not been described. Using single-cell/nucleus RNA sequencing from patient tumors, patient-derived xenografts, primary in vitro cultures, and cell lines, we identify four dominant muscle-lineage cell states: progenitor, proliferative, differentiated, and ground cells. We stratify these RMS cells/nuclei along the continuum of human muscle development and show that they share expression patterns with fetal/embryonal myogenic precursors rather than postnatal satellite cells. Fusion-negative RMS (FN-RMS) have a discrete stem cell hierarchy that recapitulates fetal muscle development and contain therapy-resistant FN-RMS progenitors that share transcriptomic similarity with bipotent skeletal mesenchymal cells. Fusion-positive RMS have tumor-acquired cells states, including a neuronal cell state, that are not found in myogenic development. This work identifies previously underappreciated cell state heterogeneity including unique treatment-resistant and tumor-acquired cell states that differ across RMS subtypes.

Funder

CureSearch for Children's Cancer

U.S. Department of Health & Human Services | NIH | National Cancer Institute

Rally Foundation

V Foundation for Cancer Research

Infinite Love for Kids Fighting Cancer

Sarcoma Foundation of America

Massachusetts General Hospital

Friends of TJ and Summer’s Way Foundation

Alex's Lemonade Stand Foundation for Childhood Cancer

American Lebanese Syrian Associated Charities

Hyundai Motor Group | Hyundai Motor America | Hyundai Hope On Wheels

Damon Runyon Cancer Research Foundation

Publisher

Springer Science and Business Media LLC

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