Englander Institute for Precision Medicine

Single-cell chromatin accessibility reveals malignant regulatory programs in primary human cancers.

TitleSingle-cell chromatin accessibility reveals malignant regulatory programs in primary human cancers.
Publication TypeJournal Article
Year of Publication2024
AuthorsSundaram L, Kumar A, Zatzman M, Salcedo A, Ravindra N, Shams S, Louie BH, S Bagdatli T, Myers MA, Sarmashghi S, Choi HYoung, Choi W-Y, Yost KE, Zhao Y, Granja JM, Hinoue T, D Hayes N, Cherniack A, Felau I, Choudhry H, Zenklusen JC, Farh KKai-How, McPherson A, Curtis C, Laird PW, Demchok JA, Yang L, Tarnuzzer R, Caesar-Johnson SJ, Wang Z, Doane AS, Khurana E, Castro MAA, Lazar AJ, Broom BM, Weinstein JN, Akbani R, Kumar SV, Raphael BJ, Wong CK, Stuart JM, Safavi R, Benz CC, Johnson BK, Kyi C, Shen H, M Corces R, Chang HY, Greenleaf WJ
Corporate AuthorsCancer Genome Atlas Analysis Network‡
JournalScience
Volume385
Issue6713
Paginationeadk9217
Date Published2024 Sep 06
ISSN1095-9203
KeywordsBreast Neoplasms, Chromatin, DNA Copy Number Variations, Gene Expression Regulation, Neoplastic, Humans, Mutation, Neoplasms, Neural Networks, Computer, Single-Cell Analysis
Abstract

To identify cancer-associated gene regulatory changes, we generated single-cell chromatin accessibility landscapes across eight tumor types as part of The Cancer Genome Atlas. Tumor chromatin accessibility is strongly influenced by copy number alterations that can be used to identify subclones, yet underlying cis-regulatory landscapes retain cancer type-specific features. Using organ-matched healthy tissues, we identified the "nearest healthy" cell types in diverse cancers, demonstrating that the chromatin signature of basal-like-subtype breast cancer is most similar to secretory-type luminal epithelial cells. Neural network models trained to learn regulatory programs in cancer revealed enrichment of model-prioritized somatic noncoding mutations near cancer-associated genes, suggesting that dispersed, nonrecurrent, noncoding mutations in cancer are functional. Overall, these data and interpretable gene regulatory models for cancer and healthy tissue provide a framework for understanding cancer-specific gene regulation.

DOI10.1126/science.adk9217
Alternate JournalScience
PubMed ID39236169

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