A single-cell atlas of the healthy breast tissues reveals clinically relevant clusters of breast epithelial cells

Poornima Bhat‐Nakshatri(Indiana University – Purdue University Indianapolis), Hongyu Gao(Indiana University School of Medicine), Sheng Liu(Indiana University – Purdue University Indianapolis), Patrick C. McGuire(Indiana University School of Medicine), Xiaoling Xuei(Indiana University – Purdue University Indianapolis), Jun Wan(Indiana University School of Medicine), Yunlong Liu(Indiana University School of Medicine), Sandra K. Althouse(Indiana University School of Medicine), Austyn Colter(Indiana University School of Medicine), George E. Sandusky(Indiana University – Purdue University Indianapolis), Anna Maria Storniolo(Indiana University – Purdue University Indianapolis), Harikrishna Nakshatri(Indiana University – Purdue University Indianapolis)
Cell Reports Medicine
March 1, 2021
Cited by 120Open Access
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Abstract

Single-cell RNA sequencing (scRNA-seq) is an evolving technology used to elucidate the cellular architecture of adult organs. Previous scRNA-seq on breast tissue utilized reduction mammoplasty samples, which are often histologically abnormal. We report a rapid tissue collection/processing protocol to perform scRNA-seq of breast biopsies of healthy women and identify 23 breast epithelial cell clusters. Putative cell-of-origin signatures derived from these clusters are applied to analyze transcriptomes of ~3,000 breast cancers. Gene signatures derived from mature luminal cell clusters are enriched in ~68% of breast cancers, whereas a signature from a luminal progenitor cluster is enriched in ~20% of breast cancers. Overexpression of luminal progenitor cluster-derived signatures in HER2+, but not in other subtypes, is associated with unfavorable outcome. We identify TBX3 and PDK4 as genes co-expressed with estrogen receptor (ER) in the normal breasts, and their expression analyses in >550 breast cancers enable prognostically relevant subclassification of ER+ breast cancers.


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