TY - JOUR
T1 - Single-cell rna sequencing of a postmenopausal normal breast tissue identifies multiple cell types that contribute to breast cancer
AU - Peng, Sen
AU - Hebert, Lora L.
AU - Eschbacher, Jennifer M.
AU - Kim, Suwon
N1 - Funding Information:
Funding: The study was funded by the Baylor Scott & White Research Institute (BSWRI) and Translational Genomics Research Institute (TGen) Oncology Research Collaboration Initiative grant CP-15 (to S.K.). The analysis framework development was funded by the TGen Women’s Philanthropy Council (to S.P.). The biobank at St. Joseph’s Hospital and the Barrows Neurological Institute are funded by the Arizona Biomedical Research Commission and the Barrow Neurological Foundation (to J.M.E.).
Funding Information:
The study was funded by the Baylor Scott & White Research Institute (BSWRI) and Translational Genomics Research Institute (TGen) Oncology Research Collaboration Initiative grant CP-15 (to S.K.). The analysis framework development was funded by the TGen Women?s Philanthropy Council (to S.P.). The biobank at St. Joseph?s Hospital and the Barrows Neurological Institute are funded by the Arizona Biomedical Research Commission and the Barrow Neurological Foundation (to J.M.E.).
Publisher Copyright:
© 2020 by the authors. Licensee MDPI, Basel, Switzerland. T.
PY - 2020/12
Y1 - 2020/12
N2 - The human breast is composed of diverse cell types. Studies have delineated mammary epithelial cells, but the other cell types in the breast have scarcely been characterized. In order to gain insight into the cellular composition of the tissue, we performed droplet-mediated RNA sequencing of 3193 single cells isolated from a postmenopausal breast tissue without enriching for epithelial cells. Unbiased clustering analysis identified 10 distinct cell clusters, seven of which were nonepithelial devoid of cytokeratin expression. The remaining three cell clusters expressed cytokeratins (CKs), representing breast epithelial cells; Cluster 2 and Cluster 7 cells expressed luminal and basal CKs, respectively, whereas Cluster 9 cells expressed both luminal and basal CKs, as well as other CKs of unknown specificity. To assess which cell type(s) potentially contributes to breast cancer, we used the differential gene expression signature of each cell cluster to derive gene set variation analysis (GSVA) scores and classified breast tumors in The Cancer Gene Atlas (TGGA) dataset (n = 1100) by assigning the highest GSVA scoring cell cluster number for each tumor. The results showed that five clusters (Clusters 2, 3, 7, 8, and 9) could categorize >85% of breast tumors collectively. Notably, Cluster 2 (luminal epithelial) and Cluster 3 (fibroblast) tumors were equally prevalent in the luminal breast cancer subtypes, whereas Cluster 7 (basal epithelial) and Cluster 9 (other epithelial) tumors were present primarily in the triple-negative breast cancer (TNBC) subtype. Cluster 8 (immune) tumors were present in all subtypes, indicating that immune cells may contribute to breast cancer regardless of the subtypes. Cluster 9 tumors were significantly associated with poor patient survival in TNBC, suggesting that this epithelial cell type may give rise to an aggressive TNBC subset.
AB - The human breast is composed of diverse cell types. Studies have delineated mammary epithelial cells, but the other cell types in the breast have scarcely been characterized. In order to gain insight into the cellular composition of the tissue, we performed droplet-mediated RNA sequencing of 3193 single cells isolated from a postmenopausal breast tissue without enriching for epithelial cells. Unbiased clustering analysis identified 10 distinct cell clusters, seven of which were nonepithelial devoid of cytokeratin expression. The remaining three cell clusters expressed cytokeratins (CKs), representing breast epithelial cells; Cluster 2 and Cluster 7 cells expressed luminal and basal CKs, respectively, whereas Cluster 9 cells expressed both luminal and basal CKs, as well as other CKs of unknown specificity. To assess which cell type(s) potentially contributes to breast cancer, we used the differential gene expression signature of each cell cluster to derive gene set variation analysis (GSVA) scores and classified breast tumors in The Cancer Gene Atlas (TGGA) dataset (n = 1100) by assigning the highest GSVA scoring cell cluster number for each tumor. The results showed that five clusters (Clusters 2, 3, 7, 8, and 9) could categorize >85% of breast tumors collectively. Notably, Cluster 2 (luminal epithelial) and Cluster 3 (fibroblast) tumors were equally prevalent in the luminal breast cancer subtypes, whereas Cluster 7 (basal epithelial) and Cluster 9 (other epithelial) tumors were present primarily in the triple-negative breast cancer (TNBC) subtype. Cluster 8 (immune) tumors were present in all subtypes, indicating that immune cells may contribute to breast cancer regardless of the subtypes. Cluster 9 tumors were significantly associated with poor patient survival in TNBC, suggesting that this epithelial cell type may give rise to an aggressive TNBC subset.
KW - Cluster analysis
KW - Cytokeratin expression
KW - GSVA
KW - Mammary epithelial cells
KW - Mammary fibroblasts
KW - Normal breast
KW - Single-cell RNA sequencing
KW - TCGA breast cancer dataset: breast cancer
KW - Triple-negative breast cancer
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U2 - 10.3390/cancers12123639
DO - 10.3390/cancers12123639
M3 - Article
AN - SCOPUS:85097233985
SN - 2072-6694
VL - 12
SP - 1
EP - 20
JO - Cancers
JF - Cancers
IS - 12
M1 - 3639
ER -