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- Title
Using genome and transcriptome data from African-ancestry female participants to identify putative breast cancer susceptibility genes.
- Authors
Ping, Jie; Jia, Guochong; Cai, Qiuyin; Guo, Xingyi; Tao, Ran; Ambrosone, Christine; Huo, Dezheng; Ambs, Stefan; Barnard, Mollie E.; Chen, Yu; Garcia-Closas, Montserrat; Gu, Jian; Hu, Jennifer J.; John, Esther M.; Li, Christopher I.; Nathanson, Katherine; Nemesure, Barbara; Olopade, Olufunmilayo I.; Pal, Tuya; Press, Michael F.
- Abstract
African-ancestry (AA) participants are underrepresented in genetics research. Here, we conducted a transcriptome-wide association study (TWAS) in AA female participants to identify putative breast cancer susceptibility genes. We built genetic models to predict levels of gene expression, exon junction, and 3′ UTR alternative polyadenylation using genomic and transcriptomic data generated in normal breast tissues from 150 AA participants and then used these models to perform association analyses using genomic data from 18,034 cases and 22,104 controls. At Bonferroni-corrected P < 0.05, we identified six genes associated with breast cancer risk, including four genes not previously reported (CTD-3080P12.3, EN1, LINC01956 and NUP210L). Most of these genes showed a stronger association with risk of estrogen-receptor (ER) negative or triple-negative than ER-positive breast cancer. We also replicated the associations with 29 genes reported in previous TWAS at P < 0.05 (one-sided), providing further support for an association of these genes with breast cancer risk. Our study sheds new light on the genetic basis of breast cancer and highlights the value of conducting research in AA populations. Here, the authors integrate genomic and transcriptomic data obtained from African-ancestry female participants and identify six genes associated with breast cancer risk which provides biological insights into this common cancer in an underrepresented population.
- Subjects
BREAST; BRCA genes; GENETIC models; GENOMES; GENE expression; GENOMICS; TRANSCRIPTOMES
- Publication
Nature Communications, 2024, Vol 15, Issue 1, p1
- ISSN
2041-1723
- Publication type
Article
- DOI
10.1038/s41467-024-47650-5