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Myrto Barrdahl, Federico Canzian, Amit D. Joshi, Ruth C. Travis, Jenny Chang-Claude, Paul L. Auer, Susan M. Gapstur, Mia Gaudet, W. Ryan Diver, Brian E. Henderson, Christopher A. Haiman, Fredrick R. Schumacher, Loïc Le Marchand, Christine D. Berg, Stephen J. Chanock, Robert N. Hoover, Anja Rudolph, Regina G. Ziegler, Graham G. Giles, Laura Baglietto, Gianluca Severi, Susan E. Hankinson, Sara Lindström, Walter Willet, David J. Hunter, Julie E. Buring, I-Min Lee, Shumin Zhang, Laure Dossus, David G. Cox, Kay-Tee Khaw, Eiliv Lund, Alessio Naccarati, Petra H. Peeters, J. Ramón Quirós, Elio Riboli, Malin Sund, Dimitrios Trichopoulos, Ross L. Prentice, Peter Kraft, Rudolf Kaaks, Daniele Campa, Post-GWAS gene–environment interplay in breast cancer: results from the Breast and Prostate Cancer Cohort Consortium and a meta-analysis on 79 000 women, Human Molecular Genetics, Volume 23, Issue 19, 1 October 2014, Pages 5260–5270, https://doi.org/10.1093/hmg/ddu223
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We studied the interplay between 39 breast cancer (BC) risk SNPs and established BC risk (body mass index, height, age at menarche, parity, age at menopause, smoking, alcohol and family history of BC) and prognostic factors (TNM stage, tumor grade, tumor size, age at diagnosis, estrogen receptor status and progesterone receptor status) as joint determinants of BC risk. We used a nested case–control design within the National Cancer Institute's Breast and Prostate Cancer Cohort Consortium (BPC3), with 16 285 BC cases and 19 376 controls. We performed stratified analyses for both the risk and prognostic factors, testing for heterogeneity for the risk factors, and case–case comparisons for differential associations of polymorphisms by subgroups of the prognostic factors. We analyzed multiplicative interactions between the SNPs and the risk factors. Finally, we also performed a meta-analysis of the interaction ORs from BPC3 and the Breast Cancer Association Consortium. After correction for multiple testing, no significant interaction between the SNPs and the established risk factors in the BPC3 study was found. The meta-analysis showed a suggestive interaction between smoking status and SLC4A7-rs4973768 (Pinteraction = 8.84 × 10−4) which, although not significant after considering multiple comparison, has a plausible biological explanation. In conclusion, in this study of up to almost 79 000 women we can conclusively exclude any novel major interactions between genome-wide association studies hits and the epidemiologic risk factors taken into consideration, but we propose a suggestive interaction between smoking status and SLC4A7-rs4973768 that if further replicated could help our understanding in the etiology of BC.
- ethanol
- smoking
- body mass index procedure
- menopause
- polymorphism
- cancer
- heterogeneity
- menarche
- parity
- single nucleotide polymorphism
- estrogen receptors
- receptors, progesterone
- breast
- diagnosis
- breast cancer
- prostate cancer
- prognostic factors
- gene-environment interaction
- genome-wide association study
- causality
- tumor size
- neoplasm grading