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Get Free AccessGermline variation and smoking are independently associated with pancreatic ductal adenocarcinoma (PDAC). We conducted genome-wide smoking interaction analysis of PDAC using genotype data from four previous genome-wide association studies in individuals of European ancestry (7,937 cases and 11,774 controls). Examination of expression quantitative trait loci data from the Genotype-Tissue Expression Project followed by colocalization analysis was conducted to determine whether there was support for common SNP(s) underlying the observed associations. Statistical tests were two sided and P < 5 × 10–8 was considered statistically significant. Genome-wide significant evidence of qualitative interaction was identified on chr2q21.3 in intron 5 of the transmembrane protein 163 (TMEM163) and upstream of the cyclin T2 (CCNT2). The most significant SNP using the Empirical Bayes method, in this region that included 45 significantly associated SNPs, was rs1818613 [per allele OR in never smokers 0.87, 95% confidence interval (CI), 0.82–0.93; former smokers 1.00, 95% CI, 0.91–1.07; current smokers 1.25, 95% CI 1.12–1.40, Pinteraction = 3.08 × 10–9). Examination of the Genotype-Tissue Expression Project data demonstrated an expression quantitative trait locus in this region for TMEM163 and CCNT2 in several tissue types. Colocalization analysis supported a shared SNP, rs842357, in high linkage disequilibrium with rs1818613 (r2 = 0. 94) driving both the observed interaction and the expression quantitative trait loci signals. Future studies are needed to confirm and understand the differential biologic mechanisms by smoking status that contribute to our PDAC findings.
Significance:This large genome-wide interaction study identifies a susceptibility locus on 2q21.3 that significantly modified PDAC risk by smoking status, providing insight into smoking-associated PDAC, with implications for prevention.
Evelina Mocci, Prosenjit Kundu, William Morton Wheeler, Alan A. Arslan, Laura E. Beane Freeman, Paige M. Bracci, Paul Brennan, Federico Canzian, Mengmeng Du, Steven Gallinger, Graham G. Giles, Phyllis J. Goodman, Charles Kooperberg, Loı̈c Le Marchand, Rachel Ε. Neale, Xiao‐Ou Shu, Kala Visvanathan, Emily White, Wei Zheng, Demetrius Albanes, Gabriella Andreotti, A. Babić, William R. Bamlet, Sonja I. Berndt, Amanda L. Blackford, Bas Bueno‐de‐Mesquita, Julie E. Buring, Daniele Campa, Stephen J. Chanock, Erica J. Childs, Eric J. Duell, Charles S. Fuchs, J. Michael Gaziano, Edward L. Giovannucci, Michael Goggins, Patricia Hartge, Manal M. Hassan, Elizabeth A. Holly, Robert N. Hoover, Rayjean J. Hung, Robert C. Kurtz, I‐Min Lee, Núria Malats, Roger L. Milne, Kimmie Ng, Ann L. Oberg, Salvatore Panico, Annette Peters, Miquel Porta, Kari G. Rabe, Elio Riboli, Nathaniel Rothman, Ghislaine Scélo, Howard D. Sesso, Debra T. Silverman, Victoria L. Stevens, Oliver Strobel, Ian M. Thompson, Anne Tjønneland, Antonia Trichopoulou, Stephen K. Van Den Eeden, Jean Wactawski‐Wende, Nicolas Wentzensen, Lynne R. Wilkens, Herbert Yu, Fangcheng Yuan, Anne Zeleniuch‐Jacquotte, Laufey T. Ámundadóttir, Donghui Li, Eric J. Jacobs, Gloria M. Petersen, Brian M. Wolpin, Harvey A. Risch, Peter Kraft, Nilanjan Chatterjee, Alison P. Klein, Rachael Z. Stolzenberg‐Solomon (2023). Data from Smoking Modifies Pancreatic Cancer Risk Loci on 2q21.3. , DOI: https://doi.org/10.1158/0008-5472.c.6513538.v1.
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Type
Preprint
Year
2023
Authors
77
Datasets
0
Total Files
0
Language
en
DOI
https://doi.org/10.1158/0008-5472.c.6513538.v1
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