TY - JOUR
T1 - Fine-mapping of 150 breast cancer risk regions identifies 191 likely target genes
AU - GEMO Study Collaborators
AU - EMBRACE Collaborators
AU - KConFab Investigators
AU - HEBON Investigators
AU - ABCTB Investigators
AU - Fachal, Laura
AU - Aschard, Hugues
AU - Beesley, Jonathan
AU - Barnes, Daniel R.
AU - Allen, Jamie
AU - Kar, Siddhartha
AU - Pooley, Karen A.
AU - Dennis, Joe
AU - Michailidou, Kyriaki
AU - Turman, Constance
AU - Soucy, Penny
AU - Lemaçon, Audrey
AU - Lush, Michael
AU - Tyrer, Jonathan P.
AU - Ghoussaini, Maya
AU - Marjaneh, Mahdi Moradi
AU - Jiang, Xia
AU - Agata, Simona
AU - Aittomäki, Kristiina
AU - Alonso, M. Rosario
AU - Andrulis, Irene L.
AU - Anton-Culver, Hoda
AU - Antonenkova, Natalia N.
AU - Arason, Adalgeir
AU - Arndt, Volker
AU - Aronson, Kristan J.
AU - Arun, Banu K.
AU - Auber, Bernd
AU - Auer, Paul L.
AU - Azzollini, Jacopo
AU - Balmaña, Judith
AU - Barkardottir, Rosa B.
AU - Barrowdale, Daniel
AU - Beeghly-Fadiel, Alicia
AU - Benitez, Javier
AU - Bermisheva, Marina
AU - Bialkowska, Katarzyna
AU - Blanco, Amie M.
AU - Blomqvist, Carl
AU - Blot, William
AU - Bogdanova, Natalia V.
AU - Bojesen, Stig E.
AU - Bolla, Manjeet K.
AU - Bonanni, Bernardo
AU - Borg, Ake
AU - Bosse, Kristin
AU - Brauch, Hiltrud
AU - Brenner, Hermann
AU - Briceno, Ignacio
AU - Brock, Ian W.
AU - Brooks-Wilson, Angela
AU - Brüning, Thomas
AU - Burwinkel, Barbara
AU - Buys, Saundra S.
AU - Cai, Qiuyin
AU - Caldés, Trinidad
AU - Caligo, Maria A.
AU - Camp, Nicola J.
AU - Campbell, Ian
AU - Canzian, Federico
AU - Carroll, Jason S.
AU - Carter, Brian D.
AU - Castelao, Jose E.
AU - Chiquette, Jocelyne
AU - Christiansen, Hans
AU - Chung, Wendy K.
AU - Claes, Kathleen B.M.
AU - Clarke, Christine L.
AU - Mari, Véronique
AU - Berthet, Pascaline
AU - Castera, Laurent
AU - Vaur, Dominique
AU - Lallaoui, Hakima
AU - Bignon, Yves Jean
AU - Uhrhammer, Nancy
AU - Bonadona, Valérie
AU - Lasset, Christine
AU - Révillion, Françoise
AU - Vennin, Paul
AU - Muller, Daniele
AU - Gomes, Denise Molina
AU - Ingster, Olivier
AU - Coupier, Isabelle
AU - Pujol, Pascal
AU - Collonge-Rame, Marie Agnès
AU - Mortemousque, Isabelle
AU - Bera, Odile
AU - Rose, Mickaelle
AU - Baurand, Amandine
AU - Bertolone, Geoffrey
AU - Faivre, Laurence
AU - Dreyfus, Hélène
AU - Leroux, Dominique
AU - Venat-Bouvet, Laurence
AU - Bézieau, Stéphane
AU - Delnatte, Capucine
AU - Chiesa, Jean
AU - Gilbert-Dussardier, Brigitte
AU - Kerin, Michael J.
AU - Miller, Nicola
N1 - Publisher Copyright:
© 2020, The Author(s), under exclusive licence to Springer Nature America, Inc.
PY - 2020/1/1
Y1 - 2020/1/1
N2 - Genome-wide association studies have identified breast cancer risk variants in over 150 genomic regions, but the mechanisms underlying risk remain largely unknown. These regions were explored by combining association analysis with in silico genomic feature annotations. We defined 205 independent risk-associated signals with the set of credible causal variants in each one. In parallel, we used a Bayesian approach (PAINTOR) that combines genetic association, linkage disequilibrium and enriched genomic features to determine variants with high posterior probabilities of being causal. Potentially causal variants were significantly over-represented in active gene regulatory regions and transcription factor binding sites. We applied our INQUSIT pipeline for prioritizing genes as targets of those potentially causal variants, using gene expression (expression quantitative trait loci), chromatin interaction and functional annotations. Known cancer drivers, transcription factors and genes in the developmental, apoptosis, immune system and DNA integrity checkpoint gene ontology pathways were over-represented among the highest-confidence target genes.
AB - Genome-wide association studies have identified breast cancer risk variants in over 150 genomic regions, but the mechanisms underlying risk remain largely unknown. These regions were explored by combining association analysis with in silico genomic feature annotations. We defined 205 independent risk-associated signals with the set of credible causal variants in each one. In parallel, we used a Bayesian approach (PAINTOR) that combines genetic association, linkage disequilibrium and enriched genomic features to determine variants with high posterior probabilities of being causal. Potentially causal variants were significantly over-represented in active gene regulatory regions and transcription factor binding sites. We applied our INQUSIT pipeline for prioritizing genes as targets of those potentially causal variants, using gene expression (expression quantitative trait loci), chromatin interaction and functional annotations. Known cancer drivers, transcription factors and genes in the developmental, apoptosis, immune system and DNA integrity checkpoint gene ontology pathways were over-represented among the highest-confidence target genes.
UR - https://www.scopus.com/pages/publications/85077675544
U2 - 10.1038/s41588-019-0537-1
DO - 10.1038/s41588-019-0537-1
M3 - Article
C2 - 31911677
AN - SCOPUS:85077675544
SN - 1061-4036
VL - 52
SP - 56
EP - 73
JO - Nature Genetics
JF - Nature Genetics
IS - 1
ER -