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Global Biobank Meta-analysis Initiative: powering genetic discovery across human diseases

Authors :
Sarah Finer
Yen-Feng Lin
Michigan Genomics Initiative
Valeria Lo Faro
Benjamin M. Neale
Nathan Ingold
Estonian Biobank
Peter Straub
Jasmina Uzunovic
Triin Laisk
Whitney E. Hornsby
Sebastian Zoellner
Takahiro Konuma
Jordan A. Shavit
Masahiro Kanai
Xue Zhong
Stephen J. Wicks
Taiwan Biobank
Arjun Bhattacharya
Nicholas J. Douville
Yi Ding
BioVU
Jennifer E. Huffman
Christopher R. Gignoux
Kristian Hveem
Serena Sanna
Brooke N. Wolford
Mitja I. Kurki
Aarno Palotie
Yukinori Okada
FinnGen
Clara Lajonchere
Ida Surakka
Mass General Brigham Biobank
Jie Zheng
Caroline Hayward
Riccardo E. Marioni
Chris Griffiths
Lars G. Fritsche
Rasheed Humaira
Ben Michael Brumpton
Kristi Läll
Kuang Lin
Jordan W. Smoller
Lude Franke
Michelle Daya
David C. Whiteman
Karen A. Hunt
Harold Snieder
Jun Lv
Stuart MacGregor
Alicia R. Martin
Juha Karjalainen
Jonathan A. Shortt
Kuan-Han H. Wu
Jibril B Hirbo
Sameer Chavan
Marie-Julie Favé
Snehal Patil
Kristy Crooks
Sarah E. Graham
Tzu-Ting Chen
Michael Preuss
Matthew Zawistowski
Yen-Chen Anne Feng
Iona Y Millwood
Cisca Wijmenga
Cristen J. Willer
Jansonius Nomdo
Kristin Tsuo
Qimr Berghofer Biobank
Koichi Matsuda
LifeLines
Shinichi Namba
Nicholas M. Rafaels
Priit Palta
Unnur Thorsteinsdottir
Chia-Yen Chen
Generation Scotland
Cecilia M. Lindgren
Huiling Zhao
Andrea Ganna
Bogdan Pasaniuc
Maasha Mutaamba
Nancy J. Cox
Zhengming Chen
George Davey Smith
Mark J. Daly
Sarah E. Medland
Yu Guo
Daniel H. Geschwind
Matthew Law
Judith M. Vonk
Eimear E. Kenny
David J. Porteous
Tian Ge
Judy H. Cho
UK Biobank
Ruth J. F. Loos
Eric R. Gamazon
Wei Zhou
Richard C. Trembath
Philip Awadalla
Kathleen C. Barnes
David A. van Heel
Kari Stefansson
Archie Campbell
Hilary C. Martin
Tom R. Gaunt
Ruth E. Johnson
Sinéad B. Chapman
Esteban A Lopera-Maya
Michael Boehnke
Brett Vanderwerff
Catherine M. Olsen
Marike Boezen
Anita Pandit
BioMe
Ran Tao
Hilary K. Finucane
Anne Richmond
Ying Wang
Liming Li
Geertruida H. de Bock
John Wright
Xiang Zhou
Robin G. Walters
Reedik Mägi
Hailiang Huang
Publication Year :
2021
Publisher :
Cold Spring Harbor Laboratory, 2021.

Abstract

SummaryBiobanks are being established across the world to understand the genetic, environmental, and epidemiological basis of human diseases with the goal of better prevention and treatments. Genome-wide association studies (GWAS) have been very successful at mapping genomic loci for a wide range of human diseases and traits, but in general, lack appropriate representation of diverse ancestries - with most biobanks and preceding GWAS studies composed of individuals of European ancestries. Here, we introduce the Global Biobank Meta-analysis Initiative (GBMI) -- a collaborative network of 19 biobanks from 4 continents representing more than 2.1 million consented individuals with genetic data linked to electronic health records. GBMI meta-analyzes summary statistics from GWAS generated using harmonized genotypes and phenotypes from member biobanks. GBMI brings together results from GWAS analysis across 6 main ancestry groups: approximately 33,000 of African ancestry either from Africa or from admixed-ancestry diaspora (AFR), 18,000 admixed American (AMR), 31,000 Central and South Asian (CSA), 341,000 East Asian (EAS), 1.4 million European (EUR), and 1,600 Middle Eastern (MID) individuals. In this flagship project, we generated GWASs from across 14 exemplar diseases and endpoints, including both common and less prevalent diseases that were previously understudied. Using the genetic association results, we validate that GWASs conducted in biobanks worldwide can be successfully integrated despite heterogeneity in case definitions, recruitment strategies, and baseline characteristics between biobanks. We demonstrate the value of this collaborative effort to improve GWAS power for diseases, increase representation, benefit understudied diseases, and improve risk prediction while also enabling the nomination of disease genes and drug candidates by incorporating gene and protein expression data and providing insight into the underlying biology of the studied traits.

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........9439cf051f4d6442c096778e0c35b0c4