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An expanded analysis framework for multivariate GWAS connects inflammatory biomarkers to functional variants and disease

Authors :
Priit Palta
Mark J. Daly
Ida Surakka
Veikko Salomaa
Anna Cichonska
Ari Ahola-Olli
Sanni Ruotsalainen
Mary Pat Reeve
Marko Salmi
Juulia Partanen
Samuli Ripatti
Jukka Koskela
Jake Lin
Aarno Palotie
Sirpa Jalkanen
Matti Pirinen
Christian Benner
Samuli Olli Ripatti / Principal Investigator
Complex Disease Genetics
Institute for Molecular Medicine Finland
Statistical and population genetics
Genomics of Neurological and Neuropsychiatric Disorders
Centre of Excellence in Complex Disease Genetics
Aarno Palotie / Principal Investigator
Research Programs Unit
Helsinki Institute of Life Science HiLIFE
Department of Mathematics and Statistics
Helsinki Institute for Information Technology
Biostatistics Helsinki
Department of Public Health
University Management
Doctoral Programme in Social Sciences
HUS Helsinki and Uusimaa Hospital District
Source :
Eur J Hum Genet
Publication Year :
2019

Abstract

Multivariate methods are known to increase the statistical power to detect associations in the case of shared genetic basis between phenotypes. They have, however, lacked essential analytic tools to follow-up and understand the biology underlying these associations. We developed a novel computational workflow for multivariate GWAS follow-up analyses, including fine-mapping and identification of the subset of traits driving associations (driver traits). Many follow-up tools require univariate regression coefficients which are lacking from multivariate results. Our method overcomes this problem by using Canonical Correlation Analysis to turn each multivariate association into its optimal univariate Linear Combination Phenotype (LCP). This enables an LCP-GWAS, which in turn generates the statistics required for follow-up analyses. We implemented our method on 12 highly correlated inflammatory biomarkers in a Finnish population-based study. Altogether, we identified 11 associations, four of which (F5, ABO, C1orf140 and PDGFRB) were not detected by biomarker-specific analyses. Fine-mapping identified 19 signals within the 11 loci and driver trait analysis determined the traits contributing to the associations. A phenome-wide association study on the 19 representative variants from the signals in 176,899 individuals from the FinnGen study revealed 53 disease associations (p

Details

ISSN :
14765438
Volume :
29
Issue :
2
Database :
OpenAIRE
Journal :
European journal of human genetics : EJHG
Accession number :
edsair.doi.dedup.....7238326ed493e522dab23883598d01aa