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GWAS Study

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

Ruotsalainen SE, Partanen JJ, Cichonska A et al.

33110245 PubMed ID
GWAS Study Type
6890 Participants
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Chapter I

Publication Details

Comprehensive information about this research publication

Authors

RS
Ruotsalainen SE
PJ
Partanen JJ
CA
Cichonska A
LJ
Lin J
BC
Benner C
SI
Surakka I
RM
Reeve MP
PP
Palta P
SM
Salmi M
JS
Jalkanen S
AA
Ahola-Olli A
PA
Palotie A
SV
Salomaa V
DM
Daly MJ
PM
Pirinen M
RS
Ripatti S
KJ
Koskela J
Chapter II

Abstract

Summary of the research findings

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 < 1 × 10-4). Several reported pQTLs in the 11 loci provided orthogonal evidence for the biologically relevant functions of the representative variants. Our novel multivariate analysis workflow provides a powerful addition to standard univariate GWAS analyses by enabling multivariate GWAS follow-up and thus promoting the advancement of powerful multivariate methods in genomics.

6,890 Finnish ancestry individuals

Chapter III

Study Statistics

Key metrics and study information

6890
Total Participants
GWAS
Study Type
No
Replicated
European
Ancestry
Finland
Recruitment Country
Chapter IV

Analysis

Comprehensive review of health and genetic findings

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