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Genome-wide discovery for biomarkers using quantile regression at biobank scale

Wang, Chen ; Wang, Tianying ; Kiryluk, Krzysztof ; Wei, Ying ; Aschard, Hugues and Ionita-Laza, Iuliana LU (2024) In Nature Communications 15(1).
Abstract

Genome-wide association studies (GWAS) for biomarkers important for clinical phenotypes can lead to clinically relevant discoveries. Conventional GWAS for quantitative traits are based on simplified regression models modeling the conditional mean of a phenotype as a linear function of genotype. We draw attention here to an alternative, lesser known approach, namely quantile regression that naturally extends linear regression to the analysis of the entire conditional distribution of a phenotype of interest. Quantile regression can be applied efficiently at biobank scale, while having some unique advantages such as (1) identifying variants with heterogeneous effects across quantiles of the phenotype distribution; (2) accommodating a wide... (More)

Genome-wide association studies (GWAS) for biomarkers important for clinical phenotypes can lead to clinically relevant discoveries. Conventional GWAS for quantitative traits are based on simplified regression models modeling the conditional mean of a phenotype as a linear function of genotype. We draw attention here to an alternative, lesser known approach, namely quantile regression that naturally extends linear regression to the analysis of the entire conditional distribution of a phenotype of interest. Quantile regression can be applied efficiently at biobank scale, while having some unique advantages such as (1) identifying variants with heterogeneous effects across quantiles of the phenotype distribution; (2) accommodating a wide range of phenotype distributions including non-normal distributions, with invariance of results to trait transformations; and (3) providing more detailed information about genotype-phenotype associations even for those associations identified by conventional GWAS. We show in simulations that quantile regression is powerful across both homogeneous and various heterogeneous models. Applications to 39 quantitative traits in the UK Biobank demonstrate that quantile regression can be a helpful complement to linear regression in GWAS and can identify variants with larger effects on high-risk subgroups of individuals but with lower or no contribution overall.

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author
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organization
publishing date
type
Contribution to journal
publication status
published
subject
in
Nature Communications
volume
15
issue
1
article number
6460
publisher
Nature Publishing Group
external identifiers
  • scopus:85200278793
  • pmid:39085219
ISSN
2041-1723
DOI
10.1038/s41467-024-50726-x
language
English
LU publication?
yes
id
827bccae-46c0-4913-862c-fc99b2166acc
date added to LUP
2024-09-23 13:41:08
date last changed
2024-09-24 03:00:02
@article{827bccae-46c0-4913-862c-fc99b2166acc,
  abstract     = {{<p>Genome-wide association studies (GWAS) for biomarkers important for clinical phenotypes can lead to clinically relevant discoveries. Conventional GWAS for quantitative traits are based on simplified regression models modeling the conditional mean of a phenotype as a linear function of genotype. We draw attention here to an alternative, lesser known approach, namely quantile regression that naturally extends linear regression to the analysis of the entire conditional distribution of a phenotype of interest. Quantile regression can be applied efficiently at biobank scale, while having some unique advantages such as (1) identifying variants with heterogeneous effects across quantiles of the phenotype distribution; (2) accommodating a wide range of phenotype distributions including non-normal distributions, with invariance of results to trait transformations; and (3) providing more detailed information about genotype-phenotype associations even for those associations identified by conventional GWAS. We show in simulations that quantile regression is powerful across both homogeneous and various heterogeneous models. Applications to 39 quantitative traits in the UK Biobank demonstrate that quantile regression can be a helpful complement to linear regression in GWAS and can identify variants with larger effects on high-risk subgroups of individuals but with lower or no contribution overall.</p>}},
  author       = {{Wang, Chen and Wang, Tianying and Kiryluk, Krzysztof and Wei, Ying and Aschard, Hugues and Ionita-Laza, Iuliana}},
  issn         = {{2041-1723}},
  language     = {{eng}},
  number       = {{1}},
  publisher    = {{Nature Publishing Group}},
  series       = {{Nature Communications}},
  title        = {{Genome-wide discovery for biomarkers using quantile regression at biobank scale}},
  url          = {{http://dx.doi.org/10.1038/s41467-024-50726-x}},
  doi          = {{10.1038/s41467-024-50726-x}},
  volume       = {{15}},
  year         = {{2024}},
}