Ancestry-specific association mapping in admixed populations

During the last decade genome-wide association studies have proven to be a powerful approach to identifying disease-causing variants. However, for admixed populations, most current methods for association testing are based on the assumption that the effect of a genetic variant is the same regardless...

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Published in:Genetic Epidemiology
Main Authors: Skotte, Line, Jørsboe, Emil, Korneliussen, Thorfinn S, Moltke, Ida, Albrechtsen, Anders
Format: Article in Journal/Newspaper
Language:English
Published: 2019
Subjects:
Online Access:https://researchprofiles.ku.dk/da/publications/0b70d0b8-7185-4732-a288-ef04f9b3c8f4
https://doi.org/10.1002/gepi.22200
https://www.biorxiv.org/content/10.1101/014001v4.full.pdf
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author Skotte, Line
Jørsboe, Emil
Korneliussen, Thorfinn S
Moltke, Ida
Albrechtsen, Anders
author_facet Skotte, Line
Jørsboe, Emil
Korneliussen, Thorfinn S
Moltke, Ida
Albrechtsen, Anders
author_sort Skotte, Line
collection University of Copenhagen: Research
container_issue 5
container_start_page 506
container_title Genetic Epidemiology
container_volume 43
description During the last decade genome-wide association studies have proven to be a powerful approach to identifying disease-causing variants. However, for admixed populations, most current methods for association testing are based on the assumption that the effect of a genetic variant is the same regardless of its ancestry. This is a reasonable assumption for a causal variant but may not hold for the genetic variants that are tested in genome-wide association studies, which are usually not causal. The effects of noncausal genetic variants depend on how strongly their presence correlate with the presence of the causal variant, which may vary between ancestral populations because of different linkage disequilibrium patterns and allele frequencies. Motivated by this, we here introduce a new statistical method for association testing in recently admixed populations, where the effect size is allowed to depend on the ancestry of a given allele. Our method does not rely on accurate inference of local ancestry, yet using simulations we show that in some scenarios it gives a substantial increase in statistical power to detect associations. In addition, the method allows for testing for difference in effect size between ancestral populations, which can be used to help determine if a given genetic variant is causal. We demonstrate the usefulness of the method on data from the Greenlandic population.
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op_source Skotte , L , Jørsboe , E , Korneliussen , T S , Moltke , I & Albrechtsen , A 2019 , ' Ancestry-specific association mapping in admixed populations ' , Genetic Epidemiology , vol. 43 , no. 5 , pp. 506-521 . https://doi.org/10.1002/gepi.22200
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spelling ftcopenhagenunip:oai:pure.atira.dk:publications/0b70d0b8-7185-4732-a288-ef04f9b3c8f4 2025-04-20T14:38:10+00:00 Ancestry-specific association mapping in admixed populations Skotte, Line Jørsboe, Emil Korneliussen, Thorfinn S Moltke, Ida Albrechtsen, Anders 2019 https://researchprofiles.ku.dk/da/publications/0b70d0b8-7185-4732-a288-ef04f9b3c8f4 https://doi.org/10.1002/gepi.22200 https://www.biorxiv.org/content/10.1101/014001v4.full.pdf eng eng info:eu-repo/semantics/closedAccess Skotte , L , Jørsboe , E , Korneliussen , T S , Moltke , I & Albrechtsen , A 2019 , ' Ancestry-specific association mapping in admixed populations ' , Genetic Epidemiology , vol. 43 , no. 5 , pp. 506-521 . https://doi.org/10.1002/gepi.22200 article 2019 ftcopenhagenunip https://doi.org/10.1002/gepi.22200 2025-04-09T16:42:35Z During the last decade genome-wide association studies have proven to be a powerful approach to identifying disease-causing variants. However, for admixed populations, most current methods for association testing are based on the assumption that the effect of a genetic variant is the same regardless of its ancestry. This is a reasonable assumption for a causal variant but may not hold for the genetic variants that are tested in genome-wide association studies, which are usually not causal. The effects of noncausal genetic variants depend on how strongly their presence correlate with the presence of the causal variant, which may vary between ancestral populations because of different linkage disequilibrium patterns and allele frequencies. Motivated by this, we here introduce a new statistical method for association testing in recently admixed populations, where the effect size is allowed to depend on the ancestry of a given allele. Our method does not rely on accurate inference of local ancestry, yet using simulations we show that in some scenarios it gives a substantial increase in statistical power to detect associations. In addition, the method allows for testing for difference in effect size between ancestral populations, which can be used to help determine if a given genetic variant is causal. We demonstrate the usefulness of the method on data from the Greenlandic population. Article in Journal/Newspaper greenlandic University of Copenhagen: Research Genetic Epidemiology 43 5 506 521
spellingShingle Skotte, Line
Jørsboe, Emil
Korneliussen, Thorfinn S
Moltke, Ida
Albrechtsen, Anders
Ancestry-specific association mapping in admixed populations
title Ancestry-specific association mapping in admixed populations
title_full Ancestry-specific association mapping in admixed populations
title_fullStr Ancestry-specific association mapping in admixed populations
title_full_unstemmed Ancestry-specific association mapping in admixed populations
title_short Ancestry-specific association mapping in admixed populations
title_sort ancestry-specific association mapping in admixed populations
url https://researchprofiles.ku.dk/da/publications/0b70d0b8-7185-4732-a288-ef04f9b3c8f4
https://doi.org/10.1002/gepi.22200
https://www.biorxiv.org/content/10.1101/014001v4.full.pdf