Back to Search Start Over

Association Analysis and Meta-Analysis of Multi-Allelic Variants for Large-Scale Sequence Data.

Authors :
Jiang Y
Chen S
Wang X
Liu M
Iacono WG
Hewitt JK
Hokanson JE
Krauter K
Laakso M
Li KW
Lutz SM
McGue M
Pandit A
Zajac GJM
Boehnke M
Abecasis GR
Vrieze SI
Jiang B
Zhan X
Liu DJ
Source :
Genes [Genes (Basel)] 2020 May 25; Vol. 11 (5). Date of Electronic Publication: 2020 May 25.
Publication Year :
2020

Abstract

There is great interest in understanding the impact of rare variants in human diseases using large sequence datasets. In deep sequence datasets of >10,000 samples, ~10% of the variant sites are observed to be multi-allelic. Many of the multi-allelic variants have been shown to be functional and disease-relevant. Proper analysis of multi-allelic variants is critical to the success of a sequencing study, but existing methods do not properly handle multi-allelic variants and can produce highly misleading association results. We discuss practical issues and methods to encode multi-allelic sites, conduct single-variant and gene-level association analyses, and perform meta-analysis for multi-allelic variants. We evaluated these methods through extensive simulations and the study of a large meta-analysis of ~18,000 samples on the cigarettes-per-day phenotype. We showed that our joint modeling approach provided an unbiased estimate of genetic effects, greatly improved the power of single-variant association tests among methods that can properly estimate allele effects, and enhanced gene-level tests over existing approaches. Software packages implementing these methods are available online.

Details

Language :
English
ISSN :
2073-4425
Volume :
11
Issue :
5
Database :
MEDLINE
Journal :
Genes
Publication Type :
Academic Journal
Accession number :
32466134
Full Text :
https://doi.org/10.3390/genes11050586