ADELLE: A global testing method for trans-eQTL mapping.

Understanding the genetic regulatory mechanisms of gene expression is an ongoing challenge. Genetic variants that are associated with expression levels are readily identified when they are proximal to the gene (i.e., cis-eQTLs), but SNPs distant from the gene whose expression levels they are associa...

Full description

Saved in:
Bibliographic Details
Main Authors: Takintayo Akinbiyi, Mary Sara McPeek, Mark Abney
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2025-01-01
Series:PLoS Genetics
Online Access:https://doi.org/10.1371/journal.pgen.1011563
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1832540357955420160
author Takintayo Akinbiyi
Mary Sara McPeek
Mark Abney
author_facet Takintayo Akinbiyi
Mary Sara McPeek
Mark Abney
author_sort Takintayo Akinbiyi
collection DOAJ
description Understanding the genetic regulatory mechanisms of gene expression is an ongoing challenge. Genetic variants that are associated with expression levels are readily identified when they are proximal to the gene (i.e., cis-eQTLs), but SNPs distant from the gene whose expression levels they are associated with (i.e., trans-eQTLs) have been much more difficult to discover, even though they account for a majority of the heritability in gene expression levels. A major impediment to the identification of more trans-eQTLs is the lack of statistical methods that are powerful enough to overcome the obstacles of small effect sizes and large multiple testing burden of trans-eQTL mapping. Here, we propose ADELLE, a powerful statistical testing framework that requires only summary statistics and is designed to be most sensitive to SNPs that are associated with multiple gene expression levels, a characteristic of many trans-eQTLs. In simulations, we show that for detecting SNPs that are associated with 0.1%-2% of 10,000 traits, among the 8 methods we consider ADELLE is clearly the most powerful overall, with either the highest power or power not significantly different from the highest for all settings in that range. We apply ADELLE to a mouse advanced intercross line data set and show its ability to find trans-eQTLs that were not significant under a standard analysis. We also apply ADELLE to trans-eQTL mapping in the eQTLGen data, and for 1,451 previously identified trans-eQTLs, we discover trans association with additional expression traits beyond those previously identified. This demonstrates that ADELLE is a powerful tool at uncovering trans regulators of genetic expression.
format Article
id doaj-art-e7be21bfbd9a418e9a4679dc6efa0184
institution Kabale University
issn 1553-7390
1553-7404
language English
publishDate 2025-01-01
publisher Public Library of Science (PLoS)
record_format Article
series PLoS Genetics
spelling doaj-art-e7be21bfbd9a418e9a4679dc6efa01842025-02-05T05:31:00ZengPublic Library of Science (PLoS)PLoS Genetics1553-73901553-74042025-01-01211e101156310.1371/journal.pgen.1011563ADELLE: A global testing method for trans-eQTL mapping.Takintayo AkinbiyiMary Sara McPeekMark AbneyUnderstanding the genetic regulatory mechanisms of gene expression is an ongoing challenge. Genetic variants that are associated with expression levels are readily identified when they are proximal to the gene (i.e., cis-eQTLs), but SNPs distant from the gene whose expression levels they are associated with (i.e., trans-eQTLs) have been much more difficult to discover, even though they account for a majority of the heritability in gene expression levels. A major impediment to the identification of more trans-eQTLs is the lack of statistical methods that are powerful enough to overcome the obstacles of small effect sizes and large multiple testing burden of trans-eQTL mapping. Here, we propose ADELLE, a powerful statistical testing framework that requires only summary statistics and is designed to be most sensitive to SNPs that are associated with multiple gene expression levels, a characteristic of many trans-eQTLs. In simulations, we show that for detecting SNPs that are associated with 0.1%-2% of 10,000 traits, among the 8 methods we consider ADELLE is clearly the most powerful overall, with either the highest power or power not significantly different from the highest for all settings in that range. We apply ADELLE to a mouse advanced intercross line data set and show its ability to find trans-eQTLs that were not significant under a standard analysis. We also apply ADELLE to trans-eQTL mapping in the eQTLGen data, and for 1,451 previously identified trans-eQTLs, we discover trans association with additional expression traits beyond those previously identified. This demonstrates that ADELLE is a powerful tool at uncovering trans regulators of genetic expression.https://doi.org/10.1371/journal.pgen.1011563
spellingShingle Takintayo Akinbiyi
Mary Sara McPeek
Mark Abney
ADELLE: A global testing method for trans-eQTL mapping.
PLoS Genetics
title ADELLE: A global testing method for trans-eQTL mapping.
title_full ADELLE: A global testing method for trans-eQTL mapping.
title_fullStr ADELLE: A global testing method for trans-eQTL mapping.
title_full_unstemmed ADELLE: A global testing method for trans-eQTL mapping.
title_short ADELLE: A global testing method for trans-eQTL mapping.
title_sort adelle a global testing method for trans eqtl mapping
url https://doi.org/10.1371/journal.pgen.1011563
work_keys_str_mv AT takintayoakinbiyi adelleaglobaltestingmethodfortranseqtlmapping
AT marysaramcpeek adelleaglobaltestingmethodfortranseqtlmapping
AT markabney adelleaglobaltestingmethodfortranseqtlmapping