» Articles » PMID: 36321965

Effect of All-but-one Conditional Analysis for EQTL Isolation in Peripheral Blood

Overview
Journal Genetics
Specialty Genetics
Date 2022 Nov 2
PMID 36321965
Authors
Affiliations
Soon will be listed here.
Abstract

Expression quantitative trait locus detection has become increasingly important for understanding how noncoding variants contribute to disease susceptibility and complex traits. The major challenges in expression quantitative trait locus fine-mapping and causal variant discovery relate to the impact of linkage disequilibrium on signals due to one or multiple functional variants that lie within a credible set. We perform expression quantitative trait locus fine-mapping using the all-but-one approach, conditioning each signal on all others detected in an interval, on the Consortium for the Architecture of Gene Expression cohorts of microarray-based peripheral blood gene expression in 2,138 European-ancestry human adults. We contrast these results with traditional forward stepwise conditional analysis and a Bayesian localization method. All-but-one conditioning significantly modifies effect-size estimates for 51% of 2,351 expression quantitative trait locus peaks, but only modestly affects credible set size and location. On the other hand, both conditioning approaches result in unexpectedly low overlap with Bayesian credible sets, with just 57% peak concordance and between 50% and 70% SNP sharing, leading us to caution against the assumption that any one localization method is superior to another. We also cross reference our results with ATAC-seq data, cell-type-specific expression quantitative trait locus, and activity-by-contact-enhancers, leading to the proposal of a 5-tier approach to further reduce credible set sizes and prioritize likely causal variants for all known inflammatory bowel disease risk loci active in immune cells.

Citing Articles

Haplotype rather than single causal variants effects contribute to regulatory gene expression associations in human myeloid cells.

Greenwood E, Cao M, Lee C, Liu A, Moyo B, Bao G bioRxiv. 2025; .

PMID: 39975189 PMC: 11838257. DOI: 10.1101/2025.01.30.635675.


Adipose tissue eQTL meta-analysis highlights the contribution of allelic heterogeneity to gene expression regulation and cardiometabolic traits.

Brotman S, El-Sayed Moustafa J, Guan L, Broadaway K, Wang D, Jackson A Nat Genet. 2025; 57(1):180-192.

PMID: 39747594 DOI: 10.1038/s41588-024-01982-6.


Gene expression and splicing QTL analysis of blood cells in African American participants from the Jackson Heart Study.

Wen J, Sun Q, Huang L, Zhou L, Doyle M, Ekunwe L Genetics. 2024; 228(1).

PMID: 39056362 PMC: 11373511. DOI: 10.1093/genetics/iyae098.


Concordant B and T Cell Heterogeneity Inferred from the Multiomic Landscape of Peripheral Blood Mononuclear Cells in a Crohn's Disease Cohort.

Brown M, Dodd A, Shi F, Greenwood E, Nagpal S, Kolachala V J Crohns Colitis. 2024; .

PMID: 38613150 PMC: 11637485. DOI: 10.1093/ecco-jcc/jjae055.


Adipose tissue eQTL meta-analysis reveals the contribution of allelic heterogeneity to gene expression regulation and cardiometabolic traits.

Brotman S, El-Sayed Moustafa J, Guan L, Broadaway K, Wang D, Jackson A bioRxiv. 2023; .

PMID: 37961277 PMC: 10634839. DOI: 10.1101/2023.10.26.563798.

References
1.
Kichaev G, Pasaniuc B . Leveraging Functional-Annotation Data in Trans-ethnic Fine-Mapping Studies. Am J Hum Genet. 2015; 97(2):260-71. PMC: 4573268. DOI: 10.1016/j.ajhg.2015.06.007. View

2.
Chen W, McDonnell S, Thibodeau S, Tillmans L, Schaid D . Incorporating Functional Annotations for Fine-Mapping Causal Variants in a Bayesian Framework Using Summary Statistics. Genetics. 2016; 204(3):933-958. PMC: 5105870. DOI: 10.1534/genetics.116.188953. View

3.
Kassam I, Lloyd-Jones L, Holloway A, Small K, Zeng B, Bakshi A . Autosomal genetic control of human gene expression does not differ across the sexes. Genome Biol. 2016; 17(1):248. PMC: 5134098. DOI: 10.1186/s13059-016-1111-0. View

4.
Schaid D, Chen W, Larson N . From genome-wide associations to candidate causal variants by statistical fine-mapping. Nat Rev Genet. 2018; 19(8):491-504. PMC: 6050137. DOI: 10.1038/s41576-018-0016-z. View

5.
Hormozdiari F, Kostem E, Kang E, Pasaniuc B, Eskin E . Identifying causal variants at loci with multiple signals of association. Genetics. 2014; 198(2):497-508. PMC: 4196608. DOI: 10.1534/genetics.114.167908. View