Published January 26, 2024 | Version v1
Journal article Open

Adjusting for genetic confounders in transcriptome-wide association studies improves discovery of risk genes of complex traits

Description

Many methods have been developed to leverage expression quantitative trait loci (eQTL) data to nominate candidate genes from genome-wide association studies. These methods, including colocalization, transcriptome-wide association studies (TWAS) and Mendelian randomization-based methods; however, all suffer from a key problem—when assessing the role of a gene in a trait using its eQTLs, nearby variants and genetic components of other genes' expression may be correlated with these eQTLs and have direct effects on the trait, acting as potential confounders. Our extensive simulations showed that existing methods fail to account for these 'genetic confounders', resulting in severe inflation of false positives. Our new method, causal-TWAS (cTWAS), borrows ideas from statistical fine-mapping and allows us to adjust all genetic confounders. cTWAS showed calibrated false discovery rates in simulations, and its application on several common traits discovered new candidate genes. In conclusion, cTWAS provides a robust statistical framework for gene discovery.

Data availability

Genotype data from UK Biobank are available through the UK Biobank data access process (http://www.ukbiobank.ac.uk/register-apply/). GTEx v7 Adipose tissue dataset gene prediction models (http://gusevlab.org/projects/fusion/). Publicly available summary statistics for LDL, SBP and IBD were obtained from the IEU OpenGWAS project (https://gwas.mrcieu.ac.uk/) using GWAS IDs 'ukb-d-30780_irnt' (LDL), 'ukb-a-360' (SBP) and 'ebi-a-GCST004131' (IBD). Publicly available summary statistics for SCZ from the Psychiatric Genetics Consortium and the CardiffCOGS study were obtained from http://walters.psycm.cf.ac.uk/. Publicly available prediction models for 49 GTEx tissues from PredictDB (https://predictdb.org/post/2021/07/21/gtex-v8-models-on-eqtl-and-sqtl/).

Our software is available at https://xinhe-lab.github.io/ctwas/. Code related to analyses performed in this study can be accessed at https://github.com/xinhe-lab/ctwas-paper and https://zenodo.org/doi/10.5281/zenodo.10373122.

Files

Adjusting-for-genetic-confounders-in-transcriptome-wide-association-studies.pdf

Files (96.6 MB)

Name Size Download all
md5:24eb22aee70d2eafa231f475df2f6dbf
75.8 MB Preview Download
Article
md5:5905dad5a3161fd59211c05dd185636a
3.9 MB Preview Download
md5:49a6a75d093fa901c1b0e5671f951571
16.9 MB Preview Download

Additional details

Identifiers

DOI
10.1038/s41588-023-01648-9
Other
oai:uchicago.tind.io:10833

Funding

National Institutes of Health
R01MH110531
National Institutes of Health
R01HG010773
National Institutes of Health
R01HG002585
National Institutes of Health
P20GM130454

UChicago Information

Division(s)
Biological Sciences Division, Physical Sciences Division
Department(s)
Human Genetics, Statistics