Published September 28, 2022 | Version public
Journal Article

Multi-context genetic modeling of transcriptional regulation resolves novel disease loci

  • 1. ROR icon University of California, Los Angeles
  • 2. ROR icon University of California, San Francisco
  • 3. ROR icon Indian Institute of Technology Delhi
  • 4. ROR icon Harvard University
  • 5. ROR icon Dana-Farber Cancer Institute
  • 6. ROR icon Brigham and Women's Hospital
  • 7. ROR icon CZ Biohub

Abstract

AbstractA majority of the variants identified in genome-wide association studies fall in non-coding regions of the genome, indicating their mechanism of impact is mediated via gene expression. Leveraging this hypothesis, transcriptome-wide association studies (TWAS) have assisted in both the interpretation and discovery of additional genes associated with complex traits. However, existing methods for conducting TWAS do not take full advantage of the intra-individual correlation inherently present in multi-context expression studies and do not properly adjust for multiple testing across contexts. We introduce CONTENT—a computationally efficient method with proper cross-context false discovery correction that leverages correlation structure across contexts to improve power and generate context-specific and context-shared components of expression. We apply CONTENT to bulk multi-tissue and single-cell RNA-seq data sets and show that CONTENT leads to a 42% (bulk) and 110% (single cell) increase in the number of genetically predicted genes relative to previous approaches. We find the context-specific component of expression comprises 30% of heritability in tissue-level bulk data and 75% in single-cell data, consistent with cell-type heterogeneity in bulk tissue. In the context of TWAS, CONTENT increases the number of locus-phenotype associations discovered by over 51% relative to previous methods across 22 complex traits.

Additional Information

M.T. is supported in part by NIH Training Grant in Genomic Analysis and Interpretation T32HG002536. N.Z. was funded by NIH, CZI, and V.A. grants U01HG012079, U01MH126798, R01MH125252, 1R01HG011345, U01HG009080, CZF2019-002449, R01ES029929, R01HL155024, 1I01CX002011. B.B. received support from U01HG012079. This work was also funded by the National Science Foundation (Grant No. 1705197), and by NIH/NHGRI HG010505-02. C.J.Y. received funding from NIH grants P30AR070155, R01AR071522, U01HG012192, R21AI133337, and CZI P0535277. M.G.G. was supported by NIH grant 1F31HG011007. Human and organ icons in Fig. 1 were created by Biorender.com and further edited individually; the entire illustration was made using Microsoft Powerpoint.

Additional details

Identifiers

PMCID
PMC9519579
Eprint ID
117403
Resolver ID
CaltechAUTHORS:20221013-48885100.14

Funding

NIH Predoctoral Fellowship
T32HG002536
NIH
U01HG012079
NIH
U01MH126798
NIH
R01MH125252
NIH
1R01HG011345
NIH
U01HG009080
Chan-Zuckerberg Initiative
CZF2019-002449
NIH
R01ES029929
NIH
R01HL155024
Department of Veterans Affairs
1I01CX002011
NIH
U01HG012079
NSF
IIS-1705197
NIH
HG010505-02
NIH
P30AR070155
NIH
R01AR071522
NIH
U01HG012192
NIH
R21AI133337
Chan-Zuckerberg Initiative
CZI P0535277
NIH Postdoctoral Fellowship
1F31HG011007

Dates

Created
2022-10-18
Created from EPrint's datestamp field
Updated
2022-10-18
Created from EPrint's last_modified field