| Literature DB >> 36175791 |
Karthik A Jagadeesh1,2, Kushal K Dey3,4, Daniel T Montoro5, Rahul Mohan5, Steven Gazal6, Jesse M Engreitz5,7,8, Ramnik J Xavier5, Alkes L Price9,10,11, Aviv Regev12,13,14.
Abstract
Genome-wide association studies provide a powerful means of identifying loci and genes contributing to disease, but in many cases, the related cell types/states through which genes confer disease risk remain unknown. Deciphering such relationships is important for identifying pathogenic processes and developing therapeutics. In the present study, we introduce sc-linker, a framework for integrating single-cell RNA-sequencing, epigenomic SNP-to-gene maps and genome-wide association study summary statistics to infer the underlying cell types and processes by which genetic variants influence disease. The inferred disease enrichments recapitulated known biology and highlighted notable cell-disease relationships, including γ-aminobutyric acid-ergic neurons in major depressive disorder, a disease-dependent M-cell program in ulcerative colitis and a disease-specific complement cascade process in multiple sclerosis. In autoimmune disease, both healthy and disease-dependent immune cell-type programs were associated, whereas only disease-dependent epithelial cell programs were prominent, suggesting a role in disease response rather than initiation. Our framework provides a powerful approach for identifying the cell types and cellular processes by which genetic variants influence disease.Entities:
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Year: 2022 PMID: 36175791 DOI: 10.1038/s41588-022-01187-9
Source DB: PubMed Journal: Nat Genet ISSN: 1061-4036 Impact factor: 41.307