| URL: | https://dice-database.org |
| Full name: | Database of Immune Cell Expression, Expression quantitative trait loci (eQTLs) and Epigenomics |
| Description: | Impact of Genetic Polymorphisms on Human Immune Cell Gene Expression |
| Year founded: | 2018 |
| Last update: | |
| Version: | |
| Accessibility: |
Accessible
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| Country/Region: | United States |
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| University/Institution: | La Jolla Institute for Allergy and Immunology |
| Address: | La Jolla Institute for Allergy and Immunology, La Jolla, CA 92037, USA |
| City: | La Jolla |
| Province/State: | |
| Country/Region: | United States |
| Contact name (PI/Team): | Pandurangan Vijayanand |
| Contact email (PI/Helpdesk): | vijay@lji.org |
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Single-cell eQTL analysis of activated T cell subsets reveals activation and cell type-dependent effects of disease-risk variants. [PMID: 35213211]
The impact of genetic variants on cells challenged in biologically relevant contexts has not been fully explored. Here, we activated CD4 T cells from 89 healthy donors and performed a single-cell RNA sequencing assay with >1 million cells to examine cell type-specific and activation-dependent effects of genetic variants. Single-cell expression quantitative trait loci (sc-eQTL) analysis of 19 distinct CD4 T cell subsets showed that the expression of over 4000 genes is significantly associated with common genetic polymorphisms and that most of these genes show their most prominent effects in specific cell types. These genes included many that encode for molecules important for activation, differentiation, and effector functions of T cells. We also found new gene associations for disease-risk variants identified from genome-wide association studies and highlighted the cell types in which their effects are most prominent. We found that biological sex has a major influence on activation-dependent gene expression in CD4 T cell subsets. Sex-biased transcripts were significantly enriched in several pathways that are essential for the initiation and execution of effector functions by CD4 T cells like TCR signaling, cytokines, cytokine receptors, costimulatory, apoptosis, and cell-cell adhesion pathways. Overall, this DICE (Database of Immune Cell Expression, eQTLs, and Epigenomics) subproject highlights the power of sc-eQTL studies for simultaneously exploring the activation and cell type-dependent effects of common genetic variants on gene expression (https://dice-database.org). |
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Impact of Genetic Polymorphisms on Human Immune Cell Gene Expression. [PMID: 30449622]
While many genetic variants have been associated with risk for human diseases, how these variants affect gene expression in various cell types remains largely unknown. To address this gap, the DICE (database of immune cell expression, expression quantitative trait loci [eQTLs], and epigenomics) project was established. Considering all human immune cell types and conditions studied, we identified cis-eQTLs for a total of 12,254 unique genes, which represent 61% of all protein-coding genes expressed in these cell types. Strikingly, a large fraction (41%) of these genes showed a strong cis-association with genotype only in a single cell type. We also found that biological sex is associated with major differences in immune cell gene expression in a highly cell-specific manner. These datasets will help reveal the effects of disease risk-associated genetic polymorphisms on specific immune cell types, providing mechanistic insights into how they might influence pathogenesis (https://dice-database.org). |