Identification of genetic variants that impact gene co-expression relationships using large-scale single-cell data
Publication date
2023-12
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Abstract
Background: Expression quantitative trait loci (eQTL) studies show how genetic variants affect downstream gene expression. Single-cell data allows reconstruction of personalized co-expression networks and therefore the identification of SNPs altering co-expression patterns (co-expression QTLs, co-eQTLs) and the affected upstream regulatory processes using a limited number of individuals. Results: We conduct a co-eQTL meta-analysis across four scRNA-seq peripheral blood mononuclear cell datasets using a novel filtering strategy followed by a permutation-based multiple testing approach. Before the analysis, we evaluate the co-expression patterns required for co-eQTL identification using different external resources. We identify a robust set of cell-type-specific co-eQTLs for 72 independent SNPs affecting 946 gene pairs. These co-eQTLs are replicated in a large bulk cohort and provide novel insights into how disease-associated variants alter regulatory networks. One co-eQTL SNP, rs1131017, that is associated with several autoimmune diseases, affects the co-expression of RPS26 with other ribosomal genes. Interestingly, specifically in T cells, the SNP additionally affects co-expression of RPS26 and a group of genes associated with T cell activation and autoimmune disease. Among these genes, we identify enrichment for targets of five T-cell-activation-related transcription factors whose binding sites harbor rs1131017. This reveals a previously overlooked process and pinpoints potential regulators that could explain the association of rs1131017 with autoimmune diseases. Conclusion: Our co-eQTL results highlight the importance of studying context-specific gene regulation to understand the biological implications of genetic variation. With the expected growth of sc-eQTL datasets, our strategy and technical guidelines will facilitate future co-eQTL identification, further elucidating unknown disease mechanisms.
Keywords
Co-expression QTLs, eQTL, scRNA-seq, Ecology, Evolution, Behavior and Systematics, Genetics, Cell Biology
Citation
Li, S, Schmid, K T, de Vries, D H, Korshevniuk, M, Losert, C, Oelen, R, van Blokland, I V, Groot, H E, Swertz, M A, van der Harst, P, Westra, H J, van der Wijst, M G P, Heinig, M, Franke, L & BIOS Consortium, sc-eQTLgen Consortium 2023, 'Identification of genetic variants that impact gene co-expression relationships using large-scale single-cell data', Genome Biology, vol. 24, no. 1, 80. https://doi.org/10.1186/s13059-023-02897-x