Single-cell RNA sequencing identifies celltype-specific cis-eQTLs and co-expression QTLs

Basic information
Cell
28,855
Sample
45

Technology
10X Genomics
Omics
scRNA-seq
Source
PBMCs

Dataset ID
29610479
Platform
Illumina HiSeq4000
Species
Human
Disease
NA
Age range
20 - 79
Update date
2018-04-02
Summary

Genome-wide association studies have identified thousands of genetic variants that are associated with disease 1 . Most of these variants have small effect sizes, but their downstream expression effects, so-called expression quantitative trait loci (eQTLs), are often large 2 and celltype-specific3-5. To identify these celltype-specific eQTLs using an unbiased approach, we used single-cell RNA sequencing to generate expression profiles of ~25,000 peripheral blood mononuclear cells from 45 donors. We identified previously reported cis-eQTLs, but also identified new celltype-specific cis-eQTLs. Finally, we generated personalized co-expression networks and identified genetic variants that significantly alter co-expression relationships (which we termed 'co-expression QTLs'). Single-cell eQTL analysis thus allows for the identification of genetic variants that impact regulatory networks.

Overall design

overall_design too long too uplode

Contributors

Harm Brugge†, Dylan H. de Vries†, Lude Franke✉️

Contact

To be supplemented.

snRNA-Seq
Sample nameSample titleDiseaseGenderAgeSourceTreatmentTechnologyPlatformOmicsSample IDDataset IDAction
No data available