Mapping disease regulatory circuits at cell-type resolution from single-cell multiomics data

Basic information
Cell
371,335
Sample
97

Technology
10X Genomics
Omics
scRNA-seq,scATAC-seq
Source
PBMCs

Dataset ID
37974651
Platform
NovaSeq 6000,NextSeq 2000
Species
Human
Disease
COVID-19,MRSA,MSSA
Age range
0 - 0
Update date
2023-07-25
Summary

Resolving chromatin-remodeling-linked gene expression changes at cell-type resolution is important for understanding disease states. Here we describe MAGICAL (Multiome Accessibility Gene Integration Calling and Looping), a hierarchical Bayesian approach that leverages paired single-cell RNA sequencing and single-cell transposase-accessible chromatin sequencing from different conditions to map disease-associated transcription factors, chromatin sites, and genes as regulatory circuits. By simultaneously modeling signal variation across cells and conditions in both omics data types, MAGICAL achieved high accuracy on circuit inference. We applied MAGICAL to study Staphylococcus aureus sepsis from peripheral blood mononuclear single-cell data that we generated from subjects with bloodstream infection and uninfected controls. MAGICAL identified sepsis-associated regulatory circuits predominantly in CD14 monocytes, known to be activated by bacterial sepsis. We addressed the challenging problem of distinguishing host regulatory circuit responses to methicillin-resistant and methicillin-susceptible S. aureus infections. Although differential expression analysis failed to show predictive value, MAGICAL identified epigenetic circuit biomarkers that distinguished methicillin-resistant from methicillin-susceptible S. aureus infections.

Overall design

scATAC sequencing of PBMCs from 10 samples with MRSAs, 11 samples with MSSAs and 23 healthy controls. scRNA sequencing of PBMCs from 10 samples with MRSAs, 11 samples with MSSAs and 23 healthy controls. scATAC sequencing of PBMCs from 6 samples with mild SARS-CoV-2 infection and 3 healthy controls

Contributors

To be supplemented.

Contact

To be supplemented.

snRNA-Seq
Sample nameSample titleDiseaseGenderAgeSourceTreatmentTechnologyPlatformOmicsSample IDDataset IDAction
No data available