Functional inference of gene regulation using single-cell multi-omics

Vinay K. Kartha(Broad Institute), Fabiana M. Duarte(Broad Institute), Yan Hu(Broad Institute), Sai Ma(Broad Institute), Jennifer Chew(Bio-Rad (United States)), Caleb A. Lareau(Stanford University), Andrew Earl(Broad Institute), Zach D. Burkett(Bio-Rad (United States)), Andrew Kohlway(Bio-Rad (United States)), Ronald Lebofsky(Bio-Rad (United States)), Jason D. Buenrostro(Broad Institute)
Cell Genomics
August 4, 2022
Cited by 232Open Access
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Abstract

Cells require coordinated control over gene expression when responding to environmental stimuli. Here we apply scATAC-seq and single-cell RNA sequencing (scRNA-seq) in resting and stimulated human blood cells. Collectively, we generate ~91,000 single-cell profiles, allowing us to probe the cis-regulatory landscape of the immunological response across cell types, stimuli, and time. Advancing tools to integrate multi-omics data, we develop functional inference of gene regulation (FigR), a framework to computationally pair scA-TAC-seq with scRNA-seq cells, connect distal cis-regulatory elements to genes, and infer gene-regulatory networks (GRNs) to identify candidate transcription factor (TF) regulators. Utilizing these paired multi-omics data, we define domains of regulatory chromatin (DORCs) of immune stimulation and find that cells alter chromatin accessibility and gene expression at timescales of minutes. Construction of the stimulation GRN elucidates TF activity at disease-associated DORCs. Overall, FigR enables elucidation of regulatory interactions across single-cell data, providing new opportunities to understand the function of cells within tissues.


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