Combinatorial transcription factor profiles predict mature and functional human islet α and β cells
Single cell RNAseq data of human pancreatic islets from 5 non-diabetic donors. Project abstract: Islet-enriched transcription factors (TFs) exert broad control over cellular processes in pancreatic α and β cells and changes in their expression are associated with developmental state and diabetes. However, the implications of heterogeneity in TF expression across islet cell populations are not well understood. To define this TF heterogeneity and its consequences for cellular function, we profiled >40,000 cells from normal human islets by scRNA-seq and stratified α and β cells based on combinatorial TF expression. Subpopulations of islet cells co-expressing ARX/MAFB (α cells) and MAFA/MAFB (β cells) exhibited greater expression of key genes related to glucose sensing and hormone secretion relative to subpopulations expressing only one or neither TF. Moreover, all subpopulations were identified in native pancreatic tissue from multiple donors. By Patch-seq, MAFA/MAFB co-expressing β cells showed enhanced electrophysiological activity. Thus, these results indicate combinatorial TF expression in islet α and β cells predicts highly functional, mature subpopulations.
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Atlas
Analysis Portals
NoneProject Label
scHumanPancreaticIsletsSpecies
Homo sapiens
Sample Type
specimens
Anatomical Entity
pancreas
Organ Part
islet of Langerhans
Selected Cell Types
Disease Status (Specimen)
normal
Disease Status (Donor)
normal
Development Stage
Library Construction Method
10x 3' v2
Nucleic Acid Source
single cell
Paired End
falseAnalysis Protocol
analysis_protocol_1File Format
Cell Count Estimate
45.0kDonor Count
5