Dimension Reduction scClusters UMAPs
Users can view and compare side-by-side UMAPs' representing identified scATAC-seq clusters, origin of sample, and integrated scRNA-seq clusters.
Browser view of Peak2GeneLinks
User can visualize genome accessibility tracks of marker genes with peak-to-gene links
Feature of interest : Dimensionality Reduction UMAPs
Users can view and compare side-by-side UMAPs representing features of interest in GeneScoreMatrix, GeneIntegrationMatrix or MotifMatrix with a representative sequence logo. Download list of Motif Positions.

Genome-wide association studies (GWAS) of hair and skin disease have identified many genetic variants associated with disease phenotypes, but identifying causal variants and interpreting their function requires deciphering gene-regulatory networks in disease-relevant cell types. To this end, we generated matched scRNA- and scATAC-seq profiles of human scalp biopsies, identifying diverse cell types of the hair follicle niche. By interrogating the integrated datasets across multiple levels of cellular resolution, we infer 50-100% more enhancer-gene links than prior approaches, and show that the aggregate accessibility at linked enhancers for highly-regulated genes predicts expression. We use these gene-regulatory maps to prioritize cell types, genes, and causal variants implicated in the pathobiology of androgenetic alopecia (AGA), eczema, and other complex traits. AGA GWAS signals are strongly and specifically enriched in dermal papilla cell open chromatin regions, supporting the role of these cells as key drivers of AGA pathogenesis. Finally, we trained machine-learning models to nominate SNPs that affect gene expression through disruption of specific transcription factor binding motifs, predicting candidate functional SNPs linked to expression of WNT10A in AGA and IL18RAP in eczema. Together, this work reveals principles of gene regulation and identifies gene regulatory consequences of natural genetic variation in complex skin and hair diseases.

Data Visualization:
  • scATAC-seq clusters, scRNA-seq cluster labels from integrated data, Sample of origin, and other quality control metrics.
  • scATAC-seq GeneActivityScores, integrated RNA expression GeneIntegrationMatrix, ChromVar motif deviations.
  • Peaks2Genelinks tracks of single-cell RNA sequencing (scRNA-seq) integrated data with scATAC-seq using plot browser tracks

Contributions and Citation info

This app was adapted from ShinyArchR.UiO. The ShinyArchR.UiO software is developed at Chromatin Biology Lab at University of Oslo, as an open-source project mainly under the GPL license version 3 (see source code for details).