Publication | Open Access
EpiScanpy: integrated single-cell epigenomic analysis
30
Citations
30
References
2019
Year
Unknown Venue
EngineeringGeneticsDna MethylationMultiomicsTranscriptomics TechnologySingle-cell Dna MethylationSpatial OmicsEpigeneticsTrajectory AnalysisSingle Cell SequencingDimension ReductionSingle-cell GenomicsOmicsGene ExpressionEpigenetic RegulationFunctional GenomicsCell BiologySingle-cell AnalysisBioinformaticsSingle-cell BiologyComputational BiologySystems BiologyMedicineSingle-cell Epigenomic Analysis
ABSTRACT Epigenetic single-cell measurements reveal a layer of regulatory information not accessible to single-cell transcriptomics, however single-cell-omics analysis tools mainly focus on gene expression data. To address this issue, we present epiScanpy , a computational framework for the analysis of single-cell DNA methylation and single-cell ATAC-seq data. EpiScanpy makes the many existing RNA-seq workflows from scanpy available to large-scale single-cell data from other -omics modalities. We introduce and compare multiple feature space constructions for epigenetic data and show the feasibility of common clustering, dimension reduction and trajectory learning techniques. We benchmark epiScanpy by interrogating different single-cell brain mouse atlases of DNA methylation, ATAC-seq and transcriptomics. We find that differentially methylated and differentially open markers between cell clusters enrich transcriptome-based cell type labels by orthogonal epigenetic information.
| Year | Citations | |
|---|---|---|
Page 1
Page 1