Litcius/Paper detail

EPISCORE: cell type deconvolution of bulk tissue DNA methylomes from single-cell RNA-Seq data

Andrew E. Teschendorff, Tianyu Zhu, Charles E. Breeze, Stephan Beck

2020Genome biology120 citationsDOIOpen Access PDF

Abstract

Cell type heterogeneity presents a challenge to the interpretation of epigenome data, compounded by the difficulty in generating reliable single-cell DNA methylomes for large numbers of cells and samples. We present EPISCORE, a computational algorithm that performs virtual microdissection of bulk tissue DNA methylation data at single cell-type resolution for any solid tissue. EPISCORE applies a probabilistic epigenetic model of gene regulation to a single-cell RNA-seq tissue atlas to generate a tissue-specific DNA methylation reference matrix, allowing quantification of cell-type proportions and cell-type-specific differential methylation signals in bulk tissue data. We validate EPISCORE in multiple epigenome studies and tissue types.

Topics & Concepts

BiologyDNA methylationEpigenomeCell typeEpigeneticsEpigenomicsComputational biologyCellGeneticsGeneGene expressionEpigenetics and DNA MethylationSingle-cell and spatial transcriptomicsCancer Genomics and Diagnostics