Single cell epigenomics
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Single cell epigenomics is the study of epigenomics (the complete set of epigenetic modifications on the genetic material of a cell) in individual cells by single cell sequencing.[2][1][3] Since 2013, methods have been created including whole-genome single-cell bisulfite sequencing to measure DNA methylation, whole-genome ChIP-sequencing to measure histone modifications, whole-genome ATAC-seq to measure chromatin accessibility and chromosome conformation capture.

Single cell DNA genome sequencing quantifies DNA methylation. This is similar to single cell genome sequencing, but with the addition of a bisulfite treatment before sequencing. Forms include whole genome bisulfite sequencing,[4][5] and reduced representation bisulfite sequencing[6][7]

Single-cell ATAC-seq

ATAC-seq stands for Assay for Transposase-Accessible Chromatin with high throughput sequencing.[9] It is a technique used in molecular biology to identify accessible DNA regions, equivalent to DNase I hypersensitive sites.[9] Single cell ATAC-seq has been performed since 2015, using methods ranging from FACS sorting, microfluidic isolation of single cells, to combinatorial indexing.[8] In initial studies, the method was able to reliably separate cells based on their cell types, uncover sources of cell-to-cell variability, and show a link between chromatin organization and cell-to-cell variation.[8]
Single-cell ChIP-seq
ChIP-sequencing, also known as ChIP-seq, is a method used to analyze protein interactions with DNA.[9] ChIP-seq combines chromatin immunoprecipitation (ChIP) with massively parallel DNA sequencing to identify the binding sites of DNA-associated proteins.[9] In epigenomics, this is often used to assess histone modifications (such as methylation).[9] ChIP-seq is also often used to determine transcription factor binding sites.[9]
Single-cell ChIP-seq is extremely challenging due to background noise caused by nonspecific antibody pull-down,[1] and only one study so far has performed it successfully. This study used a droplet-based microfluidics approach, and the low coverage required thousands of cells to be sequenced in order to assess cellular heterogeneity.[10][1]