Highly scalable generation of DNA methylation profiles in single cells.
Ryan M MulqueenDmitry PokholokSteven J NorbergKristof A TorkenczyAndrew J FieldsDuanchen SunJohn R SinnamonJay ShendureCole TrapnellBrian J O'RoakZheng XiaFrank J SteemersAndrew C AdeyPublished in: Nature biotechnology (2018)
We present a highly scalable assay for whole-genome methylation profiling of single cells. We use our approach, single-cell combinatorial indexing for methylation analysis (sci-MET), to produce 3,282 single-cell bisulfite sequencing libraries and achieve read alignment rates of 68 ± 8%. We apply sci-MET to discriminate the cellular identity of a mixture of three human cell lines and to identify excitatory and inhibitory neuronal populations from mouse cortical tissue.