| Literature DB >> 29230913 |
M Joseph Phillips1,2, Peng Jiang3, Sara Howden4, Patrick Barney1, Jee Min1, Nathaniel W York5, Li-Fang Chu3, Elizabeth E Capowski1, Abigail Cash1, Shivani Jain1, Katherine Barlow1, Tasnia Tabassum1, Ron Stewart3, Bikash R Pattnaik2,5,6, James A Thomson3, David M Gamm1,2,6.
Abstract
Cell type-specific investigations commonly use gene reporters or single-cell analytical techniques. However, reporter line development is arduous and generally limited to a single gene of interest, while single-cell RNA (scRNA)-sequencing (seq) frequently yields equivocal results that preclude definitive cell identification. To examine gene expression profiles of multiple retinal cell types derived from human pluripotent stem cells (hPSCs), we performed scRNA-seq on optic vesicle (OV)-like structures cultured under cGMP-compatible conditions. However, efforts to apply traditional scRNA-seq analytical methods based on unbiased algorithms were unrevealing. Therefore, we developed a simple, versatile, and universally applicable approach that generates gene expression data akin to those obtained from reporter lines. This method ranks single cells by expression level of a bait gene and searches the transcriptome for genes whose cell-to-cell rank order expression most closely matches that of the bait. Moreover, multiple bait genes can be combined to refine datasets. Using this approach, we provide further evidence for the authenticity of hPSC-derived retinal cell types. Stem Cells 2018;36:313-324.Entities:
Keywords: Gene expression profiling; High-throughput RNA sequencing; Pluripotent stem cells; Retina
Mesh:
Year: 2017 PMID: 29230913 PMCID: PMC5823737 DOI: 10.1002/stem.2755
Source DB: PubMed Journal: Stem Cells ISSN: 1066-5099 Impact factor: 6.277