Transcriptomics

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CloneSeq: A Highly Sensitive Single-cell Analysis Platform for Comprehensive Characterization of Cells from 3D Culture


ABSTRACT: Single-cell assays have revealed the scope and importance of heterogeneity in many biological systems. However, low sensitivity makes it difficult to delineate biological variation from noise, and as a result, the capacity of such assays to identify cellular state differences that arise from genes expressed at low-to-mid abundance is highly limited. To overcome this limitation, we developed CloneSeq, a microfluidics-based technology for 3D-culturing and RNA sequencing (RNA-seq) of small clones. CloneSeq shows that unlike random cell groups, clonal cancer cells originating from a single cell share similar transcriptional profiles. CloneSeq also dramatically improves sensitivity compared to standard single-cell RNA-seq. CloneSeq analysis of non-small cell adenocarcinoma cells revealed the presence of novel cancer-specific subpopulations, including cancer stem-like cells (CSLCs). Based on expression signatures, we identify CSLCs in highly proliferative clones, suggesting that our 3D culturing system promotes stemness. Supporting this, ESCs grown within the 3D hydrogel spheres retained their pluripotent state in the absence of pluripotent media. Moreover, reprogramming efficiency of mouse embryonic fibroblasts within the 3D spheres was significantly improved relative to that of cells grown on gelatin-coated plates. Our results highlight CloneSeq as an extremely useful tool for capturing lowly-expressed genes within clones, and for identifying rare cell populations such as stem-like and cancer-initiating cells.

ORGANISM(S): Mus musculus Homo sapiens

PROVIDER: GSE155888 | GEO | 2021/04/12

REPOSITORIES: GEO

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