Transcriptomics

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Single-cell Transcriptomics Identifies Transcriptional Networks Driving Differentiation and Tumorigenesis in the Human Fallopian Tube


ABSTRACT: The human fallopian tube harbors the cell-of-origin for the majority of high-grade serous “ovarian” cancers (HGSCs), but its cellular composition, particularly of the epithelial component, is poorly characterized. We subjected 12 fallopian specimens from 8 patients to single-cell transcriptomic profiling, analyzing around 53,000 individual cells to map the major immune, fibroblastic and epithelial cell types present in this organ. We identified 10 epithelial sub-populations, characterized by diverse transcriptional programs including SOX17 (enriched in secretory epithelial cells), TTF3 and RFX3 (enriched in ciliated cells) and NR2F2 (enriched in early, partially differentiated secretory cells). Based on transcriptional signatures, we reconstructed a trajectory whereby secretory cells differentiate into ciliated cells via a RUNX3high intermediate. Computational deconvolution of the cellular composition of advanced HGSCs based on epithelial subset signatures identified the ‘early secretory’ population as a likely precursor state for the majority of HGSCs. The signature of this rare population of cells comprised both epithelial (EPCAM, KRT) and mesenchymal (THY1, ACTA2) features, and was enriched in mesenchymal-type HGSCs (P = 6.7 x 10e-27), a group known to have particularly poor prognoses. This cellular and molecular compendium of the human fallopian tube in cancer-free women is expected to advance our understanding of the earliest stages of fallopian epithelial neoplasia.

ORGANISM(S): Homo sapiens

PROVIDER: GSE151214 | GEO | 2021/04/19

REPOSITORIES: GEO

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