Epithelial Cell

Download processed single-cell RNA-seq data for epithelial cells

Dataset Information

Cell Type

Epithelial Cells

Total Cells

254,098 cells

Sample Count

428 samples

Subpopulation Count

33 subpopulations

Download Resources

Raw Data Files

Complete single-cell RNA sequencing data in standard 10X Genomics format

10X Raw Data Package

File: Epithelial_10x_raw_package.zip

Format: ZIP

Description: Contains barcodes/features/matrix/metadata in standard 10X format

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Barcode File

File: Epithelial_barcodes.tsv.gz

Format: TSV.GZ

Description: Contains cell barcode information for each cell in the dataset.

Feature File

File: Epithelial_features.tsv.gz

Format: TSV.GZ

Description: Gene features and annotations including gene symbols and IDs.

Matrix File

File: Epithelial_matrix.mtx.gz

Format: MTX.GZ

Description: Sparse expression matrix containing gene expression counts.

Metadata File

File: Epithelial_metadata.csv.gz

Format: CSV.GZ

Description: Cell-level metadata including annotations and sample information.

Marker Genes

Marker and published genesets are uploaded in Zenodo:scHNDB-Cell Type-Marker GenesDOI 10.5281/zenodo.19535753)。

All markers (each subpopulation)

File: Epithelial_cell_all_Markers_of_each_subpopulation.xls

Description: All marker of each subpopulation

Download (China Mirror OSS)

Top10 markers (each subpopulation)

File: Epithelial_cell_top10_Markers_of_each_subpopulation.xls

Description: Top10 marker of each subpopulation

Download (China Mirror OSS)

Published reference gene sets

File: Epithelial_cell_ref_geneset.zip

Description: Published gene sets (ZIP)

Download (China Mirror OSS)

Key Marker Genes for Epithelial Cells

  • Pan epithelial markers: EPCAM, KRT8, KRT18
  • Tumor epithelial cells: TP53, MYC, EGFR
  • Normal epithelial cells: KRT5, KRT14, KRT17
  • Basal epithelial cells: TP63, KRT5, KRT14
  • Luminal epithelial cells: KRT8, KRT18, KRT19

Usage Instructions

These files are compatible with standard single-cell analysis tools. To load the data:

In R (Seurat):

library(Seurat)
data <- Read10X(data.dir = "path/to/extracted/files")
seurat_obj <- CreateSeuratObject(counts = data)

In Python (Scanpy):

import scanpy as sc
adata = sc.read_10x_mtx('path/to/extracted/files')