Skip to content

Latest commit

 

History

History
26 lines (22 loc) · 1.17 KB

README.md

File metadata and controls

26 lines (22 loc) · 1.17 KB

scRNAseqData

We have dowload 13 single cell RNA sequence (scRNA-seq) datasets from Gene Expression Omnibus (GEO), including blood, nerve, pancrease and so on. All the datasets are collected from the normal, rathre than patients.

data process

The code (data_process.R) is the procedure for us to process the datasets.

data summary

Data Tissue cell type
GSE67835 nerve 9
GSE70580 tonsil 4
GSE73721 nerve 5
GSE74310 blood 2
GSE76381 nerve 27
GSE81252 liver 15
GSE81608 pancreas 8
GSE83139 pancreas 8
GSE84133 pancreas 14
GSE89232 blood 3
GSE94820 blood 28
GSE102956 nerve 4
GSE113197 breast 2

differentially expressed gene from five methods

Identification of cell-subpopulation specific expression levels is the first step for integrative analysis. Intuitively, if a gene is expressed specifically in a cell-subpopulation, then the gene will likely have higher effects or causal probability for the GWAS trait. Here, we select five different methods, including zingeR, edgeR, MAST, t-statistics and high expression (DE_gene_func.R and de_gene.R).