Authors
H Atakan Ekiz, Christopher J Conley, W Zac Stephens, Ryan M O’Connell
Publication date
2020/12
Journal
BMC bioinformatics
Volume
21
Issue
1
Pages
1-15
Publisher
BioMed Central
Description
Background
Single cell RNA sequencing (scRNAseq) has provided invaluable insights into cellular heterogeneity and functional states in health and disease. During the analysis of scRNAseq data, annotating the biological identity of cell clusters is an important step before downstream analyses and it remains technically challenging. The current solutions for annotating single cell clusters generally lack a graphical user interface, can be computationally intensive or have a limited scope. On the other hand, manually annotating single cell clusters by examining the expression of marker genes can be subjective and labor-intensive. To improve the quality and efficiency of annotating cell clusters in scRNAseq data, we present a web-based R/Shiny app and R package, Cluster Identity PRedictor (CIPR), which provides a graphical user interface to quickly score gene expression profiles of …
Total citations
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