4.7 Article

rPanglaoDB: an R package to download and merge labeled single-cell RNA-seq data from the PanglaoDB database

Journal

BIOINFORMATICS
Volume 38, Issue 2, Pages 580-582

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/bioinformatics/btab549

Keywords

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Funding

  1. European Union [801133]
  2. Norwegian Research Council
  3. Helse Sor-Ost
  4. University of Oslo through the Centre for Molecular Medicine Norway (NCMM) [187615]
  5. Marie Curie Actions (MSCA) [801133] Funding Source: Marie Curie Actions (MSCA)

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This study introduces rPanglaoDB, an R package for downloading and merging uniformly processed scRNA-seq data to collect rare cell types by integrating multiple public datasets. By characterizing a set of 157 fibrocytes, the study demonstrates the potential and utility of rPanglaoDB in enabling the collection of rare cell types for transcriptomic profiling.
Motivation: Characterizing cells with rare molecular phenotypes is one of the promises of high throughput single-cell RNA sequencing (scRNA-seq) techniques. However, collecting enough cells with the desired molecular phenotype in a single experiment is challenging, requiring several samples preprocessing steps to filter and collect the desired cells experimentally before sequencing. Data integration of multiple public single-cell experiments stands as a solution for this problem, allowing the collection of enough cells exhibiting the desired molecular signatures. By increasing the sample size of the desired cell type, this approach enables a robust cell type transcriptome characterization. Results: Here, we introduce rPanglaoDB, an R package to download and merge the uniformly processed and annotated scRNA-seq data provided by the PanglaoDB database. To show the potential of rPanglaoDB for collecting rare cell types by integrating multiple public datasets, we present a biological application collecting and characterizing a set of 157 fibrocytes. Fibrocytes are a rare monocyte-derived cell type, that exhibits both the inflammatory features of macrophages and the tissue remodeling properties of fibroblasts. This constitutes the first fibrocytes' unbiased transcriptome profile report. We compared the transcriptomic profile of the fibrocytes against the fibroblasts collected from the same tissue samples and confirm their associated relationship with healing processes in tissue damage and infection through the activation of the prostaglandin biosynthesis and regulation pathway.

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