Scientific Reports (Oct 2022)

Characterizing the composition of iPSC derived cells from bulk transcriptomics data with CellMap

  • Zhengyu Ouyang,
  • Nathanael Bourgeois-Tchir,
  • Eugenia Lyashenko,
  • Paige E. Cundiff,
  • Patrick F. Cullen,
  • Ravi Challa,
  • Kejie Li,
  • Xinmin Zhang,
  • Fergal Casey,
  • Sandra J. Engle,
  • Baohong Zhang,
  • Maria I. Zavodszky

DOI
https://doi.org/10.1038/s41598-022-22115-1
Journal volume & issue
Vol. 12, no. 1
pp. 1 – 14

Abstract

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Abstract Induced pluripotent stem cell (iPSC) derived cell types are increasingly employed as in vitro model systems for drug discovery. For these studies to be meaningful, it is important to understand the reproducibility of the iPSC-derived cultures and their similarity to equivalent endogenous cell types. Single-cell and single-nucleus RNA sequencing (RNA-seq) are useful to gain such understanding, but they are expensive and time consuming, while bulk RNA-seq data can be generated quicker and at lower cost. In silico cell type decomposition is an efficient, inexpensive, and convenient alternative that can leverage bulk RNA-seq to derive more fine-grained information about these cultures. We developed CellMap, a computational tool that derives cell type profiles from publicly available single-cell and single-nucleus datasets to infer cell types in bulk RNA-seq data from iPSC-derived cell lines.