SatuRn: Scalable analysis of differential transcript usage for bulk and single-cell RNA-sequencing applications

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  • Jeroen Gilis
  • Kristoffer Vitting-Seerup
  • Koen Van den Berge
  • Lieven Clement

Alternative splicing produces multiple functional transcripts from a single gene. Dysregulation of splicing is known to be associated with disease and as a hallmark of cancer. Existing tools for differential transcript usage (DTU) analysis either lack in performance, cannot account for complex experimental designs or do not scale to massive single-cell transcriptome sequencing (scRNA-seq) datasets. We introduce satuRn, a fast and flexible quasi-binomial generalized linear modelling framework that is on par with the best performing DTU methods from the bulk RNA-seq realm, while providing good false discovery rate control, addressing complex experimental designs, and scaling to scRNA-seq applications.

Original languageEnglish
Article number374
JournalF1000Research
Volume10
Number of pages43
ISSN2046-1402
DOIs
Publication statusPublished - 2022

Bibliographical note

Publisher Copyright:
© 2022 Gilis J et al.

    Research areas

  • Differential transcript usage, RNA-seq, SatuRn, Single-cell transcriptomics, Splicing, Statistical framework

ID: 343299032