Genome Biology (Feb 2020)

Robustness and applicability of transcription factor and pathway analysis tools on single-cell RNA-seq data

  • Christian H. Holland,
  • Jovan Tanevski,
  • Javier Perales-Patón,
  • Jan Gleixner,
  • Manu P. Kumar,
  • Elisabetta Mereu,
  • Brian A. Joughin,
  • Oliver Stegle,
  • Douglas A. Lauffenburger,
  • Holger Heyn,
  • Bence Szalai,
  • Julio Saez-Rodriguez

DOI
https://doi.org/10.1186/s13059-020-1949-z
Journal volume & issue
Vol. 21, no. 1
pp. 1 – 19

Abstract

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Abstract Background Many functional analysis tools have been developed to extract functional and mechanistic insight from bulk transcriptome data. With the advent of single-cell RNA sequencing (scRNA-seq), it is in principle possible to do such an analysis for single cells. However, scRNA-seq data has characteristics such as drop-out events and low library sizes. It is thus not clear if functional TF and pathway analysis tools established for bulk sequencing can be applied to scRNA-seq in a meaningful way. Results To address this question, we perform benchmark studies on simulated and real scRNA-seq data. We include the bulk-RNA tools PROGENy, GO enrichment, and DoRothEA that estimate pathway and transcription factor (TF) activities, respectively, and compare them against the tools SCENIC/AUCell and metaVIPER, designed for scRNA-seq. For the in silico study, we simulate single cells from TF/pathway perturbation bulk RNA-seq experiments. We complement the simulated data with real scRNA-seq data upon CRISPR-mediated knock-out. Our benchmarks on simulated and real data reveal comparable performance to the original bulk data. Additionally, we show that the TF and pathway activities preserve cell type-specific variability by analyzing a mixture sample sequenced with 13 scRNA-seq protocols. We also provide the benchmark data for further use by the community. Conclusions Our analyses suggest that bulk-based functional analysis tools that use manually curated footprint gene sets can be applied to scRNA-seq data, partially outperforming dedicated single-cell tools. Furthermore, we find that the performance of functional analysis tools is more sensitive to the gene sets than to the statistic used.

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