PLoS Computational Biology (Aug 2023)

Curated single cell multimodal landmark datasets for R/Bioconductor.

  • Kelly B Eckenrode,
  • Dario Righelli,
  • Marcel Ramos,
  • Ricard Argelaguet,
  • Christophe Vanderaa,
  • Ludwig Geistlinger,
  • Aedin C Culhane,
  • Laurent Gatto,
  • Vincent Carey,
  • Martin Morgan,
  • Davide Risso,
  • Levi Waldron

DOI
https://doi.org/10.1371/journal.pcbi.1011324
Journal volume & issue
Vol. 19, no. 8
p. e1011324

Abstract

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BackgroundThe majority of high-throughput single-cell molecular profiling methods quantify RNA expression; however, recent multimodal profiling methods add simultaneous measurement of genomic, proteomic, epigenetic, and/or spatial information on the same cells. The development of new statistical and computational methods in Bioconductor for such data will be facilitated by easy availability of landmark datasets using standard data classes.ResultsWe collected, processed, and packaged publicly available landmark datasets from important single-cell multimodal protocols, including CITE-Seq, ECCITE-Seq, SCoPE2, scNMT, 10X Multiome, seqFISH, and G&T. We integrate data modalities via the MultiAssayExperiment Bioconductor class, document and re-distribute datasets as the SingleCellMultiModal package in Bioconductor's Cloud-based ExperimentHub. The result is single-command actualization of landmark datasets from seven single-cell multimodal data generation technologies, without need for further data processing or wrangling in order to analyze and develop methods within Bioconductor's ecosystem of hundreds of packages for single-cell and multimodal data.ConclusionsWe provide two examples of integrative analyses that are greatly simplified by SingleCellMultiModal. The package will facilitate development of bioinformatic and statistical methods in Bioconductor to meet the challenges of integrating molecular layers and analyzing phenotypic outputs including cell differentiation, activity, and disease.