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Single-Cell Virtual Cytometer allows user-friendly and versatile analysis and visualization of multimodal single cell RNAseq datasets
Author(s) -
Frédéric Pont,
Marie Tosolini,
Qing Gao,
Marion Perrier,
Miguel Madrid-Mencía,
T.S. Huang,
Pierre Neuvial,
Maha Ayyoub,
Kristopher L. Nazor,
JeanJacques Fournié
Publication year - 2020
Publication title -
nar genomics and bioinformatics
Language(s) - English
Resource type - Journals
ISSN - 2631-9268
DOI - 10.1093/nargab/lqaa025
Subject(s) - computer science , user friendly , transcriptome , software , visualization , interactive visualization , computational biology , data mining , biology , operating system , biochemistry , gene expression , gene
The development of single-cell transcriptomic technologies yields large datasets comprising multimodal informations, such as transcriptomes and immunophenotypes. Despite the current explosion of methods for pre-processing and integrating multimodal single-cell data, there is currently no user-friendly software to display easily and simultaneously both immunophenotype and transcriptome-based UMAP/t-SNE plots from the pre-processed data. Here, we introduce Single-Cell Virtual Cytometer, an open-source software for flow cytometry-like visualization and exploration of pre-processed multi-omics single cell datasets. Using an original CITE-seq dataset of PBMC from an healthy donor, we illustrate its use for the integrated analysis of transcriptomes and epitopes of functional maturation in human peripheral T lymphocytes. So this free and open-source algorithm constitutes a unique resource for biologists seeking for a user-friendly analytic tool for multimodal single cell datasets.

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