ggsc

DimensionReduction
Actively maintained51updated 1 week ago
R
Artistic-2.0

Useful functions to visualize single cell and spatial data. It supports visualizing 'Seurat', 'SingleCellExperiment' and 'SpatialExperiment' objects through grammar of graphics syntax implemented in 'ggplot2'.

README

ggsc ================ README updated: 2023-11-29 ggsc: Visualizing Single Cell and Spatial Transcriptomics Useful functions to visualize single cell and spatial data. It supports visualizing ‘Seurat’, ‘SingleCellExperiment’ and ‘SpatialExperiment’ objects through grammar of graphics syntax implemented in ‘ggplot2’. :writinghand: Authors Guangchuang YU School of Basic Medical Sciences, Southern Medical University :arrowdouble_down: Installation Documentation Website

Source attribution

  • GitHubgithub.com/yulab-smu/ggsc
  • Bioconductorggsc

Related resources

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