scider
scider is an user-friendly R package providing functions to model the global density of cells in a slide of spatial transcriptomics data. All functions in the package are built based on the SpatialExperiment object, allowing integration into various spatial transcriptomics-related packages from Bioconductor. After modelling density, the package allows for several downstream analysis, including colocalization analysis, boundary detection analysis and differential density analysis.
README
scider: Spatial cell-type inter-correlation by density in R. scider implements functions to analyse spatial transcriptomics data with cell type annotations by performing cell type correlation via density estimation and cell type co-localization via real number distance. Functions include density estimation, statistical modelling and visualizations. Install released version form Bioconductor Install development version from GitHub
- Repository
- github.com/chenlaboratory/scider
Source attribution
- GitHub — github.com/chenlaboratory/scider
- Bioconductor — scider
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