spicyR

github.com/sydneybiox/spicyr
Active12updated 4 months ago
R
GPL-2.0+

The spicyR package provides a framework for performing inference on changes in spatial relationships between pairs of cell types for cell-resolution spatial omics technologies. spicyR consists of three primary steps: (i) summarizing the degree of spatial localization between pairs of cell types for each image; (ii) modelling the variability in localization summary statistics as a function of cell counts and (iii) testing for changes in spatial localizations associated with a response variable.

Sourced from

  • GitHubgithub.com/sydneybiox/spicyr
  • BioconductorspicyR

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