spatialSimGP

github.com/kinnaryshah/spatialsimgp
Idle0updated 1 year ago
R
MIT

This packages simulates spatial transcriptomics data with the mean- variance relationship using a Gaussian Process model per gene.

Sourced from

  • GitHubgithub.com/kinnaryshah/spatialsimgp
  • BioconductorspatialSimGP

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