spatialFDA
github.com/mjemons/spatialfdaspatialFDA is a package to calculate spatial statistics metrics. The package takes a SpatialExperiment object and calculates spatial statistics metrics using the package spatstat. Then it compares the resulting functions across samples/conditions using functional additive models as implemented in the package refund. Furthermore, it provides exploratory visualisations using functional principal component analysis, as well implemented in refund.
Sourced from
- Bioconductor — spatialFDA
- GitHub — github.com/mjemons/spatialfda
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