standR

github.com/davislaboratory/standr
Idle25updated 8 months ago
R
MIT

standR is an user-friendly R package providing functions to assist conducting good-practice analysis of Nanostring's GeoMX DSP data. All functions in the package are built based on the SpatialExperiment object, allowing integration into various spatial transcriptomics-related packages from Bioconductor. standR allows data inspection, quality control, normalization, batch correction and evaluation with informative visualizations.

Sourced from

  • BioconductorstandR
  • GitHubgithub.com/davislaboratory/standr

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