DenoIST

github.com/aaronkwc/denoist
Active9updated 3 weeks ago
R
MIT

DenoIST identifies and removes contamination in Image-based Spatial Transcriptomics data, using a transposed poisson mixture model with local neighbourhood offsets to infer genes that are likely to be due to neighbourhood contamination rather than endogenous expression.

Sourced from

  • GitHubgithub.com/aaronkwc/denoist
  • BioconductorDenoIST

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