Cardinal

Software
R
Artistic-2.0 | file LICENSE

Implements statistical & computational tools for analyzing mass spectrometry imaging datasets, including methods for efficient pre-processing, spatial segmentation, and classification.

Source attribution

  • BioconductorCardinal

Related resources

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161 month ago
R