squallms

github.com/wkumler/squallms
Stale3updated 2 years ago
R
MIT

squallms is a Bioconductor R package that implements a "semi-labeled" approach to untargeted mass spectrometry data. It pulls in raw data from mass-spec files to calculate several metrics that are then used to label MS features in bulk as high or low quality. These metrics of peak quality are then passed to a simple logistic model that produces a fully-labeled dataset suitable for downstream analysis.

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  • GitHubgithub.com/wkumler/squallms
  • Bioconductorsquallms

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