hdxmsqc
The hdxmsqc package enables us to analyse and visualise the quality of HDX-MS experiments. Either as a final quality check before downstream analysis and publication or as part of a interative procedure to determine the quality of the data. The package builds on the QFeatures and Spectra packages to integrate with other mass-spectrometry data.
- Repository
- github.com/ococrook/hdxmsqc
Source attribution
- Bioconductor — hdxmsqc
Related resources
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