PSMatch
The PSMatch package helps proteomics practitioners to load, handle and manage Peptide Spectrum Matches. It provides functions to model peptide-protein relations as adjacency matrices and connected components, visualise these as graphs and make informed decision about shared peptide filtering. The package also provides functions to calculate and visualise MS2 fragment ions.
README
Handling peptide-spectrum matches PSMatch is a simple package to load, process and analyse PSMs (Peptide-Spectrum Matches). The following references are a good way to get started with the package: The package manual package for a general overview of the main concepts tackled by the PSMatch package. The Working with PSM data vignette to learn about the PSM to read and filter peptide-spectrum matches. The Understanding protein groups with adjacency matrices vignette to learn about adjaceny…
- Repository
- github.com/rformassspectrometry/psm
Source attribution
- Bioconductor — PSMatch
- GitHub — github.com/rformassspectrometry/psm
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