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Modular and user-friendly platform for AI-assisted rescoring of peptide identifications

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MS²Rescore



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Modular and user-friendly platform for AI-assisted rescoring of peptide identifications

⚠️ Note: This is the documentation for the fully redeveloped version 3.0 of MS²Rescore. While MS²Rescore 3.0 has been drastically improved over the previous version, you might run into some unforeseen issues. Please report any issues you encounter on the issue tracker or post your questions on the GitHub Discussions forum.

About MS²Rescore

MS²Rescore performs ultra-sensitive peptide identification rescoring with LC-MS predictors such as MS²PIP and DeepLC, and with ML-driven rescoring engines Percolator or Mokapot. This results in more confident peptide identifications, which allows you to get more peptide IDs at the same false discovery rate (FDR) threshold, or to set a more stringent FDR threshold while still retaining a similar number of peptide IDs. MS²Rescore is ideal for challenging proteomics identification workflows, such as proteogenomics, metaproteomics, or immunopeptidomics.

MS²Rescore overview

MS²Rescore can read peptide identifications in any format supported by psm_utils (see Supported file formats) and has been tested with various search engines output files:

MS²Rescore is available as a desktop application, a command line tool, and a modular Python API.

Citing

Latest MS²Rescore publication:

MS²Rescore 3.0 is a modular, flexible, and user-friendly platform to boost peptide identifications, as showcased with MS Amanda 3.0. Louise Marie Buur*, Arthur Declercq*, Marina Strobl, Robbin Bouwmeester, Sven Degroeve, Lennart Martens, Viktoria Dorfer*, and Ralf Gabriels*. ChemRxiv (2023) doi:10.26434/chemrxiv-2023-rvr9n
*contributed equally

MS²Rescore for immunopeptidomics:

MS2Rescore: Data-driven rescoring dramatically boosts immunopeptide identification rates. Arthur Declercq, Robbin Bouwmeester, Aurélie Hirschler, Christine Carapito, Sven Degroeve, Lennart Martens, and Ralf Gabriels. Molecular & Cellular Proteomics (2021) doi:10.1016/j.mcpro.2022.100266

Original publication describing the concept of rescoring with predicted spectra:

Accurate peptide fragmentation predictions allow data driven approaches to replace and improve upon proteomics search engine scoring functions. Ana S C Silva, Robbin Bouwmeester, Lennart Martens, and Sven Degroeve. Bioinformatics (2019) doi:10.1093/bioinformatics/btz383

To replicate the experiments described in this article, check out the publication branch of the repository.

Getting started

The desktop application can be installed on Windows with a one-click installer. The Python package and command line interface can be installed with pip, conda, or docker. Check out the full documentation to get started.

Questions or issues?

Have questions on how to apply MS²Rescore on your data? Or ran into issues while using MS²Rescore? Post your questions on the GitHub Discussions forum and we are happy to help!

How to contribute

Bugs, questions or suggestions? Feel free to post an issue in the issue tracker or to make a pull request!

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Modular and user-friendly platform for AI-assisted rescoring of peptide identifications

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