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. 2023 Jul 5;51(W1):W338-W342.
doi: 10.1093/nar/gkad335.

Updated MS²PIP web server supports cutting-edge proteomics applications

Affiliations

Updated MS²PIP web server supports cutting-edge proteomics applications

Arthur Declercq et al. Nucleic Acids Res. .

Abstract

Interest in the use of machine learning for peptide fragmentation spectrum prediction has been strongly on the rise over the past years, especially for applications in challenging proteomics identification workflows such as immunopeptidomics and the full-proteome identification of data independent acquisition spectra. Since its inception, the MS²PIP peptide spectrum predictor has been widely used for various downstream applications, mostly thanks to its accuracy, ease-of-use, and broad applicability. We here present a thoroughly updated version of the MS²PIP web server, which includes new and more performant prediction models for both tryptic- and non-tryptic peptides, for immunopeptides, and for CID-fragmented TMT-labeled peptides. Additionally, we have also added new functionality to greatly facilitate the generation of proteome-wide predicted spectral libraries, requiring only a FASTA protein file as input. These libraries also include retention time predictions from DeepLC. Moreover, we now provide pre-built and ready-to-download spectral libraries for various model organisms in multiple DIA-compatible spectral library formats. Besides upgrading the back-end models, the user experience on the MS²PIP web server is thus also greatly enhanced, extending its applicability to new domains, including immunopeptidomics and MS3-based TMT quantification experiments. MS²PIP is freely available at https://iomics.ugent.be/ms2pip/.

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Figures

Graphical Abstract
Graphical Abstract
Updated MS²PIP web server supports cutting-edge proteomics applications.
Figure 1.
Figure 1.
Distribution of Pearson correlation coefficients per spectrum (y-axis) for each newly trained model and the relevant existing models, evaluated on various external unseen data sets (x-axis). Each color represents a model, with the target model for each evaluation data set shown with black borders and the other models shown with grey borders.

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