Prosit-TMT: Deep Learning Boosts Identification of TMT-Labeled Peptides.

Journal: Analytical chemistry
Published Date:

Abstract

The prediction of fragment ion intensities and retention time of peptides has gained significant attention over the past few years. However, the progress shown in the accurate prediction of such properties focused primarily on unlabeled peptides. Tandem mass tags (TMT) are chemical peptide labels that are coupled to free amine groups usually after protein digestion to enable the multiplexed analysis of multiple samples in bottom-up mass spectrometry. It is a standard workflow in proteomics ranging from single-cell to high-throughput proteomics. Particularly for TMT, increasing the number of confidently identified spectra is highly desirable as it provides identification and quantification information with every spectrum. Here, we report on the generation of an extensive resource of synthetic TMT-labeled peptides as part of the ProteomeTools project and present the extension of the deep learning model Prosit to accurately predict the retention time and fragment ion intensities of TMT-labeled peptides with high accuracy. Prosit-TMT supports CID and HCD fragmentation and ion trap and Orbitrap mass analyzers in a single model. Reanalysis of published TMT data sets show that this single model extracts substantial additional information. Applying Prosit-TMT, we discovered that the expression of many proteins in human breast milk follows a distinct daily cycle which may prime the newborn for nutritional or environmental cues.

Authors

  • Wassim Gabriel
    Computational Mass Spectrometry, Technical University of Munich (TUM), D-85354 Freising, Germany.
  • Matthew The
    Chair of Proteomics and Bioanalytics, Technical University of Munich, 85354 Freising, Germany.
  • Daniel P Zolg
    Chair of Proteomics and Bioanalytics, Technical University of Munich (TUM), Freising, Germany.
  • Florian P Bayer
    Chair of Proteomics and Bioanalytics, Technical University of Munich, 85354 Freising, Germany.
  • Omar Shouman
    Computational Mass Spectrometry, Technical University of Munich, 85354 Freising, Germany.
  • Ludwig Lautenbacher
    Chair of Proteomics and Bioanalytics, Technical University of Munich (TUM), Freising, Germany.
  • Karsten Schnatbaum
    JPT Peptide Technologies GmbH, Berlin, Germany.
  • Johannes Zerweck
    JPT Peptide Technologies GmbH, Berlin, Germany.
  • Tobias Knaute
    JPT Peptide Technologies GmbH, Berlin, Germany.
  • Bernard Delanghe
    Thermo Fisher Scientific, Bremen, Germany.
  • Andreas Huhmer
    Thermo Fisher Scientific, San Jose, CA, USA.
  • Holger Wenschuh
    JPT Peptide Technologies GmbH, Berlin, Germany.
  • Ulf Reimer
    JPT Peptide Technologies GmbH, Berlin, Germany.
  • Guillaume Médard
    Chair of Proteomics and Bioanalytics, Technical University of Munich, 85354 Freising, Germany.
  • Bernhard Kuster
    Chair for Proteomics and Bioanalytics, TU Muenchen, Freising 85354, Germany; German Cancer Consortium (DKTK), Munich, Germany; German Cancer Research Center (DKFZ), Heidelberg, Germany; Center for Integrated Protein Science Munich, Munich, Germany; Bavarian Biomolecular Mass Spectrometry Center, Technische Universität München, Freising, Germany.
  • Mathias Wilhelm
    Chair for Proteomics and Bioanalytics, TU Muenchen, Freising 85354, Germany.