Peptide Property Prediction for Mass Spectrometry Using AI: An Introduction to State of the Art Models.

Journal: Proteomics
Published Date:

Abstract

This review explores state of the art machine learning and deep learning models for peptide property prediction in mass spectrometry-based proteomics, including, but not limited to, models for predicting digestibility, retention time, charge state distribution, collisional cross section, fragmentation ion intensities, and detectability. The combination of these models enables not only the in silico generation of spectral libraries but also finds many additional use cases in the design of targeted assays or data-driven rescoring. This review serves as both an introduction for newcomers and an update for experienced researchers aiming to develop accessible and reproducible models for peptide property predictions. Key limitations of the current models, including difficulties in handling diverse post-translational modifications and instrument variability, highlight the need for large-scale, harmonized datasets, and standardized evaluation metrics for benchmarking.

Authors

  • Jesse Angelis
    Computational Mass Spectrometry, Technical University of Munich, Freising, Germany.
  • Eva Ayla Schröder
    Computational Mass Spectrometry, Technical University of Munich, Freising, Germany.
  • Zixuan Xiao
    Key Laboratory for Biomechanics and Mechanobiology of Ministry of Education, Beijing Advanced Innovation Centre for Biomedical Engineering, School of Engineering Medicine, School of Biological Science and Medical Engineering, Beihang University, No.37 Xueyuan Road, Haidian District, Beijing, 100083, People's Republic of China.
  • Wassim Gabriel
    Computational Mass Spectrometry, Technical University of Munich (TUM), D-85354 Freising, Germany.
  • Mathias Wilhelm
    Chair for Proteomics and Bioanalytics, TU Muenchen, Freising 85354, Germany.