DeepMSPeptide: peptide detectability prediction using deep learning.

Journal: Bioinformatics (Oxford, England)
Published Date:

Abstract

SUMMARY: The protein detection and quantification using high-throughput proteomic technologies is still challenging due to the stochastic nature of the peptide selection in the mass spectrometer, the difficulties in the statistical analysis of the results and the presence of degenerated peptides. However, considering in the analysis only those peptides that could be detected by mass spectrometry, also called proteotypic peptides, increases the accuracy of the results. Several approaches have been applied to predict peptide detectability based on the physicochemical properties of the peptides. In this manuscript, we present DeepMSPeptide, a bioinformatic tool that uses a deep learning method to predict proteotypic peptides exclusively based on the peptide amino acid sequences.

Authors

  • Guillermo Serrano
    Bioinformatics Platform, Center for Applied Medical Research, University of Navarra, Pamplona 31008, Spain.
  • Elizabeth Guruceaga
    Bioinformatics Platform, Center for Applied Medical Research, University of Navarra, Pamplona 31008, Spain.
  • Victor Segura
    Bioinformatics Platform, Center for Applied Medical Research, University of Navarra, Pamplona 31008, Spain.