Machine learning‐based peptide‐spectrum match rescoring opens up the immunopeptidome

Author:

Adams Charlotte12ORCID,Laukens Kris1ORCID,Bittremieux Wout1ORCID,Boonen Kurt23ORCID

Affiliation:

1. Adrem Data Lab Department of Computer Science University of Antwerp Antwerp Belgium

2. Laboratory of Protein Science Proteomics and Epigenetic Signaling (PPES) Department of Biomedical Sciences University of Antwerp Antwerp Belgium

3. ImmuneSpec BV Niel Belgium

Abstract

AbstractImmunopeptidomics is a key technology in the discovery of targets for immunotherapy and vaccine development. However, identifying immunopeptides remains challenging due to their non‐tryptic nature, which results in distinct spectral characteristics. Moreover, the absence of strict digestion rules leads to extensive search spaces, further amplified by the incorporation of somatic mutations, pathogen genomes, unannotated open reading frames, and post‐translational modifications. This inflation in search space leads to an increase in random high‐scoring matches, resulting in fewer identifications at a given false discovery rate. Peptide‐spectrum match rescoring has emerged as a machine learning‐based solution to address challenges in mass spectrometry‐based immunopeptidomics data analysis. It involves post‐processing unfiltered spectrum annotations to better distinguish between correct and incorrect peptide‐spectrum matches. Recently, features based on predicted peptidoform properties, including fragment ion intensities, retention time, and collisional cross section, have been used to improve the accuracy and sensitivity of immunopeptide identification. In this review, we describe the diverse bioinformatics pipelines that are currently available for peptide‐spectrum match rescoring and discuss how they can be used for the analysis of immunopeptidomics data. Finally, we provide insights into current and future machine learning solutions to boost immunopeptide identification.

Funder

Fonds Wetenschappelijk Onderzoek

Publisher

Wiley

Subject

Molecular Biology,Biochemistry

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