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Deep Learning Methods for <i>De Novo</i> Peptide Sequencing

Wout Bittremieux, Varun Ananth, William E. Fondrie, Carlo Melendez, Marina Pominova, Justin J. Sanders, Bo Wen, Melih Yilmaz, William Stafford Noble

2024Mass Spectrometry Reviews25 citationsDOIOpen Access PDF

Abstract

Protein tandem mass spectrometry data are most often interpreted by matching observed mass spectra to a protein database derived from the reference genome of the sample being analyzed. In many application domains, however, a relevant protein database is unavailable or incomplete, and in such settings de novo sequencing is required. Since the introduction of the DeepNovo algorithm in 2017, the field of de novo sequencing has been dominated by deep learning methods, which use large amounts of labeled mass spectrometry data to train multi-layer neural networks to translate from observed mass spectra to corresponding peptide sequences. Here, we describe these deep learning methods, outline procedures for evaluating their performance, and discuss the challenges in the field, both in terms of methods development and evaluation protocols.

Topics & Concepts

ChemistryDeep learningComputational biologyTandem mass spectrometryMass spectrometryGenomeDNA sequencingField (mathematics)Artificial intelligenceComputer scienceChromatographyGeneBiochemistryBiologyMathematicsPure mathematicsAdvanced Proteomics Techniques and ApplicationsMass Spectrometry Techniques and ApplicationsGenomics and Phylogenetic Studies