Semisupervised Machine Learning for Sensitive Open Modification Spectral Library Searching

J Proteome Res. 2023 Feb 3;22(2):585-593. doi: 10.1021/acs.jproteome.2c00616. Epub 2023 Jan 23.

Abstract

A key analysis task in mass spectrometry proteomics is matching the acquired tandem mass spectra to their originating peptides by sequence database searching or spectral library searching. Machine learning is an increasingly popular postprocessing approach to maximize the number of confident spectrum identifications that can be obtained at a given false discovery rate threshold. Here, we have integrated semisupervised machine learning in the ANN-SoLo tool, an efficient spectral library search engine that is optimized for open modification searching to identify peptides with any type of post-translational modification. We show that machine learning rescoring boosts the number of spectra that can be identified for both standard searching and open searching, and we provide insights into relevant spectrum characteristics harnessed by the machine learning model. The semisupervised machine learning functionality has now been fully integrated into ANN-SoLo, which is available as open source under the permissive Apache 2.0 license on GitHub at https://github.com/bittremieux/ANN-SoLo.

Keywords: machine learning; mass spectrometry; open modification searching; proteomics; spectral library; spectrum identification.

MeSH terms

  • Algorithms
  • Databases, Protein
  • Machine Learning
  • Peptide Library
  • Peptides* / analysis
  • Software*
  • Tandem Mass Spectrometry / methods

Substances

  • Peptides
  • Peptide Library