Conditional Fragment Ion Probabilities Improve Database Searching for Nonmonoisotopic Precursors

J Proteome Res. 2023 Feb 3;22(2):334-342. doi: 10.1021/acs.jproteome.2c00247. Epub 2022 Nov 22.

Abstract

Stochastic, intensity-based precursor isolation can result in isotopically enriched fragment ions. This problem is exacerbated for large peptides and stable isotope labeling experiments using deuterium or 15N. For stable isotope labeling experiments, incomplete and ubiquitous labeling strategies result in the isolation of peptide ions composed of many distinct structural isomers. Unfortunately, existing proteomics search algorithms do not account for this variability in isotopic incorporation, and thus often yield poor peptide and protein identification rates. We sought to resolve this shortcoming by deriving the expected isotopic distributions of each fragment ion and incorporating them into the theoretical mass spectra used for peptide-spectrum-matching. We adapted the Comet search platform to integrate a modified spectral prediction algorithm we term Conditional fragment Ion Distribution Search (CIDS). Comet-CIDS uses a traditional database searching strategy, but for each candidate peptide we compute the isotopic distribution of each fragment to better match the observed m/z distributions. Evaluating previously generated D2O and 15N labeled data sets, we found that Comet-CIDS identified more confident peptide spectral matches and higher protein sequence coverage compared to traditional theoretical spectra generation, with the magnitude of improvement largely determined by the amount of labeling in the sample.

Keywords: D2O; database searching; isotopic envelope 15N; peptide spectrum matching; protein turnover; stable isotope labeling.

MeSH terms

  • Amino Acid Sequence
  • Ions
  • Peptides* / chemistry
  • Probability
  • Proteins* / metabolism

Substances

  • Peptides
  • Proteins
  • Ions