Data Dependent-Independent Acquisition (DDIA) Proteomics

J Proteome Res. 2020 Aug 7;19(8):3230-3237. doi: 10.1021/acs.jproteome.0c00186. Epub 2020 Jun 15.

Abstract

Data dependent acquisition (DDA) and data independent acquisition (DIA) are traditionally separate experimental paradigms in bottom-up proteomics. In this work, we developed a strategy combining the two experimental methods into a single LC-MS/MS run. We call the novel strategy data dependent-independent acquisition proteomics, or DDIA for short. Peptides identified from DDA scans by a conventional and robust DDA identification workflow provide useful information for interrogation of DIA scans. Deep learning based LC-MS/MS property prediction tools, developed previously, can be used repeatedly to produce spectral libraries facilitating DIA scan extraction. A complete DDIA data processing pipeline, including the modules for iRT vs RT calibration curve generation, DIA extraction classifier training, and false discovery rate control, has been developed. Compared to another spectral library-free method, DIA-Umpire, the DDIA method produced a similar number of peptide identifications, but nearly twice as many protein group identifications. The primary advantage of the DDIA method is that it requires minimal information for processing its data.

Keywords: data-dependent acquisition; data-independent acquisition; deep learning; peptide identification; protein identification; retention time prediction; spectrum prediction.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Chromatography, Liquid
  • Peptides
  • Proteins
  • Proteomics*
  • Tandem Mass Spectrometry*

Substances

  • Peptides
  • Proteins