DDIA: data dependent-independent acquisition proteomics - DDA and DIA in a single LC-MS/MS run
DDIA: data dependent-independent acquisition proteomics - DDA and DIA in a single LC-MS/MS run
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 by 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 modules for iRT vs RT calibration curve generation, DIA extraction classifier training, FDR control has been developed. A key advantage of the DDIA method is that it requires minimal information for processing its data. GRAPHIC ABSTRACTbiorxiv;802231v1/UFIG1F1ufig1
Taylor Paul P.、Han Ziwei、Moran Michael F.、Ma Bin、Guan Shenheng
Rapid Novor Inc., Unit 450David R. Cheriton School of Computer Science, University of WaterlooProgram in Cell Biology and SPARC BioCentre, Hospital for Sick Children||Department of Molecular Genetics, University of TorontoDavid R. Cheriton School of Computer Science, University of WaterlooDavid R. Cheriton School of Computer Science, University of Waterloo||Program in Cell Biology and SPARC BioCentre, Hospital for Sick Children
生物科学研究方法、生物科学研究技术
Taylor Paul P.,Han Ziwei,Moran Michael F.,Ma Bin,Guan Shenheng.DDIA: data dependent-independent acquisition proteomics - DDA and DIA in a single LC-MS/MS run[EB/OL].(2025-03-28)[2025-04-27].https://www.biorxiv.org/content/10.1101/802231.点此复制
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