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DeepFLR facilitates false localization rate control in phosphoproteomics

Yu Zong, Yuxin Wang, Yi Yang, Dan Zhao, Xiaoqing Wang, Chengpin Shen, Liang Qiao

2023Nature Communications22 citationsDOIOpen Access PDF

Abstract

Protein phosphorylation is a post-translational modification crucial for many cellular processes and protein functions. Accurate identification and quantification of protein phosphosites at the proteome-wide level are challenging, not least because efficient tools for protein phosphosite false localization rate (FLR) control are lacking. Here, we propose DeepFLR, a deep learning-based framework for controlling the FLR in phosphoproteomics. DeepFLR includes a phosphopeptide tandem mass spectrum (MS/MS) prediction module based on deep learning and an FLR assessment module based on a target-decoy approach. DeepFLR improves the accuracy of phosphopeptide MS/MS prediction compared to existing tools. Furthermore, DeepFLR estimates FLR accurately for both synthetic and biological datasets, and localizes more phosphosites than probability-based methods. DeepFLR is compatible with data from different organisms, instruments types, and both data-dependent and data-independent acquisition approaches, thus enabling FLR estimation for a broad range of phosphoproteomics experiments.

Topics & Concepts

PhosphoproteomicsComputer sciencePhosphopeptideProteomeComputational biologyPosttranslational modificationProteomicsPhosphorylationBioinformaticsBiologyProtein phosphorylationCell biologyProtein kinase ABiochemistryEnzymeGeneAdvanced Proteomics Techniques and ApplicationsMass Spectrometry Techniques and ApplicationsMetabolomics and Mass Spectrometry Studies
DeepFLR facilitates false localization rate control in phosphoproteomics | Litcius