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Prediction of glycopeptide fragment mass spectra by deep learning

Chemistry

Prediction of glycopeptide fragment mass spectra by deep learning

Y. Yang and Q. Fang

Discover the potential of DeepGlyco, a cutting-edge deep learning technique developed by Yi Yang and Qun Fang to unravel the complexities of glycoproteomics. This innovative approach not only enhances the prediction of intact glycopeptide fragment spectra but also improves model explainability and differentiation of isomers. Dive into this promising research that could transform glycoproteomics!

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~3 min • Beginner • English
Abstract
Deep learning has achieved a notable success in mass spectrometry-based proteomics and is now emerging in glycoproteomics. While various deep learning models can predict fragment mass spectra of peptides with good accuracy, they cannot cope with the non-linear glycan structure in an intact glycopeptide. Herein, we present DeepGlyco, a deep learning-based approach for the prediction of fragment spectra of intact glycopeptides. Our model adopts tree-structured long-short term memory networks to process the glycan moiety and a graph neural network architecture to incorporate potential fragmentation pathways of a specific glycan structure. This feature is beneficial to model explainability and differentiation ability of glycan structural isomers. We further demonstrate that predicted spectral libraries can be used for data-independent acquisition glycoproteomics as a supplement for library completeness. We expect that this work will provide a valuable deep learning resource for glycoproteomics.
Publisher
Nature Communications
Published On
Mar 19, 2024
Authors
Yi Yang, Qun Fang
Tags
deep learning
glycoproteomics
mass spectrometry
glycan fragmentation
spectral libraries
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