Glycopeptide database search and de novo sequencing with PEAKS GlycanFinder enable highly sensitive glycoproteomics
暂无分享,去创建一个
Ngoc Hieu Tran | Ming Li | L. Xin | B. Shan | Weiping Sun | Jun Ma | Qianqiu Zhang | Xiyue Zhang | M. Ziaur Rahman | Zheng Chen | Chao Peng
[1] Wen-Feng Zeng,et al. pGlycoQuant with a deep residual network for quantitative glycoproteomics at intact glycopeptide level , 2022, Nature Communications.
[2] M. Ye,et al. Glyco-Decipher enables glycan database-independent peptide matching and in-depth characterization of site-specific N-glycosylation , 2022, Nature Communications.
[3] One year of Methods Primers , 2022, Nature Reviews Methods Primers.
[4] Si-Min He,et al. Precise, fast and comprehensive analysis of intact glycopeptides and modified glycans with pGlyco3 , 2021, Nature Methods.
[5] A. Brazma,et al. The PRIDE database resources in 2022: a hub for mass spectrometry-based proteomics evidences , 2021, Nucleic Acids Res..
[6] Nichollas E. Scott,et al. Community evaluation of glycoproteomics informatics solutions reveals high-performance search strategies for serum glycopeptide analysis , 2021, Nature Methods.
[7] Daniel A. Polasky,et al. Multiattribute Glycan Identification and FDR Control for Glycoproteomics , 2021, bioRxiv.
[8] J Zhang,et al. StrucGP: de novo structural sequencing of site-specific N-glycan on glycoproteins using a modularization strategy , 2021, Nature Methods.
[9] Mathias Wilhelm,et al. Deep learning boosts sensitivity of mass spectrometry-based immunopeptidomics , 2021, Nature Communications.
[10] Ali Ghodsi,et al. Computationally instrument-resolution-independent de novo peptide sequencing for high-resolution devices , 2021, Nature Machine Intelligence.
[11] Maximilian T. Strauss,et al. Deep learning the collisional cross sections of the peptide universe from a million experimental values , 2021, Nature Communications.
[12] R. Goldman,et al. N- and O-Glycosylation of the SARS-CoV-2 Spike Protein. , 2021, Analytical chemistry.
[13] Lloyd M. Smith,et al. O-Pair Search with MetaMorpheus for O-glycopeptide Characterization , 2020, Nature Methods.
[14] Guo Ci Teo,et al. Fast and Comprehensive N- and O-glycoproteomics analysis with MSFragger-Glyco , 2020, Nature Methods.
[15] Daniel Wrapp,et al. Site-specific glycan analysis of the SARS-CoV-2 spike , 2020, Science.
[16] R. Tollenaar,et al. Simultaneous Immunoglobulin A and G Glycopeptide Profiling for High-Throughput Applications , 2020, Analytical chemistry.
[17] Christoph B. Messner,et al. DIA-NN: Neural networks and interference correction enable deep proteome coverage in high throughput , 2019, Nature Methods.
[18] J. Axford,et al. Translational glycobiology: from bench to bedside , 2019, Journal of the Royal Society of Medicine.
[19] Pauline M Rudd,et al. GlycopeptideGraphMS: Improved Glycopeptide Detection and Identification by Exploiting Graph Theoretical Patterns in Mass and Retention Time. , 2019, Analytical chemistry.
[20] J. Novak,et al. Glycosylation in health and disease , 2019, Nature Reviews Nephrology.
[21] Ngoc Hieu Tran,et al. Deep learning enables de novo peptide sequencing from data-independent-acquisition mass spectrometry , 2018, Nature Methods.
[22] U. Reichl,et al. glyXtoolMS: An Open-Source Pipeline for Semiautomated Analysis of Glycopeptide Mass Spectrometry Data. , 2018, Analytical chemistry.
[23] K. Mechtler,et al. Analysis of PNGase F‐Resistant N‐Glycopeptides Using SugarQb for Proteome Discoverer 2.1 Reveals Cryptic Substrate Specificities , 2018, Proteomics.
[24] Chunjie Luo,et al. pDeep: Predicting MS/MS Spectra of Peptides with Deep Learning. , 2017, Analytical chemistry.
[25] Wei Li,et al. Crystallizable Fragment Glycoengineering for Therapeutic Antibodies Development , 2017, Front. Immunol..
[26] J. Houwing-Duistermaat,et al. Subclass-specific IgG glycosylation is associated with markers of inflammation and metabolic health , 2017, Scientific Reports.
[27] Hao Chi,et al. pGlyco 2.0 enables precision N-glycoproteomics with comprehensive quality control and one-step mass spectrometry for intact glycopeptide identification , 2017, Nature Communications.
[28] Baozhen Shan,et al. De novo peptide sequencing by deep learning , 2017, Proceedings of the National Academy of Sciences.
[29] M. Cecchini,et al. Ultrastructural Characterization of the Lower Motor System in a Mouse Model of Krabbe Disease , 2016, Scientific Reports.
[30] Chi‐Huey Wong,et al. A common glycan structure on immunoglobulin G for enhancement of effector functions , 2015, Proceedings of the National Academy of Sciences.
[31] Xingde Li,et al. GPQuest: A Spectral Library Matching Algorithm for Site-Specific Assignment of Tandem Mass Spectra to Intact N-glycopeptides. , 2015, Analytical chemistry.
[32] Yong J. Kil,et al. Byonic: Advanced Peptide and Protein Identification Software , 2012, Current protocols in bioinformatics.
[33] Florian Gnad,et al. Mapping N-glycosylation sites across seven evolutionarily distant species reveals a divergent substrate proteome despite a common core machinery. , 2012, Molecular cell.
[34] Radoslav Goldman,et al. Semi-automated identification of N-Glycopeptides by hydrophilic interaction chromatography, nano-reverse-phase LC-MS/MS, and glycan database search. , 2012, Journal of proteome research.
[35] Y. Levy,et al. Effect of glycosylation on protein folding: A close look at thermodynamic stabilization , 2008, Proceedings of the National Academy of Sciences.
[36] Steven P Gygi,et al. Target-decoy search strategy for increased confidence in large-scale protein identifications by mass spectrometry , 2007, Nature Methods.
[37] Steven P Gygi,et al. A probability-based approach for high-throughput protein phosphorylation analysis and site localization , 2006, Nature Biotechnology.