Cargando…

Peak Filtering, Peak Annotation, and Wildcard Search for Glycoproteomics

Glycopeptides in peptide or digested protein samples pose a number of analytical and bioinformatics challenges beyond those posed by unmodified peptides or peptides with smaller posttranslational modifications. Exact structural elucidation of glycans is generally beyond the capability of a single ma...

Descripción completa

Detalles Bibliográficos
Autores principales: Roushan, Abhishek, Wilson, Gary M., Kletter, Doron, Sen, K. Ilker, Tang, Wilfred, Kil, Yong J., Carlson, Eric, Bern, Marshall
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Society for Biochemistry and Molecular Biology 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8724605/
https://www.ncbi.nlm.nih.gov/pubmed/33578083
http://dx.doi.org/10.1074/mcp.RA120.002260
_version_ 1784625940628766720
author Roushan, Abhishek
Wilson, Gary M.
Kletter, Doron
Sen, K. Ilker
Tang, Wilfred
Kil, Yong J.
Carlson, Eric
Bern, Marshall
author_facet Roushan, Abhishek
Wilson, Gary M.
Kletter, Doron
Sen, K. Ilker
Tang, Wilfred
Kil, Yong J.
Carlson, Eric
Bern, Marshall
author_sort Roushan, Abhishek
collection PubMed
description Glycopeptides in peptide or digested protein samples pose a number of analytical and bioinformatics challenges beyond those posed by unmodified peptides or peptides with smaller posttranslational modifications. Exact structural elucidation of glycans is generally beyond the capability of a single mass spectrometry experiment, so a reasonable level of identification for tandem mass spectrometry, taken by several glycopeptide software tools, is that of peptide sequence and glycan composition, meaning the number of monosaccharides of each distinct mass, e.g., HexNAc(2)Hex(5) rather than man5. Even at this level, however, glycopeptide analysis poses challenges: finding glycopeptide spectra when they are a tiny fraction of the total spectra; assigning spectra with unanticipated glycans, not in the initial glycan database; and finding, scoring, and labeling diagnostic peaks in tandem mass spectra. Here, we discuss recent improvements to Byonic, a glycoproteomics search program, that address these three issues. Byonic now supports filtering spectra by m/z peaks, so that the user can limit attention to spectra with diagnostic peaks, e.g., at least two out of three of 204.087 for HexNAc, 274.092 for NeuAc (with water loss), and 366.139 for HexNAc-Hex, all within a set mass tolerance, e.g., ± 0.01 Da. Also, new is glycan “wildcard” search, which allows an unspecified mass within a user-set mass range to be applied to N- or O-linked glycans and enables assignment of spectra with unanticipated glycans. Finally, the next release of Byonic supports user-specified peak annotations from user-defined posttranslational modifications. We demonstrate the utility of these new software features by finding previously unrecognized glycopeptides in publicly available data, including glycosylated neuropeptides from rat brain.
format Online
Article
Text
id pubmed-8724605
institution National Center for Biotechnology Information
language English
publishDate 2020
publisher American Society for Biochemistry and Molecular Biology
record_format MEDLINE/PubMed
spelling pubmed-87246052022-01-11 Peak Filtering, Peak Annotation, and Wildcard Search for Glycoproteomics Roushan, Abhishek Wilson, Gary M. Kletter, Doron Sen, K. Ilker Tang, Wilfred Kil, Yong J. Carlson, Eric Bern, Marshall Mol Cell Proteomics Research Glycopeptides in peptide or digested protein samples pose a number of analytical and bioinformatics challenges beyond those posed by unmodified peptides or peptides with smaller posttranslational modifications. Exact structural elucidation of glycans is generally beyond the capability of a single mass spectrometry experiment, so a reasonable level of identification for tandem mass spectrometry, taken by several glycopeptide software tools, is that of peptide sequence and glycan composition, meaning the number of monosaccharides of each distinct mass, e.g., HexNAc(2)Hex(5) rather than man5. Even at this level, however, glycopeptide analysis poses challenges: finding glycopeptide spectra when they are a tiny fraction of the total spectra; assigning spectra with unanticipated glycans, not in the initial glycan database; and finding, scoring, and labeling diagnostic peaks in tandem mass spectra. Here, we discuss recent improvements to Byonic, a glycoproteomics search program, that address these three issues. Byonic now supports filtering spectra by m/z peaks, so that the user can limit attention to spectra with diagnostic peaks, e.g., at least two out of three of 204.087 for HexNAc, 274.092 for NeuAc (with water loss), and 366.139 for HexNAc-Hex, all within a set mass tolerance, e.g., ± 0.01 Da. Also, new is glycan “wildcard” search, which allows an unspecified mass within a user-set mass range to be applied to N- or O-linked glycans and enables assignment of spectra with unanticipated glycans. Finally, the next release of Byonic supports user-specified peak annotations from user-defined posttranslational modifications. We demonstrate the utility of these new software features by finding previously unrecognized glycopeptides in publicly available data, including glycosylated neuropeptides from rat brain. American Society for Biochemistry and Molecular Biology 2020-12-08 /pmc/articles/PMC8724605/ /pubmed/33578083 http://dx.doi.org/10.1074/mcp.RA120.002260 Text en © 2020 The Authors https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Research
Roushan, Abhishek
Wilson, Gary M.
Kletter, Doron
Sen, K. Ilker
Tang, Wilfred
Kil, Yong J.
Carlson, Eric
Bern, Marshall
Peak Filtering, Peak Annotation, and Wildcard Search for Glycoproteomics
title Peak Filtering, Peak Annotation, and Wildcard Search for Glycoproteomics
title_full Peak Filtering, Peak Annotation, and Wildcard Search for Glycoproteomics
title_fullStr Peak Filtering, Peak Annotation, and Wildcard Search for Glycoproteomics
title_full_unstemmed Peak Filtering, Peak Annotation, and Wildcard Search for Glycoproteomics
title_short Peak Filtering, Peak Annotation, and Wildcard Search for Glycoproteomics
title_sort peak filtering, peak annotation, and wildcard search for glycoproteomics
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8724605/
https://www.ncbi.nlm.nih.gov/pubmed/33578083
http://dx.doi.org/10.1074/mcp.RA120.002260
work_keys_str_mv AT roushanabhishek peakfilteringpeakannotationandwildcardsearchforglycoproteomics
AT wilsongarym peakfilteringpeakannotationandwildcardsearchforglycoproteomics
AT kletterdoron peakfilteringpeakannotationandwildcardsearchforglycoproteomics
AT senkilker peakfilteringpeakannotationandwildcardsearchforglycoproteomics
AT tangwilfred peakfilteringpeakannotationandwildcardsearchforglycoproteomics
AT kilyongj peakfilteringpeakannotationandwildcardsearchforglycoproteomics
AT carlsoneric peakfilteringpeakannotationandwildcardsearchforglycoproteomics
AT bernmarshall peakfilteringpeakannotationandwildcardsearchforglycoproteomics