Cargando…

Ion Mobility Coupled to a Time-of-Flight Mass Analyzer Combined With Fragment Intensity Predictions Improves Identification of Classical Bioactive Peptides and Small Open Reading Frame-Encoded Peptides

Bioactive peptides exhibit key roles in a wide variety of complex processes, such as regulation of body weight, learning, aging, and innate immune response. Next to the classical bioactive peptides, emerging from larger precursor proteins by specific proteolytic processing, a new class of peptides o...

Descripción completa

Detalles Bibliográficos
Autores principales: Peeters, Marlies K. R., Baggerman, Geert, Gabriels, Ralf, Pepermans, Elise, Menschaert, Gerben, Boonen, Kurt
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8484717/
https://www.ncbi.nlm.nih.gov/pubmed/34604223
http://dx.doi.org/10.3389/fcell.2021.720570
_version_ 1784577380151459840
author Peeters, Marlies K. R.
Baggerman, Geert
Gabriels, Ralf
Pepermans, Elise
Menschaert, Gerben
Boonen, Kurt
author_facet Peeters, Marlies K. R.
Baggerman, Geert
Gabriels, Ralf
Pepermans, Elise
Menschaert, Gerben
Boonen, Kurt
author_sort Peeters, Marlies K. R.
collection PubMed
description Bioactive peptides exhibit key roles in a wide variety of complex processes, such as regulation of body weight, learning, aging, and innate immune response. Next to the classical bioactive peptides, emerging from larger precursor proteins by specific proteolytic processing, a new class of peptides originating from small open reading frames (sORFs) have been recognized as important biological regulators. But their intrinsic properties, specific expression pattern and location on presumed non-coding regions have hindered the full characterization of the repertoire of bioactive peptides, despite their predominant role in various pathways. Although the development of peptidomics has offered the opportunity to study these peptides in vivo, it remains challenging to identify the full peptidome as the lack of cleavage enzyme specification and large search space complicates conventional database search approaches. In this study, we introduce a proteogenomics methodology using a new type of mass spectrometry instrument and the implementation of machine learning tools toward improved identification of potential bioactive peptides in the mouse brain. The application of trapped ion mobility spectrometry (tims) coupled to a time-of-flight mass analyzer (TOF) offers improved sensitivity, an enhanced peptide coverage, reduction in chemical noise and the reduced occurrence of chimeric spectra. Subsequent machine learning tools MS(2)PIP, predicting fragment ion intensities and DeepLC, predicting retention times, improve the database searching based on a large and comprehensive custom database containing both sORFs and alternative ORFs. Finally, the identification of peptides is further enhanced by applying the post-processing semi-supervised learning tool Percolator. Applying this workflow, the first peptidomics workflow combined with spectral intensity and retention time predictions, we identified a total of 167 predicted sORF-encoded peptides, of which 48 originating from presumed non-coding locations, next to 401 peptides from known neuropeptide precursors, linked to 66 annotated bioactive neuropeptides from within 22 different families. Additional PEAKS analysis expanded the pool of SEPs on presumed non-coding locations to 84, while an additional 204 peptides completed the list of peptides from neuropeptide precursors. Altogether, this study provides insights into a new robust pipeline that fuses technological advancements from different fields ensuring an improved coverage of the neuropeptidome in the mouse brain.
format Online
Article
Text
id pubmed-8484717
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-84847172021-10-02 Ion Mobility Coupled to a Time-of-Flight Mass Analyzer Combined With Fragment Intensity Predictions Improves Identification of Classical Bioactive Peptides and Small Open Reading Frame-Encoded Peptides Peeters, Marlies K. R. Baggerman, Geert Gabriels, Ralf Pepermans, Elise Menschaert, Gerben Boonen, Kurt Front Cell Dev Biol Cell and Developmental Biology Bioactive peptides exhibit key roles in a wide variety of complex processes, such as regulation of body weight, learning, aging, and innate immune response. Next to the classical bioactive peptides, emerging from larger precursor proteins by specific proteolytic processing, a new class of peptides originating from small open reading frames (sORFs) have been recognized as important biological regulators. But their intrinsic properties, specific expression pattern and location on presumed non-coding regions have hindered the full characterization of the repertoire of bioactive peptides, despite their predominant role in various pathways. Although the development of peptidomics has offered the opportunity to study these peptides in vivo, it remains challenging to identify the full peptidome as the lack of cleavage enzyme specification and large search space complicates conventional database search approaches. In this study, we introduce a proteogenomics methodology using a new type of mass spectrometry instrument and the implementation of machine learning tools toward improved identification of potential bioactive peptides in the mouse brain. The application of trapped ion mobility spectrometry (tims) coupled to a time-of-flight mass analyzer (TOF) offers improved sensitivity, an enhanced peptide coverage, reduction in chemical noise and the reduced occurrence of chimeric spectra. Subsequent machine learning tools MS(2)PIP, predicting fragment ion intensities and DeepLC, predicting retention times, improve the database searching based on a large and comprehensive custom database containing both sORFs and alternative ORFs. Finally, the identification of peptides is further enhanced by applying the post-processing semi-supervised learning tool Percolator. Applying this workflow, the first peptidomics workflow combined with spectral intensity and retention time predictions, we identified a total of 167 predicted sORF-encoded peptides, of which 48 originating from presumed non-coding locations, next to 401 peptides from known neuropeptide precursors, linked to 66 annotated bioactive neuropeptides from within 22 different families. Additional PEAKS analysis expanded the pool of SEPs on presumed non-coding locations to 84, while an additional 204 peptides completed the list of peptides from neuropeptide precursors. Altogether, this study provides insights into a new robust pipeline that fuses technological advancements from different fields ensuring an improved coverage of the neuropeptidome in the mouse brain. Frontiers Media S.A. 2021-09-17 /pmc/articles/PMC8484717/ /pubmed/34604223 http://dx.doi.org/10.3389/fcell.2021.720570 Text en Copyright © 2021 Peeters, Baggerman, Gabriels, Pepermans, Menschaert and Boonen. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Cell and Developmental Biology
Peeters, Marlies K. R.
Baggerman, Geert
Gabriels, Ralf
Pepermans, Elise
Menschaert, Gerben
Boonen, Kurt
Ion Mobility Coupled to a Time-of-Flight Mass Analyzer Combined With Fragment Intensity Predictions Improves Identification of Classical Bioactive Peptides and Small Open Reading Frame-Encoded Peptides
title Ion Mobility Coupled to a Time-of-Flight Mass Analyzer Combined With Fragment Intensity Predictions Improves Identification of Classical Bioactive Peptides and Small Open Reading Frame-Encoded Peptides
title_full Ion Mobility Coupled to a Time-of-Flight Mass Analyzer Combined With Fragment Intensity Predictions Improves Identification of Classical Bioactive Peptides and Small Open Reading Frame-Encoded Peptides
title_fullStr Ion Mobility Coupled to a Time-of-Flight Mass Analyzer Combined With Fragment Intensity Predictions Improves Identification of Classical Bioactive Peptides and Small Open Reading Frame-Encoded Peptides
title_full_unstemmed Ion Mobility Coupled to a Time-of-Flight Mass Analyzer Combined With Fragment Intensity Predictions Improves Identification of Classical Bioactive Peptides and Small Open Reading Frame-Encoded Peptides
title_short Ion Mobility Coupled to a Time-of-Flight Mass Analyzer Combined With Fragment Intensity Predictions Improves Identification of Classical Bioactive Peptides and Small Open Reading Frame-Encoded Peptides
title_sort ion mobility coupled to a time-of-flight mass analyzer combined with fragment intensity predictions improves identification of classical bioactive peptides and small open reading frame-encoded peptides
topic Cell and Developmental Biology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8484717/
https://www.ncbi.nlm.nih.gov/pubmed/34604223
http://dx.doi.org/10.3389/fcell.2021.720570
work_keys_str_mv AT peetersmarlieskr ionmobilitycoupledtoatimeofflightmassanalyzercombinedwithfragmentintensitypredictionsimprovesidentificationofclassicalbioactivepeptidesandsmallopenreadingframeencodedpeptides
AT baggermangeert ionmobilitycoupledtoatimeofflightmassanalyzercombinedwithfragmentintensitypredictionsimprovesidentificationofclassicalbioactivepeptidesandsmallopenreadingframeencodedpeptides
AT gabrielsralf ionmobilitycoupledtoatimeofflightmassanalyzercombinedwithfragmentintensitypredictionsimprovesidentificationofclassicalbioactivepeptidesandsmallopenreadingframeencodedpeptides
AT pepermanselise ionmobilitycoupledtoatimeofflightmassanalyzercombinedwithfragmentintensitypredictionsimprovesidentificationofclassicalbioactivepeptidesandsmallopenreadingframeencodedpeptides
AT menschaertgerben ionmobilitycoupledtoatimeofflightmassanalyzercombinedwithfragmentintensitypredictionsimprovesidentificationofclassicalbioactivepeptidesandsmallopenreadingframeencodedpeptides
AT boonenkurt ionmobilitycoupledtoatimeofflightmassanalyzercombinedwithfragmentintensitypredictionsimprovesidentificationofclassicalbioactivepeptidesandsmallopenreadingframeencodedpeptides