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Mining proteomic data to expose protein modifications in Methanosarcina mazei strain Gö1

Proteomic tools identify constituents of complex mixtures, often delivering long lists of identified proteins. The high-throughput methods excel at matching tandem mass spectrometry data to spectra predicted from sequence databases. Unassigned mass spectra are ignored, but could, in principle, provi...

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Autores principales: Leon, Deborah R., Ytterberg, A. Jimmy, Boontheung, Pinmanee, Kim, Unmi, Loo, Joseph A., Gunsalus, Robert P., Ogorzalek Loo, Rachel R.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4350412/
https://www.ncbi.nlm.nih.gov/pubmed/25798134
http://dx.doi.org/10.3389/fmicb.2015.00149
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author Leon, Deborah R.
Ytterberg, A. Jimmy
Boontheung, Pinmanee
Kim, Unmi
Loo, Joseph A.
Gunsalus, Robert P.
Ogorzalek Loo, Rachel R.
author_facet Leon, Deborah R.
Ytterberg, A. Jimmy
Boontheung, Pinmanee
Kim, Unmi
Loo, Joseph A.
Gunsalus, Robert P.
Ogorzalek Loo, Rachel R.
author_sort Leon, Deborah R.
collection PubMed
description Proteomic tools identify constituents of complex mixtures, often delivering long lists of identified proteins. The high-throughput methods excel at matching tandem mass spectrometry data to spectra predicted from sequence databases. Unassigned mass spectra are ignored, but could, in principle, provide valuable information on unanticipated modifications and improve protein annotations while consuming limited quantities of material. Strategies to “mine” information from these discards are presented, along with discussion of features that, when present, provide strong support for modifications. In this study we mined LC-MS/MS datasets of proteolytically-digested concanavalin A pull down fractions from Methanosarcina mazei Gö1 cell lysates. Analyses identified 154 proteins. Many of the observed proteins displayed post-translationally modified forms, including O-formylated and methyl-esterified segments that appear biologically relevant (i.e., not artifacts of sample handling). Interesting cleavages and modifications (e.g., S-cyanylation and trimethylation) were observed near catalytic sites of methanogenesis enzymes. Of 31 Methanosarcina protein N-termini recovered by concanavalin A binding or from a previous study, only M. mazei S-layer protein MM1976 and its M. acetivorans C2A orthologue, MA0829, underwent signal peptide excision. Experimental results contrast with predictions from algorithms SignalP 3.0 and Exprot, which were found to over-predict the presence of signal peptides. Proteins MM0002, MM0716, MM1364, and MM1976 were found to be glycosylated, and employing chromatography tailored specifically for glycopeptides will likely reveal more. This study supplements limited, existing experimental datasets of mature archaeal N-termini, including presence or absence of signal peptides, translation initiation sites, and other processing. Methanosarcina surface and membrane proteins are richly modified.
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spelling pubmed-43504122015-03-20 Mining proteomic data to expose protein modifications in Methanosarcina mazei strain Gö1 Leon, Deborah R. Ytterberg, A. Jimmy Boontheung, Pinmanee Kim, Unmi Loo, Joseph A. Gunsalus, Robert P. Ogorzalek Loo, Rachel R. Front Microbiol Microbiology Proteomic tools identify constituents of complex mixtures, often delivering long lists of identified proteins. The high-throughput methods excel at matching tandem mass spectrometry data to spectra predicted from sequence databases. Unassigned mass spectra are ignored, but could, in principle, provide valuable information on unanticipated modifications and improve protein annotations while consuming limited quantities of material. Strategies to “mine” information from these discards are presented, along with discussion of features that, when present, provide strong support for modifications. In this study we mined LC-MS/MS datasets of proteolytically-digested concanavalin A pull down fractions from Methanosarcina mazei Gö1 cell lysates. Analyses identified 154 proteins. Many of the observed proteins displayed post-translationally modified forms, including O-formylated and methyl-esterified segments that appear biologically relevant (i.e., not artifacts of sample handling). Interesting cleavages and modifications (e.g., S-cyanylation and trimethylation) were observed near catalytic sites of methanogenesis enzymes. Of 31 Methanosarcina protein N-termini recovered by concanavalin A binding or from a previous study, only M. mazei S-layer protein MM1976 and its M. acetivorans C2A orthologue, MA0829, underwent signal peptide excision. Experimental results contrast with predictions from algorithms SignalP 3.0 and Exprot, which were found to over-predict the presence of signal peptides. Proteins MM0002, MM0716, MM1364, and MM1976 were found to be glycosylated, and employing chromatography tailored specifically for glycopeptides will likely reveal more. This study supplements limited, existing experimental datasets of mature archaeal N-termini, including presence or absence of signal peptides, translation initiation sites, and other processing. Methanosarcina surface and membrane proteins are richly modified. Frontiers Media S.A. 2015-03-05 /pmc/articles/PMC4350412/ /pubmed/25798134 http://dx.doi.org/10.3389/fmicb.2015.00149 Text en Copyright © 2015 Leon, Ytterberg, Boontheung, Kim, Loo, Gunsalus and Ogorzalek Loo. http://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) or licensor 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 Microbiology
Leon, Deborah R.
Ytterberg, A. Jimmy
Boontheung, Pinmanee
Kim, Unmi
Loo, Joseph A.
Gunsalus, Robert P.
Ogorzalek Loo, Rachel R.
Mining proteomic data to expose protein modifications in Methanosarcina mazei strain Gö1
title Mining proteomic data to expose protein modifications in Methanosarcina mazei strain Gö1
title_full Mining proteomic data to expose protein modifications in Methanosarcina mazei strain Gö1
title_fullStr Mining proteomic data to expose protein modifications in Methanosarcina mazei strain Gö1
title_full_unstemmed Mining proteomic data to expose protein modifications in Methanosarcina mazei strain Gö1
title_short Mining proteomic data to expose protein modifications in Methanosarcina mazei strain Gö1
title_sort mining proteomic data to expose protein modifications in methanosarcina mazei strain gö1
topic Microbiology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4350412/
https://www.ncbi.nlm.nih.gov/pubmed/25798134
http://dx.doi.org/10.3389/fmicb.2015.00149
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