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Corra: Computational framework and tools for LC-MS discovery and targeted mass spectrometry-based proteomics

BACKGROUND: Quantitative proteomics holds great promise for identifying proteins that are differentially abundant between populations representing different physiological or disease states. A range of computational tools is now available for both isotopically labeled and label-free liquid chromatogr...

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Autores principales: Brusniak, Mi-Youn, Bodenmiller, Bernd, Campbell, David, Cooke, Kelly, Eddes, James, Garbutt, Andrew, Lau, Hollis, Letarte, Simon, Mueller, Lukas N, Sharma, Vagisha, Vitek, Olga, Zhang, Ning, Aebersold, Ruedi, Watts, Julian D
Formato: Texto
Lenguaje:English
Publicado: BioMed Central 2008
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2651178/
https://www.ncbi.nlm.nih.gov/pubmed/19087345
http://dx.doi.org/10.1186/1471-2105-9-542
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author Brusniak, Mi-Youn
Bodenmiller, Bernd
Campbell, David
Cooke, Kelly
Eddes, James
Garbutt, Andrew
Lau, Hollis
Letarte, Simon
Mueller, Lukas N
Sharma, Vagisha
Vitek, Olga
Zhang, Ning
Aebersold, Ruedi
Watts, Julian D
author_facet Brusniak, Mi-Youn
Bodenmiller, Bernd
Campbell, David
Cooke, Kelly
Eddes, James
Garbutt, Andrew
Lau, Hollis
Letarte, Simon
Mueller, Lukas N
Sharma, Vagisha
Vitek, Olga
Zhang, Ning
Aebersold, Ruedi
Watts, Julian D
author_sort Brusniak, Mi-Youn
collection PubMed
description BACKGROUND: Quantitative proteomics holds great promise for identifying proteins that are differentially abundant between populations representing different physiological or disease states. A range of computational tools is now available for both isotopically labeled and label-free liquid chromatography mass spectrometry (LC-MS) based quantitative proteomics. However, they are generally not comparable to each other in terms of functionality, user interfaces, information input/output, and do not readily facilitate appropriate statistical data analysis. These limitations, along with the array of choices, present a daunting prospect for biologists, and other researchers not trained in bioinformatics, who wish to use LC-MS-based quantitative proteomics. RESULTS: We have developed Corra, a computational framework and tools for discovery-based LC-MS proteomics. Corra extends and adapts existing algorithms used for LC-MS-based proteomics, and statistical algorithms, originally developed for microarray data analyses, appropriate for LC-MS data analysis. Corra also adapts software engineering technologies (e.g. Google Web Toolkit, distributed processing) so that computationally intense data processing and statistical analyses can run on a remote server, while the user controls and manages the process from their own computer via a simple web interface. Corra also allows the user to output significantly differentially abundant LC-MS-detected peptide features in a form compatible with subsequent sequence identification via tandem mass spectrometry (MS/MS). We present two case studies to illustrate the application of Corra to commonly performed LC-MS-based biological workflows: a pilot biomarker discovery study of glycoproteins isolated from human plasma samples relevant to type 2 diabetes, and a study in yeast to identify in vivo targets of the protein kinase Ark1 via phosphopeptide profiling. CONCLUSION: The Corra computational framework leverages computational innovation to enable biologists or other researchers to process, analyze and visualize LC-MS data with what would otherwise be a complex and not user-friendly suite of tools. Corra enables appropriate statistical analyses, with controlled false-discovery rates, ultimately to inform subsequent targeted identification of differentially abundant peptides by MS/MS. For the user not trained in bioinformatics, Corra represents a complete, customizable, free and open source computational platform enabling LC-MS-based proteomic workflows, and as such, addresses an unmet need in the LC-MS proteomics field.
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spelling pubmed-26511782009-03-05 Corra: Computational framework and tools for LC-MS discovery and targeted mass spectrometry-based proteomics Brusniak, Mi-Youn Bodenmiller, Bernd Campbell, David Cooke, Kelly Eddes, James Garbutt, Andrew Lau, Hollis Letarte, Simon Mueller, Lukas N Sharma, Vagisha Vitek, Olga Zhang, Ning Aebersold, Ruedi Watts, Julian D BMC Bioinformatics Methodology Article BACKGROUND: Quantitative proteomics holds great promise for identifying proteins that are differentially abundant between populations representing different physiological or disease states. A range of computational tools is now available for both isotopically labeled and label-free liquid chromatography mass spectrometry (LC-MS) based quantitative proteomics. However, they are generally not comparable to each other in terms of functionality, user interfaces, information input/output, and do not readily facilitate appropriate statistical data analysis. These limitations, along with the array of choices, present a daunting prospect for biologists, and other researchers not trained in bioinformatics, who wish to use LC-MS-based quantitative proteomics. RESULTS: We have developed Corra, a computational framework and tools for discovery-based LC-MS proteomics. Corra extends and adapts existing algorithms used for LC-MS-based proteomics, and statistical algorithms, originally developed for microarray data analyses, appropriate for LC-MS data analysis. Corra also adapts software engineering technologies (e.g. Google Web Toolkit, distributed processing) so that computationally intense data processing and statistical analyses can run on a remote server, while the user controls and manages the process from their own computer via a simple web interface. Corra also allows the user to output significantly differentially abundant LC-MS-detected peptide features in a form compatible with subsequent sequence identification via tandem mass spectrometry (MS/MS). We present two case studies to illustrate the application of Corra to commonly performed LC-MS-based biological workflows: a pilot biomarker discovery study of glycoproteins isolated from human plasma samples relevant to type 2 diabetes, and a study in yeast to identify in vivo targets of the protein kinase Ark1 via phosphopeptide profiling. CONCLUSION: The Corra computational framework leverages computational innovation to enable biologists or other researchers to process, analyze and visualize LC-MS data with what would otherwise be a complex and not user-friendly suite of tools. Corra enables appropriate statistical analyses, with controlled false-discovery rates, ultimately to inform subsequent targeted identification of differentially abundant peptides by MS/MS. For the user not trained in bioinformatics, Corra represents a complete, customizable, free and open source computational platform enabling LC-MS-based proteomic workflows, and as such, addresses an unmet need in the LC-MS proteomics field. BioMed Central 2008-12-16 /pmc/articles/PMC2651178/ /pubmed/19087345 http://dx.doi.org/10.1186/1471-2105-9-542 Text en Copyright © 2008 Brusniak et al; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution License ( (http://creativecommons.org/licenses/by/2.0) ), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Methodology Article
Brusniak, Mi-Youn
Bodenmiller, Bernd
Campbell, David
Cooke, Kelly
Eddes, James
Garbutt, Andrew
Lau, Hollis
Letarte, Simon
Mueller, Lukas N
Sharma, Vagisha
Vitek, Olga
Zhang, Ning
Aebersold, Ruedi
Watts, Julian D
Corra: Computational framework and tools for LC-MS discovery and targeted mass spectrometry-based proteomics
title Corra: Computational framework and tools for LC-MS discovery and targeted mass spectrometry-based proteomics
title_full Corra: Computational framework and tools for LC-MS discovery and targeted mass spectrometry-based proteomics
title_fullStr Corra: Computational framework and tools for LC-MS discovery and targeted mass spectrometry-based proteomics
title_full_unstemmed Corra: Computational framework and tools for LC-MS discovery and targeted mass spectrometry-based proteomics
title_short Corra: Computational framework and tools for LC-MS discovery and targeted mass spectrometry-based proteomics
title_sort corra: computational framework and tools for lc-ms discovery and targeted mass spectrometry-based proteomics
topic Methodology Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2651178/
https://www.ncbi.nlm.nih.gov/pubmed/19087345
http://dx.doi.org/10.1186/1471-2105-9-542
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