ProteoSign: an end-user online differential proteomics statistical analysis platform

Profiling of proteome dynamics is crucial for understanding cellular behavior in response to intrinsic and extrinsic stimuli and maintenance of homeostasis. Over the last 20 years, mass spectrometry (MS) has emerged as the most powerful tool for large-scale identification and characterization of pro...

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Main Authors: Efstathiou, G, Antonakis, A, Pavlopoulos, G, Theodosiou, T, Divanach, P, Trudgian, D, Thomas, B, Papanikolaou, N, Aivaliotis, M, Acuto, O, Iliopoulos, I
Format: Journal article
Language:English
Published: Oxford University Press 2017
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author Efstathiou, G
Antonakis, A
Pavlopoulos, G
Theodosiou, T
Divanach, P
Trudgian, D
Thomas, B
Papanikolaou, N
Aivaliotis, M
Acuto, O
Iliopoulos, I
author_facet Efstathiou, G
Antonakis, A
Pavlopoulos, G
Theodosiou, T
Divanach, P
Trudgian, D
Thomas, B
Papanikolaou, N
Aivaliotis, M
Acuto, O
Iliopoulos, I
author_sort Efstathiou, G
collection OXFORD
description Profiling of proteome dynamics is crucial for understanding cellular behavior in response to intrinsic and extrinsic stimuli and maintenance of homeostasis. Over the last 20 years, mass spectrometry (MS) has emerged as the most powerful tool for large-scale identification and characterization of proteins. Bottom-up proteomics, the most common MS-based proteomics approach, has always been challenging in terms of data management, processing, analysis and visualization, with modern instruments capable of producing several gigabytes of data out of a single experiment. Here, we present ProteoSign, a freely available web application, dedicated in allowing users to perform proteomics differential expression/abundance analysis in a user-friendly and self-explanatory way. Although several non-commercial standalone tools have been developed for post-quantification statistical analysis of proteomics data, most of them are not end-user appealing as they often require very stringent installation of programming environments, third-party software packages and sometimes further scripting or computer programming. To avoid this bottleneck, we have developed a user-friendly software platform accessible via a web interface in order to enable proteomics laboratories and core facilities to statistically analyse quantitative proteomics data sets in a resource-efficient manner. ProteoSign is available at http://bioinformatics.med.uoc.gr/ProteoSign and the source code at https://github.com/yorgodillo/ProteoSign.
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spelling oxford-uuid:0184caeb-ffe5-400f-8df3-ba4708a5d0152022-03-26T08:35:31ZProteoSign: an end-user online differential proteomics statistical analysis platformJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:0184caeb-ffe5-400f-8df3-ba4708a5d015EnglishSymplectic Elements at OxfordOxford University Press2017Efstathiou, GAntonakis, APavlopoulos, GTheodosiou, TDivanach, PTrudgian, DThomas, BPapanikolaou, NAivaliotis, MAcuto, OIliopoulos, IProfiling of proteome dynamics is crucial for understanding cellular behavior in response to intrinsic and extrinsic stimuli and maintenance of homeostasis. Over the last 20 years, mass spectrometry (MS) has emerged as the most powerful tool for large-scale identification and characterization of proteins. Bottom-up proteomics, the most common MS-based proteomics approach, has always been challenging in terms of data management, processing, analysis and visualization, with modern instruments capable of producing several gigabytes of data out of a single experiment. Here, we present ProteoSign, a freely available web application, dedicated in allowing users to perform proteomics differential expression/abundance analysis in a user-friendly and self-explanatory way. Although several non-commercial standalone tools have been developed for post-quantification statistical analysis of proteomics data, most of them are not end-user appealing as they often require very stringent installation of programming environments, third-party software packages and sometimes further scripting or computer programming. To avoid this bottleneck, we have developed a user-friendly software platform accessible via a web interface in order to enable proteomics laboratories and core facilities to statistically analyse quantitative proteomics data sets in a resource-efficient manner. ProteoSign is available at http://bioinformatics.med.uoc.gr/ProteoSign and the source code at https://github.com/yorgodillo/ProteoSign.
spellingShingle Efstathiou, G
Antonakis, A
Pavlopoulos, G
Theodosiou, T
Divanach, P
Trudgian, D
Thomas, B
Papanikolaou, N
Aivaliotis, M
Acuto, O
Iliopoulos, I
ProteoSign: an end-user online differential proteomics statistical analysis platform
title ProteoSign: an end-user online differential proteomics statistical analysis platform
title_full ProteoSign: an end-user online differential proteomics statistical analysis platform
title_fullStr ProteoSign: an end-user online differential proteomics statistical analysis platform
title_full_unstemmed ProteoSign: an end-user online differential proteomics statistical analysis platform
title_short ProteoSign: an end-user online differential proteomics statistical analysis platform
title_sort proteosign an end user online differential proteomics statistical analysis platform
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