Making proteomics data accessible and reusable: Current state of proteomics databases and repositories

Compared to other data‐intensive disciplines such as genomics, public deposition and storage of MS‐based proteomics, data are still less developed due to, among other reasons, the inherent complexity of the data and the variety of data types and experimental workflows. In order to address this need,...

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Published inProteomics (Weinheim) Vol. 15; no. 5-6; pp. 930 - 950
Main Authors Perez-Riverol, Yasset, Alpi, Emanuele, Wang, Rui, Hermjakob, Henning, Vizcaíno, Juan Antonio
Format Journal Article
LanguageEnglish
Published Germany Blackwell Publishing Ltd 01.03.2015
Wiley Subscription Services, Inc
BlackWell Publishing Ltd
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Summary:Compared to other data‐intensive disciplines such as genomics, public deposition and storage of MS‐based proteomics, data are still less developed due to, among other reasons, the inherent complexity of the data and the variety of data types and experimental workflows. In order to address this need, several public repositories for MS proteomics experiments have been developed, each with different purposes in mind. The most established resources are the Global Proteome Machine Database (GPMDB), PeptideAtlas, and the PRIDE database. Additionally, there are other useful (in many cases recently developed) resources such as ProteomicsDB, Mass Spectrometry Interactive Virtual Environment (MassIVE), Chorus, MaxQB, PeptideAtlas SRM Experiment Library (PASSEL), Model Organism Protein Expression Database (MOPED), and the Human Proteinpedia. In addition, the ProteomeXchange consortium has been recently developed to enable better integration of public repositories and the coordinated sharing of proteomics information, maximizing its benefit to the scientific community. Here, we will review each of the major proteomics resources independently and some tools that enable the integration, mining and reuse of the data. We will also discuss some of the major challenges and current pitfalls in the integration and sharing of the data.
Bibliography:istex:18BAF9E5AC1BE6B41A4CA9CFA457397CB0B72104
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ArticleID:PMIC7839
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ISSN:1615-9853
1615-9861
DOI:10.1002/pmic.201400302