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Nucleic Acids Research | 2012

neXtProt: a knowledge platform for human proteins

Lydie Lane; Ghislaine Argoud-Puy; Aurore Britan; Isabelle Cusin; Paula D. Duek; Olivier Evalet; Alain Gateau; Pascale Gaudet; Anne Gleizes; Alexandre Masselot; Catherine Zwahlen; Amos Marc Bairoch

neXtProt (http://www.nextprot.org/) is a new human protein-centric knowledge platform. Developed at the Swiss Institute of Bioinformatics (SIB), it aims to help researchers answer questions relevant to human proteins. To achieve this goal, neXtProt is built on a corpus containing both curated knowledge originating from the UniProtKB/Swiss-Prot knowledgebase and carefully selected and filtered high-throughput data pertinent to human proteins. This article presents an overview of the database and the data integration process. We also lay out the key future directions of neXtProt that we consider the necessary steps to make neXtProt the one-stop-shop for all research projects focusing on human proteins.


Nucleic Acids Research | 2015

The neXtProt knowledgebase on human proteins: current status.

Pascale Gaudet; Pierre-André Michel; Monique Zahn-Zabal; Isabelle Cusin; Paula D. Duek; Olivier Evalet; Alain Gateau; Anne Gleizes; Mario Pereira; Daniel Teixeira; Ying Zhang; Lydie Lane; Amos Marc Bairoch

neXtProt (http://www.nextprot.org) is a human protein-centric knowledgebase developed at the SIB Swiss Institute of Bioinformatics. Focused solely on human proteins, neXtProt aims to provide a state of the art resource for the representation of human biology by capturing a wide range of data, precise annotations, fully traceable data provenance and a web interface which enables researchers to find and view information in a comprehensive manner. Since the introductory neXtProt publication, significant advances have been made on three main aspects: the representation of proteomics data, an extended representation of human variants and the development of an advanced search capability built around semantic technologies. These changes are presented in the current neXtProt update.


Nucleic Acids Research | 2017

The neXtProt knowledgebase on human proteins: 2017 update.

Pascale Gaudet; Pierre-André Michel; Monique Zahn-Zabal; Aurore Britan; Isabelle Cusin; Marcin Jakub Domagalski; Paula D. Duek; Alain Gateau; Anne Gleizes; Valérie Hinard; Valentine Rech de Laval; JinJin Lin; Frederic Nikitin; Mathieu Schaeffer; Daniel Teixeira; Lydie Lane; Amos Marc Bairoch

The neXtProt human protein knowledgebase (https://www.nextprot.org) continues to add new content and tools, with a focus on proteomics and genetic variation data. neXtProt now has proteomics data for over 85% of the human proteins, as well as new tools tailored to the proteomics community. Moreover, the neXtProt release 2016-08-25 includes over 8000 phenotypic observations for over 4000 variations in a number of genes involved in hereditary cancers and channelopathies. These changes are presented in the current neXtProt update. All of the neXtProt data are available via our user interface and FTP site. We also provide an API access and a SPARQL endpoint for more technical applications.


Database | 2010

OpenFluDB, a database for human and animal influenza virus

Robin Liechti; Anne Gleizes; Dmitry Kuznetsov; Lydie Bougueleret; Philippe Le Mercier; Amos Marc Bairoch; Ioannis Xenarios

Although research on influenza lasted for more than 100 years, it is still one of the most prominent diseases causing half a million human deaths every year. With the recent observation of new highly pathogenic H5N1 and H7N7 strains, and the appearance of the influenza pandemic caused by the H1N1 swine-like lineage, a collaborative effort to share observations on the evolution of this virus in both animals and humans has been established. The OpenFlu database (OpenFluDB) is a part of this collaborative effort. It contains genomic and protein sequences, as well as epidemiological data from more than 27 000 isolates. The isolate annotations include virus type, host, geographical location and experimentally tested antiviral resistance. Putative enhanced pathogenicity as well as human adaptation propensity are computed from protein sequences. Each virus isolate can be associated with the laboratories that collected, sequenced and submitted it. Several analysis tools including multiple sequence alignment, phylogenetic analysis and sequence similarity maps enable rapid and efficient mining. The contents of OpenFluDB are supplied by direct user submission, as well as by a daily automatic procedure importing data from public repositories. Additionally, a simple mechanism facilitates the export of OpenFluDB records to GenBank. This resource has been successfully used to rapidly and widely distribute the sequences collected during the recent human swine flu outbreak and also as an exchange platform during the vaccine selection procedure. Database URL: http://openflu.vital-it.ch.


Bioinformatics | 2015

The SwissLipids knowledgebase for lipid biology

Lucila Aimo; Robin Liechti; Nevila Hyka-Nouspikel; Anne Niknejad; Anne Gleizes; Lou Götz; Dmitry Kuznetsov; Fabrice David; F. Gisou van der Goot; Howard Riezman; Lydie Bougueleret; Ioannis Xenarios; Alan Bridge

Motivation: Lipids are a large and diverse group of biological molecules with roles in membrane formation, energy storage and signaling. Cellular lipidomes may contain tens of thousands of structures, a staggering degree of complexity whose significance is not yet fully understood. High-throughput mass spectrometry-based platforms provide a means to study this complexity, but the interpretation of lipidomic data and its integration with prior knowledge of lipid biology suffers from a lack of appropriate tools to manage the data and extract knowledge from it. Results: To facilitate the description and exploration of lipidomic data and its integration with prior biological knowledge, we have developed a knowledge resource for lipids and their biology—SwissLipids. SwissLipids provides curated knowledge of lipid structures and metabolism which is used to generate an in silico library of feasible lipid structures. These are arranged in a hierarchical classification that links mass spectrometry analytical outputs to all possible lipid structures, metabolic reactions and enzymes. SwissLipids provides a reference namespace for lipidomic data publication, data exploration and hypothesis generation. The current version of SwissLipids includes over 244 000 known and theoretically possible lipid structures, over 800 proteins, and curated links to published knowledge from over 620 peer-reviewed publications. We are continually updating the SwissLipids hierarchy with new lipid categories and new expert curated knowledge. Availability: SwissLipids is freely available at http://www.swisslipids.org/. Contact: [email protected] Supplementary information: Supplementary data are available at Bioinformatics online.


Database | 2014

The EMPRES-i genetic module: a novel tool linking epidemiological outbreak information and genetic characteristics of influenza viruses

Filip Claes; Dmitry Kuznetsov; Robin Liechti; Sophie Von Dobschuetz; Bao Dinh Truong; Anne Gleizes; Daniele Conversa; Alessandro Colonna; Ettore Demaio; Sabina Ramazzotto; Fairouz Larfaoui; Julio Pinto; Philippe Le Mercier; Ioannis Xenarios; Gwenaelle Dauphin

Combining epidemiological information, genetic characterization and geomapping in the analysis of influenza can contribute to a better understanding and description of influenza epidemiology and ecology, including possible virus reassortment events. Furthermore, integration of information such as agroecological farming system characteristics can provide new knowledge on risk factors of influenza emergence and spread. Integrating viral characteristics into an animal disease information system is therefore expected to provide a unique tool to trace-and-track particular virus strains; generate clade distributions and spatiotemporal clusters; screen for distribution of viruses with specific molecular markers; identify potential risk factors; and analyze or map viral characteristics related to vaccines used for control and/or prevention. For this purpose, a genetic module was developed within EMPRES-i (FAO’s global animal disease information system) linking epidemiological information from influenza events with virus characteristics and enabling combined analysis. An algorithm was developed to act as the interface between EMPRES-i disease event data and publicly available influenza virus sequences in OpenfluDB. This algorithm automatically computes potential links between outbreak event and sequences, which are subsequently manually validated by experts. Subsequently, other virus characteristics such as antiviral resistance can then be associated to outbreak data. To visualize such characteristics on a geographic map, shape files with virus characteristics to overlay on other EMPRES-i map layers (e.g. animal densities) can be generated. The genetic module allows export of associated epidemiological and sequence data for further analysis. FAO has made this tool available for scientists and policy makers. Contributions are expected from users to improve and validate the number of linked influenza events and isolate information as well as the quality of information. Possibilities to interconnect with other influenza sequence databases or to expand the genetic module to other viral diseases (e.g. foot and mouth disease) are being explored. Database OpenfluDB URL: http://openflu.vital-it.ch Database EMPRES-i URL: http://EMPRES-i.fao.org/


Human Genomics | 2018

A new bioinformatics tool to help assess the significance of BRCA1 variants

Isabelle Cusin; Daniel Teixeira; Monique Zahn-Zabal; Valentine Rech de Laval; Anne Gleizes; Valeria Viassolo; Pierre O. Chappuis; Pierre Hutter; Amos Marc Bairoch; Pascale Gaudet

BackgroundGermline pathogenic variants in the breast cancer type 1 susceptibility gene BRCA1 are associated with a 60% lifetime risk for breast and ovarian cancer. This overall risk estimate is for all BRCA1 variants; obviously, not all variants confer the same risk of developing a disease. In cancer patients, loss of BRCA1 function in tumor tissue has been associated with an increased sensitivity to platinum agents and to poly-(ADP-ribose) polymerase (PARP) inhibitors. For clinical management of both at-risk individuals and cancer patients, it would be important that each identified genetic variant be associated with clinical significance. Unfortunately for the vast majority of variants, the clinical impact is unknown. The availability of results from studies assessing the impact of variants on protein function may provide insight of crucial importance.Results and conclusionWe have collected, curated, and structured the molecular and cellular phenotypic impact of 3654 distinct BRCA1 variants. The data was modeled in triple format, using the variant as a subject, the studied function as the object, and a predicate describing the relation between the two. Each annotation is supported by a fully traceable evidence. The data was captured using standard ontologies to ensure consistency, and enhance searchability and interoperability. We have assessed the extent to which functional defects at the molecular and cellular levels correlate with the clinical interpretation of variants by ClinVar submitters. Approximately 30% of the ClinVar BRCA1 missense variants have some molecular or cellular assay available in the literature. Pathogenic variants (as assigned by ClinVar) have at least some significant functional defect in 94% of testable cases. For benign variants, 77% of ClinVar benign variants, for which neXtProt Cancer variant portal has data, shows either no or mild experimental functional defects. While this does not provide evidence for clinical interpretation of variants, it may provide some guidance for variants of unknown significance, in the absence of more reliable data.The neXtProt Cancer variant portal (https://www.nextprot.org/portals/breast-cancer) contains over 6300 observations at the molecular and/or cellular level for BRCA1 variants.


Journal of Proteome Research | 2013

neXtProt: organizing protein knowledge in the context of human proteome projects.

Pascale Gaudet; Ghislaine Argoud-Puy; Isabelle Cusin; Paula D. Duek; Olivier Evalet; Alain Gateau; Anne Gleizes; Mario Pereira; Monique Zahn-Zabal; Catherine Zwahlen; Amos Marc Bairoch; Lydie Lane


Proteomics | 2004

Industrial-scale proteomics: from liters of plasma to chemically synthesized proteins.

Keith Rose; Lydie Bougueleret; Thierry Baussant; Günter Böhm; Paolo Botti; Jacques Colinge; Isabelle Cusin; Hubert Gaertner; Anne Gleizes; Manfred Heller; Silvia Jimenez; Andrew Johnson; Martin Kussmann; Laure Menin; Christoph Menzel; Frédéric Ranno; Patricia Rodriguez-Tome; John Rogers; Cedric Saudrais; Matteo Villain; Diana Wetmore; Amos Marc Bairoch; Denise Hochstrasser


Proteomics | 2004

High-performance peptide identification by tandem mass spectrometry allows reliable automatic data processing in proteomics.

Jacques Colinge; Alexandre Masselot; Isabelle Cusin; Eve Mahe; Anne Niknejad; Ghislaine Argoud-Puy; Samia Reffas; Nassima Bederr; Anne Gleizes; Pierre‐Antoine Rey; Lydie Bougueleret

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Amos Marc Bairoch

Swiss Institute of Bioinformatics

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Isabelle Cusin

Swiss Institute of Bioinformatics

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Pascale Gaudet

Swiss Institute of Bioinformatics

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Lydie Lane

Swiss Institute of Bioinformatics

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Paula D. Duek

Swiss Institute of Bioinformatics

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Alain Gateau

Swiss Institute of Bioinformatics

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Monique Zahn-Zabal

Swiss Institute of Bioinformatics

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Alexandre Masselot

Swiss Institute of Bioinformatics

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Catherine Zwahlen

Swiss Institute of Bioinformatics

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Daniel Teixeira

Swiss Institute of Bioinformatics

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