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Featured researches published by Isabelle Cusin.


Nucleic Acids Research | 2012

The UniProt-GO Annotation database in 2011

Emily Dimmer; Rachael P. Huntley; Yasmin Alam-Faruque; Tony Sawford; Claire O'Donovan; María Martín; Benoit Bely; Paul Browne; Wei Mun Chan; Ruth Eberhardt; Michael Gardner; Kati Laiho; D Legge; Michele Magrane; Klemens Pichler; Diego Poggioli; Harminder Sehra; Andrea H. Auchincloss; Kristian B. Axelsen; Marie-Claude Blatter; Emmanuel Boutet; Silvia Braconi-Quintaje; Lionel Breuza; Alan Bridge; Elizabeth Coudert; Anne Estreicher; L Famiglietti; Serenella Ferro-Rojas; Marc Feuermann; Arnaud Gos

The GO annotation dataset provided by the UniProt Consortium (GOA: http://www.ebi.ac.uk/GOA) is a comprehensive set of evidenced-based associations between terms from the Gene Ontology resource and UniProtKB proteins. Currently supplying over 100 million annotations to 11 million proteins in more than 360u2009000 taxa, this resource has increased 2-fold over the last 2u2009years and has benefited from a wealth of checks to improve annotation correctness and consistency as well as now supplying a greater information content enabled by GO Consortium annotation format developments. Detailed, manual GO annotations obtained from the curation of peer-reviewed papers are directly contributed by all UniProt curators and supplemented with manual and electronic annotations from 36 model organism and domain-focused scientific resources. The inclusion of high-quality, automatic annotation predictions ensures the UniProt GO annotation dataset supplies functional information to a wide range of proteins, including those from poorly characterized, non-model organism species. UniProt GO annotations are freely available in a range of formats accessible by both file downloads and web-based views. In addition, the introduction of a new, normalized file format in 2010 has made for easier handling of the complete UniProt-GOA data set.


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.


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

About 5000 (25%) of the ~20400 human protein-coding genes currently lack any experimental evidence at the protein level. For many others, there is only little information relative to their abundance, distribution, subcellular localization, interactions, or cellular functions. The aim of the HUPO Human Proteome Project (HPP, www.thehpp.org ) is to collect this information for every human protein. HPP is based on three major pillars: mass spectrometry (MS), antibody/affinity capture reagents (Ab), and bioinformatics-driven knowledge base (KB). To meet this objective, the Chromosome-Centric Human Proteome Project (C-HPP) proposes to build this catalog chromosome-by-chromosome ( www.c-hpp.org ) by focusing primarily on proteins that currently lack MS evidence or Ab detection. These are termed missing proteins by the HPP consortium. The lack of observation of a protein can be due to various factors including incorrect and incomplete gene annotation, low or restricted expression, or instability. neXtProt ( www.nextprot.org ) is a new web-based knowledge platform specific for human proteins that aims to complement UniProtKB/Swiss-Prot ( www.uniprot.org ) with detailed information obtained from carefully selected high-throughput experiments on genomic variation, post-translational modifications, as well as protein expression in tissues and cells. This article describes how neXtProt contributes to prioritize C-HPP efforts and integrates C-HPP results with other research efforts to create a complete human proteome catalog.


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.


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.


Database | 2016

neXtA5: accelerating annotation of articles via automated approaches in neXtProt

Luc Mottin; Julien Gobeill; Emilie Pasche; Pierre-André Michel; Isabelle Cusin; Pascale Gaudet; Patrick Ruch

The rapid increase in the number of published articles poses a challenge for curated databases to remain up-to-date. To help the scientific community and database curators deal with this issue, we have developed an application, neXtA5, which prioritizes the literature for specific curation requirements. Our system, neXtA5, is a curation service composed of three main elements. The first component is a named-entity recognition module, which annotates MEDLINE over some predefined axes. This report focuses on three axes: Diseases, the Molecular Function and Biological Process sub-ontologies of the Gene Ontology (GO). The automatic annotations are then stored in a local database, BioMed, for each annotation axis. Additional entities such as species and chemical compounds are also identified. The second component is an existing search engine, which retrieves the most relevant MEDLINE records for any given query. The third component uses the content of BioMed to generate an axis-specific ranking, which takes into account the density of named-entities as stored in the Biomed database. The two ranked lists are ultimately merged using a linear combination, which has been specifically tuned to support the annotation of each axis. The fine-tuning of the coefficients is formally reported for each axis-driven search. Compared with PubMed, which is the system used by most curators, the improvement is the following:u2009+231% for Diseases,u2009+236% for Molecular Functions andu2009+3153% for Biological Process when measuring the precision of the top-returned PMID (P0 or mean reciprocal rank). The current search methods significantly improve the search effectiveness of curators for three important curation axes. Further experiments are being performed to extend the curation types, in particular protein–protein interactions, which require specific relationship extraction capabilities. In parallel, user-friendly interfaces powered with a set of JSON web services are currently being implemented into the neXtProt annotation pipeline. Available on: http://babar.unige.ch:8082/neXtA5 Database URL: http://babar.unige.ch:8082/neXtA5/fetcher.jsp


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


Proteomics | 2004

In vitro and in silico processes to identify differentially expressed proteins

Nadia Allet; Nicolas Barrillat; Thierry Baussant; Celia Boiteau; Paolo Botti; Lydie Bougueleret; Nicolas Budin; Denis Canet; Stéphanie Carraud; Diego Chiappe; Nicolas Christmann; Jacques Colinge; Isabelle Cusin; Nicolas Dafflon; Benoît Depresle; Irène Fasso; Pascal Frauchiger; Hubert Gaertner; Anne Gleizes; Eduardo Gonzalez‐Couto; Catherine Jeandenans; Abderrahim Karmime; Thomas Kowall; Sophie Lagache; Eve Mahe; Alexandre Masselot; Hassan Mattou; Marc Moniatte; Anne Niknejad; Marianne Paolini

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Anne Niknejad

European Bioinformatics Institute

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Anne Gleizes

Swiss Institute of Bioinformatics

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Amos Marc Bairoch

Swiss Institute of Bioinformatics

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Pascale Gaudet

Swiss Institute of Bioinformatics

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Alain Gateau

Swiss Institute of Bioinformatics

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Lydie Lane

Swiss Institute of Bioinformatics

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