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Dive into the research topics where Mélanie Courtot is active.

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Featured researches published by Mélanie Courtot.


Nucleic Acids Research | 2006

BioModels Database: a free, centralized database of curated, published, quantitative kinetic models of biochemical and cellular systems

Nicolas Le Novère; Benjamin J. Bornstein; Alexander Broicher; Mélanie Courtot; Marco Donizelli; Harish Dharuri; Lu Li; Herbert M. Sauro; Maria J. Schilstra; Bruce E. Shapiro; Jacky L. Snoep; Michael Hucka

BioModels Database (), part of the international initiative BioModels.net, provides access to published, peer-reviewed, quantitative models of biochemical and cellular systems. Each model is carefully curated to verify that it corresponds to the reference publication and gives the proper numerical results. Curators also annotate the components of the models with terms from controlled vocabularies and links to other relevant data resources. This allows the users to search accurately for the models they need. The models can currently be retrieved in the SBML format, and import/export facilities are being developed to extend the spectrum of formats supported by the resource.


Nature Biotechnology | 2009

The Systems Biology Graphical Notation

Nicolas Le Novère; Michael Hucka; Huaiyu Mi; Stuart L. Moodie; Falk Schreiber; Anatoly A. Sorokin; Emek Demir; Katja Wegner; Mirit I. Aladjem; Sarala M. Wimalaratne; Frank T. Bergman; Ralph Gauges; Peter Ghazal; Hideya Kawaji; Lu Li; Yukiko Matsuoka; Alice Villéger; Sarah E. Boyd; Laurence Calzone; Mélanie Courtot; Ugur Dogrusoz; Tom C. Freeman; Akira Funahashi; Samik Ghosh; Akiya Jouraku; Sohyoung Kim; Fedor A. Kolpakov; Augustin Luna; Sven Sahle; Esther Schmidt

Circuit diagrams and Unified Modeling Language diagrams are just two examples of standard visual languages that help accelerate work by promoting regularity, removing ambiguity and enabling software tool support for communication of complex information. Ironically, despite having one of the highest ratios of graphical to textual information, biology still lacks standard graphical notations. The recent deluge of biological knowledge makes addressing this deficit a pressing concern. Toward this goal, we present the Systems Biology Graphical Notation (SBGN), a visual language developed by a community of biochemists, modelers and computer scientists. SBGN consists of three complementary languages: process diagram, entity relationship diagram and activity flow diagram. Together they enable scientists to represent networks of biochemical interactions in a standard, unambiguous way. We believe that SBGN will foster efficient and accurate representation, visualization, storage, exchange and reuse of information on all kinds of biological knowledge, from gene regulation, to metabolism, to cellular signaling.


Nucleic Acids Research | 2017

CARD 2017: expansion and model-centric curation of the comprehensive antibiotic resistance database

Baofeng Jia; Amogelang R. Raphenya; Brian Alcock; Nicholas Waglechner; Peiyao Guo; Kara K. Tsang; Briony A. Lago; Biren M. Dave; Sheldon K. Pereira; Arjun N. Sharma; Sachin Doshi; Mélanie Courtot; Raymond Lo; Laura E. Williams; Jonathan G. Frye; Tariq Elsayegh; Daim Sardar; Erin L. Westman; Andrew C. Pawlowski; Timothy A. Johnson; Fiona S. L. Brinkman; Gerard D. Wright; Andrew G. McArthur

The Comprehensive Antibiotic Resistance Database (CARD; http://arpcard.mcmaster.ca) is a manually curated resource containing high quality reference data on the molecular basis of antimicrobial resistance (AMR), with an emphasis on the genes, proteins and mutations involved in AMR. CARD is ontologically structured, model centric, and spans the breadth of AMR drug classes and resistance mechanisms, including intrinsic, mutation-driven and acquired resistance. It is built upon the Antibiotic Resistance Ontology (ARO), a custom built, interconnected and hierarchical controlled vocabulary allowing advanced data sharing and organization. Its design allows the development of novel genome analysis tools, such as the Resistance Gene Identifier (RGI) for resistome prediction from raw genome sequence. Recent improvements include extensive curation of additional reference sequences and mutations, development of a unique Model Ontology and accompanying AMR detection models to power sequence analysis, new visualization tools, and expansion of the RGI for detection of emergent AMR threats. CARD curation is updated monthly based on an interplay of manual literature curation, computational text mining, and genome analysis.


Journal of Biomedical Semantics | 2010

Modeling biomedical experimental processes with OBI

Ryan R. Brinkman; Mélanie Courtot; Dirk Derom; Jennifer Fostel; Yongqun He; Phillip Lord; James Malone; Helen Parkinson; Bjoern Peters; Philippe Rocca-Serra; Alan Ruttenberg; Susanna-Assunta Sansone; Larisa N. Soldatova; Christian J. Stoeckert; Jessica A. Turner; Jie Zheng

BackgroundExperimental descriptions are typically stored as free text without using standardized terminology, creating challenges in comparison, reproduction and analysis. These difficulties impose limitations on data exchange and information retrieval.ResultsThe Ontology for Biomedical Investigations (OBI), developed as a global, cross-community effort, provides a resource that represents biomedical investigations in an explicit and integrative framework. Here we detail three real-world applications of OBI, provide detailed modeling information and explain how to use OBI.ConclusionWe demonstrate how OBI can be applied to different biomedical investigations to both facilitate interpretation of the experimental process and increase the computational processing and integration within the Semantic Web. The logical definitions of the entities involved allow computers to unambiguously understand and integrate different biological experimental processes and their relevant components.AvailabilityOBI is available at http://purl.obolibrary.org/obo/obi/2009-11-02/obi.owl


PLOS Biology | 2015

Finding Our Way through Phenotypes

Andrew R. Deans; Suzanna E. Lewis; Eva Huala; Salvatore S. Anzaldo; Michael Ashburner; James P. Balhoff; David C. Blackburn; Judith A. Blake; J. Gordon Burleigh; Bruno Chanet; Laurel Cooper; Mélanie Courtot; Sándor Csösz; Hong Cui; Wasila M. Dahdul; Sandip Das; T. Alexander Dececchi; Agnes Dettai; Rui Diogo; Robert E. Druzinsky; Michel Dumontier; Nico M. Franz; Frank Friedrich; George V. Gkoutos; Melissa Haendel; Luke J. Harmon; Terry F. Hayamizu; Yongqun He; Heather M. Hines; Nizar Ibrahim

Imagine if we could compute across phenotype data as easily as genomic data; this article calls for efforts to realize this vision and discusses the potential benefits.


Molecular Systems Biology | 2014

Controlled vocabularies and semantics in systems biology

Mélanie Courtot; Nick Juty; Christian Knüpfer; Dagmar Waltemath; Anna Zhukova; Andreas Dräger; Michel Dumontier; Andrew Finney; Martin Golebiewski; Janna Hastings; Stefan Hoops; Sarah M. Keating; Douglas B. Kell; Samuel Kerrien; James Lawson; Allyson L. Lister; James Lu; Rainer Machné; Pedro Mendes; Matthew Pocock; Nicolas Rodriguez; Alice Villéger; Darren J. Wilkinson; Sarala M. Wimalaratne; Camille Laibe; Michael Hucka; Nicolas Le Novère

The use of computational modeling to describe and analyze biological systems is at the heart of systems biology. Model structures, simulation descriptions and numerical results can be encoded in structured formats, but there is an increasing need to provide an additional semantic layer. Semantic information adds meaning to components of structured descriptions to help identify and interpret them unambiguously. Ontologies are one of the tools frequently used for this purpose. We describe here three ontologies created specifically to address the needs of the systems biology community. The Systems Biology Ontology (SBO) provides semantic information about the model components. The Kinetic Simulation Algorithm Ontology (KiSAO) supplies information about existing algorithms available for the simulation of systems biology models, their characterization and interrelationships. The Terminology for the Description of Dynamics (TEDDY) categorizes dynamical features of the simulation results and general systems behavior. The provision of semantic information extends a models longevity and facilitates its reuse. It provides useful insight into the biology of modeled processes, and may be used to make informed decisions on subsequent simulation experiments.


BMC Research Notes | 2010

OntoFox: web-based support for ontology reuse

Zuoshuang Xiang; Mélanie Courtot; Ryan R. Brinkman; Alan Ruttenberg; Yongqun He

BackgroundOntology development is a rapidly growing area of research, especially in the life sciences domain. To promote collaboration and interoperability between different projects, the OBO Foundry principles require that these ontologies be open and non-redundant, avoiding duplication of terms through the re-use of existing resources. As current options to do so present various difficulties, a new approach, MIREOT, allows specifying import of single terms. Initial implementations allow for controlled import of selected annotations and certain classes of related terms.FindingsOntoFox http://ontofox.hegroup.org/ is a web-based system that allows users to input terms, fetch selected properties, annotations, and certain classes of related terms from the source ontologies and save the results using the RDF/XML serialization of the Web Ontology Language (OWL). Compared to an initial implementation of MIREOT, OntoFox allows additional and more easily configurable options for selecting and rewriting annotation properties, and for inclusion of all or a computed subset of terms between low and top level terms. Additional methods for including related classes include a SPARQL-based ontology term retrieval algorithm that extracts terms related to a given set of signature terms and an option to extract the hierarchy rooted at a specified ontology term. OntoFoxs output can be directly imported into a developers ontology. OntoFox currently supports term retrieval from a selection of 15 ontologies accessible via SPARQL endpoints and allows users to extend this by specifying additional endpoints. An OntoFox application in the development of the Vaccine Ontology (VO) is demonstrated.ConclusionsOntoFox provides a timely publicly available service, providing different options for users to collect terms from external ontologies, making them available for reuse by import into client OWL ontologies.


Applied Ontology | 2011

MIREOT: The minimum information to reference an external ontology term

Mélanie Courtot; Frank Gibson; Allyson L. Lister; James Malone; Daniel Schober; Ryan R. Brinkman; Alan Ruttenberg

While the Web Ontology Language OWL provides a mechanism to import ontologies, this mechanism is not always suitable. Current editing tools present challenges for working with large ontologies and direct OWL imports can prove impractical for day-to-day development. Furthermore, external ontologies often undergo continuous change which can introduce conflicts when integrated with multiple efforts. Finally, importing heterogeneous ontologies in their entirety may lead to inconsistencies or unintended inferences. In this paper we propose a set of guidelines for importing required terms from an external resource into a target ontology. We describe the methodology, its implementation, present some examples of this application, and outline future work and extensions.


Briefings in Bioinformatics | 2010

BioModels.net Web Services, a free and integrated toolkit for computational modelling software

Chen Li; Mélanie Courtot; Nicolas Le Novère; Camille Laibe

Exchanging and sharing scientific results are essential for researchers in the field of computational modelling. BioModels.net defines agreed-upon standards for model curation. A fundamental one, MIRIAM (Minimum Information Requested in the Annotation of Models), standardises the annotation and curation process of quantitative models in biology. To support this standard, MIRIAM Resources maintains a set of standard data types for annotating models, and provides services for manipulating these annotations. Furthermore, BioModels.net creates controlled vocabularies, such as SBO (Systems Biology Ontology) which strictly indexes, defines and links terms used in Systems Biology. Finally, BioModels Database provides a free, centralised, publicly accessible database for storing, searching and retrieving curated and annotated computational models. Each resource provides a web interface to submit, search, retrieve and display its data. In addition, the BioModels.net team provides a set of Web Services which allows the community to programmatically access the resources. A user is then able to perform remote queries, such as retrieving a model and resolving all its MIRIAM Annotations, as well as getting the details about the associated SBO terms. These web services use established standards. Communications rely on SOAP (Simple Object Access Protocol) messages and the available queries are described in a WSDL (Web Services Description Language) file. Several libraries are provided in order to simplify the development of client software. BioModels.net Web Services make one step further for the researchers to simulate and understand the entirety of a biological system, by allowing them to retrieve biological models in their own tool, combine queries in workflows and efficiently analyse models.


PLOS ONE | 2016

The Ontology for Biomedical Investigations

Anita Bandrowski; Ryan R. Brinkman; Mathias Brochhausen; Matthew H. Brush; Bill Bug; Marcus C. Chibucos; Kevin Clancy; Mélanie Courtot; Dirk Derom; Michel Dumontier; Liju Fan; Jennifer Fostel; Gilberto Fragoso; Frank Gibson; Alejandra Gonzalez-Beltran; Melissa Haendel; Yongqun He; Mervi Heiskanen; Tina Hernandez-Boussard; Mark Jensen; Yu Lin; Allyson L. Lister; Phillip Lord; James P. Malone; Elisabetta Manduchi; Monnie McGee; Norman Morrison; James A. Overton; Helen Parkinson; Bjoern Peters

The Ontology for Biomedical Investigations (OBI) is an ontology that provides terms with precisely defined meanings to describe all aspects of how investigations in the biological and medical domains are conducted. OBI re-uses ontologies that provide a representation of biomedical knowledge from the Open Biological and Biomedical Ontologies (OBO) project and adds the ability to describe how this knowledge was derived. We here describe the state of OBI and several applications that are using it, such as adding semantic expressivity to existing databases, building data entry forms, and enabling interoperability between knowledge resources. OBI covers all phases of the investigation process, such as planning, execution and reporting. It represents information and material entities that participate in these processes, as well as roles and functions. Prior to OBI, it was not possible to use a single internally consistent resource that could be applied to multiple types of experiments for these applications. OBI has made this possible by creating terms for entities involved in biological and medical investigations and by importing parts of other biomedical ontologies such as GO, Chemical Entities of Biological Interest (ChEBI) and Phenotype Attribute and Trait Ontology (PATO) without altering their meaning. OBI is being used in a wide range of projects covering genomics, multi-omics, immunology, and catalogs of services. OBI has also spawned other ontologies (Information Artifact Ontology) and methods for importing parts of ontologies (Minimum information to reference an external ontology term (MIREOT)). The OBI project is an open cross-disciplinary collaborative effort, encompassing multiple research communities from around the globe. To date, OBI has created 2366 classes and 40 relations along with textual and formal definitions. The OBI Consortium maintains a web resource (http://obi-ontology.org) providing details on the people, policies, and issues being addressed in association with OBI. The current release of OBI is available at http://purl.obolibrary.org/obo/obi.owl.

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Ryan R. Brinkman

University of British Columbia

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Yongqun He

University of Michigan

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Bjoern Peters

La Jolla Institute for Allergy and Immunology

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Helen Parkinson

European Bioinformatics Institute

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James Malone

European Bioinformatics Institute

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