12 results on '"Hucka, Michael"'
Search Results
2. Meeting report from the fourth meeting of the Computational Modeling in Biology Network (COMBINE)
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Waltemath, Dagmar, Bergmann, Frank T., Chaouiya, Claudine, Czauderna, Tobias, Gleeson, Padraig, Goble, Carole, Golebiewski, Martin, Hucka, Michael, Juty, Nick, Krebs, Olga, Le Novère, Nicolas, Mi, Huaiyu, Moraru, Ion I., Myers, Chris J., Nickerson, David, Olivier, Brett G., Rodriguez, Nicolas, Schreiber, Falk, Smith, Lucian, Zhang, Fengkai, and Bonnet, Eric
- Published
- 2014
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3. Path2Models: large-scale generation of computational models from biochemical pathway maps
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Pedrosa Mendes, Pedro, Büchel, Finja, Rodriguez, Nicolas, Swainston, Neil, Wrzodek, Clemens, Czauderna, Tobias, Keller, Roland, Mittag, Florian, Schubert, Michael, Glont, Mihai, Golebiewski, Martin, van Iersel, Martijn, Keating, Sarah, Rall, Matthias, Wybrow, Michael, Hermjakob, Henning, Hucka, Michael, Kell, Douglas B., Müller, Wolfgang, Mendes, Pedro, Zell, Andreas, Chaouiya, Claudine, Saez-Rodriguez, Julio, Schreiber, Falk, Laibe, Camille, Dräger, Andreas, and Le Novère, Nicolas
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Source data ,Computer science ,Systems biology ,SBGN ,Machine learning ,computer.software_genre ,SBML ,03 medical and health sciences ,0302 clinical medicine ,Software ,Structural Biology ,Modelling and Simulation ,Manchester Institute of Biotechnology ,Humans ,Computer Simulation ,Molecular Biology ,030304 developmental biology ,0303 health sciences ,Computational model ,Mathematical model ,business.industry ,Systems Biology ,Applied Mathematics ,BioModels Database ,MetaCyc ,Genomics ,ResearchInstitutes_Networks_Beacons/manchester_institute_of_biotechnology ,Modular rate law ,Constraint based models ,Logical models ,Computer Science Applications ,Kinetics ,Modeling and Simulation ,Modular rate law, Constraint based models, Logical models, SBGN, SBML ,Artificial intelligence ,ddc:004 ,business ,computer ,030217 neurology & neurosurgery ,Metabolic Networks and Pathways ,Research Article - Abstract
Background Systems biology projects and omics technologies have led to a growing number of biochemical pathway models and reconstructions. However, the majority of these models are still created de novo, based on literature mining and the manual processing of pathway data. Results To increase the efficiency of model creation, the Path2Models project has automatically generated mathematical models from pathway representations using a suite of freely available software. Data sources include KEGG, BioCarta, MetaCyc and SABIO-RK. Depending on the source data, three types of models are provided: kinetic, logical and constraint-based. Models from over 2 600 organisms are encoded consistently in SBML, and are made freely available through BioModels Database at http://www.ebi.ac.uk/biomodels-main/path2models. Each model contains the list of participants, their interactions, the relevant mathematical constructs, and initial parameter values. Most models are also available as easy-to-understand graphical SBGN maps. Conclusions To date, the project has resulted in more than 140 000 freely available models. Such a resource can tremendously accelerate the development of mathematical models by providing initial starting models for simulation and analysis, which can be subsequently curated and further parameterized.
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- 2013
4. SBMLPkgSpec: a LaTeX style file for SBML package specification documents.
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Hucka, Michael
- Abstract
Objective: The Systems Biology Markup Language (SBML) is a popular open format for storing and exchanging computational models in biology. The definition of SBML is captured in formal specification documents. SBMLPkgSpec is a LaTeX document style intended to fill the need for a standard format for writing such specification documents. Results: Specification documents for SBML Level 3 extensions (known as packages in SBML) are made more uniform with the use of a standard template. SBMLPkgSpec is a LaTeX class that provides a document framework for SBML Level 3 package specifications, to simplify the work of document authors while improving the overall quality of the family of SBML specifications. [ABSTRACT FROM AUTHOR]
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- 2017
- Full Text
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5. COMBINE archive and OMEX format: one file to share all information to reproduce a modeling project.
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Bergmann, Frank T., Adams, Richard, Moodie, Stuart, Cooper, Jonathan, Glont, Mihai, Golebiewski, Martin, Hucka, Michael, Laibe, Camille, Miller, Andrew K., Nickerson, David P., Olivier, Brett G., Rodriguez, Nicolas, Sauro, Herbert M., Scharm, Martin, Soiland-Reyes, Stian, Waltemath, Dagmar, Yvon, Florent, and Le Novère, Nicolas
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COMPUTER file sharing ,METADATA ,ARCHIVES ,COMPUTATIONAL biology ,COMPUTER software ,INFORMATION sharing - Abstract
Background With the ever increasing use of computational models in the biosciences, the need to share models and reproduce the results of published studies efficiently and easily is becoming more important. To this end, various standards have been proposed that can be used to describe models, simulations, data or other essential information in a consistent fashion. These constitute various separate components required to reproduce a given published scientific result. Results We describe the Open Modeling EXchange format (OMEX). Together with the use of other standard formats from the Computational Modeling in Biology Network (COMBINE), OMEX is the basis of the COMBINE Archive, a single file that supports the exchange of all the information necessary for a modeling and simulation experiment in biology. An OMEX file is a ZIP container that includes a manifest file, listing the content of the archive, an optional metadata file adding information about the archive and its content, and the files describing the model. The content of a COMBINE Archive consists of files encoded in COMBINE standards whenever possible, but may include additional files defined by an Internet Media Type. Several tools that support the COMBINE Archive are available, either as independent libraries or embedded in modeling software. Conclusions The COMBINE Archive facilitates the reproduction of modeling and simulation experiments in biology by embedding all the relevant information in one file. Having all the information stored and exchanged at once also helps in building activity logs and audit trails. We anticipate that the COMBINE Archive will become a significant help for modellers, as the domain moves to larger, more complex experiments such as multi-scale models of organs, digital organisms, and bioengineering. [ABSTRACT FROM AUTHOR]
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- 2014
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6. Path2Models: large-scale generation of computational models from biochemical pathway maps.
- Author
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Büchel, Finja, Rodriguez, Nicolas, Swainston, Neil, Wrzodek, Clemens, Czauderna, Tobias, Keller, Roland, Mittag, Florian, Schubert, Michael, Glont, Mihai, Golebiewski, Martin, van Iersel, Martijn, Keating, Sarah, Rall, Matthias, Wybrow, Michael, Hermjakob, Henning, Hucka, Michael, Kell, Douglas B., Müller, Wolfgang, Mendes, Pedro, and Zell, Andreas
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MATHEMATICAL functions ,MATHEMATICAL statistics ,BIOLOGICAL networks ,SYSTEMS biology ,COMPUTATIONAL biology - Abstract
Background Systems biology projects and omics technologies have led to a growing number of biochemical pathway models and reconstructions. However, the majority of these models are still created de novo, based on literature mining and the manual processing of pathway data. Results To increase the efficiency of model creation, the Path2Models project has automatically generated mathematical models from pathway representations using a suite of freely available software. Data sources include KEGG, BioCarta, MetaCyc and SABIO-RK. Depending on the source data, three types of models are provided: kinetic, logical and constraint-based. Models from over 2 600 organisms are encoded consistently in SBML, and are made freely available through BioModels Database at http://www.ebi.ac.uk/biomodelsmain/ path2models. Each model contains the list of participants, their interactions, the relevant mathematical constructs, and initial parameter values. Most models are also available as easyto- understand graphical SBGN maps. Conclusions To date, the project has resulted in more than 140 000 freely available models. Such a resource can tremendously accelerate the development of mathematical models by providing initial starting models for simulation and analysis, which can be subsequently curated and further parameterized. [ABSTRACT FROM AUTHOR]
- Published
- 2013
- Full Text
- View/download PDF
7. SBML qualitative models: a model representation format and infrastructure to foster interactions between qualitative modelling formalisms and tools.
- Author
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Chaouiya, Claudine, Berenguier, Duncan, Keating, Sarah M., Naldi, Aurelien, Van Iersel, Martijn P., Rodriguez, Nicolas, Dräger, Andreas, Büchel, Finja, Cokelaer, Thomas, Kowal, Bryan, Wicks, Benjamin, Gonçalves, Emanuel, Dorier, Julien, Page, Michel, Monteiro, Pedro T., Kamp, Axel von, Xenarios, Ioannis, Jong, Hidde de, Hucka, Michael, and Klamt, Steffen
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QUALITATIVE research ,SYSTEMS biology ,PROGRAMMING languages ,INTERNETWORKING ,ALGORITHMS - Abstract
Background Qualitative frameworks, especially those based on the logical discrete formalism, are increasingly used to model regulatory and signalling networks. A major advantage of these frameworks is that they do not require precise quantitative data, and that they are well-suited for studies of large networks. While numerous groups have developed specific computational tools that provide original methods to analyse qualitative models, a standard format to exchange qualitative models has been missing. Results We present the Systems Biology Markup Language (SBML) Qualitative Models Package ("qual"), an extension of the SBML Level 3 standard designed for computer representation of qualitative models of biological networks. We demonstrate the interoperability of models via SBML qual through the analysis of a specific signalling network by three independent software tools. Furthermore, the collective effort to define the SBML qual format paved the way for the development of LogicalModel, an open-source model library, which will facilitate the adoption of the format as well as the collaborative development of algorithms to analyse qualitative models. Conclusion SBML qual allows the exchange of qualitative models among a number of complementary software tools. SBML qual has the potential to promote collaborative work on the development of novel computational approaches, as well as on the specification and the analysis of comprehensive qualitative models of regulatory and signalling networks. [ABSTRACT FROM AUTHOR]
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- 2013
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8. BioModels Database: An enhanced, curated andannotated resource for published quantitativekinetic models.
- Author
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Chen Li, Donizelli, Marco, Rodriguez, Nicolas, Dharuri, Harish, Endler, Lukas, Chelliah, Vijayalakshmi, Lu Li, Enuo He, Henry, Arnaud, Stefan, Melanie I., Snoep, Jacky L., Hucka, Michael., Le Novère1, Nicolas, and Laibe, Camille
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DATABASES ,DIGITAL resources in medicine ,BIOCHEMISTRY ,COMPUTER input-output equipment ,SYSTEMS biology - Abstract
Background: Quantitative models of biochemical and cellular systems are used to answer a variety of questions in the biological sciences. The number of published quantitative models is growing steadily thanks to increasing interest in the use of models as well as the development of improved software systems and the availability of better, cheaper computer hardware. To maximise the benefits of this growing body of models, the field needs centralised model repositories that will encourage, facilitate and promote model dissemination and reuse. Ideally, the models stored in these repositories should be extensively tested and encoded in community-supported and standardised formats. In addition, the models and their components should be cross-referenced with other resources in order to allow their unambiguous identification. Description: BioModels Database http://www.ebi.ac.uk/biomodels/ is aimed at addressing exactly these needs. It is a freely-accessible online resource for storing, viewing, retrieving, and analysing published, peer-reviewed quantitative models of biochemical and cellular systems. The structure and behaviour of each simulation model distributed by BioModels Database are thoroughly checked; in addition, model elements are annotated with terms from controlled vocabularies as well as linked to relevant data resources. Models can be examined online or downloaded in various formats. Reaction network diagrams generated from the models are also available in several formats. BioModels Database also provides features such as online simulation and the extraction of components from large scale models into smaller submodels. Finally, the system provides a range of web services that external software systems can use to access up-to-date data from the database. Conclusions: BioModels Database has become a recognised reference resource for systems biology. It is being used by the community in a variety of ways; for example, it is used to benchmark different simulation systems, and to study the clustering of models based upon their annotations. Model deposition to the database today is advised by several publishers of scientific journals. The models in BioModels Database are freely distributed and reusable; the underlying software infrastructure is also available from SourceForge https://sourceforge.net/projects/biomodels/ under the GNU General Public License. [ABSTRACT FROM AUTHOR]
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- 2010
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9. Software that goes with the flow in systems biology.
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Hucka, Michael and Le Novère, Nicolas
- Subjects
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BIOINFORMATICS , *SYSTEMS biology , *WORKFLOW software , *AUTOMATION , *COMPUTERS in medicine - Abstract
A recent article in BMC Bioinformatics describes new advances in workflow systems for computational modeling in systems biology. Such systems can accelerate, and improve the consistency of, modeling through automation not only at the simulation and results-production stages, but also at the model-generation stage. Their work is a harbinger of the next generation of more powerful software for systems biologists. [ABSTRACT FROM AUTHOR]
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- 2010
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10. Reproducible computational biology experiments with SED-ML--the Simulation Experiment Description Markup Language.
- Author
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Waltemath D, Adams R, Bergmann FT, Hucka M, Kolpakov F, Miller AK, Moraru II, Nickerson D, Sahle S, Snoep JL, and Le Novère N
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- Reproducibility of Results, Computational Biology methods, Computer Simulation, Programming Languages, Software
- Abstract
Background: The increasing use of computational simulation experiments to inform modern biological research creates new challenges to annotate, archive, share and reproduce such experiments. The recently published Minimum Information About a Simulation Experiment (MIASE) proposes a minimal set of information that should be provided to allow the reproduction of simulation experiments among users and software tools., Results: In this article, we present the Simulation Experiment Description Markup Language (SED-ML). SED-ML encodes in a computer-readable exchange format the information required by MIASE to enable reproduction of simulation experiments. It has been developed as a community project and it is defined in a detailed technical specification and additionally provides an XML schema. The version of SED-ML described in this publication is Level 1 Version 1. It covers the description of the most frequent type of simulation experiments in the area, namely time course simulations. SED-ML documents specify which models to use in an experiment, modifications to apply on the models before using them, which simulation procedures to run on each model, what analysis results to output, and how the results should be presented. These descriptions are independent of the underlying model implementation. SED-ML is a software-independent format for encoding the description of simulation experiments; it is not specific to particular simulation tools. Here, we demonstrate that with the growing software support for SED-ML we can effectively exchange executable simulation descriptions., Conclusions: With SED-ML, software can exchange simulation experiment descriptions, enabling the validation and reuse of simulation experiments in different tools. Authors of papers reporting simulation experiments can make their simulation protocols available for other scientists to reproduce the results. Because SED-ML is agnostic about exact modeling language(s) used, experiments covering models from different fields of research can be accurately described and combined.
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- 2011
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11. Meeting report from the first meetings of the Computational Modeling in Biology Network (COMBINE).
- Author
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Le Novère N, Hucka M, Anwar N, Bader GD, Demir E, Moodie S, and Sorokin A
- Abstract
The Computational Modeling in Biology Network (COMBINE), is an initiative to coordinate the development of the various community standards and formats in computational systems biology and related fields. This report summarizes the activities pursued at the first annual COMBINE meeting held in Edinburgh on October 6-9 2010 and the first HARMONY hackathon, held in New York on April 18-22 2011. The first of those meetings hosted 81 attendees. Discussions covered both official COMBINE standards-(BioPAX, SBGN and SBML), as well as emerging efforts and interoperability between different formats. The second meeting, oriented towards software developers, welcomed 59 participants and witnessed many technical discussions, development of improved standards support in community software systems and conversion between the standards. Both meetings were resounding successes and showed that the field is now mature enough to develop representation formats and related standards in a coordinated manner.
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- 2011
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12. BioModels Database: An enhanced, curated and annotated resource for published quantitative kinetic models.
- Author
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Li C, Donizelli M, Rodriguez N, Dharuri H, Endler L, Chelliah V, Li L, He E, Henry A, Stefan MI, Snoep JL, Hucka M, Le Novère N, and Laibe C
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- Internet, Kinetics, Biochemical Phenomena physiology, Databases, Factual, Models, Biological, Systems Biology methods
- Abstract
Background: Quantitative models of biochemical and cellular systems are used to answer a variety of questions in the biological sciences. The number of published quantitative models is growing steadily thanks to increasing interest in the use of models as well as the development of improved software systems and the availability of better, cheaper computer hardware. To maximise the benefits of this growing body of models, the field needs centralised model repositories that will encourage, facilitate and promote model dissemination and reuse. Ideally, the models stored in these repositories should be extensively tested and encoded in community-supported and standardised formats. In addition, the models and their components should be cross-referenced with other resources in order to allow their unambiguous identification., Description: BioModels Database http://www.ebi.ac.uk/biomodels/ is aimed at addressing exactly these needs. It is a freely-accessible online resource for storing, viewing, retrieving, and analysing published, peer-reviewed quantitative models of biochemical and cellular systems. The structure and behaviour of each simulation model distributed by BioModels Database are thoroughly checked; in addition, model elements are annotated with terms from controlled vocabularies as well as linked to relevant data resources. Models can be examined online or downloaded in various formats. Reaction network diagrams generated from the models are also available in several formats. BioModels Database also provides features such as online simulation and the extraction of components from large scale models into smaller submodels. Finally, the system provides a range of web services that external software systems can use to access up-to-date data from the database., Conclusions: BioModels Database has become a recognised reference resource for systems biology. It is being used by the community in a variety of ways; for example, it is used to benchmark different simulation systems, and to study the clustering of models based upon their annotations. Model deposition to the database today is advised by several publishers of scientific journals. The models in BioModels Database are freely distributed and reusable; the underlying software infrastructure is also available from SourceForge https://sourceforge.net/projects/biomodels/ under the GNU General Public License.
- Published
- 2010
- Full Text
- View/download PDF
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