10 results on '"Musen, Mark A."'
Search Results
2. Data Breaches of Protected Health Information in the United States.
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Liu, Vincent, Musen, Mark A., and Chou, Timothy
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COMPUTER system failures , *DATA protection , *ELECTRONIC health records , *DATABASES , *HEALTH Insurance Portability & Accountability Act - Abstract
The article focuses on the increase in the number of data breaches of protected health information in the U.S. Topics mentioned include evaluation of an online database of the U.S. Department of Health and Human Services on data breaches of unencrypted protected health information, an overview of the Health Insurance Portability and accountability Act, and the need to implement strategies to mitigate health care data breaches.
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- 2015
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3. Ten years of Applied Ontology.
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Guarino, Nicola and Musen, Mark A.
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ONTOLOGIES (Information retrieval) , *INTERNET of things , *DATA structures - Abstract
An introduction is presented in which the editor discusses various reports within the issue on topics including ontologies, the use of ontologies in the Internet of Things, and applied ontology.
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- 2015
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4. CEDAR OnDemand: a browser extension to generate ontology-based scientific metadata.
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Bukhari, Syed Ahmad Chan, Martínez-Romero, Marcos, O' Connor, Martin J., Egyedi, Attila L., Willrett, Debra, Graybeal, John, Musen, Mark A., Cheung, Kei-Hoi, and Kleinstein, Steven H.
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METADATA , *STANDARDIZATION , *ARCHIVES , *HTML (Document markup language) , *DOCUMENT type definitions - Abstract
Background: Public biomedical data repositories often provide web-based interfaces to collect experimental metadata. However, these interfaces typically reflect the ad hoc metadata specification practices of the associated repositories, leading to a lack of standardization in the collected metadata. This lack of standardization limits the ability of the source datasets to be broadly discovered, reused, and integrated with other datasets. To increase reuse, discoverability, and reproducibility of the described experiments, datasets should be appropriately annotated by using agreed-upon terms, ideally from ontologies or other controlled term sources. Results: This work presents "CEDAR OnDemand", a browser extension powered by the NCBO (National Center for Biomedical Ontology) BioPortal that enables users to seamlessly enter ontology-based metadata through existing web forms native to individual repositories. CEDAR OnDemand analyzes the web page contents to identify the text input fields and associate them with relevant ontologies which are recommended automatically based upon input fields' labels (using the NCBO ontology recommender) and a pre-defined list of ontologies. These field-specific ontologies are used for controlling metadata entry. CEDAR OnDemand works for any web form designed in the HTML format. We demonstrate how CEDAR OnDemand works through the NCBI (National Center for Biotechnology Information) BioSample web-based metadata entry. Conclusion: CEDAR OnDemand helps lower the barrier of incorporating ontologies into standardized metadata entry for public data repositories. CEDAR OnDemand is available freely on the Google Chrome store
https://chrome.google.com/webstore/search/CEDAROnDemand [ABSTRACT FROM AUTHOR]- Published
- 2018
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5. AgroPortal: A vocabulary and ontology repository for agronomy.
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Emonet, Vincent, Toulet, Anne, Jonquet, Clément, Larmande, Pierre, Graybeal, John, Musen, Mark A., Arnaud, Elizabeth, Laporte, Marie-Angélique, Aubin, Sophie, Dzalé Yeumo, Esther, and Pesce, Valeria
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ONTOLOGIES (Information retrieval) , *AGRONOMY , *LIBRARY storage centers - Abstract
Many vocabularies and ontologies are produced to represent and annotate agronomic data. However, those ontologies are spread out, in different formats, of different size, with different structures and from overlapping domains. Therefore, there is need for a common platform to receive and host them, align them, and enabling their use in agro-informatics applications. By reusing the National Center for Biomedical Ontologies (NCBO) BioPortal technology, we have designed AgroPortal, an ontology repository for the agronomy domain. The AgroPortal project re-uses the biomedical domain’s semantic tools and insights to serve agronomy, but also food, plant, and biodiversity sciences. We offer a portal that features ontology hosting, search, versioning, visualization, comment, and recommendation; enables semantic annotation; stores and exploits ontology alignments; and enables interoperation with the semantic web. The AgroPortal specifically satisfies requirements of the agronomy community in terms of ontology formats (e.g., SKOS vocabularies and trait dictionaries) and supported features (offering detailed metadata and advanced annotation capabilities). In this paper, we present our platform’s content and features, including the additions to the original technology, as well as preliminary outputs of five driving agronomic use cases that participated in the design and orientation of the project to anchor it in the community. By building on the experience and existing technology acquired from the biomedical domain, we can present in AgroPortal a robust and feature-rich repository of great value for the agronomic domain. [ABSTRACT FROM AUTHOR]
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- 2018
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6. An ontology-driven tool for structured data acquisition using Web forms.
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Gonçalves, Rafael S., Tu, Samson W., Nyulas, Csongor I., Tierney, Michael J., and Musen, Mark A.
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DATA acquisition systems , *MEDICINE , *ONLINE information services - Abstract
Background: Structured data acquisition is a common task that is widely performed in biomedicine. However, current solutions for this task are far from providing a means to structure data in such a way that it can be automatically employed in decision making (e.g., in our example application domain of clinical functional assessment, for determining eligibility for disability benefits) based on conclusions derived from acquired data (e.g., assessment of impaired motor function). To use data in these settings, we need it structured in a way that can be exploited by automated reasoning systems, for instance, in the Web Ontology Language (OWL); the de facto ontology language for the Web. Results: We tackle the problem of generating Web-based assessment forms from OWL ontologies, and aggregating input gathered through these forms as an ontology of "semantically-enriched" form data that can be queried using an RDF query language, such as SPARQL. We developed an ontology-based structured data acquisition system, which we present through its specific application to the clinical functional assessment domain. We found that data gathered through our system is highly amenable to automatic analysis using queries. Conclusions: We demonstrated how ontologies can be used to help structuring Web-based forms and to semantically enrich the data elements of the acquired structured data. The ontologies associated with the enriched data elements enable automated inferences and provide a rich vocabulary for performing queries. [ABSTRACT FROM AUTHOR]
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- 2017
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7. NCBO Ontology Recommender 2.0: an enhanced approach for biomedical ontology recommendation.
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Martínez-Romero, Marcos, Jonquet, Clement, O'connor, Martin J., Graybeal, John, Pazos, Alejandro, and Musen, Mark A.
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ONTOLOGIES (Information retrieval) , *DATA integration , *SEMANTIC Web , *COMPUTERS in medicine , *INTERNETWORKING - Abstract
Background: Ontologies and controlled terminologies have become increasingly important in biomedical research. Researchers use ontologies to annotate their data with ontology terms, enabling better data integration and interoperability across disparate datasets. However, the number, variety and complexity of current biomedical ontologies make it cumbersome for researchers to determine which ones to reuse for their specific needs. To overcome this problem, in 2010 the National Center for Biomedical Ontology (NCBO) released the Ontology Recommender, which is a service that receives a biomedical text corpus or a list of keywords and suggests ontologies appropriate for referencing the indicated terms. Methods: We developed a new version of the NCBO Ontology Recommender. Called Ontology Recommender 2.0, it uses a novel recommendation approach that evaluates the relevance of an ontology to biomedical text data according to four different criteria: (1) the extent to which the ontology covers the input data; (2) the acceptance of the ontology in the biomedical community; (3) the level of detail of the ontology classes that cover the input data; and (4) the specialization of the ontology to the domain of the input data. Results: Our evaluation shows that the enhanced recommender provides higher quality suggestions than the original approach, providing better coverage of the input data, more detailed information about their concepts, increased specialization for the domain of the input data, and greater acceptance and use in the community. In addition, it provides users with more explanatory information, along with suggestions of not only individual ontologies but also groups of ontologies to use together. It also can be customized to fit the needs of different ontology recommendation scenarios. Conclusions: Ontology Recommender 2.0 suggests relevant ontologies for annotating biomedical text data. It combines the strengths of its predecessor with a range of adjustments and new features that improve its reliability and usefulness. Ontology Recommender 2.0 recommends over 500 biomedical ontologies from the NCBO BioPortal platform, where it is openly available (both via the user interface at http://bioportal.bioontology.org/recommender, and via a Web service API). [ABSTRACT FROM AUTHOR]
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- 2017
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8. How to apply Markov chains for modeling sequential edit patterns in collaborative ontology-engineering projects.
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Walk, Simon, Singer, Philipp, Strohmaier, Markus, Helic, Denis, Noy, Natalya F., and Musen, Mark A.
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MARKOV processes , *ONTOLOGY , *USER interfaces , *PROJECT managers , *COMPUTATIONAL complexity - Abstract
With the growing popularity of large-scale collaborative ontology-engineering projects, such as the creation of the 11th revision of the International Classification of Diseases, we need new methods and insights to help project- and community-managers to cope with the constantly growing complexity of such projects. In this paper, we present a novel application of Markov chains to model sequential usage patterns that can be found in the change-logs of collaborative ontology-engineering projects. We provide a detailed presentation of the analysis process, describing all the required steps that are necessary to apply and determine the best fitting Markov chain model. Amongst others, the model and results allow us to identify structural properties and regularities as well as predict future actions based on usage sequences. We are specifically interested in determining the appropriate Markov chain orders which postulate on how many previous actions future ones depend on. To demonstrate the practical usefulness of the extracted Markov chains we conduct sequential pattern analyses on a large-scale collaborative ontology-engineering dataset, the International Classification of Diseases in its 11th revision. To further expand on the usefulness of the presented analysis, we show that the collected sequential patterns provide potentially actionable information for user-interface designers, ontology-engineering tool developers and project-managers to monitor, coordinate and dynamically adapt to the natural development processes that occur when collaboratively engineering an ontology. We hope that presented work will spur a new line of ontology-development tools, evaluation-techniques and new insights, further taking the interactive nature of the collaborative ontology-engineering process into consideration. [ABSTRACT FROM AUTHOR]
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- 2015
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9. Using association rule mining and ontologies to generate metadata recommendations from multiple biomedical databases.
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Martínez-Romero, Marcos, O'Connor, Martin J, Egyedi, Attila L, Willrett, Debra, Hardi, Josef, Graybeal, John, and Musen, Mark A
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ASSOCIATION rule mining , *ONTOLOGIES (Information retrieval) , *METADATA - Abstract
Metadata—the machine-readable descriptions of the data—are increasingly seen as crucial for describing the vast array of biomedical datasets that are currently being deposited in public repositories. While most public repositories have firm requirements that metadata must accompany submitted datasets, the quality of those metadata is generally very poor. A key problem is that the typical metadata acquisition process is onerous and time consuming, with little interactive guidance or assistance provided to users. Secondary problems include the lack of validation and sparse use of standardized terms or ontologies when authoring metadata. There is a pressing need for improvements to the metadata acquisition process that will help users to enter metadata quickly and accurately. In this paper, we outline a recommendation system for metadata that aims to address this challenge. Our approach uses association rule mining to uncover hidden associations among metadata values and to represent them in the form of association rules. These rules are then used to present users with real-time recommendations when authoring metadata. The novelties of our method are that it is able to combine analyses of metadata from multiple repositories when generating recommendations and can enhance those recommendations by aligning them with ontology terms. We implemented our approach as a service integrated into the CEDAR Workbench metadata authoring platform, and evaluated it using metadata from two public biomedical repositories: US-based National Center for Biotechnology Information BioSample and European Bioinformatics Institute BioSamples. The results show that our approach is able to use analyses of previously entered metadata coupled with ontology-based mappings to present users with accurate recommendations when authoring metadata. [ABSTRACT FROM AUTHOR]
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- 2019
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10. WebProtégé: a collaborative Web-based platform for editing biomedical ontologies.
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Horridge, Matthew, Tudorache, Tania, Nuylas, Csongor, Vendetti, Jennifer, Noy, Natalya F., and Musen, Mark A.
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MEDICAL research , *WEB-based user interfaces , *BIOINFORMATICS , *ONTOLOGY , *METADATA - Abstract
Summary: WebProtégé is an open-source Web application for editing OWL 2 ontologies. It contains several features to aid collaboration, including support for the discussion of issues, change notification and revision-based change tracking. WebProtégé also features a simple user interface, which is geared towards editing the kinds of class descriptions and annotations that are prevalent throughout biomedical ontologies. Moreover, it is possible to configure the user interface using views that are optimized for editing Open Biomedical Ontology (OBO) class descriptions and metadata. Some of these views are shown in the Supplementary Material and can be seen in WebProtégé itself by configuring the project as an OBO project.Availability and implementation: WebProtégé is freely available for use on the Web at http://webprotege.stanford.edu. It is implemented in Java and JavaScript using the OWL API and the Google Web Toolkit. All major browsers are supported. For users who do not wish to host their ontologies on the Stanford servers, WebProtégé is available as a Web app that can be run locally using a Servlet container such as Tomcat. Binaries, source code and documentation are available under an open-source license at http://protegewiki.stanford.edu/wiki/WebProtege.Contact: matthew.horridge@stanford.eduSupplementary information: Supplementary data are available at Bioinformatics online. [ABSTRACT FROM PUBLISHER]
- Published
- 2014
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