| Ontology-based automatic generation of computerized cognitive exercises. | |
| | |
MedLine Citation:
|
PMID: 21893853 Owner: NLM Status: In-Data-Review |
Abstract/OtherAbstract:
|
Computer-based approaches can add great value to the traditional paper-based approaches for cognitive rehabilitation. The management of a big amount of stimuli and the use of multimedia features permits to improve the patient's involvement and to reuse and recombine them to create new exercises, whose difficulty level should be adapted to the patient's performance. This work proposes an ontological organization of the stimuli, to support the automatic generation of new exercises, tailored on the patient's preferences and skills, and its integration into a commercial cognitive rehabilitation tool. The possibilities offered by this approach are presented with the help of real examples. |
| | |
Authors:
|
Giorgio Leonardi; Silvia Panzarasa; Silvana Quaglini |
Related Documents
:
|
19077743 - The effect of resistive exercise rest interval on hormonal response, strength, and hype... 21273913 - Effects of aging and training status on ventilatory response during incremental cycling... 3953433 - Quantitative thallium imaging findings in patients with normal coronary angiographic fi... |
Publication Detail:
|
Type: Journal Article |
Journal Detail:
|
Title: Studies in health technology and informatics Volume: 169 ISSN: 0926-9630 ISO Abbreviation: Stud Health Technol Inform Publication Date: 2011 |
Date Detail:
|
Created Date: 2011-09-06 Completed Date: - Revised Date: - |
Medline Journal Info:
|
Nlm Unique ID: 9214582 Medline TA: Stud Health Technol Inform Country: Netherlands |
Other Details:
|
Languages: eng Pagination: 779-83 Citation Subset: T |
Affiliation:
|
Dipartimento di Informatica e Sistemistica, Università di Pavia, Italy. |
Export Citation:
|
APA/MLA Format Download EndNote Download BibTex |
| MeSH Terms | |
Descriptor/Qualifier:
|
|
From MEDLINE®/PubMed®, a database of the U.S. National Library of Medicine
Previous Document: Representing Knowledge, Data and Concepts for EHRS Using Dcm.
Next Document: Creating a magnetic resonance imaging ontology.