2016
DOI: 10.1186/s13326-016-0049-1
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Modularising ontology and designing inference patterns to personalise health condition assessment: the case of obesity

Abstract: BackgroundThe public health initiatives for obesity prevention are increasingly exploiting the advantages of smart technologies that can register various kinds of data related to physical, physiological, and behavioural conditions. Since individual features and habits vary among people, the design of appropriate intervention strategies for motivating changes in behavioural patterns towards a healthy lifestyle requires the interpretation and integration of collected information, while considering individual pro… Show more

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Cited by 18 publications
(9 citation statements)
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“…We use SWRL [ 76 , 77 ] to encode rules for user-defined reasoning owing to its compatibility with OWL. Many studies in the literature used the numerical capabilities of SWRL to model complex knowledge, and they used reasoners such as Pellet to infer other knowledge [ 78 , 79 ]. A deductive reasoning capability is required for purposes that are more extensive.…”
Section: Methodsmentioning
confidence: 99%
“…We use SWRL [ 76 , 77 ] to encode rules for user-defined reasoning owing to its compatibility with OWL. Many studies in the literature used the numerical capabilities of SWRL to model complex knowledge, and they used reasoners such as Pellet to infer other knowledge [ 78 , 79 ]. A deductive reasoning capability is required for purposes that are more extensive.…”
Section: Methodsmentioning
confidence: 99%
“…[10]. The latter modules are inherited from the GOIoTP ontology, while, those specifically related to CasAware are: the Virtual Individual Model (VIM) [47] for Personal Information; the Ontology Modeling for Intelligent Domotic Environ-ments (Dogont 4 ), which supports device/network independent description of houses, including both controllable and architectural elements; and, finally, the Smart Appliances REFerence (SAREF) ontology [16], which is a shared model of consensus that facilitates the matching of existing assets (standards, protocols, data models, etc.) in the smart appliances domain.…”
Section: Casaware Ontologymentioning
confidence: 99%
“…Such personalization is based on the development of a Virtual Individual Model (VIM) for characterizing the user on different aspects (i.e., physical, functional and behavioural parameters). The VIM is finally modelled through the implementation of an ad-hoc ontology [17] built upon a scoring system able to numerically represent the behavioural status of a user [18].…”
Section: The Cloudmentioning
confidence: 99%