Designing a Smart Mobile Health System for Ecological Frailty Assessment in Elderly
Metadatos
Mostrar el registro completo del ítemAutor
García Moreno, Francisco Manuel; Rodríguez García, Estefanía; Rodríguez Fórtiz, María José; Garrido Bullejos, José Luis; Bermúdez Edo, María del Campo; Villaverde Gutiérrez, María del Carmen; Pérez Mármol, José ManuelEditorial
MDPI
Materia
Wearable devices Sensors Smart mobile health systems
Fecha
2019-11-20Referencia bibliográfica
García-Moreno, F.M.; Rodríguez-García, E.; Rodríguez-Fórtiz, M.J.; Garrido, J.L.; Bermúdez-Edo, M.; Villaverde-Gutiérrez, C.; Pérez-Mármol, J.M. Designing a Smart Mobile Health System for Ecological Frailty Assessment in Elderly. Proceedings 2019, 31, 41. https://doi.org/10.3390/proceedings2019031041
Patrocinador
Spanish Ministry of Economy and Competitiveness—Agencia Estatal de Investigación—with European Regional Development Funds (AEI/FEDER, UE) through the project ref. TIN2016-79484-R; Scholarship Program FPU Ref. FPU18/00287 granted by the Spanish Ministry of Science, Innovation and UniversitiesResumen
The increasing adoption of mobile computing technology in the health and social domains
offers new possibilities, for instance, promoting active aging. Health deterioration in elderly people
could be successfully assessed by monitoring activities of daily living (ADLs) through mobile
technology. In particular, frailty affects several dimensions (physical, psychological, and social) of
human functioning, which are required to perform instrumental ADLs (IADLs). Starting from the
definition of a model, this paper proposes the design of an intelligent mobile health system to assess
frailty in an ecological way: to automatize the frailty assessment through wearable sensors,
unobtrusively in free-living environments, and using machine learning in order to reduce the
traditional efforts of clinicians assessing frailty. It supports automatic data collection from sensors
and artificial intelligence analysis during the performance of real IADLs by elderly. The proposed
system uses mobile/wearable devices, follows a microservices software architecture, and implements
machine learning algorithms. A technical validation of the proposal is shown.





