Systematic design of health monitoring systems centered on older adults and ADLs
Metadatos
Mostrar el registro completo del ítemAutor
García Moreno, Francisco Manuel; Bermúdez Edo, María del Campo; Pérez Mármol, José Manuel; Garrido Bullejos, José Luis; Rodríguez Fórtiz, María JoséEditorial
BioMed Central Ltd
Materia
Health monitoring Activities of daily living Conceptual models
Fecha
2024-02-13Referencia bibliográfica
Garcia-Moreno, F.M., Bermudez-Edo, M., Pérez-Mármol, J.M. et al. Systematic design of health monitoring systems centered on older adults and ADLs. BMC Med Inform Decis Mak 23 (Suppl 3), 300 (2023). https://doi.org/10.1186/s12911-024-02432-3
Patrocinador
R&D&i Project Ref. PID2019-109644RBI00 funded by Ministerio de Ciencia e Innovación / Agencia Estatal de Investigación /https://doi.org/10.13039/501100011033; R&D&i Project Ref. B-TIC-320-UGR20 funded by Junta de Andalucía and ‘‘ERDF A way of making Europe’’Resumen
Background Older adults face unique health challenges as they age, including physical and mental health issues
and mood disorders. Negative emotions and social isolation significantly impact mental and physical health. To support
older adults and address these challenges, healthcare professionals can use Information and Communication
Technologies (ICTs) such as health monitoring systems with multiple sensors. These systems include digital biomarkers
and data analytics that can streamline the diagnosis process and help older adults to maintain their independence
and quality of life.
Method A design research methodology is followed to define a conceptual model as the main artifact and basis
for the systematic design of successful systems centered on older adults monitoring within the health domain.
Results The results include a conceptual model focused on older adults’ Activities of Daily Living (ADLs) and Health
Status, considering various health dimensions, including social, emotional, physical, and cognitive dimensions. We
also provide a detailed instantiation of the model in real use cases to validate the usefulness and feasibility of the proposal.
In particular, the model has been used to develop two health systems intended to measure the degree
of the elders’ frailty and dependence with biomarkers and machine learning.
Conclusions The defined conceptual model can be the basis to develop health monitoring systems with multiple
sensors and intelligence based on data analytics. This model offers a holistic approach to caring for and supporting
older adults as they age, considering ADLs and various health dimensions. We have performed an experimental
and qualitative validation of the proposal in the field of study. The conceptual model has been instantiated in two
specific case uses, showing the provided abstraction level and the feasibility of the proposal to build reusable, extensible
and adaptable health systems. The proposal can evolve by exploiting other scenarios and contexts.