| Literature DB >> 36240173 |
Juan C Torrado1, Bettina S Husebo1,2, Heather G Allore3, Ane Erdal1, Stein E Fæø4, Haakon Reithe1, Elise Førsund1, Charalampos Tzoulis5,6,7, Monica Patrascu1.
Abstract
BACKGROUND: Active ageing is described as the process of optimizing health, empowerment, and security to enhance the quality of life in the rapidly growing population of older adults. Meanwhile, multimorbidity and neurological disorders, such as Parkinson's disease (PD), lead to global public health and resource limitations. We introduce a novel user-centered paradigm of ageing based on wearable-driven artificial intelligence (AI) that may harness the autonomy and independence that accompany functional limitation or disability, and possibly elevate life expectancy in older adults and people with PD.Entities:
Mesh:
Year: 2022 PMID: 36240173 PMCID: PMC9565381 DOI: 10.1371/journal.pone.0275747
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.752
Fig 1Participants in ActiveAgeing and their experimental features.
I. Clinical dimension: Considering the participants with PD as the experimental group, and the participants in Helgetun as the control group, we explore the impact of a neurological condition (i.e., PD) on the ageing process. II. Environmental dimension: Considering the residents of Helgetun as the experimental group, and the people on the waiting list as the control group, we explore the impact of living in an innovative living environment like Helgetun on the ageing process. III. Caregiving dimension: Considering the participants with PD as the experimental group, and their informal caregivers as the control group, we explore the impact of a neurological condition (i.e., PD) on the ageing process in dyads of participants. IV. Psychological dimension: Considering the caregivers of people with PD as the experimental group, and the people on the waiting list for Helgetun as the control group, we explore the psychological impact of having caregiving duties on the ageing process.
Fig 2ActiveAgeing framework.
Clinical assessment scales.
| Symptom | Clinical assessment scales | Sensors | ||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| UPDRS | MoCA | GDS | GAI | SAS | RBDSQ | Ipsilon | IMU | HR | EDA | Temp | CSP | |
| Tremor | X | X | ||||||||||
| Gait | X | X | ||||||||||
| Dyskinesia | X | X | ||||||||||
| Bradykinesia | X | |||||||||||
| Rigidity | X | X | ||||||||||
| Cognition | X | X | ||||||||||
| Depression | X | X | X | X | X | X | ||||||
| Apathy | X | X | X | |||||||||
| Anxiety | X | X | X | |||||||||
| Sleep | X | X | X | X | X | X | X | |||||
IMU: Inertial Measurement Unit, a combination of sensors (e.g., gyroscopes, accelerometers) detecting angular momentum and acceleration; HR: Heart rate sensor; EDA: Electrodermal activity, a sensor which detects changes in skin conductance due to sweat; Temp: Temperature, measures body and ambient temperature; CSP: Colour sensitive photodiode, a light sensor.
Fig 3Overview of the ActiveAgeing research methodology.
Fig 4ActiveAgeing timeline and development cycle.