| Literature DB >> 32429331 |
Thanos G Stavropoulos1, Asterios Papastergiou1, Lampros Mpaltadoros1, Spiros Nikolopoulos1, Ioannis Kompatsiaris1.
Abstract
The increasing ageing global population is causing an upsurge in ailments related to old age, primarily dementia and Alzheimer's disease, frailty, Parkinson's, and cardiovascular disease, but also a general need for general eldercare as well as active and healthy ageing. In turn, there is a need for constant monitoring and assistance, intervention, and support, causing a considerable financial and human burden on individuals and their caregivers. Interconnected sensing technology, such as IoT wearables and devices, present a promising solution for objective, reliable, and remote monitoring, assessment, and support through ambient assisted living. This paper presents a review of such solutions including both earlier review studies and individual case studies, rapidly evolving in the last decade. In doing so, it examines and categorizes them according to common aspects of interest such as health focus, from specific ailments to general eldercare; IoT technologies, from wearables to smart home sensors; aims, from assessment to fall detection and indoor positioning to intervention; and experimental evaluation participants duration and outcome measures, from acceptability to accuracy. Statistics drawn from this categorization aim to outline the current state-of-the-art, as well as trends and effective practices for the future of effective, accessible, and acceptable eldercare with technology.Entities:
Keywords: AAL; Alzheimer’s; IoT; dementia; devices; elders; old age; sensors; wearables
Mesh:
Year: 2020 PMID: 32429331 PMCID: PMC7288187 DOI: 10.3390/s20102826
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Review study classification taxonomy. IoT, Internet of Things; CVD, cardiovascular disease.
Review studies and their aspects: health focus, Internet of Things (IoT) technology, and review criteria.
| Review Study | Year | Health Focus | IoT Technology | Review Criteria |
|---|---|---|---|---|
| Talboom & Huentelman [ | 2018 | Alzheimer’s, | Wearables | Ease of Use, |
| Parkinson’s | Biometric Sensors | Efficacy, | ||
| Invasiveness, | ||||
| Esthetics | ||||
| Ienca et al. [ | 2017 | Dementia, | Wearables, Smartphones, | Efficacy, |
| Alzheimer’s | Applications, | Performance, | ||
| Robotics | Clinical Value | |||
| Li et al. [ | 2015 | Dementia, | Smart Home | Networking |
| Chronic Disease | Social Inclusion, | |||
| Ontologies | ||||
| Al-Shaqi et al. [ | 2016 | Dementia, | Biometric Sensors, Environmental Sensors, | Networking, |
| Alzheimer’s | Indoor Positioning, Smart Home | Ease of Use, | ||
| Cost, | ||||
| Efficacy | ||||
| Patel et al. [ | 2012 | Dementia, | Wearables, | Cost, |
| Alzheimer’s, | Biometric Sensors, | Energy Consumption | ||
| Parkinson’s, | Indoor Positioning, | |||
| CVD | Microphone | |||
| Banaee et al. [ | 2013 | Dementia, | Wearables | Sensor Types, |
| Alzheimer’s, | Networking | |||
| Parkinson’s, | ||||
| CVD | ||||
| Salih et al. [ | 2013 | Dementia, | Microphone, | Networking, |
| Alzheimer’s, | Environmental Sensors, | Security | ||
| CVD | Biometric Sensors, | |||
| Smart Home | ||||
| Rashidi & Mihailidis [ | 2013 | Dementia | Wearables, | Sensor Types, |
| Wearable Cameras, | Data Format | |||
| Biometric Sensors, | ||||
| Environmental Sensors, | ||||
| Indoor Positioning | ||||
| Surendran et al. [ | 2018 | Alzheimer’s | Wearables, | Networking, |
| Wearable Cameras | Accuracy | |||
| Spasova & I. Iliev [ | 2014 | Frailty and Falls, | Wearables, | Networking, |
| Dementia, | Cameras, | Sensor Types, | ||
| Alzheimer’s | Smart Home, | Efficacy | ||
| Environmental Sensors, | ||||
| Indoor Positioning | ||||
| Wang et al. [ | 2017 | Frailty and Falls, | Indoor Positioning | Accuracy, |
| CVD | Security, | |||
| Networking, | ||||
| Range, | ||||
| Cost, | ||||
| Ease of Use | ||||
| Piwek et al. [ | 2016 | Anxiety, | Wearables, Smartphones, Applications | Robustness, |
| Obesity, | Security | |||
| Sleep Disorders | ||||
| Dimitrov [ | 2016 | Orthopedics, | Wearables | Ease of Usage, |
| Robotic Surgery, | Networking | |||
| CVD | ||||
| Scarpato et al. [ | 2017 | Pulmonary, | Wearables, | Energy Consumption, |
| CVD | Biometric Sensors | Size | ||
| Haghi et al. [ | 2017 | Healthcare | Wearables, | Cost, |
| Biometric Sensors | Size, | |||
| Energy Consumption | ||||
| Lee et al. [ | 2016 | Healthcare | Wearables | Robustness, |
| Cost, | ||||
| Size, | ||||
| Energy Consumption | ||||
| Cedillo et al. [ | 2018 | Eldercare | Wearables, | Sensor Types, |
| Applications | Networking | |||
| Baig et al. [ | 2019 | Eldercare | Wearables | Ease of Use, |
| Energy | ||||
| Seneviratne et al. [ | 2017 | Eldercare | Wearables | Energy Consumption |
| Blackman et al. [ | 2016 | Eldercare | Wearables, Environmental Sensors, | Safety, |
| Indoor Positioning | Ease of Use | |||
| Peetoom et al. [ | 2015 | Eldercare, | Wearables, | Sensor Types, |
| Frailty and Falls | Smart Home, | Efficacy | ||
| Cameras, | ||||
| Microphone |
Figure 2Case study classification taxonomy.
Review of case studies and their aspects. AD, Alzheimer’s disease; PD, Parkinson’s disease’ AAL, ambient assisted living.
| Case Study | Year | Health Focus | IoT Technology | Aim | Description | Evaluation |
|---|---|---|---|---|---|---|
| Rodrigues et al. [ | 2018 | Alzheimer’s, Fall Detection | Wearables, Smartphones | Fall Detection, Wandering Detection, Emergency | Fall and wandering detection for emergency alerts | - |
| Ehrler & Lovis [ | 2014 | Eldercare | Wearables | Comparison | Smartwatches for elderly support | - |
| Sharma & Kaur [ | 2017 | Alzheimer’s, Telemedicine | Smartphones, Applications | Monitoring, Symptom Detection | Android app to monitor AD symptoms and contact doctors | - |
| Aljehani et al. [ | 2018 | Alzheimer’s | Wearables, Applications | GPS Tracking, Biometric Sensors | GPS and heart rate logging | - |
| Bose [ | 2013 | Dementia, Alzheimer’s | Biometric Sensors | Emergency | Detect emergency and send alerts | - |
| Karakaya et al. [ | 2017 | Fall Detection | Wearables, Applications | Fall Prediction | Predictive model for falls | - |
| Khojasteh et al. [ | 2018 | Fall Detection | Wearables | Development | Fall detection from wrist-worn sensors | - |
| Algase et al. [ | 2018 | Dementia | Wearables | Wandering Detection | Four devices for wandering detection | ✓ |
| Hao et al. [ | 2017 | Alzheimer’s | Indoor Positioning Sensors | Pattern Detection | Detect indoor movement patterns of AD | ✓ |
| Thorpe et al. [ | 2016 | Dementia | Wearables, Applications | User-centered AAL | User-centered approach to develop AAL | ✓ |
| Ellis et al. [ | 2015 | Fall Detection, Parkinson’s | Wearables, Applications | GAIT Analysis | GAIT analysis from two devices | ✓ |
| Weiss et al. [ | 2019 | Parkinson’s | Wearables | Movement Analysis | Movement analysis (turn and sit) for PD | ✓ |
| Mc Ardle et al. [ | 2018 | Alzheimer’s | Wearables | GAIT Analysis | GAIT analysis, acceptability, and feasibility | ✓ |
| Silva et al. [ | 2017 | Alzheimer’s | Wearable Cameras | Intervention | Camera intervention for improvement | ✓ |
| Costa et al. [ | 2016 | Alzheimer’s | Wearables | Fall Prediction, Assessment | Fall prediction and AD assessment | ✓ |
| Zhou et al. [ | 2016 | Alzheimer’s | Wearables | Assessment | Motor-cognitive assessment | ✓ |
| Hsu et al. [ | 2014 | Alzheimer’s | Wearables | Assessment | Indicators for AD assessment | ✓ |
| Abbate et al. [ | 2014 | Alzheimer’s, Fall Detection | Wearables, Indoor Positioning | Fall Detection, Monitoring | Long-term monitoring and fall detection in nursing homes | ✓ |
| Woodberry et al. [ | 2015 | Alzheimer’s | Wearable Cameras | Intervention | External memory aid to promote recall of episodic memories | ✓ |
| Leuty et al. [ | 2013 | Dementia | Wearables | Intervention | Promote engagement, art creation | ✓ |
| Lancioni et al. [ | 2013 | Alzheimer’s | Indoor Positioning | AAL, Intervention | Indoor activity and travel support | ✓ |
| Aloulou et al. [ | 2013 | Dementia | Indoor Positioning | AAL | AAL in nursing homes | ✓ |
| Pot et al. [ | 2012 | Alzheimer’s | Indoor Positioning | Monitoring | GPS for indoor tracking | ✓ |
| Jelcic et al. [ | 2014 | Alzheimer’s | Telemedicine | Assessment, Intervention | Lexical-semantic stimulation through Telecommunication | ✓ |
Review of case studies with evaluation and their aspects. MCI, mild cognitive impairment.
| Case Study | Year | Study Duration | Participants | Outcome Measures |
|---|---|---|---|---|
| Algase et al. [ | 2018 | 1 Week | 178 (mean age 85.3 y/o) | Acceptance, Accuracy of Wandering Detection |
| Hao et al. [ | 2017 | 6 Months | 20 | Accuracy of Assessment by Pattern Detection |
| Thorpe et al. [ | 2016 | 7 Days | 10 (61–73 y/o) | Acceptance, Feedback |
| Ellis et al. [ | 2015 | 1–2 h | 24: 12 PD & 12 HC (40–85 y/o) | Accuracy of Assessment by GAIT Analysis |
| Weiss et al. [ | 2019 | Less than 1 h | 96 PD | Accuracy of PD Assessment by Movement Analysis |
| Mc Ardle et al. [ | 2018 | 7 Days | 20 (55–80 y/o) | Acceptance, Accuracy of Assessment by GAIT Analysis |
| Silva et al. [ | 2017 | 6-Week Trial, 6-Month Follow-up | 51 AD (60–80 y/o) | Cognitive State Improvement through Intervention |
| Costa et al. [ | 2016 | 2–3 h | 72: 36 AD (76 ± 7 y/o), 36 HC (70 ± 8 y/o) | Accuracy of Fall Detection and Assessment |
| Zhou et al. [ | 2016 | 5 Min Session | 30: 11 HC, 10 aMCI, 9 AD (71–93 y/o) | Reliability, Accuracy of Motor-cognitive Assessment |
| Hsu et al. [ | 2014 | A Few h | 71: 21 AD & 50 HC | Accuracy of Assessment |
| Abbate et al. [ | 2014 | 2–4 Days | 4 AD (75–92 y/o). | Acceptance, User Satisfaction, Accuracy of Fall Detection |
| Woodberry et al. [ | 2015 | 3.5 Months | 6 (64–84 y/o) | User Satisfaction, Cognitive State Improvement through Intervention |
| Leuty et al. [ | 2013 | Five 1-Hour Trials | 6 (mean age 89.2 y/o) | User Satisfaction, Feedback |
| Lancioni et al. [ | 2013 | Ten 1-Minute Trials | 6 (75–89 y/o) | Cognitive State Improvement through Intervention |
| Aloulou et al. [ | 2013 | 14 Months | 10: 8 AD, 2 Carers | Feedback, Accuracy of Indoor Positioning |
| Pot et al. [ | 2012 | 3 Months | 56 Patient-Carer pairs | User Satisfaction, Acceptance, Feedback, Accuracy of Indoor Positioning |
| Jelcic et al. [ | 2014 | 3 Months | 27 | Cognitive State Improvement through Intervention, Accuracy of Assessment |
Figure 3Review studies according to their health focus. CVD, cardiovascular disease.
Figure 4Review studies according to Internet of Things (IoT) technology devices are presented.
Figure 5Categories of criteria examined in review studies.
Figure 6Case study papers according to their health focus.
Figure 7Case study papers according to the IoT devices used.
Figure 8Case study papers according to their aim. AAL, ambient assisted living.
Figure 9Case studies with evaluation according to their duration.
Figure 10Case studies with evaluation according to their participant number.
Figure 11Case studies with evaluation according to their outcome measures.