| Literature DB >> 31561599 |
Diego Moreno-Blanco1, Javier Solana-Sánchez2,3, Patricia Sánchez-González4,5, Ignacio Oropesa6, César Cáceres7,8, Gabriele Cattaneo9,10, Josep M Tormos-Muñoz9,11, David Bartrés-Faz9,10,12, Álvaro Pascual-Leone9,13, Enrique J Gómez14,9.
Abstract
Brain health refers to the preservation of brain integrity and function optimized for an individual's biological age. Several studies have demonstrated that our lifestyles habits impact our brain health and our cognitive and mental wellbeing. Monitoring such lifestyles is thus critical and mobile technologies are essential to enable such a goal. Three databases were selected to carry out the search. Then, a PRISMA and PICOTS based criteria for a more detailed review on the basis of monitoring lifestyle aspects were used to filter the publications. We identified 133 publications after removing duplicates. Fifteen were finally selected from our criteria. Many studies still use questionnaires as the only tool for monitoring and do not apply advanced analytic or AI approaches to fine-tune results. We anticipate a transformative boom in the near future developing and implementing solutions that are able to integrate, in a flexible and adaptable way, data from technologies and devices that users might already use. This will enable continuous monitoring of objective data to guide the personalized definition of lifestyle goals and data-driven coaching to offer the necessary support to ensure adherence and satisfaction.Entities:
Keywords: adaptive systems; biomedical engineering; brain health; brain modeling; modeling; monitoring; remote monitoring; review; sensor systems; telemedicine
Mesh:
Year: 2019 PMID: 31561599 PMCID: PMC6806336 DOI: 10.3390/s19194183
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Study selection according to the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) statement.
Search terms and categories. Terms appear separated by semicolons.
| Categories | Terms |
|---|---|
| General | Brain Health; Cognitive |
| Associated | Older Adults; Aging; Ageing; Elderly; Geriatrics; Young elders; Aged; Older Person |
| Pillars | Nutrition; Physical exercise; Cognition; Social; Purpose in life; General health; Diet; Physical activity; Cognitive activity; Socialization; Psychological wellbeing; Comprehensive health; Physical; Cognitive; Cognitive training; Vital plan; Mindfulness; Rest; Sleep; Sleeping; Relax; Global health |
| Techniques | Exercise; Coach; Intervention; Coaching; Treatment; Monitoring; Adherence; Motivation |
| Technologies | Wearable; Computer; ICT 1; Machine learning; Data mining; RMT 2; Data mining; Artificial intelligence; Deep Learning; eHealth; mHealth; Biosensor; Neuronal network; Predictor; Mobile; Smartphone; Technology |
1 Information and Communication Technologies 2 Remote Monitoring Techniques.
Selected papers.
| First Author, Year | Region | Variable | Study Design/Study Duration | Methodology and Technologies | Sample Size | Age Groups | Feedback Loop/End-User | Results | Funding Body |
|---|---|---|---|---|---|---|---|---|---|
| Commissaris et al. (2014) [ | Netherlands and Germany | Physical exercise | Cohort/1 working day (7–8 h) | Heart Rate Monitor/3D kinematics measurement system | 15 | 29 years (SD 12) | Office Workers and Employers | Neutral | German Social Accident Insurance (DGUV) |
| Mourad et al. (2016) [ | Sweden | Life purpose 1 | RCT/4 weeks | Internet-delivered program with questionnaires | 15 | 22–76 | Self/User | Neutral | County Council of Östergötland/Medical Research of Southeast Sweden |
| D. Wirth et al. (2015) [ | South Carolina (USA) | Nutrition | Cohort/14 days | Phone questionnaires | 430 | 21–35 | NR | Positive | Coca Cola Company |
| Pavel et al. (2016) [ | NR | Life purpose 2 | RCT/25 weeks | Mobile phone | 204 | NR | Self/User | Positive | NR |
| Ramnath et al. (2018) [ | South Africa | Physical exercise and cognitive activity | Cohort/1 session | Questionnaires & physical tasks | 70 | 65–84 | Self/User | Neutral | NR |
| Phatak et al. (2017) [ | United States | Physical exercise | Cohort/14 weeks | Fitbit Zip/Mobile App/Personalization | 20 | 40–65 | Self/User | Positive | National Science Foundation |
| Lange et al. (2018) [ | Germany | Nutrition | Cohort/2 years | Web App | 3000 | 41,5 (SD 11.9) | Self/User | Positive | German Ministry of Education and Research |
| Merriman et al. (2018) [ | Ireland | Physical exercise | RCT/5 weeks | PC game/Wii Balance Board/Gamification/Serious Game | 70 | 65–84 | Self/User | Positive | European Commission Seventh Framework Programme ‘VERVE’ Project and by Principal Investigator award and TIDA award to FNN from Science Foundation Ireland |
| Roepke et al. (2015) [ | World | Life purpose 3 | RCT/6 weeks | Smartphone-Based/Internet-Based Self-Help Tool | 283 | 40.15 (SD 12.4) | Self/User | Neutral | Private donation |
| Veronese et al. (2016) [ | Italy | Physical exercise | Cohort/4.4 years | Data Analysis | 3099 | >65 | NR | Positive | Fondazione Cassa di Risparmio di Padova e Rovigo/University of Padova/Azienda Unità Locale Socio Sanitaria |
| Konstantinidis et al. (2014) [ | Europe | Physical exercise | Cohort/7–8 weeks | Serious Game/Computer application/Data analysis/Exergaming/Wii Balance Board | 116 | >65 | Self/User | Positive | European Union |
| Rodrigues et al. (2017) [ | Portugal | Nutrition and Physical exercise | RCT/6 months | TV app | 282 | >60 | Self/User | NR | European Economic Area |
| Zielhorst et al. (2015) [ | Netherlands | Life purpose 4 | Cohort/10–15 days | CBT/Gamification | 101 | 24–63 | Self/User | Positive | NR |
| Vercelli et al. (2017) [ | Europe, Australia, and Asia | Life purpose 5 | NR | Smartphone app/wearables | NR | >65 | Self/User | NR | European Union |
| Robertson et al. (2015) [ | United States | Cognitive activity | RCT/1 h | Mobile app/Motion sensors/Real Time Annotation Tool | 42 | 19.88 | Self/User | Positive | National Science Foundation |
1 Emotions and habits; 2 Habits; 3 Depression; 4 Stress and habits; 5 Habits and daily life monitoring.
Out of criteria included papers.
| First Author, Year | Region | Variable | Study Design/Study Duration | Methodology and Technologies | Sample Size | Age Groups | Feedback Loop/End-User | Results | Funding Body | Exclusion |
|---|---|---|---|---|---|---|---|---|---|---|
| Robert et al. (2013) [ | France and Taiwan | Physical exercise | Cohort/1 day | Intelligent room (2D video camera, ambiance microphone, motion sensor, and tri-axial accelerometer mounted on the shoes) | 64 | >65 | Therapist | Positive | Innovation Alzheimer and ARMEP associations | Alzheimer |
| Chen et al. (2013) [ | Australia | Cognitive activity | Cohort/1 session | FaceLAB for pupil dilation and position | 15 | 20–48 | Therapist | Negative | Australian Government | No Brain Health |
| Cerasa et al. (2014) [ | Italy | Cognitive activity | RCT/6 weeks | RehaCom (Cognitive training tasks), 3T Scanner for images | 20 | 61.1 (12.4 SD) | Therapist | Positive | Ministerio Univesita’ e Ricerca | Parkinson |
| Baglio et al. (2015) [ | Italy | Stress. Multidisciplinary intervention | RCT/32 Weeks | fMRI and questionnaires | 60 | 65–85 | Therapist | Positive | Ricerca Corrente (Italian Ministry of Health) | Alzheimer |
| Manzoni et al. (2016) [ | Italy | Habits | RCT/11 weeks | Virtual Reality/CBT | 158 | 18–50 | Self/Patient | Positive | NR | Obese people |
| Mehrabian et al. (2018) [ | France | Intervention | Cohort/40 min | Interviews + web app | 92 | 54–85 | Patient/Caregiver | Positive | National Research Agency and the Foundation Mederic Alzheimer | Cognitively impaired/caregivers |
| Cerasa et al. (2013) [ | Italy | Cognitive Function | RCT/6 weeks | fMRI/cognitive computerized tasks | 26 | 32 (SD 10) | Clinicians | Positive | Fondazione Italiana Sclerosi Multipla onlus and Ministero Universita’ e Ricerca | Multiple sclerosis |
| Evensen et al. (2017) [ | Norway | Physical Activity | Cohort/3 months | accelerometers/activePal | 38 | 82.9 (SD 6.3) | Clinicians | Positive | Liaison Committee between the Central Norway Regional Health Authority and the Norwegian University of Science and Technology | Hospitalized patients |
| Hacker et al. (2015) [ | USA | Personalization | Cohort/4, 20 days | Web application | 176 | 11 to 15 | Self/User | Positive | National Science Foundation | Not health-oriented |
Figure 2Number and percentage of studies focused on each pillar. *Life purpose includes studies focused on behavior and cognitive behavioral therapy.
Figure 3Monitoring results. Number and percentage of studies in each category.
Figure 4Intervention results. Number and percentage of studies in each category.
Figure 5Technologies results. Percentage of studies in each category.
Figure 6Technologies applied for monitoring and intervention on each pillar. *Life purpose includes studies focused on behavior and behavioral changing.
Figure 7Number and percentage of studies on each sample size range. The “x” represents the study sample size.
Figure 8Age range of each study.
Indexed query formation process.
| Index | Query | Category |
|---|---|---|
| 1 | ( “brain health” OR “cognitive” ) | General Terms |
| 2 | ( “brain health” OR “cognitive” OR “young elders” OR “aging” OR “older adults” OR “ageing” OR “elderly” OR “aged” OR “older person” OR “geriatrics” ) | Associated Terms |
| 3 | ( “nutrition” OR “diet” OR “physical” OR “physical exercise” OR “physical activity” OR “cognitive” OR “cognition” OR “cognitive activity” OR “cognitive training” OR “social” OR “socialization” OR “vital plan” OR “purpose in life” OR “psychological wellbeing” OR “mindfulness” OR “general health” OR “comprehensive health” OR “global health” OR “sleep” OR “sleeping” OR “relax” OR “rest”) | Pillar related Terms |
| 4 | ( “adherence” OR “motivation” OR “monitoring” OR “coaching” OR “coach” OR “treatment” OR “intervention” OR “exercise” ) | Technique related terms |
| 5 | ( “smartphone” OR “mobile” OR “ICT” OR “RMT”OR “mHealth” OR “eHealth” OR “data mining” OR “predictor” OR “machine learning” OR “deep learning” OR “neuronal network” OR “artificial intelligence” OR “computer” OR “biosensor” OR “wearable” OR “technology” OR “technologies”) | Technology related terms |
| 6 | ( “observational study” OR “controlled study” ) | Study filter |
| 7 | NOT ( “schizophrenia” ) AND NOT ( “cancer” ) AND NOT ( “pediatrics” ) AND NOT ( “epilepsy” ) AND NOT ( “drugs” ) AND NOT ( “diabetes” ) AND NOT ( “stroke” ) AND NOT ( “dementia” ) AND NOT ( “transplant” ) AND NOT ( “fracture” ) AND NOT ( “traumatic” ) AND NOT ( “surgical” ) AND NOT ( “EEG” ) AND NOT ( “disorder” ) | Exclusions |
| 8 | [ | Resultant query |