| Literature DB >> 29762507 |
José Bravo1, Ramón Hervás2, Jesús Fontecha3, Iván González4.
Abstract
m-Health is an emerging area that is transforming how people take part in the control of their wellness condition. This vision is changing traditional health processes by discharging hospitals from the care of people. Important advantages of continuous monitoring can be reached but, in order to transform this vision into a reality, some factors need to be addressed. m-Health applications should be shared by patients and hospital staff to perform proper supervised health monitoring. Furthermore, the uses of smartphones for health purposes should be transformed to achieve the objectives of this vision. In this work, we analyze the m-Health features and lessons learned by the experiences of systems developed by MAmI Research Lab. We have focused on three main aspects: m-interaction, use of frameworks, and physical activity recognition. For the analysis of the previous aspects, we have developed some approaches to: (1) efficiently manage patient medical records for nursing and healthcare environments by introducing the NFC technology; (2) a framework to monitor vital signs, obesity and overweight levels, rehabilitation and frailty aspects by means of accelerometer-enabled smartphones and, finally; (3) a solution to analyze daily gait activity in the elderly, carrying a single inertial wearable close to the first thoracic vertebra.Entities:
Keywords: big data analytics; frameworks; human-computer interaction; m-Health
Mesh:
Substances:
Year: 2018 PMID: 29762507 PMCID: PMC5982972 DOI: 10.3390/s18051569
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1NFC operation modes.
Summary of each system and domain.
| System Domain | Description | Pros | Cons |
|---|---|---|---|
| Nursing Care | NFC system for nursing care at hospitals | Reduce burden of nurses in managing patient records | Nurses require a previous knowledge of the system |
| Nursing Training | NFC system to improve training of nurses | Help nursing students to simulate clinical tasks using new technologies | Students require a previous knowledge of the system and clinical procedures |
| Alzheimer caregivers’ support | NFC system to help caregivers at Alzheimer’s day center | Help caregivers to manage tasks, incidences and reminders at a day center | Incidences should be manually registered by caregivers according a limited list. |
| Mobile prescriptions | System based on NFC and desktop applications to manage medications and prescriptions | Automate the process of requesting medicines from home, in elderly people. | Current social services do not offer mechanisms to take home medicines (at least in Spain) |
| Vital signs multi-monitoring | Framework to help in developing of mobile apps focused on monitoring of vital signs | Facilitate the generation of mobile apps for healthcare following several processes | Framework should be known in detail to develop useful apps |
| Childhood Obesity Treatment | NFC system to monitor diet and physical exercise by parents of children with overweight problems | Acquire information from different domains to analyze issues based on personalized profiles | Food and meals should be inserted manually by parents to monitor this aspect |
| Rehabilitation | Mobile system to enhance the monitoring of rehabilitation tasks at home | Provide a mobile tool to continue with rehabilitation tasks at home based on remote clinical support | This tool depends on internet connection for a real-time monitoring and iPhone. It is only useful as a clinical complement |
| Frailty | Mobile system to support clinicians to make a diagnosis based on frailty index (in seniors) | Provide a relative frailty index to facilitate diagnostics considering all clinical domains | Functional domain is not analyzed exhaustively (same importance than the rest of domains) |
| Gait Analysis | System based on wearable sensors to analyze gait of elderly people in a quantitative way, in a nursing home | Accuracy of the system and ease of communication with other devices/apps | Wearable sensor should be placed in the correct position to avoid data variability |
Figure 2The nursing care cycle: A system prototype.
NFC tags content.
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| Patient monitoring | Room | Patient | Blood pressure/Pulse |
| Drugs control | Room | Patient | Drug checks |
| Diet | Room/Nurse desk | Patient/Bed/Interactive display | Select and modify |
| Care | Room | Patient | Care protocol |
| Analyses control | Room/Nurse desk | Patient/Bed/Interactive display | Select |
| Managing information server | Nurse desk | Interactive display | Storing information |
| Patient record for nursing | Nurse desk | Interactive display | Getting information |
| Preparing drugs & doses | Drugs cabinet | Meds | Doses |
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| Nurse—Physician | Room/Nurse desk | Patient/Bed/Interactive display | Control of blood, urine tests, drug, diet/Monitoring |
| Nurse—Nurse | Nurse desk | Interactive display | Shift change |
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| Patient | Drugs & doses (last time)/Blood & urine tests (time, results)/Diets/dressing/Monitoring/Contraindications of medication | Yes | |
| Bed | Patient Id./Pending blood & urine tests/Diet | Yes | |
| Room | Patient Id. | Yes | |
| Meds | Active principle/Contraindications/Doses | No | |
| Interaction | (commands) Control/Select/Zoom/Back/… | Yes | |
Figure 3Example of using NFC nursing system: Steps for clinical test registration.
Figure 4Classification of incidences at Alzheimer’s day center.
Figure 5Tagging incidences (a) and automatic information management (b) with NFC.
Figure 6Panels and NFC-Enabled Medicine Boxes (above). NFC interaction (below).
Figure 7Layers overview of MoMo framework.
Figure 8Development cycle proposed by the framework.
Figure 9MoMOntology description.
Figure 10Childhood obesity treatment system scheme.
Figure 11mPhysio rehabilitation process.
Figure 12Architecture of frailty detection system.
Figure 13Infrastructure of gait variability monitoring system.
Figure 14(a) Position of each wearable; (b) Hardware prototype.
Summary of features from developed m-Health systems.
| MAmI m-Health Features | Care Complement | Physical Exercise | User Experience | Similar Solutions | Vital Signs Control | Remote Health Care | User Interaction |
|---|---|---|---|---|---|---|---|
| Nursing Care & Nursing Training | √ | X | X | X | √ | X | X |
| Alzheimer Caregiver’s Support | √ | √ | X | X | X | X | X |
| Mobile Prescriptions | √ | X | X | X | X | X | X |
| Vital Signs Multi-Monitoring | √ | X | X | X | √ | √ | √ |
| Childhood Obesity Treatment | √ | √ | X | X | √ | X | √ |
| Rehabilitation | √ | √ | X | X | X | X | √ |
| Frailty | √ | √ | X | X | √ | √ | √ |
| Gait analysis | √ | √ | X | X | X | √ | √ |
Figure 15m-Health Transformation.
Figure 16Obesity Prevention through Wearables.