| Literature DB >> 32290639 |
Mariana Jacob Rodrigues1,2, Octavian Postolache1,2, Francisco Cercas1,2.
Abstract
Healthcare optimization has become increasingly important in the current era, where numerous challenges are posed by population ageing phenomena and the demand for higher quality of the healthcare services. The implementation of Internet of Things (IoT) in the healthcare ecosystem has been one of the best solutions to address these challenges and therefore to prevent and diagnose possible health impairments in people. The remote monitoring of environmental parameters and how they can cause or mediate any disease, and the monitoring of human daily activities and physiological parameters are among the vast applications of IoT in healthcare, which has brought extensive attention of academia and industry. Assisted and smart tailored environments are possible with the implementation of such technologies that bring personal healthcare to any individual, while living in their preferred environments. In this paper we address several requirements for the development of such environments, namely the deployment of physiological signs monitoring systems, daily activity recognition techniques, as well as indoor air quality monitoring solutions. The machine learning methods that are most used in the literature for activity recognition and body motion analysis are also referred. Furthermore, the importance of physical and cognitive training of the elderly population through the implementation of exergames and immersive environments is also addressed.Entities:
Keywords: activity recognition; healthcare; indoor air quality; internet of things; physiological signs monitoring; smart environments
Mesh:
Year: 2020 PMID: 32290639 PMCID: PMC7218909 DOI: 10.3390/s20082186
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1General architecture of a healthcare Internet of Things (IoT) system.
Heart rate variability parameters.
| Parameters | Units | Definitions |
|---|---|---|
| Time-domain analysis | ||
| Mean HR | bpm | Mean of heart rate values |
| Mean RR | ms | Mean of RR interval time series |
| SDNN | ms | Standard deviation of successive NN intervals |
| RMSSD | ms | Root mean square of successive NN interval differences |
| SDSD | ms | Standard deviation of differences between adjacent NN intervals |
| NN50 | ms | Number of successive intervals differing more than 50 ms |
| Frequency-domain analysis | ||
| VLF, LF, HF | ms2 | Power in very-low, low, and high frequency range, respectively |
| LF/HF | - | Ratio between LF (ms2) and HF (ms2) |
| Non-linear methods | ||
| ApEn | - | Quantifies the regularity and complexity of the time series. It measures the unpredictability of the variation of successive RR intervals. |
| SampEn | - | Improved evaluation of time series regularities (modification of ApEn). |
| DFA | - | Quantifies the presence or absence of fractal correlation properties of time series data. It permits the estimation of long-range correlation in non-stationary time series [ |
Vital signs monitoring techniques.
| Method | Definition | Monitored Signs | Reviewed Works | |
|---|---|---|---|---|
| Electrocardiography (ECG) | Measurement of electrical activity of the heart | HR, RR | [ | |
| Photoplethysmography (PPG) | Optical measurement of blood volume changes in microvascular bed | HR, SPO2, RR, Blood pressure | [ | |
| Seismocardiography (SCG) | Measurement of microvibrations of the chest wall produced by the heart contraction and blood flow | HR, RR | [ | |
| Ballistocardiography (BCG) | Measurement of hole-body microvibrations associated with the cardiac cycle | HR, RR, Blood pressure | [ | |
| Contact thermometry | Temperature measurement based on conductive heat changes between the surface of skin and a temperature sensor | Skin temperature | [ | |
Classification of indoor tracking and localization technologies.
| Mechanical | Magnetic | Acoustic | Radio Frequency | Light |
|---|---|---|---|---|
| Pressure sensor | Magnetic field | Ultrasonic sensor | Wi-Fi | Infrared sensor |
1 Wearable sensors.
Maximum concentrations for specific indoor air quality (IAQ) contaminants [99].
| Parameter | Averaging Time | Limit for Acceptable IAQ | Unit |
|---|---|---|---|
| Particulate Matter 1 | 24 h | 50 | μg/m3 |
| Ozone 1 | 8 h | 120 | μg/m3 |
| Nitrogen Dioxide 1 | 1 h | 200 | μg/m3 |
| Carbon Monoxide | 8 h | 10 | mg/m3 |
1 Associated with the triggering of respiratory distress [97].
List of machine learning classifiers used in the literature for ADL recognition.
| Machine Learning Model | Classifiers | Reviewed Works |
|---|---|---|
|
| Support Vector Machine (SVM) | [ |
| Decision Tree | [ | |
| Neural Networks | [ | |
|
| Hidden Markov Models (HMM) | [ |
| Naïve Bayes | [ |