A Real-Time Wearable Physiological Monitoring System for Home-Based Healthcare Applications
Abstract
:1. Introduction
- The proposed surface bio-potential acquisition system is compactly devised for an everyday wearable application with supporting long-term stability validation. The total area of the monitoring device is just about the size of a button-shape battery (CR2032). The overall system implementation is cost effective compared to existing systems with a dedicated host device.
- A host node manages the role of the monitoring device and displays the signals in a real-time plot. Furthermore, a healthcare network is established between the host node and a cloud server where an intelligent analysis is performed, and remote clinical support can be provided by the physicians.
- A short-term physiological signal acquisition session with a reference instrument and series of analyses concludes that the signal quality of this work is precise. A practical long-term ECG and EMG acquisition session verifies the feasibility and wearability of the proposed device under a regular daily activity, including aggressive exercise.
2. Design of the Proposed System
2.1. Monitoring Device Design and Fabrication
2.2. Host Node Software Implementation
2.3. Data Analysis on Remote Server
3. Experimental Results
3.1. Continuous ECG and EMG Monitoring
3.2. Accuracy of the Acquired Signal
3.3. Long-Term Monitoring and Data Analysis
3.4. Device Lifetime
4. Conclusions
5. Discussion and Future Work
- The current monitoring device has a ring hole and an adjustable band that the patient can tie onto their limb or neck. Although the rigid structure offers protection for the monitoring device, it can sometimes be uncomfortable to the patient. A flexible patch-type miniature monitoring device that be attached to the skin could be a solution.
- Feature extraction in the host device (smartphone) is necessary since it can sometimes be very difficult to spot a past event and the file size can be large in a prolonged recording session.
- Without a classification algorithm based on machine learning that can alert the patient or the physician, abnormal activity can easily go undetected unless a specialist monitors the data all the time. Hence, there is a need to integrate the current system with an algorithm that can effectively detect specific features, make accurate predictions, and alarm the patient or the physician [25,26].
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
References
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Symbol | Parameter | Value |
---|---|---|
Sampling Frequency | Sample per second | 104 |
A/D Resolution | Bit | 8~12 (this work: 8) |
VDD | V | 1.8~3.3 |
Bandwidth (ECG) | Hz | 0.34~41 |
Bandwidth (EMG) | Hz | 40.17~727 |
Gain | V/V | 1100 |
Communication Type | - | BLE |
PCB Dimension | mm3 | 15 × 10 × 0.5 |
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Jeong, J.-W.; Lee, W.; Kim, Y.-J. A Real-Time Wearable Physiological Monitoring System for Home-Based Healthcare Applications. Sensors 2022, 22, 104. https://doi.org/10.3390/s22010104
Jeong J-W, Lee W, Kim Y-J. A Real-Time Wearable Physiological Monitoring System for Home-Based Healthcare Applications. Sensors. 2022; 22(1):104. https://doi.org/10.3390/s22010104
Chicago/Turabian StyleJeong, Jin-Woo, Woochan Lee, and Young-Joon Kim. 2022. "A Real-Time Wearable Physiological Monitoring System for Home-Based Healthcare Applications" Sensors 22, no. 1: 104. https://doi.org/10.3390/s22010104
APA StyleJeong, J. -W., Lee, W., & Kim, Y. -J. (2022). A Real-Time Wearable Physiological Monitoring System for Home-Based Healthcare Applications. Sensors, 22(1), 104. https://doi.org/10.3390/s22010104