An IoT Assisted Real-Time High CMRR Wireless Ambulatory ECG Monitoring System with Arrhythmia Detection
Abstract
:1. Introduction
- A right leg drive (RLD) circuit based analog frontend (AFE) with a high CMRR of 121 dB and a digitally implemented notch filter to suppress the power-line frequency noise—for improved diagnostic performance.
- A programmable embedded system-on-chip (PSoC) for conditioning of ECG signals (with integrated digital filtering)—for power optimization of the hardware part, portability, and further noise and interference suppression in the data acquisition device.
- Heart rate calculations in the user’s smartphone (rather than in the wearable ECG device)—for power saving in the wearable device.
- A smartphone-based application for display of real-time ECG trace and heart rate, and detection of abnormal heart rhythms—for monitoring by the user.
- A smartphone-based application with real-time ECG trace visualization, heart rate detection, and arrhythmia detection capability—for monitoring, assessment, and diagnosis by the user’s doctor.
2. Materials and Methods
2.1. System Architecture
2.2. System Design and Implementation
2.2.1. DATU
Sensing Unit
AFE
PSoC 5LP
Bluetooth Connectivity
Power Management
2.2.2. Patient’s End Android Application
2.2.3. Google Firebase
2.2.4. The Android Application at Doctor’s End
2.2.5. Hardware Implementation
3. Results
3.1. Simulation Results
3.1.1. AFE Analogue Filtering
3.1.2. AFE Common Mode Noise Suppression
3.1.3. AFE CMRR vs. Frequency
3.1.4. Digital Filtering
3.2. AFE and PSoC Test Results
3.3. Android Applications Test Results
4. Discussion
4.1. Comparison with RLD Circuit Based Wireless ECG Monitoring Systems
4.2. Comparison with Commercial Real-Time ECG Monitoring Systems
4.3. Limitations
- Like most of the wearable smartphone-based ECG systems, the proposed system allows recording of a single lead ECG signal which limits detection of arrhythmias. For detection of ischemia or other cardiac diseases, more leads are required. Though the proposed system does not allow simultaneous recording of multiple leads, serial recording of multiple leads by the proposed system is feasible. The device thus has the potential to play an important role in the detection of arrhythmias, allowing early screening of cardiac disorders. Due to the complexity of this process, relevant screening and diagnostic studies of the proposed device will be carried out in future studies.
- The DATU power consumption is high, and it supports only 25 h of operation before the next recharge. Continuous mode of operation, high sampling rate, and 12-bit ADC are responsible for the high-power consumption. PSoC 5LP consumes most of the power in active power mode and around 2 µA in deep sleep mode. It is, thus, if the DATU is run in the sleep wake-up mode then the device can be run for much longer periods of time before the next recharge. The duration and frequency of data recording depends on the doctor’s advice. It thus will necessitate the inclusion of a control feature in the doctor’s application to set the ECG test duration and frequency. In addition, significant power can be saved if the device is run at a low sampling rate and/or a reduced resolution ADC is used at the cost of sacrificing performance. Furthermore, the authors recommend using the Cypress Semiconductor CYBLE-416045–02 Ultra Low Power BLE Module [53]. The recommended BLE module offers a transmit power of +4 dBm against +6 dBm transmit power used in the HM-10 module.
- The rural residents are less likely to own a smartphone as compared to the urban or suburban residents. However, the use of smartphones in rural areas is on the rise recently due to their affordability. For example, a recent budget iVOOMi Android smartphone is priced at $55 [54]. The current cost can still present a problem for rural residents from low-income countries. Therefore, Government efforts are needed to provide subsidies on the purchase of smartphones and offer low-cost data plans to rural communities to support digitalization and use of telehealth technologies.
4.4. Improvements and Future Work
- Detection of detailed cardiac abnormalities in the home environment (for patients of different age groups) and the heart rate variability.
- Development of a three-lead wearable patch-type ECG device.
- Detection of motion artifacts through adaptive filtering methods and removal through denoising methods.
- Use of machine learning to identify CVDs.
- Development of a full-scale database for long-term healthcare applications.
- Development and use of dry electrodes to reduce patient discomfort.
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Component | Model Name | Parameters |
---|---|---|
INA | INA128PA | CMRR 93 dB |
Supply voltage ∓ 3.3 V | ||
Gain 54 (adjusted) | ||
RLD | - | Gain 100 |
TLC2262 | CMRR 93 dB | |
Supply voltage ∓ 3.3 V | ||
U1 based buffer amplifier | Unity gain | |
U5 based inverting LP filter | Cut-off 50 Hz | |
LP filter | Single-pole anti-aliasing filter | Cut-off 200 Hz |
Component | Model Name | Parameters |
---|---|---|
ADC | Del_Sig ADC (Sigma Delta ADC) | 12-bit resolution |
Differential mode range ∓ 2.048 V | ||
Sampling rate 4 Ksps | ||
DFB composite filter | Stage 1: Second Order Biquad HP Chebyshev filter | Cut-off 0.5 Hz |
Stages 2 and 3: Second Order Biquad Band Stop Chebyshev filter | Notch of 10 Hz at 50 Hz | |
Stage 4: FIR Blackman Filter | Cut-off 150 Hz | |
- | - | Source voltage 5 V |
Component | Model Name | Parameters |
---|---|---|
Bluetooth | Bluetooth 4 HM-10 | Operating frequency 2.4 GHz |
Transmit power +6 dBm Receiver sensitivity −23 dBm | ||
Source voltage 3.3 V |
Component | Model Name | Parameters |
---|---|---|
Regulators | S7V8F5 | Output voltage +5 V |
S7V8F3 | Output voltage of 3.3 V from 5 V | |
Inverter IC | MAX1044 | Output voltage of −3.3 V from +3.3 V |
Battery | Lithiumion battery | 3.7 V, 1000 mAh |
[45] | [46] | [47] | [48] | This Work | |
---|---|---|---|---|---|
Number of Leads | Single | Single | Single | Single | Single |
Electrodes | Dry reusable | Dry reusable | Dry reusable | Ag/AgCl single use | Ag/AgCl single use |
INA CMRR (dB) | N/A * | INA333 100 | INA106 86 | INA333 100 | INA128PA 93 |
Bandwidth (Hz) | 0.05–150 | 1–150 | 0.5–85 | 0.05–150 | 0.5–150 |
AFE CMRR (dB) | N/A * | N/A * | N/A * | N/A * | Max 121 at 50 Hz |
RLD | Yes | Yes | Yes | Yes | Yes |
Microcontroller | TI MSP430 | (SoC) nRF51422 | PIC24FJ64GA | ATmega328P | PSoC 5LP |
ADC (bits) | 12 | 10 | 10 | 8 | 12 |
fs (Hz) | 512 | 500 | 500 | 1 K | 4 K |
Communication Protocol | Bluetooth v2.0 + EDR | ANT | ANT | ZigBee | Bluetooth 4.0 BLE |
Power | Lithium-Ion battery | Lithium-Ion battery | Lithium-Ion battery | Lithium-Ion battery | Lithium-Ion battery |
Voltage (V) | 3.7 | 3.7 | 3 | 5 | 3.7 |
Battery (mAh) | 1100 | 280 | 256 | 3000 | 1000 |
Battery Life (h) | 33 | 24 | 15 | 39.62 | 25 |
System Highlights |
|
|
|
|
|
System Cost (USD) | N/A * | N/A * | N/A * | $70–80 | $55 |
iHealth Rhythm [50,51,52] | QardioCore [18] | This Work | |
---|---|---|---|
Recoding mode | Continuous | Continuous | Continuous |
Electrodes | ECG patch | Dry | Ag-AgCl |
Number of leads | Single | Single | Single |
ADC (bits) | N/A * | 16 | 12 |
fs (Hz) | N/A * | 600 | 4 K |
Bandwidth (Hz) | N/A * | 0.04–40 | 0.5–150 |
AFE CMRR (dB) | N/A * | N/A * | Max 121 dB at 50 Hz |
Communication Protocol | Bluetooth 4.0 BLE | Bluetooth 4.0 BLE | Bluetooth 4.0 BLE |
ADC (bits) | N/A * | 16 | 12 |
Power | Lithium-Ion battery | Lithium-Ion battery | Lithium-Ion battery |
Battery life (h) | N/A * | 24 | 25 |
System Highlights |
|
|
|
Compatibility | Apple and Android | Apple | Android |
System Cost (USD) | N/A * | $449 | $55 |
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Ali, H.; Naing, H.H.; Yaqub, R. An IoT Assisted Real-Time High CMRR Wireless Ambulatory ECG Monitoring System with Arrhythmia Detection. Electronics 2021, 10, 1871. https://doi.org/10.3390/electronics10161871
Ali H, Naing HH, Yaqub R. An IoT Assisted Real-Time High CMRR Wireless Ambulatory ECG Monitoring System with Arrhythmia Detection. Electronics. 2021; 10(16):1871. https://doi.org/10.3390/electronics10161871
Chicago/Turabian StyleAli, Hassan, Hein Htet Naing, and Raziq Yaqub. 2021. "An IoT Assisted Real-Time High CMRR Wireless Ambulatory ECG Monitoring System with Arrhythmia Detection" Electronics 10, no. 16: 1871. https://doi.org/10.3390/electronics10161871
APA StyleAli, H., Naing, H. H., & Yaqub, R. (2021). An IoT Assisted Real-Time High CMRR Wireless Ambulatory ECG Monitoring System with Arrhythmia Detection. Electronics, 10(16), 1871. https://doi.org/10.3390/electronics10161871