A Low-Cost Breath Analyzer Module in Domiciliary Non-Invasive Mechanical Ventilation for Remote COPD Patient Monitoring †
Abstract
:1. Introduction
2. Materials and Methods
2.1. Rationale
2.2. Design Consideration
2.3. Hardware and Firmware Design
- (1)
- Infrared CO2 sensor: SprintIR™ by Gas Sensing Solutions Ltd., Cumbernauld, United Kingdom;
- (2)
- Electrochemical O2 sensor: KE-25 by Figaro Engineering Inc., Osaka, Japan;
- (3)
- Relative humidity and temperature: SHT75 by Sensirion AG, Staefa ZH, Switzerland;
- (4)
- A dual (NOX-CO) sensor built with MOX technology: MiCS-4514 by SGX SensorTech, Corcelles-Cormondrèche, Switzerland;
- (5)
- A VOC sensor built with MOX technology: AS-MLV-P2 by ams AG, Unterpremstaetten, Austria;
3. Results and Discussion
4. Conclusions
- Universal: it can be used as external module for any ventilator with bi-tube breathing circuit;
- Plug & Play: it requires only basic connections without configuration;
- Low-cost and highly customizable: it is based on low-cost hardware (Arduino);
- IoT-oriented: the device can communicate data over TCP/IP communication (wired).
- Flexible to further implementations: the system may be configured for advanced data processing in OMNIACARE hardware/software platform to support local healthcare staff to check the effectiveness of therapy.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
VOC | Volatile Organic Compound |
COPD | Chronic Obstructive Pulmonary Disease |
ECOPD | exacerbation of COPD |
NIV | Noninvasive ventilation |
NHS | National Health Service |
TCP/IP | Transmission Control Protocol/Internet Protocol |
R.H. & T | Relative Humidity & Temperature |
MFC | Mass Flow Controller |
GC/MS | Gas Chromatography/Mass Spectroscopy |
IoT | Internet of Things |
MQTT | Message Queue Telemetry Transport |
TLS/SSL | Transport Layer Security/Secure Sockets Layer |
PCB | Printed Circuit Board |
SMD | Surface Mounting Devices |
PTH | Pin Through Hole |
IDE | Integrated Development Environment |
PC | Personal Computer |
ICT | Information and Communication Technology |
MOSFET | Metal Oxide Semiconductor Field Effect Transistor |
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Sensor | Technology | Accuracy | Sensing Range | Power Consumption | Comm. | Sensor Main Features Addressing Sensor Selection for the Breath Analyser Module |
---|---|---|---|---|---|---|
SprintIR | NDIR with flow through adapter | ±70 ppm +/− 5% of reading | 0–20% | 35 mW | UART | • Sensing range compatible with hypercapnia levels • Flow adapter cape with 1 inlet and 1 outlet compatible with sidestream connection to system • Application Note AN-128 for operating with Arduino |
KE-25 | Galvanic cell | ±1% full scale | 0–100% | N/A | Analog (voltage) | • Suitable for medical applications • Linear output voltage signal relative to percent oxygen • No external power supply required for sensor operation • Virtually no influence from CO2 • Threaded top suitable for connection to sensor chamber • Low cost |
SHT75 (T) | Proprietary CMOSens® | ±0.3 °C | −40 °C–123.8 °C | 90 µW (average) | I2C | • High accuracy • Attractive price-performance ratio • Easy replaceability (pin-type version) • Fully calibrated digital output • Low power consumption • High-end version |
SHT75 (RH) | Proprietary CMOSens® | ±3.0% | 0–100% | |||
AS-MLV-P2 | Metal-Oxide | N/A | 30 ppm–500 ppm (taken from CO sensitivity curve, T and RH not mentioned) | 34 mW (heating element at 320 °C) | Analog (Resistance) | • Miniaturized MEMS (micro electromechanical system) devices • High sensitivity to VOCs (AS-MLV-P2 and MICS-4514 (RED)) • High sensitivity to NO2 (MICS-4514 (OX) to catch those exhaled NO molecules, known inflammatory marker, converted in NO2 • Very low power consumption • Surface Mounting Device (SMD) package compatible with Printed Circuit Board Assembly (PCBA) • Compact and simple front-end (conditioning circuit based on buffered voltage divider) • Low cost (10–20 €) • Scarce selectivity compensated by sensor array with cross-sensitivities |
MiCS-4514 (RED) | Metal-Oxide | N/A | 1 ppm to 1000 ppm (taken from CO sensitivity curve, 25 °C, 50% RH) | 88 mW (heating element) | Analog (Resistance) | |
MiCS-4514 (OX) | Metal-Oxide | N/A | 0.05 ppm to 10 ppm (taken from NO2 sensitivity curve, 25 °C, 50% RH) | 50 mW (heating element) | Analog (Resistance) |
(mmHg) | O2 (%) | |
Normoxemia | 100 | 14.0 |
Mild Hypoxemia | 60–80 | 8.41–11.22 |
Moderate Hypoxemia | 40–60 | 5.61–8.41 |
Severe Hypoxemia | <40 | <5.61 |
(mmHg) | CO2 (%) | |
Normocapnia | 40 | 5.61 |
Mild Hypercapnia | 45–60 | 6.31–8.41 |
Moderate HyperCapnia | 60–75 | 8.41–10.51 |
Severe HyperCapnia | >75 | >10.51 |
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Radogna, A.V.; Siciliano, P.A.; Sabina, S.; Sabato, E.; Capone, S. A Low-Cost Breath Analyzer Module in Domiciliary Non-Invasive Mechanical Ventilation for Remote COPD Patient Monitoring. Sensors 2020, 20, 653. https://doi.org/10.3390/s20030653
Radogna AV, Siciliano PA, Sabina S, Sabato E, Capone S. A Low-Cost Breath Analyzer Module in Domiciliary Non-Invasive Mechanical Ventilation for Remote COPD Patient Monitoring. Sensors. 2020; 20(3):653. https://doi.org/10.3390/s20030653
Chicago/Turabian StyleRadogna, Antonio Vincenzo, Pietro Aleardo Siciliano, Saverio Sabina, Eugenio Sabato, and Simonetta Capone. 2020. "A Low-Cost Breath Analyzer Module in Domiciliary Non-Invasive Mechanical Ventilation for Remote COPD Patient Monitoring" Sensors 20, no. 3: 653. https://doi.org/10.3390/s20030653