| Literature DB >> 34913047 |
Mostafa Kamal Mallick1, Sarah Biser1, Aathira Haridas1, Vaishnavi Umesh1, Olaf Tönsing1, Imrana Abdullahi Yari1, Malte Ollenschläger1, Maria Heckel2, Christoph Ostgathe2, Felix Kluge1, Bjoern Eskofier1, Tobias Steigleder2.
Abstract
The world of healthcare constantly aims to improve the lives of people while nurturing their health and comfort. Digital health and wearable technologies are aimed at making this possible. However, there are numerous factors that need to be addressed such as aging, disabilities, and health hazards. These factors are intensified in palliative care (PC) patients and limited hospital capacities make it challenging for health care providers (HCP) to handle the crisis. One of the most common symptoms reported by PC patients with severe conditions is dyspnoea. Monitoring devices with sufficient comfort could improve symptom control of patients with dyspnoea in PC. In this article, we discuss the proof-of-concept study to investigate a smart patch (SP), which monitors the pulmonary parameters: (a) breathing rate (BR) and inspiration to expiration ratio (I:E); markers for distress: (b) heart rate (HR) and heart rate variability (HRV), and (c) transmits real-time data securely to an adaptable user interface, primarily geared for palliative HCP but scalable to specific needs. The concept is verified by measuring and analyzing physiological signals from different electrode positions on the chest and comparing the results achieved with the gold standard Task Force Monitor (TFM).Entities:
Keywords: digital health; dyspnoea; palliative care; smart patch; wearable devices
Year: 2021 PMID: 34913047 PMCID: PMC8666503 DOI: 10.3389/fdgth.2021.765867
Source DB: PubMed Journal: Front Digit Health ISSN: 2673-253X
Figure 1The hardware architecture of the SP: consists of a micro-controller unit (MCU) which is connected to ECG sensor, Impedance Measurement unit, Inertial Measurement Unit (IMU) and a microphone.
Figure 2Complete overview of data to be collected.
Figure 3(A) TFM setup: measuring BR, 4 other electrodes (light blue) measuring HR, (B) SP setup: 2 electrodes (dark blue) measuring BR, 3 electrodes (light blue) measuring HR. During the study the electrodes of the SP are placed closer after every iteration, which is schematically shown with the black arrows.
Figure 4Example of timestamp matching (subject 1 position 2). On the left side HR over time is shown of SP (blue) and TFM (orange) before matching up the timestamp, on the right after. The sudden drops in the HR of the SP can be explained with missed beats (this will half the HR of the next beat since the interbeat interval is now twice as long).
Subject 1: Accuracy of HR and BR.
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|---|---|---|---|
| Position 1 | n.A. | n.A. | n.A. |
| Position 2 | 91.6% | 74.7% | 342ms |
| Position 3 | 97.8% | 91.1% | 121ms |
Subject 4: Accuracy of HR and BR.
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|---|---|---|---|
| Position 1 | 97.0% | 95.2% | 155ms |
| Position 2 | 89.1% | 91.4% | 415ms |
| Position 3 | 91.6% | 80.0% | 339ms |
Figure 5BR over time for SP (blue) and TFM (orange).
Figure 6I:E for subject 1 at position 2.
Subject 2: Accuracy of HR and BR.
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|---|---|---|---|
| Position 1 | 98.1% | 77.9% | 124ms |
| Position 2 | 98.7% | 83.3% | 76ms |
| Position 3 | 98.6% | 44.5% | 96ms |
Subject 3: Accuracy of HR and BR.
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|---|---|---|---|
| Position 1 | 95.0% | 51.0% | 217ms |
| Position 2 | n.A. | n.A. | n.A. |
| Position 3 | 55.3% | n.A. | 2264ms |