| Literature DB >> 32911861 |
Gürkan Yilmaz1, Michaël Rapin1, Diogo Pessoa2, Bruno M Rocha2, Antonio Moreira de Sousa1, Roberto Rusconi1, Paulo Carvalho2, Josias Wacker1, Rui Pedro Paiva2, Olivier Chételat1.
Abstract
Lung sounds acquired by stethoscopes are extensively used in diagnosing and differentiating respiratory diseases. Although an extensive know-how has been built to interpret these sounds and identify diseases associated with certain patterns, its effective use is limited to individual experience of practitioners. This user-dependency manifests itself as a factor impeding the digital transformation of this valuable diagnostic tool, which can improve patient outcomes by continuous long-term respiratory monitoring under real-life conditions. Particularly patients suffering from respiratory diseases with progressive nature, such as chronic obstructive pulmonary diseases, are expected to benefit from long-term monitoring. Recently, the COVID-19 pandemic has also shown the lack of respiratory monitoring systems which are ready to deploy in operational conditions while requiring minimal patient education. To address particularly the latter subject, in this article, we present a sound acquisition module which can be integrated into a dedicated garment; thus, minimizing the role of the patient for positioning the stethoscope and applying the appropriate pressure. We have implemented a diaphragm-less acousto-electric transducer by stacking a silicone rubber and a piezoelectric film to capture thoracic sounds with minimum attenuation. Furthermore, we benchmarked our device with an electronic stethoscope widely used in clinical practice to quantify its performance.Entities:
Keywords: COPD; auscultation; digital health; electronic stethoscope; respiratory sound; wearables
Mesh:
Year: 2020 PMID: 32911861 PMCID: PMC7571051 DOI: 10.3390/s20185124
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Electronic circuit (impedance converter) interfacing with the high-impedance sound sensor. The piezoelectric sensor (in red) is modelled as a voltage source in series with a capacitance in its linear mode (highlighted with red-dashed lines).
Figure 2Noise breakdown of the impedance converter.
Figure 3Simplified schematic of the sound acquisition module composed of impedance converter, gain and filtering stage, and analog-to-digital converter.
Figure 4(left) Exploded view of the sound acquisition module and (right) images of the assembled sensor with its dimension; from top to bottom: side view of the sensor with 1 euro coin, top view of the sensor with 1 euro coin, and bottom view of the sensor.
Figure 5Sensor positions on the chest.
Extracted features with respiratory sounds recorded in position 7.
| Sensor | Rolloff (Hz) | Brightness (%) | Centroid (Hz) | Spread (Hz) | |
|---|---|---|---|---|---|
| Full signal | Sensor | 27.01 | 4.37 | 71.30 | 277.89 |
| Lit. Bell | 52.25 | 1.90 | 42.56 | 169.71 | |
| Lit. Diaphragm | 96.37 | 3.73 | 64.90 | 193.57 | |
| Lit. Extended | 100.59 | 4.22 | 67.81 | 189.89 | |
| Breathing | Sensor | 63.78 | 6.00 | 94.15 | 306.92 |
| Lit. Bell | 20.02 | 3.12 | 48.08 | 215.43 | |
| Lit. Diaphragm | 40.83 | 4.63 | 63.21 | 224.87 | |
| Lit. Extended | 51.57 | 5.51 | 66.92 | 229.69 | |
| Cough | Sensor | 14.16 | 2.75 | 45.52 | 210.94 |
| Lit. Bell | 61.52 | 1.62 | 44.34 | 160.52 | |
| Lit. Diaphragm | 112.79 | 3.69 | 74.12 | 184.41 | |
| Lit. Extended | 103.52 | 3.94 | 70.49 | 181.34 | |
| Speech | Sensor | 43.95 | 4.87 | 79.13 | 278.23 |
| Lit. Bell | 114.75 | 1.61 | 55.28 | 159.72 | |
| Lit. Diaphragm | 243.65 | 4.51 | 112.80 | 194.11 | |
| Lit. Extended | 132.81 | 4.75 | 105.38 | 188.34 |
Extracted features with respiratory sounds recorded in position 18.
| Sensor | Rolloff (Hz) | Brightness (%) | Centroid (Hz) | Spread (Hz) | |
|---|---|---|---|---|---|
| Full signal | Sensor | 15.63 | 2.49 | 41.28 | 198.10 |
| Lit. Bell | 52.98 | 1.44 | 40.71 | 148.51 | |
| Lit. Diaphragm | 117.43 | 4.03 | 75.80 | 189.13 | |
| Lit. Extended | 101.87 | 4.03 | 69.09 | 183.11 | |
| Breathing | Sensor | 22.40 | 4.25 | 65.83 | 250.77 |
| Lit. Bell | 56.40 | 1.14 | 39.82 | 134.71 | |
| Lit. Diaphragm | 97.72 | 5.76 | 84.79 | 210.69 | |
| Lit. Extended | 91.80 | 6.17 | 83.34 | 203.04 | |
| Cough | Sensor | 14.65 | 2.34 | 39.44 | 196.62 |
| Lit. Bell | 49.80 | 1.84 | 44.56 | 169.08 | |
| Lit. Diaphragm | 114.26 | 3.63 | 72.19 | 191.17 | |
| Lit. Extended | 100.10 | 3.66 | 66.02 | 189.45 | |
| Speech | Sensor | 20.51 | 3.75 | 65.67 | 254.94 |
| Lit. Bell | 68.85 | 1.55 | 50.13 | 165.18 | |
| Lit. Diaphragm | 124.51 | 3.69 | 87.66 | 181.75 | |
| Lit. Extended | 120.61 | 3.94 | 81.30 | 180.99 |
Figure 6Magnitude spectra for position 18.
Figure 7Magnitude spectra for position 7.