| Literature DB >> 35453824 |
Carmen Bax1, Stefano Robbiani2, Emanuela Zannin2, Laura Capelli1, Christian Ratti1, Simone Bonetti3,4, Luca Novelli3, Federico Raimondi3, Fabiano Di Marco3,4, Raffaele L Dellacà2.
Abstract
BACKGROUND: Non-invasive, bedside diagnostic tools are extremely important for tailo ring the management of respiratory failure patients. The use of electronic noses (ENs) for exhaled breath analysis has the potential to provide useful information for phenotyping different respiratory disorders and improving diagnosis, but their application in respiratory failure patients remains a challenge. We developed a novel measurement apparatus for analysing exhaled breath in such patients.Entities:
Keywords: COVID-19; breath analysis; diagnosis; electronic nose; odour analysis
Year: 2022 PMID: 35453824 PMCID: PMC9026987 DOI: 10.3390/diagnostics12040776
Source DB: PubMed Journal: Diagnostics (Basel) ISSN: 2075-4418
Figure 1Proposed breath sampling apparatus. (a–c) Washout phase. The apparatus is connected to the medical gas pipeline system through two rotameters (one for medical air and the other one for oxygen), a tube, and a T connector. The patient is connected to the T connector through the inspiratory line of the non-rebreathing valve. (b–d) Exhaled breath sampling. The sampling bag is connected to the expiratory line of the non-rebreathing valve.
Figure 2EN analysis of breath samples.
Figure 3Schematic representation of the data processing procedure adopted for the study.
Steady-state and transient features extracted from EN responses.
| Feature | Description | Point of Evaluation |
|---|---|---|
| Resistance ratio |
| |
| Resistance difference |
| |
| Area under the curve | Area under the curve | Adsorption phase, Desorption phase, Overall analysis |
| Phase integral | Area under the plot | Adsorption phase, Desorption phase, Overall analysis |
| Single point |
| Adsorption and Desorption phase |
| Difference ratio |
| 1 = Beginning of Adsorption phase |
| Last difference | 2 = Middle of Adsorption phase | |
| Exponential moving average | yk = (1 − α)yk−1 + α(xk − xk−1) | Max, Min, Area under peaks |
Characteristics of study participants.
| SARS-CoV-2 and Respiratory Failure | SARS-CoV-2 and Asymptomatic | Controls | ||
|---|---|---|---|---|
| N | 25 | 8 | 22 | |
| Male sex, n (%) | 17 (68.0) | 3 (37.5) | 14 (63.6) | 0.295 |
| Age (years), median (IQR) | 50 (18, 46) | 50 (24, 15) | 50 (23, 76) | 0.403 |
| Smokers, n (%) | 2 (8.0) | 2 (25.0) | 1 (4.5) | 0.219 |
| * Ex-smokers, n (%) | 5 (20.0) | 2 (25.0) | 5 (22.7) | 0.948 |
| Subjects with other comorbidities, n (%) | 10 (40.0) | 5 (62.5) | 8 (36.4) | 0.425 |
* Subjects who had stopped smoking more than 12 months earlier.
Figure 4Representative EN responses to exhaled breath samples in a patient with respiratory failure due to SARS-CoV-2 (black) and in a control subject (red).
Figure 5Output of the feature selection model based on the Boruta algorithm. In red: rejected features (i.e., variables useless for classification purposes); in yellow: tentative features (i.e., a variable whose importance was so close to their best shadow attributes that algorithm was not able to make a decision with the desired confidence in default number of random forest runs); in green: selected features (i.e., variables important for classification purposes); in blue: shadow features (i.e., duplicates of the original features, in which the values are randomly shuffled to eliminate the correlation between the variable values and the belonging class).
Figure 6(a) Principal components of the selected features in asymptomatic SARS-CoV-2 patients (red circles), respiratory failure patients with SARS-CoV-2 (blue circles), and control subjects (green circles). (b) 2−Norm of scores of all the Principal Component of SARS-CoV-2 patients with respiratory failure, asymptomatic SARS-CoV-2 patients, and controls. The boundaries of the boxes indicate the 25th and 75th percentiles, and the lines within the boxes mark the median values. Whiskers define the 90th and 10th percentiles. Closed circles are the outliers.
Figure 7Receiving Operating Characteristic (ROC) curve representing the EN accuracy in discriminating between respiratory failure patients with SARS-CoV-2 and controls.