| Literature DB >> 34940605 |
Elettra Barberis1,2, Elia Amede1,2, Shahzaib Khoso1,2, Luigi Castello1,3,4, Pier Paolo Sainaghi1,3, Mattia Bellan1,3, Piero Emilio Balbo3, Giuseppe Patti1,3, Diego Brustia3, Mara Giordano3,5, Roberta Rolla3,5, Annalisa Chiocchetti2,5, Giorgia Romani3, Marcello Manfredi1,2, Rosanna Vaschetto1,3.
Abstract
Infection from severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) can lead to severe respiratory tract damage and acute lung injury. Therefore, it is crucial to study breath-associated biofluids not only to investigate the breath's biochemical changes caused by SARS-CoV-2 infection, but also to discover potential biomarkers for the development of new diagnostic tools. In the present study, we performed an untargeted metabolomics approach using a bidimensional gas chromatography mass spectrometer (GCxGC-TOFMS) on exhaled breath condensate (EBC) from COVID-19 patients and negative healthy subjects to identify new potential biomarkers for the noninvasive diagnosis and monitoring of the COVID-19 disease. The EBC analysis was further performed in patients with acute or acute-on-chronic cardiopulmonary edema (CPE) to assess the reliability of the identified biomarkers. Our findings demonstrated that an abundance of EBC fatty acids can be used to discriminate COVID-19 patients and that they may have a protective effect, thus suggesting their potential use as a preventive strategy against the infection.Entities:
Keywords: COVID-19; GCxGC-MS; breath analysis; metabolomics; noninvasive analysis
Year: 2021 PMID: 34940605 PMCID: PMC8708149 DOI: 10.3390/metabo11120847
Source DB: PubMed Journal: Metabolites ISSN: 2218-1989
Figure 1Experimental design of the study: exhaled breath condensate molecules were analyzed using untargeted metabolomics. Statistical analysis performed on quantified molecules was used to identify potential biomarkers and breath-biochemical changes associated with SARS-CoV-2 infection.
Clinical characteristics of healthy volunteers, patients with acute and acute-on-chronic cardiopulmonary edema (CPE), and patients with COVID-19 pneumonia. Data are presented as absolute numbers (percentage) or as median values (interquartile range).
| Healthy Volunteers | CPE | COVID-19 | |
|---|---|---|---|
| Age, years | 39 (29–49) | 70 (66–76) | 54 (48–64) |
| Sex | M: 8 (40%) | M: 6 (55%) | M: 14 (54%) |
| Weight, kg | 61 (57–66) | 80 (76–86) | 75 (70–87) |
| Height, cm | 170 (163–181) | 170 (165–178) | 168 (162–175) |
| EBC Volume, μL | 825 (500–1050) | 1130 (300–1200) | 800 (500–1110) |
| ATS score (severe pneumonia) | / | / | 8 |
| SpO2, % | / | 97 (96–98) | 96 (96–97) |
| FiO2, % | / | 21 (21–21) | 29 (21–50) |
| Respiratory rate, breath/min | / | 15 (10–16) | 16 (15–18) |
| PaO2/FiO2, mmHg | / | 330 (244–401) | 277 (241–338) |
| Comorbidities | |||
| Smoker | 0 | 7 (54%) | 3 (11%) |
| Ischemic cardiomyopathy | 0 | 5 (38%) | 2 (8%) |
| Valvulopathy | 0 | 4 (31%) | 1 (4%) |
| Hypertension | 0 | 7 (54%) | 8 (31%) |
| Obesity | 0 | 3 (23%) | 3 (11%) |
| Diabetes | 0 | 4 (31%) | 3 (11%) |
| Chronic respiratory failure | 1 (6%) | 3 (23%) | 2 (8%) |
| Chronic renal failure | 0 | 2 (15%) | 0 |
| Lab results at hospital admission | |||
| White blood cell count, ×103/μL | / | 9.45 (7.32–11.86) | 6.795 (5.28–9.62) |
| Lymphocyte count, ×103/μL | / | 1.82 (1.01–3.26) | 0.97 (0.61–1.3) |
| Lactate dehydrogenase, U/L | / | 423 (369–549) | 547 (409–759) |
| D-dimer, μgFEU/L | / | 805 (350–5201) | 703 (487–1197) |
| Platelet count, ×103/μL | / | 247 (191–306) | 220 (181–275) |
| Ferritin, ng/mL | / | 40 (18–312) | 294 (156–757) |
| Length of hospital stay, days | / | 11 (7–26) | 7 (5–10) |
Figure 2Partial least squares discriminant analysis (PLS-DA) of EBC metabolome from COVID-19 (red dots) and healthy subjects (green dots). The two groups are well-separated (a). Important features identified by PLS-DA (b): colored boxes indicate the most predictive or discriminative features in each group (red, high; blue, low).
Figure 3EBC-modulated metabolites in the comparison between healthy subjects versus SARS-CoV-2 patients. Hierarchical clustering heatmap of molecules in COVID-19 patients (red) and healthy subjects (green) (a). Volcano plot reporting 26 regulated small molecules with a p-value less than 0.05 and a fold change greater than 1.3 (b).
Figure 4Boxplots and ROC curves for the best potential biomarkers identified with metabolomics analysis (red dots: COVID-19 patients, green dots: healthy subjects). 1-monomyristin (a); 2-monomyristin (b); heptadecanoic acid, glycerine-(1)-monoester (c); monolaurin (d); 2,3-dihydroxypropylicosanoate (e); pentadecanoic acid, glycerine-(1)-monoester (f); 2-tert-butyl-4-ethylphenol (g); nonadecanoic acid, glycerine-(1)-monoester (h). ***, p-value < 0.001; ****, p-value < 0.0001.
Figure 5Combined ROC curve of the two best metabolites: 1-monomyristin and monolaurin.