| Literature DB >> 31426356 |
Fernanda Monedeiro1,2, Maciej Milanowski1,2, Ileana-Andreea Ratiu1,2,3, Hubert Zmysłowski4, Tomasz Ligor1,2, Bogusław Buszewski5,6.
Abstract
Halitosis and submandibular abscesses are examples of mouth-related diseases with the possible bacterial origin. Salivary volatile organic compounds (VOCs) are potential biomarkers of them, once they can be addressed as metabolites of bacterial activity. Healthy patients (n = 15), subjects with submandibular abscesses located in fascial deep space (n = 10), and subjects with halitosis (n = 5) were enrolled in the study. Saliva samples were subjected to headspace solid-phase microextraction (HS-SPME) and gas chromatography coupled to mass spectrometry (GC/MS) analysis. A total number of 164 VOCs was detected by the developed methodology, 23 specific for halitosis and 41 for abscess. Halitosis' profiles were characterized by a larger number of sulfur compounds, while for abscess they had a higher variety of alcohols, aldehydes, and hydrocarbons-biomarkers of inflammatory processes. Principal components analysis allowed visualization of clusters formed according to the evaluated conditions. Kruskal-Wallis test indicated that 39 VOCs presented differentiated responses between the studied groups, with statistical relevance (p < 0.05). Random forest was applied, and a prediction model based on eight VOCs (2-butanone, methyl thioacetate, 2-methylbutanoic acid, S-methyl pentanethioate, dimethyl tetrasulfide, indolizine, pentadecane, and octadecanal) provided 100% of sensitivity, 82% of specificity, and 91% of balanced accuracy, indicating the specific presence of submandibular abscess.Entities:
Keywords: GC/MS; VOCs; diagnosis; halitosis; saliva; submandibular abscess
Mesh:
Substances:
Year: 2019 PMID: 31426356 PMCID: PMC6720996 DOI: 10.3390/molecules24162977
Source DB: PubMed Journal: Molecules ISSN: 1420-3049 Impact factor: 4.411
Figure 1Functional group distribution of VOCs (volatile organic compounds) for healthy patients (HE), subjects with submandibular abscesses (AB), and halitosis (HA), where: VNCs—volatile nitrogen compounds, VSCs—volatile sulfur compounds.
List of volatile sulfur compounds detected in incubated salivary samples from healthy patients (HE) and subjects with submandibular abscesses (AB) and halitosis (HA); “X” means the presence of the compound.
| Volatile Sulfur Compound | Group of Patients | ||
|---|---|---|---|
| HE | AB | HA | |
| methyl thiolacetate | X | ||
| dimethyl disulfide | X | X | X |
| dimethyl trisulfide | X | X | X |
| dimethyl tetrasulfide | X | X | |
| dimethyl pentasulfide | X | ||
| dimethyl sulfone | X | X | X |
| allyl thiocyanate | X | ||
| allyl isothiocyanate | X | ||
| S-methyl pentanethioate | X | ||
| thiolan-2-one | X | ||
| TOTAL | 3 | 4 | 10 |
Figure 2Correlation networks of VOCs emitted from saliva samples from all three group of patients, where: healthy patients (HE), subjects with submandibular abscesses (AB) and halitosis (HA). VOCs are shown as nodes. Numbers in circles denote the number of volatiles from each group.
Figure 3Hierarchical cluster analysis and heatmap of VOC profiles based on peak areas from chromatograms. Columns represent three groups of patients (total of 30 individuals): healthy (15), segregated from an abscess (10) and halitosis (5). Rows represent 39 discriminating VOCs (orange, low abundance; red, high abundance).
Figure 4PCA (Principal Component Analysis) plot depicting the differentiation of group of individuals by VOC profiles; Assigned clusters: healthy controls (HE), patients with submandibular abscess (AB) and halitosis (HA).
Figure 5Assessment of variable importance, in terms of (A) mean decrease in accuracy and (B) mean decrease Gini or node impurity.
Figure 6(A) Exemplary decision tree produced in Random Forest approach; (B) Overlaid ROC (receiver operating characteristic) curves concerning discrimination of specific condition (in green- control / “healthy”, in red- abscess, and in blue- halitosis) against all others.
Sensitivity, specificity, balanced accuracy, and AUC (area under the curve) obtained from Random Forest-based model for classification of studied clinical conditions.
| Class | Control | Submandibular Abscess | Halitosis |
|---|---|---|---|
| Sensitivity | 66.7% | 100.0% | 100.0% |
| Specificity | 100% | 81.8% | 92.3% |
| Balanced accuracy | 83.3% | 90.9% | 96.1% |
| AUC | 0.927 | 0.950 | 0.992 |