Primary information |
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SALID | SAL_16700 |
Biomarker name | 5-aminopentoate |
Biomarker Type | NA |
Sampling Method | Saliva samples from 373 volunteers, 124 who are healthy, 124 who have premalignant lesions, and 125 who are OSCC patients |
Collection Method | Unstimulated saliva was collected |
Analysis Method | CPSI-MS |
Collection Site | Saliva |
Disease Category | Premalignant Disorder |
Disease/Condition | Premalignant Lesion (PML) |
Disease Subtype | NA |
Fold Change/ Concentration | 1.21 |
Up/Downregulated | Upregulated |
Exosomal | NA |
Organism | Homo sapiens |
PMID | 32601197 |
Year of Publication | 2020 |
Biomarker ID | 138 |
Biomarker Category | Metabolite |
Sequence | C(CCN)CC(=O)O |
Title of study | Oral squamous cell carcinoma diagnosed from saliva metabolic profiling |
Abstract of study | Saliva is a noninvasive biofluid that can contain metabolite signatures of oral squamous cell carcinoma (OSCC). Conductive polymer spray ionization mass spectrometry (CPSI-MS) is employed to record a wide range of metabolite species within a few seconds, making this technique appealing as a point-of-care method for the early detection of OSCC. Saliva samples from 373 volunteers, 124 who are healthy, 124 who have premalignant lesions, and 125 who are OSCC patients, were collected for discovering and validating dysregulated metabolites and determining altered metabolic pathways. Metabolite markers were reconfirmed at the primary tissue level by desorption electrospray ionization MS imaging (DESI-MSI), demonstrating the reliability of diagnoses based on saliva metabolomics. With the aid of machine learning (ML), OSCC and premalignant lesions can be distinguished from the normal physical condition in real time with an accuracy of 86.7%, on a person by person basis. These results suggest that the combination of CPSI-MS and ML is a feasible tool for accurate, automated diagnosis of OSCC in clinical practice. |