1. Saliva-based detection of COVID-19 infection in a real-world setting using reagent-free Raman spectroscopy and machine learning
- Author
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Nassim Ksantini, Dominique Trudel, Arthur Plante, François Daoust, Julie Lanthier, Frederic Leblond, Mame-Kany Diop, Caroline Quach, Trang Tran, Myriam Mahfoud, Katherine J I Ember, Amélie St-Georges-Robillard, Tien Nguyen, Esmat Zamani, Frederick Dallaire, Guillaume Sheehy, and Antoine Filiatrault
- Subjects
Saliva ,Coronavirus disease 2019 (COVID-19) ,business.industry ,Machine learning ,computer.software_genre ,Reverse transcription polymerase chain reaction ,symbols.namesake ,Pcr test ,Reagent ,Area under curve ,symbols ,Medicine ,Molecular Profile ,Artificial intelligence ,Raman spectroscopy ,business ,computer - Abstract
SignificanceThe primary method of COVID-19 detection is reverse transcription polymerase chain reaction (RT-PCR) testing. PCR test sensitivity may decrease as more variants of concern arise.AimWe aimed to develop a reagent-free way to detect COVID-19 in a real-world setting with minimal constraints on sample acquisition.ApproachWe present a workflow for collecting, preparing and imaging dried saliva supernatant droplets using a non-invasive, label-free technique – Raman spectroscopy – to detect changes in the molecular profile of saliva associated with COVID-19 infection.ResultsUsing machine learning and droplet segmentation, amongst all confounding factors, we discriminated between COVID-positive and negative individuals yielding receiver operating coefficient (ROC) curves with an area under curve (AUC) of 0.8 in both males (79% sensitivity, 75% specificity) and females (84% sensitivity, 64% specificity). Taking the sex of the saliva donor into account increased the AUC by 5%.ConclusionThese findings may pave the way for new rapid Raman spectroscopic screening tools for COVID-19 and other infectious diseases.
- Published
- 2021
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