Issue 22, 2024

Liquid saliva-based Raman spectroscopy device with on-board machine learning detects COVID-19 infection in real-time

Abstract

With greater population density, the likelihood of viral outbreaks achieving pandemic status is increasing. However, current viral screening techniques use specific reagents, and as viruses mutate, test accuracy decreases. Here, we present the first real-time, reagent-free, portable analysis platform for viral detection in liquid saliva, using COVID-19 as a proof-of-concept. We show that vibrational molecular spectroscopy and machine learning (ML) detect biomolecular changes consistent with the presence of viral infection. Saliva samples were collected from 470 individuals, including 65 that were infected with COVID-19 (28 from hospitalized patients and 37 from a walk-in testing clinic) and 251 that had a negative polymerase chain reaction (PCR) test. A further 154 were collected from healthy volunteers. Saliva measurements were achieved in 6 minutes or less and led to machine learning models predicting COVID-19 infection with sensitivity and specificity reaching 90%, depending on volunteer symptoms and disease severity. Machine learning models were based on linear support vector machines (SVM). This platform could be deployed to manage future pandemics using the same hardware but using a tunable machine learning model that could be rapidly updated as new viral strains emerge.

Graphical abstract: Liquid saliva-based Raman spectroscopy device with on-board machine learning detects COVID-19 infection in real-time

Supplementary files

Article information

Article type
Paper
Submitted
22 May 2024
Accepted
28 Aug 2024
First published
21 Oct 2024
This article is Open Access
Creative Commons BY-NC license

Analyst, 2024,149, 5535-5545

Liquid saliva-based Raman spectroscopy device with on-board machine learning detects COVID-19 infection in real-time

K. J. I. Ember, N. Ksantini, F. Dallaire, G. Sheehy, T. Tran, M. Dehaes, M. Durand, D. Trudel and F. Leblond, Analyst, 2024, 149, 5535 DOI: 10.1039/D4AN00729H

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