Cargando…
A non-invasive ultrasensitive diagnostic approach for COVID-19 infection using salivary label-free SERS fingerprinting and artificial intelligence
Clinical diagnostics for SARS-CoV-2 infection usually comprises the sampling of throat or nasopharyngeal swabs that are invasive and create patient discomfort. Hence, saliva is attempted as a sample of choice for the management of COVID-19 outbreaks that cripples the global healthcare system. Althou...
Autores principales: | , , , , , , , , , , , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Elsevier B.V.
2022
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9389522/ https://www.ncbi.nlm.nih.gov/pubmed/36049288 http://dx.doi.org/10.1016/j.jphotobiol.2022.112545 |
_version_ | 1784770478733262848 |
---|---|
author | Karunakaran, Varsha Joseph, Manu M. Yadev, Induprabha Sharma, Himanshu Shamna, Kottarathil Saurav, Sumeet Sreejith, Remanan Pushpa Anand, Veena Beegum, Rosenara Regi David, S. Iype, Thomas Sarada Devi, K.L. Nizarudheen, A. Sharmad, M.S. Sharma, Rishi Mukhiya, Ravindra Thouti, Eshwar Yoosaf, Karuvath Joseph, Joshy Sujatha Devi, P. Savithri, S. Agarwal, Ajay Singh, Sanjay Maiti, Kaustabh Kumar |
author_facet | Karunakaran, Varsha Joseph, Manu M. Yadev, Induprabha Sharma, Himanshu Shamna, Kottarathil Saurav, Sumeet Sreejith, Remanan Pushpa Anand, Veena Beegum, Rosenara Regi David, S. Iype, Thomas Sarada Devi, K.L. Nizarudheen, A. Sharmad, M.S. Sharma, Rishi Mukhiya, Ravindra Thouti, Eshwar Yoosaf, Karuvath Joseph, Joshy Sujatha Devi, P. Savithri, S. Agarwal, Ajay Singh, Sanjay Maiti, Kaustabh Kumar |
author_sort | Karunakaran, Varsha |
collection | PubMed |
description | Clinical diagnostics for SARS-CoV-2 infection usually comprises the sampling of throat or nasopharyngeal swabs that are invasive and create patient discomfort. Hence, saliva is attempted as a sample of choice for the management of COVID-19 outbreaks that cripples the global healthcare system. Although limited by the risk of eliciting false-negative and positive results, tedious test procedures, requirement of specialized laboratories, and expensive reagents, nucleic acid-based tests remain the gold standard for COVID-19 diagnostics. However, genetic diversity of the virus due to rapid mutations limits the efficiency of nucleic acid-based tests. Herein, we have demonstrated the simplest screening modality based on label-free surface enhanced Raman scattering (LF-SERS) for scrutinizing the SARS-CoV-2-mediated molecular-level changes of the saliva samples among healthy, COVID-19 infected and COVID-19 recovered subjects. Moreover, our LF-SERS technique enabled to differentiate the three classes of corona virus spike protein derived from SARS-CoV-2, SARS-CoV and MERS-CoV. Raman spectral data was further decoded, segregated and effectively managed with the aid of machine learning algorithms. The classification models built upon biochemical signature-based discrimination method of the COVID-19 condition from the patient saliva ensured high accuracy, specificity, and sensitivity. The trained support vector machine (SVM) classifier achieved a prediction accuracy of 95% and F1-score of 94.73%, and 95.28% for healthy and COVID-19 infected patients respectively. The current approach not only differentiate SARS-CoV-2 infection with healthy controls but also predicted a distinct fingerprint for different stages of patient recovery. Employing portable hand-held Raman spectrophotometer as the instrument and saliva as the sample of choice will guarantee a rapid and non-invasive diagnostic strategy to warrant or assure patient comfort and large-scale population screening for SARS-CoV-2 infection and monitoring the recovery process. |
format | Online Article Text |
id | pubmed-9389522 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2022 |
publisher | Elsevier B.V. |
record_format | MEDLINE/PubMed |
spelling | pubmed-93895222022-08-19 A non-invasive ultrasensitive diagnostic approach for COVID-19 infection using salivary label-free SERS fingerprinting and artificial intelligence Karunakaran, Varsha Joseph, Manu M. Yadev, Induprabha Sharma, Himanshu Shamna, Kottarathil Saurav, Sumeet Sreejith, Remanan Pushpa Anand, Veena Beegum, Rosenara Regi David, S. Iype, Thomas Sarada Devi, K.L. Nizarudheen, A. Sharmad, M.S. Sharma, Rishi Mukhiya, Ravindra Thouti, Eshwar Yoosaf, Karuvath Joseph, Joshy Sujatha Devi, P. Savithri, S. Agarwal, Ajay Singh, Sanjay Maiti, Kaustabh Kumar J Photochem Photobiol B Article Clinical diagnostics for SARS-CoV-2 infection usually comprises the sampling of throat or nasopharyngeal swabs that are invasive and create patient discomfort. Hence, saliva is attempted as a sample of choice for the management of COVID-19 outbreaks that cripples the global healthcare system. Although limited by the risk of eliciting false-negative and positive results, tedious test procedures, requirement of specialized laboratories, and expensive reagents, nucleic acid-based tests remain the gold standard for COVID-19 diagnostics. However, genetic diversity of the virus due to rapid mutations limits the efficiency of nucleic acid-based tests. Herein, we have demonstrated the simplest screening modality based on label-free surface enhanced Raman scattering (LF-SERS) for scrutinizing the SARS-CoV-2-mediated molecular-level changes of the saliva samples among healthy, COVID-19 infected and COVID-19 recovered subjects. Moreover, our LF-SERS technique enabled to differentiate the three classes of corona virus spike protein derived from SARS-CoV-2, SARS-CoV and MERS-CoV. Raman spectral data was further decoded, segregated and effectively managed with the aid of machine learning algorithms. The classification models built upon biochemical signature-based discrimination method of the COVID-19 condition from the patient saliva ensured high accuracy, specificity, and sensitivity. The trained support vector machine (SVM) classifier achieved a prediction accuracy of 95% and F1-score of 94.73%, and 95.28% for healthy and COVID-19 infected patients respectively. The current approach not only differentiate SARS-CoV-2 infection with healthy controls but also predicted a distinct fingerprint for different stages of patient recovery. Employing portable hand-held Raman spectrophotometer as the instrument and saliva as the sample of choice will guarantee a rapid and non-invasive diagnostic strategy to warrant or assure patient comfort and large-scale population screening for SARS-CoV-2 infection and monitoring the recovery process. Elsevier B.V. 2022-09 2022-08-19 /pmc/articles/PMC9389522/ /pubmed/36049288 http://dx.doi.org/10.1016/j.jphotobiol.2022.112545 Text en © 2022 Elsevier B.V. All rights reserved. Since January 2020 Elsevier has created a COVID-19 resource centre with free information in English and Mandarin on the novel coronavirus COVID-19. The COVID-19 resource centre is hosted on Elsevier Connect, the company's public news and information website. Elsevier hereby grants permission to make all its COVID-19-related research that is available on the COVID-19 resource centre - including this research content - immediately available in PubMed Central and other publicly funded repositories, such as the WHO COVID database with rights for unrestricted research re-use and analyses in any form or by any means with acknowledgement of the original source. These permissions are granted for free by Elsevier for as long as the COVID-19 resource centre remains active. |
spellingShingle | Article Karunakaran, Varsha Joseph, Manu M. Yadev, Induprabha Sharma, Himanshu Shamna, Kottarathil Saurav, Sumeet Sreejith, Remanan Pushpa Anand, Veena Beegum, Rosenara Regi David, S. Iype, Thomas Sarada Devi, K.L. Nizarudheen, A. Sharmad, M.S. Sharma, Rishi Mukhiya, Ravindra Thouti, Eshwar Yoosaf, Karuvath Joseph, Joshy Sujatha Devi, P. Savithri, S. Agarwal, Ajay Singh, Sanjay Maiti, Kaustabh Kumar A non-invasive ultrasensitive diagnostic approach for COVID-19 infection using salivary label-free SERS fingerprinting and artificial intelligence |
title | A non-invasive ultrasensitive diagnostic approach for COVID-19 infection using salivary label-free SERS fingerprinting and artificial intelligence |
title_full | A non-invasive ultrasensitive diagnostic approach for COVID-19 infection using salivary label-free SERS fingerprinting and artificial intelligence |
title_fullStr | A non-invasive ultrasensitive diagnostic approach for COVID-19 infection using salivary label-free SERS fingerprinting and artificial intelligence |
title_full_unstemmed | A non-invasive ultrasensitive diagnostic approach for COVID-19 infection using salivary label-free SERS fingerprinting and artificial intelligence |
title_short | A non-invasive ultrasensitive diagnostic approach for COVID-19 infection using salivary label-free SERS fingerprinting and artificial intelligence |
title_sort | non-invasive ultrasensitive diagnostic approach for covid-19 infection using salivary label-free sers fingerprinting and artificial intelligence |
topic | Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9389522/ https://www.ncbi.nlm.nih.gov/pubmed/36049288 http://dx.doi.org/10.1016/j.jphotobiol.2022.112545 |
work_keys_str_mv | AT karunakaranvarsha anoninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT josephmanum anoninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT yadevinduprabha anoninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT sharmahimanshu anoninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT shamnakottarathil anoninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT sauravsumeet anoninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT sreejithremananpushpa anoninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT anandveena anoninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT beegumrosenara anoninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT regidavids anoninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT iypethomas anoninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT saradadevikl anoninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT nizarudheena anoninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT sharmadms anoninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT sharmarishi anoninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT mukhiyaravindra anoninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT thoutieshwar anoninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT yoosafkaruvath anoninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT josephjoshy anoninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT sujathadevip anoninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT savithris anoninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT agarwalajay anoninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT singhsanjay anoninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT maitikaustabhkumar anoninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT karunakaranvarsha noninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT josephmanum noninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT yadevinduprabha noninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT sharmahimanshu noninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT shamnakottarathil noninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT sauravsumeet noninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT sreejithremananpushpa noninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT anandveena noninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT beegumrosenara noninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT regidavids noninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT iypethomas noninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT saradadevikl noninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT nizarudheena noninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT sharmadms noninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT sharmarishi noninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT mukhiyaravindra noninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT thoutieshwar noninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT yoosafkaruvath noninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT josephjoshy noninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT sujathadevip noninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT savithris noninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT agarwalajay noninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT singhsanjay noninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence AT maitikaustabhkumar noninvasiveultrasensitivediagnosticapproachforcovid19infectionusingsalivarylabelfreesersfingerprintingandartificialintelligence |