Research Article
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Year 2024, Volume: 42 Issue: 6, 1892 - 1898, 09.12.2024

Abstract

References

  • REFERENCES
  • [1] Lai C-C, Shih T-P, Ko W-C, Tang H-J, Hsueh P-R. Severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) and coronavirus disease-2019 (COVID-19): The epidemic and the challenges. Int J Antimicrob Agents 2020;55:105924. [CrossRef]
  • [2] Wu D, Wu T, Liu Q, Yang Z. The SARS-CoV-2 outbreak: What we know. Int J Infect Dis 2020;94:44–48. [CrossRef]
  • [3] COVID-19 Map. Available at: https://coronavirus.jhu.edu/map.html Last Accessed Date: 02.08.2023
  • [4] Younes N, Al-Sadeq DW, Al-Jighefee H, Younes S, Al-Jamal O, Daas, HI, et al. Challenges in Laboratory Diagnosis of the Novel Coronavirus SARS-CoV-2. Viruses 2020;12:582. [CrossRef]
  • [5] Zhu X, Xu T, Lin Q, Duan Y. Technical development of Raman spectroscopy: From instrumental to advanced combined technologies. Appl Spectrosc Rev 2014;49:64–82. [CrossRef]
  • [6] Kahraman M, Yazici MM, Slahin F, Bayrak ÖF, Çulha M. Reproducible surface-enhanced raman scattering spectra of bacteria on aggregated silver nanoparticles. Appl Spectrosc 2007;61:479–485. [CrossRef]
  • [7] Al-Shaebi Z, Uysal Ciloglu F, Nasser M, Aydin O. Highly accurate identification of bacteria's antibiotic resistance based on Raman spectroscopy and u-net deep learning algorithms. ACS Omega 2022;7:29443–29451. [CrossRef]
  • [8] Ciloglu FU, Hora M, Gundogdu A, Kahraman M, Tokmakci M, Aydin O. SERS-based sensor with a machine learning based effective feature extraction technique for fast detection of colistin-resistant Klebsiella pneumoniae. Anal Chim Acta 2022;1221:340094. [CrossRef]
  • [9] Ye J, Yeh Y-T, Xue Y, Wang Z, Zhang N, Liu H, et al. Accurate virus identification with interpretable Raman signatures by machine learning. Proc Natl Acad Sci U S A 2022;119:e2118836119. [CrossRef]
  • [10] Carlomagno C, Bertazioli D, Gualerzi A, Picciolini S, Banfi PI, Lax A, et al. COVID-19 salivary Raman fingerprint: innovative approach for the detection of current and past SARS-CoV-2 infections. Sci Rep 2021;11:4943. [CrossRef]
  • [11] Zhang D, Zhang X, Ma R, Deng S, Wang X, Wang X, et al. Ultra-fast and onsite interrogation of Severe Acute Respiratory Syndrome Coronavirus 2 (SARS-CoV-2) in waters via surface enhanced Raman scattering (SERS). Water Res 2021;200:117243. [CrossRef]
  • [12] Akdeniz M, Ciloglu FU, Tunc CU, Yilmaz U, Kanarya D, Atalay P, et al. Investigation of mammalian cells expressing SARS-CoV-2 proteins by surface-enhanced Raman scattering and multivariate analysis. Analyst 2022;147:1213–1221. [CrossRef]
  • [13] Yin G, Li L, Lu S, Yin Y, Su Y, Zeng Y, et al. An efficient primary screening of COVID-19 by serum Raman spectroscopy. J Raman Spectrosc 2021;52:949–958. [CrossRef]
  • [14] Deepaisarn S, Vong C, Perera M. Exploring Machine Learning Pipelines for Raman Spectral Classification of COVID-19 Samples. In: 2022 14th International Conference on Knowledge and Smart Technology (KST). pp. 51–56. [CrossRef]
  • [15] Wei Y, Chen H, Yu B, Jia C, Cong X, Cong, L. Multi-scale sequential feature selection for disease classification using Raman spectroscopy data. Comput Biol Med 2023;162:10705. [CrossRef]
  • [16] Arslan AH, Ciloglu FU, Yilmaz U, Simsek E, Aydin O. Discrimination of waterborne pathogens, Cryptosporidium parvum oocysts and bacteria using surface-enhanced Raman spectroscopy coupled with principal component analysis and hierarchical clustering. Spectrochim Acta A Mol Biomol Spectrosc 2022;267:120475. [CrossRef]
  • [17] Ciloglu FU, Saridag AM, Kilic IH, Tokmakci M, Kahraman M, Aydin O. Identification of methicillin-resistant Staphylococcus aureus bacteria using surface-enhanced Raman spectroscopy and machine learning techniques. Analyst 2020;145:7559–7570. [CrossRef]
  • [18] Jollife IT. Principal Component Analysis. New York: Springer; 2002.
  • [19] Bishop CM. Pattern Recognition and Machine Learning. New York: Springer; 2013.
  • [20] Walls AC, Park YJ, Tortorici MA, Wall A, McGuire AT, Veesler D. Structure, function, and antigenicity of the SARS-CoV-2 spike glycoprotein. Cell 2020;181:281–292.e6. [CrossRef]
  • [21] Shen B, Yi X, Sun Y, Bi X, Du J, Zhang C, et al. Proteomic and metabolomic characterization of COVID-19 patient sera Cell 2020;182:59–72.e15. [CrossRef]
  • [22] Bradley AP. The use of the area under the ROC curve in the evaluation of machine learning algorithms. Pattern Recognit 1997;30:1145–1159. [CrossRef]
  • [23] Fawcett T. An introduction to ROC analysis. Pattern Recogn Lett 2006;27:861–874. [CrossRef]

Detection of COVID-19 infection by using Raman spectroscopy of serum samples and machine learning

Year 2024, Volume: 42 Issue: 6, 1892 - 1898, 09.12.2024

Abstract

Rapid, simple, and accurate detection is important to slow down the spread of epidemics in the era of the pandemic. COVID-19 has been the biggest epidemic of the current century and continues. Therefore, it is extremely important to develop methods that allow the detection of COVID-19 by eliminating the disadvantages of the existing methods. The aim of this study is to perform rapid and reliable detection of COVID-19 using Raman spectroscopy and machine learning techniques. Here, Raman spectra of serum samples collected from COVID-19 patients, suspected cases, and healthy controls were utilized. Machine learning techniques were employed due to the absence of significant discernible variations between the Raman spectra of the three groups with the naked eye. Therefore, principal component analysis (PCA) was utilized to reveal discriminative features of the classes. Support vector machine (SVM), k-nearest neighbors (KNN), and decision tree (DT) classification models were utilized by using extracted features with PCA. SVM and KNN provide high accuracy ± standard deviation values of 86.5±0.7% and 87.3±0.6% respectively. Sensitivity (recall), precision, and area under the curve (AUC) which are important performance evaluation metrics were also calculated for comparison. Results show that Raman spectra combined with machine learning presents a promising tool for the accurate detection of COVID-19 in clinical use

References

  • REFERENCES
  • [1] Lai C-C, Shih T-P, Ko W-C, Tang H-J, Hsueh P-R. Severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) and coronavirus disease-2019 (COVID-19): The epidemic and the challenges. Int J Antimicrob Agents 2020;55:105924. [CrossRef]
  • [2] Wu D, Wu T, Liu Q, Yang Z. The SARS-CoV-2 outbreak: What we know. Int J Infect Dis 2020;94:44–48. [CrossRef]
  • [3] COVID-19 Map. Available at: https://coronavirus.jhu.edu/map.html Last Accessed Date: 02.08.2023
  • [4] Younes N, Al-Sadeq DW, Al-Jighefee H, Younes S, Al-Jamal O, Daas, HI, et al. Challenges in Laboratory Diagnosis of the Novel Coronavirus SARS-CoV-2. Viruses 2020;12:582. [CrossRef]
  • [5] Zhu X, Xu T, Lin Q, Duan Y. Technical development of Raman spectroscopy: From instrumental to advanced combined technologies. Appl Spectrosc Rev 2014;49:64–82. [CrossRef]
  • [6] Kahraman M, Yazici MM, Slahin F, Bayrak ÖF, Çulha M. Reproducible surface-enhanced raman scattering spectra of bacteria on aggregated silver nanoparticles. Appl Spectrosc 2007;61:479–485. [CrossRef]
  • [7] Al-Shaebi Z, Uysal Ciloglu F, Nasser M, Aydin O. Highly accurate identification of bacteria's antibiotic resistance based on Raman spectroscopy and u-net deep learning algorithms. ACS Omega 2022;7:29443–29451. [CrossRef]
  • [8] Ciloglu FU, Hora M, Gundogdu A, Kahraman M, Tokmakci M, Aydin O. SERS-based sensor with a machine learning based effective feature extraction technique for fast detection of colistin-resistant Klebsiella pneumoniae. Anal Chim Acta 2022;1221:340094. [CrossRef]
  • [9] Ye J, Yeh Y-T, Xue Y, Wang Z, Zhang N, Liu H, et al. Accurate virus identification with interpretable Raman signatures by machine learning. Proc Natl Acad Sci U S A 2022;119:e2118836119. [CrossRef]
  • [10] Carlomagno C, Bertazioli D, Gualerzi A, Picciolini S, Banfi PI, Lax A, et al. COVID-19 salivary Raman fingerprint: innovative approach for the detection of current and past SARS-CoV-2 infections. Sci Rep 2021;11:4943. [CrossRef]
  • [11] Zhang D, Zhang X, Ma R, Deng S, Wang X, Wang X, et al. Ultra-fast and onsite interrogation of Severe Acute Respiratory Syndrome Coronavirus 2 (SARS-CoV-2) in waters via surface enhanced Raman scattering (SERS). Water Res 2021;200:117243. [CrossRef]
  • [12] Akdeniz M, Ciloglu FU, Tunc CU, Yilmaz U, Kanarya D, Atalay P, et al. Investigation of mammalian cells expressing SARS-CoV-2 proteins by surface-enhanced Raman scattering and multivariate analysis. Analyst 2022;147:1213–1221. [CrossRef]
  • [13] Yin G, Li L, Lu S, Yin Y, Su Y, Zeng Y, et al. An efficient primary screening of COVID-19 by serum Raman spectroscopy. J Raman Spectrosc 2021;52:949–958. [CrossRef]
  • [14] Deepaisarn S, Vong C, Perera M. Exploring Machine Learning Pipelines for Raman Spectral Classification of COVID-19 Samples. In: 2022 14th International Conference on Knowledge and Smart Technology (KST). pp. 51–56. [CrossRef]
  • [15] Wei Y, Chen H, Yu B, Jia C, Cong X, Cong, L. Multi-scale sequential feature selection for disease classification using Raman spectroscopy data. Comput Biol Med 2023;162:10705. [CrossRef]
  • [16] Arslan AH, Ciloglu FU, Yilmaz U, Simsek E, Aydin O. Discrimination of waterborne pathogens, Cryptosporidium parvum oocysts and bacteria using surface-enhanced Raman spectroscopy coupled with principal component analysis and hierarchical clustering. Spectrochim Acta A Mol Biomol Spectrosc 2022;267:120475. [CrossRef]
  • [17] Ciloglu FU, Saridag AM, Kilic IH, Tokmakci M, Kahraman M, Aydin O. Identification of methicillin-resistant Staphylococcus aureus bacteria using surface-enhanced Raman spectroscopy and machine learning techniques. Analyst 2020;145:7559–7570. [CrossRef]
  • [18] Jollife IT. Principal Component Analysis. New York: Springer; 2002.
  • [19] Bishop CM. Pattern Recognition and Machine Learning. New York: Springer; 2013.
  • [20] Walls AC, Park YJ, Tortorici MA, Wall A, McGuire AT, Veesler D. Structure, function, and antigenicity of the SARS-CoV-2 spike glycoprotein. Cell 2020;181:281–292.e6. [CrossRef]
  • [21] Shen B, Yi X, Sun Y, Bi X, Du J, Zhang C, et al. Proteomic and metabolomic characterization of COVID-19 patient sera Cell 2020;182:59–72.e15. [CrossRef]
  • [22] Bradley AP. The use of the area under the ROC curve in the evaluation of machine learning algorithms. Pattern Recognit 1997;30:1145–1159. [CrossRef]
  • [23] Fawcett T. An introduction to ROC analysis. Pattern Recogn Lett 2006;27:861–874. [CrossRef]
There are 24 citations in total.

Details

Primary Language English
Subjects Clinical Chemistry
Journal Section Research Articles
Authors

Fatma Uysal Çiloğlu 0000-0001-8827-3668

Publication Date December 9, 2024
Submission Date August 3, 2023
Published in Issue Year 2024 Volume: 42 Issue: 6

Cite

Vancouver Uysal Çiloğlu F. Detection of COVID-19 infection by using Raman spectroscopy of serum samples and machine learning. SIGMA. 2024;42(6):1892-8.

IMPORTANT NOTE: JOURNAL SUBMISSION LINK https://eds.yildiz.edu.tr/sigma/