Surface-Enhanced Raman Scattering Combined with Machine Learning for Rapid and Sensitive Detection of Anti-SARS-CoV-2 IgG.

Journal: Biosensors
PMID:

Abstract

This work reports an efficient method to detect SARS-CoV-2 antibodies in blood samples based on SERS combined with a machine learning tool. For this purpose, gold nanoparticles directly conjugated with spike protein were used in human blood samples to identify anti-SARS-CoV-2 antibodies. The comprehensive database utilized Raman spectra from all 594 blood serum samples. Machine learning investigations were carried out using the Scikit-Learn library and were implemented in Python, and the characteristics of Raman spectra of positive and negative SARS-CoV-2 samples were extracted using the Uniform Manifold Approximation and Projection (UMAP) technique. The machine learning models used were k-Nearest Neighbors (kNN), Support Vector Machine (SVM), Decision Trees (DTs), logistic regression (LR), and Light Gradient Boosting Machine (LightGBM). The kNN model led to a sensitivity of 0.943, specificity of 0.9275, and accuracy of 0.9377. This study showed that combining Raman spectroscopy and a machine algorithm can be an effective diagnostic method. Furthermore, we highlighted the advantages and disadvantages of each algorithm, providing valuable information for future research.

Authors

  • Thais de Andrade Silva
    Morphology Department, Federal University of Espirito Santo, Av Marechal Campos, 1468, Vitória 29040-090, ES, Brazil.
  • Gabriel Fernandes Souza Dos Santos
    Morphology Department, Federal University of Espirito Santo, Av Marechal Campos, 1468, Vitória 29040-090, ES, Brazil.
  • Adilson Ribeiro Prado
    Department of Control Engineering and Automation, Federal Institute of Espírito Santo, Serra, ES, Brazil.
  • Daniel Cruz Cavalieri
    Federal Institute of Espírito Santo, Campus Serra, Serra 29173-087, ES, Brazil.
  • Arnaldo Gomes Leal Junior
    Telecommunications Laboratory, Electrical Engineering Department, Federal University of Espírito Santo (UFES), Av Fernando Ferrari 514, Vitória 29075-910, ES, Brazil.
  • Flávio Garcia Pereira
    Federal Institute of Espírito Santo, Campus Serra, Serra 29173-087, ES, Brazil.
  • Camilo A R Díaz
    Telecommunications Laboratory, Electrical Engineering Department, Federal University of Espírito Santo (UFES), Av Fernando Ferrari 514, Vitória 29075-910, ES, Brazil.
  • Marco César Cunegundes Guimarães
    Department of Morphology, Center of Health Sciences, Federal University of Espírito Santo, Vitória, Brazil.
  • Servio Túlio Alves Cassini
    Center of Research, Innovation and Development of Espirito Santo, Ladeira Eliezer Batista, Cariacica 29140-130, ES, Brazil.
  • Jairo Pinto de Oliveira
    Morphology Department, Federal University of Espirito Santo, Av Marechal Campos, 1468, Vitória 29040-090, ES, Brazil.