Machine learning-assisted serum SERS strategy for rapid and non-invasive screening of early cystic echinococcosis

J Biophotonics. 2024 Mar;17(3):e202300376. doi: 10.1002/jbio.202300376. Epub 2024 Jan 1.

Abstract

Early and accurate diagnosis of cystic echinococcosis (CE) with existing technologies is still challenging. Herein, we proposed a novel strategy based on the combination of label-free serum surface-enhanced Raman scattering (SERS) spectroscopy and machine learning for rapid and non-invasive diagnosis of early-stage CE. Specifically, by establishing early- and middle-stage mouse models, the corresponding CE-infected and normal control serum samples were collected, and silver nanoparticles (AgNPs) were utilized as the substrate to obtain SERS spectra. The early- and middle-stage discriminant models were developed using a support vector machine, with diagnostic accuracies of 91.7% and 95.7%, respectively. Furthermore, by analyzing the serum SERS spectra, some biomarkers that may be related to early CE were found, including purine metabolites and protein-related amide bands, which was consistent with other biochemical studies. Thus, our findings indicate that label-free serum SERS analysis is a potential early-stage CE detection method that is promising for clinical translation.

Keywords: cystic echinococcosis; early‐stage diagnosis; machine learning; serum biomarkers; surface‐enhanced Raman scattering.

MeSH terms

  • Animals
  • Echinococcosis* / diagnostic imaging
  • Metal Nanoparticles* / chemistry
  • Mice
  • Proteins
  • Silver / chemistry
  • Spectrum Analysis, Raman / methods

Substances

  • Silver
  • Proteins