Rapid analysis and authentication of Chinese propolis using nanoelectrospray ionization mass spectrometry combined with machine learning

Food Chem. 2024 Jul 30:447:138928. doi: 10.1016/j.foodchem.2024.138928. Epub 2024 Mar 4.

Abstract

In this study, we established a simple, rapid, and high-throughput method for the analysis and classification of propolis samples. We utilized nanoESI-MS to analyze 37 samples of propolis from China for the first time, obtaining characteristic fingerprint spectra in negative ion mode, which were then integrated with multivariate analysis to explore variations between water extract of propolis (WEP) and ethanol extract of propolis (EEP). Furthermore, we categorized propolis samples based on different climate zones and colors, screening 10 differential metabolites among propolis from various climate zones, and 11 differential metabolites among propolis samples of different color. By employing machine learning models, we achieved high-precision discrimination and prediction between samples from different climate zones and colors, achieving predictive accuracies of 95.6% and 85.6%, respectively. These results highlight the significant potential of the nanoESI-MS coupled with machine learning methodology for precise classification within the realm of food products.

Keywords: Authentication; Machine learning; Multivariate analysis; Nanoliter electrospray ionization mass spectrometry; Partial least squares discriminant analysis; Propolis.

MeSH terms

  • Ascomycota*
  • Climate
  • Machine Learning
  • Mass Spectrometry
  • Propolis* / chemistry
  • Spectrometry, Mass, Electrospray Ionization / methods

Substances

  • Propolis