Untargeted metabolomics and machine learning unveil quality and authenticity interactions in grated Parmigiano Reggiano PDO cheese

Pier Paolo Becchi, Gabriele Rocchetti*, Pascual García-Pérez, Sara Michelini, Valentina Pizzamiglio, Luigi Lucini

*Autore corrispondente per questo lavoro

Risultato della ricerca: Contributo in rivistaArticolo in rivista

Abstract

The chemical composition of Parmigiano Reggiano (PR) hard cheese can be significantly affected by different factors across the dairy supply chain, including ripening, altimetric zone, and rind inclusion levels in grated hard cheeses. The present study proposes an untargeted metabolomics approach combined with machine learning chemometrics to evaluate the combined effect of these three critical parameters. Specifically, ripening was found to exert a pivotal role in defining the signature of PR cheeses, with amino acids and lipid derivatives that exhibited their role as key discriminant compounds. In parallel, a random forest classifier was used to predict the rind inclusion levels (> 18%) in grated cheeses and to authenticate the specific effect of altimetry dairy production, achieving a high prediction ability in both model performances (i.e., ∼60% and > 90%, respectively). Overall, these results open a novel perspective to identifying quality and authenticity markers metabolites in cheese.
Lingua originaleEnglish
pagine (da-a)N/A-N/A
RivistaFood Chemistry
Volume447
DOI
Stato di pubblicazionePubblicato - 2024

Keywords

  • Food integrity
  • Foodomics
  • Random Forest classification
  • Multivariate statistics
  • Multiblock orthogonal partial least squares

Fingerprint

Entra nei temi di ricerca di 'Untargeted metabolomics and machine learning unveil quality and authenticity interactions in grated Parmigiano Reggiano PDO cheese'. Insieme formano una fingerprint unica.

Cita questo