Department for Sustainable Food Process, Università Cattolica del Sacro Cuore, Via Emilia Parmense 84, 29122 Piacenza, Italy.
Department of Animal Science, Food and Nutrition, Università Cattolica del Sacro Cuore, Via Emilia Parmense 84, 29122 Piacenza, Italy.
Food Chem. 2024 Jul 30;447:138938. doi: 10.1016/j.foodchem.2024.138938. Epub 2024 Mar 5.
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.
帕尔玛干酪(PR)硬奶酪的化学成分可能会受到乳制品供应链中不同因素的显著影响,包括成熟度、海拔高度区和磨碎硬奶酪中的干酪皮含量。本研究提出了一种非靶向代谢组学方法,并结合机器学习化学计量学来评估这三个关键参数的综合影响。具体来说,成熟度被发现对定义 PR 奶酪的特征具有关键作用,其中氨基酸和脂质衍生物表现出作为关键判别化合物的作用。同时,随机森林分类器用于预测磨碎奶酪中的干酪皮含量(>18%),并验证海拔乳制品生产的特定影响,在两种模型性能(即分别约为 60%和>90%)中都实现了较高的预测能力。总的来说,这些结果为识别奶酪中的质量和真实性标志物代谢物开辟了新的视角。