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基于植物的食品中空间成分分类的质谱成像技术

Mass Spectrometry Imaging for Spatial Ingredient Classification in Plant-Based Food.

作者信息

Vats Mudita, Flinders Bryn, Visvikis Theodoros, Dawid Corinna, Hofmann Thomas F, Cuypers Eva, Heeren Ron M A

机构信息

Maastricht MultiModal Molecular Imaging (M4I) Institute, Division of Imaging Mass Spectrometry, Maastricht University, Universiteitssingel 50, 6229 ER Maastricht, The Netherlands.

Chair of Food Chemistry and Molecular and Sensory Science, Technical University of Munich, Lise-Meitner-Str. 34, Freising 85354, Germany.

出版信息

J Am Soc Mass Spectrom. 2025 Jan 1;36(1):100-107. doi: 10.1021/jasms.4c00353. Epub 2024 Dec 7.

Abstract

Mass spectrometry imaging (MSI) techniques enable the generation of molecular maps from complex and heterogeneous matrices. A burger patty, whether plant-based or meat-based, represents one such complex matrix where studying the spatial distribution of components can unveil crucial features relevant to the consumer experience or production process. Furthermore, the MSI data can aid in the classification of ingredients and composition. Thin sections of different burger samples and vegetable constituents (carrot, pea, pepper, onion, and corn) were prepared for matrix-assisted laser desorption/ionization (MALDI) and desorption electrospray ionization (DESI) MSI analysis. MSI measurements were performed on all samples, and the data sets were processed to build three machine learning models aimed at detecting meat adulteration in vegetable burger samples, identifying individual ingredients within the vegetable burger matrix, and discriminating between burgers from different manufacturers. Ultimately, the successful detection of adulteration and differentiation of various burger recipes and their constituent ingredients were achieved. This study demonstrates the potential of MSI coupled with building machine learning models to enable the comprehensive characterization of burgers, addressing critical concerns for both the food industry and consumers.

摘要

质谱成像(MSI)技术能够从复杂且异质的基质中生成分子图谱。汉堡肉饼,无论是植物性还是肉类的,都代表了这样一种复杂基质,在其中研究成分的空间分布可以揭示与消费者体验或生产过程相关的关键特征。此外,MSI数据有助于成分和组成的分类。制备了不同汉堡样品和蔬菜成分(胡萝卜、豌豆、辣椒、洋葱和玉米)的薄片,用于基质辅助激光解吸/电离(MALDI)和解吸电喷雾电离(DESI)MSI分析。对所有样品进行了MSI测量,并对数据集进行处理以构建三个机器学习模型,旨在检测植物性汉堡样品中的肉类掺假、识别植物性汉堡基质中的单个成分以及区分不同制造商的汉堡。最终,成功检测到掺假并区分了各种汉堡配方及其成分。这项研究证明了MSI与构建机器学习模型相结合的潜力,能够实现对汉堡的全面表征,解决了食品行业和消费者的关键问题。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2178/11697329/5c70811a1ca0/js4c00353_0001.jpg

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