posted on 2024-12-07, 14:36authored byMudita Vats, Bryn Flinders, Theodoros Visvikis, Corinna Dawid, Thomas F. Hofmann, Eva Cuypers, Ron M. A. Heeren
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.