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Abstract
The aim of the current study is to develop and characterise novel complex multi-phase in vitro 3D models, for advanced microbiological studies. More specifically, we enriched our previously developed bi-phasic polysaccharide (Xanthan Gum)/protein (Whey Protein) 3D model with a fat phase (Sunflower Oil) at various concentrations, i.e., 10%, 20%, 40% and 60% (v/v), for better mimicry of the structural and biochemical composition of real food products. Rheological, textural, and physicochemical analysis as well as advanced microscopy imaging (including spatial mapping of the fat droplet distribution) of the new tri-phasic 3D models revealed their similarity to industrial food products (especially cheese products). Furthermore, microbial growth experiments of foodborne bacteria, i.e., Listeria monocytogenes, Escherichia coli, Pseudomonas aeruginosa and Lactococcus lactis on the surface of the 3D models revealed very interesting results, regarding the growth dynamics and distribution of cells at colony level. More specifically, the size of the colonies formed on the surface of the 3D models, increased substantially for increasing fat concentrations, especially in mid- and late-exponential growth phases. Furthermore, colonies formed in proximity to fat were substantially larger as compared to the ones that were located far from the fat phase of the models. In terms of growth location, the majority of colonies were located on the protein/polysaccharide phase of the 3D models. All those differences at microscopic level, that can directly affect the bacterial response to decontamination treatments, were not captured by the macroscopic kinetics (growth dynamics), which were unaffected from changes in fat concentration. Our findings demonstrate the importance of developing structurally and biochemically complex 3D in vitro models (for closer proximity to industrial products), as well as the necessity of conducting multi-level microbial analyses, to better understand and predict the bacterial behaviour in relation to their biochemical and structural environment. Such studies in advanced 3D environments can assist a better/more accurate design of industrial antimicrobial processes, ultimately, improving food safety.
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Details
1 University of Surrey, Bioprocess and Biochemical Engineering Group (BioProChem), Department of Chemical and Process Engineering, Guildford, UK (GRID:grid.5475.3) (ISNI:0000 0004 0407 4824); University College London, Charles Bell House, Centre for 3D Models of Health and Disease, Division of Surgery and Interventional Science, London, UK (GRID:grid.83440.3b) (ISNI:0000 0001 2190 1201)
2 University of Surrey, Bioprocess and Biochemical Engineering Group (BioProChem), Department of Chemical and Process Engineering, Guildford, UK (GRID:grid.5475.3) (ISNI:0000 0004 0407 4824)
3 University of Surrey, School of Biosciences and Medicine, Guildford, UK (GRID:grid.5475.3) (ISNI:0000 0004 0407 4824)