Article ID Journal Published Year Pages File Type
4362915 Food Microbiology 2014 8 Pages PDF
Abstract

•4622 Raman spectra of well-known meat pathogens were collected to create a database.•A three level classification tree based on SVM was built up.•19 meat-associated species could be discriminate by their Raman spectra.•Spiked beef and poultry samples were analysed for validation of the model.•The isolated bacteria were correctly assigned as their affiliated species.

The development of fast and reliable sensing techniques to detect food-borne microorganisms is a permanent concern in food industry and health care. For this reason, Raman microspectroscopy was applied to rapidly detect pathogens in meat, which could be a promising supplement to currently established methods.In this context, a spectral database of 19 species of the most important harmful and non-pathogenic bacteria associated with meat and poultry was established. To create a meat-like environment the microbial species were prepared on three different agar types.The whole amount of Raman data was taken as a basis to build up a three level classification model by means of support vector machines. Subsequent to a first classifier that differentiates between Raman spectra of Gram-positive and Gram-negative bacteria, two decision knots regarding bacterial genus and species follow. The different steps of the classification model achieved accuracies in the range of 90.6%–99.5%. This database was then challenged with independently prepared test samples. By doing so, beef and poultry samples were spiked with different pathogens associated with food-borne diseases and then identified. The test samples were correctly assigned to their genus and for the most part down to the species-level i.e. a differentiation from closely-related non-pathogenic members was achieved.

Related Topics
Life Sciences Agricultural and Biological Sciences Food Science
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