Abstract
The potential of proton transfer reaction mass spectrometry (PTR-MS) as a tool for classification of milk fats was evaluated in relation to quality and authentication issues. Butters and butter oils were subjected to heat and off-flavouring treatments in order to create sensorially defective samples. The effect of the treatments was evaluated by means of PTR-MS analysis, sensory analysis and classical chemical analysis. Subsequently, partial least square-discriminant analysis models (PLS-DA) were fitted to predict the matrix (butter/butter oil) and the sensory grades of the samples from their PTR-MS data. Using a 10-fold cross-validation scheme, 84% of the samples were successfully classified into butter and butter oil classes. Regarding sensory quality, 89% of the samples were correctly classified. As the milk fats were fairly successfully classified by the combination of PTR-MS and PLS-DA, this combination seems a promising approach with potential applications in quality control and control of regulations. © 2007 Springer-Verlag.
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Van Ruth, S. M., Koot, A., Akkermans, W., Araghipour, N., Rozijn, M., Baltussen, M., … Frankhuizen, R. (2008). Butter and butter oil classification by PTR-MS. European Food Research and Technology, 227(1), 307–317. https://doi.org/10.1007/s00217-007-0724-7
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