Raman spectroscopy: A rapid method to assess the effects of pasture feeding on the nutritional quality of butter.

J Dairy Sci

Food Chemistry and Technology Department, Teagasc Moorepark Food Research Centre, Fermoy, Co. Cork, P61 C996, Ireland; VistaMilk SFI Research Centre, Teagasc, Moorepark, Fermoy, Co. Cork, P61 P302, Ireland.

Published: October 2020

AI Article Synopsis

  • The type of diet cows are fed significantly influences the quality and composition of dairy products, particularly butter.
  • The study suggests using Raman spectroscopy as a quick and effective method to differentiate between butter made from pasture-fed and conventionally fed cows.
  • Positive correlations were found between certain spectral data from Raman spectroscopy and beneficial fatty acids in butter, indicating its potential for assessing nutritional quality and verifying "Grass-Fed" claims.

Article Abstract

The animal diet is a critical variable affecting the composition and functionality of dairy products. As "Grass-Fed" labeling becomes more prominent on the market, rapid and label-free methods for verification of feeding systems are required. This work proposes the use of Raman spectroscopy to study the effects of 3 different experimental cow feeding systems-perennial ryegrass pasture, perennial ryegrass with white clover pasture, and an indoor total mixed ration diet (TMR)-on the nutritional quality of sweet cream butter. The results demonstrate that Raman spectroscopy coupled with multivariate analysis is a promising approach to distinguish butter derived from pasture or conventional TMR feeding systems. A Pearson correlation analysis confirmed high positive correlations between the spectral bin at 1,657 cm, ascribed to the stretching vibrations of C=C bonds, and concentrations of α-linolenic acid and conjugated linolenic acid (CLA) in butter, and in general with the concentration of n-3 and n-3+CLA fatty acids and polyunsaturated fatty acids in the samples. The yellow color indicative of the presence of carotenoids in butter, which has previously been suggested as a biomarker of pasture or "Grass-Fed" feeding, was also positively correlated with the data obtained from the Raman spectra. Raman spectroscopy could also be used to accurately predict indicators of the nutritional quality of butter, such as the thrombogenic index, which showed a strong negative correlation with the spectral bin at 3,023 cm.

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Source
http://dx.doi.org/10.3168/jds.2020-18716DOI Listing

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