4.7 Article

Application of machine-learning methods to milk mid-infrared spectra for discrimination of cow milk from pasture or total mixed ration diets

Journal

JOURNAL OF DAIRY SCIENCE
Volume 104, Issue 12, Pages 12394-12402

Publisher

ELSEVIER SCIENCE INC
DOI: 10.3168/jds.2021-20812

Keywords

Fourier-transform mid-infrared spectroscopy; cow diet; food authentication; machine learning

Funding

  1. Science Foundation Ireland (Dublin)
  2. Department of Agriculture, Food and the Marine (Dublin) on behalf of the Government of Ireland [16/RC/3835]
  3. Science Foundation Ireland [18/SIRG/5562]
  4. Science Foundation Ireland (SFI) [18/SIRG/5562] Funding Source: Science Foundation Ireland (SFI)

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The prevalence of grass-fed labeled food products has increased, making verification of these claims crucial for consumer confidence. Mid-infrared spectroscopy is effective for authenticating milk sources, with linear discriminant analysis and partial least squares discriminant analysis offering the highest accuracy in predicting cow diet based on spectra. Efficient strategies for selecting discriminating wavelengths in the spectra are also emphasized.
The prevalence of grass-fed labeled food products on the market has increased in recent years, often commanding a premium price. To date, the majority of methods used for the authentication of grass-fed source products are driven by auditing and inspection of farm records. As such, the ability to verify grass-fed source claims to ensure consumer confidence will be important in the future. Mid-infrared (MIR) spectroscopy is widely used in the dairy industry as a rapid method for the routine monitoring of individual herd milk composition and quality. Further harnessing the data from individual spectra offers a promising and readily implementable strategy to authenticate the milk source at both farm and processor levels. Herein, a comprehensive comparison of the robustness, specificity, and accuracy of 11 machine-learning statistical analysis methods were tested for the discrimination of grass-fed versus non grass-fed milks based on the MIR spectra of 4,320 milk samples collected from cows on pasture or indoor total mixed ration-based feeding systems over a 3-yr period. Linear discriminant analysis and partial least squares discriminant analysis (PLS-DA) were demonstrated to offer the greatest level of accuracy for the prediction of cow diet from MIR spectra. Parsimonious strategies for the selection of the most discriminating wavelengths within the spectra are also highlighted.

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