Prediction adulteration of yak milk based on machine learning and mid-infrared spectroscopy
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1.College of Animal Science and Technology, College of Veterinary Medicine,Huazhong Agricultural University, Wuhan 430070, China;2.Animal Husbandry Station of Gannan Tibetan Autonomous Prefecture, Hezuo 747000,China;3.Animal Disease Prevention and Control Center of Luqu County, Gannan Prefecture,Luqu 747200,China

Clc Number:

O657.33;TS252.7

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    Abstract:

    A predictive model for detecting the addition of milk to yak milk was established by combining mid-infrared spectroscopy (MIRS) with machine learning algorithms to supervise and regulate the production and sale of yak milk, further quantitatively predict the proportion of adulteration in yak milk and provide new technology of rapid detection. 76 samples of pure yak milk, 76 samples of yak milk adulterated with 10% milk, 76 samples of yak milk adulterated with 25% milk, and 76 samples of yak milk adulterated with 50% milk were used to establish binary qualitative models for distinguishing pure yak milk from yak milk adulterated with milk, and quantitative regression models for predicting the proportion of yak milk adulterated with milk with five spectral preprocessing algorithms, six qualitative and twelve quantitative machine learning algorithms. The results showed that the predictive model for identifying pure yak milk and yak milk adulterated with milk based on support vector machine modeling algorithm and the spectrum without preprocessing had the best performance. The validation set AUC, the accuracy, the sensitivity, and the specificity of the model was 0.95, 0.84, 0.93, and 0.87, which can be used for the identification of pure milk and adulterated milk. The optimal quantitative model for predicting the proportion of milk in yak milk was established using Bayesian regularized neural network modeling algorithm and first-order derivative spectral preprocessing algorithm. The model had RP2=0.88, RMSEV=6.57%, and RPD=2.89%. It is indicated that the combination of mid-infrared spectroscopy and machine learning algorithms can effectively identify yak milk adulterated with milk and detect the proportion of adulteration.

    Fig.1 Mid-infrared spectroscopy of yak milk, dairy cattle milk and yak milk-dairy cattle milk mixture with different adulteration ratios (10%-50%)
    Table 1 The nutrient composition of yak milk and dairy cattle milk
    Table 2 Performance of binary qualitative model in calibration set and validation set
    Table 3 Accuracy of optimal binary classification model predicting calibration set and verification set data
    Table 4 Performance of the predictive model for cow milk content adulteration in yak milk based on mid-infrared spectroscopy
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褚楚,罗雪路,王海童,温佩佩,杜超,丁考仁青,拉毛草,张淑君. Prediction adulteration of yak milk based on machine learning and mid-infrared spectroscopy[J]. Jorunal of Huazhong Agricultural University,2025,44(2):116-124.

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  • Received:April 07,2024
  • Online: April 02,2025
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