A mid-infrared spectroscopy and machine learning algorithm-based method for rapidly detecting content of β-lactoglobulin in milk
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1.College of Animal Science and Technology,College of Veterinary Medicine, Huazhong Agricultural University,Wuhan 430070,China;2.Ningxia Institute of Veterinary Drug and Feed Supervision,Yinchuan 750000,China;3.Shijiazhuang Tianquan Breeding Dairy Co.,Ltd.,Shijiazhuang 050061,China

Clc Number:

S823

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    Abstract:

    501 milk samples of healthy Chinese Holstein cows were collected from major milk-producing regions in Northwest,North,and Central China to establish a method that can rapidly,in batch,and efficiently detect the content of β-lactoglobulin in milk from Chinese Holstein cows,high-performance liquid chromatography (HPLC) was used to determine the content of β-lactoglobulin in milk samples,and the mid-infrared spectroscopy (MIRS) data of milk samples were synchronously measured and collected 12 methods of spectra pretreatment were randomly combined twice in a row,and the characteristic bands were manually selected with MIRS as the predictor variable and the content of β-lactoglobulin as the dependent variable.Partial least squares regression (PLSR) was used as a traditional machine learning algorithm to establish an optimal model for the prediction of the content of β-lactoglobulin in milk.The results showed that the RC2 and RP2 of the cross validation set and test set in the established model was 0.812 9 and 0.768 8,with the root mean square errors,RMSEC and RMSEP of 0.476 2 g/L and 0.524 9 g/L,the RPD of 2.076 6,meeting the requirements for measuring the production performance of livestock and poultry.It is indicated that MIRS can be used to establish a model for predicting the content of β-lactoglobulin in milk from Chinese Holstein cows.

    Fig.1 Mean spectra of milk samples
    Fig.2 Characteristic spectral map of β-lactoglobulin
    Fig.3 Linear fitting of true and predicted values of β-lactoglobulin
    Table 1 Effective sample size and time distribution
    Table 2 The content of β-lactoglobulin in milk
    Table 3 Optimal preprocessing combination selection results
    Table 4 Modeling effect of different principal components
    Table 5 Effects of prediction model
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邹慧颖,王东薇,樊懿楷,刘维华,杨俊华,余文莉,SABEK Ahmed Abdalla Ahmed Ibrahim,张淑君. A mid-infrared spectroscopy and machine learning algorithm-based method for rapidly detecting content of β-lactoglobulin in milk[J]. Jorunal of Huazhong Agricultural University,2025,44(2):125-133.

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  • Received:May 08,2024
  • Online: April 02,2025
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