Machine learning-guided REIMS pattern recognition of non-dairy cream, milk fat cream and whipping cream for fraudulence identification

•A REIMS method was developed for determination of whipping creams.•Lipid differences in non-dairy cream and milk fat cream were deciphered by OPLS-DA.•Rapid detection of minute non-dairy cream fraud in milk fat cream was achieved.•Machine learning-guided REIMS pattern recognition improved accuracy...

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Veröffentlicht in:Food chemistry 2023-12, Vol.429, p.136986-136986, Article 136986
Hauptverfasser: Cui, Yiwei, Lu, Weibo, Xue, Jing, Ge, Lijun, Yin, Xuelian, Jian, Shikai, Li, Haihong, Zhu, Beiwei, Dai, Zhiyuan, Shen, Qing
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container_title Food chemistry
container_volume 429
creator Cui, Yiwei
Lu, Weibo
Xue, Jing
Ge, Lijun
Yin, Xuelian
Jian, Shikai
Li, Haihong
Zhu, Beiwei
Dai, Zhiyuan
Shen, Qing
description •A REIMS method was developed for determination of whipping creams.•Lipid differences in non-dairy cream and milk fat cream were deciphered by OPLS-DA.•Rapid detection of minute non-dairy cream fraud in milk fat cream was achieved.•Machine learning-guided REIMS pattern recognition improved accuracy and reduced detection time. The illegal adulteration of non-dairy cream in milk fat cream during the manufacturing process of baked goods has significantly hindered the robust growth of the dairy industry. In this study, a method based on rapid evaporative ionization mass spectrometry (REIMS) lipidomics pattern recognition integrated with machine learning algorithms was established. A total of 26 ions with importance were picked using multivariate statistical analysis as salient contributing features to distinguish between milk fat cream and non-dairy cream. Furthermore, employing discriminant analysis, decision trees, support vector machines, and neural network classifiers, machine learning models were utilized to classify non-dairy cream, milk fat cream, and minute quantities of non-dairy cream adulterated in milk fat cream. These approaches were enhanced through hyperparameter optimization and feature engineering, yielding accuracy rates at 98.4–99.6%. This artificial intelligent method of machine learning-guided REIMS pattern recognition can accurately identify adulteration of whipped cream and might help combat food fraud.
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The illegal adulteration of non-dairy cream in milk fat cream during the manufacturing process of baked goods has significantly hindered the robust growth of the dairy industry. In this study, a method based on rapid evaporative ionization mass spectrometry (REIMS) lipidomics pattern recognition integrated with machine learning algorithms was established. A total of 26 ions with importance were picked using multivariate statistical analysis as salient contributing features to distinguish between milk fat cream and non-dairy cream. Furthermore, employing discriminant analysis, decision trees, support vector machines, and neural network classifiers, machine learning models were utilized to classify non-dairy cream, milk fat cream, and minute quantities of non-dairy cream adulterated in milk fat cream. These approaches were enhanced through hyperparameter optimization and feature engineering, yielding accuracy rates at 98.4–99.6%. 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The illegal adulteration of non-dairy cream in milk fat cream during the manufacturing process of baked goods has significantly hindered the robust growth of the dairy industry. In this study, a method based on rapid evaporative ionization mass spectrometry (REIMS) lipidomics pattern recognition integrated with machine learning algorithms was established. A total of 26 ions with importance were picked using multivariate statistical analysis as salient contributing features to distinguish between milk fat cream and non-dairy cream. Furthermore, employing discriminant analysis, decision trees, support vector machines, and neural network classifiers, machine learning models were utilized to classify non-dairy cream, milk fat cream, and minute quantities of non-dairy cream adulterated in milk fat cream. These approaches were enhanced through hyperparameter optimization and feature engineering, yielding accuracy rates at 98.4–99.6%. 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subjects Chemometric machine learning
Chemometric multivariate statistical analysis
Pattern recognition
Rapid evaporative ionization mass spectrometry (REIMS) lipid fingerprint
Whipping cream fraudulence
title Machine learning-guided REIMS pattern recognition of non-dairy cream, milk fat cream and whipping cream for fraudulence identification
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