Metabolomics integrated with machine learning to discriminate the geographic origin of Rougui Wuyi rock tea

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Abstract

The geographic origin of agri-food products contributes greatly to their quality and market value. Here, we developed a robust method combining metabolomics and machine learning (ML) to authenticate the geographic origin of Wuyi rock tea, a premium oolong tea. The volatiles of 333 tea samples (174 from the core region and 159 from the non-core region) were profiled using gas chromatography time-of-flight mass spectrometry and a series of ML algorithms were tested. Wuyi rock tea from the two regions featured distinct aroma profiles. Multilayer Perceptron achieved the best performance with an average accuracy of 92.7% on the training data using 176 volatile features. The model was benchmarked with two independent test sets, showing over 90% accuracy. Gradient Boosting algorithm yielded the best accuracy (89.6%) when using only 30 volatile features. The proposed methodology holds great promise for its broader applications in identifying the geographic origins of other valuable agri-food products.

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APA

Peng, Y., Zheng, C., Guo, S., Gao, F., Wang, X., Du, Z., … Yu, X. (2023). Metabolomics integrated with machine learning to discriminate the geographic origin of Rougui Wuyi rock tea. Npj Science of Food, 7(1). https://doi.org/10.1038/s41538-023-00187-1

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