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

Yifei Peng(Fujian Agriculture and Forestry University), Chao Zheng(Fujian Agriculture and Forestry University), Shuang Guo(Fujian Agriculture and Forestry University), Fuquan Gao(Fujian Agriculture and Forestry University), Xiaoxia Wang(Fujian Agriculture and Forestry University), Zhenghua Du(Fujian Agriculture and Forestry University), Feng Gao(Fujian Agriculture and Forestry University), Feng Su, Wenjing Zhang, Xueling Yu(Fujian Agriculture and Forestry University), Guoying Liu(Wuyistar (China)), Baoshun Liu(Wuyistar (China)), Chengjian Wu(Education Department of Fujian Province), Yun Sun(Fujian Agriculture and Forestry University), Zhenbiao Yang(Fujian Agriculture and Forestry University), Zhilong Hao(Fujian Agriculture and Forestry University), Xiaomin Yu(Fujian Agriculture and Forestry University)
npj Science of Food
March 16, 2023
Cited by 47Open Access
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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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