Zhejiang University Tea Research Institute, 866 Yuhangtang Road, Hangzhou 310058, China.
Key Laboratory of Biology, Genetics and Breeding of Special Economic Animals and Plants, Ministry of Agriculture and Rural Affairs, National Center for Tea Plant Improvement, Tea Research Institute, Chinese Academy of Agricultural Sciences, Hangzhou 310008, China.
Food Chem. 2024 May 30;441:138341. doi: 10.1016/j.foodchem.2023.138341. Epub 2023 Dec 31.
The key components dominating the quality of green tea and black tea are still unclear. Here, we respectively produced green and black teas in March and June, and investigated the correlations between sensory quality and chemical compositions of dry teas by multivariate statistics, bioinformatics and artificial intelligence algorithm. The key chemical indices were screened out to establish tea sensory quality-prediction models based on the result of OPLS-DA and random forest, namely 4 flavonol glycosides of green tea and 8 indices of black tea (4 pigments, epigallocatechin, kaempferol-3-O-rhamnosyl-glucoside, ratios of caffeine/total catechins and epi/non-epi catechins). Compared with OPLS-DA and random forest, the support vector machine model had good sensory quality-prediction performance for both green tea and black tea (F1-score > 0.92), even based on the indices of fresh tea leaves. Our study explores the potential of artificial intelligence algorithm in classification and prediction of tea products with different sensory quality.
主导绿茶和红茶品质的关键成分仍不清楚。在这里,我们分别在 3 月和 6 月制作了绿茶和红茶,并通过多元统计、生物信息学和人工智能算法研究了干茶的感官质量与化学成分之间的相关性。根据 OPLS-DA 和随机森林的结果,筛选出关键化学指标,建立了基于茶感官质量预测模型,即 4 种绿茶的类黄酮糖苷和 8 种红茶指标(4 种色素、表没食子儿茶素、山奈酚-3-O-鼠李糖苷、咖啡因/总儿茶素的比值和表儿茶素/非表儿茶素的比值)。与 OPLS-DA 和随机森林相比,支持向量机模型对绿茶和红茶的感官质量预测性能都很好(F1 得分>0.92),甚至可以基于鲜茶叶的指标进行预测。本研究探索了人工智能算法在不同感官质量茶产品分类和预测中的潜力。