红茶
绿茶
咖啡因
随机森林
儿茶素
数学
感觉系统
机器学习
化学
人工智能
食品科学
计算机科学
生物
多酚
抗氧化剂
生物化学
神经科学
内分泌学
作者
Lu Lu,Lu Wang,Ruyi Liu,Yingbin Zhang,Xin‐Qiang Zheng,Jian‐Liang Lu,Xinchao Wang,Jian‐Hui Ye
出处
期刊:Food Chemistry
[Elsevier]
日期:2024-05-01
卷期号:441: 138341-138341
被引量:4
标识
DOI:10.1016/j.foodchem.2023.138341
摘要
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.
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