风味
蓝图
透视图(图形)
质量(理念)
控制(管理)
生化工程
计算机科学
人工智能
化学
食品科学
工程类
认识论
哲学
机械工程
作者
Andrea Caratti,Angelica Fina,Francesca Trapani,Carlo Bicchi,Erica Liberto,Chiara Cordero,Federico Magagna
出处
期刊:Molecules
[MDPI AG]
日期:2024-01-23
卷期号:29 (3): 565-565
标识
DOI:10.3390/molecules29030565
摘要
Tea infusions are the most consumed beverages in the world after water; their pleasant yet peculiar flavor profile drives consumer choice and acceptance and becomes a fundamental benchmark for the industry. Any qualification method capable of objectifying the product’s sensory features effectively supports industrial quality control laboratories in guaranteeing high sample throughputs even without human panel intervention. The current study presents an integrated analytical strategy acting as an Artificial Intelligence decision tool for black tea infusion aroma and taste blueprinting. Key markers validated by sensomics are accurately quantified in a wide dynamic range of concentrations. Thirteen key aromas are quantitatively assessed by standard addition with in-solution solid-phase microextraction sampling followed by GC-MS. On the other hand, nineteen key taste and quality markers are quantified by external standard calibration and LC-UV/DAD. The large dynamic range of concentration for sensory markers is reflected in the selection of seven high-quality teas from different geographical areas (Ceylon, Darjeeling Testa Valley and Castleton, Assam, Yunnan, Azores, and Kenya). The strategy as a sensomics-based expert system predicts teas’ sensory features and acts as an AI smelling and taste machine suitable for quality controls.
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