Ji Huizhuo, Pu Dandan, Yan Wenjing, Kong Jianlei, Zhang Qingchuan, Su Lijun, Lu Zhe, Chen Hefei, Zuo Min, Zhang Yuyu
China Key Laboratory of Geriatric Nutrition and Health (Beijing Technology and Business University), Ministry of Education, Beijing 100048, China; National Engineering Research Center for Agri-Product Quality Traceability, Beijing Technology and Business University, Beijing 100048, China.
China Key Laboratory of Geriatric Nutrition and Health (Beijing Technology and Business University), Ministry of Education, Beijing 100048, China; Food Laboratory of Zhongyuan, Beijing Technology and Business University, 100048, China; Key Laboratory of Flavor Science of China General Chamber of Commerce, Beijing Technology and Business University, 100048, China.
Food Chem. 2025 Mar 1;467:142307. doi: 10.1016/j.foodchem.2024.142307. Epub 2024 Dec 2.
Odor-taste interaction has gained success in enhancing saltiness perception. This work aimed to provide candidate odorants for saltiness enhancement. Volatile compounds and their frequencies in salty foods were systematically analyzed. The compounds with higher frequency were incorporated into the savory aroma compounds database. The saltiness enhancement concentrations of representative aroma compounds at the NaCl solution (3.00 g/L) were detected by sensory evaluation. SELF-referencing Embedded Strings-based representation leaning and graph attention network combined with Backpropagation Neural Network classifier was utilized to predict the saltiness-enhancing ability of odorants. Results showed that ketones, pyrazine and sulfur-containing compounds showed higher saltiness-enhancing ability. Mushroom and fatty attributes contributed to the saltiness-enhancing ability of aroma compounds. Deep learning model showed excellent generalization ability and accuracy (95.93 %), which provided rapid screening method for selecting savory aroma compounds. This study would provide new pathways for food industry to achieve salt reduction goals.
气味-味觉相互作用在增强咸味感知方面已取得成功。这项工作旨在提供用于增强咸味的候选气味剂。系统分析了咸味食品中的挥发性化合物及其出现频率。将出现频率较高的化合物纳入风味香气化合物数据库。通过感官评价检测了代表性香气化合物在NaCl溶液(3.00 g/L)中的增咸浓度。利用基于自参考嵌入字符串的表示学习和图注意力网络结合反向传播神经网络分类器来预测气味剂的增咸能力。结果表明,酮类、吡嗪类和含硫化合物表现出较高的增咸能力。蘑菇味和脂肪味属性有助于香气化合物的增咸能力。深度学习模型显示出优异的泛化能力和准确率(95.93%),为筛选风味香气化合物提供了快速方法。本研究将为食品工业实现减盐目标提供新途径。