食品科学 ›› 2026, Vol. 47 ›› Issue (2): 48-57.doi: 10.7506/spkx1002-6630-20250709-077

• 基础研究 • 上一篇    下一篇

基于聚类分析描述味觉特征和机器学习快速筛选甜味物质

杨然,吴广维,杨宁,陈轩,胡家勇,金伟平,沈汪洋   

  1. (1.武汉轻工大学食品科学与工程学院,湖北 武汉 430023;2.国家市场监管重点实验室(动物源性食品中重点化学危害物检测技术),湖北 武汉 430071)
  • 出版日期:2026-01-25 发布日期:2026-02-05
  • 基金资助:
    湖北省重点研发项目(2023BBB068)

Rapid Screening of Sweeteners through Cluster Analysis of Taste Attributes and Machine Learning

YANG Ran, WU Guangwei, YANG Ning, CHEN Xuan, HU Jiayong, JIN Weiping, SHEN Wangyang   

  1. (1. School of Food Science and Engineering, Wuhan Polytechnic University, Wuhan 430023, China; 2. Key Laboratory of Detection Technology of Focus Chemical Hazards in Animal-Derived Food for State Market Regulation, Wuhan 430071, China)
  • Online:2026-01-25 Published:2026-02-05

摘要: 本研究运用电子舌和分子对接技术,系统分析12 种典型甜味物质的综合滋味及其与甜味受体的结合情况。基于主成分分析和聚类分析将这些甜味物质按照综合滋味特征划分为4 类:第I类以蔗糖为代表,整体味感纯净;第II类以莱鲍迪苷A为代表,涩味显著;第III类以罗汉果苷III为代表,酸味突出;第IV类以三氯蔗糖为代表,苦味明显。根据甜味物质与hT1R2和hT1R3甜味受体结合能力的差异,也将其划分为4 类。然后,利用偏最小二乘回归、随机森林回归和支持向量回归3 种模型构建电子舌和分子对接的单模态预测模型;进而对各单模态模型进行特征层融合,构建以分子特征为桥联的双模态预测模型。本研究成功筛选出与蔗糖味感相似的代糖是麦芽糖醇和低聚异麦芽糖,并进行感官评定验证。本研究为快速筛选味感纯净的甜味物质提供了一种可靠的建模新思路。

关键词: 甜味物质;电子舌;分子对接;聚类分析;机器学习

Abstract: In this study, an electronic nose (E-tongue) and molecular docking were utilized to analyze the taste profiles of 12 representative sweeteners and their binding characteristics with sweet taste receptors. Principal component analysis (PCA) and cluster analysis (CA) categorized the sweeteners into 4 groups based on their taste profiles: Group 1, represented by glucose, exhibited a clean sweet taste; Group 2, represented by rebaudioside A, had significant astringency; Group 3, represented by mogroside III, showed a pronounced sourness; and Group 4, represented by sucralose, possessed pronounced bitterness. According to the differences in binding affinity to the hT1R2 and hT1R3 receptors, the sweeteners were also classified into four categories. Next, partial least squares regression, random forest regression, and support vector regression were used to build unimodal prediction based on the data of E-tongue and molecular docking, separately. Feature-level fusion was carried out on these models to construct a bimodal prediction model connected by molecular features. Maltitol and isomalt oligosaccharide were identified as sugar substitutes with taste profiles most similar to sucrose, which was further verified by sensory evaluation. This study provides a new reliable modeling strategy for the rapid screening of sweeteners with a clean sweet taste.

Key words: sweeteners; electronic tongue; molecular docking; cluster analysis; machine learning

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