Zhu Min, Wang Mingyao, Gu Junfeng, Deng Zhao, Zhang Wenxue, Pan Zhengfu, Luo Guorong, Wu Renfu, Qin Jianliang, Gomi Katsuya
College of Biomass Science and Engineering, Sichuan University, Chengdu 610065, China.
School of Liquor-Brewing Engineering, Sichuan University of Jinjiang College, Meishan 620860, China.
Food Chem. 2025 Jun 30;478:143661. doi: 10.1016/j.foodchem.2025.143661. Epub 2025 Mar 6.
The complex flavor of Jiang-flavor Baijiu (JFB) arises from the interaction of hundreds of compounds at both physicochemical and sensory levels, making accurate perception challenging. Modern machine learning techniques offer precise and scientific approaches for predicting sensory attributes. This study applied flavoromics and sensory profiling to 27 representative JFB samples from main regions in China, integrating five machine learning algorithms to establish a novel strategy for predicting global aroma characteristics. The results indicate that the neural network (NN) model outperformed others, effectively capturing the intricate interactions among flavor compounds. Model dissection identified 18 chemical parameters potentially influencing the overall aroma profile. The importance of these factors was further validated through spiking and omission tests, which notably enhanced the sensory experience of commercial liquor. This study demonstrates the potential of machine learning in JFB flavor research and offers valuable insights into the mechanisms underlying its flavor formation.
酱香型白酒(JFB)复杂的风味源于数百种化合物在物理化学和感官层面的相互作用,这使得准确感知具有挑战性。现代机器学习技术为预测感官属性提供了精确且科学的方法。本研究对来自中国主要产区的27个代表性JFB样品应用了风味组学和感官剖析,整合了五种机器学习算法,建立了一种预测整体香气特征的新策略。结果表明,神经网络(NN)模型表现优于其他模型,有效捕捉了风味化合物之间复杂的相互作用。模型剖析确定了18个可能影响整体香气特征的化学参数。通过添加和省略测试进一步验证了这些因素的重要性,这些测试显著提升了商业白酒的感官体验。本研究证明了机器学习在JFB风味研究中的潜力,并为其风味形成的潜在机制提供了有价值的见解。