傅里叶变换红外光谱(FTIR)结合机器学习方法对啤酒中挥发性化合物的鉴别与定量分析
Discrimination and quantification of volatile compounds in beer by FTIR combined with machine learning approaches.
作者信息
Gao Yi-Fang, Li Xiao-Yan, Wang Qin-Ling, Li Zhong-Han, Chi Shi-Xin, Dong Yan, Guo Ling, Zhang Ying-Hua
机构信息
Key Laboratory of Dairy Science, Ministry of Education, Northeast Agricultural University, Harbin 150030, PR China.
Department of Food Science, Northeast Agricultural University, Harbin 150030, PR China.
出版信息
Food Chem X. 2024 Mar 19;22:101300. doi: 10.1016/j.fochx.2024.101300. eCollection 2024 Jun 30.
The composition of volatile compounds in beer is crucial to the quality of beer. Herein, we identified 23 volatile compounds, namely, 12 esters, 4 alcohols, 5 acids, and 2 phenols, in nine different beer types using GC-MS. By performing PCA of the data of the flavor compounds, the different beer types were well discriminated. Ethyl caproate, ethyl caprylate, and phenylethyl alcohol were identified as the crucial volatile compounds to discriminate different beers. PLS regression analysis was performed to model and predict the contents of six crucial volatile compounds in the beer samples based on the characteristic wavelength of the FTIR spectrum. The R value of each sample in the prediction model was 0.9398-0.9994, and RMSEP was 0.0122-0.7011. The method proposed in this paper has been applied to determine flavor compounds in beer samples with good consistency compared with GC-MS.
啤酒中挥发性化合物的组成对啤酒质量至关重要。在此,我们使用气相色谱-质谱联用仪(GC-MS)在九种不同类型的啤酒中鉴定出23种挥发性化合物,即12种酯类、4种醇类、5种酸类和2种酚类。通过对风味化合物数据进行主成分分析(PCA),不同类型的啤酒得到了很好的区分。己酸乙酯、辛酸乙酯和苯乙醇被确定为区分不同啤酒的关键挥发性化合物。基于傅里叶变换红外光谱(FTIR)的特征波长,进行偏最小二乘(PLS)回归分析以建立模型并预测啤酒样品中六种关键挥发性化合物的含量。预测模型中每个样品的R值为0.9398 - 0.9994,均方根误差(RMSEP)为0.0122 - 0.7011。本文提出的方法已应用于测定啤酒样品中的风味化合物,与GC-MS相比具有良好的一致性。