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Identification of Headspace Volatile Compounds of Blended Coffee and Application to Principal Component Analysis

机译:混合咖啡顶空挥发性化合物的鉴定及其在主成分分析中的应用

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摘要

Coffee can be blended to create a variety of products to meet consumer’s needs. In order to uncover the blending effect of coffee beans, we performed an experiment using principal component analysis (PCA). Twelve varieties of green beans were tested in 11 experimental groups, and the volatile compounds of the beans were analyzed. A total of 41 volatile compounds were identified. PCA was performed on 13 compounds that had a low odor threshold value or a high concentration among the identified compounds. PCA of total volatile compounds showed that principal component (PC) 1 and PC2 were extracted within 80% cumulative dispersion level. In PC1 and PC2, furfuryl alcohol and formic acid ethyl ester showed the greatest positive correlation coefficients among all the volatile compounds. The largest negative correlation coefficients in PC1 and PC2 were 4-hydroxy-2-butanone and 3-(ethylthio)propanal, respectively. Using PCA of the major volatile compounds in coffee, propanal and 1-methylpyrrole were found to have the largest positive correlation coefficients in PC1 and PC2, respectively. In the score plot of the major volatile components, 4 kinds of blended coffee were closely grouped, therefore showing similar aroma qualities. However, 5 kinds of other blended coffees showed a positive correlation with PC2. This is probably due to 3-(ethylthio)propanal acting as a specific value. The application of statistical methods to blended coffee allows for logical and systematic data analysis of data and may be used as a basis for quality evaluation.
机译:可以将咖啡混合制成各种产品,以满足消费者的需求。为了揭示咖啡豆的混合效果,我们使用主成分分析(PCA)进行了一项实验。在11个实验组中测试了12种绿豆,并分析了其挥发性成分。总共鉴定出41种挥发性化合物。对已鉴定化合物中气味阈值低或浓度高的13种化合物进行了PCA。总挥发性化合物的PCA显示主成分(PC)1和PC2在80%的累积分散度内提取。在PC1和PC2中,糠醇和甲酸乙酯在所有挥发性化合物中显示出最大的正相关系数。 PC1和PC2中最大的负相关系数分别为4-羟基-2-丁酮和3-(乙硫基)丙醛。使用咖啡中主要挥发性化合物的PCA,丙醛和1-甲基吡咯分别在PC1和PC2中具有最大的正相关系数。在主要挥发性成分的评分图中,将四种混合咖啡进行了紧密分组,因此显示出相似的香气品质。但是,其他5种混合咖啡与PC2呈正相关。这可能是由于3-(乙硫基)丙醛起特定作用。将统计方法应用于混合咖啡可以对数据进行逻辑和系统的数据分析,并且可以用作质量评估的基础。

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