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Multivariate Modeling of Aging in Bottled Lager Beer by Principal Component Analysis and Multiple Regression Methods

机译:主成分分析和多元回归方法对瓶装啤酒的陈酿进行多元建模

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Data collected from the sensory test score evaluation of bottled lager beer, together with the chemical components related to aging, including carbonyl compounds, higher alcohols, unsaturated fatty acid, organic acids, α-amino acids, dissolved oxygen, and staling evaluation indices, including lag time of electron spin resonance (ESR) curve, 1,1'-diphenyl-2-picrylhydrazyl (DPPH) scavenged amounts, and thiobarbituric acid (TBA) values, were used to predict the extent of aging in bottled lager beer, using both multiple linear regression and principal component analysis methods. Carbonyl compounds, higher alcohols, and TBA value were significantly and positively correlated with sensory evaluation of staling flavor. While lag time and DPPH scavenging amount were negatively correlated with taste test score. Multiple regression analysis was used to fit the sensory test data using the above chemical compound aging related parameters and evaluation indices as predictors. A variable selection method based on high loadings of varimax rotated principal components was used to obtain subsets of the predominant predictor variables to be included in the regression model of beer aging, so as to eliminate the multicollinearity of the original nine variables. It was found that staling extent was influenced significantly by higher alcohols, TBA value, and DPPH scavenging amount, and the multicollinearity of the regression model was found to. be weak by examining the variance inflation factors of the new predictor variables. A mathematic model of the organoleptic test score for beer aging using these three predictors was obtained by multiple linear regression, showing that the major contributors to the sensory taste of beer aging were higher alcohols, TBA index, and DPPH scavenging amount, with the adjusted R~2 of the model being 0.62.
机译:从瓶装啤酒的感官测试成绩评估中收集的数据,以及与老化相关的化学成分,包括羰基化合物,高级醇,不饱和脂肪酸,有机酸,α-氨基酸,溶解氧和陈旧性评估指数,包括电子自旋共振(ESR)曲线的滞后时间,1,1'-二苯基-2-吡啶并肼基(DPPH)清除量和硫代巴比妥酸(TBA)值用于预测瓶装啤酒的老化程度,两者多元线性回归和主成分分析方法。羰基化合物,高级醇和TBA值与陈旧味的感官评价显着正相关。滞后时间和DPPH清除量与味觉测试得分呈负相关。使用以上化合物老化相关参数和评估指标作为预测指标,使用多元回归分析拟合感官测试数据。使用基于高负荷最大可变变量旋转主成分的变量选择方法来获取要包含在啤酒老化回归模型中的主要预测变量的子集,以消除原始的9个变量的多重共线性。结果发现,陈酿程度受高级醇,TBA值和DPPH清除量的显着影响,并且发现回归模型具有多重共线性。通过检查新的预测变量的方差膨胀因子来弱化。通过多元线性回归,获得了使用这三个预测因子的啤酒老化感官测试分数的数学模型,表明对啤酒老化感官口味的主要贡献是较高的酒精含量,TBA指数和DPPH清除量,且调整后的R模型的〜2为0.62。

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