College of Food Science and Engineering, Jilin University, Changchun 130062, China.
College of Food Science and Engineering, Jilin University, Changchun 130062, China.
Food Res Int. 2019 Aug;122:16-24. doi: 10.1016/j.foodres.2019.03.047. Epub 2019 Mar 22.
There are currently no standardized objective measures to evaluate beef flavor attributes, especially the comparison between raw beef and cooked beef. Beef flavor attribute is one of the most significant parameters for consumers. This study described a predictive model using a 12-ion-sensor array and sensory properties to evaluate beef flavor attributes based on potential. Then the number of sensors was reduced to six via variance of analysis, and these six sensors were reserved with the saturated calomel reference electrode to constitute a new sensor array. Sensitive flavors of each sensor were selected through multiple comparative analysis. Results showed that the accuracy rate of classifying five basic flavors (acidity, sweetness, bitterness, saltiness, freshness) using the new sensor array was 100%. The processing methods used were based on multivariate statistical methods done with the cluster analysis (CA). Results were compared to sensory evaluation using genetic algorithm (GA). From GA, the accuracy rates of raw and cooked beef were 85.0% and 90.0%, which was consistent with the sensory analysis results. Moreover, reducing the number of sensors could decrease the data dimensionality and detection time. Also raw beef instead of cooked beef could be used in flavor attributes evaluation. This model could become an important method for evaluating beef flavor attributes repeatedly and objectively.
目前还没有标准化的客观测量方法来评估牛肉风味属性,特别是生牛肉和熟牛肉之间的比较。牛肉风味属性是消费者最重要的参数之一。本研究描述了一种使用 12 离子传感器阵列和感官特性的预测模型,基于潜力评估牛肉风味属性。然后通过方差分析将传感器数量减少到六个,并保留这些六个传感器与饱和甘汞参比电极构成一个新的传感器阵列。通过多次比较分析选择每个传感器的敏感风味。结果表明,使用新传感器阵列对五种基本风味(酸度、甜度、苦味、咸味、新鲜感)进行分类的准确率为 100%。所用的处理方法基于多元统计方法与聚类分析(CA)相结合。结果与遗传算法(GA)的感官评价进行了比较。从 GA 中,生牛肉和熟牛肉的准确率分别为 85.0%和 90.0%,与感官分析结果一致。此外,减少传感器的数量可以降低数据的维度和检测时间。而且,生牛肉可以代替熟牛肉来评估风味属性。该模型可以成为重复、客观评估牛肉风味属性的重要方法。