Department of Food Biotechnology, University of Science and Technology (UST), Gajeong-ro, Yuseong-gu, Daejeon, 305-350, Republic of Korea.
Department of Food Science and Postharvest Technology, College of Agriculture and Environmental Sciences, Arsi University, P.O. Box 193 Asella, Ethiopia.
Poult Sci. 2017 Oct 1;96(10):3733-3746. doi: 10.3382/ps/pex193.
The aim of the present study was to investigate the potential of a fast gas chromatography (GC) e-nose for freshness discrimination and for prediction of storage time as well as sensory and internal quality changes during storage of hen eggs. All samples were obtained from the same egg production farm and stored at 20 °C for 20 d. Egg sampling was conducted every 0, 3, 6, 9, 12, 16, and 20 d. During each sampling time, 4 egg cartons (each containing 10 eggs) were randomly selected: one carton for Haugh units, one carton for sensory evaluation and 2 cartons for the e-nose experiment. The e-nose study included 2 independent test sets; calibration (35 samples) and validation (28 samples). Every sampling time, 5 replicates were prepared from one egg carton for calibration samples and 4 replicates were prepared from the remaining egg carton for validation samples. Sensors (peaks) were selected prior to multivariate chemometric analysis; qualitative sensors for principal component analysis (PCA) and discriminant factor analysis (DFA) and quantitative sensors for partial least square (PLS) modeling. PCA and DFA confirmed the difference in volatile profiles of egg samples from 7 different storage times accounting for a total variance of 95.7% and 93.71%, respectively. Models for predicting storage time, Haugh units, odor score, and overall acceptability score from e-nose data were developed using calibration samples by PLS regression. The results showed that these quality indices were well predicted from the e- nose signals, with correlation coefficients of R2 = 0.9441, R2 = 0.9511, R2 = 0.9725, and R2 = 0.9530 and with training errors of 0.887, 1.24, 0.626, and 0.629, respectively. As a result of ANOVA, most of the PLS model results were not significantly (P > 0.05) different from the corresponding reference values. These results proved that the fast GC electronic nose has the potential to assess egg freshness and feasibility to predict multiple egg freshness indices during its circulation in the supply chain.
本研究旨在探讨快速气相色谱(GC)电子鼻在区分新鲜度和预测贮藏时间以及在贮藏过程中感官和内部品质变化方面的潜力。所有样品均取自同一蛋鸡养殖场,在 20°C 下贮藏 20 天。鸡蛋取样分别在 0、3、6、9、12、16 和 20 天进行。在每次取样时,随机选择 4 个蛋箱(每个蛋箱装 10 个鸡蛋):一个蛋箱用于哈夫单位评估,一个蛋箱用于感官评价,两个蛋箱用于电子鼻实验。电子鼻研究包括 2 个独立的测试集;校准(35 个样本)和验证(28 个样本)。在每次取样时,从一个蛋箱中准备 5 个重复样本用于校准样本,从剩余的蛋箱中准备 4 个重复样本用于验证样本。在多元化学计量分析之前选择传感器(峰);用于主成分分析(PCA)和判别因子分析(DFA)的定性传感器和用于偏最小二乘(PLS)建模的定量传感器。PCA 和 DFA 证实了来自 7 个不同贮藏时间的鸡蛋样本的挥发性图谱存在差异,分别解释了 95.7%和 93.71%的总方差。通过使用校准样本的 PLS 回归,从电子鼻数据中建立了预测贮藏时间、哈夫单位、气味评分和总体可接受性评分的模型。结果表明,这些质量指标可以很好地从电子鼻信号中预测出来,相关系数 R2 分别为 0.9441、0.9511、0.9725 和 0.9530,训练误差分别为 0.887、1.24、0.626 和 0.629。方差分析结果表明,大多数 PLS 模型结果与相应的参考值没有显著差异(P > 0.05)。这些结果证明,快速 GC 电子鼻具有评估鸡蛋新鲜度的潜力,并有可能在供应链中鸡蛋流通期间预测多个鸡蛋新鲜度指标。