Choi Ji-Young, Lee Minjung, Kim Minji, Lee Mi-Ai, Min Sung Gi, Chung Young Bae, Yang Ji-Hee, Park Sung Hee
Kimchi Industry Promotion Division, World Institute of Kimchi, Gwangju 61755, Republic of Korea.
Food Res Int. 2024 Dec;198:115307. doi: 10.1016/j.foodres.2024.115307. Epub 2024 Nov 12.
Kimchi is a traditional Korean dish made from fermenting vegetables. The fermentation process is crucial for enhancing its quality and flavor during storage. Approaches such as hyperspectral imaging (HSI) and chemometrics (PLS, partial least square; SVR, support vector regression) including principal component analysis (PCA), and 2-dimensional correlation spectroscopy (2D-COS) can detect key physical and chemical components and changes in total soluble solids (TSS), pH, titratable acidity (TA), salinity, and lactic acid bacteria (LAB). Multivariate analytical models were developed to predict the quality properties using full and characteristic wavelengths and preprocessed data. The results showed that the ratio of prediction to deviation (RPD) values of the PLS prediction model constructed using the full wavelengths of TSS, salinity, pH, TA, and LAB were 1.57, 2.33, 2.79, 2.91, and 2.73, respectively. The Savitzky Golay 1st derivative preprocessed SVR model established based on characteristic wavelengths (951, 1020, 1139, 1174, 1216, 1321, and 1384 nm) extracted by PCA and a 2D-COS matrix showed the best results and increased efficiency in predicting pH (R = 0.9166, RPD = 3.281) and the number of LAB (R = 0.8488, RPD = 2.466). Additionally, the visualization process accurately illustrated the distribution of various quality indicators of kimchi across different periods. These results demonstrate that our proposed HSI strategy successfully assessed the degree of kimchi fermentation.
泡菜是一种通过发酵蔬菜制成的传统韩国菜肴。发酵过程对于在储存期间提高其品质和风味至关重要。高光谱成像(HSI)和化学计量学(PLS,偏最小二乘法;SVR,支持向量回归)等方法,包括主成分分析(PCA)和二维相关光谱(2D - COS),可以检测关键的物理和化学成分以及总可溶性固形物(TSS)、pH值、可滴定酸度(TA)、盐度和乳酸菌(LAB)的变化。利用全波长和特征波长以及预处理数据建立了多变量分析模型来预测品质特性。结果表明,使用TSS、盐度、pH值、TA和LAB的全波长构建的PLS预测模型的预测偏差比(RPD)值分别为1.57、2.33、2.79、2.91和2.73。基于PCA提取的特征波长(951、1020、1139、1174、1216、1321和1384 nm)和二维相关光谱矩阵建立的Savitzky Golay一阶导数预处理SVR模型显示出最佳结果,并且在预测pH值(R = 0.9166,RPD = 3.281)和LAB数量(R = 0.8488,RPD = 2.466)方面提高了效率。此外,可视化过程准确地说明了泡菜在不同时期各种品质指标的分布情况。这些结果表明,我们提出的HSI策略成功地评估了泡菜的发酵程度。