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二维荧光光谱法在基于Teff的底物发酵在线监测中的应用,该发酵过程接种了特定益生菌。

Application of Two-Dimensional Fluorescence Spectroscopy for the On-Line Monitoring of Teff-Based Substrate Fermentation Inoculated with Certain Probiotic Bacteria.

作者信息

Alemneh Sendeku Takele, Emire Shimelis Admassu, Jekle Mario, Paquet-Durand Olivier, von Wrochem Almut, Hitzmann Bernd

机构信息

Department of Process Analytics and Cereal Science, Institute of Food Science and Biotechnology, University of Hohenheim, 70599 Stuttgart, Germany.

Food Engineering, Addis Ababa Institute of Technology, Addis Ababa University, Addis Ababa 1000, Ethiopia.

出版信息

Foods. 2022 Apr 18;11(8):1171. doi: 10.3390/foods11081171.

Abstract

There is increasing demand for cereal-based probiotic fermented beverages as an alternative to dairy-based products due to their limitations. However, analyzing and monitoring the fermentation process is usually time consuming, costly, and labor intensive. This research therefore aims to apply two-dimensional (2D)-fluorescence spectroscopy coupled with partial least-squares regression (PLSR) and artificial neural networks (ANN) for the on-line quantitative analysis of cell growth and concentrations of lactic acid and glucose during the fermentation of a teff-based substrate. This substrate was inoculated with mixed strains of A6 (LPA6) and GG (LCGG). The fermentation was performed under two different conditions: condition 1 (7 g/100 mL substrate inoculated with 6 log cfu/mL) and condition 2 (4 g/100 mL substrate inoculated with 6 log cfu/mL). For the prediction of LPA6 and LCGG cell growth, the relative root mean square error of prediction (pRMSEP) was measured between 2.5 and 4.5%. The highest pRMSEP (4.5%) was observed for the prediction of LPA6 cell growth under condition 2 using ANN, but the lowest pRMSEP (2.5%) was observed for the prediction of LCGG cell growth under condition 1 with ANN. A slightly more accurate prediction was found with ANN under condition 1. However, under condition 2, a superior prediction was observed with PLSR as compared to ANN. Moreover, for the prediction of lactic acid concentration, the observed values of pRMSEP were 7.6 and 7.7% using PLSR and ANN, respectively. The highest error rates of 13 and 14% were observed for the prediction of glucose concentration using PLSR and ANN, respectively. Most of the predicted values had a coefficient of determination (R) of more than 0.85. In conclusion, a 2D-fluorescence spectroscopy combined with PLSR and ANN can be used to accurately monitor LPA6 and LCGG cell counts and lactic acid concentration in the fermentation process of a teff-based substrate. The prediction of glucose concentration, however, showed a rather high error rate.

摘要

由于基于乳制品的产品存在局限性,对基于谷物的益生菌发酵饮料作为替代品的需求日益增加。然而,分析和监测发酵过程通常既耗时、成本高又劳动强度大。因此,本研究旨在应用二维(2D)荧光光谱结合偏最小二乘回归(PLSR)和人工神经网络(ANN),对基于画眉草的底物发酵过程中的细胞生长以及乳酸和葡萄糖浓度进行在线定量分析。该底物接种了A6(LPA6)和GG(LCGG)混合菌株。发酵在两种不同条件下进行:条件1(7 g/100 mL底物接种6 log cfu/mL)和条件2(4 g/100 mL底物接种6 log cfu/mL)。对于LPA6和LCGG细胞生长的预测,预测相对均方根误差(pRMSEP)在2.5%至4.5%之间。使用ANN预测条件2下的LPA6细胞生长时观察到最高的pRMSEP(4.5%),但使用ANN预测条件1下的LCGG细胞生长时观察到最低的pRMSEP(2.5%)。在条件1下,ANN的预测稍微更准确一些。然而,在条件2下,与ANN相比,PLSR的预测效果更好。此外,对于乳酸浓度的预测,使用PLSR和ANN时观察到的pRMSEP值分别为7.6%和7.7%。使用PLSR和ANN预测葡萄糖浓度时分别观察到最高误差率为13%和14%。大多数预测值的决定系数(R)大于0.85。总之,二维荧光光谱结合PLSR和ANN可用于准确监测基于画眉草的底物发酵过程中的LPA6和LCGG细胞计数以及乳酸浓度。然而,葡萄糖浓度的预测显示出相当高的误差率。

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