College of Biotechnology, Key Laboratory of Industrial Microbiology of Education Ministry, Tianjin University of Science and Technology, Tianjin, 300457, People's Republic of China.
Bioprocess Biosyst Eng. 2013 Dec;36(12):1879-87. doi: 10.1007/s00449-013-0962-y. Epub 2013 May 7.
Rapid development in the glutamate fermentation industry has dictated the need for effective fermentation monitoring by rapid and precise methods that provide real-time information for quality control of the end-product. In recent years, near-infrared (NIR) spectroscopy and multivariate calibration have been developed as fast, inexpensive, non-destructive and environmentally safe techniques for industrial applications. The purpose of this study was to develop models for monitoring glutamate, glucose, lactate and alanine concentrations in the temperature-triggered process of glutamate fermentation. NIR measurements of eight batches of samples were analyzed by partial least-squares regression with several spectral pre-processing methods. The coefficient of determination (R (2)), model root-mean square error of calibration (RMSEC), root-mean square error of prediction (RMSEP) and residual predictive deviation (RPD) of the test calibration for the glutamate concentration were 0.997, 3.11 g/L, 2.56 g/L and 19.81, respectively. For the glucose concentration, R (2), RMSEC, RMSEP and RPD were 0.989, 1.37 g/L, 1.29 g/L and 9.72, respectively. For the lactate concentration, R (2), RMSEC, RMSEP and RPD were 0.975, 0.078 g/L, 0.062 g/L and 6.29, respectively. For the alanine concentration, R (2), RMSEC, RMSEP and RPD were 0.964, 0.213 g/L, 0.243 g/L and 5.29, respectively. New batch fermentation as an external validation was used to check the models, and the results suggested that the predictive capacity of the models for the glutamate fermentation process was good.
谷氨酸发酵行业的快速发展要求采用快速、精确的方法进行有效的发酵监测,以便为最终产品的质量控制提供实时信息。近年来,近红外(NIR)光谱学和多元校正已发展成为用于工业应用的快速、廉价、无损和环境安全的技术。本研究的目的是开发用于监测谷氨酸、葡萄糖、乳酸和丙氨酸浓度的模型,这些浓度是在谷氨酸发酵的温度触发过程中。采用偏最小二乘回归(PLSR)和几种光谱预处理方法对 8 批样品的 NIR 测量值进行分析。谷氨酸浓度的测试校正的决定系数(R²)、校正均方根误差(RMSEC)、预测均方根误差(RMSEP)和预测偏差(RPD)分别为 0.997、3.11 g/L、2.56 g/L 和 19.81。对于葡萄糖浓度,R²、RMSEC、RMSEP 和 RPD 分别为 0.989、1.37 g/L、1.29 g/L 和 9.72。对于乳酸浓度,R²、RMSEC、RMSEP 和 RPD 分别为 0.975、0.078 g/L、0.062 g/L 和 6.29。对于丙氨酸浓度,R²、RMSEC、RMSEP 和 RPD 分别为 0.964、0.213 g/L、0.243 g/L 和 5.29。新的批发酵作为外部验证用于检查模型,结果表明模型对谷氨酸发酵过程的预测能力良好。