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使用拉曼光谱和间接硬建模 (IHM) 的生物过程在线监测和控制。

Bioprocess in-line monitoring and control using Raman spectroscopy and Indirect Hard Modeling (IHM).

机构信息

Institute of Technical Thermodynamics, RWTH Aachen University, Aachen, Germany.

出版信息

Biotechnol Bioeng. 2024 Jul;121(7):2225-2233. doi: 10.1002/bit.28724. Epub 2024 Apr 28.

DOI:10.1002/bit.28724
PMID:38678541
Abstract

Process in-line monitoring and control are crucial to optimize the productivity of bioprocesses. A frequently applied Process Analytical Technology (PAT) tool for bioprocess in-line monitoring is Raman spectroscopy. However, evaluating bioprocess Raman spectra is complex and calibrating state-of-the-art statistical evaluation models is effortful. To overcome this challenge, we developed an Indirect Hard Modeling (IHM) prediction model in a previous study. The combination of Raman spectroscopy and the IHM prediction model enables non-invasive in-line monitoring of glucose and ethanol mass fractions during yeast fermentations with significantly less calibration effort than comparable approaches based on statistical models. In this study, we advance this IHM-based approach and successfully demonstrate that the combination of Raman spectroscopy and IHM is capable of not only bioprocess monitoring but also bioprocess control. For this purpose, we used this combination's in-line information as input of a simple on-off glucose controller to control the glucose mass fraction in Saccharomyces cerevisiae fermentations. When we performed two of these fermentations with different predefined glucose set points, we achieved similar process control quality as approaches using statistical models, despite considerably smaller calibration effort. Therefore, this study reaffirms that the combination of Raman spectroscopy and IHM is a powerful PAT tool for bioprocesses.

摘要

过程在线监测和控制对于优化生物工艺的生产力至关重要。拉曼光谱是一种常用于生物过程在线监测的过程分析技术(PAT)工具。然而,评估生物过程拉曼光谱非常复杂,并且校准最先进的统计评估模型需要付出很大的努力。为了克服这一挑战,我们在之前的研究中开发了一种间接硬建模(IHM)预测模型。拉曼光谱和 IHM 预测模型的结合使得在酵母发酵过程中能够进行非侵入式的在线监测葡萄糖和乙醇质量分数,与基于统计模型的可比方法相比,所需的校准工作量要少得多。在本研究中,我们进一步推进了基于 IHM 的方法,并成功证明了拉曼光谱和 IHM 的组合不仅能够进行生物过程监测,还能够进行生物过程控制。为此,我们将这种组合的在线信息用作简单的开/关葡萄糖控制器的输入,以控制酿酒酵母发酵中的葡萄糖质量分数。当我们使用两种不同预设葡萄糖设定点进行这两种发酵时,我们实现了与使用统计模型的方法类似的过程控制质量,尽管校准工作量要小得多。因此,本研究再次证实,拉曼光谱和 IHM 的组合是生物过程的一种强大的 PAT 工具。

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