Suppr超能文献

用于在线拉曼监测和控制灌注细胞培养的稳健平台。

Robust platform for inline Raman monitoring and control of perfusion cell culture.

机构信息

Analytical Research & Development, Merck & Co. Inc., Kenilworth, New Jersey, USA.

Bioprocess Research & Development, Merck & Co. Inc., Kenilworth, New Jersey, USA.

出版信息

Biotechnol Bioeng. 2024 May;121(5):1688-1701. doi: 10.1002/bit.28680. Epub 2024 Feb 23.

Abstract

Perfusion cell culture has been gaining increasing popularity for biologics manufacturing due to benefits such as smaller footprint, increased productivity, consistent product quality and manufacturing flexibility, cost savings, and so forth. Process Analytics Technologies tools are highly desirable for effective monitoring and control of long-running perfusion processes. Raman has been widely investigated for monitoring and control of traditional fed batch cell culture process. However, implementation of Raman for perfusion cell culture has been very limited mainly due to challenges with high-cell density and long running times during perfusion which cause extremely high fluorescence interference to Raman spectra and consequently it is exceedingly difficult to develop robust chemometrics models. In this work, a platform based on Raman measurement of permeate has been proposed for effective analysis of perfusion process. It has been demonstrated that this platform can effectively circumvent the fluorescence interference issue while providing rich and timely information about perfusion dynamics to enable efficient process monitoring and robust bioreactor feed control. With the highly consistent spectral data from cell-free sample matrix, development of chemometrics models can be greatly facilitated. Based on this platform, Raman models have been developed for good measurement of several analytes including glucose, lactate, glutamine, glutamate, and permeate titer. Performance of Raman models developed this way has been systematically evaluated and the models have shown good robustness against changes in perfusion scale and variations in permeate flowrate; thus models developed from small lab scale can be directly transferred for implementation in much larger scale of perfusion. With demonstrated robustness, this platform provides a reliable approach for automated glucose feed control in perfusion bioreactors. Glucose model developed from small lab scale has been successfully implemented for automated continuous glucose feed control of perfusion cell culture at much larger scale.

摘要

由于具有占地面积小、提高生产力、产品质量稳定、生产灵活性高、成本节约等优势,灌注细胞培养在生物制品生产中越来越受欢迎。过程分析技术工具对于有效监测和控制长期运行的灌注过程非常理想。拉曼已广泛应用于监测和控制传统的分批补料细胞培养过程。然而,由于在灌注过程中高细胞密度和长时间运行带来的挑战,拉曼在灌注细胞培养中的应用非常有限,这会对拉曼光谱产生极高的荧光干扰,因此很难开发出稳健的化学计量学模型。在这项工作中,提出了一种基于渗透物拉曼测量的平台,用于有效分析灌注过程。结果表明,该平台可以有效地规避荧光干扰问题,同时提供丰富的、及时的灌注动力学信息,从而实现高效的过程监测和稳健的生物反应器补料控制。由于无细胞样本基质具有高度一致的光谱数据,化学计量学模型的开发将得到极大的促进。基于该平台,开发了用于测量几种分析物(包括葡萄糖、乳酸、谷氨酰胺、谷氨酸和渗透物滴度)的拉曼模型。通过系统地评估拉曼模型的性能,表明这些模型具有良好的鲁棒性,可以抵抗灌注规模的变化和渗透流速的变化;因此,从小规模实验室开发的模型可以直接转移到大规模灌注中使用。由于具有良好的鲁棒性,该平台为灌注生物反应器中的自动葡萄糖补料控制提供了一种可靠的方法。从小规模实验室开发的葡萄糖模型已成功用于在更大规模的灌注细胞培养中实现自动连续葡萄糖补料控制。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验