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Application of Raman Spectroscopy and Univariate Modelling As a Process Analytical Technology for Cell Therapy Bioprocessing

机译:拉曼光谱和单变量建模作为细胞治疗生物处理过程分析技术的应用

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摘要

Cell therapies offer unquestionable promises for the treatment, and in some cases even the cure, of complex diseases. As we start to see more of these therapies gaining market authorization, attention is turning to the bioprocesses used for their manufacture, in particular the challenge of gaining higher levels of process control to help regulate cell behavior, manage process variability, and deliver product of a consistent quality. Many processes already incorporate the measurement of key markers such as nutrient consumption, metabolite production, and cell concentration, but these are often performed off-line and only at set time points in the process. Having the ability to monitor these markers in real-time using in-line sensors would offer significant advantages, allowing faster decision-making and a finer level of process control. In this study, we use Raman spectroscopy as an in-line optical sensor for bioprocess monitoring of an autologous T-cell immunotherapy model produced in a stirred tank bioreactor system. Using reference datasets generated on a standard bioanalyzer, we develop chemometric models from the Raman spectra for glucose, glutamine, lactate, and ammonia. These chemometric models can accurately monitor donor-specific increases in nutrient consumption and metabolite production as the primary T-cell transition from a recovery phase and begin proliferating. Using a univariate modeling approach, we then show how changes in peak intensity within the Raman spectra can be correlated with cell concentration and viability. These models, which act as surrogate markers, can be used to monitor cell behavior including cell proliferation rates, proliferative capacity, and transition of the cells to a quiescent phenotype. Finally, using the univariate models, we also demonstrate how Raman spectroscopy can be applied for real-time monitoring. The ability to measure these key parameters using an in-line Raman optical sensor makes it possible to have immediate feedback on process performance. This could help significantly improve cell therapy bioprocessing by allowing proactive decision-making based on real-time process data. Going forward, these types of in-line sensors also open up opportunities to improve bioprocesses further through concepts such as adaptive manufacturing.
机译:细胞疗法为复杂疾病的治疗,在某些情况下甚至是治愈提供了无疑的希望。随着我们越来越多地看到这些疗法获得市场认可,人们的注意力正转向用于其制造的生物过程,特别是获得更高水平的过程控制以帮助调节细胞行为,管理过程变异性并交付产品的挑战。始终如一的质量。许多过程已经结合了关键指标的测量,例如营养消耗,代谢产物产生和细胞浓度,但这些过程通常是离线进行的,并且仅在过程中的设定时间点进行。具有使用在线传感器实时监视这些标记的能力将提供显着的优势,从而允许更快的决策制定和更好的过程控制水平。在这项研究中,我们使用拉曼光谱作为在线光学传感器,对在搅拌罐式生物反应器系统中产生的自体T细胞免疫疗法模型的生物过程进行监控。使用在标准生物分析仪上生成的参考数据集,我们从拉曼光谱中开发葡萄糖,谷氨酰胺,乳酸和氨的化学计量模型。这些化学计量模型可以准确监测供体特定的营养消耗和代谢产物生成,因为主要的T细胞从恢复期开始过渡并开始增殖。然后使用单变量建模方法显示拉曼光谱内峰强度的变化如何与细胞浓度和生存力相关。这些充当替代标记的模型可用于监视细胞行为,包括细胞增殖率,增殖能力以及细胞向静态表型的转变。最后,使用单变量模型,我们还演示了如何将拉曼光谱法应用于实时监测。使用在线拉曼光学传感器测量这些关键参数的能力使得可以即时获得过程性能的反馈。通过允许基于实时过程数据的主动决策,这可以帮助显着改善细胞疗法的生物处理。展望未来,这些类型的在线传感器还为通过适应性制造等概念进一步改善生物过程提供了机会。

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