Ahuja Sanjeev, Jain Shilpa, Ram Kripa
Biopharmaceutical Development, MedImmune LLC, One MedImmune Way, Gaithersburg, MD, 20878.
Biotechnol Prog. 2015 Sep-Oct;31(5):1370-80. doi: 10.1002/btpr.2134. Epub 2015 Jul 15.
Characterization of manufacturing processes is key to understanding the effects of process parameters on process performance and product quality. These studies are generally conducted using small-scale model systems. Because of the importance of the results derived from these studies, the small-scale model should be predictive of large scale. Typically, small-scale bioreactors, which are considered superior to shake flasks in simulating large-scale bioreactors, are used as the scale-down models for characterizing mammalian cell culture processes. In this article, we describe a case study where a cell culture unit operation in bioreactors using one-sided pH control and their satellites (small-scale runs conducted using the same post-inoculation cultures and nutrient feeds) in 3-L bioreactors and shake flasks indicated that shake flasks mimicked the large-scale performance better than 3-L bioreactors. We detail here how multivariate analysis was used to make the pertinent assessment and to generate the hypothesis for refining the existing 3-L scale-down model. Relevant statistical techniques such as principal component analysis, partial least square, orthogonal partial least square, and discriminant analysis were used to identify the outliers and to determine the discriminatory variables responsible for performance differences at different scales. The resulting analysis, in combination with mass transfer principles, led to the hypothesis that observed similarities between 15,000-L and shake flask runs, and differences between 15,000-L and 3-L runs, were due to pCO2 and pH values. This hypothesis was confirmed by changing the aeration strategy at 3-L scale. By reducing the initial sparge rate in 3-L bioreactor, process performance and product quality data moved closer to that of large scale.
制造工艺的表征是理解工艺参数对工艺性能和产品质量影响的关键。这些研究通常使用小规模模型系统进行。由于这些研究得出的结果很重要,小规模模型应该能够预测大规模情况。通常,在模拟大规模生物反应器方面被认为优于摇瓶的小规模生物反应器被用作表征哺乳动物细胞培养过程的缩小模型。在本文中,我们描述了一个案例研究,其中在3-L生物反应器和摇瓶中使用单侧pH控制的生物反应器中的细胞培养单元操作及其卫星实验(使用相同的接种后培养物和营养饲料进行的小规模实验)表明,摇瓶比3-L生物反应器更好地模拟了大规模性能。我们在此详细说明如何使用多变量分析进行相关评估并生成改进现有3-L缩小模型的假设。使用主成分分析、偏最小二乘法、正交偏最小二乘法和判别分析等相关统计技术来识别异常值,并确定导致不同规模性能差异的判别变量。结合传质原理进行的结果分析得出一个假设,即15,000-L和摇瓶实验之间观察到的相似性,以及15,000-L和3-L实验之间的差异,是由于pCO2和pH值造成的。通过在3-L规模下改变曝气策略,这一假设得到了证实。通过降低3-L生物反应器中的初始鼓泡速率,工艺性能和产品质量数据更接近大规模情况。