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Modeling Kinetics of a Large-Scale Fed-Batch CHO Cell Culture by Markov Chain Monte Carlo Method

机译:马尔可夫链蒙特卡洛法模拟大规模补料分批CHO细胞培养的动力学

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Markov chain Monte Carlo (MCMC) method was applied to model kinetics of a fed-batch Chinese hamster ovary cell culture process in 5,000-L bioreactors. The kinetic model consists of six differential equations, which describe dynamics of viable cell density and concentrations of glucose, glutamine, ammonia, lactate, and the antibody fusion protein B1 (B1). The kinetic model has 18 parameters, six of which were calculated from the cell culture data, whereas the other 12 were estimated from a training data set that comprised of seven cell culture runs using a MCMC method. The model was confirmed in two validation data sets that represented a perturbation of the cell culture condition. The agreement between the predicted and measured values of both validation data sets may indicate high reliability of the model estimates. The kinetic model uniquely incorporated the ammonia removal and the exponential function of Bl protein concentration. The model indicated that ammonia and lactate play critical roles in cell growth and that low concentrations of glucose (0.17 mM) and glutamine (0.09 mM) in the cell culture medium may help reduce ammonia and lactate production. The model demonstrated that 83% of the glucose consumed was used for cell maintenance during the late phase of the cell cultures, whereas the maintenance coefficient for glutamine was negligible. Finally, the kinetic model suggests that it is critical for Bl production to sustain a high number of viable cells. The MCMC methodology may be a useful tool for modeling kinetics of a fed-batch mammalian cell culture process.
机译:马尔可夫链蒙特卡洛法(MCMC)方法用于模拟在5,000升生物反应器中分批补料的中国仓鼠卵巢细胞培养过程的动力学。动力学模型由六个微分方程组成,它们描述了活细胞密度以及葡萄糖,谷氨酰胺,氨,乳酸盐和抗体融合蛋白B1(B1)浓度的动力学。动力学模型具有18个参数,其中6个是从细胞培养数据中计算出来的,而其他12个是从训练数据集(使用MCMC方法由7个细胞培养运行组成的训练数据集)中估计的。在两个验证数据集中确认了该模型,这些数据代表对细胞培养条件的扰动。两个验证数据集的预测值和测量值之间的一致性可能表明模型估计具有很高的可靠性。动力学模型独特地结合了氨去除和B1蛋白浓度的指数函数。该模型表明氨和乳酸在细胞生长中起关键作用,而细胞培养基中低浓度的葡萄糖(0.17 mM)和谷氨酰胺(0.09 mM)可能有助于减少氨和乳酸的产生。该模型表明,在细胞培养的后期阶段,消耗的葡萄糖中有83%用于细胞维持,而谷氨酰胺的维持系数可忽略不计。最后,动力学模型表明维持大量活细胞对于B1产生至关重要。 MCMC方法学可能是用于模拟补料分批哺乳动物细胞培养过程动力学的有用工具。

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