Hamburg University of Technology, Bioprocess and Biosystems Engineering, Denickestr. 15, 21073, Hamburg, Germany.
Bioprocess Biosyst Eng. 2019 May;42(5):867-882. doi: 10.1007/s00449-019-02089-7. Epub 2019 Feb 26.
Design of Experiments methods offer systematic tools for bioprocess development in Quality by Design, but their major drawback is the user-defined choice of factor boundary values. This can lead to several iterative rounds of time-consuming and costly experiments. In this study, a model-assisted Design of Experiments concept is introduced for the knowledge-based reduction of boundary values. First, the parameters of a mathematical process model are estimated. Second, the investigated factor combinations are simulated instead of experimentally derived and a constraint-based evaluation and optimization of the experimental space can be performed. The concept is discussed for the optimization of an antibody-producing Chinese hamster ovary batch and bolus fed-batch process. The same optimal process strategies were found if comparing the model-assisted Design of Experiments (4 experiments each) and traditional Design of Experiments (16 experiments for batch and 29 experiments for fed-batch). This approach significantly reduces the number of experiments needed for knowledge-based bioprocess development.
实验设计方法为质量源于设计中的生物工艺开发提供了系统的工具,但它们的主要缺点是用户定义的因素边界值选择。这可能导致几轮耗时和昂贵的实验。在这项研究中,引入了一种基于模型的实验设计概念,用于基于知识减少边界值。首先,估计数学过程模型的参数。其次,模拟所研究的因素组合,而不是通过实验得出,并可以对实验空间进行基于约束的评估和优化。该概念讨论了优化产生抗体的中国仓鼠卵巢批次和分批补料分批过程。如果将基于模型的实验设计(每个实验 4 次)与传统实验设计(批处理 16 次,补料分批 29 次)进行比较,就会发现相同的最佳工艺策略。这种方法显著减少了基于知识的生物工艺开发所需的实验数量。