Department of Chemical and Biomolecular Engineering, University of Delaware, Newark, DE 19716, USA.
Department of Chemical and Biomolecular Engineering, University of Delaware, Newark, DE 19716, USA.
Int J Pharm. 2021 Nov 20;609:121161. doi: 10.1016/j.ijpharm.2021.121161. Epub 2021 Oct 6.
Multi-column periodic counter-current chromatography (PCC) has attracted wide attention for the primary capture for the purpose of achieving continuous biomanufacturing. Consequently, determining the design space of the continuous capture process is very important to facilitate process understanding and improving product quality. In this work, we proposed a novel approach to identify the design space of continuous chromatography to balance the computational complexity and model predictions. Specifically, surrogate-based feasibility analysis with adaptive sampling is applied to establish the design space of twin-column CaptureSMB process. The surrogate model is constructed based on the developed mechanistic model for the identification of the design space. The effects of process variables (including interconnected loading time, interconnected flowrate, and batch flowrate) on the design space are comprehensively examined based on an active set strategy. Besides, essential factors like recovery-regeneration time and constraints of column performance parameters (yield, productivity, and capacity utilization) are thoroughly investigated. The impact of design variables such as column length is also studied.
多柱周期逆流色谱(PCC)因其在连续生物制造中的主要捕获目的而受到广泛关注。因此,确定连续捕获过程的设计空间对于促进工艺理解和提高产品质量非常重要。在这项工作中,我们提出了一种新的方法来确定连续色谱的设计空间,以平衡计算复杂性和模型预测。具体来说,基于自适应采样的基于代理的可行性分析用于建立双柱 CaptureSMB 工艺的设计空间。代理模型是基于开发的用于识别设计空间的机理模型构建的。基于活动集策略,全面考察了过程变量(包括互连装料时间、互连流速和批量流速)对设计空间的影响。此外,还深入研究了恢复-再生时间和柱性能参数(收率、生产力和容量利用率)的约束等基本因素。还研究了柱长等设计变量的影响。