Key Laboratory of Biomass Chemical Engineering of Ministry of Education, College of Chemical and Biological Engineering, Zhejiang University, Hangzhou310027, China.
Key Laboratory of Biomass Chemical Engineering of Ministry of Education, College of Chemical and Biological Engineering, Zhejiang University, Hangzhou310027, China.
J Chromatogr A. 2021 Jan 25;1637:461855. doi: 10.1016/j.chroma.2020.461855. Epub 2020 Dec 26.
Continuous bioprocessing is a promising trend in biopharmaceutical production, and multi-column continuous chromatography shows advantages of high productivity, high resin capacity utilization, small footprint, low buffer consumption and less waste. Due to the complexity and dynamic nature of continuous processing, traditional experiment-based approaches are often time-consuming and inefficient. In this review, model-assisted approaches were focused and their applications in continuous chromatography process development, validation and control were discussed. Chromatographic models are useful in describing particular process performances of continuous capture and polishing with multi-column chromatography. Model-assisted tools showed powerful ability in evaluating multiple operating parameters and identifying optimal points over the entire design space. The residence time distribution models, model-assisted process analytical technologies and model-predictive control strategies were also developed to reveal the propagation of disturbances, enhance real time monitor and achieve adaptive control to match the transient disturbances and deviations of continuous processes. Moreover, artificial neural networks and machine learning concepts were integrated into modeling approaches to improve data treatment. In general, further development in research and applications of model-assisted approaches for continuous chromatography are needed urgently to support the continuous manufacturing.
连续生物处理是生物制药生产中很有前途的趋势,多柱连续色谱法具有生产力高、树脂利用率高、占地面积小、缓冲液消耗低、废物少等优点。由于连续处理的复杂性和动态性,传统的基于实验的方法往往耗时低效。在这篇综述中,重点介绍了模型辅助方法,并讨论了它们在连续色谱过程开发、验证和控制中的应用。色谱模型可用于描述多柱色谱连续捕获和抛光的特定过程性能。模型辅助工具在评估多个操作参数和在整个设计空间中识别最佳点方面显示出强大的能力。还开发了停留时间分布模型、模型辅助过程分析技术和模型预测控制策略,以揭示干扰的传播,增强实时监测,并实现自适应控制,以适应连续过程的瞬态干扰和偏差。此外,还将人工神经网络和机器学习概念集成到建模方法中,以改进数据处理。总的来说,迫切需要进一步研究和应用模型辅助方法来支持连续制造。