Masih Karimi Alavijeh, Yih Yean Lee, Sally L. Gras
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引用次数: 0
Abstract
Bioreactor scale-up and scale-down have always been a topical issue for the biopharmaceutical industry and despite considerable effort, the identification of a fail-safe strategy for bioprocess development across scales remains a challenge. With the ubiquitous growth of digital transformation technologies, new scaling methods based on computer models may enable more effective scaling. This study aimed to evaluate the potential application of machine learning (ML) algorithms for bioreactor scale-up, with a specific focus on the prediction of scaling parameters. Factors critical to the development of such models were identified and data for bioreactor scale-up studies involving CHO cell-generated mAb products collated from the literature and public sources for the development of unsupervised and supervised ML models. Comparison of bioreactor performance across scales identified similarities between the different processes and primary differences between small- and large-scale bioreactors. A series of three case studies were developed to assess the relationship between cell growth and scale-sensitive bioreactor features. An embedding layer improved the capability of artificial neural network models to predict cell growth at a large-scale, as this approach captured similarities between the processes. Further models constructed to predict scaling parameters demonstrated how ML models may be applied to assist the scaling process. The development of data sets that include more characterization data with greater variability under different gassing and agitation regimes will also assist the future development of ML tools for bioreactor scaling.
生物反应器的放大和缩小一直是生物制药行业的热点问题,尽管付出了大量努力,但确定跨规模生物工艺开发的故障安全策略仍是一项挑战。随着数字化转型技术的迅猛发展,基于计算机模型的新缩放方法可实现更有效的缩放。本研究旨在评估机器学习(ML)算法在生物反应器放大方面的潜在应用,特别关注放大参数的预测。研究人员确定了开发此类模型的关键因素,并从文献和公共资源中整理了涉及 CHO 细胞生成的 mAb 产品的生物反应器放大研究数据,用于开发无监督和有监督的 ML 模型。通过比较不同规模生物反应器的性能,确定了不同工艺之间的相似性以及小型和大型生物反应器之间的主要差异。为评估细胞生长与规模敏感的生物反应器特征之间的关系,开发了一系列三个案例研究。嵌入层提高了人工神经网络模型预测大规模细胞生长的能力,因为这种方法捕捉到了不同过程之间的相似性。为预测缩放参数而构建的进一步模型展示了如何应用 ML 模型来协助缩放过程。数据集的开发包含了更多的表征数据,这些数据在不同的充气和搅拌机制下具有更大的可变性,这也将有助于未来开发用于生物反应器扩容的 ML 工具。
期刊介绍:
Engineering in Life Sciences (ELS) focuses on engineering principles and innovations in life sciences and biotechnology. Life sciences and biotechnology covered in ELS encompass the use of biomolecules (e.g. proteins/enzymes), cells (microbial, plant and mammalian origins) and biomaterials for biosynthesis, biotransformation, cell-based treatment and bio-based solutions in industrial and pharmaceutical biotechnologies as well as in biomedicine. ELS especially aims to promote interdisciplinary collaborations among biologists, biotechnologists and engineers for quantitative understanding and holistic engineering (design-built-test) of biological parts and processes in the different application areas.