Continuous glucose feedback control using Raman spectroscopy and deep learning models for biopharmaceutical processes

IF 2.5 3区 生物学 Q3 BIOTECHNOLOGY & APPLIED MICROBIOLOGY Biotechnology Progress Pub Date : 2025-04-02 DOI:10.1002/btpr.70020
Mohammad Rashedi, Matthew Demers, Hamid Khodabandehlou, Tony Wang, Christopher Garvin, Steve Rianna
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Abstract

This study explores the implementation of continuous glucose control strategies in high-consumption, high-complexity cell culture processes using Raman spectroscopy and advanced deep learning models, including convolutional neural networks and variational autoencoder just-in-time learning. By leveraging deep learning-derived process monitoring, the study enhances glucose measurement accuracy and stability, enabling precise control across different glucose set points. This approach allows for a systematic evaluation of glycosylation effects and other critical quality attributes, addressing the impact of glucose variability on product consistency. Continuous glucose control is compared against traditional bolus feeding, demonstrating improved set-point maintenance, reduced high mannose (HM) levels, and enhanced overall titer productivity. To extend these benefits to manufacturing environments where Raman spectroscopy may not be feasible, a continuous glucose calculator (CGC) is developed as a scalable alternative. Experimental validation across multiple cell lines confirmed that both Raman-based and CGC-driven strategies minimized glucose fluctuations, reduced undesirable byproducts, and optimized process yields. These findings highlight the potential of continuous glucose control, combined with deep learning models, to improve bioprocess efficiency and product quality while addressing the challenges of dynamic, high-consumption bioreactor systems.

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使用拉曼光谱和生物制药过程的深度学习模型的连续葡萄糖反馈控制。
本研究利用拉曼光谱和先进的深度学习模型(包括卷积神经网络和变异自动编码器及时学习),探索在高消耗、高复杂性细胞培养过程中实施连续葡萄糖控制策略。通过利用源自深度学习的过程监控,该研究提高了葡萄糖测量的准确性和稳定性,实现了对不同葡萄糖设定点的精确控制。这种方法可对糖基化效应和其他关键质量属性进行系统评估,解决葡萄糖变异性对产品一致性的影响。连续葡萄糖控制与传统的栓剂喂养进行了比较,结果表明,设定点的维持得到了改善,高甘露糖 (HM) 水平降低,整体滴度生产率提高。为了将这些优势推广到拉曼光谱不可行的生产环境中,开发了一种可扩展的连续葡萄糖计算器(CGC)。多个细胞系的实验验证证实,基于拉曼光谱和 CGC 驱动的策略都能最大限度地减少葡萄糖波动、减少不良副产物并优化工艺产量。这些发现凸显了连续葡萄糖控制与深度学习模型相结合的潜力,可提高生物工艺效率和产品质量,同时应对动态、高消耗生物反应器系统的挑战。
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来源期刊
Biotechnology Progress
Biotechnology Progress 工程技术-生物工程与应用微生物
CiteScore
6.50
自引率
3.40%
发文量
83
审稿时长
4 months
期刊介绍: Biotechnology Progress , an official, bimonthly publication of the American Institute of Chemical Engineers and its technological community, the Society for Biological Engineering, features peer-reviewed research articles, reviews, and descriptions of emerging techniques for the development and design of new processes, products, and devices for the biotechnology, biopharmaceutical and bioprocess industries. Widespread interest includes application of biological and engineering principles in fields such as applied cellular physiology and metabolic engineering, biocatalysis and bioreactor design, bioseparations and downstream processing, cell culture and tissue engineering, biosensors and process control, bioinformatics and systems biology, biomaterials and artificial organs, stem cell biology and genetics, and plant biology and food science. Manuscripts concerning the design of related processes, products, or devices are also encouraged. Four types of manuscripts are printed in the Journal: Research Papers, Topical or Review Papers, Letters to the Editor, and R & D Notes.
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