Department of Chemical Engineering, Imperial College London, United Kingdom.
Department of Life Sciences, Imperial College London, United Kingdom.
Biotechnol Bioeng. 2019 Jul;116(7):1612-1626. doi: 10.1002/bit.26960. Epub 2019 Mar 21.
Exerting control over the glycan moieties of antibody therapeutics is highly desirable from a product safety and batch-to-batch consistency perspective. Strategies to improve antibody productivity may compromise quality, while interventions for improving glycoform distribution can adversely affect cell growth and productivity. Process design therefore needs to consider the trade-off between preserving cellular health and productivity while enhancing antibody quality. In this work, we present a modeling platform that quantifies the impact of glycosylation precursor feeding - specifically that of galactose and uridine - on cellular growth, metabolism as well as antibody productivity and glycoform distribution. The platform has been parameterized using an initial training data set yielding an accuracy of ±5% with respect to glycoform distribution. It was then used to design an optimized feeding strategy that enhances the final concentration of galactosylated antibody in the supernatant by over 90% compared with the control without compromising the integral of viable cell density or final antibody titer. This work supports the implementation of Quality by Design towards higher-performing bioprocesses.
从产品安全性和批次一致性的角度来看,控制抗体治疗药物的聚糖部分是非常理想的。提高抗体生产率的策略可能会影响质量,而改善糖型分布的干预措施可能会对细胞生长和生产率产生不利影响。因此,工艺设计需要在保持细胞健康和生产率的同时,提高抗体质量,考虑两者之间的权衡。在这项工作中,我们提出了一个建模平台,该平台量化了糖基化前体(特别是半乳糖和尿苷)喂养对细胞生长、代谢以及抗体生产率和糖型分布的影响。该平台使用初始训练数据集进行了参数化,其相对于糖型分布的准确性为±5%。然后,我们使用该平台设计了一种优化的喂养策略,与不影响活细胞密度或最终抗体效价的对照相比,可将上清液中半乳糖化抗体的最终浓度提高 90%以上。这项工作支持了向更高性能的生物工艺实施质量源于设计的理念。