首页 | 本学科首页   官方微博 | 高级检索  
     


Model-based optimization of antibody galactosylation in CHO cell culture
Authors:Pavlos Kotidis  Philip Jedrzejewski  Si Nga Sou  Christopher Sellick  Karen Polizzi  Ioscani Jimenez del Val  Cleo Kontoravdi
Affiliation:1. Department of Chemical Engineering, Imperial College London, United Kingdom

These authors are considered as co-first author.;2. Department of Chemical Engineering, Imperial College London, United Kingdom

Department of Life Sciences, Imperial College London, United Kingdom

Centre for Synthetic Biology and Innovation, Imperial College London, United Kingdom

These authors are considered as co-first author.;3. Department of Chemical Engineering, Imperial College London, United Kingdom

Department of Life Sciences, Imperial College London, United Kingdom

Centre for Synthetic Biology and Innovation, Imperial College London, United Kingdom

Present address: MedImmune, Granta Park, Cambridge, United Kingdom.;4. Cell Culture and Fermentation Sciences BioPharmaceutical Development, MedImmune, Granta Park, Cambridge, United Kingdom

Kymab Ltd., Babraham Research Campus, Cambridge, United Kingdom.;5. Department of Life Sciences, Imperial College London, United Kingdom;6. School of Chemical & Bioprocess Engineering, University College Dublin, Ireland;7. Department of Chemical Engineering, Imperial College London, United Kingdom

Abstract: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.
Keywords:antibody glycosylation  Chinese hamster ovary (CHO) cells  galactosylation  mathematical modeling  nucleotide sugars  process optimization
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号