Literature DB >> 28556619

Enhanced process understanding and multivariate prediction of the relationship between cell culture process and monoclonal antibody quality.

Michael Sokolov1, Jonathan Ritscher1, Nicola MacKinnon2, Jonathan Souquet2, Hervé Broly2, Massimo Morbidelli1, Alessandro Butté1.   

Abstract

This work investigates the insights and understanding which can be deduced from predictive process models for the product quality of a monoclonal antibody based on designed high-throughput cell culture experiments performed at milliliter (ambr-15® ) scale. The investigated process conditions include various media supplements as well as pH and temperature shifts applied during the process. First, principal component analysis (PCA) is used to show the strong correlation characteristics among the product quality attributes including aggregates, fragments, charge variants, and glycans. Then, partial least square regression (PLS1 and PLS2) is applied to predict the product quality variables based on process information (one by one or simultaneously). The comparison of those two modeling techniques shows that a single (PLS2) model is capable of revealing the interrelationship of the process characteristics to the large set product quality variables. In order to show the dynamic evolution of the process predictability separate models are defined at different time points showing that several product quality attributes are mainly driven by the media composition and, hence, can be decently predicted from early on in the process, while others are strongly affected by process parameter changes during the process. Finally, by coupling the PLS2 models with a genetic algorithm first the model performance can be further improved and, most importantly, the interpretation of the large-dimensioned process-product-interrelationship can be significantly simplified. The generally applicable toolset presented in this case study provides a solid basis for decision making and process optimization throughout process development.
© 2017 American Institute of Chemical Engineers Biotechnol. Prog., 33:1368-1380, 2017. © 2017 American Institute of Chemical Engineers.

Entities:  

Keywords:  genetic algorithm; multivariate data analysis; partial least square regression; predictive process models; product quality

Mesh:

Substances:

Year:  2017        PMID: 28556619     DOI: 10.1002/btpr.2502

Source DB:  PubMed          Journal:  Biotechnol Prog        ISSN: 1520-6033


  5 in total

1.  An anti-apoptotic HEK293 cell line provides a robust and high titer platform for transient protein expression in bioreactors.

Authors:  Tia A Arena; Bernice Chou; Peter D Harms; Athena W Wong
Journal:  MAbs       Date:  2019-04-24       Impact factor: 5.857

2.  Digital Twins in Biomanufacturing.

Authors:  Steffen Zobel-Roos; Axel Schmidt; Lukas Uhlenbrock; Reinhard Ditz; Dirk Köster; Jochen Strube
Journal:  Adv Biochem Eng Biotechnol       Date:  2021       Impact factor: 2.635

Review 3.  Harnessing the potential of machine learning for advancing "Quality by Design" in biomanufacturing.

Authors:  Ian Walsh; Matthew Myint; Terry Nguyen-Khuong; Ying Swan Ho; Say Kong Ng; Meiyappan Lakshmanan
Journal:  MAbs       Date:  2022 Jan-Dec       Impact factor: 5.857

4.  Harnessing the potential of artificial neural networks for predicting protein glycosylation.

Authors:  Pavlos Kotidis; Cleo Kontoravdi
Journal:  Metab Eng Commun       Date:  2020-05-15

Review 5.  Process Analytical Technologies and Data Analytics for the Manufacture of Monoclonal Antibodies.

Authors:  Murali K Maruthamuthu; Scott R Rudge; Arezoo M Ardekani; Michael R Ladisch; Mohit S Verma
Journal:  Trends Biotechnol       Date:  2020-08-21       Impact factor: 19.536

  5 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.