Optimization of biopharmaceutical downstream processes supported by mechanistic models and artificial neural networks

Journal Article (2017)
Author(s)

Silvia M. Pirrung (TU Delft - Applied Sciences)

Luuk A.M. van der Wielen (TU Delft - Applied Sciences)

Ruud F.W.C. van Beckhoven (DSM)

Emile J A X van de Sandt (DSM)

Michel H M Eppink (Synthon Biopharmaceuticals B.V.)

Marcel Ottens (TU Delft - Applied Sciences)

Research Group
BT/Bioprocess Engineering
DOI related publication
https://doi.org/10.1002/btpr.2435 Final published version
More Info
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Publication Year
2017
Language
English
Research Group
BT/Bioprocess Engineering
Journal title
Biotechnology Progress
Issue number
3
Volume number
33
Pages (from-to)
696-707
Downloads counter
209

Abstract

Downstream process development is a major area of importance within the field of bioengineering. During the design of such a downstream process, important decisions have to be made regarding the type of unit operations as well as their sequence and their operating conditions. Current computational approaches addressing these issues either show a high level of simplification or struggle with computational speed. Therefore, this article presents a new approach that combines detailed mechanistic models and speed-enhancing artificial neural networks. This approach was able to simultaneously optimize a process with three different chromatographic columns toward yield with a minimum purity of 99.9%. The addition of artificial neural networks greatly accelerated this optimization. Due to high computational speed, the approach is easily extendable to include more unit operations. Therefore, it can be of great help in the acceleration of downstream process development.