Process Sensing and Control
Optimization of a Saccharomyces cerevisiae fermentation process for production of a therapeutic recombinant protein using a multivariate bayesian approach
Article first published online: 18 JUN 2012
DOI: 10.1002/btpr.1557
Copyright © 2012 American Institute of Chemical Engineers (AIChE)
Additional Information
How to Cite
Fu, Z., Leighton, J., Cheng, A., Appelbaum, E. and Aon, J. C. (2012), Optimization of a Saccharomyces cerevisiae fermentation process for production of a therapeutic recombinant protein using a multivariate bayesian approach. Biotechnol Progress, 28: 1095–1105. doi: 10.1002/btpr.1557
Publication History
- Issue published online: 7 AUG 2012
- Article first published online: 18 JUN 2012
- Accepted manuscript online: 11 MAY 2012 10:37PM EST
- Manuscript Revised: 3 APR 2012
- Manuscript Received: 11 NOV 2011
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Keywords:
- fermentation process;
- central composite design;
- critical process parameter;
- critical quality attribute;
- multivariate Bayesian predictive approach;
- design space;
- reliable operating region;
- quality by design
Abstract
Various approaches have been applied to optimize biological product fermentation processes and define design space. In this article, we present a stepwise approach to optimize a Saccharomyces cerevisiae fermentation process through risk assessment analysis, statistical design of experiments (DoE), and multivariate Bayesian predictive approach. The critical process parameters (CPPs) were first identified through a risk assessment. The response surface for each attribute was modeled using the results from the DoE study with consideration given to interactions between CPPs. A multivariate Bayesian predictive approach was then used to identify the region of process operating conditions where all attributes met their specifications simultaneously. The model prediction was verified by twelve consistency runs where all batches achieved broth titer more than 1.53 g/L of broth and quality attributes within the expected ranges. The calculated probability was used to define the reliable operating region. To our knowledge, this is the first case study to implement the multivariate Bayesian predictive approach to the process optimization for the industrial application and its corresponding verification at two different production scales. This approach can be extended to other fermentation process optimizations and reliable operating region quantitation. © 2012 American Institute of Chemical Engineers Biotechnol. Prog., 28: 1095–1105, 2012

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