Bioprocess optimization under uncertainty using ensemble modeling

J Biotechnol. 2017 Feb 20:244:34-44. doi: 10.1016/j.jbiotec.2017.01.013. Epub 2017 Jan 27.

Abstract

The performance of model-based bioprocess optimizations depends on the accuracy of the mathematical model. However, models of bioprocesses often have large uncertainty due to the lack of model identifiability. In the presence of such uncertainty, process optimizations that rely on the predictions of a single "best fit" model, e.g. the model resulting from a maximum likelihood parameter estimation using the available process data, may perform poorly in real life. In this study, we employed ensemble modeling to account for model uncertainty in bioprocess optimization. More specifically, we adopted a Bayesian approach to define the posterior distribution of the model parameters, based on which we generated an ensemble of model parameters using a uniformly distributed sampling of the parameter confidence region. The ensemble-based process optimization involved maximizing the lower confidence bound of the desired bioprocess objective (e.g. yield or product titer), using a mean-standard deviation utility function. We demonstrated the performance and robustness of the proposed strategy in an application to a monoclonal antibody batch production by mammalian hybridoma cell culture.

Keywords: Bioprocess; Ensemble modeling; Monoclonal antibody; Optimization; Uncertainty.

MeSH terms

  • Algorithms
  • Antibodies, Monoclonal / metabolism*
  • Batch Cell Culture Techniques
  • Bayes Theorem
  • Bioreactors
  • Hybridomas / cytology*
  • Hybridomas / metabolism
  • Models, Biological*
  • Uncertainty

Substances

  • Antibodies, Monoclonal