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Toward a modeling, optimization, and predictive control framework for fed-batch metabolic cybergenetics.

Authors
  • Espinel-Ríos, Sebastián1
  • Morabito, Bruno2
  • Pohlodek, Johannes3
  • Bettenbrock, Katja1
  • Klamt, Steffen1
  • Findeisen, Rolf3
  • 1 Analysis and Redesign of Biological Networks, Max Planck Institute for Dynamics of Complex Technical Systems, Magdeburg, Germany. , (Germany)
  • 2 Yokogawa Insilico Biotechnology GmbH, Stuttgart, Germany. , (Germany)
  • 3 Control and Cyber-Physical Systems Laboratory, Technical University of Darmstadt, Darmstadt, Germany. , (Germany)
Type
Published Article
Journal
Biotechnology and Bioengineering
Publisher
Wiley (John Wiley & Sons)
Publication Date
Jan 01, 2024
Volume
121
Issue
1
Pages
366–379
Identifiers
DOI: 10.1002/bit.28575
PMID: 37942516
Source
Medline
Keywords
Language
English
License
Unknown

Abstract

Biotechnology offers many opportunities for the sustainable manufacturing of valuable products. The toolbox to optimize bioprocesses includes extracellular process elements such as the bioreactor design and mode of operation, medium formulation, culture conditions, feeding rates, and so on. However, these elements are frequently insufficient for achieving optimal process performance or precise product composition. One can use metabolic and genetic engineering methods for optimization at the intracellular level. Nevertheless, those are often of static nature, failing when applied to dynamic processes or if disturbances occur. Furthermore, many bioprocesses are optimized empirically and implemented with little-to-no feedback control to counteract disturbances. The concept of cybergenetics has opened new possibilities to optimize bioprocesses by enabling online modulation of the gene expression of metabolism-relevant proteins via external inputs (e.g., light intensity in optogenetics). Here, we fuse cybergenetics with model-based optimization and predictive control for optimizing dynamic bioprocesses. To do so, we propose to use dynamic constraint-based models that integrate the dynamics of metabolic reactions, resource allocation, and inducible gene expression. We formulate a model-based optimal control problem to find the optimal process inputs. Furthermore, we propose using model predictive control to address uncertainties via online feedback. We focus on fed-batch processes, where the substrate feeding rate is an additional optimization variable. As a simulation example, we show the optogenetic control of the ATPase enzyme complex for dynamic modulation of enforced ATP wasting to adjust product yield and productivity. © 2023 The Authors. Biotechnology and Bioengineering published by Wiley Periodicals LLC.

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