Zahra Negahban, Valerie Ward, Anne Richelle, Chris McCready, Hector Budman
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引用次数: 0
Abstract
In this study, we present a hybrid dynamic flux balance analysis (DFBA) model, combined with Partial Least Squares (PLS) regression, to simulate cell culture behavior in response to variations in media composition. DFBA models typically incorporate a stoichiometric matrix representing metabolic reactions, leveraging the pseudo-stationarity assumption to reduce the number of parameters, which in turn minimizes the risk of overfitting. Here, PLS regression is employed to define kinetic rate constraints within the DFBA model, capturing the dynamic and non-linear nature of reaction rates over different culture phases. An optimization approach identifies the minimal number of kinetic constraints required, ensuring model accuracy without excessive complexity. Our hybrid model is validated through simulation case studies using an E. coli system, demonstrating its effectiveness in adjusting to changes in initial media composition. The case studies reveal that the model's accuracy improves with a more detailed stoichiometric matrix, particularly when larger networks or more varied metabolic environments are present. Additionally, the hybrid DFBA-PLS approach provides a robust and scalable modeling framework adaptable to other bioprocesses, offering insights into medium composition effects and highlighting its potential for bioprocess optimization.
期刊介绍:
Bioprocess and Biosystems Engineering provides an international peer-reviewed forum to facilitate the discussion between engineering and biological science to find efficient solutions in the development and improvement of bioprocesses. The aim of the journal is to focus more attention on the multidisciplinary approaches for integrative bioprocess design. Of special interest are the rational manipulation of biosystems through metabolic engineering techniques to provide new biocatalysts as well as the model based design of bioprocesses (up-stream processing, bioreactor operation and downstream processing) that will lead to new and sustainable production processes.
Contributions are targeted at new approaches for rational and evolutive design of cellular systems by taking into account the environment and constraints of technical production processes, integration of recombinant technology and process design, as well as new hybrid intersections such as bioinformatics and process systems engineering. Manuscripts concerning the design, simulation, experimental validation, control, and economic as well as ecological evaluation of novel processes using biosystems or parts thereof (e.g., enzymes, microorganisms, mammalian cells, plant cells, or tissue), their related products, or technical devices are also encouraged.
The Editors will consider papers for publication based on novelty, their impact on biotechnological production and their contribution to the advancement of bioprocess and biosystems engineering science. Submission of papers dealing with routine aspects of bioprocess engineering (e.g., routine application of established methodologies, and description of established equipment) are discouraged.