4.7 Article

Prediction of dynamic behavior of mutant strains from limited wild-type data

Journal

METABOLIC ENGINEERING
Volume 14, Issue 2, Pages 69-80

Publisher

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.ymben.2012.02.003

Keywords

Dynamic prediction; Gene knockout; Lumped hybrid cybernetic model (L-HCM); Limited data; Productivity; Escherichia coli

Funding

  1. Dean's research office at Purdue University
  2. Center for Science of Information (CSoI)
  3. NSF Science and Technology Center [CCF-0939370]

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Metabolic engineering is the field of introducing genetic changes in organisms so as to modify their function towards synthesizing new products of high impact to society. However, engineered cells frequently have impaired growth rates thus seriously limiting the rate at which such products are made. The problem is attributable to inadequate understanding of how a metabolic network functions in a dynamic sense. Predictions of mutant strain behavior in the past have been based on steady state theories such as flux balance analysis (FBA), minimization of metabolic adjustment (MOMA), and regulatory on/off minimization (ROOM). Such predictions are restricted to product yields and cannot address productivity, which is of focal interest to applications. We demonstrate that our framework (Song and Ramkrishna, 2010; Song and Ramkrishna, 2011), based on a cybernetic view of metabolic systems, makes predictions of the dynamic behavior of mutant strains of Escherichia coli from a limited amount of data obtained from the wild-type. Dynamic frameworks must necessarily address the issue of metabolic regulation, which the cybernetic approach does by postulating that metabolism is an optimal dynamic response of the organism to the environment in driving reactions towards ensuring survival. The predictions made in this paper are without parallel in the literature and lay the foundation for rational metabolic engineering. (C) 2012 Elsevier Inc. All rights reserved.

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