Harnessing the optimization of enzyme catalytic rates in engineering of metabolic phenotypes

Author:

Razaghi-Moghadam Zahra1,Babadi Fayaz Soleymani1ORCID,Nikoloski Zoran1ORCID

Affiliation:

1. Institute of Biochemistry and Biology

Abstract

Abstract The increasing availability of enzyme turnover number measurements from experiments and of turnover number predictions from deep learning models prompts the use of these enzyme parameters in precise metabolic engineering. Yet, there is no computational approach that allows the prediction of metabolic engineering strategies that rely on modification of turnover numbers. It is also unclear if modifications of turnover numbers without alterations in the host’s regulatory machinery suffice to increase the production of chemicals of interest. Here, we present a constraint-based modelling approach, overcoming kinetic obstacles (OKO), that uses enzyme-constrained metabolic models to predict in silico strategies to increase the production of a given chemical, while ensuring specified cell growth. We demonstrate that the application of OKO to enzyme-constrained metabolic models of Escherichia coli and Saccharomyces cerevisiae results in strategies that can at least double the production of over 40 compounds with little penalty to growth. Interestingly, we show that the overproduction of compounds of interest does not entail only an increase in the values of turnover numbers. Lastly, we demonstrate that a refinement of OKO, allowing also for manipulation of enzyme abundance, facilitates the usage of the available compendia of turnover numbers in the design of precise metabolic engineering strategies.

Publisher

Research Square Platform LLC

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