Applications of genome-scale metabolic models to investigate microbial metabolic adaptations in response to genetic or environmental perturbations

Author:

Carter Elena Lucy1,Constantinidou Chrystala2,Alam Mohammad Tauqeer3

Affiliation:

1. Warwick Medical School, University of Warwick , Coventry, CV4 7HL, UK

2. Warwick Medical School , University of Warwick

3. United Arab Emirates University , Al Ain, UAE

Abstract

Abstract Environmental perturbations are encountered by microorganisms regularly and will require metabolic adaptations to ensure an organism can survive in the newly presenting conditions. In order to study the mechanisms of metabolic adaptation in such conditions, various experimental and computational approaches have been used. Genome-scale metabolic models (GEMs) are one of the most powerful approaches to study metabolism, providing a platform to study the systems level adaptations of an organism to different environments which could otherwise be infeasible experimentally. In this review, we are describing the application of GEMs in understanding how microbes reprogram their metabolic system as a result of environmental variation. In particular, we provide the details of metabolic model reconstruction approaches, various algorithms and tools for model simulation, consequences of genetic perturbations, integration of ‘-omics’ datasets for creating context-specific models and their application in studying metabolic adaptation due to the change in environmental conditions.

Funder

UPAR

UAE University internal research

MRC Doctoral Training Partnership at the University of Warwick

Publisher

Oxford University Press (OUP)

Subject

Molecular Biology,Information Systems

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