Literature DB >> 30315095

Integrating -omics data into genome-scale metabolic network models: principles and challenges.

Charlotte Ramon1,2, Mattia G Gollub1, Jörg Stelling3.   

Abstract

At genome scale, it is not yet possible to devise detailed kinetic models for metabolism because data on the in vivo biochemistry are too sparse. Predictive large-scale models for metabolism most commonly use the constraint-based framework, in which network structures constrain possible metabolic phenotypes at steady state. However, these models commonly leave many possibilities open, making them less predictive than desired. With increasingly available -omics data, it is appealing to increase the predictive power of constraint-based models (CBMs) through data integration. Many corresponding methods have been developed, but data integration is still a challenge and existing methods perform less well than expected. Here, we review main approaches for the integration of different types of -omics data into CBMs focussing on the methods' assumptions and limitations. We argue that key assumptions - often derived from single-enzyme kinetics - do not generally apply in the context of networks, thereby explaining current limitations. Emerging methods bridging CBMs and biochemical kinetics may allow for -omics data integration in a common framework to provide more accurate predictions.
© 2018 The Author(s). Published by Portland Press Limited on behalf of the Biochemical Society.

Keywords:  constraint-based models; data integration; metabolic networks

Mesh:

Year:  2018        PMID: 30315095     DOI: 10.1042/EBC20180011

Source DB:  PubMed          Journal:  Essays Biochem        ISSN: 0071-1365            Impact factor:   8.000


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