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Integrating Gene and Protein Expression Data with Genome-scale Metabolic Networks to Infer Functional Pathways

Overview
Journal BMC Syst Biol
Publisher Biomed Central
Specialty Biology
Date 2013 Dec 10
PMID 24314206
Citations 2
Authors
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Abstract

Background: The study of cellular metabolism in the context of high-throughput -omics data has allowed us to decipher novel mechanisms of importance in biotechnology and health. To continue with this progress, it is essential to efficiently integrate experimental data into metabolic modeling.

Results: We present here an in-silico framework to infer relevant metabolic pathways for a particular phenotype under study based on its gene/protein expression data. This framework is based on the Carbon Flux Path (CFP) approach, a mixed-integer linear program that expands classical path finding techniques by considering additional biophysical constraints. In particular, the objective function of the CFP approach is amended to account for gene/protein expression data and influence obtained paths. This approach is termed integrative Carbon Flux Path (iCFP). We show that gene/protein expression data also influences the stoichiometric balancing of CFPs, which provides a more accurate picture of active metabolic pathways. This is illustrated in both a theoretical and real scenario. Finally, we apply this approach to find novel pathways relevant in the regulation of acetate overflow metabolism in Escherichia coli. As a result, several targets which could be relevant for better understanding of the phenomenon leading to impaired acetate overflow are proposed.

Conclusions: A novel mathematical framework that determines functional pathways based on gene/protein expression data is presented and validated. We show that our approach is able to provide new insights into complex biological scenarios such as acetate overflow in Escherichia coli.

Citing Articles

Review of Statistical Learning Methods in Integrated Omics Studies (An Integrated Information Science).

Zeng I, Lumley T Bioinform Biol Insights. 2018; 12:1177932218759292.

PMID: 29497285 PMC: 5824897. DOI: 10.1177/1177932218759292.


A Method for Finding Metabolic Pathways Using Atomic Group Tracking.

Huang Y, Zhong C, Lin H, Wang J PLoS One. 2017; 12(1):e0168725.

PMID: 28068354 PMC: 5221824. DOI: 10.1371/journal.pone.0168725.

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