A network-based approach for predicting key enzymes explaining metabolite abundance alterations in a disease phenotype

Peyton, J., Tobalina, L., Prada Jimenez de Cisneros, J. and Planes, F.J. (2013) A network-based approach for predicting key enzymes explaining metabolite abundance alterations in a disease phenotype. BMC Systems Biology, 7(62), (doi: 10.1186/1752-0509-7-62)

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Abstract

<p>Background The study of metabolism has attracted much attention during the last years due to its relevance in various diseases. The advance in metabolomics platforms allows us to detect an increasing number of metabolites in abnormal high/low concentration in a disease phenotype. Finding a mechanistic interpretation for these alterations is important to understand pathophysiological processes, however it is not an easy task. The availability of genome scale metabolic networks and Systems Biology techniques open new avenues to address this question.</p> <p>Results In this article we present a novel mathematical framework to find enzymes whose malfunction explains the accumulation/depletion of a given metabolite in a disease phenotype. Our approach is based on a recently introduced pathway concept termed Carbon Flux Paths (CFPs), which extends classical topological definition by including network stoichiometry. Using CFPs, we determine the Connectivity Curve of an altered metabolite, which allows us to quantify changes in its pathway structure when a certain enzyme is removed. The influence of enzyme removal is then ranked and used to explain the accumulation/depletion of such metabolite. For illustration, we center our study in the accumulation of two metabolites (L-Cystine and Homocysteine) found in high concentration in the brain of patients with mental disorders. Our results were discussed based on literature and found a good agreement with previously reported mechanisms. In addition, we hypothesize a novel role of several enzymes for the accumulation of these metabolites, which opens new strategies to understand the metabolic processes underlying these diseases.</p> <p>Conclusions With personalized medicine on the horizon, metabolomic platforms are providing us with a vast amount of experimental data for a number of complex diseases. Our approach provides a novel apparatus to rationally investigate and understand metabolite alterations under disease phenotypes. This work contributes to the development of Systems Medicine, whose objective is to answer clinical questions based on theoretical methods and high-throughput “omics” data.</p>

Item Type:Articles
Status:Published
Refereed:Yes
Glasgow Author(s) Enlighten ID:Prada Jimenez de Cisneros, Dr Joaquin
Authors: Peyton, J., Tobalina, L., Prada Jimenez de Cisneros, J., and Planes, F.J.
College/School:College of Medical Veterinary and Life Sciences > School of Infection & Immunity
Journal Name:BMC Systems Biology
Publisher:BioMed Central
ISSN:1752-0509
ISSN (Online):1752-0509
Copyright Holders:Copyright © 2013 The Authors
First Published:First published in BMC Systems Biology 7(62)
Publisher Policy:Reproduced under a Creative Commons License

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