» Articles » PMID: 28598965

Metabolic Network Segmentation: A Probabilistic Graphical Modeling Approach to Identify the Sites and Sequential Order of Metabolic Regulation from Non-targeted Metabolomics Data

Overview
Specialty Biology
Date 2017 Jun 10
PMID 28598965
Citations 4
Authors
Affiliations
Soon will be listed here.
Abstract

In recent years, the number of large-scale metabolomics studies on various cellular processes in different organisms has increased drastically. However, it remains a major challenge to perform a systematic identification of mechanistic regulatory events that mediate the observed changes in metabolite levels, due to complex interdependencies within metabolic networks. We present the metabolic network segmentation (MNS) algorithm, a probabilistic graphical modeling approach that enables genome-scale, automated prediction of regulated metabolic reactions from differential or serial metabolomics data. The algorithm sections the metabolic network into modules of metabolites with consistent changes. Metabolic reactions that connect different modules are the most likely sites of metabolic regulation. In contrast to most state-of-the-art methods, the MNS algorithm is independent of arbitrary pathway definitions, and its probabilistic nature facilitates assessments of noisy and incomplete measurements. With serial (i.e., time-resolved) data, the MNS algorithm also indicates the sequential order of metabolic regulation. We demonstrated the power and flexibility of the MNS algorithm with three, realistic case studies with bacterial and human cells. Thus, this approach enables the identification of mechanistic regulatory events from large-scale metabolomics data, and contributes to the understanding of metabolic processes and their interplay with cellular signaling and regulation processes.

Citing Articles

Quantitative modeling of pentose phosphate pathway response to oxidative stress reveals a cooperative regulatory strategy.

Hurbain J, Thommen Q, Anquez F, Pfeuty B iScience. 2022; 25(8):104681.

PMID: 35856027 PMC: 9287814. DOI: 10.1016/j.isci.2022.104681.


Multiomic Metabolic Enrichment Network Analysis Reveals Metabolite-Protein Physical Interaction Subnetworks Altered in Cancer.

Blum B, Lin W, Lawton M, Liu Q, Kwan J, Turcinovic I Mol Cell Proteomics. 2021; 21(1):100189.

PMID: 34933084 PMC: 8761777. DOI: 10.1016/j.mcpro.2021.100189.


Using Pathway Covering to Explore Connections among Metabolites.

Midford P, Latendresse M, OMaille P, Karp P Metabolites. 2019; 9(5).

PMID: 31052521 PMC: 6571860. DOI: 10.3390/metabo9050088.


Metabolic Flexibility as an Adaptation to Energy Resources and Requirements in Health and Disease.

Smith R, Soeters M, Wust R, Houtkooper R Endocr Rev. 2018; 39(4):489-517.

PMID: 29697773 PMC: 6093334. DOI: 10.1210/er.2017-00211.

References
1.
Khodayari A, Maranas C . A genome-scale Escherichia coli kinetic metabolic model k-ecoli457 satisfying flux data for multiple mutant strains. Nat Commun. 2016; 7:13806. PMC: 5187423. DOI: 10.1038/ncomms13806. View

2.
Ewald J, Matt T, Zamboni N . The integrated response of primary metabolites to gene deletions and the environment. Mol Biosyst. 2013; 9(3):440-6. DOI: 10.1039/c2mb25423a. View

3.
Kuehne A, Emmert H, Soehle J, Winnefeld M, Fischer F, Wenck H . Acute Activation of Oxidative Pentose Phosphate Pathway as First-Line Response to Oxidative Stress in Human Skin Cells. Mol Cell. 2015; 59(3):359-71. DOI: 10.1016/j.molcel.2015.06.017. View

4.
Kanehisa M, Goto S . KEGG: kyoto encyclopedia of genes and genomes. Nucleic Acids Res. 1999; 28(1):27-30. PMC: 102409. DOI: 10.1093/nar/28.1.27. View

5.
Cakir T, Patil K, Onsan Z, Ulgen K, Kirdar B, Nielsen J . Integration of metabolome data with metabolic networks reveals reporter reactions. Mol Syst Biol. 2006; 2:50. PMC: 1682015. DOI: 10.1038/msb4100085. View