Literature DB >> 26905301

Principal elementary mode analysis (PEMA).

Abel Folch-Fortuny1, Rodolfo Marques, Inês A Isidro, Rui Oliveira, Alberto Ferrer.   

Abstract

Principal component analysis (PCA) has been widely applied in fluxomics to compress data into a few latent structures in order to simplify the identification of metabolic patterns. These latent structures lack a direct biological interpretation due to the intrinsic constraints associated with a PCA model. Here we introduce a new method that significantly improves the interpretability of the principal components with a direct link to metabolic pathways. This method, called principal elementary mode analysis (PEMA), establishes a bridge between a PCA-like model, aimed at explaining the maximum variance in flux data, and the set of elementary modes (EMs) of a metabolic network. It provides an easy way to identify metabolic patterns in large fluxomics datasets in terms of the simplest pathways of the organism metabolism. The results using a real metabolic model of Escherichia coli show the ability of PEMA to identify the EMs that generated the different simulated flux distributions. Actual flux data of E. coli and Pichia pastoris cultures confirm the results observed in the simulated study, providing a biologically meaningful model to explain flux data of both organisms in terms of the EM activation. The PEMA toolbox is freely available for non-commercial purposes on http://mseg.webs.upv.es.

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Year:  2016        PMID: 26905301     DOI: 10.1039/c5mb00828j

Source DB:  PubMed          Journal:  Mol Biosyst        ISSN: 1742-2051


  5 in total

Review 1.  Construction of Multiscale Genome-Scale Metabolic Models: Frameworks and Challenges.

Authors:  Xinyu Bi; Yanfeng Liu; Jianghua Li; Guocheng Du; Xueqin Lv; Long Liu
Journal:  Biomolecules       Date:  2022-05-19

2.  Principal metabolic flux mode analysis.

Authors:  Sahely Bhadra; Peter Blomberg; Sandra Castillo; Juho Rousu
Journal:  Bioinformatics       Date:  2018-07-15       Impact factor: 6.937

3.  Dynamic elementary mode modelling of non-steady state flux data.

Authors:  Abel Folch-Fortuny; Bas Teusink; Huub C J Hoefsloot; Age K Smilde; Alberto Ferrer
Journal:  BMC Syst Biol       Date:  2018-06-18

Review 4.  Machine and deep learning meet genome-scale metabolic modeling.

Authors:  Guido Zampieri; Supreeta Vijayakumar; Elisabeth Yaneske; Claudio Angione
Journal:  PLoS Comput Biol       Date:  2019-07-11       Impact factor: 4.475

Review 5.  Exploring synergies between plant metabolic modelling and machine learning.

Authors:  Marta Sampaio; Miguel Rocha; Oscar Dias
Journal:  Comput Struct Biotechnol J       Date:  2022-04-16       Impact factor: 6.155

  5 in total

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