A Scalable Algorithm to Explore the Gibbs Energy Landscape of Genome-Scale Metabolic Networks

被引:17
作者
De Martino, Daniele [1 ]
Figliuzzi, Matteo [1 ]
De Martino, Andrea [1 ,2 ]
Marinari, Enzo [1 ]
机构
[1] Univ Roma La Sapienza, Dipartimento Fis, Rome, Italy
[2] CNR IPCF, Unita Roma Sapienza, Rome, Italy
关键词
FLUX BALANCE ANALYSIS; ESCHERICHIA-COLI; THERMODYNAMIC CONSTRAINTS; PATHWAYS; GROWTH; MODELS;
D O I
10.1371/journal.pcbi.1002562
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
The integration of various types of genomic data into predictive models of biological networks is one of the main challenges currently faced by computational biology. Constraint-based models in particular play a key role in the attempt to obtain a quantitative understanding of cellular metabolism at genome scale. In essence, their goal is to frame the metabolic capabilities of an organism based on minimal assumptions that describe the steady states of the underlying reaction network via suitable stoichiometric constraints, specifically mass balance and energy balance (i.e. thermodynamic feasibility). The implementation of these requirements to generate viable configurations of reaction fluxes and/or to test given flux profiles for thermodynamic feasibility can however prove to be computationally intensive. We propose here a fast and scalable stoichiometry-based method to explore the Gibbs energy landscape of a biochemical network at steady state. The method is applied to the problem of reconstructing the Gibbs energy landscape underlying metabolic activity in the human red blood cell, and to that of identifying and removing thermodynamically infeasible reaction cycles in the Escherichia coli metabolic network (iAF1260). In the former case, we produce consistent predictions for chemical potentials (or log-concentrations) of intracellular metabolites; in the latter, we identify a restricted set of loops (23 in total) in the periplasmic and cytoplasmic core as the origin of thermodynamic infeasibility in a large sample (10(6)) of flux configurations generated randomly and compatibly with the prior information available on reaction reversibility.
引用
收藏
页数:12
相关论文
共 50 条
[41]   Pruning Genome-Scale Metabolic Models To Consistent AD Functionem Networks [J].
Hoffmann, Sabrina ;
Hoppe, Andreas ;
Holzhuetter, Hermann-Georg .
GENOME INFORMATICS 2007, VOL 18, 2007, 18 :308-319
[42]   NetFlow: A tool for isolating carbon flows in genome-scale metabolic networks [J].
Mack, Sean G. ;
Sriram, Ganesh .
METABOLIC ENGINEERING COMMUNICATIONS, 2021, 12
[43]   Genome-Scale Metabolic Reconstruction of Actinomycetes for Antibiotics Production [J].
Mohite, Omkar S. ;
Weber, Tilmann ;
Kim, Hyun Uk ;
Lee, Sang Yup .
BIOTECHNOLOGY JOURNAL, 2019, 14 (01)
[44]   Genome-scale metabolic reconstruction and analysis for Clostridium kluyveri [J].
Zou, Wei ;
Ye, Guangbin ;
Zhang, Jing ;
Zhao, Changqing ;
Zhao, Xingxiu ;
Zhang, Kaizheng .
GENOME, 2018, 61 (08) :605-613
[45]   Machine learning for the advancement of genome-scale metabolic modeling [J].
Kundu, Pritam ;
Beura, Satyajit ;
Mondal, Suman ;
Das, Amit Kumar ;
Ghosh, Amit .
BIOTECHNOLOGY ADVANCES, 2024, 74
[46]   Sensitivity Analysis of Genome-Scale Metabolic Flux Prediction [J].
Niu, Puhua ;
Soto, Maria J. ;
Huang, Shuai ;
Yoon, Byung-Jun ;
Dougherty, Edward R. ;
Alexander, Francis J. ;
Blaby, Ian ;
Qian, Xiaoning .
JOURNAL OF COMPUTATIONAL BIOLOGY, 2023, 30 (07) :751-765
[47]   A Caenorhabditis elegans Genome-Scale Metabolic Network Model [J].
Yilmaz, L. Safak ;
Walhout, Albertha J. M. .
CELL SYSTEMS, 2016, 2 (05) :297-311
[48]   Metabolic Determinants of Enzyme Evolution in a Genome-Scale Bacterial Metabolic Network [J].
Aguilar-Rodriguez, Jose ;
Wagner, Andreas .
GENOME BIOLOGY AND EVOLUTION, 2018, 10 (11) :3076-3088
[49]   optGpSampler: An Improved Tool for Uniformly Sampling the Solution-Space of Genome-Scale Metabolic Networks [J].
Megchelenbrink, Wout ;
Huynen, Martijn ;
Marchiori, Elena .
PLOS ONE, 2014, 9 (02)
[50]   Integrating gene and protein expression data with genome-scale metabolic networks to infer functional pathways [J].
Pey, Jon ;
Valgepea, Kaspar ;
Rubio, Angel ;
Beasley, John E. ;
Planes, Francisco J. .
BMC SYSTEMS BIOLOGY, 2013, 7