Advances in flux balance analysis by integrating machine learning and mechanism-based models
The availability of multi-omics data sets and genome-scale metabolic models for various organisms provide a platform for modeling and analyzing genotype-to-phenotype relationships. Flux balance analysis is the main tool for predicting flux distributions in genome-scale metabolic models and various d...
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doaj-781c0cfc2d3e4cfebc46768e7e1ac50c2021-08-24T04:07:22ZengElsevierComputational and Structural Biotechnology Journal2001-03702021-01-011946264640Advances in flux balance analysis by integrating machine learning and mechanism-based modelsAnkur Sahu0Mary-Ann Blätke1Jędrzej Jakub Szymański2Nadine Töpfer3Leibniz Institute of Plant Genetics and Crop Plant Research (IPK), Corrensstraße 3, 06466 Gatersleben, GermanyLeibniz Institute of Plant Genetics and Crop Plant Research (IPK), Corrensstraße 3, 06466 Gatersleben, GermanyLeibniz Institute of Plant Genetics and Crop Plant Research (IPK), Corrensstraße 3, 06466 Gatersleben, GermanyCorresponding author.; Leibniz Institute of Plant Genetics and Crop Plant Research (IPK), Corrensstraße 3, 06466 Gatersleben, GermanyThe availability of multi-omics data sets and genome-scale metabolic models for various organisms provide a platform for modeling and analyzing genotype-to-phenotype relationships. Flux balance analysis is the main tool for predicting flux distributions in genome-scale metabolic models and various data-integrative approaches enable modeling context-specific network behavior. Due to its linear nature, this optimization framework is readily scalable to multi-tissue or -organ and even multi-organism models. However, both data and model size can hamper a straightforward biological interpretation of the estimated fluxes. Moreover, flux balance analysis simulates metabolism at steady-state and thus, in its most basic form, does not consider kinetics or regulatory events. The integration of flux balance analysis with complementary data analysis and modeling techniques offers the potential to overcome these challenges. In particular machine learning approaches have emerged as the tool of choice for data reduction and selection of most important variables in big data sets. Kinetic models and formal languages can be used to simulate dynamic behavior. This review article provides an overview of integrative studies that combine flux balance analysis with machine learning approaches, kinetic models, such as physiology-based pharmacokinetic models, and formal graphical modeling languages, such as Petri nets. We discuss the mathematical aspects and biological applications of these integrated approaches and outline challenges and future perspectives.http://www.sciencedirect.com/science/article/pii/S2001037021003354Flux balance analysisGenome-scale modelingMachine learningKinetic modelsPetri-netsMulti-scale modeling |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ankur Sahu Mary-Ann Blätke Jędrzej Jakub Szymański Nadine Töpfer |
spellingShingle |
Ankur Sahu Mary-Ann Blätke Jędrzej Jakub Szymański Nadine Töpfer Advances in flux balance analysis by integrating machine learning and mechanism-based models Computational and Structural Biotechnology Journal Flux balance analysis Genome-scale modeling Machine learning Kinetic models Petri-nets Multi-scale modeling |
author_facet |
Ankur Sahu Mary-Ann Blätke Jędrzej Jakub Szymański Nadine Töpfer |
author_sort |
Ankur Sahu |
title |
Advances in flux balance analysis by integrating machine learning and mechanism-based models |
title_short |
Advances in flux balance analysis by integrating machine learning and mechanism-based models |
title_full |
Advances in flux balance analysis by integrating machine learning and mechanism-based models |
title_fullStr |
Advances in flux balance analysis by integrating machine learning and mechanism-based models |
title_full_unstemmed |
Advances in flux balance analysis by integrating machine learning and mechanism-based models |
title_sort |
advances in flux balance analysis by integrating machine learning and mechanism-based models |
publisher |
Elsevier |
series |
Computational and Structural Biotechnology Journal |
issn |
2001-0370 |
publishDate |
2021-01-01 |
description |
The availability of multi-omics data sets and genome-scale metabolic models for various organisms provide a platform for modeling and analyzing genotype-to-phenotype relationships. Flux balance analysis is the main tool for predicting flux distributions in genome-scale metabolic models and various data-integrative approaches enable modeling context-specific network behavior. Due to its linear nature, this optimization framework is readily scalable to multi-tissue or -organ and even multi-organism models. However, both data and model size can hamper a straightforward biological interpretation of the estimated fluxes. Moreover, flux balance analysis simulates metabolism at steady-state and thus, in its most basic form, does not consider kinetics or regulatory events. The integration of flux balance analysis with complementary data analysis and modeling techniques offers the potential to overcome these challenges. In particular machine learning approaches have emerged as the tool of choice for data reduction and selection of most important variables in big data sets. Kinetic models and formal languages can be used to simulate dynamic behavior. This review article provides an overview of integrative studies that combine flux balance analysis with machine learning approaches, kinetic models, such as physiology-based pharmacokinetic models, and formal graphical modeling languages, such as Petri nets. We discuss the mathematical aspects and biological applications of these integrated approaches and outline challenges and future perspectives. |
topic |
Flux balance analysis Genome-scale modeling Machine learning Kinetic models Petri-nets Multi-scale modeling |
url |
http://www.sciencedirect.com/science/article/pii/S2001037021003354 |
work_keys_str_mv |
AT ankursahu advancesinfluxbalanceanalysisbyintegratingmachinelearningandmechanismbasedmodels AT maryannblatke advancesinfluxbalanceanalysisbyintegratingmachinelearningandmechanismbasedmodels AT jedrzejjakubszymanski advancesinfluxbalanceanalysisbyintegratingmachinelearningandmechanismbasedmodels AT nadinetopfer advancesinfluxbalanceanalysisbyintegratingmachinelearningandmechanismbasedmodels |
_version_ |
1721197931814453248 |