Literature DB >> 36227553

Machine Learning and Hybrid Methods for Metabolic Pathway Modeling.

Miroslava Cuperlovic-Culf1,2, Thao Nguyen-Tran3,4,5, Steffany A L Bennett3,4,5.   

Abstract

Computational cell metabolism models seek to provide metabolic explanations of cell behavior under different conditions or following genetic alterations, help in the optimization of in vitro cell growth environments, or predict cellular behavior in vivo and in vitro. In the extremes, mechanistic models can include highly detailed descriptions of a small number of metabolic reactions or an approximate representation of an entire metabolic network. To date, all mechanistic models have required details of individual metabolic reactions, either kinetic parameters or metabolic flux, as well as information about extracellular and intracellular metabolite concentrations. Despite the extensive efforts and the increasing availability of high-quality data, required in vivo data are not available for the majority of known metabolic reactions; thus, mechanistic models are based primarily on ex vivo kinetic measurements and limited flux information. Machine learning approaches provide an alternative for derivation of functional dependencies from existing data. The increasing availability of metabolomic and lipidomic data, with growing feature coverage as well as sample set size, is expected to provide new data options needed for derivation of machine learning models of cell metabolic processes. Moreover, machine learning analysis of longitudinal data can lead to predictive models of cell behaviors over time. Conversely, machine learning models trained on steady-state data can provide descriptive models for the comparison of metabolic states in different environments or disease conditions. Additionally, inclusion of metabolic network knowledge in these analyses can further help in the development of models with limited data.This chapter will explore the application of machine learning to the modeling of cell metabolism. We first provide a theoretical explanation of several machine learning and hybrid mechanistic machine learning methods currently being explored to model metabolism. Next, we introduce several avenues for improving these models with machine learning. Finally, we provide protocols for specific examples of the utilization of machine learning in the development of predictive cell metabolism models using metabolomic data. We describe data preprocessing, approaches for training of machine learning models for both descriptive and predictive models, and the utilization of these models in synthetic and systems biology. Detailed protocols provide a list of software tools and libraries used for these applications, step-by-step modeling protocols, troubleshooting, as well as an overview of existing limitations to these approaches.
© 2023. The Author(s), under exclusive license to Springer Science+Business Media, LLC, part of Springer Nature.

Entities:  

Keywords:  Hybrid modeling; Lipidomics, Flux analysis; Machine learning; Metabolism modeling; Metabolomics

Mesh:

Year:  2023        PMID: 36227553     DOI: 10.1007/978-1-0716-2617-7_18

Source DB:  PubMed          Journal:  Methods Mol Biol        ISSN: 1064-3745


  61 in total

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Authors:  Shyam Srinivasan; William R Cluett; Radhakrishnan Mahadevan
Journal:  Biotechnol J       Date:  2015-09       Impact factor: 4.677

2.  iAB-RBC-283: A proteomically derived knowledge-base of erythrocyte metabolism that can be used to simulate its physiological and patho-physiological states.

Authors:  Aarash Bordbar; Neema Jamshidi; Bernhard O Palsson
Journal:  BMC Syst Biol       Date:  2011-07-12

3.  Comprehensive Mapping of Pluripotent Stem Cell Metabolism Using Dynamic Genome-Scale Network Modeling.

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Journal:  Cell Rep       Date:  2017-12-05       Impact factor: 9.423

4.  SABIO-RK--database for biochemical reaction kinetics.

Authors:  Ulrike Wittig; Renate Kania; Martin Golebiewski; Maja Rey; Lei Shi; Lenneke Jong; Enkhjargal Algaa; Andreas Weidemann; Heidrun Sauer-Danzwith; Saqib Mir; Olga Krebs; Meik Bittkowski; Elina Wetsch; Isabel Rojas; Wolfgang Müller
Journal:  Nucleic Acids Res       Date:  2011-11-18       Impact factor: 16.971

5.  Reconciled rat and human metabolic networks for comparative toxicogenomics and biomarker predictions.

Authors:  Edik M Blais; Kristopher D Rawls; Bonnie V Dougherty; Zhuo I Li; Glynis L Kolling; Ping Ye; Anders Wallqvist; Jason A Papin
Journal:  Nat Commun       Date:  2017-02-08       Impact factor: 14.919

Review 6.  Systems biology approaches integrated with artificial intelligence for optimized metabolic engineering.

Authors:  Mohamed Helmy; Derek Smith; Kumar Selvarajoo
Journal:  Metab Eng Commun       Date:  2020-10-09

7.  Integrative computational approach identifies drug targets in CD4+ T-cell-mediated immune disorders.

Authors:  Bailee Lichter; Robert Moore; Bhanwar Lal Puniya; Rada Amin; Alex Ciurej; Sydney J Bennett; Ab Rauf Shah; Matteo Barberis; Tomáš Helikar
Journal:  NPJ Syst Biol Appl       Date:  2021-01-22

8.  Mechanistic model for production of recombinant adeno-associated virus via triple transfection of HEK293 cells.

Authors:  Tam N T Nguyen; Sha Sha; Moo Sun Hong; Andrew J Maloney; Paul W Barone; Caleb Neufeld; Jacqueline Wolfrum; Stacy L Springs; Anthony J Sinskey; Richard D Braatz
Journal:  Mol Ther Methods Clin Dev       Date:  2021-04-16       Impact factor: 6.698

9.  Network reconstruction of platelet metabolism identifies metabolic signature for aspirin resistance.

Authors:  Alex Thomas; Sorena Rahmanian; Aarash Bordbar; Bernhard Ø Palsson; Neema Jamshidi
Journal:  Sci Rep       Date:  2014-01-29       Impact factor: 4.379

Review 10.  Towards a widespread adoption of metabolic modeling tools in biopharmaceutical industry: a process systems biology engineering perspective.

Authors:  Anne Richelle; Blandine David; Didier Demaegd; Marianne Dewerchin; Romain Kinet; Angelo Morreale; Rui Portela; Quentin Zune; Moritz von Stosch
Journal:  NPJ Syst Biol Appl       Date:  2020-03-13
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