Machine and deep learning meet genome-scale metabolic modeling

被引:186
|
作者
Zampieri, Guido [1 ]
Vijayakumar, Supreeta [1 ]
Yaneske, Elisabeth [1 ]
Angione, Claudio [1 ,2 ]
机构
[1] Teesside Univ, Dept Comp Sci & Informat Syst, Middlesbrough, Cleveland, England
[2] Teesside Univ, Healthcare Innovat Ctr, Middlesbrough, Cleveland, England
基金
英国生物技术与生命科学研究理事会;
关键词
OMICS DATA; INTEGRATIVE ANALYSIS; ESSENTIAL GENES; RECONSTRUCTION; EXPRESSION; GENOTYPE; PREDICTION; REDUCTION; NETWORKS; CELL;
D O I
10.1371/journal.pcbi.1007084
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Omic data analysis is steadily growing as a driver of basic and applied molecular biology research. Core to the interpretation of complex and heterogeneous biological phenotypes are computational approaches in the fields of statistics and machine learning. In parallel, constraint-based metabolic modeling has established itself as the main tool to investigate large-scale relationships between genotype, phenotype, and environment. The development and application of these methodological frameworks have occurred independently for the most part, whereas the potential of their integration for biological, biomedical, and biotechnological research is less known. Here, we describe how machine learning and constraint-based modeling can be combined, reviewing recent works at the intersection of both domains and discussing the mathematical and practical aspects involved. We overlap systematic classifications from both frameworks, making them accessible to nonexperts. Finally, we delineate potential future scenarios, propose new joint theoretical frameworks, and suggest concrete points of investigation for this joint subfield. A multiview approach merging experimental and knowledge-driven omic data through machine learning methods can incorporate key mechanistic information in an otherwise biologically-agnostic learning process.
引用
收藏
页数:24
相关论文
共 50 条
  • [1] Machine learning applications in genome-scale metabolic modeling
    Kim, Yeji
    Kim, Gi Bae
    Lee, Sang Yup
    CURRENT OPINION IN SYSTEMS BIOLOGY, 2021, 25 : 42 - 49
  • [2] Machine learning for the advancement of genome-scale metabolic modeling
    Kundu, Pritam
    Beura, Satyajit
    Mondal, Suman
    Das, Amit Kumar
    Ghosh, Amit
    BIOTECHNOLOGY ADVANCES, 2024, 74
  • [3] Genome-scale modeling for metabolic engineering
    Simeonidis, Evangelos
    Price, Nathan D.
    JOURNAL OF INDUSTRIAL MICROBIOLOGY & BIOTECHNOLOGY, 2015, 42 (03) : 327 - 338
  • [4] Improving genome-scale metabolic models of incomplete genomes with deep learning
    Boer, Meine D.
    Melkonian, Chrats
    Zafeiropoulos, Haris
    Haas, Andreas F.
    Garza, Daniel R.
    Dutilh, Bas E.
    ISCIENCE, 2024, 27 (12)
  • [5] Prediction of gene essentiality using machine learning and genome-scale metabolic models
    Freischem, Lilli J.
    Barahona, Mauricio
    Oyarzun, Diego A.
    IFAC PAPERSONLINE, 2022, 55 (23): : 13 - 18
  • [6] Integration of machine learning and genome-scale metabolic modeling identifies multi-omics biomarkers for radiation resistance
    Lewis, Joshua E.
    Kemp, Melissa L.
    NATURE COMMUNICATIONS, 2021, 12 (01)
  • [7] Integration of machine learning and genome-scale metabolic modeling identifies multi-omics biomarkers for radiation resistance
    Joshua E. Lewis
    Melissa L. Kemp
    Nature Communications, 12
  • [8] Genome-scale metabolic modeling of liver metabolic reprogramming in alcoholic hepatitis
    Manchel, A.
    Mahadevan, R.
    Bataller, R.
    Hoek, J. B.
    Vadigepalli, R.
    ALCOHOL-CLINICAL AND EXPERIMENTAL RESEARCH, 2023, 47 : 498 - 498
  • [9] Genome-scale metabolic networks
    Terzer, Marco
    Maynard, Nathaniel D.
    Covert, Markus W.
    Stelling, Joerg
    WILEY INTERDISCIPLINARY REVIEWS-SYSTEMS BIOLOGY AND MEDICINE, 2009, 1 (03) : 285 - 297
  • [10] Machine learning methods for predicting essential metabolic genes from Plasmodium falciparum genome-scale metabolic network
    Isewon, Itunuoluwa
    Binaansim, Stephen
    Adegoke, Faith
    Emmanuel, Jerry
    Oyelade, Jelili
    PLOS ONE, 2024, 19 (12):