Published January 1, 2024 | Version v1
Journal article Open

Genome-scale metabolic models in translational medicine: the current status and potential of machine learning in improving the effectiveness of the models

  • 1. Marmara Univ, Fac Engn, Dept Bioengn, Istanbul, Turkiye

Description

The genome-scale metabolic model (GEM) has emerged as one of the leading modeling approaches for systems-level metabolic studies and has been widely explored for a broad range of organisms and applications. Owing to the development of genome sequencing technologies and available biochemical data, it is possible to reconstruct GEMs for model and non-model microorganisms as well as for multicellular organisms such as humans and animal models. GEMs will evolve in parallel with the availability of biological data, new mathematical modeling techniques and the development of automated GEM reconstruction tools. The use of high-quality, context-specific GEMs, a subset of the original GEM in which inactive reactions are removed while maintaining metabolic functions in the extracted model, for model organisms along with machine learning (ML) techniques could increase their applications and effectiveness in translational research in the near future. Here, we briefly review the current state of GEMs, discuss the potential contributions of ML approaches for more efficient and frequent application of these models in translational research, and explore the extension of GEMs to integrative cellular models.

The use of genome scale metabolic models supported by machine learning from bench side to bed side.

Files

bib-e332fd48-096c-40ac-8604-413662fcddb9.txt

Files (273 Bytes)

Name Size Download all
md5:d3bf588eb269b9b0f30711f1cd5a6609
273 Bytes Preview Download