학술논문

Genome-Scale Metabolic Modeling Enables In-Depth Understanding of Big Data
Document Type
article
Source
Metabolites. 12(1)
Subject
Networking and Information Technology R&D (NITRD)
Genetics
Generic health relevance
genome-scale metabolic models
big data
computational tools
phenotypes
flux balance analysis
machine learning
reconstruction
ME-models
Analytical Chemistry
Biochemistry and Cell Biology
Clinical Sciences
Language
Abstract
Genome-scale metabolic models (GEMs) enable the mathematical simulation of the metabolism of archaea, bacteria, and eukaryotic organisms. GEMs quantitatively define a relationship between genotype and phenotype by contextualizing different types of Big Data (e.g., genomics, metabolomics, and transcriptomics). In this review, we analyze the available Big Data useful for metabolic modeling and compile the available GEM reconstruction tools that integrate Big Data. We also discuss recent applications in industry and research that include predicting phenotypes, elucidating metabolic pathways, producing industry-relevant chemicals, identifying drug targets, and generating knowledge to better understand host-associated diseases. In addition to the up-to-date review of GEMs currently available, we assessed a plethora of tools for developing new GEMs that include macromolecular expression and dynamic resolution. Finally, we provide a perspective in emerging areas, such as annotation, data managing, and machine learning, in which GEMs will play a key role in the further utilization of Big Data.