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Systems Biology: A Multi-Omics Integration Approach to Metabolism and the Microbiome

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Abstract
The complex and dynamic nature of human physiology, as exemplified by metabolism, has often been overlooked due to the lack of quantitative and systems approaches. Recently, systems biology approaches have pushed the boundaries of our current understanding of complex biochemical, physiological, and environmental interactions, enabling proactive medicine in the near future. From this perspective, we review how state-of-the-art computational modelling of human metabolism, i.e., genome-scale metabolic modelling, could be used to identify the metabolic footprints of diseases, to guide the design of personalized treatments, and to estimate the microbiome contributions to host metabolism. These state-of-the-art models can serve as a scaffold for integrating multi-omics data, thereby enabling the identification of signatures of dysregulated metabolism by systems approaches. For example, increased plasma mannose levels due to decreased uptake in the liver have been identified as a potential biomarker of early insulin resistance by multi-omics approaches. In addition, we also review the emerging axis of human physiology and the human microbiome, discussing its contribution to host metabolism and quantitative approaches to study its variations in individuals.
Author(s)
Son, Jang WonShoaie, SaeedLee, Sunjae
Issued Date
2020-09
Type
Article
DOI
10.3803/enm.2020.303
URI
https://scholar.gist.ac.kr/handle/local/8760
Publisher
대한내분비학회
Citation
Endocrinology and Metabolism, v.35, no.3, pp.507 - 514
ISSN
2093-596X
Appears in Collections:
Department of Life Sciences > 1. Journal Articles
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