Metabolomic and proteomic applications to exercise biomedicine
Author:
Wilkinson Daniel J.1, Crossland Hannah1, Atherton Philip J.1ORCID
Affiliation:
1. Centre of Metabolism, Ageing & Physiology (CoMAP), Medical Research Council/Versus Arthritis UK Centre of Excellence for Musculoskeletal Ageing Research (CMAR), School of Medicine , University of Nottingham, Royal Derby Hospital , Derby , UK
Abstract
Abstract
Objectives
‘OMICs encapsulates study of scaled data acquisition, at the levels of DNA, RNA, protein, and metabolite species. The broad objectives of OMICs in biomedical exercise research are multifarious, but commonly relate to biomarker development and understanding features of exercise adaptation in health, ageing and metabolic diseases.
Methods
This field is one of exponential technical (i.e., depth of feature coverage) and scientific (i.e., in health, metabolic conditions and ageing, multi-OMICs) progress adopting targeted and untargeted approaches.
Results
Key findings in exercise biomedicine have led to the identification of OMIC features linking to heritability or adaptive responses to exercise e.g., the forging of GWAS/proteome/metabolome links to cardiovascular fitness and metabolic health adaptations. The recent addition of stable isotope tracing to proteomics (‘dynamic proteomics’) and metabolomics (‘fluxomics’) represents the next phase of state-of-the-art in ‘OMICS.
Conclusions
These methods overcome limitations associated with point-in-time ‘OMICs and can be achieved using substrate-specific tracers or deuterium oxide (D2O), depending on the question; these methods could help identify how individual protein turnover and metabolite flux may explain exercise responses. We contend application of these methods will shed new light in translational exercise biomedicine.
Publisher
Walter de Gruyter GmbH
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