Time trajectories in the transcriptomic response to exercise - a meta-analysis.
David AmarMaléne E LindholmJessica NorrbomMatthew T WheelerManuel A RivasEuan A AshleyPublished in: Nature communications (2021)
Exercise training prevents multiple diseases, yet the molecular mechanisms that drive exercise adaptation are incompletely understood. To address this, we create a computational framework comprising data from skeletal muscle or blood from 43 studies, including 739 individuals before and after exercise or training. Using linear mixed effects meta-regression, we detect specific time patterns and regulatory modulators of the exercise response. Acute and long-term responses are transcriptionally distinct and we identify SMAD3 as a central regulator of the exercise response. Exercise induces a more pronounced inflammatory response in skeletal muscle of older individuals and our models reveal multiple sex-associated responses. We validate seven of our top genes in a separate human cohort. In this work, we provide a powerful resource ( www.extrameta.org ) that expands the transcriptional landscape of exercise adaptation by extending previously known responses and their regulatory networks, and identifying novel modality-, time-, age-, and sex-associated changes.
Keyphrases
- high intensity
- skeletal muscle
- physical activity
- resistance training
- inflammatory response
- transcription factor
- depressive symptoms
- endothelial cells
- gene expression
- small molecule
- type diabetes
- epithelial mesenchymal transition
- intensive care unit
- dna methylation
- oxidative stress
- metabolic syndrome
- adipose tissue
- signaling pathway
- body composition
- electronic health record
- machine learning
- mechanical ventilation