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Get Free AccessRegular endurance training improves muscle oxidative capacity and reduces the risk of age-related disorders. Understanding the molecular networks underlying this phenomenon is crucial. Here, by exploiting the power of computational modeling, we show that endurance training induces profound changes in gene regulatory networks linking signaling and selective control of translation to energy metabolism and tissue remodeling. We discovered that knockdown of the mTOR-independent factor Eif6, which we predicted to be a key regulator of this process, affects mitochondrial respiration efficiency, ROS production, and exercise performance. Our work demonstrates the validity of a data-driven approach to understanding muscle homeostasis.
Kim Clarke, Sara Ricciardi, Tim Pearson, Izwan Bharudin, Peter K. Davidsen, Michela Bonomo, Daniela Brina, Alessandra Scagliola, Deborah M. Simpson, Robert J. Beynon, Farhat L. Khanim, John Ankers, Mark A. Sarzynski, Sujoy Ghosh, Addolorata Pisconti, Jan Rozman, Martin Hrabé de Angelis, Christopher M. Bunce, Claire E. Stewart, Stuart Egginton, Mark X. Caddick, Malcolm J. Jackson, Claude Bouchard, Stefano Biffo, Francesco Falciani (2017). The Role of Eif6 in Skeletal Muscle Homeostasis Revealed by Endurance Training Co-expression Networks. Cell Reports, 21(6), pp. 1507-1520, DOI: 10.1016/j.celrep.2017.10.040.
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Type
Article
Year
2017
Authors
25
Datasets
0
Total Files
0
Language
English
Journal
Cell Reports
DOI
10.1016/j.celrep.2017.10.040
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