Mitochondrial pathways in sarcopenia of aging and disuse muscle atrophy

Riccardo Calvani(National Research Council), Bertrand Joseph(University of Florida), Peter J. Adhihetty(University of Florida), Alfredo Miccheli(Sapienza University of Rome), Maurizio Bossola(Università Cattolica del Sacro Cuore), Christiaan Leeuwenburgh(University of Florida), Roberto Bernabei(Università Cattolica del Sacro Cuore), Emanuele Marzetti(Università Cattolica del Sacro Cuore)
Biological Chemistry
November 15, 2012
Cited by 318Open Access
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Abstract

Muscle loss during aging and disuse is a highly prevalent and disabling condition, but knowledge about cellular pathways mediating muscle atrophy is still limited. Given the postmitotic nature of skeletal myocytes, the maintenance of cellular homeostasis relies on the efficiency of cellular quality control mechanisms. In this scenario, alterations in mitochondrial function are considered a major factor underlying sarcopenia and muscle atrophy. Damaged mitochondria are not only less bioenergetically efficient, but also generate increased amounts of reactive oxygen species, interfere with cellular quality control mechanisms, and display a greater propensity to trigger apoptosis. Thus, mitochondria stand at the crossroad of signaling pathways that regulate skeletal myocyte function and viability. Studies on these pathways have sometimes provided unexpected and counterintuitive results, which suggests that they are organized into a complex, heterarchical network that is currently insufficiently understood. Untangling the complexity of such a network will likely provide clinicians with novel and highly effective therapeutics to counter the muscle loss associated with aging and disuse. In this review, we summarize the current knowledge on the mechanisms whereby mitochondrial dysfunction intervenes in the pathogenesis of sarcopenia and disuse atrophy, and highlight the prospect of targeting specific processes to treat these conditions.


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