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The Corepressor NCoR1 Antagonizes PGC-1α and Estrogen-Related Receptor α in the Regulation of Skeletal Muscle Function and Oxidative Metabolism

The Corepressor NCoR1 Antagonizes PGC-1α and Estrogen-Related Receptor α in the Regulation of Skeletal Muscle Function and Oxidative Metabolism
Skeletal muscle exhibits a high plasticity and accordingly can quickly adapt to different physiological and pathological stimuli by changing its phenotype largely through diverse epigenetic mechanisms. The nuclear receptor corepressor 1 (NCoR1) has the ability to mediate gene repression; however, its role in regulating biological programs in skeletal muscle is still poorly understood. We therefore studied the mechanistic and functional aspects of NCoR1 function in this tissue. NCoR1 muscle-specific knockout mice exhibited a 7.2% higher peak oxygen consumption (VO(2peak)), a 11% reduction in maximal isometric force, and increased ex vivo fatigue resistance during maximal stimulation. Interestingly, global gene expression analysis revealed a high overlap between the effects of NCoR1 deletion and peroxisome proliferator-activated receptor gamma (PPARγ) coactivator 1α (PGC-1α) overexpression on oxidative metabolism in muscle. Importantly, PPARβ/δ and estrogen-related receptor α (ERRα) were identified as common targets of NCoR1 and PGC-1α with opposing effects on the transcriptional activity of these nuclear receptors. In fact, the repressive effect of NCoR1 on oxidative phosphorylation gene expression specifically antagonizes PGC-1α-mediated coactivation of ERRα. We therefore delineated the molecular mechanism by which a transcriptional network controlled by corepressor and coactivator proteins determines the metabolic properties of skeletal muscle, thus representing a potential therapeutic target for metabolic diseases.
- École Polytechnique Fédérale de Lausanne EPFL Switzerland
- University of Basel Switzerland
- Novartis (Switzerland) Switzerland
- University of Ferrara Italy
- University Hospital of Basel Switzerland
Male, Mice, Knockout, ERRalpha Estrogen-Related Receptor, Mice, Transgenic, Models, Biological, Peroxisome Proliferator-Activated Receptor Gamma Coactivator 1-alpha, Oxidative Phosphorylation, Mice, Oxygen Consumption, Receptors, Estrogen, PGC-1alfa; Muscle; nuclear receptor, Trans-Activators, Animals, Nuclear Receptor Co-Repressor 1, PPAR delta, RNA, Messenger, Muscle, Skeletal, PPAR-beta, Muscle Contraction, Transcription Factors
Male, Mice, Knockout, ERRalpha Estrogen-Related Receptor, Mice, Transgenic, Models, Biological, Peroxisome Proliferator-Activated Receptor Gamma Coactivator 1-alpha, Oxidative Phosphorylation, Mice, Oxygen Consumption, Receptors, Estrogen, PGC-1alfa; Muscle; nuclear receptor, Trans-Activators, Animals, Nuclear Receptor Co-Repressor 1, PPAR delta, RNA, Messenger, Muscle, Skeletal, PPAR-beta, Muscle Contraction, Transcription Factors
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