有氧运动
代谢组学
医学
攀登
碳水化合物代谢
生物
胰岛素抵抗
内分泌学
生物化学
内科学
生物信息学
胰岛素
生态学
作者
Fei Shen,Yu Zhao,Wubin Ding,Kailin Liu,Xiangyu Ren,Qiang Zhang,Jian Yu,Yepeng Hu,Hui Zuo,Mingwei Guo,Ling Jin,Mingkai Gong,Wenhao Wu,Xuejiang Gu,Lingyan Xu,Feng‐Lei Yang,Jian Lü
出处
期刊:Life Sciences
[Elsevier]
日期:2020-11-19
卷期号:265: 118786-118786
被引量:3
标识
DOI:10.1016/j.lfs.2020.118786
摘要
Abstract Aims To assess the effects of three specific exercise training modes, aerobic exercise (A), resistance training (R) and autonomous climbing (AC), aimed at proposing a cross-training method, on improving the physical, molecular and metabolic characteristics of mice without many side effects. Materials and methods Seven-week-old male mice were randomly divided into four groups: control (C), aerobic exercise (A), resistance training (R), and autonomous climbing (AC) groups. Physical changes in mice were tracked and analysed to explore the similarities and differences of these three exercise modes. Histochemistry, quantitative real-time PCR (RT-PCR), western blot (WB) and metabolomics analysis were performed to identify the underlying relationships among the three training modes. Key findings Mice in the AC group showed better body weight control, glucose and energy homeostasis. Molecular markers of myogenesis, hypertrophy, antidegradation and mitochondrial function were highly expressed in the muscle of mice after autonomous climbing. The serum metabolomics landscape and enriched pathway comparison indicated that the aerobic oxidation pathway (pentose phosphate pathway, galactose metabolism and fatty acid degradation) and amino acid metabolism pathway (tyrosine, arginine and proline metabolism) were significantly enriched in group AC, suggesting an increased muscle mitochondrial function and protein balance ability of mice after autonomous climbing. Significance We propose a new exercise mode, autonomous climbing, as a convenient but effective training method that combines the beneficial effects of aerobic exercise and resistance training.
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