竖脊肌
医学
腰椎
肌肉张力
肌肉僵硬
年轻人
物理疗法
老年人
语调(文学)
物理医学与康复
内科学
刚度
解剖
老年学
文学类
艺术
结构工程
工程类
作者
Zugui Wu,Yi Wang,Zixuan Ye,Yingxing Guan,Xiangling Ye,Zehua Chen,Congcong Li,Guoqian Chen,Yue Zhu,Jianping Du,Guocai Chen,Wengang Liu,Xuemeng Xu,Wengang Liu,Xuemeng Xu
标识
DOI:10.3389/fphys.2021.718068
摘要
Background: The influences of age and sex on properties of lumbar erector spinae have not been previously studied. Changes in the performance of lumbar erector spinae properties associated with age represent a valuable indicator of risk for lower-back-related disease. Objective: To investigate the lumbar erector spinae properties with regard to age and sex to provide a reference dataset. Methods: We measured muscle tone and stiffness of the lumbar erector spinae (at the L3–4 level) in healthy men and women (50 young people, aged 20–30 years; 50 middle-aged people, aged 40–50 years; and 50 elderly people, aged 65–75 years) using a MyotonPRO device. Results: In general, there are significant differences in muscle tone and stiffness among young, middle-aged, and elderly participants, and there were significant differences in muscle tone and stiffness between men and women, and there was no interaction between age and sex. The muscle tone and stiffness of the elderly participants were significantly higher than those of the middle-aged and young participants ( P < 0.01), and the muscle tone and stiffness of the middle-aged participants were significantly higher than those of the young participants ( P < 0.01). In addition, the muscle tone and stiffness of men participants were significantly higher than that of women participants ( P < 0.01). Conclusion: Our results indicate that muscle tone and stiffness of the lumbar erector spinae increase with age. The muscle tone and stiffness of the lumbar erector spinae in men are significantly higher than in women. The present study highlights the importance of considering age and sex differences when assessing muscle characteristics of healthy people or patients.
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