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运动中的肌肉变化:竞走的非线性分析。

Motor variability in sports: a non-linear analysis of race walking.

机构信息

Dipartimento di Industrial Design, Arti, Comunicazione e Moda, Politecnico di Milano, Milan, Italy.

出版信息

J Sports Sci. 2010 Oct;28(12):1327-36. doi: 10.1080/02640414.2010.507250.

Abstract

This aim of this study was to analyse the nature of movement variability and to assess whether entropy measures may represent a valuable synthetic index of neuromuscular organization. The regularity of kinematic/kinetic time series during race walking, the changes in the structure of intra-individual variability over the test session, and the influence of athletic skill in (inter)national rank athletes were investigated. Motion analysis techniques were used. Sample entropy (SampEn) was adopted to examine fluctuations in lower limb angles and ground reaction forces. The regularity of both original and surrogate time series was assessed and compared, by estimating SampEn, to verify the presence of non-linear features in movement variability. SampEn was statistically lower in the original data than in surrogates. In contrast, the regularity of time series did not change significantly throughout the subsequent intra-individual repetitions. Hip and ankle joint angles and vertical ground reaction force manifested increased entropy for skilled athletes. Results suggest that race walking variability was not only the product of random noise but also contained information about the inherent propriety of the neuro-musculo-skeletal system. Furthermore, they provide some indications about neuromuscular control of the lower limb joints during race walking gait, and about the differences between more and less skilled individuals.

摘要

本研究旨在分析运动变异性的本质,并评估熵测度是否可以作为神经肌肉组织的有价值的综合指标。本研究调查了竞走运动中的运动学/动力学时间序列的规律性、测试过程中个体内变异性结构的变化以及运动技能在(国际)国家级运动员中的影响。使用运动分析技术。采用样本熵(SampEn)来检测下肢角度和地面反力的波动。通过估计 SampEn 来评估原始和替代时间序列的规律性,并比较验证运动变异性中存在非线性特征。原始数据的 SampEn 明显低于替代数据。相比之下,在随后的个体内重复过程中,时间序列的规律性没有明显变化。髋部和踝关节角度以及垂直地面反力的信息熵对技术熟练的运动员有所增加。结果表明,竞走的变异性不仅是随机噪声的产物,还包含了神经肌肉骨骼系统固有特性的信息。此外,它们还提供了一些关于竞走步态中下肢关节的神经肌肉控制以及技术熟练程度较高和较低个体之间差异的信息。

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