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Freely chosen stride frequencies during walking and running are not correlated with freely chosen pedalling frequency and are insensitive to strength training

机译:在步行和跑步过程中自由选择的步幅频率与自由选择的踩踏频率无关,并且对力量训练不敏感

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Despite biomechanical differences between walking, running, and cycling, these types of movement are supposedly generated by shared neural networks. According to this hypothesis, we investigated relationships between movement frequencies in these tasks as well as effects of strength training on locomotion behaviour. The movement frequencies during walking, running, and cycling were 58.1 +/- 2.6 strides min(-1), 81.3 +/- 4.4 strides min(-1), and 77.2 +/- 11.5 revolutions min(-1), respectively (n = 27). Stride frequencies in walking and running correlated positively (r = 0.72, p < 0.001) while no significant correlations were found between stride frequencies during walking and running, respectively, and pedalling frequency (r = 0.16, p = 0.219 and r = 0.04, p = 0.424). Potential changes in the freely chosen stride frequencies and stride phase characteristics were also investigated during walking and running through 4 weeks of (i) hip extension strength training (n = 9), (ii) hip flexion strength training (n = 9), and (iii) no intervention (n = 9). Results showed that stride characteristics were unaffected by strength training. That is in contrast to previous observations of decreased pedalling frequency following strength training. In total, these results are proposed to indicate that walking and running movements are robustly generated due to an evolutionary consolidation of the interaction between the musculoskeletal system and neural networks. Further, based on the present results, and the fact that cycling is a postnatally developed task that likely results in a different pattern of descending and afferent input to rhythm generating neural networks than walking and running, we propose pedalling to be generated by neural networks mainly consolidated for locomotion. (C) 2015 Elsevier B.V. All rights reserved.
机译:尽管步行,跑步和骑自行车之间存在生物力学差异,但这些运动类型据说是由共享神经网络生成的。根据该假设,我们调查了这些任务中的运动频率之间的关系以及力量训练对运动行为的影响。步行,跑步和骑自行车时的运动频率分别为58.1 +/- 2.6步min(-1),81.3 +/- 4.4步min(-1)和77.2 +/- 11.5转min(-1)( n = 27)。步行和跑步的步幅频率呈正相关(r = 0.72,p <0.001),而步行和跑步期间的步幅频率与踏板频率之间无显着相关性(r = 0.16,p = 0.219和r = 0.04,p = 0.424)。在(i)髋关节伸展力量训练(n = 9),(ii)髋屈肌力量训练(n = 9)和4周的步行和跑步过程中,还研究了自由选择的步幅频率和步幅相位特征的潜在变化(iii)不干预(n = 9)。结果表明,步幅特征不受力量训练的影响。这与先前观察到的力量训练后踏板频率降低的观察结果相反。总的来说,提出这些结果表明,由于肌肉骨骼系统与神经网络之间相互作用的进化整合,健壮地产生了步行和跑步运动。此外,根据目前的结果以及自行车是一项出生后发展的任务这一事实,与步行和跑步相比,自行车可能会导致产生节奏的神经网络的下降和传入输入模式有所不同,因此我们建议将踏板主要由神经网络生成为运动而合并。 (C)2015 Elsevier B.V.保留所有权利。

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