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首页> 外文期刊>Journal of Biomechanics >Mathematical models of human paralyzed muscle after long-term training.
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Mathematical models of human paralyzed muscle after long-term training.

机译:长期训练后人体瘫痪肌肉的数学模型。

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Spinal cord injury (SCI) results in major musculoskeletal adaptations, including muscle atrophy, faster contractile properties, increased fatigability, and bone loss. The use of functional electrical stimulation (FES) provides a method to prevent paralyzed muscle adaptations in order to sustain force-generating capacity. Mathematical muscle models may be able to predict optimal activation strategies during FES, however muscle properties further adapt with long-term training. The purpose of this study was to compare the accuracy of three muscle models, one linear and two nonlinear, for predicting paralyzed soleus muscle force after exposure to long-term FES training. Further, we contrasted the findings between the trained and untrained limbs. The three models' parameters were best fit to a single force train in the trained soleus muscle (N=4). Nine additional force trains (test trains) were predicted for each subject using the developed models. Model errors between predicted and experimental force trains were determined, including specific muscle force properties. The mean overall error was greatest for the linear model (15.8%) and least for the nonlinear Hill Huxley type model (7.8%). No significant error differences were observed between the trained versus untrained limbs, although model parameter values were significantly altered with training. This study confirmed that nonlinear models most accurately predict both trained and untrained paralyzed muscle force properties. Moreover, the optimized model parameter values were responsive to the relative physiological state of the paralyzed muscle (trained versus untrained). These findings are relevant for the design and control of neuro-prosthetic devices for those with SCI.
机译:脊髓损伤(SCI)导致主要的肌肉骨骼适应,包括肌肉萎缩,更快的收缩特性,增加的易疲劳性和骨质流失。功能性电刺激(FES)的使用提供了一种方法,可以防止瘫痪的肌肉适应,以维持产生力的能力。数学上的肌肉模型可能能够预测FES期间的最佳激活策略,但是肌肉特性会进一步适应长期训练。这项研究的目的是比较三种肌肉模型(一种线性和两种非线性)在长期FES训练后预测比目鱼肌力量麻痹的准确性。此外,我们对比了受过训练的肢体和未经训练的肢体的发现。这三个模型的参数最适合于训练过的比目鱼肌中的单个力量训练(N = 4)。使用开发的模型,为每个受试者预测了九个额外的力量训练(测试训练)。确定了预测的和实验的力量训练之间的模型误差,包括特定的肌肉力量特性。线性模型的平均总误差最大(15.8%),非线性Hill Huxley型模型的平均总误差最小(7.8%)。尽管模型参数值随训练而显着改变,但在训练与未训练的肢体之间未观察到明显的误差差异。这项研究证实了非线性模型最准确地预测了受训练和未受训练的瘫痪肌肉力量特性。而且,优化的模型参数值响应于瘫痪肌肉的相对生理状态(训练与未训练)。这些发现与患有SCI的人的神经修复装置的设计和控制有关。

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