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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Model-Based Estimation of Individual Muscle Force Based on Measurements of Muscle Activity in Forearm Muscles During Isometric Tasks
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Model-Based Estimation of Individual Muscle Force Based on Measurements of Muscle Activity in Forearm Muscles During Isometric Tasks

机译:基于模型的个体肌肉力的估算基于等距任务在前臂肌肉中肌肉活动的测量

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摘要

Objective: Several forward dynamics estimation approaches have been proposed to estimate individual muscle force. However, characterization of the estimation error that arises when measurements are available only from a subset of the muscles involved in the movement under analysis, as is the case of the forearm muscles, has been limited. Our objectives were: first, to quantify the accuracy of forward-dynamics muscle force estimators for forearm muscles; and second, to develop a muscle force estimator that is accurate even when measurements are available only from a subset of muscles acting on a given joint or segment. Methods: We developed a neuromusculoskeletal (NMSK) estimator that integrates forward dynamics estimation with a neural model of muscle cocontraction to estimate individual muscle force during isometric contractions, suitable to operate when measurements are not available for all muscles. We developed a computational framework to assess the effect of physiological variability in muscle cocontraction, cross-talk, and measurement error on the estimator accuracy using a sensitivity analysis. We thus compared the performance of our estimator with that of a standard estimator that neglects the contribution of unmeasured muscles. Results: The NMSK estimator reduces the estimation error by 25% in average noise conditions. Moreover, the NMSK estimator is robust against physiological variability in muscle cocontraction and outperforms the standard estimator even when the validity of the neural model is compromised. Conclusion and Significance: In isometric tasks, the NMSK estimator reduces muscle force estimation error compared to a standard estimator, and may enable future applications involving estimation of forearm muscle force during coordinated movements.
机译:目的:提出了几种正向动态估算方法来估计个体肌肉力量。然而,当仅来自参与在分析的运动中涉及的肌肉的子集时,所产生的估计误差的表征在于前臂肌肉的情况,因此是有限的。我们的目标是:首先,为了量化前臂肌肉的前向动力学肌肉估算器的准确性;其次,开发肌肉力估计,即使仅在用于在给定关节或段的肌肉的子集中可用的测量时,也可以准确。方法:我们开发了一种神经肌肉骨骼(NMSK)估计器,它与肌肉椰子的神经模型集成了向前动态估计,以估计在等距收缩期间的个体肌肉力,适合在测量对于所有肌肉不适用于测量时进行操作。我们开发了一种计算框架,以评估使用灵敏度分析的肌肉椰子术中的生理变异性,串扰和测量误差的影响。因此,我们将估算者的表现与忽视未测量肌肉贡献的标准估算者进行了比较。结果:NMSK估计器在平均噪声条件下将估计误差降低25%。此外,NMSK估计器对于肌肉茧中的生理变异性,并且即使在神经模型的有效性受到损害的情况下,即使损害了标准估计器,也是雄厚的。结论和意义:在等距任务中,与标准估计器相比,NMSK估计器减少了肌肉估计误差,并且可以使涉及在协调运动期间估计前臂肌肉力的未来应用。

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