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Estimation of Muscle Forces and Joint Moments Using a Forward-Inverse Dynamics Model

机译:使用正反动力学模型估算肌肉力量和关节力矩

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摘要

Purpose: This paper presents a forward dynamic neuromusculoskeletal model that can be used to estimate and predict joint moments and muscle forces. It uses EMG signals as inputs to the model, and joint moments predicted are verified through inverse dynamics. The aim of the model is to estimate or predict muscle forces about a joint, which can be used to estimate the corresponding joint compressive forces, and/or ligament forces in healthy and impaired subjects, based on the way they activate their muscles. Methods: The estimation of joint moments requires three steps. In the first step, muscle activation dynamics govern the transformation from the EMG signal to a measure of muscle activation-a time-varying parameter between 0 and 1. In the second step, muscle contraction dynamics characterize how muscle activations are transformed into muscle forces. The final step requires a model of the musculoskeletal geometry to transform muscle forces to joint moments. Each of these steps involves complex, nonlinear relationships. Results: An application is provided to demonstrate how this model can be used to study the forces in the healthy ankle during dynamometer trials and during gait. The model-predicted estimates of joint moment were found to match experimentally determined values closely. Conclusion: Neuromusculoskeletal models that use EMG as inputs can be employed to accurately estimate joint moments. The muscle forces predicted from these models can be used to better understand tissue loading in joints, and to provide in vivo estimates of tensile ligament forces and compressive cartilage loads during dynamic tasks. This tool has great potential for aiding in the study of injury mechanisms in sports.
机译:目的:本文提出了一种正向动态神经肌肉骨骼模型,可用于估计和预测关节力矩和肌肉力量。它使用EMG信号作为模型的输入,并通过逆动力学验证了预测的联合力矩。该模型的目的是估计或预测围绕关节的肌肉力,基于其激活肌肉的方式,可用于估计健康和受损受试者中相应的关节压缩力和/或韧带力。方法:估计关节力矩需要三个步骤。第一步,肌肉激活动力学控制从EMG信号到肌肉激活量度的转换,该参数在0到1之间变化。在第二步中,肌肉收缩动力学表征了肌肉激活如何转化为肌肉力。最后一步需要一个肌肉骨骼几何模型来将肌肉力转换为关节力矩。每个步骤都涉及复杂的非线性关系。结果:提供了一个应用程序来演示如何在测力计试验和步态试验中使用该模型研究健康踝关节中的力。模型预测的关节力矩估计值与实验确定的值非常匹配。结论:使用肌电图作为输入的神经肌肉骨骼模型可用于准确估计关节力矩。从这些模型预测的肌肉力可用于更好地了解关节中的组织负荷,并在动态任务期间提供体内体内拉伸韧带力和压缩软骨负荷的估计。该工具在研究运动损伤机理方面具有巨大的潜力。

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