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Prediction of antagonistic muscle forces using inverse dynamic optimization during flexion/extension of the knee

机译:在膝关节屈伸过程中使用逆动态优化预测对抗性肌肉力量

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This paper examined the feasibility of using different optimization criteria in inverse dynamic optimization to predict antagonistic muscle forces and joint reaction forces during isokinetic flexion/extension and isometric extension exercises ofthe knee. Both quadriceps and hamstrings muscle groups were included in this study. The knee joint motion included flexion/extension, varus/valgus, and internal/external rotations. Four linear, nonlinear, and physiological optimization criteria wereutilized in the optimization procedure. All optimization criteria adopted in this paper were shown to be able to predict antagonistic muscle contraction during flexion and extension of the knee. The predicted muscle forces were compared in temporalpatterns with EMG activities (averaged data measured from five subjects). Joint reaction forces were predicted to be similar using all optimization criteria. In comparison with previous studies, these results suggested that the kinematic informationinvolved in the inverse dynamic optimization plays an important role in prediction of the recruitment of antagonistic muscles rather than the selection of a particular optimization criterion. Therefore, it might be concluded that a properly formulatedinverse dynamic optimization procedure should describe the knee joint rotation in three orthogonal planes.
机译:本文研究了在逆向动态优化中使用不同的优化标准来预测膝部等速屈伸运动和等距伸展运动中的拮抗肌肉力和关节反作用力的可行性。这项研究包括股四头肌和绳肌。膝关节运动包括屈曲/伸展,内翻/外翻以及内/外旋转。在优化过程中使用了四个线性,非线性和生理优化标准。结果表明,本文采用的所有优化标准均能够预测膝盖屈伸过程中的拮抗性肌肉收缩情况。将预测的肌肉力量与EMG活动的时间模式进行比较(从五名受试者中测得的平均数据)。使用所有优化标准,预计联合反作用力是相似的。与先前的研究相比,这些结果表明,涉及逆动态优化的运动学信息在预测拮抗性肌肉的募集中起着重要作用,而不是选择特定的优化标准。因此,可以得出结论,适当制定的逆动态优化程序应描述三个正交平面中的膝关节旋转。

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