Erdemir Ahmet, McLean Scott, Herzog Walter, van den Bogert Antonie J
Department of Biomedical Engineering (ND-20), The Cleveland Clinic Foundation, 9500 Euclid Avenue, Cleveland, OH 44195, USA.
Clin Biomech (Bristol). 2007 Feb;22(2):131-54. doi: 10.1016/j.clinbiomech.2006.09.005. Epub 2006 Oct 27.
Estimation of individual muscle forces during human movement can provide insight into neural control and tissue loading and can thus contribute to improved diagnosis and management of both neurological and orthopaedic conditions. Direct measurement of muscle forces is generally not feasible in a clinical setting, and non-invasive methods based on musculoskeletal modeling should therefore be considered. The current state of the art in clinical movement analysis is that resultant joint torques can be reliably estimated from motion data and external forces (inverse dynamic analysis). Static optimization methods to transform joint torques into estimates of individual muscle forces using musculoskeletal models, have been known for several decades. To date however, none of these methods have been successfully translated into clinical practice. The main obstacles are the lack of studies reporting successful validation of muscle force estimates, and the lack of user-friendly and efficient computer software. Recent advances in forward dynamics methods have opened up new opportunities. Forward dynamic optimization can be performed such that solutions are less dependent on measured kinematics and ground reaction forces, and are consistent with additional knowledge, such as the force-length-velocity-activation relationships of the muscles, and with observed electromyography signals during movement. We conclude that clinical applications of current research should be encouraged, supported by further development of computational tools and research into new algorithms for muscle force estimation and their validation.
估计人体运动过程中各个肌肉的力量,有助于深入了解神经控制和组织负荷情况,从而有助于改善神经科和骨科疾病的诊断与治疗。在临床环境中,直接测量肌肉力量通常不可行,因此应考虑基于肌肉骨骼建模的非侵入性方法。临床运动分析的当前技术水平是,可以根据运动数据和外力可靠地估计合成关节扭矩(逆动力学分析)。使用肌肉骨骼模型将关节扭矩转换为各个肌肉力量估计值的静态优化方法,已经存在了几十年。然而,迄今为止,这些方法均未成功应用于临床实践。主要障碍在于,缺乏报告肌肉力量估计成功验证的研究,以及缺乏用户友好且高效的计算机软件。正向动力学方法的最新进展带来了新的机遇。可以进行正向动态优化,使解决方案较少依赖于测量的运动学和地面反作用力,并且与其他知识(例如肌肉的力-长度-速度-激活关系)以及运动过程中观察到的肌电图信号一致。我们得出结论,应鼓励当前研究的临床应用,并通过进一步开发计算工具以及研究肌肉力量估计新算法及其验证来提供支持。