School of Mechanical and Marine Engineering, Beibu Gulf University, Qinzhou 535011, China; Graduate School of Engineering, Nagasaki Institute of Applied Science, 536 Aba-machi, Nagasaki 851-0193, Japan.
Graduate School of Engineering, Nagasaki Institute of Applied Science, 536 Aba-machi, Nagasaki 851-0193, Japan.
Clin Biomech (Bristol). 2022 May;95:105660. doi: 10.1016/j.clinbiomech.2022.105660. Epub 2022 May 6.
Patients suffering from lower limb dyskinesia, especially in early stages of rehabilitation, have weak residual muscle strength in affected limb and require passive training by the lower limb rehabilitation robot. Anatomy indicates that the biceps femoris short head muscle has a strong influence on knee motion at the swing phase of walking. We sought to explore how it would influence on gait cycle in optimization framework. However, the training trajectory of conventional rehabilitation robots performing passive training usually follows gait planning based on general human gait data, which cannot simultaneously ensure both effective rehabilitation of affected limbs with varying severity pathological gait and comfort of the wearer within a safe motion trajectory.
To elucidate the effects of weakness and contracture, we systematically introduced isolated defects into the musculoskeletal model and generated walking simulations to predict the gait adaptation due to these defects. An impedance control model of the rehabilitation robot is developed. Knee joint parameters optimized by predictive forward dynamics simulation are adopted as the expected values for the robot controller to achieve customized adjustment of the robot motion trajectory.
Severe muscle contracture leads to severe knee flexion; severe muscle weakness induces a significant posterior tilt of the upper trunk, which hinders walking speed.
Our simulation results attempt to reveal pathological gait features, which may help to reproduce the simulation of pathological gait. Furthermore, the robot simulation results show that the robot system achieves a speedy tracking by setting a larger stiffness value. The model also allows the implementation of different levels of damping or elasticity effects.
The method proposed in this paper is an initial basic study that did not reach clinical trials and therefore retains retrospectively registered.
下肢运动障碍的患者,尤其是在康复的早期阶段,患侧肢体残留肌肉力量较弱,需要下肢康复机器人进行被动训练。解剖学表明,股二头肌短头对行走摆动相的膝关节运动有很强的影响。我们试图在优化框架中探讨其对步态周期的影响。然而,传统的康复机器人进行被动训练的训练轨迹通常遵循基于一般人体步态数据的步态规划,这既不能同时确保对不同严重程度病理步态的患侧进行有效的康复,又不能确保佩戴者在安全的运动轨迹内感到舒适。
为了阐明软弱和挛缩的影响,我们系统地将孤立的缺陷引入骨骼肌肉模型中,并进行行走模拟,以预测由于这些缺陷导致的步态适应。开发了康复机器人的阻抗控制模型。通过预测性正向动力学模拟优化的膝关节参数被采用为机器人控制器的预期值,以实现机器人运动轨迹的定制调整。
严重的肌肉挛缩导致严重的膝关节屈曲;严重的肌肉无力导致上躯干明显后倾,这阻碍了行走速度。
我们的模拟结果试图揭示病理步态特征,这可能有助于再现病理步态的模拟。此外,机器人模拟结果表明,通过设置较大的刚度值,机器人系统可以实现快速跟踪。该模型还允许实现不同水平的阻尼或弹性效果。
本文提出的方法是一项初步的基础研究,尚未达到临床试验水平,因此保留了回顾性注册。