Schmoll Martin, Le Guillou Ronan, Fattal Charles, Coste Christine Azevedo
INRIA-Université de Montpellier, Montpellier, France.
Rehabilitation Center Bouffard Vercelli, USSAP Perpignan, Perpignan, France.
J Neuroeng Rehabil. 2022 Apr 14;19(1):39. doi: 10.1186/s12984-022-01018-2.
FES-Cycling is an exciting recreational activity, which allows certain individuals after spinal cord injury or stroke to exercise their paralyzed muscles. The key for a successful application is to activate the right muscles at the right time.
While a stimulation pattern is usually determined empirically, we propose an approach using the torque feedback provided by a commercially available crank power-meter installed on a standard trike modified for FES-Cycling. By analysing the difference between active (with stimulation) and passive (without stimulation) torques along a full pedalling cycle, it is possible to differentiate between contributing and resisting phases for a particular muscle group. In this article we present an algorithm for the detection of optimal stimulation intervals and demonstrate its functionality, bilaterally for the quadriceps and hamstring muscles, in one subject with complete SCI on a home trainer. Stimulation patterns were automatically determined for two sensor input modalities: the crank-angle and a normalized thigh-angle (i.e. cycling phase, measured via inertial measurement units). In contrast to previous studies detecting automatic stimulation intervals on motorised ergo-cycles, our approach does not rely on a constant angular velocity provided by a motor, thus being applicable to the domain of mobile FES-Cycling.
The algorithm was successfully able to identify stimulation intervals, individually for the subject's left and right quadriceps and hamstring muscles. Smooth cycling was achieved without further adaptation, for both input signals (i.e. crank-angle and normalized thigh-angle).
The automatic determination of stimulation patterns, on basis of the positive net-torque generated during electrical stimulation, can help to reduce the duration of the initial fitting phase and to improve the quality of pedalling during a FES-Cycling session. In contrast to previous works, the presented algorithm does not rely on a constant angular velocity and thus can be effectively implemented into mobile FES-Cycling systems. As each muscle or muscle group is assessed individually, our algorithm can be used to evaluate the efficiency of novel electrode configurations and thus could promote increased performances during FES-Cycling.
功能性电刺激骑行(FES-Cycling)是一项令人兴奋的娱乐活动,它能让脊髓损伤或中风后的某些个体锻炼其瘫痪的肌肉。成功应用的关键在于在正确的时间激活正确的肌肉。
虽然刺激模式通常是凭经验确定的,但我们提出了一种方法,利用安装在为FES-Cycling改装的标准三轮车上的商用曲柄功率计提供的扭矩反馈。通过分析整个蹬踏周期中主动(有刺激)和被动(无刺激)扭矩之间的差异,可以区分特定肌肉群的助力阶段和阻力阶段。在本文中,我们提出了一种检测最佳刺激间隔的算法,并在一名在家用训练器上进行完全性脊髓损伤的受试者身上,双侧展示了该算法对股四头肌和腘绳肌的功能。针对两种传感器输入模式自动确定刺激模式:曲柄角度和归一化大腿角度(即骑行阶段,通过惯性测量单元测量)。与之前在电动测力计上检测自动刺激间隔的研究不同,我们的方法不依赖于电机提供的恒定角速度,因此适用于移动FES-Cycling领域。
该算法成功地分别为受试者的左右股四头肌和腘绳肌识别出了刺激间隔。对于两种输入信号(即曲柄角度和归一化大腿角度),无需进一步调整即可实现平稳骑行。
基于电刺激期间产生的正净扭矩自动确定刺激模式,有助于减少初始拟合阶段的持续时间,并提高FES-Cycling训练期间的蹬踏质量。与之前的工作不同,本文提出的算法不依赖于恒定角速度,因此可以有效地应用于移动FES-Cycling系统。由于对每块肌肉或肌肉群进行单独评估,我们的算法可用于评估新型电极配置的效率,从而有助于提高FES-Cycling期间的表现。