Kobravi Hamid Reza, Ali Sara Hemmati, Vatandoust Masood, Marvi Rasoul
Department of Biomedical Engineering, Faculty of Electrical Engineering, Islamic Azad University of Mashhad, Mashhad, Iran.
Department of Surgery, Imam Hossein Hospital, Mashhad, Iran.
J Med Signals Sens. 2016 Apr-Jun;6(2):117-27.
The prediction of the joint angle position, especially during tremor bursts, can be useful for detecting, tracking, and forecasting tremors. Thus, this research proposes a new model for predicting the wrist joint position during rhythmic bursts and inter-burst intervals. Since a tremor is an approximately rhythmic and roughly sinusoidal movement, neural oscillators have been selected to underlie the proposed model. Two neural oscillators were adopted. Electromyogram (EMG) signals were recorded from the extensor carpi radialis and flexor carpi radialis muscles concurrent with the joint angle signals of a stroke subject in an arm constant-posture. The output frequency of each oscillator was equal to the frequency corresponding to the maximum value of power spectrum related to the rhythmic wrist joint angle signals which had been recorded during a postural tremor. The phase shift between the outputs of the two oscillators was equal to the phase shift between the muscle activation of the wrist flexor and extensor muscles. The difference between the two oscillators' output signals was considered the main pattern. Along with a proportional compensator, an adaptive neural controller has adjusted the amplitude of the main pattern in such a way so as to minimize the wrist joint prediction error during a stroke patient's tremor burst and a healthy subject's generated artificial tremor. In regard to the range of wrist joint movement during the observed rhythmic motions, a calculated prediction error is deemed acceptable.
关节角度位置的预测,尤其是在震颤发作期间,对于检测、跟踪和预测震颤可能是有用的。因此,本研究提出了一种新模型,用于预测有节奏的发作期间和发作间隔期间的腕关节位置。由于震颤是一种近似有节奏且大致呈正弦曲线的运动,因此选择了神经振荡器作为所提出模型的基础。采用了两个神经振荡器。在一名中风患者手臂保持固定姿势时,同时记录桡侧腕伸肌和桡侧腕屈肌的肌电图(EMG)信号以及关节角度信号。每个振荡器的输出频率等于与姿势性震颤期间记录的有节奏的腕关节角度信号相关的功率谱最大值对应的频率。两个振荡器输出之间的相位差等于腕屈肌和伸肌肌肉激活之间的相位差。两个振荡器输出信号之间的差异被视为主要模式。与比例补偿器一起,自适应神经控制器以这样一种方式调整主要模式的幅度,以便在中风患者的震颤发作和健康受试者产生的人工震颤期间最小化腕关节预测误差。就观察到的有节奏运动期间腕关节运动范围而言,计算出的预测误差被认为是可接受的。