用平均频率和中位数频率分析基于肌电图的手臂运动序列

B. N. Cahyadi, W. Khairunizam, M. Muhammad, I. Zunaidi, S. Majid, R. N., S. A. Bakar, Z. Razlan, W. Mustafa
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引用次数: 6

摘要

本文介绍了针对脑卒中后上肢康复的分析臂运动序列的研究。如果康复治疗方法正确,可以优化手臂的恢复。脑卒中后上肢无力在脑卒中后康复中普遍存在,可使肌力不足的因素有脑卒中后神经、肌肉结构和功能的改变等。康复过程需要在中风发作后立即开始,重复和概念化。另一方面,在康复过程中还需要对肌肉活动进行监测,以评价康复过程中的肌肉力量、运动功能和进展情况。本研究的目的是利用特征频域分析手臂运动序列。在这项研究中,三角肌,二头肌和尺侧屈肌(FCU)将被监测的表面肌电图(sEMG)。5名健康的男性和女性受试者成为数据记录的参与者。平均频率域(MNF)和中位数频率域(MDF)是用于手臂运动序列分析的两种信号处理技术。分析结果表明,MNF优于MDF, MNF各段产生的频率均高于MDF。从数据分析来看,这个动作序列设计更侧重于三角肌和FCU肌肉的治疗。这个动作序列有五个条件动作。第一低要求,第二难,第三中等,第四中等和最后的冷却动作。最佳的动作顺序最少有四个条件动作:预热-中等-困难-冷却。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of EMG based Arm Movement Sequence using Mean and Median Frequency
This paper present the studies of analysis arm movement sequence which dedicated for upper limb rehabilitation after stroke. The recovery of the arm could be optimized if the rehabilitation therapy is in a right manner. Upper limb weakness after stroke is prevalent in post-stroke rehabilitation, many factors that can deficit muscle strength there are neural, muscle structure and function change after stroke. Rehabilitation process needs to start as soon as after a stroke attack, repetitive and conceptualized. On the other hand monitoring of muscle activity also need in the rehabilitation process to evaluate muscle strength, motor function and progress in the rehabilitation process. The objective of this research is to analysis arm movement sequence using the feature frequency domain. In this study deltoid, biceps and flexor carpum ulnaris (FCU) muscles will be monitored by surface electromyography (sEMG). Five healthy subjects male and female become participants in data recording. Mean frequency (MNF) and median frequency (MDF) domain are two signals processing technique used for arm movement sequence analyzing. The analysis result showed that MNF is better than MDF where MNF produced higher frequency than MDF from each segment. From the data analysis, this movement sequence design more focuses on deltoid and FCU muscles treatment. This movement sequence has five condition movements. First undemanding, second difficult, third moderate, fourth moderate and the last cool-down movements. The best movement sequence minimum has four condition movements warming up – moderate – difficult – cool-down.
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