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Investigating EEG Pattern During Designed-Hand Movement Tasks in Stroke Patients

机译:脑卒中患者设计手动作任务期间的脑电图模式研究

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Stroke is a catastrophic disease with the second-highest mortality rate in the world. It is also the leading cause of disability in many countries. A stroke rehabilitation program is crucial for the recovery process of post-stroke patients. It must be supported by measurable monitoring. Rehabilitation monitoring is currently still carried out through visual and manual observation, so the measurement results have not been well presented and subjective. Monitoring using EEG can provide solutions to these needs. During the monitoring process, significant parameters of EEG need to be explored. This study aims to find the most stable parameters that could be applied as a basis for measuring progress in stroke rehabilitation monitoring. The parameters are searched by calculating the difference between the value of the features of healthy hand movements with affected hand movements in the same individual stroke patients. The hypothesis in this study is that the difference between the healthy hand and the affected hand in stroke patients is positive because the healthy side movement has a higher amplitude value than the affected side movement. The data in this study is obtained from EEG of 10 stroke patients during a designed task motion on C3 and C4 channels. Participants performed three movements, namely shoulder flexion-extension, elbow flexion-extension, and grasping. Motions are carried out on both sides of the hand, both the healthy and the affected side. For preprocessing the EEG, this study applies IIR at the bandpass filter stages. Followed by ASR and ICA algorithm to remove the artifact. The clean EEG is segmented into 20 ms before calculating the Mean, Mav, and STD features. The difference between the healthy side feature (HFV) and the stroke side feature (AFV) then will be calculated and analyzed. The results show that STD, during shoulder movements, and in low alpha frequencies is the best feature with the most positive HFV and AFV differences. From this study, it can be concluded that the STD feature, during shoulder movements, and in low alpha frequency band showed a high potential to be used as a crucial parameter to monitor the stroke rehabilitation progress.
机译:中风是一种灾难性疾病,死亡率是世界上第二高的疾病。它也是许多国家致残的主要原因。中风康复计划对于中风后患者的康复过程至关重要。它必须得到可测量的监视的支持。目前,仍通过视觉和手动观察进行康复监测,因此测量结果还没有很好地呈现和主观。使用EEG进行监视可以为这些需求提供解决方案。在监测过程中,需要探索脑电图的重要参数。本研究旨在寻找最稳定的参数,这些参数可作为测量卒中康复监测进展的基础。通过计算在相同的个体中风患者中健康手部动作的特征值与受影响的手部动作之间的差来搜索参数。本研究的假设是,中风患者的健康手和患病手之间的差异为正,因为健康的患侧运动的幅度值高于患病的侧运动。这项研究中的数据来自10名卒中患者在C3和C4通道上进行的设计任务运动期间的脑电图。参与者进行了三个动作,即肩部屈伸,肘部屈伸和抓握。动作在手的两侧进行,包括健康的一侧和患侧的一侧。对于EEG的预处理,本研究在带通滤波器阶段应用IIR。其次是ASR和ICA算法以去除伪像。在计算均值,Mav和STD特征之前,将干净的EEG分割为20 ms。然后将计算并分析健康侧特征(HFV)和中风侧特征(AFV)之间的差异。结果表明,在肩部运动期间以及低阿尔法频率下,性病是HFV和AFV差异最大的最佳特征。从这项研究中可以得出结论,在肩部运动期间以及在低α频段中,性病特征具有很高的潜力,可以用作监测卒中康复进展的关键参数。

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