脑电参数监测脑卒中康复再学习程序:新常态下脑卒中康复自我监测系统的初步研究

Aries Findra Setiawan, A. Wibawa, M. Purnomo, W. Islamiyah
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引用次数: 5

摘要

新常态下,新冠肺炎疫情过后,很多事情都进入了新常态。包括中风康复。新常态和新冠肺炎疫情期间,脑卒中患者不得在医院内排队接受康复治疗。需要一种新的方法来保持康复运行,同时对Covid-19保持高度警惕。脑电图是一种支持脑卒中自我监测康复的替代技术。本研究对脑电参数均值、标准差、均值绝对值等进行分析和检验,以回答我们的假设,这些参数是否可以用于监测脑卒中康复进展。本研究以3例脑卒中患者为研究对象,采用再学习方案进行脑卒中康复治疗。每次脑卒中患者进行康复治疗时,记录脑电图数据。对3例脑卒中患者进行为期2个月的测量,共获得12组脑电图数据并进行分析。记录了两种运动,即手部运动和肘部运动。采用C3和C4通道获取原始脑电数据。在得到监测参数之前,对EEG波段进行alpha和beta滤波、去噪和数据计算等数据处理。结果表明,脑卒中后康复过程中,脑电信号的均值、标准差和均值绝对值均较高。综上所述,脑电统计参数可作为脑卒中康复的监测参数。在新常态时代,这可能是家庭护理中风康复计划的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Monitoring Stroke Rehabilitation Re-Learning Program using EEG Parameter: A preliminary study for developing self-monitoring system for stroke rehabilitation during new normal
In the new normal, a period after Covid-19 outbreak, many things run in the new normal. Including stroke rehabilitation. During the Covid-19 and new normal era, stroke patients are not allowed to gather in a hospital in queue line for rehabilitation service. A new approach is needed to keep the rehabilitation running with a big caution to Covid-19. EEG is an alternative technology for supporting the self-monitoring stroke rehabilitation. In this study, EEG parameters such as mean, Standard deviation, mean absolute value were analyzed and tested to answer our hypotheses whether or not those parameters can be used for monitoring stroke rehabilitation progress. This study involved 3 stroke patients who underwent stroke rehabilitation using re-learning program. Each time stroke patient performed rehabilitation program EEG data was recorded. During two months measurement in total from 3 stroke patients, 12 set EEG data was obtained and analyzed. Two motions were recorded namely hand movements and elbow movements. C3 and C4 EEG channel are used to get the raw EEG data. Data processing such as filtering EEG band into alpha and beta band, noise artefact removal (ICA) and data calculation were done before obtaining the monitoring parameters. The result showed that during post stroke rehabilitation parameters such as Mean, Standard Deviation and Mean Absolute Value showed higher value in both EEG band, alpha and beta. In conclusion, EEG statistical parameters can be used as a monitoring parameter during stroke rehabilitation. In the era of new normal, this could be a solution for home care stroke rehabilitation program.
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