Multimodal biofeedback for Parkinson’s disease motor and nonmotor symptoms

Zhongyan Shi, Lei Ding, Xingyu Han, Bo Jiang, Jiangtao Zhang, Dingjie Suo, Jinglong Wu, Guangying Pei, Boyan Fang, Tianyi Yan
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引用次数: 2

Abstract

Parkinson’s disease (PD) is a neurodegenerative disorder characterized by motor retardation, myotonia, quiescent tremor, and postural gait abnormality, as well as nonmotor symptoms such as anxiety and depression. Biofeedback improves motor and nonmotor functions of patients by regulating abnormal electroencephalogram (EEG), electrocardiogram (ECG), photoplethysmography (PPG), electromyography (EMG), respiration (RSP), or other physiological signals. Given that multimodal signals are closely related to PD states, the clinical effect of multimodal biofeedback on patients with PD is worth exploring. Twenty-one patients with PD in Beijing Rehabilitation Hospital were enrolled and divided into three groups: multimodal (EEG, ECG, PPG, and RSP feedback signal), EEG (EEG feedback signal), and sham (random feedback signal), and they received biofeedback training five times in two weeks. The combined clinical scale and multimodal signal analysis results revealed that the EEG group significantly improved motor symptoms and increased Berg balance scale scores by regulating β band activity; the multimodal group significantly improved nonmotor symptoms and reduced Hamilton rating scale for depression scores by improving θ band activity. Our preliminary results revealed that multimodal biofeedback can improve the clinical symptoms of PD, but the regulation effect on motor symptoms is weaker than that of EEG biofeedback.
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帕金森病运动和非运动症状的多模式生物反馈
帕金森病(PD)是一种神经退行性疾病,其特征是运动迟缓、肌强直、静止性震颤和姿势步态异常,以及焦虑和抑郁等非运动症状。生物反馈通过调节异常脑电图(EEG)、心电图(ECG)、光体积描记术(PPG)、肌电图(EMG)、呼吸(RSP)或其他生理信号来改善患者的运动和非运动功能。鉴于多模式信号与PD状态密切相关,多模式生物反馈对PD患者的临床效果值得探索。将北京康复医院的21例帕金森病患者分为三组:多模式(EEG、ECG、PPG和RSP反馈信号)、EEG(EEG反馈信号)和sham(随机反馈信号),并在两周内接受5次生物反馈训练。综合临床量表和多模式信号分析结果显示,EEG组通过调节β带活动显著改善运动症状,增加Berg平衡量表评分;多模式组通过改善θ带活动,显著改善了非运动症状,并降低了抑郁评分的汉密尔顿评分。我们的初步结果表明,多模式生物反馈可以改善帕金森病的临床症状,但对运动症状的调节作用弱于脑电图生物反馈。
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27
审稿时长
10 weeks
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