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Freezing of gait detection in Parkinson’s disease via multimodal analysis of EEG and accelerometer signals

机译:通过脑电图和加速度计信号的多模态分析冻结帕金森氏症的步态检测

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Parkinson’s disease (PD) patients with freezing of gait (FOG) can suddenly lose their forward moving ability leading to unexpected falls. To overcome FOG and avoid the falls, a real-time accurate FOG detection or prediction system is desirable to trigger on-demand cues. In this study, we designed and implemented an in-place movement experiment for PD patients to provoke FOG and meanwhile acquired multimodal physiological signals, such as electroencephalography (EEG) and accelerometer signals. A multimodal model using brain activity from EEG and motion data from accelerometers was developed to improve FOG detection performance. In the detection of over 700 FOG episodes observed in the experiments, the multimodal model achieved 0.211 measured by Matthews Correlation Coefficient (MCC) compared with the single-modal models (0.127 or 0.139).Clinical Relevance— This is the first study to use multimodal: EEG and accelerometer signal analysis in FOG detection, and an improvement was achieved.
机译:步态冻结(FOG)的帕金森氏病(PD)患者可能突然失去向前移动的能力,从而导致意外摔倒。为了克服FOG并避免跌倒,需要一种实时准确的FOG检测或预测系统来触发按需提示。在这项研究中,我们设计并实施了针对PD患者的原位运动实验,以激发FOG,同时获取多模式生理信号,例如脑电图(EEG)和加速度计信号。利用脑电活动和加速度计的运动数据开发了一种多模态模型,以改善FOG检测性能。在检测实验中观察到的700多个FOG发作中,与单模式模型(0.127或0.139)相比,多模式模型通过Matthews相关系数(MCC)测得的值为0.211。 :在FOG检测中进行脑电图和加速度计信号分析,并取得了进步。

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