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Muscle artifacts in single trial EEG data distinguish patients with Parkinson's disease from healthy individuals

机译:单试的肌肉工件在单次试验EEG数据中区分帕金森病免受健康个体的疾病

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Parkinson's disease (PD) is known to lead to marked alterations in cortical-basal ganglia activity that may be amenable to serve as a biomarker for PD diagnosis. Using non-linear delay differential equations (DDE) for classification of PD patients on and off dopaminergic therapy (PD-on, PD-off, respectively) from healthy age-matched controls (CO), we show that 1 second of quasi-resting state clean and raw electroencephalogram (EEG) data can be used to classify CO from PD-on/off based on the area under the receiver operating characteristic curve (AROC). Raw EEG is shown to classify more robustly (AROC=0.59–0.86) than clean EEG data (AROC=0.57–0.72). Decomposition of the raw data into stereotypical and non-stereotypical artifacts provides evidence that increased classification of raw EEG time series originates from muscle artifacts. Thus, non-linear feature extraction and classification of raw EEG data in a low dimensional feature space is a potential biomarker for Parkinson's disease.
机译:众所周知,帕金森病(PD)导致皮质基底神经节活动的显着改变,可用于作为PD诊断的生物标志物。使用非线性延迟微分方程(DDE)用于分类PD患者的多巴胺能治疗(分别来自健康年龄匹配的对照(CO),我们展示了1秒的准休息状态清洁和原始脑电图(EEG)数据可用于基于接收器操作特性曲线(AROC)下的区域对CO从PD-ON / OFF进行分类。显示RAW EEG显示比清洁EEG数据(AROC = 0.57-0.72)对更强大的(AROC = 0.59-0.86)进行分类。原始数据分解成陈规定型和非陈规定型伪影提供了证据,提高了原始EEG时间序列的分类源自肌肉伪影。因此,低尺寸特征空间中的未线性特征提取和原始EEG数据的分类是帕金森病的潜在生物标志物。

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