Analysis of EEG for Parkinson’s Disease Detection

Darshil Shah, K. G. Gopan, N. Sinha
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引用次数: 3

Abstract

Parkinson’s Disease (PD) is a disorder of the central nervous system which affects movement, often including tremors. Nerve cell damage in the brain causes dopamine levels to drop which gradually degrades the functionality of the brain. Since PD is a neurodegenerative ailment, Electroencephalography (EEG) signal are used for early detection of Parkinson’s Disease. EEG being non-linear and non-stationary manual analysis is not only time consuming but prone to error. To detect PD, two methods are discussed in this paper: (1) CNN for EEG images and (2) k-nearest neighbors for manually extracted features from EEG signals. The proposed methodology is applied to publicly available datasets (1) University of New Mexico (UNM) (27 PD patients and 27 controls) and (2) Iowa (14 PD patients and 14 controls). Data from New Mexico is used to evaluate the performance of the model using k-fold cross-validation method and data from Iowa is used for out-of-sample evaluation. Mean test accuracy on the mentioned datasets reaches to 88.51% and 87.6% respectively making an improvement of 3.11% and 1.9% for UNM and Iowa dataset, as compared to the current state-of-the-art accuracy.
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脑电图对帕金森病的检测分析
帕金森氏症(PD)是一种影响运动的中枢神经系统紊乱,通常包括震颤。大脑中的神经细胞损伤会导致多巴胺水平下降,从而逐渐降低大脑的功能。由于帕金森病是一种神经退行性疾病,脑电图(EEG)信号可用于帕金森病的早期检测。脑电图是非线性和非平稳的,人工分析不仅费时而且容易出错。为了检测PD,本文讨论了两种方法:(1)对脑电信号进行CNN检测,(2)对脑电信号进行k近邻检测。提出的方法应用于公开可用的数据集:(1)新墨西哥大学(UNM)(27名PD患者和27名对照)和(2)爱荷华州(14名PD患者和14名对照)。来自新墨西哥州的数据使用k-fold交叉验证方法评估模型的性能,来自爱荷华州的数据用于样本外评估。在上述数据集上的平均测试准确率分别达到了88.51%和87.6%,与目前最先进的准确率相比,UNM和Iowa数据集的平均测试准确率分别提高了3.11%和1.9%。
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