4.6 Article

Wavelet Energy and Wavelet Coherence as EEG Biomarkers for the Diagnosis of Parkinson's Disease-Related Dementia and Alzheimer's Disease

期刊

ENTROPY
卷 18, 期 1, 页码 -

出版社

MDPI
DOI: 10.3390/e18010008

关键词

wavelet analysis; relative wavelet energy; wavelet coherence; Parkinson-related dementia; Alzheimer's disease; EEG

资金

  1. CHUNG Moon Soul Research Center for Bio Information and Bio Electronics (CMSC) in KAIST
  2. Korea Science and Engineering Foundation (KOSEF) - Korean government (MOST) [R01-2007-000-21094-0, M10644000028-06N4400-02810, 20090093897, 20090083561]

向作者/读者索取更多资源

Parkinson's disease (PD) and Alzheimer's disease (AD) can coexist in severely affected; elderly patients. Since they have different pathological causes and lesions and consequently require different treatments; it is critical to distinguish PD-related dementia (PD-D) from AD. Conventional electroencephalograph (EEG) analysis has produced poor results. This study investigated the possibility of using relative wavelet energy (RWE) and wavelet coherence (WC) analysis to distinguish between PD-D patients; AD patients and healthy elderly subjects. In EEG signals; we found that low-frequency wavelet energy increased and high-frequency wavelet energy decreased in PD-D patients and AD patients relative to healthy subjects. This result suggests that cognitive decline in both diseases is potentially related to slow EEG activity; which is consistent with previous studies. More importantly; WC values were lower in AD patients and higher in PD-D patients compared with healthy subjects. In particular; AD patients exhibited decreased WC primarily in the band and in links related to frontal regions; while PD-D patients exhibited increased WC primarily in the and bands and in temporo-parietal links. Linear discriminant analysis (LDA) of RWE produced a maximum accuracy of 79.18% for diagnosing PD-D and 81.25% for diagnosing AD. The discriminant accuracy was 73.40% with 78.78% sensitivity and 69.47% specificity. In distinguishing between the two diseases; the maximum performance of LDA using WC was 80.19%. We suggest that using a wavelet approach to evaluate EEG results may facilitate discrimination between PD-D and AD. In particular; RWE is useful for differentiating individuals with and without dementia and WC is useful for differentiating between PD-D and AD.

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