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

机译:小波能量和小波相干性作为诊断帕金森氏病相关痴呆和阿尔茨海默氏病的脑电生物标志物

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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 γ band and in links related to frontal regions; while PD-D patients exhibited increased WC primarily in the α and β 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.
机译:帕金森氏病(PD)和阿尔茨海默氏病(AD)可以并存于重症患者中;老年患者。由于它们具有不同的病理原因和病变,因此需要不同的治疗方法;区分PD相关性痴呆(PD-D)与AD至关重要。常规的脑电图(EEG)分析结果较差。本研究调查了使用相对小波能量(RWE)和小波相干性(WC)分析来区分PD-D患者的可能性。 AD患者和健康的老年受试者。在脑电信号中;我们发现,相对于健康受试者,PD-D患者和AD患者的低频小波能量增加而高频小波能量减少。这一结果表明,两种疾病的认知能力下降都可能与脑电活动缓慢有关。这与以前的研究一致。更重要的是;与健康受试者相比,AD患者的WC值较低,而PD-D患者的WC值较高。尤其是; AD患者的WC减少主要在γ波段和额叶相关区域的链接中。而PD-D患者的WC增加主要在α和β带以及颞顶环节。 RWE的线性判别分析(LDA)对PD-D诊断的最大准确性为79.18%,对AD诊断的最大准确性为81.25%。判别精度为73.40%,灵敏度为78.78%,特异性为69.47%。区分两种疾病;使用WC的LDA的最高性能为80.19%。我们建议使用小波方法评估脑电图结果可能有助于区分PD-D和AD。尤其是; RWE可用于区分患有和不患有痴呆的个体,而WC可用于区分PD-D和AD。

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