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A Robust Discriminant Framework Based on Functional Biomarkers of EEG and Its Potential for Diagnosis of Alzheimer’s Disease

机译:基于EEG功能生物标志物的强大判别框架及其诊断阿尔茨海默病的潜力

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摘要

(1) Background: Growing evidence suggests that electroencephalography (EEG), recording the brain’s electrical activity, can be a promising diagnostic tool for Alzheimer’s disease (AD). The diagnostic biomarkers based on quantitative EEG (qEEG) have been extensively explored, but few of them helped clinicians in their everyday practice, and reliable qEEG markers are still lacking. The study aims to find robust EEG biomarkers and propose a systematic discrimination framework based on signal processing and computer-aided techniques to distinguish AD patients from normal elderly controls (NC). (2) Methods: In the proposed study, EEG signals were preprocessed firstly and Maximal overlap discrete wavelet transform (MODWT) was applied to the preprocessed signals. Variance, Pearson correlation coefficient, interquartile range, Hoeffding’s D measure, and Permutation entropy were extracted as the input of the candidate classifiers. The AD vs. NC discriminant performance of each model was evaluated and an automatic diagnostic framework was eventually developed. (3) Results: A classification procedure based on the extracted EEG features and linear discriminant analysis based classifier achieved the accuracy of 93.18 ± 3.65 (%), the AUC of 97.92 ± 1.66 (%), the F-measure of 94.06 ± 4.04 (%), separately. (4) Conclusions: The developed discrimination framework can identify AD from NC with high performance in a systematic routine.
机译:(1)背景:日益增长的证据表明,脑电图(EEG),记录大脑的电活动,可以是阿尔茨海默病(AD)的有希望的诊断工具。基于定量脑电图(QEEG)的诊断生物标志物已被广泛探索,但其中很少有人帮助临床医生在日常做法中,并且仍然缺乏可靠的QEEG标记。该研究旨在寻找强大的EEG生物标志物,并提出基于信号处理和计算机辅助技术的系统辨别框架,以区分AD患者来自正常的老年人控制(NC)。 (2)方法:在所提出的研究中,首先预处理EEG信号,并将最大重叠离散小波变换(MODWT)应用于预处理信号。差异,Pearson相关系数,阶段范围,Hoeffding的D度量和排列熵被提取为候选分类器的输入。评估了每个模型的AD与NC判别性能,并最终开发了自动诊断框架。 (3)结果:基于提取的EEG特征和基于线性判别分析的分类器的分类程序实现了93.18±3.65(%)的精度,AUC为97.92±1.66(%),F-PECTION为94.06±4.04( %), 分别地。 (4)结论:发达的歧视框架可以在系统常规中识别来自NC的广告。

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