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基于 EEG 信号的使用频率和时频特征的痴呆分类框架。

A Dementia Classification Framework Using Frequency and Time-Frequency Features Based on EEG Signals.

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2019 May;27(5):826-835. doi: 10.1109/TNSRE.2019.2909100. Epub 2019 Apr 4.

DOI:10.1109/TNSRE.2019.2909100
PMID:30951473
Abstract

Alzheimer's disease (AD) accounts for 60%-70% of all dementia cases, and clinical diagnosis at its early stage is extremely difficult. As several new drugs aiming to modify disease progression or alleviate symptoms are being developed, to assess their efficacy, novel robust biomarkers of brain function are urgently required. This paper aims to explore a routine to gain such biomarkers using the quantitative analysis of electroencephalography (QEEG). This paper proposes a supervised classification framework that uses EEG signals to classify healthy controls (HC) and AD participants. The framework consists of data augmentation, feature extraction, K-nearest neighbor (KNN) classification, quantitative evaluation, and topographic visualization. Considering the human brain either as a stationary or a dynamical system, both the frequency-based and time-frequency-based features were tested in 40 participants. The results show that: 1) the proposed method can achieve up to a 99% classification accuracy on short (4s) eyes open EEG epochs, with the KNN algorithm that has best performance when compared with alternative machine learning approaches; 2) the features extracted using the wavelet transform produced better classification performance in comparison to the features based on FFT; and 3) in the spatial domain, the temporal and parietal areas offer the best distinction between healthy controls and AD. The proposed framework can effectively classify HC and AD participants with high accuracy, meanwhile offering identification and the localization of significant QEEG features. These important findings and the proposed classification framework could be used for the development of a biomarker for the diagnosis and monitoring of disease progression in AD.

摘要

阿尔茨海默病(AD)占所有痴呆病例的 60%-70%,其早期的临床诊断极为困难。随着几种旨在改变疾病进程或缓解症状的新药的开发,迫切需要新的、强大的大脑功能生物标志物来评估其疗效。本文旨在探讨使用脑电图(EEG)定量分析获得此类生物标志物的常规方法。本文提出了一种使用 EEG 信号对健康对照组(HC)和 AD 参与者进行分类的监督分类框架。该框架包括数据增强、特征提取、K-最近邻(KNN)分类、定量评估和地形可视化。考虑到人脑既可以是静止的也可以是动态的,在 40 名参与者中测试了基于频率和时频的特征。结果表明:1)该方法可以在短(4s)睁眼 EEG 时段实现高达 99%的分类准确率,其中 KNN 算法的性能优于替代机器学习方法;2)与基于 FFT 的特征相比,使用小波变换提取的特征具有更好的分类性能;3)在空间域中,时间和顶叶区域在健康对照组和 AD 之间提供了最佳的区分。该框架可以有效地对 HC 和 AD 参与者进行高精度分类,同时提供 EEG 特征的识别和定位。这些重要的发现和提出的分类框架可用于开发 AD 诊断和疾病进展监测的生物标志物。

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