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基于小波变换特征和优化方法的基于脑电图的轻度认知障碍检测

EEG-Based Detection of Mild Cognitive Impairment Using DWT-Based Features and Optimization Methods.

作者信息

Aljalal Majid, Aldosari Saeed A, AlSharabi Khalil, Alturki Fahd A

机构信息

Department of Electrical Engineering, College of Engineering, King Saud University, Riyadh 11421, Saudi Arabia.

出版信息

Diagnostics (Basel). 2024 Jul 26;14(15):1619. doi: 10.3390/diagnostics14151619.

Abstract

In recent years, electroencephalography (EEG) has been investigated for identifying brain disorders. This technique involves placing multiple electrodes (channels) on the scalp to measure the brain's activities. This study focuses on accurately detecting mild cognitive impairment (MCI) from the recorded EEG signals. To achieve this, this study first introduced discrete wavelet transform (DWT)-based approaches to generate reliable biomarkers for MCI. These approaches decompose each channel's signal using DWT into a set of distinct frequency band signals, then extract features using a non-linear measure such as band power, energy, or entropy. Various machine learning approaches then classify the generated features. We investigated these methods on EEGs recorded using 19 channels from 29 MCI patients and 32 healthy subjects. In the second step, the study explored the possibility of decreasing the number of EEG channels while preserving, or even enhancing, classification accuracy. We employed multi-objective optimization techniques, such as the non-dominated sorting genetic algorithm (NSGA) and particle swarm optimization (PSO), to achieve this. The results show that the generated DWT-based features resulted in high full-channel classification accuracy scores. Furthermore, selecting fewer channels carefully leads to better accuracy scores. For instance, with a DWT-based approach, the full-channel accuracy achieved was 99.84%. With only four channels selected by NSGA-II, NSGA-III, or PSO, the accuracy increased to 99.97%. Furthermore, NSGA-II selects five channels, achieving an accuracy of 100%. The results show that the suggested DWT-based approaches are promising to detect MCI, and picking the most useful EEG channels makes the accuracy even higher. The use of a small number of electrodes paves the way for EEG-based diagnosis in clinical practice.

摘要

近年来,人们对脑电图(EEG)用于识别脑部疾病进行了研究。该技术涉及在头皮上放置多个电极(通道)以测量大脑活动。本研究专注于从记录的EEG信号中准确检测轻度认知障碍(MCI)。为实现这一目标,本研究首先引入了基于离散小波变换(DWT)的方法来生成用于MCI的可靠生物标志物。这些方法使用DWT将每个通道的信号分解为一组不同的频带信号,然后使用诸如带功率、能量或熵等非线性度量来提取特征。然后,各种机器学习方法对生成的特征进行分类。我们对使用来自29名MCI患者和32名健康受试者的19个通道记录的脑电图进行了这些方法的研究。在第二步中,该研究探索了在保持甚至提高分类准确率的同时减少EEG通道数量的可能性。我们采用了多目标优化技术,如非支配排序遗传算法(NSGA)和粒子群优化(PSO)来实现这一目标。结果表明,基于DWT生成的特征导致了较高的全通道分类准确率得分。此外,谨慎选择较少的通道会带来更好的准确率得分。例如,基于DWT的方法,全通道准确率达到了99.84%。通过NSGA-II、NSGA-III或PSO仅选择四个通道时,准确率提高到了99.97%。此外,NSGA-II选择五个通道,准确率达到了100%。结果表明,所建议的基于DWT的方法在检测MCI方面很有前景,并且选择最有用的EEG通道会使准确率更高。使用少量电极可为临床实践中基于EEG的诊断铺平道路。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d76c/11312237/0831bcbc65e0/diagnostics-14-01619-g001.jpg

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