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基于静息态脑电图相干性和卷积神经网络的阿尔茨海默病和额颞叶痴呆分类

Classification for Alzheimer's disease and frontotemporal dementia via resting-state electroencephalography-based coherence and convolutional neural network.

作者信息

Jiang Rundong, Zheng Xiaowei, Sun Jiamin, Chen Lei, Xu Guanghua, Zhang Rui

机构信息

School of Mathematics, Northwest University, Xi'an, China.

Medical Big Data Research Center, Northwest University, Xi'an, China.

出版信息

Cogn Neurodyn. 2025 Dec;19(1):46. doi: 10.1007/s11571-025-10232-2. Epub 2025 Mar 4.

DOI:10.1007/s11571-025-10232-2
PMID:40051486
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11880455/
Abstract

The study aimed to diagnose of Alzheimer's Disease (AD) and Frontotemporal Dementia (FTD) based on brain functional connectivity features extracted via resting-state Electroencephalographic (EEG) signals, and subsequently developed a convolutional neural network (CNN) model, Coherence-CNN, for classification. First, a publicly available dataset of EEG resting state-closed eye recordings containing 36 AD subjects, 23 FTD subjects, and 29 cognitively normal (CN) subjects was used. Then, coherence metrics were utilized to quantify brain functional connectivity, and the differences in coherence between groups across various frequency bands were investigated. Next, spectral clustering was used to analyze variations and differences in brain functional connectivity related to disease states, revealing distinct connectivity patterns in brain electrode position maps. The results demonstrated that brain functional connectivity between different regions was more robust in the CN group, while the AD and FTD groups exhibited various degrees of connectivity decline, reflecting the pronounced differences in connectivity patterns associated with each condition. Furthermore, Coherence-CNN was developed based on CNN and the feature of coherence for three-class classification, achieving a commendable accuracy of 94.32% through leave-one-out cross-validation. This study revealed that Coherence-CNN demonstrated significant performance for distinguishing AD, FTD, and CN groups, supporting the disorder of brain functional connectivity in AD and FTD.

摘要

该研究旨在基于通过静息态脑电图(EEG)信号提取的脑功能连接特征来诊断阿尔茨海默病(AD)和额颞叶痴呆(FTD),随后开发了一种用于分类的卷积神经网络(CNN)模型,即相干性-CNN。首先,使用了一个公开可用的EEG静息态闭眼记录数据集,其中包含36名AD患者、23名FTD患者和29名认知正常(CN)的受试者。然后,利用相干性指标来量化脑功能连接,并研究不同频段组间相干性的差异。接下来,使用谱聚类分析与疾病状态相关的脑功能连接的变化和差异,揭示脑电极位置图中不同的连接模式。结果表明,不同区域之间的脑功能连接在CN组中更强健,而AD组和FTD组则表现出不同程度的连接下降,反映了与每种疾病相关的连接模式的显著差异。此外,基于CNN和相干性特征开发了相干性-CNN用于三类分类,通过留一法交叉验证达到了94.32%的可观准确率。这项研究表明,相干性-CNN在区分AD、FTD和CN组方面表现出显著性能,支持了AD和FTD中脑功能连接的紊乱。

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