Identification of Alzheimer's disease brain networks based on EEG phase synchronization.

IF 2.9 4区 医学 Q3 ENGINEERING, BIOMEDICAL
Jiayi Cao, Bin Li, Xiaoou Li
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引用次数: 0

Abstract

Objective: Using the phase synchronization of EEG signals, two different phases, PLI and PLV, were used to construct brain network analysis and graph convolutional neural network, respectively, to achieve automatic identification of Alzheimer's disease (AD) and to assist in the early diagnosis of Alzheimer's disease.

Methods: In this paper, we selected outpatients (16 AD subjects, 20 mild cognitive impairment (MCI) subjects and 21 healthy control (HC) subjects) from the outpatient clinic of Yangpu Mental Health Center in Shanghai, China, from January 2023 to December 2023, and collected resting-state EEG data. To collect resting-state EEG data, each patient was asked to sit down with eyes closed for 5 min. Firstly, the acquired EEG data were preprocessed to extract the data in the α-band at 8-13 Hz; secondly, the phase lag index (PLI) and phase-locked value (PLV) were used to construct the brain functional network, and the brain functional connectivity map was visualized by brain functional connectivity analysis. Finally, the constructed PLI and PLV were input into the graph convolutional neural network (GCN) model as node features for training and classification, respectively.

Results: Healthy controls had relatively strong mean brain functional connectivity in the PLV brain network compared to AD and MCI patients. MCI patients showed lower mean brain functional connectivity in the brain network of PLI, while all three groups showed significant differences in brain functional connectivity between parietal and occipital lobes. The GCN model improved classification accuracy by more than 10% compared to using a machine learning classifier. When PLV was used as the nodal feature in the GCN model, the model achieved an average classification accuracy of 77.80% for the three groups of AD, MCI and HC, which was an improvement over the accuracy of choosing raw EEG data and PLI as the nodal feature. The performance of the model was further validated.

Conclusions: The experimental results show that the GCN model can effectively identify the graph structure compared with the traditional machine learning model, the GCN-PLV model can better classify AD patients, and the alpha band is proved to be more suitable for AD resting-state EEG by tenfold cross-validation. The brain network map constructed based on PLI and PLV can further capture the local features of EEG signals and the intrinsic functional relationships between brain regions, and the combination of these two models has certain reference value for the diagnosis of AD patients.

目的:利用脑电信号的相位同步,利用PLI和PLV两个不同的相位分别构建脑网络分析和图卷积神经网络,实现对阿尔茨海默病(AD)的自动识别,协助阿尔茨海默病的早期诊断。方法:选取2023年1月至2023年12月在上海杨浦精神卫生中心门诊的AD患者16例、轻度认知障碍(MCI)患者20例、健康对照(HC)患者21例,采集静息状态脑电图数据。采集静息状态脑电数据时,要求每位患者闭眼坐下5 min。首先对采集到的脑电数据进行预处理,提取α-波段8 ~ 13 Hz的数据;其次,利用相位滞后指数(PLI)和锁相值(PLV)构建脑功能网络,通过脑功能连通性分析实现脑功能连接图的可视化;最后,将构建好的PLI和PLV分别作为节点特征输入到图卷积神经网络(GCN)模型中进行训练和分类。结果:与AD和MCI患者相比,健康对照组在PLV脑网络中具有相对较强的平均脑功能连通性。MCI患者在PLI脑网络中表现出较低的平均脑功能连通性,而三组患者在顶叶和枕叶脑功能连通性上均表现出显著差异。与使用机器学习分类器相比,GCN模型将分类精度提高了10%以上。在GCN模型中使用PLV作为节点特征时,该模型对AD、MCI和HC三组的平均分类准确率达到77.80%,较选择原始脑电数据和PLI作为节点特征的准确率有所提高。进一步验证了模型的性能。结论:实验结果表明,与传统的机器学习模型相比,GCN模型可以有效识别图结构,GCN- plv模型可以更好地对AD患者进行分类,并且经过十倍交叉验证证明alpha波段更适合AD静息状态脑电图。基于PLI和PLV构建的脑网络图可以进一步捕捉脑电信号的局部特征和脑区之间的内在功能关系,两种模型的结合对AD患者的诊断具有一定的参考价值。
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来源期刊
BioMedical Engineering OnLine
BioMedical Engineering OnLine 工程技术-工程:生物医学
CiteScore
6.70
自引率
2.60%
发文量
79
审稿时长
1 months
期刊介绍: BioMedical Engineering OnLine is an open access, peer-reviewed journal that is dedicated to publishing research in all areas of biomedical engineering. BioMedical Engineering OnLine is aimed at readers and authors throughout the world, with an interest in using tools of the physical and data sciences and techniques in engineering to understand and solve problems in the biological and medical sciences. Topical areas include, but are not limited to: Bioinformatics- Bioinstrumentation- Biomechanics- Biomedical Devices & Instrumentation- Biomedical Signal Processing- Healthcare Information Systems- Human Dynamics- Neural Engineering- Rehabilitation Engineering- Biomaterials- Biomedical Imaging & Image Processing- BioMEMS and On-Chip Devices- Bio-Micro/Nano Technologies- Biomolecular Engineering- Biosensors- Cardiovascular Systems Engineering- Cellular Engineering- Clinical Engineering- Computational Biology- Drug Delivery Technologies- Modeling Methodologies- Nanomaterials and Nanotechnology in Biomedicine- Respiratory Systems Engineering- Robotics in Medicine- Systems and Synthetic Biology- Systems Biology- Telemedicine/Smartphone Applications in Medicine- Therapeutic Systems, Devices and Technologies- Tissue Engineering
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