工作记忆编码中PFC损伤与健康对照的图卷积网络分类

Sai Sanjay Balaji, K. Parhi
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引用次数: 1

摘要

本文利用多层图卷积网络(GCN)对来自20名健康对照的14名前额叶皮质(pFC)病变患者进行分组分类,并结合工作记忆(WM)试验编码阶段记录的头皮脑电图推断出的特征。我们首先构建无向图和有向图,分别使用基于距离相关的功能连通性度量和基于微分有向信息的有效连通性度量来表示每个受试者的每次试验的WM编码。中心性测量的中间中心性、特征向量中心性和接近中心性是从大脑连接的64个通道中推断出来的。除了三个中心性度量外,每个图都使用五个频带(delta、theta、alpha、beta和gamma)中的相对频带功率作为节点特征。使用两层GCN学习总结图表示,然后使用均值池化,并使用全连接层进行分类。受试者的最终类别标签是根据受试者所有试验的结果使用多数投票来决定的。基于gcn的模型对34个被试中28个被试的分类准确率为82.35%,对34个被试的分类准确率为100%,其中28个被试的分类准确率为82.35%,而34个被试的分类准确率为100%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classifying Subjects with PFC Lesions from Healthy Controls during Working Memory Encoding via Graph Convolutional Networks
This paper describes a group-level classification of 14 patients with prefrontal cortex (pFC) lesions from 20 healthy controls using multi-layer graph convolutional networks (GCN) with features inferred from the scalp EEG recorded from the encoding phase of working memory (WM) trials. We first construct undirected and directed graphs to represent the WM encoding for each trial for each subject using distance correlation- based functional connectivity measures and differential directed information-based effective connectivity measures, respectively. Centrality measures of betweenness centrality, eigenvector centrality, and closeness centrality are inferred for each of the 64 channels from the brain connectivity. Along with the three centrality measures, each graph uses the relative band powers in the five frequency bands - delta, theta, alpha, beta, and gamma- as node features. The summarized graph representation is learned using two layers of GCN followed by mean pooling, and fully connected layers are used for classification. The final class label for a subject is decided using majority voting based on the results from all the subject's trials. The GCN-based model can correctly classify 28 of the 34 subjects (82.35% accuracy) with undirected edges represented by functional connectivity measure of distance correlation and classify all 34 subjects (100% accuracy) with directed edges characterized by effective connectivity measure of differential directed information.
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