EEG-GNN: Graph Neural Networks for Classification of Electroencephalogram (EEG) Signals.

Andac Demir, Toshiaki Koike-Akino, Ye Wang, Masaki Haruna, Deniz Erdogmus
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引用次数: 35

Abstract

Convolutional neural networks (CNN) have been frequently used to extract subject-invariant features from electroencephalogram (EEG) for classification tasks. This approach holds the underlying assumption that electrodes are equidistant analogous to pixels of an image and hence fails to explore/exploit the complex functional neural connectivity between different electrode sites. We overcome this limitation by tailoring the concepts of convolution and pooling applied to 2D grid-like inputs for the functional network of electrode sites. Furthermore, we develop various graph neural network (GNN) models that project electrodes onto the nodes of a graph, where the node features are represented as EEG channel samples collected over a trial, and nodes can be connected by weighted/unweighted edges according to a flexible policy formulated by a neuroscientist. The empirical evaluations show that our proposed GNN-based framework outperforms standard CNN classifiers across ErrP, and RSVP datasets, as well as allowing neuroscientific interpretability and explainability to deep learning methods tailored to EEG related classification problems. Another practical advantage of our GNN-based framework is that it can be used in EEG channel selection, which is critical for reducing computational cost, and designing portable EEG headsets.

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EEG- gnn:用于脑电图信号分类的图神经网络。
卷积神经网络(CNN)经常被用于从脑电图(EEG)中提取主题不变特征来进行分类任务。这种方法的基本假设是电极是等距的,类似于图像的像素,因此无法探索/利用不同电极位置之间复杂的功能性神经连接。我们通过将卷积和池化的概念应用于电极位置功能网络的二维网格输入来克服这一限制。此外,我们开发了各种图形神经网络(GNN)模型,将电极投射到图的节点上,其中节点特征表示为在一次试验中收集的EEG通道样本,节点可以根据神经科学家制定的灵活策略通过加权/未加权边缘连接。实证评估表明,我们提出的基于gnn的框架在ErrP和RSVP数据集上优于标准的CNN分类器,并且允许神经科学的可解释性和可解释性,以适合脑电图相关分类问题的深度学习方法。我们的基于gnn的框架的另一个实际优势是它可以用于EEG通道选择,这对于降低计算成本和设计便携式EEG耳机至关重要。
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