IEEE Trans Neural Syst Rehabil Eng. 2023;31:3176-3187. doi: 10.1109/TNSRE.2023.3299839. Epub 2023 Aug 7.
Epilepsy is one of the most common neurological diseases. Clinically, epileptic seizure detection is usually performed by analyzing electroencephalography (EEG) signals. At present, deep learning models have been widely used for single-channel EEG signal epilepsy detection, but this method is difficult to explain the classification results. Researchers have attempted to solve interpretive problems by combining graph representation of EEG signals with graph neural network models. Recently, the combination of graph representations and graph neural network (GNN) models has been increasingly applied to single-channel epilepsy detection. By this methodology, the raw EEG signal is transformed to its graph representation, and a GNN model is used to learn latent features and classify whether the data indicates an epileptic seizure episode. However, existing methods are faced with two major challenges. First, existing graph representations tend to have high time complexity as they generally require each vertex to traverse all other vertices to construct a graph structure. Some of them also have high space complexity for being dense. Second, while separate graph representations can be derived from a single-channel EEG signal in both time and frequency domains, existing GNN models for epilepsy detection can learn from a single graph representation, which makes it hard to let the information from the two domains complement each other. For addressing these challenges, we propose a Weighted Neighbour Graph (WNG) representation for EEG signals. Reducing the redundant edges of the existing graph, WNG can be both time and space-efficient, and as informative as its less efficient counterparts. We then propose a two-stream graph-based framework to simultaneously learn features from WNG in both time and frequency domain. Extensive experiments demonstrate the effectiveness and efficiency of the proposed methods.
癫痫是最常见的神经系统疾病之一。临床上,通常通过分析脑电图(EEG)信号来进行癫痫发作检测。目前,深度学习模型已广泛应用于单通道 EEG 信号癫痫检测,但这种方法难以解释分类结果。研究人员试图通过将 EEG 信号的图形表示与图神经网络模型相结合来解决可解释性问题。最近,图形表示与图神经网络(GNN)模型的结合越来越多地应用于单通道癫痫检测。通过这种方法,原始 EEG 信号被转换为其图形表示,然后使用 GNN 模型学习潜在特征并对数据是否指示癫痫发作进行分类。然而,现有的方法面临着两个主要挑战。首先,现有的图形表示往往具有较高的时间复杂度,因为它们通常需要每个顶点遍历所有其他顶点来构建图形结构。其中一些还具有较高的空间复杂度,因为它们是密集的。其次,虽然可以从单通道 EEG 信号的时间和频率域中分别得到单独的图形表示,但现有的用于癫痫检测的 GNN 模型只能从单个图形表示中学习,这使得很难让来自两个域的信息相互补充。为了解决这些挑战,我们提出了一种用于 EEG 信号的加权邻接图(WNG)表示。通过减少现有图形的冗余边,WNG 既具有时间和空间效率,又具有与其效率较低的对应物一样的信息量。然后,我们提出了一种两流图基框架,以同时从 WNG 中学习时间和频域的特征。大量实验证明了所提出方法的有效性和效率。