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ST-SCGNN:一种用于基于跨主体 EEG 的情绪识别和意识检测的时空自构建图神经网络。

ST-SCGNN: A Spatio-Temporal Self-Constructing Graph Neural Network for Cross-Subject EEG-Based Emotion Recognition and Consciousness Detection.

出版信息

IEEE J Biomed Health Inform. 2024 Feb;28(2):777-788. doi: 10.1109/JBHI.2023.3335854. Epub 2024 Feb 5.

DOI:10.1109/JBHI.2023.3335854
Abstract

In this paper, a novel spatio-temporal self-constructing graph neural network (ST-SCGNN) is proposed for cross-subject emotion recognition and consciousness detection. For spatio-temporal feature generation, activation and connection pattern features are first extracted and then combined to leverage their complementary emotion-related information. Next, a self-constructing graph neural network with a spatio-temporal model is presented. Specifically, the graph structure of the neural network is dynamically updated by the self-constructing module of the input signal. Experiments based on the SEED and SEED-IV datasets showed that the model achieved average accuracies of 85.90% and 76.37%, respectively. Both values exceed the state-of-the-art metrics with the same protocol. In clinical besides, patients with disorders of consciousness (DOC) suffer severe brain injuries, and sufficient training data for EEG-based emotion recognition cannot be collected. Our proposed ST-SCGNN method for cross-subject emotion recognition was first attempted in training in ten healthy subjects and testing in eight patients with DOC. We found that two patients obtained accuracies significantly higher than chance level and showed similar neural patterns with healthy subjects. Covert consciousness and emotion-related abilities were thus demonstrated in these two patients. Our proposed ST-SCGNN for cross-subject emotion recognition could be a promising tool for consciousness detection in DOC patients.

摘要

本文提出了一种新颖的时空自构建图神经网络(ST-SCGNN),用于跨主体情感识别和意识检测。为了生成时空特征,首先提取激活和连接模式特征,然后结合它们互补的与情感相关的信息。接下来,提出了一种具有时空模型的自构建图神经网络。具体来说,通过输入信号的自构建模块,动态更新神经网络的图结构。基于 SEED 和 SEED-IV 数据集的实验表明,该模型的平均准确率分别达到 85.90%和 76.37%,均超过了相同协议下的最新指标。此外,患有意识障碍(DOC)的临床患者遭受严重的脑损伤,无法收集到足够的基于 EEG 的情感识别训练数据。我们首次尝试在 10 名健康受试者中进行训练,并在 8 名 DOC 患者中进行测试,使用我们提出的用于跨主体情感识别的 ST-SCGNN 方法。我们发现,两名患者的准确率明显高于随机水平,并且与健康受试者表现出相似的神经模式。因此,这两名患者表现出了潜在的意识和与情感相关的能力。我们提出的用于跨主体情感识别的 ST-SCGNN 可能成为 DOC 患者意识检测的一种有前途的工具。

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