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对称卷积和对抗神经网络可提高 EEG 精神压力分类。

Symmetric Convolutional and Adversarial Neural Network Enables Improved Mental Stress Classification From EEG.

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2022;30:1384-1400. doi: 10.1109/TNSRE.2022.3174821. Epub 2022 May 30.

Abstract

Electroencephalography (EEG) is widely used for mental stress classification, but effective feature extraction and transfer across subjects remain challenging due to its variability. In this paper, a novel deep neural network combining convolutional neural network (CNN) and adversarial theory, named symmetric deep convolutional adversarial network (SDCAN), is proposed for stress classification based on EEG. The adversarial inference is introduced to automatically capture invariant and discriminative features from raw EEG, which aims to improve the classification accuracy and generalization ability across subjects. Experiments were conducted with 22 human subjects, where each participant's stress was induced by the Trier Social Stress Test paradigm while EEG was collected. Stress states were then calibrated into four or five stages according to the changing trend of salivary cortisol concentration. The results show that the proposed network achieves improved accuracies of 87.62% and 81.45% on the classification of four and five stages, respectively, compared to conventional CNN methods. Euclidean space data alignment approach (EA) was applied and the improved generalization ability of EA-SDCAN across subjects was also validated via the leave-one-subject-out-cross-validation, with the accuracies of four and five stages being 60.52% and 48.17%, respectively. These findings indicate that the proposed SDCAN network is more feasible and effective for classifying the stages of mental stress based on EEG compared with other conventional methods.

摘要

脑电图 (EEG) 广泛用于精神压力分类,但由于其可变性,有效的特征提取和跨主体转移仍然具有挑战性。在本文中,提出了一种结合卷积神经网络 (CNN) 和对抗理论的新型深度神经网络,称为对称深度卷积对抗网络 (SDCAN),用于基于 EEG 的压力分类。对抗推理被引入到原始 EEG 中,以自动捕获不变和判别特征,旨在提高跨主体的分类准确性和泛化能力。实验在 22 名人类受试者中进行,每位参与者的压力都是通过特里尔社会应激测试范式诱导的,同时采集 EEG。然后根据唾液皮质醇浓度的变化趋势,将应激状态校准为四个或五个阶段。结果表明,与传统的 CNN 方法相比,所提出的网络在四个和五个阶段的分类中分别实现了 87.62%和 81.45%的提高精度。应用了欧几里得空间数据对齐方法 (EA),并通过受试者外交叉验证验证了 EA-SDCAN 在跨主体的改进泛化能力,四个和五个阶段的准确率分别为 60.52%和 48.17%。这些发现表明,与其他传统方法相比,所提出的 SDCAN 网络在基于 EEG 对精神压力阶段进行分类方面更可行、更有效。

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