A Hybrid EEG-Based Stress State Classification Model Using Multi-Domain Transfer Entropy and PCANet

Author:

Dong Yuefang12,Xu Lin3,Zheng Jian12,Wu Dandan2,Li Huanli4,Shao Yongcong3,Shi Guohua12,Fu Weiwei12

Affiliation:

1. School of Biomedical Engineering (Suzhou), Division of Life Sciences and Medicine, University of Sciences and Technology of China, No.96, Jinzhai Road, Hefei 230026, China

2. Suzhou Institute of Biomedical Engineering and Technology, Chinese Academy of Sciences, No.88, Keling Road, Suzhou 215163, China

3. School of Psychology, Beijing Sport University, Beijing 100084, China

4. Luo Yang Institute of Science and Technology, No. 90, Wangcheng Avenue, Luoyang 471023, China

Abstract

This paper proposes a new hybrid model for classifying stress states using EEG signals, combining multi-domain transfer entropy (TrEn) with a two-dimensional PCANet (2D-PCANet) approach. The aim is to create an automated system for identifying stress levels, which is crucial for early intervention and mental health management. A major challenge in this field lies in extracting meaningful emotional information from the complex patterns observed in EEG. Our model addresses this by initially applying independent component analysis (ICA) to purify the EEG signals, enhancing the clarity for further analysis. We then leverage the adaptability of the fractional Fourier transform (FrFT) to represent the EEG data in time, frequency, and time–frequency domains. This multi-domain representation allows for a more nuanced understanding of the brain’s activity in response to stress. The subsequent stage involves the deployment of a two-layer 2D-PCANet network designed to autonomously distill EEG features associated with stress. These features are then classified by a support vector machine (SVM) to determine the stress state. Moreover, stress induction and data acquisition experiments are designed. We employed two distinct tasks known to trigger stress responses. Other stress-inducing elements that enhance the stress response were included in the experimental design, such as time limits and performance feedback. The EEG data collected from 15 participants were retained. The proposed algorithm achieves an average accuracy of over 92% on this self-collected dataset, enabling stress state detection under different task-induced conditions.

Funder

National Key R&D Program of China

Publisher

MDPI AG

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