How do different deep learning algorithms and data representations perform in evaluating mental stress using EEG signals?
Individuals evaluated for mental stress using electroencephalography (EEG)
Deep learning algorithms (Convolutional Neural Networks [CNNs], Long Short-Term Memory networks [LSTMs], and hybrid models) applied to EEG data
Classification accuracy for mental stress detection
Deep learning models, particularly CNNs using spectral and topographical EEG representations, can achieve up to 88% accuracy in detecting mental stress, though inter-subject variability remains a challenge.
Abstract Mental stress is a common problem that affects individuals all over the world. Stress reduces human functionality during routine work and may lead to severe health defects. Early detection of stress is important for preventing diseases and other negative health-related consequences of stress. Several neuroimaging techniques have been utilized to assess mental stress, however, due to its ease of use, robustness, and non-invasiveness, electroencephalography (EEG) is commonly used. This paper aims to fill a knowledge gap by reviewing the different EEG-related deep learning algorithms with a focus on Convolutional Neural Networks (CNNs) and Long Short-Term Memory networks (LSTMs) for the evaluation of mental stress. The review focuses on data representation, individual deep neural network model architectures, hybrid models, and results amongst others. The contributions of the paper address important issues such as data representation and model architectures. Out of all reviewed papers, 67% used CNN, 9% LSTM, and 24% hybrid models. Based on the reviewed literature, we found that dataset size and different representations contributed to the performance of the proposed networks. Raw EEG data produced classification accuracy around 62% while using spectral and topographical representation produced up to 88%. Nevertheless, the roles of generalizability across different deep learning models and individual differences remain key areas of inquiry. The review encourages the exploration of innovative avenues, such as EEG data image representations concurrently with graph convolutional neural networks (GCN), to mitigate the impact of inter-subject variability. This novel approach not only allows us to harmonize structural nuances within the data but also facilitates the integration of temporal dynamics, thereby enabling a more comprehensive assessment of mental stress levels.
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Yara Badr
American University of Sharjah
Usman Tariq
University of Lahore
Fares Al-Shargie
Rutgers, The State University of New Jersey
Neural Computing and Applications
Sapienza University of Rome
United Arab Emirates University
American University of Sharjah
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Badr et al. (Thu,) studied this question.
synapsesocial.com/papers/69d821ff52654bb436d1843e — DOI: https://doi.org/10.1007/s00521-024-09809-5
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