Preliminary Electroencephalography-Based Assessment of Anxiety Using Machine Learning: A Pilot Study
Katarzyna Mróz, Kamil Jonak

TL;DR
This pilot study explores using machine learning with EEG to detect anxiety and improve mental health diagnosis and treatment.
Contribution
The study introduces advanced AI models like transformers and VAE-D2GAN for improved EEG-based anxiety detection and real-time monitoring.
Findings
Successive training sessions improve EEG signal classification accuracy.
Personalized and adaptive EEG analysis methods are emphasized for better results.
BCI usability and EEG processing challenges are identified for future improvements.
Abstract
Background: Recent advancements in machine learning (ML) have significantly influenced the analysis of brain signals, particularly electroencephalography (EEG), enhancing the detection of complex neural patterns. ML enables large-scale data processing, offering novel opportunities for diagnosing and treating mental disorders. However, challenges such as data variability, noise, and model interpretability remain significant. This study reviews the current limitations of EEG-based anxiety detection and explores the potential of advanced AI models, including transformers and VAE-D2GAN, to improve diagnostic accuracy and real-time monitoring. Methods: The paper presents the application of ML algorithms, with a focus on convolutional neural networks (CNN) and recurrent neural networks (RNN), in identifying biomarkers of anxiety disorders and predicting therapy responses. Additionally, it…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Heart Rate Variability and Autonomic Control · Functional Brain Connectivity Studies
