Autores
Alarcón Paredes Antonio
Título Fear Detection Using Electroencephalogram and Artificial Intelligence: A Systematic Review
Tipo Revista
Sub-tipo JCR
Descripción Brain Sciences
Resumen Background/Objectives: Fear detection through EEG signals has gained increasing attention due to its applications in affective computing, mental health monitoring, and intelligent safety systems. This systematic review aimed to identify the most effective methods, algorithms, and configurations reported in the literature for detecting fear from EEG signals using artificial intelligence (AI). Methods: Following the PRISMA 2020 methodology, a structured search was conducted using the string ("fear detection" AND "artificial intelligence" OR "machine learning" AND NOT "fnirs OR mri OR ct OR pet OR image"). After applying inclusion and exclusion criteria, 11 relevant studies were selected. Results: The review examined key methodological aspects such as algorithms (e.g., SVM, CNN, Decision Trees), EEG devices (Emotiv, Biosemi), experimental paradigms (videos, interactive games), dominant brainwave bands (beta, gamma, alpha), and electrode placement. Non-linear models, particularly when combined with immersive stimulation, achieved the highest classification accuracy (up to 92%). Beta and gamma frequencies were consistently associated with fear states, while frontotemporal electrode positioning and proprietary datasets further enhanced model performance. Conclusions: EEG-based fear detection using AI demonstrates high potential and rapid growth, offering significant interdisciplinary applications in healthcare, safety systems, and affective computing.
Observaciones DOI 10.3390/brainsci15080815
Lugar Basel
País Suiza
No. de páginas Article number 815
Vol. / Cap. v. 15 no. 8
Inicio 2025-07-29
Fin
ISBN/ISSN