Mentality: A Mamba-based Approach towards Foundation Models for EEG
By: Saarang Panchavati, Corey Arnold, William Speier
Potential Business Impact:
Helps doctors find brain problems from brain waves.
This work explores the potential of foundation models, specifically a Mamba-based selective state space model, for enhancing EEG analysis in neurological disorder diagnosis. EEG, crucial for diagnosing conditions like epilepsy, presents significant challenges due to its noisy, high-dimensional, and nonlinear nature. Traditional machine learning methods have made advances in automating EEG analysis but often fail to capture its complex spatio-temporal dynamics. Recent advances in deep learning, particularly in sequence modeling, offer new avenues for creating more generalized and expressive models capable of handling such complexities. By training a Mamba-based model on a large dataset containing seizure and non-seizure EEG recordings through a self-supervised reconstruction task followed by a seizure detection task, we demonstrate the model's effectiveness, achieving an AUROC of 0.72 on a held-out test set. This approach marks a significant step toward developing large-scale, clinically applicable foundation models for EEG data analysis.
Similar Papers
SAMBA: Toward a Long-Context EEG Foundation Model via Spatial Embedding and Differential Mamba
Machine Learning (CS)
Helps computers understand brain signals better.
One Dimensional CNN ECG Mamba for Multilabel Abnormality Classification in 12 Lead ECG
CV and Pattern Recognition
Finds heart problems from heart signals better.
Epileptic Seizure Detection and Prediction from EEG Data: A Machine Learning Approach with Clinical Validation
Machine Learning (CS)
Predicts seizures before they happen.