Transforming "Black Box" deep learning into transparent, auditable "Glass Boxes".
We map 4D fMRI predictions back to 1D EEG physiology for total clinical verification.
An Open Science Initiative at Comenius
University.
State-of-the-art Generative AI models (GANs, Diffusion) are mathematically impressive but clinically opaque. In a "High-Risk" medical setting (EU AI Act), you cannot trust a model you cannot audit.
Input data goes in, prediction comes out. No reasoning.
Full traceability from Voxel to EEG Frequency Band.
We use PyTorch and Captum to wrap our cGANs in a safety layer that validates biological plausibility.
Standard High-Density EEG serves as the ground truth physiological signal.
The model generates a candidate fMRI volume based on the input EEG and anatomical priors.
IntegratedGradients trace the prediction back to the source. If the source is muscle noise (Gamma), the prediction is rejected.
Comenius University Bratislava
4th Year Medical Student. Focus: Sleep Medicine, Neurology, and EEG biomarkers.
Technical Co-Founder
Seeking a Deep Learning Engineer (GANs/Computer Vision) to lead our computational pipeline.