CAST reconstructs cross-subject cortical iEEG from scalp EEG using a two-stage temporal encoder and channel-aware decoder, achieving peak correlations of 0.864 in sensorimotor areas and mean 0.545 with channel selection on 1282 channels.
Bridging scalp and intracranial EEG in BCI via pretrained neural representations and geometric constraint embedding
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Electroencephalography (EEG) has become one of the key modalities underpinning brain-computer interfaces (BCIs) due to its high temporal resolution, rapid responsiveness, non-invasiveness, low cost, and portability. However, EEG signals are substantially inferior to intracranial EEG (iEEG) in signal-to-noise ratio and local spatial resolution, whereas iEEG suffers from extremely limited clinical accessibility owing to its invasive nature, hindering widespread application. To address this challenge, this study proposes a unified data-and prior knowledge-driven framework for EEG-iEEG representational enhancement. Guided by the principle that "geometric structure dictates function", the framework maps static cortical anatomy onto dynamic constraints governing neural signal propagation and integrates general-purpose neural representations extracted by a pre-trained large EEG model to explicitly model signal transmission through the brain. Enhanced EEG signals are then synthesized via a multidimensional representation diffusion process. Numerous experimental results demonstrate that the generated enhanced EEG signals effectively recover the neural activity patterns lost during propagation through the brain. This finding indicates that the performance ceiling of BCIs is constrained not only by acquisition hardware but also by the depth to which the generative model resolves the mechanisms of neural signal propagation. Collectively, the proposed framework provides a viable pathway toward acquiring high-fidelity neural signals at low cost.
fields
eess.SP 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
citing papers explorer
-
Cross-Subject Intracranial EEG Reconstruction from Scalp Recordings Using Multi-Scale Cross-Attention Transformers
CAST reconstructs cross-subject cortical iEEG from scalp EEG using a two-stage temporal encoder and channel-aware decoder, achieving peak correlations of 0.864 in sensorimotor areas and mean 0.545 with channel selection on 1282 channels.