CVSPNCJul 16, 2024

CATD: Unified Representation Learning for EEG-to-fMRI Cross-Modal Generation

arXiv:2408.00777v322 citationsh-index: 14
Originality Highly original
AI Analysis

This addresses the challenge of multi-modal neuroimaging integration for medical applications like Parkinson's disease prediction, though it appears incremental as it builds on existing cross-modal synthesis methods.

The paper tackled the problem of generating fMRI BOLD signals from EEG signals to overcome the high costs and limited availability of certain neuroimaging modalities, resulting in a 9.13% improvement in brain activity state prediction accuracy (reaching 69.8%) and a 4.10% enhancement in diagnostic accuracy for brain disorders (reaching 99.55%).

Multi-modal neuroimaging analysis is crucial for a comprehensive understanding of brain function and pathology, as it allows for the integration of different imaging techniques, thus overcoming the limitations of individual modalities. However, the high costs and limited availability of certain modalities pose significant challenges. To address these issues, this paper proposes the Condition-Aligned Temporal Diffusion (CATD) framework for end-to-end cross-modal synthesis of neuroimaging, enabling the generation of functional magnetic resonance imaging (fMRI)-detected Blood Oxygen Level Dependent (BOLD) signals from more accessible Electroencephalography (EEG) signals. By constructing Conditionally Aligned Block (CAB), heterogeneous neuroimages are aligned into a latent space, achieving a unified representation that provides the foundation for cross-modal transformation in neuroimaging. The combination with the constructed Dynamic Time-Frequency Segmentation (DTFS) module also enables the use of EEG signals to improve the temporal resolution of BOLD signals, thus augmenting the capture of the dynamic details of the brain. Experimental validation demonstrates that the framework improves the accuracy of brain activity state prediction by 9.13% (reaching 69.8%), enhances the diagnostic accuracy of brain disorders by 4.10% (reaching 99.55%), effectively identifies abnormal brain regions, enhancing the temporal resolution of BOLD signals. The proposed framework establishes a new paradigm for cross-modal synthesis of neuroimaging by unifying heterogeneous neuroimaging data into a latent representation space, showing promise in medical applications such as improving Parkinson's disease prediction and identifying abnormal brain regions.

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