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Brain-MGF: Multimodal Graph Fusion Network for EEG-FMRI Brain Connectivity Analysis Under Psilocybin

Psychedelics, such as psilocybin, reorganise large-scale brain connectivity, yet how these changes are reflected across electrophysiological (electroencephalogram, EEG) and haemodynamic (functional magnetic resonance imaging, fMRI) networks remains unclear. We present Brain-MGF, a multimodal graph fusion network for joint EEG-fMRI connectivity analysis. For each modality, we construct graphs with partial-correlation edges and Pearson-profile node features, and learn subject-level embeddings via graph convolution. An adaptive softmax gate then fuses modalities with samplespecific weights to capture context-dependent contributions. Using the world's largest single-site psilocybin dataset, PsiConnect, BrainMGF distinguishes psilocybin condition from no-psilocybin condition in meditation and rest. Fusion improves over unimodal and nonadaptive variants, achieving 74.0% accuracy and 76.5% F1 score on meditation, and 76.0% accuracy with 85.8% ROC-AUC on rest. UMAP visualisations reveal clearer class separation for fused embeddings. These results indicate that adaptive graph fusion effectively integrates complementary EEG-fMRI information, providing an interpretable framework for characterising psilocybin-induced alterations in large-scale neural organisation.

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Journal
Unknown
Date
2026-04-07
Source
OpenAlex
DOI
10.1109/isbi61048.2026.11515300
PubMed
Unavailable

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