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Brain Harmony: A Multimodal Foundation Model Unifying Morphology and Function into 1D Tokens

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We present Brain Harmony (BrainHarmonix), the first multimodal brain foundation model that unifies structural morphology and functional dynamics into compact 1D token representations. The model was pretrained on two of the largest neuroimaging datasets to date, encompassing 64,594 T1-weighted structural MRI 3D volumes (~ 14 million images) and 70,933 functional MRI (fMRI) time series. BrainHarmonix is grounded in two foundational neuroscience principles: structure complements function - structural and functional modalities offer distinct yet synergistic insights into brain organization; function follows structure - brain functional dynamics are shaped by cortical morphology. The modular pretraining process involves single-modality training with geometric pre-alignment followed by modality fusion through shared brain hub tokens. Notably, our dynamics encoder uniquely handles fMRI time series with heterogeneous repetition times (TRs), addressing a major limitation in existing models. BrainHarmonix is also the first to deeply compress high-dimensional neuroimaging signals into unified, continuous 1D tokens, forming a compact latent space of the human brain. BrainHarmonix achieves strong generalization across diverse downstream tasks, including neurodevelopmental and neurodegenerative disorder classification and cognition prediction - consistently outperforming previous approaches. Our models - pretrained on 8 H100 GPUs - aim to catalyze a new era of AI-driven neuroscience powered by large-scale multimodal neuroimaging.

Zijian Dong, Ruilin Li, Joanna Su Xian Chong, Niousha Dehestani, Yinghui Teng, Yi Lin, Zhizhou Li, Yichi Zhang, Yapei Xie, Leon Qi Rong Ooi, B.T. Thomas Yeo, Juan Helen Zhou• 2025

Related benchmarks

TaskDatasetResultRank
Binary classification of normal versus abnormal EEG signalsTUAB
Balanced Accuracy77.94
49
EEG ClassificationCHB-MIT
B-ACC56.08
30
Brain Age PredictionCamCAN MEG
MAE8.73
10
ADHD DiagnosisADHD-200 fMRI
Balanced Accuracy (BAC)62.78
10
Age Group ClassificationLEMON fMRI
BAC63.11
10
Age Group ClassificationLEMON EEG
BAC77.95
10
Alzheimer's disease diagnosisADNI fMRI
Balanced Accuracy62.16
10
Brain Age PredictionCamCAN fMRI
MAE14.81
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Emotion RecognitionSEED-V EEG
Kappa7.71
10
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