Joint Imaging-ROI Representation Learning via Cross-View Contrastive Alignment for Brain Disorder Classification
arXiv cs.AI / 3/12/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- The paper proposes a unified cross-view contrastive framework to jointly learn imaging-level global embeddings and ROI-graph local embeddings, aligning them in a shared latent space.
- It enables controlled evaluation of imaging-only, ROI-only, and joint configurations under a unified training protocol using a bidirectional contrastive objective.
- Experiments on ADHD-200 and ABIDE show that joint learning improves classification performance over either branch alone across multiple backbone choices.
- Interpretability analyses indicate that imaging-based and ROI-based branches capture distinct yet complementary discriminative patterns, supporting the benefit of integrating global and ROI-level information.
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