Joint Imaging-ROI Representation Learning via Cross-View Contrastive Alignment for Brain Disorder Classification
Wei Liang, Lifang He

TL;DR
This paper introduces a unified contrastive learning framework that jointly models global brain images and ROI-based graphs, improving brain disorder classification by leveraging their complementarity.
Contribution
It proposes a novel cross-view contrastive approach for joint imaging and ROI representation learning, enabling systematic evaluation and improved classification performance.
Findings
Joint learning enhances classification accuracy over individual representations.
Imaging and ROI branches focus on distinct discriminative patterns.
The method demonstrates consistent improvements across multiple datasets.
Abstract
Brain imaging classification is commonly approached from two perspectives: modeling the full image volume to capture global anatomical context, or constructing ROI-based graphs to encode localized and topological interactions. Although both representations have demonstrated independent efficacy, their relative contributions and potential complementarity remain insufficiently understood. Existing fusion approaches are typically task-specific and do not enable controlled evaluation of each representation under consistent training settings. To address this gap, we propose a unified cross-view contrastive framework for joint imaging-ROI representation learning. Our method learns subject-level global (imaging) and local (ROI-graph) embeddings and aligns them in a shared latent space using a bidirectional contrastive objective, encouraging representations from the same subject to converge…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Functional Brain Connectivity Studies · Domain Adaptation and Few-Shot Learning
