LGAINov 26, 2025

MNM : Multi-level Neuroimaging Meta-analysis with Hyperbolic Brain-Text Representations

arXiv:2511.21092v1h-index: 3MICCAI
Originality Highly original
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This work addresses the challenge of aggregating neuroimaging data across studies for more reliable pattern identification, offering an interpretable approach for neuroscience research.

The paper tackles the small sample size problem in neuroimaging by proposing a meta-analysis framework that uses hyperbolic geometry to align brain activation maps with research article text, achieving improved performance over baselines.

Various neuroimaging studies suffer from small sample size problem which often limit their reliability. Meta-analysis addresses this challenge by aggregating findings from different studies to identify consistent patterns of brain activity. However, traditional approaches based on keyword retrieval or linear mappings often overlook the rich hierarchical structure in the brain. In this work, we propose a novel framework that leverages hyperbolic geometry to bridge the gap between neuroscience literature and brain activation maps. By embedding text from research articles and corresponding brain images into a shared hyperbolic space via the Lorentz model, our method captures both semantic similarity and hierarchical organization inherent in neuroimaging data. In the hyperbolic space, our method performs multi-level neuroimaging meta-analysis (MNM) by 1) aligning brain and text embeddings for semantic correspondence, 2) guiding hierarchy between text and brain activations, and 3) preserving the hierarchical relationships within brain activation patterns. Experimental results demonstrate that our model outperforms baselines, offering a robust and interpretable paradigm of multi-level neuroimaging meta-analysis via hyperbolic brain-text representation.

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