LUMINA: Laplacian-Unifying Mechanism for Interpretable Neurodevelopmental Analysis via Quad-Stream GCN
arXiv cs.LG / 3/17/2026
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Key Points
- LUMINA presents a Laplacian-Unifying Mechanism with a Quad-Stream Graph Convolutional Network that uses bipolar ReLU and dual-spectrum Laplacian filtering to preserve diverse neural dynamics in fMRI data.
- This design aims to overcome the smoothing tradeoff in traditional GCNs that can blur discriminative patterns crucial for diagnosing neurodevelopmental disorders.
- In 5-fold cross-validation on ADHD200 (N=144) and ABIDE (N=579), LUMINA achieved 84.66% and 88.41% accuracy, respectively, outperforming existing models.
- The work emphasizes interpretability in neurodevelopmental analysis and demonstrates potential for AI-assisted diagnosis of ADHD and ASD.
- By introducing a new modeling mechanism for brain-graph analysis, the study may influence future research and clinical tool development in neuroimaging.
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