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[CS.AI] AT-Attn: Temporal-Aware Cross-Attention for Alzheimer's Diagnosis

Published at: 2026-07-10 22:00 Last updated: 2026-07-13 08:26
#algorithm #AI #Machine Learning

In longitudinal Alzheimer's disease (AD) diagnosis support, clinical and imaging information is often collected at irregular visits. Integrating these multimodal observations may improve diagnostic assessment, but naive fusion can degrade performance when MRI is noisy or intermittently unavailable.

We propose AT-Attn, a temporal-aware multimodal framework that combines Change-and-Time encoding, time-biased asymmetric cross-attention, and gated fusion to integrate MRI with longitudinal clinical information.

We evaluate AT-Attn on an MRI-retained ADNI cohort of 1,520 patients using structural MRI, six cognitive-scale trajectories, and seven static clinical variables under patient-level five-fold cross-validation.

The main asymmetric AT-Attn model achieves accuracy 0.719±0.024, macro F1 0.721±0.023, ROC-AUC 0.873±0.013, and PR-AUC 0.783±0.018, outperforming unimodal and naive multimodal fusion baselines while remaining competitive with strong tabular baselines.

These results suggest that a temporal-aware and constrained fusion strategy can help structural MRI contribute clinically relevant complementary information for patient-level AD diagnosis support.

Blogger's Review: The AT-Attn framework significantly enhances the diagnostic accuracy for Alzheimer's disease through its temporal-aware cross-attention mechanism, especially in the face of irregular data. Its innovative gated fusion approach provides new insights for multimodal data integration, warranting further exploration in other clinical applications.

Original Source: https://arxiv.org/abs/2607.07091

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