A gated fusion of graph attention networks on semantic, dependency, and co-occurrence graphs from speech achieves 90% accuracy for Alzheimer's detection on the ADReSSo dataset.
Gated Multi-Graph Fusion via Graph Attention Networks for Alzheimer's Disease Detection
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abstract
Spontaneous speech is a vital non-invasive biomarker for Alzheimer's Disease (AD), yet many systems overlook non-linear structural disruptions and clinical heterogeneity in pathological language. We propose a Multi-View Gated Graph Attention Network that transcribes audio via Automatic Speech Recognition (ASR) to construct semantic, dependency, and co-occurrence graphs, characterizing speech through a "content-structure-flow" framework. Notably, the co-occurrence graph leverages Pointwise Mutual Information (PMI) from a normative corpus to quantify narrative logic and linguistic deviation. To address symptomatic diversity, an adaptive gated fusion mechanism dynamically integrates these views. Evaluated on the ADReSSo dataset, our model achieves 90.00% accuracy. Ablation results confirm that the PMI-based graph and heterogeneity-aware gating are essential for robust classification across diverse clinical populations. Our source code is publicly available at https://github.com/opeacc/AD.
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cs.CL 1years
2026 1verdicts
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Gated Multi-Graph Fusion via Graph Attention Networks for Alzheimer's Disease Detection
A gated fusion of graph attention networks on semantic, dependency, and co-occurrence graphs from speech achieves 90% accuracy for Alzheimer's detection on the ADReSSo dataset.