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Task-guided Spatiotemporal Network with Diffusion Augmentation for EEG-based Dementia Diagnosis and MMSE Prediction

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Patients with dementia typically exhibit cognitive impairment, which is routinely assessed using the Mini-Mental State Examination (MMSE). Concurrently, their underlying neurophysiological abnormalities are reflected in Electroencephalography (EEG), providing a basis for joint modeling. However, traditional multi-task approaches suffer from feature entanglement, which leads to inter-task interference when handling heterogeneous objectives.To address this challenge, we propose a task-guided spatiotemporal network (TGSN) with diffusion augmentation for EEG-based dementia diagnosis and MMSE prediction. Specifically, TGSN integrates a multi-band feature fusion module to capture complementary spectral information from EEG. Meanwhile, a pre-trained data augmentation module utilizing a diffusion process is introduced toincrease sample diversity. To model the complex spatiotemporal patterns of EEG, we propose a gated spatiotemporal attention module that captures long-range spatial dependencies and temporal dynamics. Moreover, we design a task-guided query module to achieve task-specific feature extraction, thereby mitigating task interference. The effectiveness of TGSN is evaluated on the XY02 dataset. Experimental results demonstrate that the proposed network outperforms several state-of-the-art methods, achieving classification accuracies of 97.78\% for Alzheimer's Disease (AD)/Frontotemporal Dementia (FTD) and 83.93\% for AD/FTD/Vascular Cognitive Impairment (VCI), which exceed the best baselines by 16.39\% and 8.28\%, respectively. In parallel, it reduces the RMSE for MMSE prediction to 1.93 and 2.38, achieving significant error reductions of 1.44 and 1.43 compared to the best baselines. Additionally, validation on the DS004504 dataset demonstrates strong cross-dataset generalization...

Xiaoyu Zheng, Xu Tian, Bin Jiao, Kunbo Cui, Hanhe Lin, Lu Shen, Jin Liu• 2026

Related benchmarks

TaskDatasetResultRank
Dementia DiagnosisDS004504 AD/CN
Accuracy92.01
9
Dementia DiagnosisDS004504 FTD/CN
Accuracy93.35
8
AD/FTD DiagnosisXY02
Accuracy97.78
7
AD/FTD MMSE PredictionXY02
RMSE1.93
7
AD/FTD/VCI DiagnosisXY02
Accuracy83.93
7
AD/FTD/VCI MMSE PredictionXY02
RMSE2.38
7
AD/VCI DiagnosisXY02
Accuracy94.59
7
AD/VCI MMSE PredictionXY02
RMSE2.13
7
Dementia DiagnosisDS004504 AD/FTD
Accuracy93.08
7
FTD/VCI DiagnosisXY02
Accuracy92.28
7
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