EEG-MACS: Manifold Attention and Confidence Stratification for EEG-based Cross-Center Brain Disease Diagnosis under Unreliable Annotations
Zhenxi Song, Ruihan Qin, Huixia Ren, Zhen Liang, Yi Guo, Min Zhang, Zhiguo Zhang

TL;DR
This paper introduces MACS, a novel framework leveraging manifold attention and confidence stratification to improve EEG-based diagnosis of neurodegenerative diseases across multiple centers with unreliable annotations.
Contribution
The paper presents a transferable EEG diagnosis framework combining data augmentation, feature enhancement, and confidence-based stratification to handle cross-center heterogeneity and annotation unreliability.
Findings
Superior performance on cross-center EEG datasets
Effective handling of unreliable annotations
Improved diagnosis accuracy for neurodegenerative disorders
Abstract
Cross-center data heterogeneity and annotation unreliability significantly challenge the intelligent diagnosis of diseases using brain signals. A notable example is the EEG-based diagnosis of neurodegenerative diseases, which features subtler abnormal neural dynamics typically observed in small-group settings. To advance this area, in this work, we introduce a transferable framework employing Manifold Attention and Confidence Stratification (MACS) to diagnose neurodegenerative disorders based on EEG signals sourced from four centers with unreliable annotations. The MACS framework's effectiveness stems from these features: 1) The Augmentor generates various EEG-represented brain variants to enrich the data space; 2) The Switcher enhances the feature space for trusted samples and reduces overfitting on incorrectly labeled samples; 3) The Encoder uses the Riemannian manifold and Euclidean…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces
