MRC-GAT: A Meta-Relational Copula-Based Graph Attention Network for Interpretable Multimodal Alzheimer's Disease Diagnosis
AI 摘要
MRC-GAT模型通过结合多模态数据和图注意力网络,实现了阿尔茨海默病的高精度诊断。
主要贡献
- 提出Meta-Relational Copula-Based Graph Attention Network (MRC-GAT) 模型
- 引入copula-based相似性对齐,整合多模态特征
- 通过关系注意力机制提升诊断性能
- 在TADPOLE和NACC数据集上达到state-of-the-art的性能
- 提供疾病诊断各阶段的可解释性
方法论
利用Copula函数对多模态数据进行对齐,并通过多关系图注意力网络进行特征融合与分类,结合元学习策略进行训练。
原文摘要
Alzheimer's disease (AD) is a progressive neurodegenerative condition necessitating early and precise diagnosis to provide prompt clinical management. Given the paramount importance of early diagnosis, recent studies have increasingly focused on computer-aided diagnostic models to enhance precision and reliability. However, most graph-based approaches still rely on fixed structural designs, which restrict their flexibility and limit generalization across heterogeneous patient data. To overcome these limitations, the Meta-Relational Copula-Based Graph Attention Network (MRC-GAT) is proposed as an efficient multimodal model for AD classification tasks. The proposed architecture, copula-based similarity alignment, relational attention, and node fusion are integrated as the core components of episodic meta-learning, such that the multimodal features, including risk factors (RF), Cognitive test scores, and MRI attributes, are first aligned via a copula-based transformation in a common statistical space and then combined by a multi-relational attention mechanism. According to evaluations performed on the TADPOLE and NACC datasets, the MRC-GAT model achieved accuracies of 96.87% and 92.31%, respectively, demonstrating state-of-the-art performance compared to existing diagnostic models. Finally, the proposed model confirms the robustness and applicability of the proposed method by providing interpretability at various stages of disease diagnosis.