Multimodal Learning 相关度: 9/10

MRC-GAT: A Meta-Relational Copula-Based Graph Attention Network for Interpretable Multimodal Alzheimer's Disease Diagnosis

Fatemeh Khalvandi, Saadat Izadi, Abdolah Chalechale
arXiv: 2602.15740v1 发布: 2026-02-17 更新: 2026-02-17

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.

标签

阿尔茨海默病 多模态学习 图注意力网络 元学习 医学诊断

arXiv 分类

cs.LG cs.AI q-bio.QM