HoloDx: Knowledge- and Data-Driven Multimodal Diagnosis of Alzheimer's Disease
Journal:
arXiv
Published Date:
Apr 27, 2025
Abstract
Accurate diagnosis of Alzheimer's disease (AD) requires effectively
integrating multimodal data and clinical expertise. However, existing methods
often struggle to fully utilize multimodal information and lack structured
mechanisms to incorporate dynamic domain knowledge. To address these
limitations, we propose HoloDx, a knowledge- and data-driven framework that
enhances AD diagnosis by aligning domain knowledge with multimodal clinical
data. HoloDx incorporates a knowledge injection module with a knowledge-aware
gated cross-attention, allowing the model to dynamically integrate
domain-specific insights from both large language models (LLMs) and clinical
expertise. Also, a memory injection module with a designed prototypical memory
attention enables the model to retain and retrieve subject-specific
information, ensuring consistency in decision-making. By jointly leveraging
these mechanisms, HoloDx enhances interpretability, improves robustness, and
effectively aligns prior knowledge with current subject data. Evaluations on
five AD datasets demonstrate that HoloDx outperforms state-of-the-art methods,
achieving superior diagnostic accuracy and strong generalization across diverse
cohorts. The source code will be released upon publication acceptance.