AD-CARE: A Guideline-grounded, Modality-agnostic LLM Agent for Real-world Alzheimer's Disease Diagnosis with Multi-cohort Assessment, Fairness Analysis, and Reader Study
Wenlong Hou, Sheng Bi, Guangqian Yang, Lihao Liu, Ye Du, Hanxiao Xue, Juncheng Wang, Yuxiang Feng, Yue Xun, Nanxi Yu, Ning Mao, Mo Yang, Yi Wah Eva Cheung, Ling Long, Kay Chen Tan, Lequan Yu, Xiaomeng Ma, Shaozhen Yan, Shujun Wang

TL;DR
AD-CARE is a versatile, guideline-based LLM agent that enhances Alzheimer's diagnosis accuracy and fairness across diverse cohorts by integrating multimodal data and clinical guidelines, improving clinical decision-making efficiency.
Contribution
This work introduces AD-CARE, a novel modality-agnostic LLM framework that performs comprehensive, guideline-grounded AD diagnosis without imputing missing data, outperforming baseline methods across multiple cohorts.
Findings
Achieved 84.9% diagnostic accuracy across six cohorts.
Reduced racial and age-related disparities in performance.
Improved neurologist and radiologist decision accuracy and speed.
Abstract
Alzheimer's disease (AD) is a growing global health challenge as populations age, and timely, accurate diagnosis is essential to reduce individual and societal burden. However, real-world AD assessment is hampered by incomplete, heterogeneous multimodal data and variability across sites and patient demographics. Although large language models (LLMs) have shown promise in biomedicine, their use in AD has largely been confined to answering narrow, disease-specific questions rather than generating comprehensive diagnostic reports that support clinical decision-making. Here we expand LLM capabilities for clinical decision support by introducing AD-CARE, a modality-agnostic agent that performs guideline-grounded diagnostic assessment from incomplete, heterogeneous inputs without imputing missing modalities. By dynamically orchestrating specialized diagnostic tools and embedding clinical…
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Taxonomy
TopicsMachine Learning in Healthcare · Artificial Intelligence in Healthcare and Education · Biomedical Text Mining and Ontologies
