Cross-modal Causal Intervention for Alzheimer's Disease Prediction
Yutao Jin, Haowen Xiao, Junyong Zhai, Yuxiao Li, Jielei Chu, Fengmao Lv, Yuxiao Li

TL;DR
This paper introduces a novel causal inference framework combining visual and language data to improve Alzheimer's Disease diagnosis, effectively addressing confounders and enhancing classification accuracy.
Contribution
It presents MediAD, a causal intervention model that integrates MRI, clinical, and enriched textual data using LLMs for more reliable AD diagnosis.
Findings
Outperforms existing methods in classification accuracy
Effectively mitigates confounder effects
Demonstrates robustness across evaluation metrics
Abstract
Mild Cognitive Impairment (MCI) serves as a prodromal stage of Alzheimer's Disease (AD), where early identification and intervention can effectively slow the progression to dementia. However, diagnosing AD remains a significant challenge in neurology due to the confounders caused mainly by the selection bias of multi-modal data and the complex relationships between variables. To address these issues, we propose a novel visual-language causality-inspired framework named Cross-modal Causal Intervention with Mediator for Alzheimer's Disease Diagnosis (MediAD) for diagnostic assistance. Our MediAD employs Large Language Models (LLMs) to summarize clinical data under strict templates, therefore enriching textual inputs. The MediAD model utilizes Magnetic Resonance Imaging (MRI), clinical data, and textual data enriched by LLMs to classify participants into Cognitively Normal (CN), MCI, and…
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Taxonomy
TopicsDementia and Cognitive Impairment Research · Machine Learning in Healthcare · Multimodal Machine Learning Applications
