PromptDx: Differentiable Prompt Tuning for Multimodal In-Context Alzheimer's Diagnosis
Lujia Zhong,Yihao Xia,Shuo Huang,Jianwei Zhang,Yonggang Shi

TL;DR
PromptDx introduces a differentiable prompt tuning approach that enhances multimodal in-context learning for Alzheimer's diagnosis, enabling end-to-end training and improved data efficiency.
Contribution
It proposes a novel differentiable prompt tuning mechanism that integrates multimodal data with a pre-trained ICL engine for improved diagnosis accuracy.
Findings
Outperforms traditional parametric models on ADNI dataset.
Achieves high performance with only 1% context samples.
Demonstrates generalizability across six tabular datasets.
Abstract
Deep learning models in medical imaging typically operate as parametric memory, diagnosing patients by recalling fixed knowledge learned during training. This contrasts sharply with clinical practice, where physicians employ analogical reasoning to diagnose new cases by referencing similar records from past exemplars. While In-Context Learning (ICL) frameworks such as Tabular Prior-Fitted Networks (TabPFN) offer a promising diagnosis-by-reference paradigm, they are designed with tabular-specific inductive priors and rely on non-differentiable preprocessing pipelines, leading to manifold mismatch and gradient fracture when applied to heterogeneous multimodal data. To address these limitations, we propose PromptDx, a novel diagnosis-by-reference framework that leverages a pre-trained TabPFN as an ICL engine while enabling seamless integration with multimodal representations. Our core…
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