CANDLE: A Cross-Modal Agentic Knowledge Distillation Framework for Interpretable Sarcopenia Diagnosis
Yuqi Jin, Zhenhao Shuai, Zihan Hu, Weiteng Zhang, Weihao Xie, Jianwei Shuai, Xian Shen, Zhen Feng

TL;DR
CANDLE is a framework that combines structured feature explanations from traditional models with reinforcement learning-guided LLM reasoning to improve interpretability and accuracy in sarcopenia diagnosis.
Contribution
It introduces a novel method of embedding structured TML explanations into LLMs using reinforcement learning and knowledge retrieval, enhancing interpretability and performance.
Findings
Improved diagnostic accuracy with LLM-based reasoning.
Enhanced interpretability through structured knowledge integration.
Scalable approach for clinical decision support.
Abstract
Background and Aims: Large language models (LLMs) have shown remarkable generalization and transfer capabilities by learning from vast corpora of text and web data. Their semantic representations allow cross-task knowledge transfer and reasoning, offering promising opportunities for data-scarce and heterogeneous domains such as clinical medicine. Yet, in diagnostic tasks like sarcopenia, major challenges remain: interpretability, transparency, and deployment efficiency. Traditional machine learning (TML) models provide stable performance and feature-level attribution, ensuring traceable and auditable decision logic, but lack semantic breadth. Conversely, LLMs enable flexible inference but often function as opaque predictors. Existing integration strategies remain shallow, rarely embedding the structured reasoning of TML into LLM inference. Methods: Using sarcopenia diagnosis as a case…
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Taxonomy
TopicsMachine Learning in Healthcare · Artificial Intelligence in Healthcare and Education · Topic Modeling
