Jiyang Zheng
2026
MedDCR: Learning to Design Agentic Workflows for Medical Coding
Jiyang Zheng | Islam Nassar | Thanh Vu | Xu Zhong | Yang Lin | Tongliang Liu | Long Duong | Yuan-Fang Li
Findings of the Association for Computational Linguistics: ACL 2026
Jiyang Zheng | Islam Nassar | Thanh Vu | Xu Zhong | Yang Lin | Tongliang Liu | Long Duong | Yuan-Fang Li
Findings of the Association for Computational Linguistics: ACL 2026
Medical coding converts free-text clinical notes into standardized diagnostic and procedural codes, which are essential for billing, hospital operations, and medical research. Unlike ordinary text classification, it requires multi-step reasoning: extracting diagnostic concepts, applying guideline constraints, mapping to hierarchical codebooks, and ensuring cross-document consistency. Recent advances leverage agentic LLMs, but most rely on rigid, manually crafted workflows that fail to capture the nuance and variability of real-world documentation, leaving open the question of how to systematically learn effective workflows. We present MedDCR, a closed-loop framework that treats workflow design as a learning problem. A Designer proposes workflows, a Coder executes them, and a Reflector evaluates predictions and provides constructive feedback, while a memory archive preserves prior designs for reuse and iterative refinement. On benchmark datasets, MedDCR outperforms state-of-the-art baselines and produces interpretable, adaptable workflows that better reflect real coding practice, improving both the reliability and trustworthiness of automated systems.