Code Like Humans: A Multi-Agent Solution for Medical Coding
About
In medical coding, experts map unstructured clinical notes to alphanumeric codes for diagnoses and procedures. We introduce Code Like Humans: a new agentic framework for medical coding with large language models. It implements official coding guidelines for human experts, and it is the first solution that can support the full ICD-10 coding system (+70K labels). It achieves the best performance to date on rare diagnosis codes (fine-tuned discriminative classifiers retain an advantage for high-frequency codes, to which they are limited). Towards future work, we also contribute an analysis of system performance and identify its `blind spots' (codes that are systematically undercoded).
Andreas Motzfeldt, Joakim Edin, Casper L. Christensen, Christian Hardmeier, Lars Maal{\o}e, Anna Rogers• 2025
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Medical Coding | ACI (non-PHI) | Recall56 | 7 | |
| Full code system evaluation | Corti proprietary AMB | Recall51.1 | 5 | |
| Full code system evaluation | Corti proprietary ED | Recall26.5 | 5 | |
| Medical Coding | MDACE | Recall30.7 | 5 |
Showing 4 of 4 rows