Evidence-Grounded LLM Validation of MIMIC-IV ICD Labels.

Journal: Studies in health technology and informatics
Published Date:

Abstract

Automatically assigning ICD-10 diagnosis codes from discharge summaries is a central multi-label task in clinical NLP, yet widely used benchmarks such as MIMIC contain substantial label noise: many charted codes are not text-grounded in the note or are mis-specified. We present an LLM-based evidence-validation workflow that examines each (note, code) pair and: (1) determines whether the code is supported by the note, (2) extracts the corresponding evidence quote(s) from the note, and (3) when evidence exists but a more appropriate code can be inferred, suggests an evidence-based replacement. Applying this pipeline to 10,000 notes from the MIMIC-IV corpus, we derive two refined label sets: Evidence-Verified (EV), retaining only text-supported codes, and Evidence-Replaced (ER), substituting some existing codes in EV with better evidence-supported alternatives. We replicate six state-of-the-art ICD coding models (PLM-ICD, LAAT, MultiResCNN, CAML, Bi-GRU, CNN) under identical settings as Edin et al. and evaluate micro-precision, recall, and F1 using paired bootstrap resampling. Results show that removing unsupported charted codes from MIMIC substantially improves model performance and yields more trustworthy benchmarks for automated medical coding.

Authors

Keywords

No keywords available for this article.