AI RESEARCH

Conformal Prediction for Risk-Controlled Medical Entity Extraction Across Clinical Domains

arXiv CS.CL

ArXi:2603.00924v2 Announce Type: replace Large Language Models (LLMs) are increasingly used for medical entity extraction, yet their confidence scores are often miscalibrated, limiting safe deployment in clinical settings. We present a conformal prediction framework that provides finite-sample coverage guarantees for LLM-based extraction across two clinical domains. First, we extract structured entities from 1,000 FDA drug labels across eight sections using GPT-4.1, verified via FactScore-based atomic statement evaluation (97.7\% accuracy over 128,906 entities.