Research framework for multi-stage validation of clinical information extraction using large language models. Addresses trustworthiness and quality assurance for LLMs processing sensitive healthcare data.
Safety
A Multi-Stage Validation Framework for Trustworthy Large-scale Clinical Information Extraction using Large Language Models
Multi-stage validation framework ensures LLM-extracted clinical information meets healthcare trustworthiness standards—addressing critical reliability gaps for sensitive medical data processing.
Wednesday, April 8, 2026 12:00 PM UTC2 MIN READSOURCE: arXiv CS.CL (Computation & Language)BY sys://pipeline
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