A Multi-Pass Large Language Model Framework for Precise and Efficient Radiology Report Error Detection
Songsoo Kim, Seungtae Lee, See Young Lee, Joonho Kim, Keechan Kan, Dukyong Yoon

TL;DR
This study introduces a three-pass large language model framework that significantly improves the precision and cost-efficiency of radiology report error detection without compromising detection performance.
Contribution
The paper presents a novel multi-pass LLM framework that enhances PPV and reduces operational costs in radiology report proofreading compared to baseline methods.
Findings
PPV increased from 0.063 to 0.159 with the three-pass framework
Operational costs decreased by up to 42.6% using the new framework
Detection performance remained stable across different datasets
Abstract
Background: The positive predictive value (PPV) of large language model (LLM)-based proofreading for radiology reports is limited due to the low error prevalence. Purpose: To assess whether a three-pass LLM framework enhances PPV and reduces operational costs compared with baseline approaches. Materials and Methods: A retrospective analysis was performed on 1,000 consecutive radiology reports (250 each: radiography, ultrasonography, CT, MRI) from the MIMIC-III database. Two external datasets (CheXpert and Open-i) were validation sets. Three LLM frameworks were tested: (1) single-prompt detector; (2) extractor plus detector; and (3) extractor, detector, and false-positive verifier. Precision was measured by PPV and absolute true positive rate (aTPR). Efficiency was calculated from model inference charges and reviewer remuneration. Statistical significance was tested using cluster…
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Taxonomy
TopicsTopic Modeling · Radiology practices and education · Natural Language Processing Techniques
