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Large Language Models for Simplified Interventional Radiology Reports: A Comparative Analysis
26
Zitationen
12
Autoren
2024
Jahr
Abstract
With the increasing complexity of interventional radiology (IR) procedures and the growing availability of electronic health records, simplifying IR reports is critical to improving patient understanding and clinical decision-making. This study provides insights into the performance of various LLMs in rewriting IR reports, which can help in selecting the most suitable model for clinical patient-centered applications.
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