Litcius/Paper detail

Current and future state of evaluation of large language models for medical summarization tasks

Emma Croxford, Yanjun Gao, Nicholas Pellegrino, Karen Wong, Graham Wills, Elliot First, Frank Liao, Cherodeep Goswami, Brian W. Patterson, Majid Afshar

2025npj Health Systems53 citationsDOIOpen Access PDF

Abstract

Large Language Models have expanded the potential for clinical Natural Language Generation (NLG), presenting new opportunities to manage the vast amounts of medical text. However, their use in such high-stakes environments necessitate robust evaluation workflows. In this review, we investigated the current landscape of evaluation metrics for NLG in healthcare and proposed a future direction to address the resource constraints of expert human evaluation while balancing alignment with human judgments.

Topics & Concepts

Automatic summarizationNatural language generationWorkflowComputer scienceUnified Medical Language SystemData scienceState (computer science)Resource (disambiguation)Natural languageArtificial intelligenceManagement scienceEngineeringProgramming languageDatabaseComputer networkTopic ModelingNatural Language Processing TechniquesMultimodal Machine Learning Applications