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Updated: Jun 15, 2026

A Metadata Extraction Approach for Clinical Case Reports to Enable Advanced Understanding of Biomedical Concepts
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Scientific Evidence for Clinical Text Summarization Using Large Language Models: Scoping Review.

Lydie Bednarczyk1, Daniel Reichenpfader2,3, Christophe Gaudet-Blavignac1

  • 1Division of Medical Information Sciences, University Hospital of Geneva, Geneva, Switzerland.

Journal of Medical Internet Research
|May 15, 2025
PubMed
Summary
This summary is machine-generated.

Large language models show promise for summarizing clinical text, but current research is limited in scope and evaluation rigor. More robust frameworks are needed for trustworthy clinical applications.

Keywords:
artificial intelligenceelectronic health recordshealth carelarge language modelsnatural language processingscoping reviewsummarizationtranslational research

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Area of Science:

  • Medical Informatics
  • Artificial Intelligence in Healthcare
  • Natural Language Processing

Background:

  • Clinicians face information overload from electronic health records.
  • Automatic summarization using large language models (LLMs) is a growing area of research.
  • A structured overview of LLM-based clinical text summarization is needed.

Purpose of the Study:

  • To review the state of the art in clinical text summarization using LLMs.
  • To evaluate the evidence level of existing research.
  • To assess the clinical applicability of current summarization findings.

Main Methods:

  • Scoping review following PRISMA-ScR guidelines.
  • Searched 5 databases for literature from January 2019 to June 2024.
  • Included studies on transformer-based models for clinical text summarization using free-text data.

Main Results:

  • 30 studies analyzed, predominantly retrospective observational designs with real patient data.
  • Research focus is narrow, often on radiology reports from intensive care units, primarily in the US.
  • Summarization methods are mainly abstractive, with inconsistent reporting and heterogeneous evaluation frameworks; external validation and safety analyses are rare.

Conclusions:

  • Significant barriers exist for translating current research into clinical practice.
  • The field is exploratory, with limited scope and insufficient evaluation of performance and clinical impact.
  • Advancement requires broader scope, robust evaluation, and focus on real-world applicability, safety, and fairness.