ESMO guidance on the use of Large Language Models in Clinical Practice (ELCAP)

  • Evelyn Yi Ting Wong
  • , Loic Verlingue
  • , Mihaela Aldea
  • , Maria Alice Franzoi
  • , Renato Umeton
  • , Susan Halabi
  • , Nadia Harbeck
  • , Alice Indini
  • , Arsela Prelaj
  • , Emanuela Romano
  • , Elizabeth Smyth
  • , Iain Beehuat Tan
  • , Antonis Valachis
  • , Julien Vibert
  • , Isabella C Wiest
  • , Yi-Hsin Yang
  • , Stephen Gilbert
  • , George Kapetanakis
  • , George Pentheroudakis
  • , Miriam Koopman
  • Jakob Nikolas Kather*
*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

Abstract

BACKGROUND: Large language models (LLMs) are rapidly being integrated into health care, with substantial implications for oncology practice. The European Society for Medical Oncology (ESMO) developed the ESMO guidance on the use of Large Language Models in Clinical Practice (ELCAP) to provide a structured framework and basic guidance for their safe and effective application in oncology. PATIENTS AND METHODS: Between November 2024 and February 2025, a multidisciplinary group of 20 experts convened under the ESMO Real World Data and Digital Health Task Force. Using literature review and a Delphi consensus process, the panel defined three categories of LLM use in oncology: type 1 (patient-facing applications), type 2 [health care professional (HCP)-facing applications], and type 3 (background institutional systems). Consensus statements were developed for each type to provide basic practical guidance. RESULTS: ELCAP highlights opportunities such as improved patient education and symptom management, streamlined clinical workflows, and enhanced data processing. At the same time, it addresses challenges including data privacy, algorithmic bias, regulatory compliance, and the risk of unsupervised use. The framework emphasises human oversight, protection of patient privacy, and alignment with clinical and ethical standards. Patient-facing tools should complement, not replace, professional advice and should be embedded in supervised care pathways. HCP-facing and background systems may improve efficiency and decision support but require systematic validation, transparency, and continuous monitoring. CONCLUSIONS: ELCAP provides a three-tier framework and basic practical guidance for LLM use in oncology. ESMO supports efforts to use this framework to improve patient care, but warns against unsupervised or unvalidated use.

Original languageEnglish
Pages (from-to)1447-1457
Number of pages11
JournalAnnals of oncology : official journal of the European Society for Medical Oncology
Volume36
Issue number12
Early online date18 Oct 2025
DOIs
Publication statusPublished - Dec 2025

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