Expert evaluation of large language models for clinical dialogue summarization

  • David Fraile Navarro
  • , Enrico Coiera
  • , Thomas W. Hambly
  • , Zoe Triplett
  • , Nahyan Asif
  • , Anindya Susanto
  • , Anamika Chowdhury
  • , Amaya Azcoaga Lorenzo
  • , Mark Dras
  • , Shlomo Berkovsky

Research output: Contribution to journalArticlepeer-review

19 Citations (Scopus)

Abstract

We assessed the performance of large language models’ summarizing clinical dialogues using computational metrics and human evaluations. The comparison was done between automatically generated and human-produced summaries. We conducted an exploratory evaluation of five language models: one general summarisation model, one fine-tuned for general dialogues, two fine-tuned with anonymized clinical dialogues, and one Large Language Model (ChatGPT). These models were assessed using ROUGE, UniEval metrics, and expert human evaluation was done by clinicians comparing the generated summaries against a clinician generated summary (gold standard). The fine-tuned transformer model scored the highest when evaluated with ROUGE, while ChatGPT scored the lowest overall. However, using UniEval, ChatGPT scored the highest across all the evaluated domains (coherence 0.957, consistency 0.7583, fluency 0.947, and relevance 0.947 and overall score 0.9891). Similar results were obtained when the systems were evaluated by clinicians, with ChatGPT scoring the highest in four domains (coherency 0.573, consistency 0.908, fluency 0.96 and overall clinical use 0.862). Statistical analyses showed differences between ChatGPT and human summaries vs. all other models. These exploratory results indicate that ChatGPT’s performance in summarizing clinical dialogues approached the quality of human summaries. The study also found that the ROUGE metrics may not be reliable for evaluating clinical summary generation, whereas UniEval correlated well with human ratings. Large language models may provide a successful path for automating clinical dialogue summarization. Privacy concerns and the restricted nature of health records remain challenges for its integration. Further evaluations using diverse clinical dialogues and multiple initialization seeds are needed to verify the reliability and generalizability of automatically generated summaries.

Original languageEnglish
Article number1195
JournalScientific reports
Volume15
Issue number1
DOIs
Publication statusPublished - Dec 2025

UN SDGs

This output contributes to the following UN Sustainable Development Goals (SDGs)

  1. SDG 3 - Good Health and Well-being
    SDG 3 Good Health and Well-being

Keywords

  • Artificial intelligence
  • Electronic health records
  • Natural language processing
  • Primary care

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