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A large language model digital patient system enhances ophthalmology history taking skills. | LitMetric

Article Synopsis

  • Clinical trainees struggle with practicing medical history-taking due to limited patient diversity and access, leading to the development of a digital patient system using AI technology to simulate real conversations.
  • In a study with 84 participants, those who trained with the AI system showed a significant improvement in their assessment scores and greater empathy compared to those using traditional training methods.
  • Participants expressed high satisfaction with the digital patient system, noting it helped reduce training costs and built their confidence for real patient interactions, highlighting its potential in medical education.

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Article Abstract

Clinical trainees face limited opportunities to practice medical history-taking skills due to scarce case diversity and access to real patients. To address this, we developed a large language model-based digital patient (LLMDP) system that transforms de‑identified electronic health records into voice‑enabled virtual patients capable of free‑text dialog and adaptive feedback, based on our previously established open-source retrieval-augmented framework. In a single‑center randomized controlled trial (ClinicalTrials.gov: NCT06229379; N = 84), students trained with LLMDP achieved a 10.50-point increase in medical history-taking assessment scores (95% CI: 4.66-16.33, p < 0.001) compared to those using traditional methods. LLMDP-trained students also demonstrated greater empathy. Participants reported high satisfaction with LLMDP, emphasizing its role in reducing training costs and boosting confidence for real patient interactions. These findings provide evidence that LLM-driven digital patients enhance medical history-taking skills and offer a scalable, low-risk pathway for integrating generative AI into ophthalmology education.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC12322286PMC
http://dx.doi.org/10.1038/s41746-025-01841-6DOI Listing

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