Artificial intelligence-driven patient history and symptoms combined with slit-lamp eye simulation for enhancing the clinical training of students.

IF 1.5 4区 医学 Q3 OPHTHALMOLOGY
Patrick Wk Ting, James S Wolffsohn
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引用次数: 0

Abstract

Clinical relevance: Communication between eye care practitioners is essential to optimise health care. Traditionally, actors have been used prior to real patient exposure, but this is expensive and much training is needed to ensure a consistent student experience and assessment. Artificial intelligence using ChatBots is shown to provide a high-quality student experience, and due to their portability and cost, it has the potential to revolutionise communication training.

Background: Augmented reality ocular examination simulations have been shown to be effective in teaching ophthalmology and optometry. With large language models, ChatGPT has been shown to provide effective role-play simulation. This study examined whether a combination of augmented reality and role-play simulation can enhance self-assessed competency of optometry students. It also assessed, the learning experience of students with role play by a human actor compared to different artificial intelligence chatbots.

Method: Sixteen final-year optometry students with limited experience of computer simulation completed three role-plays with each of a SimConverse artificial intelligence, ChatGPT artificial intelligence, and an actor patient, in randomised order. In each session, the scenario included a history and symptoms, related augmented reality slit-lamp biomicroscopy examination (EyeSi) of the 'patient's' eyes, followed by the student communicating their findings and intended actions with the 'patient'. Students completed pre- and post-questionnaires to rank their learning experiences.

Results: There were significant improvements (p < 0.05) over all aspects of clinical competence expectations ranked by students except 'prioritising key signs and symptoms' (p = 0.66). There was no significant difference between the role-play proved by an actor and SimConverse. However, students rated the ChatGTP simulation as providing a significantly poorer experience (p < 0.001).

Conclusion: Combining patient role-play with augmented reality simulation significantly enhances how students feel about their clinical competencies. Role-play by an artificial intelligence 'patient' can provide an equivalent learning experience as that provided by an actor.

人工智能驱动的患者病史和症状结合裂隙灯眼模拟加强学生临床训练。
临床相关性:眼科医生之间的沟通是优化医疗保健必不可少的。传统上,演员在真正的患者接触之前被使用,但这是昂贵的,并且需要大量的培训来确保一致的学生体验和评估。使用聊天机器人的人工智能被证明可以提供高质量的学生体验,由于它们的可移植性和成本,它有可能彻底改变沟通培训。背景:增强现实眼科检查模拟已被证明是有效的教学眼科和验光。使用大型语言模型,ChatGPT已被证明可以提供有效的角色扮演模拟。本研究考察了增强现实与角色扮演模拟相结合是否能提高视光学生的自评能力。它还评估了由人类演员扮演的学生与不同的人工智能聊天机器人的学习体验。方法:16名具有有限计算机模拟经验的最后一年级验光学生按随机顺序,分别用SimConverse人工智能、ChatGPT人工智能和一名演员患者完成了三个角色扮演。在每个会话中,场景包括病史和症状,相关的“患者”眼睛的增强现实裂隙灯生物显微镜检查(EyeSi),然后学生与“患者”交流他们的发现和预期的行动。学生们完成了问卷前和问卷后对他们的学习经历进行排名。结果:有显著改善(p p = 0.66)。演员所证明的角色扮演与SimConverse之间没有显著差异。然而,学生们认为ChatGTP模拟提供的体验明显较差(p结论:将患者角色扮演与增强现实模拟相结合,显著提高了学生对自己临床能力的感觉。人工智能“病人”的角色扮演可以提供与演员相同的学习体验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.10
自引率
5.30%
发文量
132
审稿时长
6-12 weeks
期刊介绍: Clinical and Experimental Optometry is a peer reviewed journal listed by ISI and abstracted by PubMed, Web of Science, Scopus, Science Citation Index and Current Contents. It publishes original research papers and reviews in clinical optometry and vision science. Debate and discussion of controversial scientific and clinical issues is encouraged and letters to the Editor and short communications expressing points of view on matters within the Journal''s areas of interest are welcome. The Journal is published six times annually.
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