Generating synthetic patient vignettes from real medical texts for the teaching of clinical reasoning.

IF 3.3 2区 教育学 Q1 EDUCATION, SCIENTIFIC DISCIPLINES
Ligia Maria Cayres Ribeiro, Grigory Sidorenkov, Noha El-Baz, Rozemarijn Vliegenthart, Moniek Y Koopman, Steven J Durning, Marco A de Carvalho Filho
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Abstract

What was the educational challenge?: Experience with simulated clinical cases is a relevant component in the development of clinical reasoning (CR). Generating and vetting cases that are locally relevant is, however, a complex and time-consuming process.

What is the proposed solution?: We propose the use of generative artificial intelligence (AI) to create synthetic patients (SyP), in the form of narratives, based on real-world data describing patients' symptoms. We pilot tested this solution with self-reported questionnaires of patients with chest discomfort using a chatbot.

What are the potential benefits to a wider global audience?: Automatically creating vetted clinical narratives that are locally relevant would amplify the teaching of CR, allowing for a larger exposure of students to clinical cases. We synthesized SyP from narrative data that retained the initial diagnostic hypothesis of the original patients as defined by a general practitioner. Our results indicate that a more efficient process of generating cases for educational purposes mediated by AI is feasible.

What are the next steps?: We plan to fine-tune the process to improve the narratives while preserving confidentiality. In the future, the process could be used on a large scale for the development of diagnostic abilities and communication skills.

为临床推理教学从真实医学文本中生成合成的病人小插曲。
教育方面的挑战是什么?模拟临床病例的经验是临床推理(CR)发展的一个相关组成部分。然而,生成和审查与本地相关的案例是一个复杂且耗时的过程。建议的解决方案是什么?我们建议使用生成式人工智能(AI)以叙述的形式创建合成患者(SyP),基于描述患者症状的真实世界数据。我们用聊天机器人对患有胸部不适的患者的自我报告问卷进行了试点测试。对更广泛的全球受众有什么潜在的好处?自动创建与当地相关的经过审查的临床叙述将扩大CR的教学,允许学生更多地接触临床病例。我们从叙述资料中合成SyP,这些资料保留了由全科医生定义的原始患者的初始诊断假设。我们的研究结果表明,人工智能介导的更有效的教学案例生成过程是可行的。下一步是什么?我们计划对流程进行微调,在保持机密性的同时改善叙述。在未来,这个过程可以大规模地用于发展诊断能力和沟通技巧。
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
Medical Teacher
Medical Teacher 医学-卫生保健
CiteScore
7.80
自引率
8.50%
发文量
396
审稿时长
3-6 weeks
期刊介绍: Medical Teacher provides accounts of new teaching methods, guidance on structuring courses and assessing achievement, and serves as a forum for communication between medical teachers and those involved in general education. In particular, the journal recognizes the problems teachers have in keeping up-to-date with the developments in educational methods that lead to more effective teaching and learning at a time when the content of the curriculum—from medical procedures to policy changes in health care provision—is also changing. The journal features reports of innovation and research in medical education, case studies, survey articles, practical guidelines, reviews of current literature and book reviews. All articles are peer reviewed.
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