Department of Internal Medicine, Section Pharmacotherapy, Amsterdam UMC, Vrije Universiteit Amsterdam, Amsterdam, HV, The Netherlands.
Research and Expertise Centre in Pharmacotherapy Education (RECIPE), Amsterdam, HV, The Netherlands.
Br J Clin Pharmacol. 2024 Mar;90(3):640-648. doi: 10.1111/bcp.15977. Epub 2024 Jan 6.
Medical case vignettes play a crucial role in medical education, yet they often fail to authentically represent diverse patients. Moreover, these vignettes tend to oversimplify the complex relationship between patient characteristics and medical conditions, leading to biased and potentially harmful perspectives among students. Displaying aspects of patient diversity, such as ethnicity, in written cases proves challenging. Additionally, creating these cases places a significant burden on teachers in terms of labour and time. Our objective is to explore the potential of artificial intelligence (AI)-assisted computer-generated clinical cases to expedite case creation and enhance diversity, along with AI-generated patient photographs for more lifelike portrayal.
In this study, we employed ChatGPT (OpenAI, GPT 3.5) to develop diverse and inclusive medical case vignettes. We evaluated various approaches and identified a set of eight consecutive prompts that can be readily customized to accommodate local contexts and specific assignments. To enhance visual representation, we utilized Adobe Firefly beta for image generation.
Using the described prompts, we consistently generated cases for various assignments, producing sets of 30 cases at a time. We ensured the inclusion of mandatory checks and formatting, completing the process within approximately 60 min per set.
Our approach significantly accelerated case creation and improved diversity, although prioritizing maximum diversity compromised representativeness to some extent. While the optimized prompts are easily reusable, the process itself demands computer skills not all educators possess. To address this, we aim to share all created patients as open educational resources, empowering educators to create cases independently.
医学案例简述在医学教育中起着至关重要的作用,但它们往往不能真实地代表多样化的患者。此外,这些案例往往过于简化患者特征与医疗状况之间的复杂关系,导致学生产生有偏见的、潜在有害的观点。在书面案例中展示患者多样性的方面,如种族,具有挑战性。此外,创建这些案例会给教师带来巨大的劳动和时间负担。我们的目标是探索人工智能(AI)辅助的计算机生成临床案例在加速案例创建和增强多样性方面的潜力,以及 AI 生成的患者照片,以更逼真地描绘患者。
在这项研究中,我们使用 ChatGPT(OpenAI,GPT 3.5)来开发多样化和包容的医学案例简述。我们评估了各种方法,并确定了一组八个连续的提示,这些提示可以很容易地定制以适应本地环境和特定任务。为了增强视觉表现,我们使用了 Adobe Firefly beta 进行图像生成。
使用描述的提示,我们一致地为各种任务生成案例,一次生成 30 个案例的集合。我们确保包含强制检查和格式设置,每个集合的过程大约需要 60 分钟。
我们的方法大大加快了案例的创建速度并提高了多样性,尽管优先考虑最大的多样性在一定程度上影响了代表性。虽然优化后的提示可以轻松重复使用,但该过程本身需要计算机技能,并非所有教育者都具备。为了解决这个问题,我们旨在共享所有创建的患者作为开放教育资源,使教育者能够独立创建案例。