Waikel Rebekah L, Othman Amna A, Patel Tanviben, Hanchard Suzanna Ledgister, Hu Ping, Tekendo-Ngongang Cedrik, Duong Dat, Solomon Benjamin D
Medical Genetics Branch, National Human Genome Research Institute, Bethesda, Maryland, United States of America.
medRxiv. 2023 Aug 2:2023.08.01.23293506. doi: 10.1101/2023.08.01.23293506.
Artificial intelligence (AI) is used in an increasing number of areas, with recent interest in generative AI, such as using ChatGPT to generate programming code or DALL-E to make illustrations. We describe the use of generative AI in medical education. Specifically, we sought to determine whether generative AI could help train pediatric residents to better recognize genetic conditions. From publicly available images of individuals with genetic conditions, we used generative AI methods to create new images, which were checked for accuracy with an external classifier. We selected two conditions for study, Kabuki (KS) and Noonan (NS) syndromes, which are clinically important conditions that pediatricians may encounter. In this study, pediatric residents completed 208 surveys, where they each classified 20 images following exposure to one of 4 possible educational interventions, including with and without generative AI methods. Overall, we find that generative images perform similarly but appear to be slightly less helpful than real images. Most participants reported that images were useful, although real images were felt to be more helpful. We conclude that generative AI images may serve as an adjunctive educational tool, particularly for less familiar conditions, such as KS.
人工智能(AI)在越来越多的领域得到应用,近期人们对生成式AI兴趣浓厚,比如使用ChatGPT生成编程代码或使用DALL-E制作插图。我们描述了生成式AI在医学教育中的应用。具体而言,我们试图确定生成式AI是否有助于培训儿科住院医师更好地识别遗传疾病。从患有遗传疾病个体的公开可用图像中,我们使用生成式AI方法创建新图像,并使用外部分类器检查其准确性。我们选择了两种疾病进行研究,歌舞伎综合征(KS)和努南综合征(NS),这是儿科医生可能会遇到的具有临床重要性的疾病。在这项研究中,儿科住院医师完成了208份调查问卷,他们在接触4种可能的教育干预措施之一(包括使用和不使用生成式AI方法)后,各自对20张图像进行分类。总体而言,我们发现生成的图像表现相似,但似乎比真实图像的帮助稍小。大多数参与者报告说图像很有用,尽管他们觉得真实图像更有帮助。我们得出结论,生成式AI图像可以作为一种辅助教育工具,特别是对于像KS这样不太常见的疾病。