Department of Technology and Design Thinking for Medicine, Hiroshima University, Hiroshima, Japan.
Department of Ophthalmology, Tsukazaki Hospital, Himeji, Japan.
Sci Rep. 2024 Nov 25;14(1):29200. doi: 10.1038/s41598-024-80732-4.
Sebaceous carcinoma is difficult to distinguish from chalazion due to their rarity and clinicians' limited experience. This study investigated the potential of AI-generated image training to improve diagnostic skills for these eyelid tumors compared to traditional video lecture-based education. Students from Orthoptics, Optometry, and Vision Research (n = 55) were randomly assigned to either an AI-generated image training group or a traditional video lecture group. Diagnostic performance was assessed using a 50-image quiz before and after the intervention. Both groups showed significant improvement in overall diagnostic accuracy (p < 0.001), with no significant difference between groups (p = 0.124). In the AI group, all 25 chalazion images showed improvement, while only 6 out of 25 sebaceous carcinoma images improved. The video lecture group showed improvement in 19 out of 25 chalazion images and 24 out of 25 sebaceous carcinoma images. The proportion of images with improved accuracy was significantly higher in the AI group for chalazion (P = 0.022) and in the video group for sebaceous carcinoma (P < 0.001). These findings suggest that AI-generated image training can enhance diagnostic skills for rare conditions, but its effectiveness depends on the quality and quantity of patient images used for optimization. Combining AI-generated image training with traditional video lectures may lead to more effective educational programs. Further research is needed to explore AI's potential in medical education and improve diagnostic skills for rare diseases.
皮脂腺癌因其罕见且临床医生经验有限,与睑板腺囊肿难以区分。本研究旨在探讨人工智能生成图像训练在提高这些眼睑肿瘤诊断技能方面的潜力,与传统视频讲座为基础的教育相比。来自视轴矫正、验光和视觉研究的学生(n=55)被随机分配到人工智能生成图像训练组或传统视频讲座组。在干预前后,使用 50 张图像测验评估诊断性能。两组的整体诊断准确性均显著提高(p<0.001),但两组之间无显著差异(p=0.124)。在人工智能组中,所有 25 张睑板腺囊肿图像的表现均有所改善,而只有 25 张皮脂癌图像中的 6 张有所改善。视频讲座组在 25 张睑板腺囊肿图像中的 19 张和 25 张皮脂癌图像中的 24 张显示出改善。在人工智能组中,对睑板腺囊肿的图像准确性提高的比例明显更高(P=0.022),在视频组中,对皮脂癌的图像准确性提高的比例更高(P<0.001)。这些发现表明,人工智能生成图像训练可以增强对罕见疾病的诊断技能,但其有效性取决于用于优化的患者图像的质量和数量。将人工智能生成图像训练与传统视频讲座相结合,可能会导致更有效的教育计划。需要进一步研究来探索人工智能在医学教育中的潜力,以提高对罕见疾病的诊断技能。