Joo Hye Ah, Park Kanggil, Kim Jun-Sik, Yun Young Hyun, Lee Dong Kyu, Ha Seung Cheol, Kim Namkug, Chung Jong Woo
Department of Otorhinolaryngology-Head and Neck Surgery, Asan Medical Center, University of Ulsan College of Medicine, Seoul, Korea.
Department of Biomedical Engineering, Asan Medical Institute of Convergence Science and Technology, Asan Medical Center, University of Ulsan College of Medicine, Seoul, Korea.
Acta Otolaryngol. 2024 Dec 6:1-8. doi: 10.1080/00016489.2024.2435448.
Optimizing the educational experience of trainees in the operating room is important; however, ear anatomy and otologic surgery are challenging for trainees to grasp. Viewing otologic surgeries often involves limitations related to video quality, such as visual disturbances and instability.
We aimed to (1) improve the quality of surgical videos (tympanomastoidectomy [TM]) by using artificial intelligence (AI) techniques and (2) evaluate the effectiveness of processed videos through a questionnaire-based assessment from trainees.
We conducted prospective study using video inpainting and stabilization techniques processed by AI. In each study set, we enrolled 21 trainees and asked them to watch processed videos and complete a questionnaire.
Surgical videos with the video inpainting technique using the implicit neural representation (INR) model were found to be the most helpful for medical students (0.79 ± 0.58) in identifying bleeding focus. Videos with the stabilization technique point feature matching were more helpful for low-grade residents (0.91 ± 0.12) and medical students (0.78 ± 0.35) in enhancing overall visibility and understanding surgical procedures.
Surgical videos using video inpainting and stabilization techniques with AI were beneficial for educating trainees, especially participants with less anatomical knowledge and surgical experience.
优化手术室学员的教育体验很重要;然而,耳部解剖结构和耳科手术对学员来说很难掌握。观看耳科手术视频往往存在与视频质量相关的限制,如视觉干扰和不稳定。
我们旨在(1)通过使用人工智能(AI)技术提高手术视频(鼓室乳突切除术[TM])的质量,以及(2)通过学员基于问卷的评估来评估处理后视频的有效性。
我们使用人工智能处理的视频修复和稳定技术进行了前瞻性研究。在每个研究组中,我们招募了21名学员,让他们观看处理后的视频并完成一份问卷。
发现使用隐式神经表示(INR)模型的视频修复技术处理的手术视频对医学生识别出血点最有帮助(0.79±0.58)。具有稳定技术点特征匹配的视频对低年资住院医师(0.91±0.12)和医学生(0.78±0.35)在提高整体可视性和理解手术过程方面更有帮助。
使用人工智能的视频修复和稳定技术的手术视频对培训学员有益,尤其是对解剖学知识和手术经验较少的参与者。