Division of Esophageal Surgery, National Cancer Center Hospital East, 6-5-1 Kashiwanoha, Kashiwa, Chiba, 277-8577, Japan.
Course of Advanced Clinical Research of Cancer, Juntendo University Graduate School of Medicine, Tokyo, 163-8001, Japan.
Surg Endosc. 2022 Jul;36(7):5531-5539. doi: 10.1007/s00464-022-09268-w. Epub 2022 Apr 27.
Artificial intelligence (AI) has been largely investigated in the field of surgery, particularly in quality assurance. However, AI-guided navigation during surgery has not yet been put into practice because a sufficient level of performance has not been reached. We aimed to develop deep learning-based AI image processing software to identify the location of the recurrent laryngeal nerve during thoracoscopic esophagectomy and determine whether the incidence of recurrent laryngeal nerve paralysis is reduced using this software.
More than 3000 images extracted from 20 thoracoscopic esophagectomy videos and 40 images extracted from 8 thoracoscopic esophagectomy videos were annotated for identification of the recurrent laryngeal nerve. The Dice coefficient was used to assess the detection performance of the model and that of surgeons (specialized esophageal surgeons and certified general gastrointestinal surgeons). The performance was compared using a test set.
The average Dice coefficient of the AI model was 0.58. This was not significantly different from the Dice coefficient of the group of specialized esophageal surgeons (P = 0.26); however, it was significantly higher than that of the group of certified general gastrointestinal surgeons (P = 0.019).
Our software's performance in identification of the recurrent laryngeal nerve was superior to that of general surgeons and almost reached that of specialized surgeons. Our software provides real-time identification and will be useful for thoracoscopic esophagectomy after further developments.
人工智能(AI)在外科领域,特别是在质量保证方面得到了广泛的研究。然而,由于尚未达到足够的性能水平,AI 引导的手术导航尚未付诸实践。我们旨在开发基于深度学习的 AI 图像处理软件,以识别胸腹腔镜食管切除术中喉返神经的位置,并确定使用该软件是否能降低喉返神经麻痹的发生率。
从 20 个胸腹腔镜食管切除术视频中提取了 3000 多张图像,从 8 个胸腹腔镜食管切除术视频中提取了 40 张图像,用于识别喉返神经。使用 Dice 系数评估模型和外科医生(专业食管外科医生和认证普通胃肠外科医生)的检测性能。使用测试集进行性能比较。
AI 模型的平均 Dice 系数为 0.58。与专业食管外科医生组的 Dice 系数相比,差异无统计学意义(P=0.26);但与认证普通胃肠外科医生组的 Dice 系数相比,差异有统计学意义(P=0.019)。
我们的软件在识别喉返神经方面的性能优于普通外科医生,几乎达到了专业外科医生的水平。我们的软件提供实时识别,在进一步开发后将对胸腹腔镜食管切除术有用。