Faculty of Information Engineering, Department of Information and Systems Engineering, Fukuoka Institute of Technology, 3-30-1 Wajiro-higashi, Higashi-ku, Fukuoka-City, Fukuoka, 811-0295, Japan.
Faculty of Medicine, Department of Gastroenterological and Pediatric Surgery, Oita University, 1-1 Idaigaoka, Hasama-machi, Yufu-City, Oita, 879-5593, Japan.
Surg Endosc. 2021 Apr;35(4):1651-1658. doi: 10.1007/s00464-020-07548-x. Epub 2020 Apr 18.
The occurrence of bile duct injury (BDI) during laparoscopic cholecystectomy (LC) is an important medical issue. Expert surgeons prevent intraoperative BDI by identifying four landmarks. The present study aimed to develop a system that outlines these landmarks on endoscopic images in real time.
An intraoperative landmark indication system was constructed using YOLOv3, which is an algorithm for object detection based on deep learning. The training datasets comprised approximately 2000 endoscopic images of the region of Calot's triangle in the gallbladder neck obtained from 76 videos of LC. The YOLOv3 learning model with the training datasets was applied to 23 videos of LC that were not used in training, to evaluate the estimation accuracy of the system to identify four landmarks: the cystic duct, common bile duct, lower edge of the left medial liver segment, and Rouviere's sulcus. Additionally, we constructed a prototype and used it in a verification experiment in an operation for a patient with cholelithiasis.
The YOLOv3 learning model was quantitatively and subjectively evaluated in this study. The average precision values for each landmark were as follows: common bile duct: 0.320, cystic duct: 0.074, lower edge of the left medial liver segment: 0.314, and Rouviere's sulcus: 0.101. The two expert surgeons involved in the annotation confirmed consensus regarding valid indications for each landmark in 22 of the 23 LC videos. In the verification experiment, the use of the intraoperative landmark indication system made the surgical team more aware of the landmarks.
Intraoperative landmark indication successfully identified four landmarks during LC, which may help to reduce the incidence of BDI, and thus, increase the safety of LC. The novel system proposed in the present study may prevent BDI during LC in clinical practice.
腹腔镜胆囊切除术(LC)中胆管损伤(BDI)的发生是一个重要的医学问题。专家外科医生通过识别四个标志来防止术中 BDI。本研究旨在开发一种实时在内镜图像上勾勒出这些标志的系统。
使用基于深度学习的对象检测算法 YOLOv3 构建术中标志指示系统。训练数据集包括来自 76 个 LC 视频的约 2000 个胆囊颈部 Calot 三角区域的内镜图像。将具有训练数据集的 YOLOv3 学习模型应用于 23 个未用于训练的 LC 视频,以评估系统识别四个标志(胆囊管、胆总管、左内侧肝段下缘和 Rouviere 沟)的估计准确性。此外,我们构建了一个原型并在一名胆石症患者的手术中进行了验证实验。
在这项研究中,对 YOLOv3 学习模型进行了定量和主观评估。每个标志的平均精度值如下:胆总管:0.320、胆囊管:0.074、左内侧肝段下缘:0.314、Rouviere 沟:0.101。参与注释的两位专家外科医生在 23 个 LC 视频中的 22 个视频中对每个标志的有效指示达成了共识。在验证实验中,术中标志指示系统的使用使手术团队更加关注标志。
术中标志指示成功识别了 LC 过程中的四个标志,这可能有助于降低 BDI 的发生率,从而提高 LC 的安全性。本研究提出的新系统可能有助于在临床实践中预防 LC 中的 BDI。