Surgical Device Innovation Office, National Cancer Center Hospital East, 6-5-1, Kashiwanoha, Kashiwa, Chiba, 277-8577, Japan.
Department of Colorectal Surgery, National Cancer Center Hospital East, 6-5-1, Kashiwanoha, Kashiwa, Chiba, 277-8577, Japan.
Surg Endosc. 2022 Aug;36(8):6105-6112. doi: 10.1007/s00464-022-09384-7. Epub 2022 Jun 28.
Recognition of the inferior mesenteric artery (IMA) during colorectal cancer surgery is crucial to avoid intraoperative hemorrhage and define the appropriate lymph node dissection line. This retrospective feasibility study aimed to develop an IMA anatomical recognition model for laparoscopic colorectal resection using deep learning, and to evaluate its recognition accuracy and real-time performance.
A complete multi-institutional surgical video database, LapSig300 was used for this study. Intraoperative videos of 60 patients who underwent laparoscopic sigmoid colon resection or high anterior resection were randomly extracted from the database and included. Deep learning-based semantic segmentation accuracy and real-time performance of the developed IMA recognition model were evaluated using Dice similarity coefficient (DSC) and frames per second (FPS), respectively.
In a fivefold cross-validation conducted using 1200 annotated images for the IMA semantic segmentation task, the mean DSC value was 0.798 (± 0.0161 SD) and the maximum DSC was 0.816. The proposed deep learning model operated at a speed of over 12 FPS.
To the best of our knowledge, this is the first study to evaluate the feasibility of real-time vascular anatomical navigation during laparoscopic colorectal surgery using a deep learning-based semantic segmentation approach. This experimental study was conducted to confirm the feasibility of our model; therefore, its safety and usefulness were not verified in clinical practice. However, the proposed deep learning model demonstrated a relatively high accuracy in recognizing IMA in intraoperative images. The proposed approach has potential application in image navigation systems for unfixed soft tissues and organs during various laparoscopic surgeries.
在结直肠癌手术中识别肠系膜下动脉(IMA)对于避免术中出血和确定适当的淋巴结清扫线至关重要。本回顾性可行性研究旨在使用深度学习开发用于腹腔镜结直肠切除术的 IMA 解剖识别模型,并评估其识别准确性和实时性能。
本研究使用了完整的多机构手术视频数据库 LapSig300。从数据库中随机提取了 60 名接受腹腔镜乙状结肠切除术或高位前切除术的患者的术中视频并将其纳入研究。使用 Dice 相似系数(DSC)和每秒帧数(FPS)分别评估开发的 IMA 识别模型的基于深度学习的语义分割准确性和实时性能。
在针对 IMA 语义分割任务的 1200 张注释图像进行的五重交叉验证中,平均 DSC 值为 0.798(±0.0161 SD),最大 DSC 值为 0.816。所提出的深度学习模型的运行速度超过 12 FPS。
据我们所知,这是第一项使用基于深度学习的语义分割方法评估腹腔镜结直肠手术中实时血管解剖导航可行性的研究。本实验研究旨在确认我们模型的可行性;因此,其在临床实践中的安全性和有用性尚未得到验证。然而,所提出的深度学习模型在识别术中图像中的 IMA 方面表现出相对较高的准确性。该方法具有在各种腹腔镜手术中用于固定软组织和器官的图像导航系统中的潜在应用。