Department of Urology, Zhongnan Hospital, Wuhan University, 169 Donghu Road, Wuhan, 430071, Hubei, China.
Medicine-Remote Mapping Associated Laboratory, Wuhan University, Wuhan, Hubei, China.
Surg Endosc. 2024 Aug;38(8):4336-4343. doi: 10.1007/s00464-024-10959-9. Epub 2024 Jun 14.
Many studies have investigated the transfer of skills between laparoscopic and robot-assisted surgery (RAS). These studies have considered time, error, and clinical outcomes in the assessment of skill transfer. However, little is known about the specific operations of the surgeon. Clutch control use is an important skill in RAS. Therefore, the present study aimed to propose a novel objective algorithm based on computer vision that can automatically evaluate a surgeon's clutch use. Additionally, the study aimed to evaluate the correlation between clutch metrics and surgical skill on different surgical robot platforms.
The robotic surgery training center of Wuhan University trained 30 laparoscopic surgeons as the study group between 2023 and 2024. Laparoscopic surgeons were trained by combining robotic simulator exercises and RAS animal experiments. During the training, video and hand movement data were collected. Hand movements identified by a skin-color model were combined with labeling information to classify clutch use. The metrics were validated on different robotic platforms (dv-Trainer, EDGE MP1000, Toumai™ MT1000, and DaVinci Xi system) and among surgeons with different surgical skill levels.
On the robotic simulator, clutch accuracy in the expert group was significantly higher than in the study group for all tasks. No significant differences were observed in the number of clutches between the expert and study groups. In the RAS experiment, the number of clutches decreased significantly for both study and expert groups. The accuracy was maintained at a high level in the expert group but decreased rapidly in the study group.
We proposed a new objective assessment of surgical skills, clutch use metrics, in cross-platform RAS. Additionally, we verified that the metrics significantly correlated with the surgical skill levels of the surgeons.
许多研究已经调查了腹腔镜和机器人辅助手术(RAS)之间技能的转移。这些研究在评估技能转移时考虑了时间、错误和临床结果。然而,对于外科医生的具体操作知之甚少。离合器控制的使用是 RAS 中的一项重要技能。因此,本研究旨在提出一种基于计算机视觉的新的客观算法,可以自动评估外科医生的离合器使用情况。此外,该研究旨在评估不同手术机器人平台上离合器指标与手术技能之间的相关性。
武汉大学生物医学工程学院机器人手术培训中心于 2023 年至 2024 年培训了 30 名腹腔镜外科医生作为研究组。腹腔镜外科医生通过结合机器人模拟器练习和 RAS 动物实验进行培训。在培训过程中,收集了视频和手部运动数据。通过肤色模型识别的手部运动与标签信息相结合,对离合器的使用进行分类。该指标在不同的机器人平台(dv-Trainer、EDGE MP1000、Toumai™ MT1000 和 DaVinci Xi 系统)和不同手术技能水平的外科医生中进行了验证。
在机器人模拟器上,对于所有任务,专家组的离合器精度明显高于研究组。专家组和研究组的离合器数量没有显著差异。在 RAS 实验中,研究组和专家组的离合器数量均显著减少。专家组的准确性保持在较高水平,但研究组的准确性迅速下降。
我们提出了一种新的客观评估跨平台 RAS 手术技能的方法,即离合器使用指标。此外,我们验证了该指标与外科医生的手术技能水平显著相关。