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基于视觉的手柄轨迹监测系统在研究机器人缝合操作中的有效性。

Effectiveness of a vision-based handle trajectory monitoring system in studying robotic suture operation.

机构信息

Department of Urology, ZhongNan Hospital, Wuhan University, No. 169 Donghu Road, Wuhan, 430071, Hubei, China.

Medicine-Remote Mapping Associated Laboratory, ZhongNan Hospital, Wuhan University, No. 169 Donghu Road, Wuhan, 430071, Hubei, China.

出版信息

J Robot Surg. 2023 Dec;17(6):2791-2798. doi: 10.1007/s11701-023-01713-9. Epub 2023 Sep 20.

Abstract

Data on surgical robots are not openly accessible, limiting further study of the operation trajectory of surgeons' hands. Therefore, a trajectory monitoring system should be developed to examine objective indicators reflecting the characteristic parameters of operations. 20 robotic experts and 20 first-year residents without robotic experience were included in this study. A dry-lab suture task was used to acquire relevant hand performance data. Novices completed training on the simulator and then performed the task, while the expert team completed the task after warm-up. Stitching errors were measured using a visual recognition method. Videos of operations were obtained using the camera array mounted on the robot, and the hand trajectory of the surgeons was reconstructed. The stitching accuracy, robotic control parameters, balance and dexterity parameters, and operation efficiency parameters were compared. Experts had smaller center distance (p < 0.001) and larger proximal distance between the hands (p < 0.001) compared with novices. The path and volume ratios between the left and right hands of novices were larger than those of experts (both p < 0.001) and the total volume of the operation range of experts was smaller (p < 0.001). The surgeon trajectory optical monitoring system is an effective and non-subjective method to distinguish skill differences. This demonstrates the potential of pan-platform use to evaluate task completion and help surgeons improve their robotic learning curve.

摘要

有关手术机器人的数据无法公开获取,这限制了对手术医生手部操作轨迹的进一步研究。因此,应该开发一种轨迹监测系统来检查反映手术特征参数的客观指标。本研究纳入了 20 名机器人专家和 20 名没有机器人经验的一年级住院医师。使用干实验室缝合任务来获取相关手部表现数据。新手在模拟器上完成培训,然后执行任务,而专家团队在热身之后完成任务。使用安装在机器人上的相机阵列获取手术视频,并重建外科医生的手部轨迹。比较了缝合精度、机器人控制参数、平衡和灵巧性参数以及操作效率参数。与新手相比,专家的中心距离更小(p<0.001),手部近端距离更大(p<0.001)。新手左右手的路径和体积比大于专家(均 p<0.001),专家的手术范围总容积更小(p<0.001)。外科医生轨迹光学监测系统是一种有效且客观的方法,可以区分技能差异。这表明了泛平台使用评估任务完成情况并帮助外科医生提高机器人学习曲线的潜力。

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