Automating Surgical Peg Transfer: Calibration With Deep Learning Can Exceed Speed, Accuracy, and Consistency of Humans

IEEE TRANSACTIONS ON AUTOMATION SCIENCE AND ENGINEERING(2022)

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摘要
Peg transfer is a well-known surgical training task in the Fundamentals of Laparoscopic Surgery (FLS). While human surgeons teleoperate robots such as the da Vinci to perform this task with high speed and accuracy, it is challenging to automate. This paper presents a novel system and control method using a da Vinci Research Kit (dVRK) surgical robot and a Zivid depth sensor, and a human subjects study comparing performance on three variants of the peg-transfer task: unilateral, bilateral without handovers, and bilateral with handovers. The system combines 3D printing, depth sensing, and deep learning for calibration with a new analytic inverse kinematics model and time-minimized motion controller. In a controlled study of 3384 peg transfer trials performed by the system, an expert surgical resident, and 9 volunteers, results suggest that the system achieves accuracy on par with the experienced surgical resident and is significantly faster and more consistent than the surgical resident and volunteers. The system also exhibits the highest consistency and lowest collision rate. To our knowledge, this is the first autonomous system to achieve ``superhuman'' performance on a standardized surgical task. All data is available at https://sites.google.com/view/surgicalpegtransfer
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关键词
Task analysis,Robots,Handover,Robot kinematics,Trajectory,Training,Sensors,Calibration,depth sensing,robot kinematics,medical robots and systems,model learning and control,task automation,trajectory planning
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