Uncertainty-Aware Self-Supervised Learning for Cross-Domain Technical Skill Assessment in Robot-Assisted Surgery

IEEE Transactions on Medical Robotics and Bionics(2023)

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摘要
Objective technical skill assessment is crucial for effective training of new surgeons in robot-assisted surgery. With advancements in surgical training programs in both physical and virtual environments, it is imperative to develop generalizable methods for automatically assessing skills. In this paper, we pro -pose a novel approach for skill assessment by transferring domain knowledge from labeled kinematic data to unlabeled data. Our approach leverages labeled data from common surgical training tasks such as Suturing, Needle Passing, and Knot Tying to jointly train a model with both labeled and unlabeled data. Pseudo labels are generated for the unlabeled data through an iterative man -ner that incorporates uncertainty estimation to ensure accurate labeling. We evaluate our method on a virtual reality simu-lated training task (Ring Transfer) using data from the da Vinci Research Kit (dVRK). The results show that trainees with robotic assistance have significantly higher expert probability compared to these without any assistance, p < 0.05, which aligns with previous studies showing the benefits of robotic assistance in improving training proficiency. Our method offers a significant advantage over other existing works as it does not require man-ual labeling or prior knowledge of the surgical training task for robot-assisted surgery.
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关键词
Training,Task analysis,Surgery,Kinematics,Data models,Robots,Uncertainty,Surgical skill assessment,surgical training,Bayesian deep learning,virtual reality,robot-assisted surgery
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