Real-time Informative Surgical Skill Assessment with Gaussian Process Learning
Yangming Li, Randall Bly, Sarah Akkina, Rajeev C. Saxena, Ian, Humphreys, Mark Whipple, Kris Moe, Blake Hannaford

TL;DR
This paper introduces a real-time, Gaussian Process-based method for objective surgical skill assessment in endoscopic surgeries, providing detailed feedback and adapting to new data, thereby improving training and reducing risks.
Contribution
It presents a novel incremental Gaussian Process learning approach that assesses surgical skills using instrument kinematics, offering real-time feedback and adaptability over traditional methods.
Findings
Achieved 100% prediction accuracy for entire procedures.
Reached 90% accuracy in real-time skill assessment.
Validated on cadaver surgeries with different complexities.
Abstract
Endoscopic Sinus and Skull Base Surgeries (ESSBSs) is a challenging and potentially dangerous surgical procedure, and objective skill assessment is the key components to improve the effectiveness of surgical training, to re-validate surgeons' skills, and to decrease surgical trauma and the complication rate in operating rooms. Because of the complexity of surgical procedures, the variation of operation styles, and the fast development of new surgical skills, the surgical skill assessment remains a challenging problem. This work presents a novel Gaussian Process Learning-based heuristic automatic objective surgical skill assessment method for ESSBSs. Different with classical surgical skill assessment algorithms, the proposed method 1) utilizes the kinematic features in surgical instrument relative movements, instead of using specific surgical tasks or the statistics to assess skills in…
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Taxonomy
TopicsSurgical Simulation and Training · Robotics and Sensor-Based Localization
MethodsGaussian Process · Balanced Selection
