Video-based fully automatic assessment of open surgery suturing skills
Adam Goldbraikh, Anne-Lise D'Angelo, Carla M. Pugh, Shlomi Laufer

TL;DR
This study presents a novel video-based system using a dual-task neural network to automatically assess open surgery suturing skills by localizing tools, hands, and analyzing motion metrics, distinguishing experts from novices.
Contribution
Developed a multi-task YOLO-based algorithm for tool and hand localization and interaction detection in open surgery videos, enabling automated skill assessment.
Findings
The dual-task network performs comparably to separate networks with minimal computational overhead.
Motion metrics significantly differentiate between expert and novice suturers.
The system provides a reliable, resource-efficient tool for surgical training assessment.
Abstract
The goal of this study was to develop new reliable open surgery suturing simulation system for training medical students in situation where resources are limited or in the domestic setup. Namely, we developed an algorithm for tools and hands localization as well as identifying the interactions between them based on simple webcam video data, calculating motion metrics for assessment of surgical skill. Twenty-five participants performed multiple suturing tasks using our simulator. The YOLO network has been modified to a multi-task network, for the purpose of tool localization and tool-hand interaction detection. This was accomplished by splitting the YOLO detection heads so that they supported both tasks with minimal addition to computer run-time. Furthermore, based on the outcome of the system, motion metrics were calculated. These metrics included traditional metrics such as time and…
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Taxonomy
TopicsSurgical Simulation and Training · Simulation-Based Education in Healthcare · Augmented Reality Applications
MethodsYou Only Look Once
