Automated Objective Basic Surgical Skills Assessment: Overall Kinematic Performance Assessment Method

Yu Ming, Yang Cheng, Wang Chunchen, Lv Meng, Zhang Guang, Chen Feng
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引用次数: 1

Abstract

As an essential part of medical training, assessment surgical skill is a time consuming, subjective, and complicated process. This paper adopted overall kinematic performance assessment method to identify the skill level of a subjective given motion data from three benchtop surgical tasks performed on robotic surgical devices. Firstly, we extracted global movement features by computing from the raw data of 39 (Suturing), 36 (Knot Tying) and 28 (Needle Passing) trials collected on da Vinci surgical system, respectively. Then, the discrimination ability of single feature with optimizing threshold were calculated. In following classification process, we applied support Vector Machine (SVM) to distinguish expert from novice on the basis of selected global movement features. The results showed that global movement features (GMFs) such as task completion time, velocity, and motion smoothness have superior discrimination ability between novice and expert performance for suturing, knot tying and needle passing task. SVM could classify surgeons' expertise as novice or expert with an accuracy of 77.99% for suturing, 83.71% for knot tying and 74.66% for needle passing, respectively. This study clearly demonstrated the ability of overall kinematic performance assessment method to distinguish between novice and expert performance in the performance of robotic surgical devices.
自动化客观基本手术技能评估:整体运动性能评估方法
作为医学培训的重要组成部分,外科技能评估是一个耗时、主观且复杂的过程。本文采用整体运动学性能评估方法,从机器人手术设备上执行的三个台式手术任务中,确定主观给定的运动数据的技能水平。首先,我们分别从达芬奇手术系统收集的39例(缝合)、36例(打结)和28例(传针)试验的原始数据中提取全局运动特征。然后,利用优化阈值计算单个特征的识别能力;在接下来的分类过程中,我们使用支持向量机(SVM)在选择全局运动特征的基础上区分专家和新手。结果表明,在缝合、打结和穿针任务中,任务完成时间、速度和运动平滑度等全局运动特征对新手和老手具有较强的区分能力。支持向量机可以将外科医生的专业知识分类为新手或专家,缝合准确率为77.99%,打结准确率为83.71%,穿针准确率为74.66%。本研究清楚地证明了整体运动学性能评估方法在机器人手术装置性能方面区分新手和专家性能的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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