基于稀疏光流数据的手术技能评估自动化

Gábor Lajkó, R. Elek, T. Haidegger
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引用次数: 4

摘要

基于个人反馈的客观技能评估是外科培训的重要组成部分。自动评估解决方案旨在取代传统的人工(基于专家意见的)评估技术,这主要需要高级外科医生投入最宝贵的时间。通常,运动学或视觉输入数据均可用于执行技能评估。与开放手术相比,微创手术的切口更小,疼痛更少,恢复更快,但手术难度增加了许多倍。机器人辅助微创手术(RAMIS)在手术过程中提供更高的精度,同时也改善了外科医生的人体工程学。运动学数据已被证明与外科医生执行RAMIS手术的专业知识直接相关,但对于传统的MIS来说,它并不容易获得。基于视觉特征的解决方案正在慢慢地赶上基于运动学的解决方案的效率,但最好的方法通常依赖于3D视觉特征,这需要立体摄像机和校准数据,而这两者在MIS中都不具备。本文介绍了一种基于二维图像的通用解决方案,可以在任何培训环境中创建和应用外科技能评估解决方案。已经建立的基于运动学的技能评估基准的特征提取技术被重新用于评估生成的数据可以产生的准确性。我们的个体准确率达到95.74%,平均准确率(5次交叉验证试验的平均值)达到83.54%。其他相关资源,如源代码,结果和数据文件在Github (https://github.com/abc-irobotics/visdatasurgicalskill)上公开提供。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Surgical Skill Assessment Automation Based on Sparse Optical Flow Data
Objective skill assessment based personal feedback is a vital part of surgical training. Automated assessment solutions aim to replace traditional manual (experts’ opinion-based) assessment techniques, that predominantly requires the most valuable time commitment from senior surgeons. Typically, either kinematic or visual input data can be employed to perform skill assessment. Minimally Invasive Surgery (MIS) benefits the patients by using smaller incisions than open surgery, resulting in less pain and quicker recovery, but increasing the difficulty of the surgical task manyfold. Robot-Assisted Minimally Invasive Surgery (RAMIS) offers higher precision during surgery, while also improving the ergonomics for the performing surgeons. Kinematic data have been proven to directly correlate with the expertise of surgeons performing RAMIS procedures, but for traditional MIS it is not readily available. Visual feature-based solutions are slowly catching up to the efficacy of kinematics-based solutions, but the best performing methods usually depend on 3D visual features, which require stereo cameras and calibration data, neither of which are available in MIS. This paper introduces a general 2D image-based solution that can enable the creation and application of surgical skill assessment solutions in any training environment. A well-established kinematics-based skill assessment benchmark’s feature extraction techniques have been repurposed to evaluate the accuracy that the generated data can produce. We reached individual accuracy up to 95.74% and mean accuracy – averaged over 5 cross-validation trials – up to 83.54%. Additional related resources such as the source codes, result and data files are publicly available on Github (https://github.com/abc-irobotics/visdatasurgicalskill).
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