Department of Computer Science, Johns Hopkins University, Baltimore, MD 21218, USA.
J Thorac Cardiovasc Surg. 2012 Mar;143(3):528-34. doi: 10.1016/j.jtcvs.2011.11.002. Epub 2011 Dec 14.
Current robotic training approaches lack the criteria for automatically assessing and tracking (over time) technical skills separately from clinical proficiency. We describe the development and validation of a novel automated and objective framework for the assessment of training.
We are able to record all system variables (stereo instrument video, hand and instrument motion, buttons and pedal events) from the da Vinci surgical systems using a portable archival system integrated with the robotic surgical system. Data can be collected unsupervised, and the archival system does not change system operations in any way. Our open-ended multicenter protocol is collecting surgical skill benchmarking data from 24 trainees to surgical proficiency, subject only to their continued availability. Two independent experts performed structured (objective structured assessment of technical skills) assessments on longitudinal data from 8 novice and 4 expert surgeons to generate baseline data for training and to validate our computerized statistical analysis methods in identifying the ranges of operational and clinical skill measures.
Objective differences in operational and technical skill between known experts and other subjects were quantified. The longitudinal learning curves and statistical analysis for trainee performance measures are reported. Graphic representations of the skills developed for feedback to the trainees are also included.
We describe an open-ended longitudinal study and automated motion recognition system capable of objectively differentiating between clinical and technical operational skills in robotic surgery. Our results have demonstrated a convergence of trainee skill parameters toward those derived from expert robotic surgeons during the course of our training protocol.
目前的机器人训练方法缺乏自动评估和跟踪(随时间推移)技术技能的标准,无法将其与临床能力分开。我们描述了一种新颖的自动和客观的评估培训框架的开发和验证。
我们能够使用与机器人手术系统集成的便携式存档系统,从达芬奇手术系统记录所有系统变量(立体仪器视频、手和仪器运动、按钮和脚踏事件)。可以进行无人监督的数据收集,存档系统不会以任何方式改变系统操作。我们的开放式多中心协议正在从 24 名受训者收集手术技能基准数据,以达到熟练程度,这仅取决于他们是否继续可用。两名独立专家对 8 名新手和 4 名专家外科医生的纵向数据进行了结构化(技术技能客观结构化评估)评估,以生成培训的基线数据,并验证我们的计算机统计分析方法在识别操作和临床技能测量范围方面的有效性。
量化了已知专家和其他受试者之间操作和技术技能的客观差异。报告了学员表现措施的纵向学习曲线和统计分析。还包括用于向学员提供反馈的技能发展的图形表示。
我们描述了一种开放式纵向研究和自动化运动识别系统,能够在机器人手术中客观地区分临床和技术操作技能。我们的结果表明,在培训协议期间,学员技能参数与来自机器人外科专家的参数趋同。