Kowalewski Timothy M, Rosen Jacob, Chang Lily, Sinanan Mika N, Hannaford Blake
Department of Electrical Engineering, University of Washington, Seattle, WA 98195-2500, USA.
Stud Health Technol Inform. 2004;98:174-9.
Surgical robotic systems and virtual reality simulators have introduced an unprecedented precision of measurement for both tool-tissue and tool-surgeon interaction; thus holding promise for more objective analyses of surgical skill. Integrative or averaged metrics such as path length, time-to-task, success/failure percentages, etc., have often been employed towards this end but these fail to address the processes associated with a surgical task as a dynamic phenomena. Stochastic tools such as Markov modeling using a 'white-box' approach have proven amenable to this type of analysis. While such an approach reveals the internal structure of the of the surgical task as a process, it requires a task decomposition based on expert knowledge, which may result in a relatively large/complex model. In this work, a 'black box' approach is developed with generalized cross-procedural applications., the model is characterized by a compact topology, abstract state definitions, and optimized codebook size. Data sets of isolated tasks were extracted from the Blue DRAGON database consisting of 30 surgical subjects stratified into six training levels. Vector quantization (VQ) was employed on the entire database, thus synthesizing a lexicon of discrete, task-independent surgical tool/tissue interactions. VQ has successfully established a dictionary of 63 surgical code words and displayed non-temporal skill discrimination. VQ allows for a more cross-procedural analysis without relying on a thorough study of the procedure, links the results of the black-box approach to observable phenomena, and reduces the computational cost of the analysis by discretizing a complex, continuous data space.
手术机器人系统和虚拟现实模拟器为工具与组织以及工具与外科医生之间的交互引入了前所未有的测量精度;因此有望对外科手术技能进行更客观的分析。为了实现这一目标,人们经常采用诸如路径长度、任务完成时间、成功/失败百分比等综合或平均指标,但这些指标未能将与外科手术任务相关的过程视为动态现象来处理。诸如使用“白盒”方法的马尔可夫建模等随机工具已被证明适用于此类分析。虽然这种方法揭示了作为一个过程的外科手术任务的内部结构,但它需要基于专家知识进行任务分解,这可能会导致模型相对较大/复杂。在这项工作中,开发了一种具有广义跨程序应用的“黑盒”方法。该模型的特点是具有紧凑的拓扑结构、抽象的状态定义和优化的码本大小。从由30名手术受试者组成的Blue DRAGON数据库中提取了孤立任务的数据集,这些受试者被分为六个训练级别。对整个数据库采用了矢量量化(VQ),从而合成了离散的、与任务无关的手术工具/组织交互的词汇表。VQ成功建立了一个包含63个手术代码词的字典,并显示出非时间性的技能区分。VQ允许进行更具跨程序的分析,而无需依赖对程序的深入研究,将黑盒方法的结果与可观察现象联系起来,并通过离散复杂的连续数据空间降低分析的计算成本。