基于本体的外科子任务自动化,钝性解剖自动化

D. A. Nagy, T. D. Nagy, R. Elek, I. Rudas, T. Haidegger
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引用次数: 20

摘要

外科手术过程(SPs)的自动化是一个非常复杂的,但医学专家高度要求的功能。目前,只有具有先进感觉和诊断能力的手术工具可用。对新开发的仪器的主要批评是,它们不适合现有的医疗工作流程,往往给外科医生带来更多的烦恼而不是好处。实现计算机技术流线型集成的第一步是更好地理解SP。外科本体论为描述外科手术过程的要素提供了一个通用平台。建立在这些本体之上的手术过程模型(SPMs)具有准确表示手术工作流程的潜力。spm提供了使用本体论术语作为自动化基础的机会,允许开发的算法轻松集成到手术工作流程中,并在工作流程中出现相关本体论术语的任何地方应用自动化spm。在这项工作中,作为这个概念的一个例子,子任务级本体论术语“钝性解剖”的目标是自动化。我们实现了一个计算机视觉驱动的方法来证明在这个任务级别上自动化是可行的。该算法已在一个实验硅胶模体以及几个离体环境中进行了测试。该实现使用达芬奇手术机器人,通过达芬奇研究工具包(DVRK)控制,依赖于DVRK机构之间的共享代码库。人们相信,开发和连接更低级别的外科子任务的进一步构建块可能会导致自动化软组织手术的引入。将来,可以对构建块进行单独的单元测试,从而导致领域的增量自动化。这个框架有可能标准化手术表现,最终改善患者的治疗效果。
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Ontology-Based Surgical Subtask Automation, Automating Blunt Dissection
Automation of surgical processes (SPs) is an utterly complex, yet highly demanded feature by medical experts. Currently, surgical tools with advanced sensory and diagnostic capabilities are only available. A major criticism towards the newly developed instruments that they are not fitting into the existing medical workflow often creating more annoyance than benefit for the surgeon. The first step in achieving streamlined integration of computer technologies is gaining a better understanding of the SP. Surgical ontologies provide a generic platform for describing elements of the surgical procedures. Surgical Process Models (SPMs) built on top of these ontologies have the potential to accurately represent the surgical workflow. SPMs provide the opportunity to use ontological terms as the basis of automation, allowing the developed algorithm to easily integrate into the surgical workflow, and to apply the automated SPMs wherever the linked ontological term appears in the workflow. In this work, as an example to this concept, the subtask level ontological term “blunt dissection” was targeted for automation. We implemented a computer vision-driven approach to demonstrate that automation on this task level is feasible. The algorithm was tested on an experimental silicone phantom as well as in several ex vivo environments. The implementation used the da Vinci surgical robot, controlled via the Da Vinci Research Kit (DVRK), relying on a shared code-base among the DVRK institutions. It is believed that developing and linking further building blocks of lower level surgical subtasks could lead to the introduction of automated soft tissue surgery. In the future, the building blocks could be individually unit tested, leading to incremental automation of the domain. This framework could potentially standardize surgical performance, eventually improving patient outcomes.
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