高斯混合多元自回归(GMMAR)模型的外科工作流程分析:仿真研究。

Q Medicine Computer Aided Surgery Pub Date : 2013-01-01 Epub Date: 2013-02-06 DOI:10.3109/10929088.2012.762944
Constantinos Loukas, Evangelos Georgiou
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引用次数: 25

摘要

目前,人们对分析在物理或模拟环境下进行的微创手术的工作流程非常感兴趣,目的是提取可用于技能提高、术中流程优化和不同介入策略比较的重要信息。实现这一目标的第一步是将作业划分为关键的干预阶段,目前通过建模描述预定义工具集的时间使用的多变量信号来实现。尽管该技术已显示出良好的效果,但仍存在人工提取工具使用顺序和无法同时评估外科医生技能的问题。在本文中,我们描述了一种基于高斯混合多元自回归(GMMAR)手部运动学模型的手术相位分割和性能分析的替代方法。与该领域以前的工作不同,我们的技术使用来自方向传感器的信号,连接到虚拟现实模拟器的内窥镜仪器上,而不考虑在操作的每个时间步使用哪种工具。首先,基于预分割的手部运动信号,使用多元自回归(MAR)模型为每个手术阶段创建回归系数训练集。然后,用GMMAR处理来自新操作的信号,其中每个相位由回归系数的高斯分量建模。将这些系数与训练集的系数进行比较。根据GMMAR估计的手术阶段的先验概率对手术进行分段。该方法还可以研究每个阶段的运动行为和手部运动同步,这一质量可以纳入现代腹腔镜模拟器的技能评估。
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Surgical workflow analysis with Gaussian mixture multivariate autoregressive (GMMAR) models: a simulation study.

There is currently great interest in analyzing the workflow of minimally invasive operations performed in a physical or simulation setting, with the aim of extracting important information that can be used for skills improvement, optimization of intraoperative processes, and comparison of different interventional strategies. The first step in achieving this goal is to segment the operation into its key interventional phases, which is currently approached by modeling a multivariate signal that describes the temporal usage of a predefined set of tools. Although this technique has shown promising results, it is challenged by the manual extraction of the tool usage sequence and the inability to simultaneously evaluate the surgeon's skills. In this paper we describe an alternative methodology for surgical phase segmentation and performance analysis based on Gaussian mixture multivariate autoregressive (GMMAR) models of the hand kinematics. Unlike previous work in this area, our technique employs signals from orientation sensors, attached to the endoscopic instruments of a virtual reality simulator, without considering which tools are employed at each time-step of the operation. First, based on pre-segmented hand motion signals, a training set of regression coefficients is created for each surgical phase using multivariate autoregressive (MAR) models. Then, a signal from a new operation is processed with GMMAR, wherein each phase is modeled by a Gaussian component of regression coefficients. These coefficients are compared to those of the training set. The operation is segmented according to the prior probabilities of the surgical phases estimated via GMMAR. The method also allows for the study of motor behavior and hand motion synchronization demonstrated in each phase, a quality that can be incorporated into modern laparoscopic simulators for skills assessment.

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来源期刊
Computer Aided Surgery
Computer Aided Surgery 医学-外科
CiteScore
0.75
自引率
0.00%
发文量
0
审稿时长
>12 weeks
期刊介绍: The scope of Computer Aided Surgery encompasses all fields within surgery, as well as biomedical imaging and instrumentation, and digital technology employed as an adjunct to imaging in diagnosis, therapeutics, and surgery. Topics featured include frameless as well as conventional stereotaxic procedures, surgery guided by ultrasound, image guided focal irradiation, robotic surgery, and other therapeutic interventions that are performed with the use of digital imaging technology.
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