首页> 外文会议>Visualization, Image-Guided Procedures, and Display; Progress in Biomedical Optics and Imaging; vol.7,no.27 >Knowledge modeling in image-guided neurosurgery: application in understanding intraoperative brain shift
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Knowledge modeling in image-guided neurosurgery: application in understanding intraoperative brain shift

机译:图像引导神经外科中的知识建模:在理解术中脑移位中的应用

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During an image-guided neurosurgery procedure, the neuronavigation system is subject to inaccuracy because of anatomical deformations which induce a gap between the preoperative images and their anatomical reality. Thus, the objective of many research teams is to succeed in quantifying these deformations in order to update preoperative images. Anatomical intraoperative deformations correspond to a complex spatio-temporal phenomenon. Our objective is to identify the parameters implicated in these deformations and to use these parameters as constrains for systems dedicated to updating preoperative images. In order to identify these parameters of deformation we followed the iterative methodology used for cognitive system conception: identification, conceptualization, formalization, implementation and validation. A state of the art about cortical deformations has been established in order to identify relevant parameters probably involved in the deformations. As a first step, 30 parameters have been identified and described following an ontological approach. They were formalized into a Unified Modeling Language (UML) class diagram. We implemented that model into a web-based application in order to fill a database. Two surgical cases have been studied at this moment. After having entered enough surgical cases for data mining purposes, we expect to identify the most relevant and influential parameters and to gain a better ability to understand the deformation phenomenon. This original approach is part of a global system aiming at quantifying and correcting anatomical deformations.
机译:在图像引导的神经外科手术过程中,神经导航系统会因解剖结构变形而产生误差,这会导致术前图像与其解剖结构之间产生间隙。因此,许多研究团队的目标是成功量化这些变形,以更新术前影像。术中解剖学变形对应于复杂的时空现象。我们的目标是确定与这些变形有关的参数,并将这些参数用作专用于更新术前图像的系统的约束。为了识别变形的这些参数,我们遵循了用于认知系统概念的迭代方法:识别,概念化,形式化,实现和验证。为了确定可能涉及变形的相关参数,已经建立了关于皮质变形的现有技术。第一步,已按照本体论方法确定并描述了30个参数。它们被正式化为统一建模语言(UML)类图。我们将该模型实施到基于Web的应用程序中,以填充数据库。目前已研究了两个外科病例。在为数据挖掘目的输入了足够的外科手术案例之后,我们期望识别出最相关和最有影响力的参数,并获得更好的理解变形现象的能力。这种原始方法是旨在量化和校正解剖变形的全局系统的一部分。

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