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Segmentation of 3D Vasculatures for Interventional Radiology Simulation

机译:用于介入放射学模拟的3D脉管系统分割

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Training in interventional radiology is slowly shifting towards simulation which allows the repetition of many interventions without putting the patient at risk. Accurate segmentation of anatomical structures is a prerequisite of realistic surgical simulation. Therefore, our aim is to develop a generic approach to provide fast and precise segmentation of various virtual anatomies covering a wide range of pathology, directly from patient CT/MRA images. This paper presents a segmentation framework including two segmentation methods: region model based level set segmentation and hierarchical segmentation. We compare them to an open source application ITK-SNAP which provides similar approaches. The subjective human influence such as inconsistent inter-observer errors and aliasing artifacts etc. are analysed. The proposed segmentation techniques have been successfully applied to create a database of various anatomies with different pathologies, which is used in computer-based simulation for interventional radiology training.
机译:介入放射学的培训正在逐步转向模拟,这允许重复许多干预而不会给患者带来风险。解剖结构的精确分割是现实外科手术模拟的前提。因此,我们的目标是开发一种通用方法,以直接从患者CT / MRA图像中快速准确地分割涵盖广泛病理学的各种虚拟解剖结构。本文提出了一种分割框架,包括两种分割方法:基于区域模型的水平集分割和分层分割。我们将它们与提供类似方法的开源应用程序ITK-SNAP进行比较。分析了主观的人为影响,例如不一致的观察者间错误和混叠伪影等。所提出的分割技术已成功地用于创建具有不同病理学的各种解剖结构的数据库,该数据库已在基于计算机的模拟中用于介入放射学培训。

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