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Automatic Segmentation of the Aorta and the adjoining Vessels

机译:自动分割主动脉和相邻的血管

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Diseases of the cardiovascular system are one of the main causes of death in the Western world. Especially the aorta and its main descending vessels are of high importance for diagnosis and treatment.Today, minimally invasive interventions are becoming increasingly popular due to their advantages like cost effectiveness and minimized risk for the patient. The training of such interventions, which require much of coordination skills, can be trained by task training systems, which are operation simualtion units. These systems require a data model that can be reconstructed from given patient data sets. In this paper, we present a method that allows to segment and classify aorta, carotides, and ostium (including coronary arteries) in one run, fully automatic and highly robust. The system tolerates changes in topology, streak artifacts in CT caused by calcification and inhomogeneous distribution of contrast agent. Both CT and MRI-Images can be processed. The underlying algorithm is based on a combination of Vesselness Enhancement Diffusion, Region Growing, and the Level Set Method. The system showed good results on all 15 real patient data sets whereby the deviation was smaller than two voxels.
机译:心血管系统疾病是西方世界死亡的主要原因之一。尤其是主动脉及其主要降血管对诊断和治疗非常重要。 如今,由于具有成本效益和患者风险最小化等优点,微创干预措施正变得越来越受欢迎。此类干预的培训需要大量的协调技能,可以通过任务训练系统(即操作模拟单元)来进行训练。这些系统需要可以从给定的患者数据集重建的数据模型。在本文中,我们提出了一种方法,该方法可以一次运行,全自动且高度鲁棒地对主动脉,颈动脉和窦口(包括冠状动脉)进行分割和分类。该系统可以承受由于钙化和造影剂分布不均引起的拓扑变化,CT条纹痕迹。可以处理CT和MRI图像。底层算法基于血管增强扩散,区域增长和水平集方法的组合。该系统在所有15个实际患者数据集上均显示出良好的结果,因此偏差小于两个体素。

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