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Semi-automatic three-dimensional vessel segmentation using a connected component localization of the Region-Scalable Fitting Energy

机译:半自动三维血管分割,使用区域可伸缩的拟合能量的连接成分定位

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Segmentation of patient-specific vascular segments of interest from medical images is an important topic for numerous applications. Despite the great importance of having semi-automatic segmentation methods in this field, the process of image segmentation is still based on several operator-dependent steps which make large-scale segmentation a non trivial and time consuming task. In this work we present a semi-automatic segmentation method to reconstruct vascular structures from three-dimensional medical images. We start from the minimization of the Region Scalable Fitting Energy using the Split-Bregman method and we modify the resulting algorithm adding a connected component extraction of the solution starting from a point that identifies the vascular structure of interest. In this way, we add a constraint to the algorithm focusing it only on the vascular structure we want to reconstruct and avoiding the attachment with the nearby objects. Finally, we describe a strategy to minimize the number of involved parameters in order to limit the user effort. The results obtained on two different images (a Magnetic Resonance and a Computed Tomography) demonstrate that our method outperforms the original method in segmenting the vascular region of interest without the inclusion of nearby objects in the result.
机译:来自医学图像的患者特异性血管片段的分割是许多应用的重要课题。尽管在该字段中具有半自动分割方法非常重要,但图像分割过程仍然基于多个操作员相关步骤,这使得大规模分割是非琐碎和耗时的任务。在这项工作中,我们提出了一种半自动分段方法来重建来自三维医学图像的血管结构。我们使用拆分-Brogman方法开始从区域可伸缩拟合能量的最小化,并且我们修改从识别血管结构的血管结构的点开始加工溶液的连接分量提取。通过这种方式,我们为仅在我们想要重建和避免与附近物体的附件上的血管结构上的算法增加了对算法的约束。最后,我们描述了一种最小化涉及参数的数量的策略,以限制用户努力。在两个不同的图像(磁共振和计算断层扫描)上获得的结果表明,我们的方法优于分割血管区域的原始方法,而不包含附近的物体。

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