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Robust vessel segmentation

机译:可靠的血管分割

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摘要

In the context of cardiac applications, the primary goal of coronary vessel analysis often consists in supporting the diagnosis of vessel wall anomalies, such as coronary plaque and stenosis. Therefore, a fast and robust segmentation of the coronary tree is a very important but challenging task. We propose a new approach for coronary artery segmentation. Our method is based on an earlier proposed progressive region growing. A new growth front monitoring technique controls the segmentation and corrects local leakage by retrospective detection and removal of leakage artifacts. While progressively reducing the region growing threshold for the whole image, the growing process is locally analyzed using criteria based on the assumption of tubular, gradually narrowing vessels. If a voxel volume limit or a certain shape constraint is exceeded, the growing process is interrupted. Voxels affected by a failed segmentation are detected and deleted from the result. To avoid further processing at these positions, a large neighborhood is blocked for growing. Compared to a global region growing without local correction, our new local growth control and the adapted correction can deal with contrast decrease even in very small coronary arteries. Furthermore, our algorithm can efficiently handle noise artifacts and partial volume effects near the myocardium. The enhanced segmentation of more distal vessel parts was tested on 150 CT datasets. Furthermore, a comparison between the pure progressive region growing and our new approach was conducted.
机译:在心脏应用方面,冠状动脉分析的主要目标通常在于支持对冠状动脉斑块和狭窄等血管壁异常的诊断。因此,对冠状动脉树进行快速而稳健的分割是非常重要但具有挑战性的任务。我们提出了一种新的冠状动脉分割方法。我们的方法基于较早提出的渐进区域生长。一种新的生长前沿监视技术可通过追溯检测和消除泄漏伪影来控制分割并纠正局部泄漏。在逐步降低整个图像的区域增长阈值的同时,使用基于管状逐渐变窄的血管的假设对生长过程进行局部分析。如果超过了体素体积限制或某个形状限制,则生长过程会中断。分割失败会影响到体素,并将其从结果中删除。为了避免在这些位置进行进一步处理,将较大的邻域封闭以进行生长。与不进行局部矫正的全球区域相比,即使在非常小的冠状动脉中,我们新的局部生长控制和适应性矫正也可以应对对比度下降。此外,我们的算法可以有效地处理噪声伪像和心肌附近的部分体积效应。在150个CT数据集上测试了更多远端血管部分的增强分割。此外,还对纯渐进区域的增长与我们的新方法进行了比较。

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