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Airway Segmentation, Skeletonization, and Tree Matching to Improve Registration of 3D CT Images with Large Opacities in the Lungs

机译:气道分割,骨骼化和树匹配可改善肺不透明性较大的3D CT图像的配准

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In this work, we address the registration of pulmonary images, representing the same subject, with large opaque regions within the lungs, and with possibly large displacements. We propose a hybrid method combining alignment based on gray levels and landmarks within the same cost function. The landmarks are nodes of the airway tree obtained by specially developed segmentation and skeletonization algorithms. The former uses the random walker approach, whereas the latter exploits the minimum spanning tree constructed by the Dijkstra's algorithm, in order to detect end-points and bifurcations. Airway trees from different images are matched by a modified best-first-search algorithm with a specially designed distance function. The proposed method was evaluated on computed-tomography images of subjects with acute respiratory distress syndrome, acquired at significantly different mechanical ventilation conditions. It achieved better results than registration based only on gray levels, but also better than hybrid registration using a standard airway-segmentation method.
机译:在这项工作中,我们解决了肺图像的注册问题,该图像代表同一受试者,肺内有较大的不透明区域,并且可能有较大的位移。我们提出了一种混合方法,将基于灰度和界标的对齐方式组合在同一成本函数内。地标是通过特殊开发的分割和骨架化算法获得的气道树的节点。前者使用随机沃克方法,而后者则利用Dijkstra算法构造的最小生成树,以检测端点和分支。来自不同图像的气道树通过具有最佳设计距离函数的改进的“最佳优先搜索”算法进行匹配。在计算机断层扫描条件明显不同的急性呼吸窘迫综合征的计算机断层扫描图像上评估了所提出的方法。与仅基于灰度级的配准相比,它获得了更好的结果,但也比使用标准气道分割方法的混合配准更好。

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