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A graph-cut approach for pulmonary artery-vein segmentation in noncontrast CT images

机译:非共用CT图像中肺动脉静脉分割的平板切割方法

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Lung vessel segmentation has been widely explored by the biomedical image processing community; however, the differentiation of arterial from venous irrigation is still a challenge. Pulmonary artery-vein (AV) segmentation using computed tomography (Cr) is growing in importance owing to its undeniable utility in multiple cardiopulmonary pathological states, especially those implying vascular remodelling, allowing the study of both flow systems separately. We present a new framework to approach the separation of tree-like structures using local information and a specifically designed graph-cut methodology that ensures connectivity as well as the spatial and directional consistency of the derived subtrees. This framework has been applied to the pulmonary AV classification using a random forest (RF) pre-classifier to exploit the local anatomical differences of arteries and veins. The evaluation of the system was performed using 192 bronchopulmonary segment phantoms, 48 anthropomorphic pulmonary CT phantoms, and 26 lungs from noncontrast CT images with precise voxel-based reference standards obtained by manually labelling the vessel trees. The experiments reveal a relevant improvement in the accuracy (similar to 20%) of the vessel particle classification with the proposed framework with respect to using only the pre-classification based on local information applied to the whole area of the lung under study. The results demonstrated the accurate differentiation between arteries and veins in both clinical and synthetic cases, specifically when the image quality can guarantee a good airway segmentation, which opens a huge range of possibilities in the clinical study of cardiopulmonary diseases. (C) 2018 Published by Elsevier B.V.
机译:肺船分割已被生物医学图像处理群落普遍探索;然而,从静脉灌溉的各个动脉的分化仍然是一个挑战。使用计算机断层扫描(CR)的肺动脉静脉(AV)分割由于其在多种心肺病理状态中的不可否认的效用而越来越重要,特别是那些暗示血管改造的那些,允许分别研究两个流量系统。我们提出了一种新的框架,可以使用本地信息和专门设计的图形切割方法来接近树状结构的分离,并确保连接性的连接性以及派生子树的空间和方向一致性。该框架已应用于使用随机森林(RF)预分类器的肺部AV分类,以利用动脉和静脉的局部解剖差异。使用192间支气管肺段映像,48个拟人肺CT幻影和来自非共壳CT图像的26个肺的评价,通过手动标记血管树获得的基于精确的体素的参考标准。该实验揭示了血管颗粒分类的准确性(类似于20%)的相关改善,其中仅基于应用于在研究下的肺部整个区域的局部信息的局部信息的提出的框架。结果表明,临床和合成病例中的动脉和静脉之间的准确分化,特别是当图像质量可以保证良好的气道分割,这在心肺疾病的临床研究中开辟了巨大的可能性。 (c)2018由elsevier b.v发布。

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