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Accurate Airway Segmentation Based on Intensity Structure Analysis and Graph-cut

机译:基于强度结构分析和图割的精确气道分割

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This paper presents a novel airway segmentation method based on intensity structure analysis and graph-cut. Airway segmentation is an important step in analyzing chest CT volumes for computerized lung cancer detection, emphysema diagnosis, asthma diagnosis, and pre- and intra-operative bronchoscope navigation. However, obtaining a complete 3-D airway tree structure from a CT volume is quite challenging. Several researchers have proposed automated algorithms basically based on region growing and machine learning techniques. However these methods failed to detect the peripheral bronchi branches. They caused a large amount of leakage. This paper presents a novel approach that permits more accurate extraction of complex bronchial airway region. Our method are composed of three steps. First, the Hessian analysis is utilized for enhancing the line-like structure in CT volumes, then a multiscale cavity-enhancement filter is employed to detect the cavity-like structure from the previous enhanced result. In the second step, we utilize the support vector machine (SVM) to construct a classifier for removing the FP regions generated. Finally, the graph-cut algorithm is utilized to connect all of the candidate voxels to form an integrated airway tree. We applied this method to sixteen cases of 3D chest CT volumes. The results showed that the branch detection rate of this method can reach about 77.7% without leaking into the lung parenchyma areas.
机译:本文提出了一种基于强度结构分析和图割的气道分割新方法。气道分割是分析胸部CT量的重要步骤,以进行计算机肺癌检测,肺气肿诊断,哮喘诊断以及术前和术中支气管镜导航。但是,从CT量中获得完整的3D气道树结构非常具有挑战性。几位研究人员提出了基本上基于区域增长和机器学习技术的自动化算法。然而,这些方法未能检测到外周支气管分支。它们引起大量泄漏。本文提出了一种新颖的方法,可以更准确地提取复杂的支气管气道区域。我们的方法包括三个步骤。首先,使用Hessian分析来增强CT体积中的线状结构,然后使用多尺度腔增强滤波器从先前的增强结果中检测出腔状结构。在第二步中,我们利用支持向量机(SVM)构造一个分类器,以去除生成的FP区域。最后,利用图割算法将所有候选体素连接起来,以形成一个综合的气道树。我们将此方法应用于16例3D胸部CT量。结果表明,该方法的分支检测率可以达到约77.7%,而不会泄漏到肺实质区域。

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