首页> 外文会议>Image Processing pt.3; Progress in Biomedical Optics and Imaging; vol.7 no.30 >Local Pulmonary Structure Classification for Computer-Aided Nodule Detection
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Local Pulmonary Structure Classification for Computer-Aided Nodule Detection

机译:计算机辅助结节检测的局部肺结构分类

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We propose a new method of classifying the local structure types, such as nodules, vessels, and junctions, in thoracic CT scans. This classification is important in the context of computer aided detection (CAD) of lung nodules. The proposed method can be used as a post-process component of any lung CAD system. In such a scenario, the classification results provide an effective means of removing false positives caused by vessels and junctions thus improving overall performance. As main advantage, the proposed solution transforms the complex problem of classifying various 3D topological structures into much simpler 2D data clustering problem, to which more generic and flexible solutions are available in literature, and which is better suited for visualization. Given a nodule candidate, first, our solution robustly fits an anisotropic Gaussian to the data. The resulting Gaussian center and spread parameters are used to affine-normalize the data domain so as to warp the fitted anisotropic ellipsoid into a fixed-size isotropic sphere. We propose an automatic method to extract a 3D spherical manifold, containing the appropriate bounding surface of the target structure. Scale selection is performed by a data driven entropy minimization approach. The manifold is analyzed for high intensity clusters, corresponding to protruding structures. Techniques involve EM clustering with automatic mode number estimation, directional statistics, and hierarchical clustering with a modified Bhattacharyya distance. The estimated number of high intensity clusters explicitly determines the type of pulmonary structures: nodule (0), attached nodule (1), vessel (2), junction (> 3). We show accurate classification results for selected examples in thoracic CT scans. This local procedure is more flexible and efficient than current state of the art and will help to improve the accuracy of general lung CAD systems.
机译:我们提出了一种对胸部CT扫描中的局部结构类型(例如结节,血管和连接点)进行分类的新方法。在肺结节的计算机辅助检测(CAD)的背景下,此分类很重要。所提出的方法可以用作任何肺部CAD系统的后处理组件。在这种情况下,分类结果提供了一种有效的方法,可以消除由血管和连接点引起的误报,从而提高整体性能。作为主要优点,提出的解决方案将将各种3D拓扑结构分类的复杂问题转换为更简单的2D数据聚类问题,文献中提供了更为通用和灵活的解决方案,并且更适合可视化。首先给出一个结节候选,我们的解决方案将各向异性高斯稳健地拟合到数据中。所得的高斯中心和扩展参数用于对数据域进行仿射归一化,以将拟合的各向异性椭球体扭曲为固定大小的各向同性球体。我们提出了一种自动方法来提取3D球形歧管,其中包含目标结构的适当边界表面。标度选择是通过数据驱动的熵最小化方法执行的。分析歧管中的高强度簇,对应于突出结构。这些技术包括具有自动模式编号估计的EM聚类,方向统计信息以及具有经过修改的Bhattacharyya距离的层次聚类。高强度簇的估计数量明确确定了肺部结构的类型:结节(0),附着结节(1),血管(2),交界处(> 3)。我们在胸部CT扫描中显示选定示例的准确分类结果。这种本地程序比现有技术更灵活,更有效,将有助于提高一般肺部CAD系统的准确性。

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