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Segmentation of the Lung Anatomy for High Resolution Computed Tomography (HRCT) Thorax Images

机译:高分辨率计算断层扫描(HRCT)胸部图像的肺解剖分割

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In diagnosing interstitial lung disease (ILD) using HRCT Thorax images, the radiologists required to view large volume of images (30 slices scanned at 10 mm interval or 300 slices scanned at 1 mm interval). However, in the development of scoring index to assess the severity of the disease, viewing 3 to 5 slices at the predetermined levels of the lung is suffice for the radiologist. To develop an algorithm to determine the severity of the ILD, it is important for the computer aided system to capture the main anatomy of the chest, namely the lung and heart at these 5 predetermined levels. In this paper, an automatic segmentation algorithm is proposed to obtain the shape of the heart and lung. In determine the quality of the segmentation, ground truth or manual tracing of the lung and heart boundary done by senior radiologist was compared with the result from the proposed automatic segmentation. This paper discussed five segmentation quality measurements that are used to measure the performance of the proposed segmentation algorithm, namely, the volume overlap error rate (VOE), relative volumetric agreement (RVA), average symmetric surface distance (ASSD), root mean square surface distance (RMSD) and Hausdorff distance (HD). The results showed that the proposed segmentation algorithm produced good quality segmentation for both right and left lung and may be used in the development of computer aided system application.
机译:在使用HRCT胸部图像诊断(ILD)的诊断(ILD)时,需要观看大量图像所需的放射科(在10mm间隔或以1mm间隔扫描的300片扫描30个切片)。然而,在评分指数的发展中评估疾病的严重程度,在预定水平的肺部观察3到5个切片足以放射科学表现。为了开发一种确定ILD的严重性的算法,计算机辅助系统很重要,捕获胸部的主要解剖结构,即肺和心脏在这5个预定水平。本文提出了一种自动分割算法来获得心脏和肺的形状。在确定所提出的自动分割的结果中,将高级放射科学家的肺和心脏边界的分割质量,地面真理或手动追踪进行了比较。本文讨论了五个分割质量测量,用于测量所提出的分割算法的性能,即体积重叠误差率(差),相对容量协议(RVA),平均对称表面距离(ASSD),均方根距离(RMSD)和Hausdorff距离(HD)。结果表明,所提出的分割算法为右肺和左肺产生了良好的质量分割,可用于计算机辅助系统应用的开发。

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