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Automatic Segmentation of Pulmonary Fissures in Computed Tomography Images Using 3D Surface Features

机译:使用3D表面特征在计算机断层扫描图像中自动分割肺裂

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摘要

Pulmonary interlobar fissures are important anatomic structures in human lungs and are useful in locating and classifying lung abnormalities. Automatic segmentation of fissures is a difficult task because of their low contrast and large variability. We developed a fully automatic training-free approach for fissure segmentation based on the local bending degree (LBD) and the maximum bending index (MBI). The LBD is determined by the angle between the eigenvectors of two Hessian matrices for a pair of adjacent voxels. It is used to construct a constraint to extract the candidate surfaces in three-dimensional (3D) space. The MBI is a measure to discriminate cylindrical surfaces from planar surfaces in 3D space. Our approach for segmenting fissures consists of five steps, including lung segmentation, plane-like structure enhancement, surface extraction with LBD, initial fissure identification with MBI, and fissure extension based on local plane fitting. When applying our approach to 15 chest computed tomography (CT) scans, the mean values of the positive predictive value, the sensitivity, the root–mean square (RMS) distance, and the maximal RMS are 91 %, 88 %, 1.01 ± 0.99 mm, and 11.56 mm, respectively, which suggests that our algorithm can efficiently segment fissures in chest CT scans.
机译:肺叶间裂是人肺中重要的解剖结构,可用于对肺部异常进行定位和分类。自动分割裂缝是一项艰巨的任务,因为它们的对比度低且变异性大。我们开发了一种基于局部弯曲度(LBD)和最大弯曲指数(MBI)的全自动无裂痕分割方法。对于一对相邻的体素,LBD由两个Hessian矩阵的特征向量之间的夹角确定。它用于构造约束以提取三维(3D)空间中的候选曲面。 MBI是在3D空间中区分圆柱面和平面的一种措施。我们的裂痕分割方法包括五个步骤,包括肺部分割,平面状结构增强,LBD表面提取,MBI初始裂痕识别以及基于局部平面拟合的裂痕扩展。将我们的方法应用于15次胸部CT扫描时,阳性预测值,灵敏度,均方根(RMS)距离和最大RMS的平均值分别为91%,88%,1.01±0.99毫米和11.56毫米,这表明我们的算法可以有效地分割胸部CT扫描中的裂痕。

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