Department of Radiology, University of Pittsburgh, Pittsburgh, Pennsylvania 15213, USA.
Med Phys. 2007 Jul;34(7):2844-52. doi: 10.1118/1.2742777.
We developed and tested a fully automated computerized scheme that identifies pulmonary airway sections depicted on computed tomography (CT) images and computes their sizes including the lumen and airway wall areas. The scheme includes four processing modules that (1) segment left and right lung areas, (2) identify airway locations, (3) segment airway walls from neighboring pixels, and (4) compute airway sizes. The scheme uses both a raster scanning and a labeling algorithm complemented by simple classification rules for region size and circularity to automatically search for and identify airway sections of interest. A profile tracking method is used to segment airway walls from neighboring pixels including those associated with dense tissue (i.e., pulmonary arteries) along scanning radial rays. A partial pixel membership method is used to compute airway size. The scheme was tested on ten randomly selected CT studies that included 26 sets of CT images acquired using both low and conventional dose CT examinations with one of four reconstruction algorithms (namely, "bone," "lung," "soft," and "standard" convolution kernels). Three image section thicknesses (1.25, 2.5, and 5 mm) were evaluated. The scheme detected a large number of quantifiable airway sections when the CT images were reconstructed using high spatial frequency convolution kernels. The detection results demonstrated a consistent trend for all test image sets in that as airway lumen size increases, on average the airway wall area increases as well and the wall area percentage decreases. The study suggested that CT images reconstructed using high spatial frequency convolution kernels and thin-section thickness were most amenable to automated detection, reasonable segmentation, and quantified assessment when the airways are close to being perpendicular to the CT image plane.
我们开发并测试了一种全自动计算机化方案,该方案可识别 CT 图像上描绘的肺气道部分,并计算其大小,包括管腔和气道壁面积。该方案包括四个处理模块,(1)分割左右肺区域,(2)识别气道位置,(3)从相邻像素分割气道壁,以及(4)计算气道大小。该方案使用光栅扫描和标记算法,并辅以区域大小和圆形度的简单分类规则,自动搜索和识别感兴趣的气道部分。使用轮廓跟踪方法从相邻像素中分割气道壁,包括与密集组织(即肺动脉)相关的那些像素,沿着扫描径向射线。使用部分像素成员方法计算气道大小。该方案在十项随机选择的 CT 研究中进行了测试,这些研究包括 26 组使用低剂量和常规剂量 CT 检查以及四种重建算法(即“骨”、“肺”、“软”和“标准”卷积核)获得的 CT 图像。评估了三种图像截面厚度(1.25、2.5 和 5 毫米)。当使用高空间频率卷积核重建 CT 图像时,该方案检测到大量可量化的气道部分。检测结果表明,对于所有测试图像集,都存在一致的趋势,即随着气道管腔尺寸的增加,气道壁面积平均增加,壁面积百分比减小。该研究表明,当气道接近垂直于 CT 图像平面时,使用高空间频率卷积核和薄截面厚度重建的 CT 图像最适合自动检测、合理分割和量化评估。