Tschirren Juerg, Hoffman Eric A, McLennan Geoffrey, Sonka Milan
Department of Electrical and Computer Engineering, The University of Iowa, Iowa City, IA 52240, USA.
IEEE Trans Med Imaging. 2005 Dec;24(12):1529-39. doi: 10.1109/TMI.2005.857654.
The segmentation of the human airway tree from volumetric computed tomography (CT) images builds an important step for many clinical applications and for physiological studies. Previously proposed algorithms suffer from one or several problems: leaking into the surrounding lung parenchyma, the need for the user to manually adjust parameters, excessive runtime. Low-dose CT scans are increasingly utilized in lung screening studies, but segmenting them with traditional airway segmentation algorithms often yields less than satisfying results. In this paper, a new airway segmentation method based on fuzzy connectivity is presented. Small adaptive regions of interest are used that follow the airway branches as they are segmented. This has several advantages. It makes it possible to detect leaks early and avoid them, the segmentation algorithm can automatically adapt to changing image parameters, and the computing time is kept within moderate values. The new method is robust in the sense that it works on various types of scans (low-dose and regular dose, normal subjects and diseased subjects) without the need for the user to manually adjust any parameters. Comparison with a commonly used region-grow segmentation algorithm shows that the newly proposed method retrieves a significantly higher count of airway branches. A method that conducts accurate cross-sectional airway measurements on airways is presented as an additional processing step. Measurements are conducted in the original gray-level volume. Validation on a phantom shows that subvoxel accuracy is achieved for all airway sizes and airway orientations.
从容积计算机断层扫描(CT)图像中分割出人类气道树,对于许多临床应用和生理学研究而言都是重要的一步。先前提出的算法存在一个或多个问题:渗透到周围肺实质中、需要用户手动调整参数、运行时间过长。低剂量CT扫描在肺部筛查研究中越来越多地被使用,但使用传统气道分割算法对其进行分割往往效果不尽人意。本文提出了一种基于模糊连通性的新型气道分割方法。使用小的自适应感兴趣区域,这些区域会随着气道分支的分割而跟踪它们。这具有几个优点。它能够早期检测并避免渗漏,分割算法可以自动适应不断变化的图像参数,并且计算时间保持在适度范围内。新方法具有鲁棒性,因为它适用于各种类型的扫描(低剂量和常规剂量、正常受试者和患病受试者),无需用户手动调整任何参数。与常用的区域生长分割算法进行比较表明,新提出的方法能够检索到数量显著更多的气道分支。作为一个额外的处理步骤,本文还提出了一种对气道进行精确横截面测量的方法。测量在原始灰度体积中进行。在体模上的验证表明,对于所有气道尺寸和气道方向都实现了亚体素精度。