Dept. of Electr. & Comput. Eng., Iowa Univ., Iowa City, IA.
IEEE Trans Med Imaging. 1996;15(3):314-26. doi: 10.1109/42.500140.
New sensitive and reliable methods for assessing alterations in regional lung structure and function are critically important for the investigation and treatment of pulmonary diseases. Accurate identification of the airway tree will provide an assessment of airway structure and will provide a means by which multiple volumetric images of the lung at the same lung volume over time can be used to assess regional parenchymal changes. The authors describe a novel rule-based method for the segmentation of airway trees from three-dimensional (3-D) sets of computed tomography (CT) images, and its validation. The presented method takes advantage of a priori anatomical knowledge about pulmonary airway and vascular trees and their interrelationships. The method is based on a combination of 3-D seeded region growing that is used to identify large airways, rule-based two-dimensional (2-D) segmentation of individual CT slices to identify probable locations of smaller diameter airways, and merging of airway regions across the 3-D set of slices resulting in a tree-like airway structure. The method was validated in 40 3-mm-thick CT sections from five data sets of canine lungs scanned via electron beam CT in vivo with lung volume held at a constant pressure. The method's performance was compared with that of the conventional 3-D region growing method. The method substantially outperformed an existing conventional approach to airway tree detection.
新的敏感且可靠的方法对于评估肺部结构和功能的改变非常重要,这对于肺部疾病的研究和治疗至关重要。准确识别气道树将提供气道结构的评估,并提供一种手段,可通过该手段随时间对同一肺容量的多个肺部容积图像进行评估,从而评估区域性实质变化。作者描述了一种新颖的基于规则的方法,用于从三维(3-D)计算机断层扫描(CT)图像集中分割气道树及其验证。所提出的方法利用了有关肺气道和血管树及其相互关系的先验解剖学知识。该方法基于 3-D 种子区域生长的组合,该方法用于识别大气道,基于规则的二维(2-D)分割各个 CT 切片以识别较小直径气道的可能位置,以及在 3-D 切片集中合并气道区域,从而形成树状气道结构。该方法在通过电子束 CT 对五组犬肺进行活体扫描的 40 个 3mm 厚的 CT 切片上进行了验证,肺容量保持在恒定压力下。将该方法的性能与传统的 3-D 区域生长方法进行了比较。该方法大大优于现有的气道树检测常规方法。