Heydarian Mohammadreza, Noseworthy Michael D, Kamath Markad V, Boylan Colm, Poehlman W F S
Department of Computing and Software, McMaster University, Hamilton Ontario, Canada.
Departments of computing and software engineering, electrical and computer engineering, medicine and medical physics. McMaster University, and McMaster School of Biomedical Engineering, Hamilton ON, Canada.
Crit Rev Biomed Eng. 2014;42(5):369-81. doi: 10.1615/critrevbiomedeng.2014012135.
Accurate measurement of human airway lumen bifurcation angle in the bronchial tree may be an important parameter for evidence of pulmonary diseases. Here, we describe a new method for recognizing and following airway bifurcation over numerous contiguous CT images. Based on morphological properties of airways and specific changes to airway properties while digitally navigating through the bifurcation, our method is able to track airways through several levels of bifurcation. Then, based on the center of the lumen area, determined by the level set segmentation algorithm, we estimate the centerline of each branch and calculate the angle between two bifurcating branches. By applying this method to an airway imaging phantom, we obtained accurate results in a short computational time. This new approach provides a rapid, automated, and accurate lung airway angle measurement and may prove useful to radiologists who use CT images for pulmonary disease assessment.
准确测量支气管树中人类气道腔分叉角度可能是肺部疾病诊断的一个重要参数。在此,我们描述了一种在众多连续CT图像上识别和追踪气道分叉的新方法。基于气道的形态学特性以及在数字导航通过分叉时气道特性的特定变化,我们的方法能够追踪经过多个分叉级别的气道。然后,基于由水平集分割算法确定的管腔区域中心,我们估计每个分支的中心线并计算两个分叉分支之间的角度。通过将此方法应用于气道成像模型,我们在短计算时间内获得了准确结果。这种新方法提供了一种快速、自动且准确的肺气道角度测量方法,可能对使用CT图像进行肺部疾病评估的放射科医生有用。