Bauer Christian, Krueger Melissa A, Lamm Wayne J, Smith Brian J, Glenny Robb W, Beichel Reinhard R
IEEE Trans Biomed Eng. 2014 Jan;61(1):119-30. doi: 10.1109/TBME.2013.2277936. Epub 2013 Aug 15.
A highly automated method for the segmentation of airways in the serial block-face cryomicrotome images of rat lungs is presented. First, a point inside of the trachea is manually specified. Then, a set of candidate airway centerline points is automatically identified. By utilizing a novel path extraction method, a centerline path between the root of the airway tree and each point in the set of candidate centerline points is obtained. Local disturbances are robustly handled by a novel path extraction approach, which avoids the shortcut problem of standard minimum cost path algorithms. The union of all centerline paths is utilized to generate an initial airway tree structure, and a pruning algorithm is applied to automatically remove erroneous subtrees or branches. Finally, a surface segmentation method is used to obtain the airway lumen. The method was validated on five image volumes of Sprague-Dawley rats. Based on an expert-generated independent standard, an assessment of airway identification and lumen segmentation performance was conducted. The average of airway detection sensitivity was 87.4% with a 95% confidence interval (CI) of (84.9, 88.6)%. A plot of sensitivity as a function of airway radius is provided. The combined estimate of airway detection specificity was 100% with a 95% CI of (99.4, 100)%. The average number and diameter of terminal airway branches was 1179 and 159 μm, respectively. Segmentation results include airways up to 31 generations. The regression intercept and slope of airway radius measurements derived from final segmentations were estimated to be 7.22 μm and 1.005, respectively. The developed approach enables the quantitative studies of physiology and lung diseases in rats, requiring detailed geometric airway models.
本文提出了一种高度自动化的方法,用于在大鼠肺脏的连续块面冷冻切片图像中分割气道。首先,手动指定气管内的一个点。然后,自动识别一组候选气道中心线点。通过使用一种新颖的路径提取方法,获得气道树根部与候选中心线点集中每个点之间的中心线路径。一种新颖的路径提取方法能够稳健地处理局部干扰,避免了标准最小成本路径算法的捷径问题。利用所有中心线路径的并集生成初始气道树结构,并应用修剪算法自动去除错误的子树或分支。最后,使用表面分割方法获得气道管腔。该方法在五只Sprague-Dawley大鼠的图像数据集上进行了验证。基于专家生成的独立标准,对气道识别和管腔分割性能进行了评估。气道检测灵敏度的平均值为87.4%,95%置信区间(CI)为(84.9, 88.6)%。提供了灵敏度作为气道半径函数的曲线图。气道检测特异性的综合估计值为100%,95% CI为(99.4, 100)%。终末气道分支的平均数量和直径分别为1179个和159μm。分割结果包括多达31代的气道。从最终分割得出的气道半径测量值的回归截距和斜率估计分别为7.22μm和1.005。所开发的方法能够对大鼠的生理学和肺部疾病进行定量研究,这需要详细的气道几何模型。