【2h】

Automated Lobe-Based Airway Labeling

机译:自动基于叶的气道贴标

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摘要

Regional quantitative analysis of airway morphological abnormalities is of great interest in lung disease investigation. Considering that pulmonary lobes are relatively independent functional unit, we develop and test a novel and efficient computerized scheme in this study to automatically and robustly classify the airways into different categories in terms of pulmonary lobe. Given an airway tree, which could be obtained using any available airway segmentation scheme, the developed approach consists of four basic steps: (1) airway skeletonization or centerline extraction, (2) individual airway branch identification, (3) initial rule-based airway classification/labeling, and (4) self-correction of labeling errors. In order to assess the performance of this approach, we applied it to a dataset consisting of 300 chest CT examinations in a batch manner and asked an image analyst to subjectively examine the labeled results. Our preliminary experiment showed that the labeling accuracy for the right upper lobe, the right middle lobe, the right lower lobe, the left upper lobe, and the left lower lobe is 100%, 99.3%, 99.3%, 100%, and 100%, respectively. Among these, only two cases are incorrectly labeled due to the failures in airway detection. It takes around 2 minutes to label an airway tree using this algorithm.
机译:气道形态异常的区域定量分析在肺疾病研究中非常重要。考虑到肺叶是相对独立的功能单元,我们在这项研究中开发并测试了一种新颖而有效的计算机化方案,可以根据肺叶自动,稳健地将气道分为不同类别。给定可以使用任何可用的气道分割方案获得的气道树,所开发的方法包括四个基本步骤:(1)气道骨架化或中心线提取;(2)个体气道分支识别;(3)基于初始规则的气道分类/标签,以及(4)自我纠正标签错误。为了评估此方法的性能,我们将其以批处理方式应用于由300例胸部CT检查组成的数据集,并要求图像分析人员主观检查标记的结果。我们的初步实验表明,右上叶,右中叶,右下叶,左上叶和左下叶的标记准确度分别为100%,99.3%,99.3%,100%和100% , 分别。其中,仅两种情况由于气道检测失败而被错误地标记。使用此算法标记气道树大约需要2分钟。

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