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Graph-Based Airway Tree Reconstruction from Chest CT Scans: Evaluation of Different Features on Five Cohorts

机译:通过胸部CT扫描重建基于图的气道树:评估五个队列的不同特征

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摘要

We present a graph-based framework for airway tree reconstruction from CT scans and evaluate the performance of different feature categories and their combinations on five lung cohorts. The approach consists of two main processing steps. First, potential airway branch and connection candidates are identified and represented by a graph structure with weighted nodes and edges, respectively. Second, an optimization algorithm is utilized for generating an airway detection result by selecting a subset of airway branches and connections based on graph weights derived from image features. The performance of the algorithm with different feature categories and their combinations was assessed on a set of 50 lung CT scans from five different cohorts, including normal and diseased lungs. Results show tradeoffs between feature categories/combinations in terms of correctly (true positive) and incorrectly (false positive) identified airways. Also, the performance of features in dependence of lung cohort was analyzed. Across all cohorts, a good trade-off with high true positive rate (TPR) and low false positive rate (FPR) was achieved by a combination of gray-value, local shape, and structural features. This combination enabled extracting 91.80% of reference airways (TPR) in combination with a low FPR of 1.00%. In addition, this variant was evaluated on the public EXACT’09 test set, and a comparison with other airway detection approaches is provided. One of the main advantages of the presented method is that it is robust against local disturbances/artifacts or other ambiguities that are frequently occurring in lung CT scans.
机译:我们提出了一种基于图的CT扫描气道树重建框架,并评估了五个肺部队列中不同特征类别及其组合的性能。该方法包括两个主要处理步骤。首先,识别潜在的气道分支和连接候选者,并分别由具有加权节点和边缘的图结构表示。其次,基于从图像特征得出的图形权重,通过选择气道分支和连接的子集,利用优化算法来生成气道检测结果。通过对来自五个不同队列(包括正常和患病肺)的50次肺部CT扫描进行评估,评估了具有不同特征类别及其组合的算法的性能。结果显示,在正确识别(真阳性)和错误识别(假阳性)的气道方面,要素类别/组合之间存在权衡。此外,分析了依赖于肺队列的特征的表现。在所有队列中,通过将灰度值,局部形状和结构特征相结合,可以在高真阳性率(TPR)和低假阳性率(FPR)之间取得良好的平衡。这种组合可以提取91.80%的参考气道(TPR),并具有1.00%的低FPR。此外,该变体已在EXACT'09公开测试集中进行了评估,并与其他气道检测方法进行了比较。所提出的方法的主要优点之一是,它对于在肺部CT扫描中经常发生的局部干扰/伪影或其他歧义具有鲁棒性。

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