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Point based methods for automatic bronchial tree matching and labelling

机译:基于点的自动支气管树匹配和标记方法

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When addressing the task of automatic tracheo-bronchial tree matching it seems natural to make use of the tree's graph structure and branching characteristics. In tracheo-bronchial trees that were automatically extracted from multi-slice CT data, however, the graph information is not always reliable, especially for noisy or low-dose data which makes the abovementioned class of approaches prone to error in these situations. In this work we investigate what can be gained by using the spatial position of the bronchial centerline points. For this purpose we introduce, investigate, and compare two approaches to tree matching that are based on the use of centerline point positions alone with no additional connectivity information. As features we use (1) the 3D shape context and (2) statistical moments of the local point distribution. The 3D shape context has recently been introduced as a regional shape descriptor. It is based on a spherical histogram with logarithmic sampling in the radial direction. Both methods are used in order to match an automatically extracted tree to a manually labeled model tree which results in an automatic anatomical labeling of the data tree. Six tracheo-bronchial trees were matched to a given model tree. The data trees covered a range from high quality data to poor quality data. Furthermore two of the cases exhibited strongly distorted anatomy. It could be shown that the 3D shape context feature labeled 69% of the branches correctly with one of 34 anatomical labels. In the case of the statistical moment feature 40% of the branches were labeled correctly. We conclude that the set of centerline points alone allows correct labeling of a large portion of lung segments. We propose to combine the valuable local shape information in future work with connectivity and branching information, where the latter is reliably available.
机译:在解决气管支气管自动匹配树的任务时,利用树的图结构和分支特性似乎很自然。但是,在从多层CT数据中自动提取的气管支气管树中,图形信息并不总是可靠的,尤其是对于嘈杂或低剂量的数据而言,这使得上述方法在这些情况下容易出错。在这项工作中,我们研究通过使用支气管中心线点的空间位置可以获得什么。为此,我们介绍,研究和比较两种仅基于中心线点位置使用而没有其他连接性信息的树匹配方法。作为特征,我们使用(1)3D形状上下文和(2)局部点分布的统计矩。最近已将3D形状上下文作为区域形状描述符引入。它基于球形直方图,在径向方向上具有对数采样。两种方法都用于将自动提取的树与手动标记的模型树进行匹配,从而导致数据树的自动解剖标记。将六个气管支气管树与给定的模型树匹配。数据树涵盖了从高质量数据到劣质数据的范围。此外,其中两个案例显示出严重扭曲的解剖结构。可以显示3D形状上下文特征正确标记了69%的分支,并带有34个解剖标记之一。在统计矩特征的情况下,正确标记了40%的分支。我们得出的结论是,仅通过中心线点集就可以正确标记大部分肺段。我们建议在以后的工作中将有价值的局部形状信息与连通性和分支信息结合起来,后者可以可靠地获得。

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