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首页> 外文期刊>Medical Imaging, IEEE Transactions on >Automated 3-D Segmentation of Lungs With Lung Cancer in CT Data Using a Novel Robust Active Shape Model Approach
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Automated 3-D Segmentation of Lungs With Lung Cancer in CT Data Using a Novel Robust Active Shape Model Approach

机译:使用新型鲁棒主动形状模型方法在CT数据中对肺癌的肺癌进行自动3-D分割

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摘要

Segmentation of lungs with (large) lung cancer regions is a nontrivial problem. We present a new fully automated approach for segmentation of lungs with such high-density pathologies. Our method consists of two main processing steps. First, a novel robust active shape model (RASM) matching method is utilized to roughly segment the outline of the lungs. The initial position of the RASM is found by means of a rib cage detection method. Second, an optimal surface finding approach is utilized to further adapt the initial segmentation result to the lung. Left and right lungs are segmented individually. An evaluation on 30 data sets with 40 abnormal (lung cancer) and 20 normal left/right lungs resulted in an average Dice coefficient of $0.975pm 0.006$ and a mean absolute surface distance error of $0.84pm 0.23~{hbox {mm}}$, respectively. Experiments on the same 30 data sets showed that our methods delivered statistically significant better segmentation results, compared to two commercially available lung segmentation approaches. In addition, our RASM approach is generally applicable and suitable for large shape models.
机译:具有(大)肺癌区域的肺分割是一个不小的问题。我们提出了一种新型的全自动方法,可以对具有这种高密度病理的肺进行分割。我们的方法包括两个主要处理步骤。首先,一种新颖的鲁棒活动形状模型(RASM)匹配方法用于粗略分割肺部轮廓。 RASM的初始位置是通过肋骨保持架检测方法找到的。其次,采用最佳表面寻找方法进一步使初始分割结果适应肺部。左右肺分别分割。对30个具有40个异常(肺癌)和20个正常左/右肺的数据集进行评估,得出的平均Dice系数为$ 0.975pm 0.006 $,平均绝对表面距离误差为$ 0.84pm 0.23〜{hbox {mm}} $ , 分别。在相同的30个数据集上进行的实验表明,与两种可商购的肺分割方法相比,我们的方法在统计学上具有更好的分割结果。此外,我们的RASM方法通常适用于大型形状模型。

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