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Semi-automatic 3D lung nodule segmentation in CT using dynamic programming

机译:使用动态程序设计的CT半自动3D肺结节分割

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We present a method for semi-automatic segmentation of lung nodules in chest CT that can be extended to general lesion segmentation in multiple modalities. Most semi-automatic algorithms for lesion segmentation or similar tasks use region-growing or edge-based contour finding methods such as level-set. However, lung nodules and other lesions are often connected to surrounding tissues, which makes these algorithms prone to growing the nodule boundary into the surrounding tissue. To solve this problem, we apply a 3D extension of the 2D edge linking method with dynamic programming to find a closed surface in a spherical representation of the nodule ROI. The algorithm requires a user to draw a maximal diameter across the nodule in the slice in which the nodule cross section is the largest. We report the lesion volume estimation accuracy of our algorithm on the FDA lung phantom dataset, and the RECIST diameter estimation accuracy on the lung nodule dataset from the SPIE 2016 lung nodule classification challenge. The phantom results in particular demonstrate that our algorithm has the potential to mitigate the disparity in measurements performed by different radiologists on the same lesions, which could improve the accuracy of disease progression tracking.
机译:我们提出了一种胸部CT半自动分割肺结节的方法,该方法可以扩展为多种形式的一般病变分割。大多数用于病变分割或类似任务的半自动算法都使用区域增长或基于边缘的轮廓查找方法(例如水平集)。但是,肺结节和其他病变通常与周围组织相连,这使得这些算法易于将结节边界生长到周围组织中。为了解决此问题,我们将2D边缘链接方法的3D扩展与动态编程一起应用,以在球形ROI的球形表示中找到闭合表面。该算法要求用户在结节横截面最大的切片中跨结节绘制最大直径。我们从SPIE 2016肺结节分类挑战中报告了我们的算法在FDA肺部幻影数据集上的病灶体积估计准确性以及在肺结节数据集上的RECIST直径估计准确性。幻像结果特别表明,我们的算法具有缓解不同放射线医师对同一病变进行测量的差异性的潜力,从而可以提高疾病进展追踪的准确性。

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