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Segmentation of Lung Lobes in Volumetric CT images for Surgical Planning of Treating Lung Cancer

机译:体CT图像中肺叶分割在肺癌手术计划中的应用。

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Study has shown that three-dimensional (3D) visualization of lung cavities has distinct advantages over traditional computed tomographic (CT) images for surgical planning. A crucial step for achieving 3D visualization of lung cavities is the segmentation of lung lobes by identifying lobar fissures in volumetric CT images. Current segmentation algorithms for lung lobes rely on manually placed markers to identify the fissures. This paper presents an autonomous algorithm that effectively segments the lung lobes without user intervention. This algorithm applies a two-stage approach: (a) adaptive fissure sweeping to coarsely define fissure regions of lobar fissures; and (b) watershed transform to refine the location and curvature of fissures within the fissure regions. We have tested this algorithm on 4 CT data sets. Comparing with visual inspection, the algorithm provides an accuracy of 85.5-95.0% and 88.2-92.3% for lobar fissures in the left and right lungs, respectively. This work proves the feasibility of developing an automatic algorithm for segmenting lung lobes
机译:研究表明,相对于传统的计算机断层扫描(CT)图像,肺腔的三维(3D)可视化具有明显的优势,可用于外科手术计划。实现肺腔3D可视化的关键步骤是通过识别体积CT图像中的大叶裂痕来分割肺叶。当前的肺叶分割算法依靠手动放置的标记来识别裂痕。本文提出了一种无需用户干预即可有效分割肺叶的自主算法。该算法采用两阶段方法:(a)自适应裂隙扫描,粗略地定义了大叶裂隙的裂隙区域; (b)分水岭变换以细化裂缝区域内裂缝的位置和曲率。我们已经在4个CT数据集上测试了该算法。与视觉检查相比,该算法对左肺和右肺的大叶裂痕分别提供85.5-95.0%和88.2-92.3%的准确度。这项工作证明了开发用于分割肺叶的自动算法的可行性

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