Automatic method for lung segmentation with juxta-pleural nodules from thoracic CT based on border separation and correction

Yanxia Sun, Jinke Wang
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引用次数: 3

Abstract

In this paper, a fully automatic method was proposed for lung segmentation with juxta-pleural nodules from CT. The approach consists of three phases: skin boundary detection, rough segmentation of lung contour, and pulmonary parenchyma refinement. Firstly, chest boundary is extracted through image aligning, morphology operation and connective region analysis. Secondly, diagonal-based border tracing is implemented for lung contour segmentation, with maximum cost path algorithm used for separating the left and right lungs. Finally, by arc-based border smoothing and concave-based border correction, the refined pulmonary parenchyma is obtained. The proposed scheme is evaluated on 20 volumes of chest scans, with volume difference (VD) 11.15 ± 69.63 cm3, volume overlap error (VOE) 3.5057 ± 1.3719%, average surface distance (ASD) 0.7917 ± 0.2741 mm, root mean square distance (RMSD) 1.6957 ± 0.6568 mm, maximum symmetric absolute surface distance (MSD) 21.3430 ± 8.1743 mm, and average time-cost 2 second per image. The preliminary results on accuracy and complexity prove that our scheme is a promising tool for lung segmentation with juxta-pleural nodules.
基于边界分离和校正的胸部CT胸膜旁结节肺自动分割方法
本文提出了一种基于CT胸膜旁结节的全自动肺分割方法。该方法包括三个阶段:皮肤边界检测、肺轮廓粗分割和肺实质细化。首先,通过图像对齐、形态学运算和连接区域分析提取胸部边界;其次,采用基于对角线的边界跟踪进行肺轮廓分割,采用最大代价路径算法分离左右肺;最后,通过基于弧线的边界平滑和基于凹线的边界校正,得到精细化的肺实质。该方案在20个胸片上进行了评价,体积差(VD)为11.15±69.63 cm3,体积重叠误差(VOE)为3.5057±1.3719%,平均表面距离(ASD)为0.7917±0.2741 mm,均方根距离(RMSD)为1.6957±0.6568 mm,最大对称绝对表面距离(MSD)为21.3430±8.1743 mm,平均时间成本为2秒/张。初步结果表明,该方法在胸膜旁结节肺分割中具有良好的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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