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Automated lung segmentation and smoothing techniques for inclusion of juxtapleural nodules and pulmonary vessels on chest CT images

机译:自动肺分割和平滑技术,在胸部CT图像上包括颈胸结节和肺血管

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摘要

Segmentation of the lung is often performed as an important preprocessing step for quantitative analysis of chest computed tomography (CT) imaging. However, the presence of juxtapleural nodules and pulmonary vessels, image noise or artifacts, and individual anatomical variety make lung segmentation very complex. To address these problems, a fast and fully automatic scheme based on iterative weighted averaging and adaptive curvature threshold is proposed in this study to facilitate accurate lung segmentation for inclusion of juxtapleural nodules and pulmonary vessels and ensure the smoothness of the lung boundary. Our segmentation scheme consists of four main stages: image preprocessing, thorax extraction, lung identification and lung contour correction. The aim of preprocessing stage is to encourage intra-region smoothing and preserve the inter-region edge of CT images. In the thorax extraction stage, the artifacts external to the patient's body are discarded. Then, a fuzzy-c-means clustering method is used in the thorax region and all lung parenchyma is identified according to fuzzy membership value and connectivity. Finally, the segmented lung contour is smoothed and corrected with iterative weighted averaging and adaptive curvature threshold on each axis slice, respectively. Our method was validated on 20 datasets of chest CT scans containing 65 juxtapleural nodules. Experimental results show that our method can re-include all juxtapleural nodules and achieve an average volume overlap ratio of 95.81 ±0.89% and an average mean absolute border distance of 0.63 ±0.09 mm compared with the manually segmented results. The average processing time for segmenting one slice was 2.56 s, which is over 20 times faster than manual segmentation.
机译:肺部分割通常是对胸部计算机断层扫描(CT)成像进行定量分析的重要预处理步骤。但是,由于存在胸膜结节和肺血管,图像噪声或伪影以及个别解剖结构的变化,使得肺分割非常复杂。为了解决这些问题,在本研究中提出了一种基于迭代加权平均和自适应曲率阈值的快速,全自动方案,以促进准确的肺分割,以包括颈胸结节和肺血管,并确保肺边界的光滑度。我们的分割方案包括四个主要阶段:图像预处理,胸部提取,肺部识别和肺部轮廓校正。预处理阶段的目的是鼓励区域内平滑并保留CT图像的区域间边缘。在胸部抽出阶段,将患者体外的假象丢弃。然后,在胸腔区域采用模糊c均值聚类方法,并根据模糊隶属度值和连通性确定所有肺实质。最后,分别在每个轴切片上使用迭代加权平均和自适应曲率阈值对分割的肺部轮廓进行平滑和校正。我们的方法在包含65个颈胸结节的20例胸部CT扫描数据集中得到了验证。实验结果表明,与人工分割的结果相比,我们的方法可以重新纳入所有的胸膜结节,平均体积重叠率为95.81±0.89%,平均平均绝对边界距离为0.63±0.09 mm。分割一个切片的平均处理时间为2.56 s,比手动分割快20倍以上。

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