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首页> 外文期刊>BioMed research international >Many Is Better Than One: An Integration of Multiple Simple Strategies for Accurate Lung Segmentation in CT Images
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Many Is Better Than One: An Integration of Multiple Simple Strategies for Accurate Lung Segmentation in CT Images

机译:许多人比一个好:在CT图像中的准确肺部分割的多种简单策略的集成

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摘要

Accurate lung segmentation is an essential step in developing a computer-aided lung disease diagnosis system. However, because of the high variability of computerized tomography (CT) images, it remains a difficult task to accurately segment lung tissue in CT slices using a simple strategy. Motived by the aforementioned, a novel CT lung segmentation method based on the integration of multiple strategies was proposed in this paper. Firstly, in order to avoid noise, the input CT slice was smoothed using the guided filter. Then, the smoothed slice was transformed into a binary image using an optimized threshold. Next, a region growing strategy was employed to extract thorax regions. Then, lung regions were segmented from the thorax regions using a seed-based random walk algorithm. The segmented lung contour was then smoothed and corrected with a curvature-based correction method on each axis slice. Finally, with the lung masks, the lung region was automatically segmented from a CT slice. The proposed method was validated on a CT database consisting of 23 scans, including a number of 883 2D slices (the number of slices per scan is 38 slices), by comparing it to the commonly used lung segmentation method. Experimental results show that the proposed method accurately segmented lung regions in CT slices.
机译:精确的肺部分割是开发计算机辅助肺病诊断系统的重要步骤。然而,由于计算机断层扫描(CT)图像的高度变化,使用简单的策略在CT切片中精确分段肺组织仍然是难以任务。本文提出了一种基于多种策略集成的新型CT肺分段方法的动态。首先,为了避免噪声,使用引导滤波器平滑输入CT切片。然后,使用优化的阈值将平滑的切片转换为二值图像。接下来,使用区域生长策略来提取胸部区域。然后,使用基于种子的随机步行算法从胸部区域进行肺区段。然后在每个轴切片上用曲率基校正方法平滑并校正分段肺轮廓。最后,随着肺部掩模,肺部区域自动从CT切片分割。所提出的方法在包括23个扫描的CT数据库上验证,包括许多883个2D片(每次扫描的切片数为38切片),通过将其与常用的肺分段方法进行比较。实验结果表明,所提出的方法在CT切片中精确分割肺区。

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