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基于改进随机游走算法的胸部CT图像病理性肺分割

Pathological lung segmentation in chest CT images based on improved random walker.

作者信息

Chen Cheng, Xiao Ruoxiu, Zhang Tao, Lu Yuanyuan, Guo Xiaoyu, Wang Jiayu, Chen Hongyu, Wang Zhiliang

机构信息

School of Computer and Communication Engineering, University of Science and Technology Beijing, Beijing, 100083, China.

School of Computer and Communication Engineering, University of Science and Technology Beijing, Beijing, 100083, China; Institute of Artificial Intelligence, University of Science and Technology Beijing, Beijing 100083, China.

出版信息

Comput Methods Programs Biomed. 2021 Mar;200:105864. doi: 10.1016/j.cmpb.2020.105864. Epub 2020 Nov 25.

Abstract

BACKGROUND AND OBJECTIVE

Pathological lung segmentation as a pretreatment step in the diagnosis of lung diseases has been widely explored. Because of the complexity of pathological lung structures and gray blur of the border, accurate lung segmentation in clinical 3D computed tomography images is a challenging task. In view of the current situation, the work proposes a fast and accurate pathological lung segmentation method. The following contributions have been made: First, the edge weights introduce spatial information and clustering information, so that walkers can use more image information during walking. Second, a Gaussian Distribution of seed point set is established to further expand the possibility of selection between fake seed points and real seed points. Finally, the pre-parameter is calculated using original seed points, and the final results are fitted with new seed points.

METHODS

This study proposes a segmentation method based on an improved random walker algorithm. The proposed method consists of the following steps: First, a gray value is used as the sample distribution. Gaussian mixture model is used to obtain the clustering probability of an image. Thus, the spatial distance and clustering result are added as new weights, and the new edge weights are used to construct a random walker map. Second, a large number of marked points are automatically selected, and the intermediate results are obtained from the newly constructed map and retained only as pre-parameters. When new seed points are introduced, the probability value of the walker is quickly calculated from the new parameters and pre-parameters, and the final segmentation result can be obtained.

RESULTS

The proposed method was tested on 65 sets of CT cases. Quantitative evaluation with different methods confirms the high accuracy on our dataset (98.55%) and LOLA11 dataset (97.41%). Similarly, the average segmentation time (10.5s) is faster than random walker (1,332.5s).

CONCLUSIONS

The comparison of the experimental results show that the proposed method can accurately and quickly obtain pathological lung processing results. Therefore, it has potential clinical applications.

摘要

背景与目的

作为肺部疾病诊断预处理步骤的病理肺部分割已得到广泛研究。由于病理肺结构的复杂性以及边界的灰度模糊,在临床三维计算机断层扫描图像中进行准确的肺部分割是一项具有挑战性的任务。鉴于此现状,本研究提出了一种快速准确的病理肺部分割方法。具体贡献如下:第一,边缘权重引入了空间信息和聚类信息,使得随机游走算法在游走过程中能够利用更多图像信息。第二,建立种子点集的高斯分布,进一步扩大了伪种子点与真实种子点之间的选择可能性。最后,利用原始种子点计算预参数,并使用新种子点对最终结果进行拟合。

方法

本研究提出了一种基于改进随机游走算法的分割方法。该方法包括以下步骤:首先,将灰度值用作样本分布,利用高斯混合模型获取图像的聚类概率。进而,将空间距离和聚类结果作为新的权重,利用新的边缘权重构建随机游走图。其次,自动选择大量标记点,并从新构建的图中获取中间结果,仅将其保留为预参数。当引入新种子点时,根据新参数和预参数快速计算随机游走的概率值,从而得到最终分割结果。

结果

所提方法在65组CT病例上进行了测试。采用不同方法进行定量评估,结果证实该方法在我们的数据集(98.55%)和LOLA11数据集(97.41%)上具有较高的准确性。同样,平均分割时间(10.5秒)比随机游走算法(1332.5秒)更快。

结论

实验结果对比表明,所提方法能够准确快速地获得病理肺处理结果。因此,该方法具有潜在的临床应用价值。

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