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Segmentation of small ground glass opacity pulmonary nodules based on Markov random field energy and Bayesian probability difference

机译:基于Markov随机场能量和贝叶斯概率差异的小磨玻片不透明度肺结节的分割

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摘要

Image segmentation is an important part of computer-aided diagnosis (CAD), the segmentation of small ground glass opacity (GGO) pulmonary nodules is beneficial for the early detection of lung cancer. For the segmentation of small GGO pulmonary nodules, an integrated active contour model based on Markov random field energy and Bayesian probability difference (IACM_MRFEBPD) is proposed in this paper. First, the Markov random field (MRF) is constructed on the computed tomography (CT) images, then the MRF energy is calculated. The MRF energy is used to construct the region term. It can not only enhance the contrast between pulmonary nodule and the background region, but also solve the problem of intensity inhomogeneity using local spatial correlation information between neighboring pixels in the image. Second, the Gaussian mixture model is used to establish the probability model of the image, and the model parameters are estimated by the expectation maximization (EM) algorithm. So the Bayesian posterior probability difference of each pixel can be calculated. The probability difference is used to construct the boundary detection term, which is 0 at the boundary. Therefore, the blurred boundary problem can be solved. Finally, under the framework of the level set, the integrated active contour model is constructed. To verify the effectiveness of the proposed method, the public data of the lung image database consortium and image database resource initiative (LIDC-IDRI) and the clinical data of the Affiliated Jiangmen Hospital of Sun Yat-sen University are used to perform experiments, and the intersection over union (IOU) score is used to evaluate the segmentation methods. Compared with other methods, the proposed method achieves the best results with the highest average IOU of 0.7444, 0.7503, and 0.7450 for LIDC-IDRI test set, clinical test set, and all test sets, respectively. The experiment results show that the proposed method can segment various small GGO pulmonary nodules more accurately and robustly, which is helpful for the accurate evaluation of medical imaging.
机译:图像分割是计算机辅助诊断(CAD)的重要组成部分,小地面玻璃不透明度(GGO)肺结核的分割是有益于肺癌的早期检测。对于小GGO肺结核的分割,本文提出了一种基于马尔可夫随机场能量和贝叶斯概率差(IACM_MRFEBPD)的集成有源轮廓模型。首先,在计算断层摄影(CT)图像上构建马尔可夫随机字段(MRF),然后计算MRF能量。 MRF能量用于构建区域术语。它不仅可以提高肺结核和背景区域之间的对比,而且还可以使用图像中的相邻像素之间的局部空间相关信息来解决强度不均匀性的问题。其次,高斯混合模型用于建立图像的概率模型,通过期望最大化(EM)算法估计模型参数。因此,可以计算每个像素的贝叶斯后验概率差异。概率差用于构造边界检测项,在边界处为0。因此,可以解决模糊的边界问题。最后,在级别集的框架下,构造了集成的活动轮廓模型。为了验证所提出的方法的有效性,肺部图像数据库联盟和图像数据库资源计划(LIDC-IDRI)的公共数据以及孙中山大学附属江门医院的临床数据用于进行实验,联盟(iou)分数的交叉点用于评估分段方法。与其他方法相比,所提出的方法可以分别实现最佳效果0.7444,0.7503和0.7450的LIDC-IDRI测试集,临床试验集和所有测试集。实验结果表明,该方法可以更准确且鲁棒地分段各种小的GGO肺结核,这有助于准确评估医学成像。

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