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首页> 外文期刊>Journal of Medical Imaging and Health Informatics >A Novel 2D Ground-Glass Opacity Detection Method Through Local-to-Global Multilevel Thresholding for Segmentation and Minimum Bayes Risk Learning for Classification
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A Novel 2D Ground-Glass Opacity Detection Method Through Local-to-Global Multilevel Thresholding for Segmentation and Minimum Bayes Risk Learning for Classification

机译:通过局部到全局多阈值分割和最小贝叶斯风险学习进行分类的一种新型二维玻璃不透明度检测方法

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摘要

Ground-glass opacity (GGO) detection is paramount for the prognosis and diagnosis of lung diseases. We present a novel GGO detection method for 2D lung CT images in this paper, which focuses on detecting GGOs with high sensitivity and reducing false positives as much as possible. To this end, we propose a local-to-global multilevel thresholding algorithm for segmentation and a novel discriminative learning algorithm for identification to solve the problem of GGO detection. There are two components in our method. In the first component, we perform clustering on the local Ostu thresholds of CT levels for each patch of an image, the candidate regions of interests (ROIs) are segmented based on the clustering results by multilevel thresholding techniques. The second component is a Bayesian modeling process for identifying the GGOs from ROI candidates, the classifier is trained based on Bayesian risk minimization and margin maximization by our discriminative learning algorithm. The proposed GGO detection approach is evaluated on the LISS database with 45 GGOs. Finally, our detection approach performed better than other GGO detection methods in the experimental results, which achieved a sensitivity of 100% and a specificity of 33.13%.
机译:毛玻璃不透明(GGO)检测对于肺部疾病的预后和诊断至关重要。在本文中,我们提出了一种用于二维肺部CT图像的新型GGO检测方法,该方法致力于以高灵敏度检测GGO,并尽可能减少假阳性。为此,我们提出了一种局部到全局的多阈值分割算法和一种新颖的判别学习算法进行识别,以解决GGO检测的问题。我们的方法有两个组成部分。在第一个组件中,我们针对图像的每个斑块在CT级别的局部Ostu阈值上执行聚类,基于聚类结果的多级阈值技术对感兴趣的候选区域(ROI)进行分割。第二个组件是用于从ROI候选者中识别GGO的贝叶斯建模过程,通过我们的判别学习算法,基于贝叶斯风险最小化和保证金最大化对分类器进行训练。建议的GGO检测方法在具有45个GGO的LISS数据库中进行了评估。最后,我们的检测方法在实验结果中表现优于其他GGO检测方法,灵敏度达到100%,特异性为33.13%。

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