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应用局部二值模式进行肺气肿的定量分析。

Quantitative analysis of pulmonary emphysema using local binary patterns.

机构信息

Image Group, Department of Computer Science, University of Copenhagen, DK-2110 Copenhagen, Denmark.

出版信息

IEEE Trans Med Imaging. 2010 Feb;29(2):559-69. doi: 10.1109/TMI.2009.2038575.

DOI:10.1109/TMI.2009.2038575
PMID:20129855
Abstract

We aim at improving quantitative measures of emphysema in computed tomography (CT) images of the lungs. Current standard measures, such as the relative area of emphysema (RA), rely on a single intensity threshold on individual pixels, thus ignoring any interrelations between pixels. Texture analysis allows for a much richer representation that also takes the local structure around pixels into account. This paper presents a texture classification-based system for emphysema quantification in CT images. Measures of emphysema severity are obtained by fusing pixel posterior probabilities output by a classifier. Local binary patterns (LBP) are used as texture features, and joint LBP and intensity histograms are used for characterizing regions of interest (ROIs). Classification is then performed using a k nearest neighbor classifier with a histogram dissimilarity measure as distance. A 95.2% classification accuracy was achieved on a set of 168 manually annotated ROIs, comprising the three classes: normal tissue, centrilobular emphysema, and paraseptal emphysema. The measured emphysema severity was in good agreement with a pulmonary function test (PFT) achieving correlation coefficients of up to |r| = 0.79 in 39 subjects. The results were compared to RA and to a Gaussian filter bank, and the texture-based measures correlated significantly better with PFT than did RA.

摘要

我们旨在改进肺部计算机断层扫描 (CT) 图像中肺气肿的定量测量。当前的标准测量方法,如相对肺气肿面积 (RA),依赖于单个像素的单一强度阈值,因此忽略了像素之间的任何相互关系。纹理分析可以提供更丰富的表示形式,还可以考虑像素周围的局部结构。本文提出了一种基于纹理分类的 CT 图像肺气肿定量系统。通过融合分类器输出的像素后验概率来获得肺气肿严重程度的度量。局部二值模式 (LBP) 用作纹理特征,联合 LBP 和强度直方图用于描述感兴趣区域 (ROI)。然后使用具有直方图相似度度量的 k 最近邻分类器进行分类。在一组 168 个手动标注的 ROI 上实现了 95.2%的分类精度,包括三个类别:正常组织、小叶中心型肺气肿和间隔型肺气肿。测量的肺气肿严重程度与肺功能测试 (PFT) 非常吻合,在 39 名受试者中达到了高达 |r| = 0.79 的相关系数。将结果与 RA 和高斯滤波器组进行了比较,基于纹理的度量与 PFT 的相关性明显优于 RA。

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