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基于多层螺旋CT的肺气肿及早期吸烟相关肺部病变的三维纹理分类

MDCT-based 3-D texture classification of emphysema and early smoking related lung pathologies.

作者信息

Xu Ye, Sonka Milan, McLennan Geoffrey, Guo Junfeng, Hoffman Eric A

机构信息

Iowa Comprehension Lung Imaging Center, University of Iowa, Iowa City, IA 52240, USA.

出版信息

IEEE Trans Med Imaging. 2006 Apr;25(4):464-75. doi: 10.1109/TMI.2006.870889.

Abstract

Our goal is to enhance the ability to differentiate normal lung from subtle pathologies via multidetector row CT (MDCT) by extending a two-dimensional (2-D) texturebased tissue classification [adaptive multiple feature method (AMFM)] to use three-dimensional (3-D) texture features. We performed MDCT on 34 humans and classified volumes of interest (VOIs) in the MDCT images into five categories: EC, emphysema in severe chronic obstructive pulmonary disease (COPD); MC, mild emphysema in mild COPD; NC, normal appearing lung in mild COPD; NN, normal appearing lung in normal nonsmokers; and NS, normal appearing lung in normal smokers. COPD severity was based upon pulmonary function tests (PFTs). Airways and vessels were excluded from VOIs; 24 3-D texture features were calculated; and a Bayesian classifier was used for discrimination. A leave-one-out method was employed for validation. Sensitivity of the four-class classification in the form of 3-D/2-D was: EC: 85%/71%, MC: 90%/82%; NC: 88%/50%; NN: 100%/60%. Sensitivity and specificity for NN using a two-class classification of NN and NS in the form of 3-D/2-D were: 99%/72% and 100%/75%, respectively. We conclude that 3-D AMFM analysis of lung parenchyma improves discrimination compared to 2-D AMFM of the same VOIs. Furthermore, our results suggest that the 3-D AMFM may provide a means of discriminating subtle differences between smokers and nonsmokers both with normal PFTs.

摘要

我们的目标是通过将基于二维(2-D)纹理的组织分类方法[自适应多特征方法(AMFM)]扩展到使用三维(3-D)纹理特征,来提高通过多排探测器CT(MDCT)区分正常肺与细微病变的能力。我们对34名受试者进行了MDCT检查,并将MDCT图像中的感兴趣体积(VOI)分为五类:EC,重度慢性阻塞性肺疾病(COPD)中的肺气肿;MC,轻度COPD中的轻度肺气肿;NC,轻度COPD中外观正常的肺;NN,正常非吸烟者中外观正常的肺;NS,正常吸烟者中外观正常的肺。COPD严重程度基于肺功能测试(PFT)。VOI中排除气道和血管;计算24个三维纹理特征;并使用贝叶斯分类器进行判别。采用留一法进行验证。以三维/二维形式进行的四类分类的敏感性为:EC:85%/71%,MC:90%/82%;NC:88%/50%;NN:100%/60%。以三维/二维形式对NN和NS进行二类分类时,NN的敏感性和特异性分别为:99%/72%和100%/75%。我们得出结论,与相同VOI的二维AMFM相比,肺实质的三维AMFM分析提高了判别能力。此外,我们的结果表明,三维AMFM可能提供一种区分PFT正常的吸烟者和非吸烟者之间细微差异的方法。

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