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Classification of pulmonary emphysema from chest CT scans using integral geometry descriptors

机译:使用积分几何描述符从胸部CT扫描对肺气肿进行分类

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To gain insight into the underlying pathways of emphysema and monitor the effect of treatment, methods to quantify and phenotype the different types of emphysema from chest CT scans are of crucial importance. Current standard measures rely on density thresholds for individual voxels, which is influenced by inspiration level and does not take into account the spatial relationship between voxels. Measures based on texture analysis do take the interrelation between voxels into account and therefore might be useful for distinguishing different types of emphysema. In this study, we propose to use Minkowski functionals combined with rotation invariant Gaussian features to distinguish between healthy and emphysematous tissue and classify three different types of emphysema. Minkowski functionals characterize binary images in terms of geometry and topology. In 3D, four Minkowski functionals are defined. By varying the threshold and size of neighborhood around a voxel, a set of Minkowski functionals can be defined for each voxel. Ten chest CT scans with 1810 annotated regions were used to train the method. A set of 108 features was calculated for each training sample from which 10 features were selected to be most informative. A linear discriminant classifier was trained to classify each voxel in the lungs into a subtype of emphysema or normal lung. The method was applied to an independent test set of 30 chest CT scans with varying amounts and types of emphysema with 4347 annotated regions of interest. The method is shown to perform well, with an overall accuracy of 95%.
机译:为了深入了解肺气肿的潜在通路并监测治疗效果,从胸部CT扫描量化和表型不同类型的肺气肿的方法至关重要。当前的标准度量依赖于单个体素的密度阈值,该阈值受吸气程度的影响,并且未考虑体素之间的空间关系。基于纹理分析的措施确实考虑了体素之间的相互关系,因此对于区分不同类型的肺气肿可能有用。在这项研究中,我们建议使用Minkowski功能结合旋转不变高斯特征来区分健康组织和气肿组织,并对三种不同类型的肺气肿进行分类。 Minkowski功能从几何和拓扑方面表征二进制图像。在3D中,定义了四个Minkowski功能。通过更改体素周围的阈值和大小,可以为每个体素定义一组Minkowski功能。使用十次胸部CT扫描(带1810个带注释的区域)来训练该方法。为每个训练样本计算了一组108个特征,从中选择了10个特征最多的信息。训练线性判别式分类器将肺中的每个体素分类为肺气肿或正常肺的亚型。该方法应用于由30个胸部CT扫描组成的独立测试集,其中肺气肿的数量和类型各不相同,并带有4347个带注释的感兴趣区域。该方法显示出良好的性能,总准确度为95%。

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