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A Bag-of-Features Approach to Classify Six Types of Pulmonary Textures on High-Resolution Computed Tomography

机译:一种功能袋方法,用于在高分辨率计算机断层扫描上对六种类型的肺纹理进行分类

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Computer-aided diagnosis (CAD) systems on diffuse lung diseases (DLD) were required to facilitate radiologists to read high-resolution computed tomography (HRCT) scans. An important task on developing such CAD systems was to make computers automatically recognize typical pulmonary textures of DLD on HRCT. In this work, we proposed a bag-of-features based method for the classification of six kinds of DLD patterns which were consolidation (CON), ground-glass opacity (GGO), honeycombing (HCM), emphysema (EMP), nodular (NOD) and normal tissue (NOR). In order to successfully apply the bag-of-features based method on this task, we focused to design suitable local features and the classifier. Considering that the pulmonary textures were featured by not only CT values but also shapes, we proposed a set of statistical measures based local features calculated from both CT values and eigenvalues of Hessian matrices. Additionally, we designed a support vector machine (SVM) classifier by optimizing parameters related to both kernels and the soft-margin penalty constant. We collected 117 HRCT scans from 117 subjects for experiments. Three experienced radiologists were asked to review the data and their agreed-regions where typical textures existed were used to generate 3009 3D volume-of-interest (VOIs) with the size of 32x32x32. These VOIs were separated into two sets. One set was used for training and tuning parameters, and the other set was used for evaluation. The overall recognition accuracy for the proposed method was 93.18%. The precisions/sensitivities for each texture were 96.67%/95.08% (CON), 92.55%/94.02% (GGO), 97.67%/99.21% (HCM), 94.74%/93.99% (EMP), 81.48%/86.03%(NOD) and 94.33%/90.74% (NOR). Additionally, experimental results showed that the proposed method performed better than four kinds of baseline methods, including two state-of-the-art methods on classification of DLD textures.
机译:需要用于弥散性肺部疾病(DLD)的计算机辅助诊断(CAD)系统,以便利放射科医生读取高分辨率计算机断层扫描(HRCT)扫描。开发此类CAD系统的一项重要任务是使计算机自动识别HRCT上DLD的典型肺纹理。在这项工作中,我们提出了一种基于特征包的方法来对六种DLD模式进行分类,这些模式是巩固(CON),毛玻璃不透明(GGO),蜂窝状(HCM),肺气肿(EMP),结节性( NOD)和正常组织(NOR)。为了在此任务上成功应用基于特征包的方法,我们集中精力设计合适的局部特征和分类器。考虑到肺纹理不仅具有CT值特征,而且还具有形状特征,因此我们提出了一套基于局部特征的统计量度,这些局部特征是根据Hessian矩阵的CT值和特征值计算得出的。此外,我们通过优化与内核和软边际罚金常数有关的参数,设计了一种支持向量机(SVM)分类器。我们从117个受试者中收集了117个HRCT扫描,用于实验。要求三名经验丰富的放射科医生审阅数据,并使用他们同意的存在典型纹理的区域来生成3009个3D感兴趣体积(VOI),其大小为32x32x32。这些VOI被分为两组。一组用于训练和调整参数,另一组用于评估。该方法的总体识别准确率为93.18%。每种纹理的精度/灵敏度分别为96.67%/ 95.08%(CON),92.55%/ 94.02%(GGO),97.67%/ 99.21%(HCM),94.74%/ 93.99%(EMP),81.48%/ 86.03%( NOD)和94.33%/ 90.74%(NOR)。此外,实验结果表明,所提出的方法比四种基准方法(包括两种最先进的DLD纹理分类方法)表现更好。

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