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3D Texture Analysis of Solitary Pulmonary Nodules Using Co-occurrence Matrix from Volumetric Lung CT Images

机译:从容量肺CT图像中使用共发生矩阵的孤立肺结节的3D纹理分析

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In this paper we have investigated a new approach for texture features extraction using co-occurrence matrix from volumetric lung CT image. Traditionally texture analysis is performed in ID and is suitable for images collected from 2D imaging modality. The use of 3-D imaging modalities provide the scope of texture analysis from 3D object and 3-D texture feature are more realistic to represent 3D object. In this work, Haralick's texture features are extended in 3D and computed from volumetric data considering 26 neighbors. The optimal texture features to characterize the internal structure of Solitary Pulmonary Nodules (SPN) are selected based on area under curve (AUC) values of ROC curve and p values from 2-tailed Student's t-test. The selected texture feature in 3D to represent SPN can be used in efficient Computer Aided Diagnostic (CAD) design plays an important role in fast and accurate lung cancer screening. The reduced number of input features to the CAD system will decrease the computational time and classification errors caused by irrelevant features. In the present work, SPN are classified from Ground Glass Nodule (GGN) using Artificial Neural Network (ANN) classifier considering top five 3D texture features and top five 2D texture features separately. The classification is performed on 92 SPN and 25 GGN from Imaging Database Resources Initiative (IDRI) public database and classification accuracy using 3D texture features and 2D texture features provide 97.17% and 89.1% respectively.
机译:在本文中,我们研究了使用来自体积肺CT图像的共发生矩阵的纹理特征提取的新方法。传统上纹理分析在ID中进行,适用于从2D成像模态收集的图像。使用3-D成像方式提供3D对象的纹理分析范围,3-D纹理功能更加逼真,以表示3D对象。在这项工作中,Haralick的纹理特征在3D中扩展并从考虑26邻居考虑的体积数据计算。表征孤立肺结核(SPN)内部结构的最佳纹理特征是基于ROC曲线的曲线(AUC)值的面积和来自2尾学生的T检验的P值。 3D中的所选纹理特征可以用于高效计算机辅助诊断(CAD)设计在快速和准确的肺癌筛选中起着重要作用。减少CAD系统的输入功能数量将降低由无关的功能引起的计算时间和分类错误。在目前的工作中,SPN使用人工神经网络(ANN)分类器分类为Pround Glass Nodule(GGN),考虑到前五个3D纹理特征和前五个2D纹理分别。分类是在92 SPN和25 GGN执行的,从成像数据库资源(IDRI)公共数据库和使用3D纹理功能的分类精度,2D纹理功能分别提供97.17%和89.1%。

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