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Pulmonary nodule classification based on CT density distribution using 3-D thoracic CT images

机译:使用3-D胸部CT图像基于CT密度分布的肺结节分类

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Computer-aided diagnosis (CAD) has been investigated to provide physicians with quantitative information, such as estimates of the malignant likelihood, to aid in the classification of abnormalities detected at screening of lung cancers. The purpose of this study is to develop a method for classifying nodule density patterns that provides information with respect to nodule statuses such as lesion stage. This method consists of three steps, nodule segmentation, histogram analysis of CT density inside nodule, and classifying nodules into five types based on histogram patterns. In this paper, we introduce a two-dimensional (2-D) joint histogram with respect to distance from nodule center and CT density inside nodule and explore numerical features with respect to shape and position of the joint histogram.
机译:已经对计算机辅助诊断(CAD)进行了研究,以为医生提供定量信息,例如恶性可能性的估计值,以帮助对肺癌筛查中发现的异常进行分类。这项研究的目的是开发一种对结节密度模式进行分类的方法,该方法可提供有关结节状态(如病变阶段)的信息。该方法包括三个步骤:结节分割,结节内CT密度的直方图分析以及根据直方图模式将结节分为五种类型。在本文中,我们针对结节中心距离和结节内部的CT密度引入了二维(2-D)关节直方图,并探讨了关于关节直方图的形状和位置的数值特征。

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