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Fractal analysis of high-resolution CT images as a tool for quantification of lung diseases

机译:高分辨率CT图像的分形分析作为肺病量化的工具

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Fractal geometry is increasingly being used to model complex naturally occurring phenomena. There are two types of fractals in nature-geometric fractals and stochastic fractals. The pulmonary branching structure is a geometric fractal and the intensity of its grey scale image is a stochastic fractal. In this paper, we attempt to quantify the texture of CT lung images using properties of both types of fractals. A simple algorithm for detection of abnormality in human lungs, based on 2D and 3D fractal dimensions, is presented. This method involves calculating the local fractal dimensions, based on intensities, in the 2D slice to aid enhancement. Following this, grey level thresholding is performed and a global fractal dimension, based on structure, for the entire data is estimated in 2D and 3D. High resolution CT images of normal and abnormal lungs were analyzed. Preliminary results showed that classification of normal and abnormal images could be obtained based on the differences between their global fractal dimensions.
机译:分形几何越来越多地用于建模复杂的自然发生的现象。自然 - 几何分形和随机分数术中有两种类型的分形。肺部分支结构是几何分形,其灰度图像的强度是随机分形。在本文中,我们试图使用两种类型分形的性质量化CT肺图像的质地。提出了一种用于检测人肺异常的简单算法,基于2D和3D分形尺寸。该方法涉及基于强度计算局部分形尺寸,在2D切片中有助于增强。在此之后,执行灰度级别阈值处理,并且基于结构的全局分形维数在2D和3D中估计。分析了正常和异常肺的高分辨率CT图像。初步结果表明,可以基于其全局分形维数之间的差异来获得正常和异常图像的分类。

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