基于分形维数的肝脏异常自动分割与分类

A. Anter, A. Hassanien, G. Schaefer
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引用次数: 8

摘要

肝脏异常包括肿块,可为良性或恶性。由于这些异常的存在,肝脏结构的规律性被改变,从而改变了其分形维数。本文提出一种利用分形维数特征对腹部CT图像进行肝脏异常分类的计算机辅助诊断系统。我们将不同的肝脏分割和异常分类方法进行整合,提出一种结合不同技术的尝试,以弥补各自的不足,发挥各自的优势。分类是基于分形维数,与六个不同的特征被用于提取感兴趣的区域。实验结果证实,我们的方法是稳健的,快速的,能够有效地检测肝脏异常的存在。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Segmentation and Classification of Liver Abnormalities Using Fractal Dimension
Abnormalities in the liver include masses which can be benign or malignant. Due to the presence of these abnormalities, the regularity of the liver structure is altered, which changes its fractal dimension. In this paper, we present a computer aided diagnostic system for classifying liver abnormalities from abdominal CT images using fractal dimension features. We integrate different methods for liver segmentation and abnormality classification and propose an attempt that combines different techniques in order to compensate their individual weaknesses and to exploit their strengths. Classification is based on fractal dimension, with six different features being employed for extracted regions of interest. Experimental results confirm that our approach is robust, fast and able to effectively detect the presence of abnormalities in the liver.
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