On using fuzzy c-means clustering in the fuzzy signature concept classification of liver lesions

Melinda Kovács, F. Lilik, S. Nagy, L. Kóczy
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Abstract

Liver is a very unique organ, it has double blood supply, not only through the arteries, but also through the veins. This property makes the contrast material enhanced computer tomography images show very characteristic behavior, depending on the time passed from the adjustment of the contrast material. When diagnosing a nodule in the liver by computer tomography, radiologist experts use multiple images with different delay factors, and generally, five basic characteristic properties of the nodule compared to the normal liver tissues. In the following considerations, we give a simplified model that reproduces the way medical experts take decisions, and offer a possibility to develop a computer aided diagnosis method. The classification of the nodules applies a model with fuzzy signatures, where the aggregation functions in the intermediate nodes are representing the radiologist point of view, while the membership degrees/functions at the leaves of the fuzzy signature's rooted tree are obtained from calculations applying the fuzzy c-means clustering algorithm.
模糊c均值聚类在肝脏病变模糊特征概念分类中的应用
肝脏是一个非常独特的器官,它有双重血液供应,不仅通过动脉,也通过静脉。这一特性使得对比材料增强的计算机断层扫描图像显示出非常特殊的行为,这取决于对比材料调整所经过的时间。在通过计算机断层扫描诊断肝脏结节时,放射科专家使用具有不同延迟因子的多个图像,并且通常与正常肝脏组织相比,结节具有五个基本特征。在以下考虑中,我们给出了一个简化的模型,再现了医学专家做出决定的方式,并提供了开发计算机辅助诊断方法的可能性。结节的分类采用模糊签名模型,中间节点的聚集函数代表放射科医生的观点,而模糊签名根树叶子的隶属度/函数则通过模糊c均值聚类算法的计算得到。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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