Computerized segmentation of liver tumor using integrated fuzzy level set method

Munipraveena Rela, B. Krishnaveni, P. Kumar, G. Lakshminarayana
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引用次数: 3

Abstract

CT abdominal image requires the automated diagnosis of part of the liver and lesions. It is challenging to segment the liver and the tumor due to the high strength resemblance between liver and other organs nearby. In this paper, an automatic method of segmenting liver from CT image using fuzzy level set algorithm is proposed. It can evolve immediately through spatial fuzzy clustering from preliminary segmentation. Reasonable initialization and effective specification of controlling parameters requiring significant manual intervention are subject to the efficiency of the level set segmentation. In the following ways, the algorithm is considerably improved. First during adaptive optimization, fuzzy clustering integrates spatial information, which removes intermediate morphological operations. Secondly, the level set segmentation controlling parameters are now extracted directly from the performance of fuzzy clustering. Thirdly, a approach is suggested to regularize the evolution of the level collection, which is distinct from other approaches, driven by fuzzy clustering. Finally, the fuzzy level set algorithm on CT liver was tested. Performance analysis of this algorithm was carried out in various modalities on medical images. The results supported its suitability for segmentation of liver tumor.
基于综合模糊水平集的肝脏肿瘤计算机分割
CT腹部图像需要对部分肝脏和病变进行自动诊断。由于肝脏与附近其他器官高度相似,肝脏与肿瘤的分割具有挑战性。本文提出了一种基于模糊水平集算法的肝脏图像自动分割方法。从初步分割到空间模糊聚类,可以快速进化。合理的初始化和需要大量人工干预的控制参数的有效规范取决于水平集分割的效率。通过以下几个方面,对算法进行了较大的改进。首先,在自适应优化过程中,模糊聚类融合了空间信息,消除了中间形态操作。其次,直接从模糊聚类的性能中提取水平集分割控制参数。第三,提出了一种基于模糊聚类的水平集合演化正则化方法,该方法区别于其他方法。最后,对肝脏CT模糊水平集算法进行了验证。对该算法在不同模式下的医学图像进行了性能分析。结果支持了该方法在肝肿瘤分割中的适用性。
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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