基于肝癌CT图像的肝脏恶性肿瘤图像分割

Di Liu, Yanbo Liu, Bei Hui, Lin Ji, Jia-Jun Qiu
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引用次数: 0

摘要

肝细胞癌(HCC)是最常见的癌症类型之一。本文将几种图像分割方法结合、改进并应用于HCC图像分割领域。其主要技术包括:1。结合区域生长法的k均值聚类算法。2. 基于前景和边界的分水岭算法。3.基于LBP和灰度的区域生长算法。通过大量的研究可以发现,本文使用的前两种方法尚未应用于HCC图像分割。此外,本文还提出了一种新的基于LBP的区域生长方法。在实验部分,将讨论它们的适用性和差异。此外,本文还讨论了这些组合方法相对于单一方法的改进。通过对两者的分割结果和准确率进行比较,得出最佳的分割方案,为下一步肿瘤区域的三维重建奠定基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The images segmentation of liver malignant tumor based on CT images in HCC
Hepatocellular carcinoma (HCC) is one of the most common types of canceration. In this paper, several image segmentation methods are combined, improved and applied to the field of HCC image segmentation. The main techniques contain: 1. K-means clustering algorithm combined with region growing method. 2. Watershed algorithm based on foreground and boundary. 3. Region growing algorithm based on LBP and grey level. Via much research, it can be found out that the first two methods used in this paper have never been applied to HCC image segmentation. In addition, this paper also presents a new region growing method that based on LBP. In the part of the experiment, the applicability and difference of them will be discussed. What's more, this paper also discusses the improvement of these combination methods compared with the single methods. With comparing their segmentation result and accuracy, it can gets the best segmentation plan, which also lay the foundation for the next three-dimensional reconstruction of the tumor area.
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