基于标记控制分水岭算法的肝脏CT图像有效分割

Mohammad Anwarul Siddique, S. Singh, Moin Hasan
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引用次数: 0

摘要

许多重要的任务,如血液净化和清除体内的有毒元素,都是由肝脏来完成的,这使得肝脏成为人体非常重要的器官。近年来,生活方式的改变增加了患肝癌的风险。传统的肝癌检测方法耗时长,成本高。因此,由于计算机辅助诊断能够在更短的时间内发现癌症,而且费用更低,因此计算机辅助诊断得到了普及。计算机辅助诊断包括使用一些机器学习算法或深度学习算法处理计算机断层扫描图像。这些算法的效率取决于输入图像的质量和数量。噪声是医学图像所固有的。使用一些预处理技术可以去除噪声。另一个重要步骤是分割,即从医学图像中分离不需要的器官以获得感兴趣的区域。本文提出了一种有效的标记控制分水岭分割技术。为了评价该方法的有效性,采用骰子点数、体积重叠误差、相对体积差和Jaccard指数作为评价参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effective Segmentation of Liver CT images using Marker Controlled Watershed Algorithm
Many important tasks such as blood purification and removing toxic elements from body are performed by liver which makes it a very vital organ in human body. Changing lifestyle has increased the risk of liver cancer in recent times. Traditional methods of liver cancer detection take more time and it is costly. Therefore, computer aided diagnosis has gained popularity due to their ability to detect cancer in less time along with less costly. Computer aided diagnosis involves processing computed tomography images using some machine learning algorithms or deep learning algorithms. Efficiency of these algorithms depend upon the quality and quantity of input images. Noises are inherent in medical images. Noise can be removed using some pre-processing techniques. Another important step is segmentation, which involves separating unwanted organs from medical images to obtain region of interest. This article presents an effective segmentation technique using Marker Controlled Watershed Algorithm. To evaluate the effectiveness of proposed method dice score, volume overlapping error, relative volume difference, and Jaccard Index are used as evaluation parameters.
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