Automatic Liver Segmentation in MR and CE-MR Images with LCVAC - GAC Approach Using Mean- shape Initialization Technique

Kian Babanezhad, Hamed Azamoush, Safa Sanami
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Abstract

The Volume of the liver is a determining factor in measuring the severity of liver diseases and should be monitored regularly. Consequently, liver segmentation and volume estimation using image processing techniques play an important role in the follow up procedure. Automated liver segmentation is a challenging problem mostly addressed in CT images. MR imaging is preferred by radiologists for follow-up procedures since it does not expose patients to ionizing radiation and provides higher resolution. However, fewer studies report liver segmentation in MR images. MRI Liver segmentation represents a challenge due to presence of characteristic artifacts, such as partial volumes, noise, low contrast and poorly defined edges of the liver with respect to adjacent organs. In the present study we introduced a new automatic algorithm to 3D liver segmentation for MR and CE-MR images. The proposed algorithm includes a liver mean- shape that provides an automatic initialization together with a novel active contour method based on region with edge-weight and edge terms. In addition, different areas of liver were found, and dependent parameters were calculated automatically using modern geodesic function. We tested our algorithm on images acquired from 54 subjects in two hospitals. Finally, the results of the proposed method were compared with those of two conventional active contour methods.
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基于平均形状初始化技术的LCVAC - GAC方法在MR和CE-MR图像中的自动肝脏分割
肝脏体积是衡量肝脏疾病严重程度的决定性因素,应定期监测。因此,使用图像处理技术的肝脏分割和体积估计在后续程序中发挥重要作用。自动肝脏分割是一个具有挑战性的问题,主要解决在CT图像。磁共振成像是放射科医生的首选,因为它不会使患者暴露于电离辐射,并提供更高的分辨率。然而,很少有研究报道MR图像中的肝脏分割。MRI肝脏分割是一个挑战,因为存在特征性伪影,如部分体积、噪声、低对比度和肝脏相对于邻近器官的边缘不清晰。在本研究中,我们提出了一种新的自动分割算法,用于MR和CE-MR图像的三维肝脏分割。该算法包括提供自动初始化的肝脏平均形状和基于边缘权值和边缘项的区域的新颖活动轮廓方法。此外,发现肝脏的不同区域,并使用现代测地线函数自动计算相关参数。我们对两家医院的54名受试者的图像进行了算法测试。最后,将该方法与两种传统活动轮廓法的结果进行了比较。
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