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使用图割以及迭代估计形状和强度约束的肝脏分割方法。

Liver segmentation approach using graph cuts and iteratively estimated shape and intensity constrains.

作者信息

Afifi Ahmed, Nakaguchi Toshiya

机构信息

Faculty of Computers and Information, Menoufia University, Egypt.

出版信息

Med Image Comput Comput Assist Interv. 2012;15(Pt 2):395-403. doi: 10.1007/978-3-642-33418-4_49.

Abstract

In this paper, we present a liver segmentation approach. In which, the relation between neighboring slices in CT images is utilized to estimate shape and statistical information of the liver. This information is then integrated with the graph cuts algorithm to segment the liver in each CT slice. This approach does not require prior models construction, and it uses single phase CT images; even so, it is talented to deal with complex shape and intensity variations. Moreover, it eliminates the burdens associated with model construction like data collection, manual segmentation, registration, and landmark correspondence. In contrast, it requires a low user interaction to determine the liver landmarks on a single CT slice only. The proposed approach has been evaluated on 10 CT images with several liver abnormalities, including tumors and cysts, and it achieved high average scores of 81.7 using MICCAI-2007 Grand Challenge scoring system. Compared to contemporary approaches, our approach requires significantly less interaction and processing time.

摘要

在本文中,我们提出了一种肝脏分割方法。其中,利用CT图像中相邻切片之间的关系来估计肝脏的形状和统计信息。然后,将该信息与图割算法相结合,以分割每个CT切片中的肝脏。该方法无需构建先验模型,且使用单相CT图像;即便如此,它仍能够处理复杂的形状和强度变化。此外,它消除了与模型构建相关的数据收集、手动分割、配准和地标对应等负担。相比之下,它仅需较低的用户交互来确定单个CT切片上的肝脏地标。所提出的方法已在10幅具有多种肝脏异常(包括肿瘤和囊肿)的CT图像上进行了评估,并且使用MICCAI - 2007大挑战评分系统获得了81.7的高平均分。与当代方法相比,我们的方法所需的交互和处理时间显著更少。

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