基于水平集的多相CT图像肝脏自动分割

Kentaro Saito, Huimin Lu, J. Tan, Hyoungseop Kim, A. Yamamoto, S. Kido, M. Tanabe
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引用次数: 4

摘要

肝脏多期CT图像分割是计算机辅助诊断的关键技术之一。造影剂赋予多期CT图像不同的强度特征,使其能够发现肿瘤。从多期CT图像中分割肝脏区域是一个具有挑战性的问题。解决这一问题的方法有很多,但这些方法都依赖于其他阶段或配准。为了解决这一问题,本文提出了基于解剖特征的方法,该方法在各个阶段基本是独立的。该方法采用水平集方法进行最终分割。水平集分割结果的准确性依赖于初始轮廓,因此我们根据肝脏的解剖特征对初始区域进行预处理。然后利用肋骨信息引入轮廓约束,提高分割精度。我们对5张4相的多相CT图像进行了分割评价。实验结果表明,该方法在各个相位都具有较好的精度。
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Automatic liver segmentation from multiphase CT images by using level set method
Segmentation of liver from Multi-phase CT images is one of the essential technology for computer aided diagnosis. Contrast medium gives multi-phase CT images different intensity feature which enables to detect tumor. It is a challenging problem to segment liver region from multi-phase CT images. There are many approaches for solving this problem, however, these methods depend on other phases or registration. In order to solve this problem, we propose anatomy feature-based method which is mostly independent for each phase in this paper. This method uses level set method for final segmentation. The accuracy of segmentation result by level set methods relay on initial contour, so we preprocess initial region of liver by anatomical feature. Then we introduced contour constrain by using ribs information to improve segmentaion accuracy. Our segmentation was evaluated on 5 multi-phase CT images which have 4 phases. Experimental results show that the proposed method is good accuracy for each phase.
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