Liver segmentation from abdominal CT images is an essential step for liver cancer computer-aided diagnosis and surgical planning. However, both the accuracy and robustness of existing liver segmentation methods cannot meet the requirements of clinical applications. In particular, for the common clinical cases where the liver tissue contains major pathology, current segmentation methods show poor performance. In this paper, we propose a novel low-rank tensor decomposition (LRTD) based multi-atlas segmentation (MAS) framework that achieves accurate and robust pathological liver segmentation of CT images. Firstly, we propose a multi-slice LRTD scheme to recover the underlying low-rank structure embedded in 3D medical images. It performs the LRTD on small image segments consisting of multiple consecutive image slices. Then, we present an LRTD-based atlas construction method to generate tumor-free liver atlases that mitigates the performance degradation of liver segmentation due to the presence of tumors. Finally, we introduce an LRTD-based MAS algorithm to derive patient-specific liver atlases for each test image, and to achieve accurate pairwise image registration and label propagation. Extensive experiments on three public databases of pathological liver cases validate the effectiveness of the proposed method. Both qualitative and quantitative results demonstrate that, in the presence of major pathology, the proposed method is more accurate and robust than state-of-the-art methods.
翻译:在腹部CT图像中,肝脏分解是肝癌计算机辅助诊断和外科手术规划的一个必要步骤,但是,现有的肝脏分解方法的准确性和稳健性都无法满足临床应用的要求。特别是,对于肝脏组织包含主要病理学的常见临床病例,目前的分解方法显示性能不佳。在本文中,我们提议了一个基于低级别高压分解(LRT)的多粒子分解(LRT)框架,实现CT图像的准确和稳健的肝脏分解。首先,我们提出一个多虱子LTD计划,以恢复嵌入3D医疗图像的低级别结构。它用由多个连续图像切片组成的小图像部分进行LTD。然后,我们提出一个基于LTD的图解析方法,以产生无肿瘤的肝脏分解(LRT)多粒分解(LTD)的性能降解。最后,我们提出基于LTD-MAS算法的算法,用于为每张测试图像的病人特定肝脏-低位结构,并实现由多个连续图像切片组成的小片段的LTD成的LTD 。然后,在拟议的主要路径数据库和定量标签上,更精确地展示,更精确地展示。在三种方法上,对地展示。