Xu Yan, Xu Chenchao, Kuang Xiao, Wang Hongkai, Chang Eric I-Chao, Huang Weimin, Fan Yubo
State Key Laboratory of Software Development Environment and Key Laboratory of Biomechanics and Mechanobiology of Ministry of Education, Beihang University, Beijing 100191, China and Research Institute of Beihang University in Shenzhen and Microsoft Research, Beijing 100080, China.
School of Biological Science and Medical Engineering, Beihang University, Beijing 100191, China.
Med Phys. 2016 May;43(5):2229. doi: 10.1118/1.4945021.
In this paper, the authors proposed a new 3D registration algorithm, 3D-scale invariant feature transform (SIFT)-Flow, for multiatlas-based liver segmentation in computed tomography (CT) images.
In the registration work, the authors developed a new registration method that takes advantage of dense correspondence using the informative and robust SIFT feature. The authors computed the dense SIFT features for the source image and the target image and designed an objective function to obtain the correspondence between these two images. Labeling of the source image was then mapped to the target image according to the former correspondence, resulting in accurate segmentation. In the fusion work, the 2D-based nonparametric label transfer method was extended to 3D for fusing the registered 3D atlases.
Compared with existing registration algorithms, 3D-SIFT-Flow has its particular advantage in matching anatomical structures (such as the liver) that observe large variation/deformation. The authors observed consistent improvement over widely adopted state-of-the-art registration methods such as ELASTIX, ANTS, and multiatlas fusion methods such as joint label fusion. Experimental results of liver segmentation on the MICCAI 2007 Grand Challenge are encouraging, e.g., Dice overlap ratio 96.27% ± 0.96% by our method compared with the previous state-of-the-art result of 94.90% ± 2.86%.
Experimental results show that 3D-SIFT-Flow is robust for segmenting the liver from CT images, which has large tissue deformation and blurry boundary, and 3D label transfer is effective and efficient for improving the registration accuracy.
在本文中,作者提出了一种新的三维配准算法,即三维尺度不变特征变换(SIFT)-流算法,用于基于多图谱的计算机断层扫描(CT)图像肝脏分割。
在配准工作中,作者开发了一种新的配准方法,该方法利用信息丰富且稳健的SIFT特征实现密集对应。作者计算了源图像和目标图像的密集SIFT特征,并设计了一个目标函数来获取这两幅图像之间的对应关系。然后根据先前的对应关系将源图像的标记映射到目标图像上,从而实现精确分割。在融合工作中,将基于二维的非参数标记转移方法扩展到三维,用于融合已配准的三维图谱。
与现有的配准算法相比,三维SIFT-流算法在匹配观察到较大变化/变形的解剖结构(如肝脏)方面具有独特优势。作者观察到,与广泛采用的诸如ELASTIX、ANTS等先进配准方法以及诸如联合标记融合等多图谱融合方法相比,有持续的改进。在MICCAI 2007大挑战中肝脏分割的实验结果令人鼓舞,例如,我们的方法得到的骰子重叠率为96.27%±0.96%,而之前的先进结果为94.90%±2.86%。
实验结果表明,三维SIFT-流算法对于从具有大组织变形和模糊边界的CT图像中分割肝脏具有鲁棒性,并且三维标记转移对于提高配准精度有效且高效。