Zhang Shuo, Liu Peter Xiaoping, Zheng Minhua, Shi Wen
School of Mechanical, Electronic and Control Engineering, Beijing Jiaotong University, Beijing, 100044, PR China.
Department of Systems and Computer Engineering, Carleton University, Ottawa, ON K1S 5B6, Canada.
Comput Biol Med. 2020 May;120:103708. doi: 10.1016/j.compbiomed.2020.103708. Epub 2020 Mar 20.
The image registration methods for deformable soft tissues utilize nonlinear transformations to align a pair of images precisely. In some situations, when there is huge gray scale difference or large deformation between the images to be registered, the deformation field tends to fold at some local voxels, which will result in the breakdown of the one-to-one mapping between images and the reduction of invertibility of the deformation field. In order to address this issue, a novel registration approach based on unsupervised learning is presented for deformable soft tissue image registration.
A novel unsupervised learning based registration approach, which consists of a registration network, a velocity field integration module and a grid sampling module, is presented for deformable soft tissue image registration. The main contributions are: (1) A novel encoder-decoder network is presented for the evaluation of stationary velocity field. (2) A Jacobian determinant based penalty term (Jacobian loss) is developed to reduce the folding voxels and to improve the invertibility of the deformation field.
The experimental results show that a new pair of images can be accurately registered using the trained registration model. In comparison with the conventional state-of-the-art method, SyN, the invertibility of the deformation field, accuracy and speed are all improved. Compared with the deep learning based method, VoxelMorph, the proposed method improves the invertibility of the deformation field.
可变形软组织的图像配准方法利用非线性变换来精确对齐一对图像。在某些情况下,当待配准图像之间存在巨大灰度差异或大变形时,变形场往往会在一些局部体素处折叠,这将导致图像之间的一对一映射失效以及变形场可逆性降低。为了解决这个问题,提出了一种基于无监督学习的新型配准方法用于可变形软组织图像配准。
提出了一种基于无监督学习的新型配准方法,用于可变形软组织图像配准,该方法由一个配准网络、一个速度场积分模块和一个网格采样模块组成。主要贡献包括:(1)提出了一种新型的编码器 - 解码器网络用于评估静止速度场。(2)开发了基于雅可比行列式的惩罚项(雅可比损失)以减少折叠体素并提高变形场的可逆性。
实验结果表明,使用训练好的配准模型可以准确配准一对新图像。与传统的最先进方法SyN相比,变形场的可逆性、准确性和速度都得到了提高。与基于深度学习的方法VoxelMorph相比,所提出的方法提高了变形场的可逆性。