Department of Engineering and Applied Physics, University of Science and Technology of China, Hefei, Anhui, China.
Department of Radiology, The First Affiliated Hospital of Anhui Medical University of China, Hefei, Anhui, China.
J Appl Clin Med Phys. 2020 Sep;21(9):193-200. doi: 10.1002/acm2.12968. Epub 2020 Jul 13.
To improve the efficiency of computed tomography (CT)-magnetic resonance (MR) deformable image registration while ensuring the registration accuracy.
Two fully convolutional networks (FCNs) for generating spatial deformable grids were proposed using the Cycle-Consistent method to ensure the deformed image consistency with the reference image data. In all, 74 pelvic cases consisting of both MR and CT images were studied, among which 64 cases were used as training data and 10 cases as the testing data. All training data were standardized and normalized, following simple image preparation to remove the redundant air. Dice coefficients and average surface distance (ASD) were calculated for regions of interest (ROI) of CT-MR image pairs, before and after the registration. The performance of the proposed method (FCN with Cycle-Consistent) was compared with that of Elastix software, MIM software, and FCN without cycle-consistent.
The results show that the proposed method achieved the best performance among the four registration methods tested in terms of registration accuracy and the method was more stable than others in general. In terms of average registration time, Elastix took 64 s, MIM software took 28 s, and the proposed method was found to be significantly faster, taking <0.1 s.
The proposed method not only ensures the accuracy of deformable image registration but also greatly reduces the time required for image registration and improves the efficiency of the registration process. In addition, compared with other deep learning methods, the proposed method is completely unsupervised and end-to-end.
提高计算机断层扫描(CT)-磁共振(MR)变形图像配准的效率,同时保证配准精度。
采用循环一致性方法提出了两种用于生成空间变形网格的全卷积网络(FCN),以确保变形图像与参考图像数据的一致性。共研究了 74 例包含 MR 和 CT 图像的骨盆病例,其中 64 例用于训练数据,10 例用于测试数据。所有训练数据均进行了标准化和归一化处理,简单的图像预处理可去除冗余空气。计算了 CT-MR 图像对感兴趣区域(ROI)的 Dice 系数和平均表面距离(ASD),在配准前后进行了比较。将所提出的方法(具有循环一致性的 FCN)的性能与 Elastix 软件、MIM 软件和无循环一致性的 FCN 进行了比较。
结果表明,在所测试的四种配准方法中,该方法在配准精度方面表现最佳,且一般比其他方法更稳定。在平均配准时间方面,Elastix 耗时 64 s,MIM 软件耗时 28 s,而所提出的方法明显更快,耗时<0.1 s。
该方法不仅保证了变形图像配准的准确性,而且大大减少了图像配准所需的时间,提高了配准过程的效率。此外,与其他深度学习方法相比,所提出的方法完全是无监督的端到端方法。