IEEE Trans Med Imaging. 2021 Oct;40(10):2589-2599. doi: 10.1109/TMI.2021.3059282. Epub 2021 Sep 30.
Multi-contrast magnetic resonance (MR) image registration is useful in the clinic to achieve fast and accurate imaging-based disease diagnosis and treatment planning. Nevertheless, the efficiency and performance of the existing registration algorithms can still be improved. In this paper, we propose a novel unsupervised learning-based framework to achieve accurate and efficient multi-contrast MR image registration. Specifically, an end-to-end coarse-to-fine network architecture consisting of affine and deformable transformations is designed to improve the robustness and achieve end-to-end registration. Furthermore, a dual consistency constraint and a new prior knowledge-based loss function are developed to enhance the registration performances. The proposed method has been evaluated on a clinical dataset containing 555 cases, and encouraging performances have been achieved. Compared to the commonly utilized registration methods, including VoxelMorph, SyN, and LT-Net, the proposed method achieves better registration performance with a Dice score of 0.8397± 0.0756 in identifying stroke lesions. With regards to the registration speed, our method is about 10 times faster than the most competitive method of SyN (Affine) when testing on a CPU. Moreover, we prove that our method can still perform well on more challenging tasks with lacking scanning information data, showing the high robustness for the clinical application.
多对比度磁共振(MR)图像配准在临床上有助于实现快速、准确的基于成像的疾病诊断和治疗计划。然而,现有配准算法的效率和性能仍有待提高。在本文中,我们提出了一种新的基于无监督学习的框架,以实现准确、高效的多对比度 MR 图像配准。具体来说,设计了一个端到端的粗到精网络架构,包括仿射和变形变换,以提高鲁棒性并实现端到端配准。此外,开发了双一致性约束和新的基于先验知识的损失函数,以提高配准性能。该方法已在包含 555 例的临床数据集上进行了评估,取得了令人鼓舞的结果。与常用的配准方法(包括 VoxelMorph、SyN 和 LT-Net)相比,该方法在识别中风病变方面的性能更好,Dice 评分达到 0.8397±0.0756。在 CPU 上进行测试时,我们的方法的注册速度比最具竞争力的方法 SyN(仿射)快约 10 倍。此外,我们证明我们的方法在具有缺乏扫描信息数据的更具挑战性的任务中仍然可以很好地执行,显示出对临床应用的高鲁棒性。