Liu Yihao, Chen Junyu, Zuo Lianrui, Carass Aaron, Prince Jerry L
Johns Hopkins University, Department of Electrical and Computer Engineering, Baltimore, Maryland, United States.
Johns Hopkins School of Medicine, Department of Radiology and Radiological Science, Baltimore, Maryland, United States.
J Med Imaging (Bellingham). 2024 Nov;11(6):064001. doi: 10.1117/1.JMI.11.6.064001. Epub 2024 Nov 6.
Deformable image registration establishes non-linear spatial correspondences between fixed and moving images. Deep learning-based deformable registration methods have been widely studied in recent years due to their speed advantage over traditional algorithms as well as their better accuracy. Most existing deep learning-based methods require neural networks to encode location information in their feature maps and predict displacement or deformation fields through convolutional or fully connected layers from these high-dimensional feature maps. We present vector field attention (VFA), a novel framework that enhances the efficiency of the existing network design by enabling direct retrieval of location correspondences.
VFA uses neural networks to extract multi-resolution feature maps from the fixed and moving images and then retrieves pixel-level correspondences based on feature similarity. The retrieval is achieved with a novel attention module without the need for learnable parameters. VFA is trained end-to-end in either a supervised or unsupervised manner.
We evaluated VFA for intra- and inter-modality registration and unsupervised and semi-supervised registration using public datasets as well as the Learn2Reg challenge. VFA demonstrated comparable or superior registration accuracy compared with several state-of-the-art methods.
VFA offers a novel approach to deformable image registration by directly retrieving spatial correspondences from feature maps, leading to improved performance in registration tasks. It holds potential for broader applications.
可变形图像配准在固定图像和移动图像之间建立非线性空间对应关系。近年来,基于深度学习的可变形配准方法因其相对于传统算法的速度优势以及更高的准确性而得到广泛研究。大多数现有的基于深度学习的方法要求神经网络在其特征图中编码位置信息,并通过卷积层或全连接层从这些高维特征图中预测位移或变形场。我们提出了向量场注意力(VFA),这是一种新颖的框架,通过直接检索位置对应关系来提高现有网络设计的效率。
VFA使用神经网络从固定图像和移动图像中提取多分辨率特征图,然后基于特征相似性检索像素级对应关系。这种检索通过一个新颖的注意力模块实现,无需可学习参数。VFA以监督或无监督方式进行端到端训练。
我们使用公共数据集以及Learn2Reg挑战赛对VFA进行了模态内和模态间配准以及无监督和半监督配准的评估。与几种最先进的方法相比,VFA展示了相当或更高的配准精度。
VFA通过直接从特征图中检索空间对应关系,为可变形图像配准提供了一种新颖的方法,从而在配准任务中提高了性能。它具有更广泛应用的潜力。