Networks for Joint Affine and Non-parametric Image Registration.

Zhengyang Shen, Xu Han, Zhenlin Xu, Marc Niethammer
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Abstract

We introduce an end-to-end deep-learning framework for 3D medical image registration. In contrast to existing approaches, our framework combines two registration methods: an affine registration and a vector momentum-parameterized stationary velocity field (vSVF) model. Specifically, it consists of three stages. In the first stage, a multi-step affine network predicts affine transform parameters. In the second stage, we use a U-Net-like network to generate a momentum, from which a velocity field can be computed via smoothing. Finally, in the third stage, we employ a self-iterable map-based vSVF component to provide a non-parametric refinement based on the current estimate of the transformation map. Once the model is trained, a registration is completed in one forward pass. To evaluate the performance, we conducted longitudinal and cross-subject experiments on 3D magnetic resonance images (MRI) of the knee of the Osteoarthritis Initiative (OAI) dataset. Results show that our framework achieves comparable performance to state-of-the-art medical image registration approaches, but it is much faster, with a better control of transformation regularity including the ability to produce approximately symmetric transformations, and combining affine as well as non-parametric registration.

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用于联合仿射和非参数图像注册的网络
我们为三维医学图像配准引入了端到端的深度学习框架。与现有方法相比,我们的框架结合了两种配准方法:仿射配准和矢量动量参数化静态速度场(vSVF)模型。具体来说,它包括三个阶段。在第一阶段,多步仿射网络预测仿射变换参数。在第二阶段,我们使用类似 U-Net 的网络生成动量,并通过平滑处理计算出速度场。最后,在第三阶段,我们采用基于地图的自迭代 vSVF 组件,根据当前对变换地图的估计提供非参数细化。模型训练完成后,一次前向传递即可完成配准。为了评估性能,我们在骨关节炎倡议(OAI)数据集的膝关节三维磁共振图像(MRI)上进行了纵向和跨受试者实验。结果表明,我们的框架与最先进的医学图像配准方法性能相当,但速度更快,能更好地控制变换的规则性,包括产生近似对称变换的能力,并能结合仿射和非参数配准。
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