IEEE Trans Med Imaging. 2022 May;41(5):1219-1229. doi: 10.1109/TMI.2021.3137280. Epub 2022 May 2.
Deformable registration is fundamental to longitudinal and population-based image analyses. However, it is challenging to precisely align longitudinal infant brain MR images of the same subject, as well as cross-sectional infant brain MR images of different subjects, due to fast brain development during infancy. In this paper, we propose a recurrently usable deep neural network for the registration of infant brain MR images. There are three main highlights of our proposed method. (i) We use brain tissue segmentation maps for registration, instead of intensity images, to tackle the issue of rapid contrast changes of brain tissues during the first year of life. (ii) A single registration network is trained in a one-shot manner, and then recurrently applied in inference for multiple times, such that the complex deformation field can be recovered incrementally. (iii) We also propose both the adaptive smoothing layer and the tissue-aware anti-folding constraint into the registration network to ensure the physiological plausibility of estimated deformations without degrading the registration accuracy. Experimental results, in comparison to the state-of-the-art registration methods, indicate that our proposed method achieves the highest registration accuracy while still preserving the smoothness of the deformation field. The implementation of our proposed registration network is available online https://github.com/Barnonewdm/ACTA-Reg-Net.
可变形配准是纵向和基于人群的图像分析的基础。然而,由于婴儿期大脑快速发育,精确配准同一受试者的纵向婴儿脑磁共振图像以及不同受试者的横向婴儿脑磁共振图像具有挑战性。在本文中,我们提出了一种可重复使用的深度神经网络,用于婴儿脑磁共振图像的配准。我们提出的方法有三个主要特点。(i)我们使用脑组织分割图进行配准,而不是强度图像,以解决生命第一年大脑组织对比度快速变化的问题。(ii)以一次性的方式训练单个配准网络,然后在推断中多次重复应用,以便可以逐步恢复复杂的变形场。(iii)我们还将自适应平滑层和组织感知防折叠约束引入到配准网络中,以确保在不降低配准精度的情况下,估计变形的生理合理性。与最先进的配准方法相比,实验结果表明,我们提出的方法在保持变形场平滑度的同时,实现了最高的配准精度。我们提出的配准网络的实现可在 https://github.com/Barnonewdm/ACTA-Reg-Net 上获得。