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Infant Brain Deformable Registration Using Global and Local Label-Driven Deep Regression Learning

机译:婴儿大脑可变形注册使用全局和局部标签驱动的深度回归学习

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摘要

Accurate image registration is important for quantifying dynamic-brain development in the first year of life. However, it is challenging to deformable registration of infant brain magnetic resonance (MR) images because: (1) there are large anatomical and appearance variations in these longitudinal images; (2) there is a one-to-many correspondence in appearance between global anatomical regions and local small therein regions. In this paper, we apply a deformable registration scheme based on the global and local label-driven learning with convolution neural networks (CNN). Two to-be-registered patches are fed into an U-Net-like regression network. Then a dense displacement field (DDF) is obtained by optimizing the loss function between many pairs of label patches. Global and local label patch pairs are only leveraged to drive registration during training stage. During inference, the resulting 3D DDF is obtained by inputting two new MR images to the trained network. The highlight is that the global tissues, i.e. white matter (GM), gray matter (GM), cerebrospinal fluid (CSF), and the local hippocampi are well aligned at the same time without any priori ground-truth deformation. Especially for the local hippocampi, their Dice ratios between two aligned images are highly improved. Experiment results are given based on intra-subject and inter-subject registration of infant brain MR images between different time points, yielding higher accuracy in both global and local tissues compared with state-of-the-art registration methods.
机译:准确的图像配准对于量化生命第一年的动态大脑发育非常重要。然而,婴儿脑磁共振(MR)图像的可变形配准具有挑战性,因为:(1)在这些纵向图像中,解剖和外观变化很大; (2)在整体解剖区域和局部小区域之间在外观上存在一对多的对应关系。在本文中,我们基于卷积神经网络(CNN)应用基于全局和局部标签驱动学习的可变形注册方案。将两个要注册的补丁提供给类似U-Net的回归网络。然后,通过优化多对标签贴片之间的损失函数来获得密集位移场(DDF)。全局和局部标签补丁对仅在培训阶段用于驱动注册。在推理期间,通过将两个新的MR图像输入到经过训练的网络中来获得最终的3D DDF。最重要的是,全局组织即白质(GM),灰质(GM),脑脊液(CSF)和局部海马体在同一时间排列良好,没有先验的地面真相变形。特别是对于局部海马体,两个对齐图像之间的Dice比值得到了极大提高。基于不同时间点之间婴儿大脑MR图像的对象内和对象间配准,给出了实验结果,与最新的配准方法相比,在全局和局部组织中均具有更高的准确性。

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