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Brain Deformable Registration Using Global and Local Label-Driven Deep Regression Learning in the First Year of Life

机译:脑可变形注册使用全球和当地标签驱动的深度回归在生命的第一年学习

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摘要

Accurate medical image registration is highly important for the quantitative analysis of infant brain dynamic development in the first year of life. However, the deformable registration of infant brain magnetic resonance (MR) images is highly challenging for the following two reasons: First, there are very large anatomical and appearance variations in these longitudinal images; Second, there is a one-to-many correspondence in appearance between global anatomical tissues and the small local tissues therein. In this paper, we use a CNN (convolution neural network)-based global-and-local-label-driven deformable registration scheme. Two to-be-registered image patches are input into the UNet-style regression network. Then, a dense displacement field (DDF) between them is obtained by optimizing the total loss function between two corresponding label patches. Global and local label patches are used only during training. During inference, two new MR images are divided into many patch pairs and fed into the trained network. By averaging the deformation of the patches at the same location, the final 3D DDF between the two whole images is obtained. The highlight is that the global (white matter (WM), gray matter (GM), and cerebrospinal fluid (CSF)) and local tissues can be registered simultaneously without any prior ground-truth deformation. Especially for the local hippocampal tissues, the Dice ratios are substantially improved after registration via our method. Experimental results are presented on the intrasubject and intersubject registration of infant brain MR images between different time points, and the intersubject registration of brain T1-weighted MR images on the OASIS-1 dataset, according to which the proposed method realizes higher accuracy on both global and local tissues compared with state-of-the-art registration methods.
机译:准确的医学图像登记对于在生命的第一年的婴幼儿脑动态发展的定量分析非常重要。然而,婴儿脑磁共振(MR)图像的可变形登记是由于以下两个原因的极具挑战性:首先,在这些纵向图像中存在非常大的<斜体>解剖和外观变化;其次,在全局解剖组织和其中的小局部组织之间存在一个<斜体>一对多对应。在本文中,我们使用CNN(卷积神经网络)基于全球和本地标签驱动的可变形登记方案。两个待注册的图像修补程序被输入到UNET风格的回归网络中。然后,通过优化两个相应的标签斑块之间的总损失函数来获得它们之间的密集位移场(DDF)。全局和本地标签补丁仅在培训期间使用。在推理期间,两个新的MR图像被分成许多补丁对并进入训练的网络。通过在相同位置进行平均,获得两个整个图像之间的最终3D DDF。突出显示全局(白质(WM),灰质(GM)和脑脊液(CSF))和局部组织可以同时注册,而无需任何先前的地面真理变形。特别是对于当地海马组织,通过我们的方法在注册后基本上改善了骰子比。在不同时间点之间的婴儿脑MR图像的intersubject和Intershblembled的实验结果,以及在OASIS-1数据集上的大脑T1加权MR图像的主机登记,根据该方法在全局中实现更高的准确性和局部组织与最先进的登记方法相比。

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