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Towards Segmentation and Spatial Alignment of the Human Embryonic Brain Using Deep Learning for Atlas-Based Registration

机译:利用深入学习对基于地图集的注册的分割和空间对准人胚胎脑

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We propose an unsupervised deep learning method for atlas-based registration to achieve segmentation and spatial alignment of the embryonic brain in a single framework. Our approach consists of two sequential networks with a specifically designed loss function to address the challenges in 3D first trimester ultrasound. The first part learns the affine transformation and the second part learns the voxelwise nonrigid deformation between the target image and the atlas. We trained this network end-to-end and validated it against a ground truth on synthetic datasets designed to resemble the challenges present in 3D first trimester ultrasound. The method was tested on a dataset of human embryonic ultrasound volumes acquired at 9 weeks gestational age, which showed alignment of the brain in some cases and gave insight in open challenges for the proposed method. We conclude that our method is a promising approach towards fully automated spatial alignment and segmentation of embryonic brains in 3D ultrasound.
机译:我们提出了一种无风格的基于地图集的注册的深度学习方法,以在一个框架中实现胚胎大脑的分割和空间对齐。我们的方法包括两个顺序网络,具有专门设计的损失功能,以解决3D第一个三个月超声中的挑战。第一部分了解仿射变换,第二部分了解目标图像和地图之间的Voxelwise非身份变形。我们培训了这个网络端到端,并验证了旨在类似于3D第一个三个月超声中存在的挑战的合成数据集的基础事实。该方法在9周内获得的胎儿年龄的人胚胎超声量的数据集上进行测试,其在某些情况下显示了大脑的对准,并对所提出的方法进行了开放挑战的洞察力。我们得出结论,我们的方法是对3D超声中胚胎大脑的全自动空间取向和分割的有希望的方法。

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