Accurate neuroanatomy segmentation using 3D spatial and anatomical attention neural networks

Hewei Cheng, Zhengyu Ren, Peiyang Li, Yin Tian, Wei Wang, Zhangyong Li, Yongjiao Fan
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Abstract

Brain structure segmentation from 3D magnetic resonance (MR) images is a prerequisite for quantifying brain morphology. Since typical 3D whole brain deep learning models demand large GPU memory, 3D image patch-based deep learning methods are favored for their GPU memory efficiency. However, existing 3D image patch-based methods are not well equipped to capture spatial and anatomical contextual information that is necessary for accurate brain structure segmentation. To overcome this limitation, we develop a spatial and anatomical context-aware network to integrate spatial and anatomical contextual information for accurate brain structure segmentation from MR images. Particularly, a spatial attention block is adopted to encode spatial context information of the 3D patches, an anatomical attention block is adopted to aggregate image information across channels of the 3D patches, and finally the spatial and anatomical attention blocks are adaptively fused by an element-wise convolution operation. Moreover, an online patch sampling strategy is utilized to train a deep neural network with all available patches of the training MR images, facilitating accurate segmentation of brain structures. Ablation and comparison results have demonstrated that our method is capable of achieving promising segmentation performance, better than state-of-the-art alternative methods by 3.30% in terms of Dice scores.
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利用三维空间和解剖注意神经网络进行精确的神经解剖学分割
从三维磁共振(MR)图像中分割脑结构是量化脑形态的先决条件。由于典型的3D全脑深度学习模型需要较大的GPU内存,基于3D图像补丁的深度学习方法因其GPU内存效率而受到青睐。然而,现有的基于3D图像补丁的方法并不能很好地捕获准确分割大脑结构所必需的空间和解剖上下文信息。为了克服这一限制,我们开发了一个空间和解剖上下文感知网络来整合空间和解剖上下文信息,以便从MR图像中准确分割大脑结构。其中,采用空间注意块对三维小块的空间上下文信息进行编码,采用解剖注意块对三维小块各通道的图像信息进行聚合,最后采用逐元卷积运算对空间和解剖注意块进行自适应融合。此外,利用在线斑块采样策略,利用训练MR图像的所有可用斑块训练深度神经网络,促进大脑结构的准确分割。消融和比较结果表明,我们的方法能够实现很好的分割性能,在Dice得分方面比最先进的替代方法好3.30%。
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