传输成人相位图像,实现稳健的多视角等密度婴儿大脑分段。

Huabing Liu, Jiawei Huang, Dengqiang Jia, Qian Wang, Jun Xu, Dinggang Shen
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引用次数: 0

摘要

在磁共振(MR)图像中对婴儿大脑进行准确的组织分割对于绘制早期大脑发育图和确定生物标记物至关重要。由于正在进行髓鞘化和成熟,在等密度阶段(6-9 个月大),婴儿大脑的灰质和白质在磁共振图像中表现出相似的强度水平,这给组织分割带来了巨大挑战。而在 12 个月左右的类成人期,核磁共振图像显示出较高的组织对比度,很容易进行组织分割。在本文中,我们提出有效利用类成人期图像来实现稳健的多视角等点状婴儿脑部分割。具体来说,一种方法是将与等点相位图像具有相似组织对比度的成人相位图像转移到等点相位视图,并利用转移的图像训练等点相位视图分割网络。另一方面,我们将组织对比度更强的等点相位图像转移到成人样视图,用于训练成人样视图的分割网络。不同视图的分割网络形成一个多路径架构,执行多视图学习,进一步提高分割性能。由于保留解剖结构的风格转移是下游分割任务的关键,我们开发了一种具有强正则化项的断裂循环一致性对抗网络(DCAN),以在等密度和成象相位图像之间准确转移真实的组织对比度,同时仍然保持其结构的一致性。在 NDAR 和 iSeg-2019 数据集上进行的实验表明,我们的方法明显优于最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transferring Adult-like Phase Images for Robust Multi-view Isointense Infant Brain Segmentation.

Accurate tissue segmentation of infant brain in magnetic resonance (MR) images is crucial for charting early brain development and identifying biomarkers. Due to ongoing myelination and maturation, in the isointense phase (6-9 months of age), the gray and white matters of infant brain exhibit similar intensity levels in MR images, posing significant challenges for tissue segmentation. Meanwhile, in the adult-like phase around 12 months of age, the MR images show high tissue contrast and can be easily segmented. In this paper, we propose to effectively exploit adult-like phase images to achieve robustmulti-view isointense infant brain segmentation. Specifically, in one way, we transfer adult-like phase images to the isointense view, which have similar tissue contrast as the isointense phase images, and use the transferred images to train an isointense-view segmentation network. On the other way, we transfer isointense phase images to the adult-like view, which have enhanced tissue contrast, for training a segmentation network in the adult-like view. The segmentation networks of different views form a multi-path architecture that performs multi-view learning to further boost the segmentation performance. Since anatomy-preserving style transfer is key to the downstream segmentation task, we develop a Disentangled Cycle-consistent Adversarial Network (DCAN) with strong regularization terms to accurately transfer realistic tissue contrast between isointense and adult-like phase images while still maintaining their structural consistency. Experiments on both NDAR and iSeg-2019 datasets demonstrate a significant superior performance of our method over the state-of-the-art methods.

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