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6-Month Infant Brain Mri Segmentation Guided by 24-Month Data Using Cycle-Consistent Adversarial Networks

机译:使用周期稳定的对抗网络,通过24个月数据指导的6个月婴儿脑Mri分割

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Due to the extremely low intensity contrast between the white matter (WM) and the gray matter (GM) at around 6 months of age (the isointense phase), it is difficult for manual annotation, hence the number of training labels is highly limited. Consequently, it is still challenging to automatically segment isointense infant brain MRI. Meanwhile, the contrast of intensity images in the early adult phase, such as 24 months of age, is a relatively better, which can be easily segmented by the well-developed tools, e.g., FreeSurfer. Therefore, the question is how could we employ these high-contrast images (such as 24-month-old images) to guide the segmentation of 6-month-old images. Motivated by the above purpose, we propose a method to explore the 24-month-old images for a reliable tissue segmentation of 6-month-old images. Specifically, we design a 3D-cycleGAN-Seg architecture to generate synthetic images of the isointense phase by transferring appearances between the two time-points. To guarantee the tissue segmentation consistency between 6-month-old and 24-month-old images, we employ features from generated segmentations to guide the training of the generator network. To further improve the quality of synthetic images, we propose a feature matching loss that computes the cosine distance between unpaired segmentation features of the real and fake images. Then, the transferred of 24-month-old images is used to jointly train the segmentation model on the 6-month-old images. Experimental results demonstrate a superior performance of the proposed method compared with the existing deep learning-based methods.
机译:由于在大约6个月大时(等强度阶段),白质(WM)和灰质(GM)之间的强度对比度极低,因此难以手动标注,因此训练标签的数量受到很大限制。因此,自动分割等强度的婴儿脑MRI仍然具有挑战性。同时,在成人的早期阶段(例如24个月大),强度图像的对比度相对较好,可以通过完善的工具(例如FreeSurfer)轻松进行分割。因此,问题在于我们如何利用这些高对比度图像(例如24个月大的图像)来指导6个月大的图像的分割。出于上述目的,我们提出了一种方法来探索24个月大的图像,以便对6个月大的图像进行可靠的组织分割。具体来说,我们设计了3D-cycleGAN-Seg架构,通过在两个时间点之间转移外观来生成等强度相的合成图像。为了保证6个月大和24个月大的图像之间的组织分割一致性,我们采用生成的分割中的特征来指导生成器网络的训练。为了进一步提高合成图像的质量,我们提出了一种特征匹配损失,该特征匹配损失计算了真实图像和伪图像的未配对分割特征之间的余弦距离。然后,使用转移的24个月大的图像对6个月大的图像进行联合训练分割模型。实验结果表明,与现有的基于深度学习的方法相比,该方法具有更好的性能。

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