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XCAT-GAN for Synthesizing 3D Consistent Labeled Cardiac MR Images on Anatomically Variable XCAT Phantoms

机译:Xcat-GaN用于在解剖学可变的Xcat幻影上合成3D一致标记的心脏MR图像

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Generative adversarial networks (GANs) have provided promising data enrichment solutions by synthesizing high-fidelity images. However, generating large sets of labeled images with new anatomical variations remains unexplored. We propose a novel method for synthesizing cardiac magnetic resonance (CMR) images on a population of virtual subjects with a large anatomical variation, introduced using the 4D eXtended Cardiac and Torso (XCAT) computerized human phantom. We investigate two conditional image synthesis approaches grounded on a semantically-consistent mask-guided image generation technique: 4-class and 8-class XCAT-GANs. The 4-class technique relies on only the annotations of the heart; while the 8-class technique employs a predicted multi-tissue label map of the heart-surrounding organs and provides better guidance for our conditional image synthesis. For both techniques, we train our conditional XCAT-GAN with real images paired with corresponding labels and subsequently at the inference time, we substitute the labels with the XCAT derived ones. Therefore, the trained network accurately transfers the tissue-specific textures to the new label maps. By creating 33 virtual subjects of synthetic CMR images at the end-diastolic and end-systolic phases, we evaluate the usefulness of such data in the downstream cardiac cavity segmentation task under different augmentation strategies. Results demonstrate that even with only 20% of real images (40 volumes) seen during training, segmentation performance is retained with the addition of synthetic CMR images. Moreover, the improvement in utilizing synthetic images for augmenting the real data is evident through the reduction of Hausdorff distance up to 28% and an increase in the Dice score up to 5%, indicating a higher similarity to the ground truth in all dimensions.
机译:生成的对抗网络(GANS)通过合成高保真图像提供了有前途的数据富集解决方案。然而,生成具有新的解剖变量的大型标记图像仍未探索。我们提出了一种新的方法,用于在具有大的解剖变化的虚拟对象群体上合成心脏磁共振(CMR)图像的新方法,使用4D扩展心脏和躯干(XCAT)计算机化人体模型引入。我们研究了两个条件的图像合成方法,在语义 - 一致的掩模引导图像生成技术接地:4级和8级Xcat-Gans。 4级技术只依赖于心脏的注释;虽然8级技术采用了心脏周围器官的预测的多组织标签图,并且为我们的条件图像合成提供了更好的指导。对于这两种技术,我们培养我们的条件XCAT-GaN与相应的标签,随后在推理的时候,我们用XCAT得出那些替代标签配对的真实图像。因此,训练有素的网络将组织特定纹理精确地将组织特定的纹理转移到新标签映射。通过在结束 - 舒张和末端收缩阶段创建33个虚拟主题的合成CMR图像,我们根据不同的增强策略评估下游心腔分割任务中这些数据的有用性。结果表明,即使在训练期间只有20%的真实图像(40卷),也通过添加合成CMR图像来保留分段性能。此外,通过减少高达28%的Hausdorff距离和高达5%的骰子得分的增加,可以通过减少到增强真实数据的改善,这表明与所有尺寸的地面真相更高的相似性。

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