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Cross-Modality Knowledge Transfer for Prostate Segmentation from CT Scans

机译:CT扫描的前列腺细分跨型号知识转移

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Creating large scale high-quality annotations is a known challenge in medical imaging. In this work, based on the CycleGAN algorithm, we propose leveraging annotations from one modality to be useful in other modalities. More specifically, the proposed algorithm creates highly realistic synthetic CT images (SynCT) from prostate MR images using unpaired data sets. By using SynCT images (without segmentation labels) and MR images (with segmentation labels available), we have trained a deep segmentation network for precise delineation of prostate from real CT scans. For the generator in our CycleGAN, the cycle consistency term is used to guarantee that SynCT shares the identical manually-drawn, high-quality masks originally delineated on MR images. Further, we introduce a cost function based on structural similarity index (SSIM) to improve the anatomical similarity between real and synthetic images. For segmentation followed by the SynCT generation from CycleGAN, automatic delineation is achieved through a 2.5D Residual U-Net. Quantitative evaluation demonstrates comparable segmentation results between our SynCT and radiologist drawn masks for real CT images, solving an important problem in medical image segmentation field when ground truth annotations are not available for the modality of interest.
机译:创造大规模的高质量注释是医学成像中已知的挑战。在这项工作中,基于Cryclan算法,我们建议利用一种模态的注释在其他方式中有用。更具体地,所提出的算法使用未配对数据集从前列腺MR图像创建高度现实的合成CT图像(Synct)。通过使用Synct图像(没有分段标签)和MR图像(具有分段标签),我们已经训练了深度分段网络,以精确描绘真实的CT扫描前列腺。对于Crycangan中的发电机,循环一致性术语用于保证Synct共享最初在MR图像上划算的相同的手动绘制,高质量的面具。此外,我们基于结构相似性指数(SSIM)介绍了一种成本函数,以改善真实和合成图像之间的解剖相似性。对于分割后,通过CryclaN的Synct生成,通过2.5D残差U-Net实现自动描绘。定量评估在我们的Synct和放射科医生绘制掩模之间的可比分割结果展示了真实CT图像的掩模,在地面真理注释对于兴趣的模式不可用的地面说明时解决了医学图像分割领域的重要问题。

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