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首页> 外文期刊>IEEE Transactions on Radiation and Plasma Medical Sciences >MR-Based Attenuation Correction for Brain PET Using 3-D Cycle-Consistent Adversarial Network
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MR-Based Attenuation Correction for Brain PET Using 3-D Cycle-Consistent Adversarial Network

机译:使用3-D循环一致的对抗网络对脑宠物的基于MR的衰减校正

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摘要

Attenuation correction (AC) is important for the quantitative merits of positron emission tomography (PET). However, attenuation coefficients cannot be derived from magnetic resonance (MR) images directly for PET/MR systems. In this work, we aimed to derive continuous AC maps from Dixon MR images without the requirement of MR and computed tomography (CT) image registration. To achieve this, a 3-D generative adversarial network with both discriminative and cycle-consistency loss (Cycle-GAN) was developed. The modified 3-D U-net was employed as the structure of the generative networks to generate the pseudo-CT/MR images. The 3-D patch-based discriminative networks were used to distinguish the generated pseudo-CT/MR images from the true CT/MR images. To evaluate its performance, datasets from 32 patients were used in the experiment. The Dixon segmentation and atlas methods provided by the vendor and the convolutional neural network (CNN) method which utilized registered MR and CT images were employed as the reference methods. Dice coefficients of the pseudo-CT images and the regional quantification in the reconstructed PET images were compared. Results show that the Cycle-GAN framework can generate better AC compared to the Dixon segmentation and atlas methods, and shows comparable performance compared to the CNN method.
机译:衰减校正(AC)对于正电子发射断层扫描(PET)的定量优点非常重要。然而,衰减系数不能直接导出用于PET / MR系统的磁共振(MR)图像。在这项工作中,我们旨在从迪克森MR图像中导出连续的AC地图,而不需要MR和计算机断层扫描(CT)图像登记。为此,开发了一种具有鉴别和循环一致性损失(循环GaN)的三维生成的对抗网络。修改的3-D U-Net被用作生成网络的结构,以产生伪CT / MR图像。基于3-D贴剂的判别网络用于区分生成的伪CT / MR图像从真正的CT / MR图像。为了评估其性能,在实验中使用32名患者的数据集。供应商提供的Dixon分割和Atlas方法和使用注册的MR和CT图像的卷积神经网络(CNN)方法作为参考方法。比较了伪CT图像的骰子系数和重建的PET图像中的区域定量。结果表明,与迪克松分割和阿特拉斯方法相比,周期-GaN框架可以产生更好的AC,与CNN方法相比,显示了可比性。

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