Department of Radiation Oncology, Emory University, Atlanta, GA, United States of America. Co-author.
Phys Med Biol. 2019 Nov 4;64(21):215016. doi: 10.1088/1361-6560/ab4eb7.
Attenuation correction (AC) of PET/MRI faces challenges including inter-scan motion, image artifacts such as truncation and distortion, and erroneous transformation of structural voxel-intensities to PET mu-map values. We propose a deep-learning-based method to derive synthetic CT (sCT) images from non-attenuation corrected PET (NAC PET) images for AC on whole-body PET/MRI imaging. A 3D cycle-consistent generative adversarial networks (CycleGAN) framework was employed to synthesize CT images from NAC PET. The method learns a transformation that minimizes the difference between sCT, generated from NAC PET, and true CT. It also learns an inverse transformation such that cycle NAC PET image generated from the sCT is close to true NAC PET image. A self-attention strategy was also utilized to identify the most informative component and mitigate the disturbance of noise. We conducted a retrospective study on a total of 119 sets of whole-body PET/CT, with 80 sets for training and 39 sets for testing and evaluation. The whole-body sCT images generated with proposed method demonstrate great resemblance to true CT images, and show good contrast on soft tissue, lung and bony tissues. The mean absolute error (MAE) of sCT over true CT is less than 110 HU. Using sCT for whole-body PET AC, the mean error of PET quantification is less than 1% and normalized mean square error (NMSE) is less than 1.4%. Average normalized cross correlation on whole body is close to one, and PSNR is larger than 42 dB. We proposed a deep learning-based approach to generate sCT from whole-body NAC PET for PET AC. sCT generated with proposed method shows great similarity to true CT images both qualitatively and quantitatively, and demonstrates great potential for whole-body PET AC in the absence of structural information.
衰减校正(AC)的 PET/MRI 面临的挑战包括扫描间运动、图像伪影(如截断和变形)以及结构体素强度到 PET μ 图值的错误转换。我们提出了一种基于深度学习的方法,从非衰减校正的 PET(NAC PET)图像中推导出合成 CT(sCT)图像,用于全身 PET/MRI 成像的 AC。采用三维循环一致生成对抗网络(CycleGAN)框架从 NAC PET 生成 CT 图像。该方法学习一个变换,使 sCT 与真实 CT 之间的差异最小化,sCT 是从 NAC PET 生成的。它还学习了一个逆变换,使得从 sCT 生成的循环 NAC PET 图像接近真实的 NAC PET 图像。还利用自注意力策略来识别最具信息量的成分并减轻噪声的干扰。我们对总共 119 套全身 PET/CT 进行了回顾性研究,其中 80 套用于训练,39 套用于测试和评估。所提出的方法生成的全身 sCT 图像与真实 CT 图像非常相似,在软组织、肺部和骨骼组织上显示出良好的对比度。sCT 相对于真实 CT 的平均绝对误差(MAE)小于 110 HU。使用 sCT 进行全身 PET AC,PET 定量的平均误差小于 1%,归一化均方误差(NMSE)小于 1.4%。全身平均归一化互相关接近 1,PSNR 大于 42 dB。我们提出了一种基于深度学习的方法,从全身 NAC PET 生成 sCT 进行 PET AC。所提出的方法生成的 sCT 在定性和定量上与真实 CT 图像非常相似,并且在没有结构信息的情况下,对全身 PET AC 具有很大的潜力。