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Delayed PET imaging using image synthesis network and nonrigid registration without additional CT scan

机译:使用图像合成网络和非刚性配准进行延迟 PET 成像,无需额外的 CT 扫描

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Abstract Purpose Attenuation correction is critical for positron emission tomography (PET) image reconstruction. The standard protocol for obtaining attenuation information in a clinical PET scanner is via coregistered computed tomography (CT) images. Therefore, for delayed PET imaging, the CT scan is repeated twice, which increases the radiation dose for the patient. In this paper, we propose a zero‐extradose delayed PET imaging method that requires no additional CT scans. Methods A deep learning‐based synthesis network is designed to convert PET data into pseudo‐CT images for delayed scans. Then, nonrigid registration is performed between this pseudo CT image and the CT image of the first scan, warping the CT image of the first scan to an estimated CT image for the delayed scan. Finally, the PET image attenuation correction in the delayed scan is obtained from this estimated CT image. Experiments with clinical datasets are implemented to assess the effectiveness of the proposed method with the well‐recognized Generative Adversarial Networks (GAN) method. The average peak signal‐to‐noise ratio (PSNR) and the mean absolute percent error (MAPE) are used for comparison. We also use scoring from three experienced radiologists as subjective measurement means based on the diagnostic consistency of the PET images reconstructed from GAN and the proposed method with respect to the ground truth images. Results The experiments show that the average PSNR is 47.04?dB (the proposed method) vs. 44.41?dB (the traditional GAN method) for the reconstructed delayed PET images in our evaluation dataset. The average MAPEs are 1.59 for the proposed method and 3.32 for the traditional GAN method across five organ regions of interest (ROIs). The scores for the GAN and the proposed method rated by three experienced radiologists are 8.08±0.60 and 9.02±0.52, indicating that the proposed method yields more consistent PET images with the ground truth. Conclusions This work proposes a novel method for CT‐less delayed PET imaging based on image synthesis network and nonrigid image registration. The PET image reconstructed using the proposed method yields delayed PET images with high image quality without artifacts and is quantitatively more accurate than the traditional GAN method.
机译:摘要 目的 衰减校正是正电子发射断层扫描(PET)图像重建的关键。在临床 PET 扫描仪中获取衰减信息的标准方案是通过共同配准的计算机断层扫描 (CT) 图像。因此,对于延迟的PET成像,CT扫描重复两次,这增加了患者的辐射剂量。在本文中,我们提出了一种不需要额外 CT 扫描的零额外延迟 PET 成像方法。方法 设计基于深度学习的合成网络,将PET数据转换为伪CT图像,用于延迟扫描。然后,在该伪 CT 图像和第一次扫描的 CT 图像之间进行非刚性配准,将第一次扫描的 CT 图像扭曲为延迟扫描的估计 CT 图像。最后,从该估计的CT图像中获得延迟扫描中的PET图像衰减校正。通过临床数据集的实验,使用公认的生成对抗网络(GAN)方法评估所提方法的有效性。使用平均峰值信噪比 (PSNR) 和平均绝对百分比误差 (MAPE) 进行比较。我们还使用三位经验丰富的放射科医生的评分作为主观测量手段,基于从GAN重建的PET图像的诊断一致性和所提出的方法相对于地面实况图像。结果 实验表明,平均PSNR为47。在我们的评估数据集中,重建延迟 PET 图像的 04?dB(提出的方法)与 44.41?dB(传统的 GAN 方法)相比。在五个器官感兴趣区域 (ROI) 中,所提出的方法的平均 MAPE 为 1.59%,传统 GAN 方法的平均 MAPE 为 3.32%。由三位经验丰富的放射科医生对GAN和所提出的方法进行评分分别为8.08±0.60和9.02±0.52分,表明所提出的方法可以产生与真实情况更一致的PET图像。结论 本工作提出了一种基于图像合成网络和非刚性图像配准的无CT延迟PET成像方法。使用所提方法重建的PET图像可产生延迟的PET图像,图像质量高,无伪影,并且在定量上比传统的GAN方法更准确。

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