School of Information Engineering, Zhengzhou University, Zhengzhou 450001, China.
Collaborative Innovation Center for Internet Healthcare, Zhengzhou University, Zhengzhou 450052, China.
J Healthc Eng. 2022 Mar 25;2022:4247023. doi: 10.1155/2022/4247023. eCollection 2022.
The quality of positron emission tomography (PET) imaging is positively correlated with scanner sensitivity, which is closely related to the axial field of view (FOV). Conventional short-axis PET scanners (200-350 mm FOV) reduce the imaging quality during fast scanning (2-3 minutes) due to the limitation of FOV, which reduce the reliability of diagnosis. To overcome hardware limitations and improve the image quality of short-axis PET scanners, we propose a supervised deep learning model, CycleAGAN, which is based on a cycle-consistent adversarial network (CycleGAN). We introduced the attention mechanism into the generator and focus on channel and spatial representative features and supervised learning using pairs of data to maintain the spatial consistency of the generated images with the ground truth. The imaging information of 386 patients from Henan Provincial People's Hospital was prospectively included as the dataset in this study. The training data come from the total-body PET scanner uEXPLORER. The proposed CycleAGAN is compared with traditional gray-level-based methods and learning-based methods. The results confirm that CycleAGAN achieved the best results on SSIM and NRMSE and achieved the closest distribution to ground truth in expert rating. The proposed method is not only able to improve the image quality of PET scanners with 320 mm FOV but also achieved good results on shorter FOV scanners. Patients and radiologists can benefit from the computer-aided diagnosis (CAD) system integrated with CycleAGAN.
正电子发射断层扫描(PET)成像的质量与扫描仪的灵敏度呈正相关,而灵敏度又与轴向视野(FOV)密切相关。传统的短轴 PET 扫描仪(200-350mm FOV)由于 FOV 的限制,在快速扫描(2-3 分钟)过程中会降低成像质量,从而降低诊断的可靠性。为了克服硬件限制并提高短轴 PET 扫描仪的图像质量,我们提出了一种基于循环一致对抗网络(CycleGAN)的有监督深度学习模型 CycleAGAN。我们将注意力机制引入生成器中,并专注于通道和空间代表性特征,使用成对的数据进行监督学习,以保持生成图像与真实图像的空间一致性。本研究前瞻性地纳入了来自河南省人民医院的 386 名患者的成像信息作为数据集。训练数据来自全身 PET 扫描仪 uEXPLORER。将提出的 CycleAGAN 与传统的基于灰度的方法和基于学习的方法进行了比较。结果证实,CycleAGAN 在 SSIM 和 NRMSE 上取得了最佳结果,并在专家评分中实现了与真实值最接近的分布。该方法不仅能够提高 320mm FOV 的 PET 扫描仪的图像质量,而且在较短 FOV 的扫描仪上也取得了良好的效果。患者和放射科医生都将受益于集成了 CycleAGAN 的计算机辅助诊断(CAD)系统。