论文标题
部分可观测时空混沌系统的无模型预测
Patient-specific mean teacher UNet for enhancing PET image and low-dose PET reconstruction on RefleXion X1 biology-guided radiotherapy system
论文作者
论文摘要
反射X1是第一个生物学引导的放射疗法(BGRT)系统。与完整的诊断宠物系统相比,其双重90度宠物探测器收集的成对生产事件较少。在拟议的BGRT工作流程中,在治疗交付前进行了简短的扫描,以确保图像质量和一致性。较短的扫描时间是模拟扫描时间的四分之一,也导致巧合事件较少,从而降低了图像质量。在这项研究中,我们提出了一个特定于患者的平均教师UNET(MT-UNET),以增强宠物图像质量和反射X1的低剂量PET重建。使用反射X1获得了9例癌症患者的PET/CT扫描。每个患者都进行了一次模拟扫描。在第一次和最终治疗部分中,有五名患者进行了额外的扫描。使用与仿真扫描相同的成像方案获得了治疗扫描。对于每次扫描,我们将全剂量图像和均匀分裂的事件重建为四个会话,以重建四分之一剂量的宠物图像。对于每个患者,我们提出的MT-UNET是使用模拟扫描的四分之一剂量和全剂量图像训练的。对于图像质量增强任务,我们将9个训练有素的MT-UNET应用于9名患者的全剂量模拟PET图像,分别产生增强的图像。使用CNR和SNR将增强的图像与原始的全剂量图像进行了比较。对于低剂量图像重建任务,我们将五个训练有素的MT-UNET应用于五名患者的十分剂量治疗图像,分别预测全剂量图像。使用SSIM和PSNR比较了预测和地面真实的全剂量图像。我们还培训和评估了特定于患者的UNET进行模型比较。与患者特定的UNET相比,我们提出的特定于患者的MT-UNET在提高反射低剂量和全剂量图像的质量方面取得了更好的性能。
The RefleXion X1 is the first biology-guided radiotherapy (BgRT) system. Its dual 90-degree PET detector collects fewer pair production events compared to a full-ring diagnostic PET system. In the proposed BgRT workflow, a short scan is acquired before treatment delivery to ensure image quality and consistency. The shorter scan time, a quarter of the simulation scan time, also leads to fewer coincidence events and hence reduced image quality. In this study, we proposed a patient-specific mean teacher UNet (MT-UNet) to enhance PET image quality and low-dose PET reconstruction on RefleXion X1. PET/CT scans of nine cancer patients were acquired using RefleXion X1. Every patient had one simulation scan. Five patients had additional scans acquired during the first and the final treatment fractions. Treatment scans were acquired using the same imaging protocol as the simulation scan. For each scan, we reconstructed a full-dose image and evenly split coincidence events into four sessions to reconstruct four quarter-dose PET images. For each patient, our proposed MT-UNet was trained using quarter-dose and full-dose images of the simulation scan. For the image quality enhancement task, we applied nine trained MT-UNets to full-dose simulation PET images of the nine patients to generate enhanced images, respectively. The enhanced images were compared with the original full-dose images using CNR and SNR. For the low-dose image reconstruction task, we applied five trained MT-UNets to ten quarter-dose treatment images of five patients to predict full-dose images, respectively. The predicted and ground truth full-dose images were compared using SSIM and PSNR. We also trained and evaluated patient-specific UNets for model comparison. Our proposed patient-specific MT-UNet achieved better performance in improving the quality of RefleXion low-dose and full-dose images compared to the patient-specific UNet.