Izadi Saeed, Shiri Isaac, F Uribe Carlos, Geramifar Parham, Zaidi Habib, Rahmim Arman, Hamarneh Ghassan
Medical Image Analysis Lab, School of Computing Science, Simon Fraser University, Canada.
Division of Nuclear Medicine and Molecular Imaging, Geneva University Hospital, CH-1211 Geneva 4, Geneva, Switzerland; Department of Cardiology, Inselspital, Bern University Hospital, University of Bern, Bern, Switzerland.
Z Med Phys. 2024 Jan 31. doi: 10.1016/j.zemedi.2024.01.002.
In positron emission tomography (PET), attenuation and scatter corrections are necessary steps toward accurate quantitative reconstruction of the radiopharmaceutical distribution. Inspired by recent advances in deep learning, many algorithms based on convolutional neural networks have been proposed for automatic attenuation and scatter correction, enabling applications to CT-less or MR-less PET scanners to improve performance in the presence of CT-related artifacts. A known characteristic of PET imaging is to have varying tracer uptakes for various patients and/or anatomical regions. However, existing deep learning-based algorithms utilize a fixed model across different subjects and/or anatomical regions during inference, which could result in spurious outputs. In this work, we present a novel deep learning-based framework for the direct reconstruction of attenuation and scatter-corrected PET from non-attenuation-corrected images in the absence of structural information in the inference. To deal with inter-subject and intra-subject uptake variations in PET imaging, we propose a novel model to perform subject- and region-specific filtering through modulating the convolution kernels in accordance to the contextual coherency within the neighboring slices. This way, the context-aware convolution can guide the composition of intermediate features in favor of regressing input-conditioned and/or region-specific tracer uptakes. We also utilized a large cohort of 910 whole-body studies for training and evaluation purposes, which is more than one order of magnitude larger than previous works. In our experimental studies, qualitative assessments showed that our proposed CT-free method is capable of producing corrected PET images that accurately resemble ground truth images corrected with the aid of CT scans. For quantitative assessments, we evaluated our proposed method over 112 held-out subjects and achieved an absolute relative error of 14.30±3.88% and a relative error of -2.11%±2.73% in whole-body.
在正电子发射断层扫描(PET)中,衰减校正和散射校正是实现放射性药物分布准确定量重建的必要步骤。受深度学习近期进展的启发,许多基于卷积神经网络的算法已被提出用于自动衰减校正和散射校正,从而能够应用于无CT或无MR的PET扫描仪,以在存在CT相关伪影的情况下提高性能。PET成像的一个已知特征是不同患者和/或解剖区域的示踪剂摄取量不同。然而,现有的基于深度学习的算法在推理过程中对不同受试者和/或解剖区域使用固定模型,这可能导致虚假输出。在这项工作中,我们提出了一种新颖的基于深度学习的框架,用于在推理过程中在没有结构信息的情况下从未进行衰减校正的图像直接重建衰减校正和散射校正的PET。为了处理PET成像中的受试者间和受试者内摄取差异,我们提出了一种新颖的模型,通过根据相邻切片内的上下文连贯性调制卷积核来执行受试者和区域特定的滤波。通过这种方式,上下文感知卷积可以指导中间特征的组合,有利于回归输入条件和/或区域特定的示踪剂摄取。我们还使用了910例全身研究的大型队列进行训练和评估,这比以前的工作大一个多数量级。在我们的实验研究中,定性评估表明,我们提出的无CT方法能够生成校正后的PET图像,这些图像与借助CT扫描校正的真实图像准确相似。对于定量评估,我们在112名保留受试者上评估了我们提出的方法,在全身实现了14.30±3.88%的绝对相对误差和-2.11%±2.73%的相对误差。