Deep learning based PET image reconstruction methods have achieved promising results recently. However, most of these methods follow a supervised learning paradigm, which rely heavily on the availability of high-quality training labels. In particular, the long scanning time required and high radiation exposure associated with PET scans make obtaining this labels impractical. In this paper, we propose a dual-domain unsupervised PET image reconstruction method based on learned decent algorithm, which reconstructs high-quality PET images from sinograms without the need for image labels. Specifically, we unroll the proximal gradient method with a learnable l2,1 norm for PET image reconstruction problem. The training is unsupervised, using measurement domain loss based on deep image prior as well as image domain loss based on rotation equivariance property. The experimental results domonstrate the superior performance of proposed method compared with maximum likelihood expectation maximazation (MLEM), total-variation regularized EM (EM-TV) and deep image prior based method (DIP).
翻译:深入学习的PET图像重建方法最近取得了可喜的成果。然而,大多数这些方法都遵循了受监督的学习模式,这在很大程度上依赖于高质量培训标签的可用性。特别是,由于需要长时间的扫描时间和与PET扫描相关的高辐射照射使得获得这一标签不切实际。在本文中,我们建议采用基于学习的体面算法的双视、无监督的PET图像重建方法,该算法将高质量的PET图像从罪状图中重建而不需要图像标签。具体地说,我们用对PET图像重建问题可学的 12/1 规范来解开最接近的梯度方法。培训是不受监督的,使用基于先前的深度图像以及基于旋转等同属性的图像域损失的测量域损失。实验结果将拟议方法的优异性表现与最大可能性的最大化(MLEM)、完全变正化的EM(EM-TV)和先前的深度图像法(DIP ) 相匹配。</s>