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Penalized PET reconstruction using deep learning prior and local linear fitting

机译:使用深度学习先验和局部线性拟合的惩罚性PET重建

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摘要

Motivated by the great potential of deep learning in medical imaging, we propose an iterative positron emission tomography (PET) reconstruction framework using a deep learning-based prior. We utilized the denoising convolutional neural network (DnCNN) method and trained the network using full-dose images as the ground truth and low dose images reconstructed from downsampled data by Poisson thinning as input. Since most published deep networks are trained at a predetermined noise level, the noise level disparity of training and testing data is a major problem for their applicability as a generalized prior. In particular, the noise level significantly changes in each iteration, which can potentially degrade the overall performance of iterative reconstruction. Due to insufficient existing studies, we conducted simulations and evaluated the degradation of performance at various noise conditions. Our findings indicated that DnCNN produces additional bias induced by the disparity of noise levels. To address this issue, we propose a local linear fitting (LLF) function incorporated with the DnCNN prior to improve the image quality by preventing unwanted bias. We demonstrate that the resultant method is robust against noise level disparities despite the network being trained at a predetermined noise level. By means of bias and standard deviation studies via both simulations and clinical experiments, we show that the proposed method outperforms conventional methods based on total variation (TV) and non-local means (NLM) penalties. We thereby confirm that the proposed method improves the reconstruction result both quantitatively and qualitatively.
机译:受医学成像中深度学习的巨大潜力的启发,我们提出了一种基于深度学习的先验迭代正电子发射断层扫描(PET)重建框架。我们利用去噪卷积神经网络(DnCNN)方法,并使用全剂量图像作为地面真实情况和通过泊松细化从下采样数据重构的低剂量图像作为输入来训练网络。由于大多数公开的深度网络都是在预定的噪声水平下进行训练的,因此训练和测试数据的噪声水平差异是它们作为通用先验技术的适用性的主要问题。特别是,噪声水平在每次迭代中都会发生显着变化,这可能会降低迭代重建的整体性能。由于现有研究不足,我们进行了仿真并评估了各种噪声条件下性能的下降。我们的发现表明,DnCNN会由于噪声水平的差异而产生额外的偏差。为了解决此问题,我们提出了与DnCNN结合使用的局部线性拟合(LLF)函数,以通过防止不必要的偏差来改善图像质量。我们证明,尽管在预定的噪声级别上训练了网络,但所得方法仍能抵抗噪声级别差异。通过模拟和临床实验的偏倚和标准差研究,我们证明了该方法优于基于总变异(TV)和非局部均值(NLM)惩罚的传统方法。因此,我们确认了所提出的方法在数量和质量上均改善了重建结果。

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