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首页> 外文期刊>Physics in medicine and biology. >Partial-ring PET image restoration using a deep learning based method
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Partial-ring PET image restoration using a deep learning based method

机译:基于深度学习的方法局部环PET图像恢复

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PET scanners with partial-ring geometry have been proposed for various imaging purposes. The incomplete projection data obtained from this design cause undesirable artifacts in the reconstructed images. In this study, we investigated the performance of a deep learning (DL) based method for the recovery of partial-ring PET images. Twenty digital brain phantoms were used in the Monte Carlo simulation toolkit, SimSET, to simulate 15?min full-ring PET scans. Partial-ring PET data were generated from full-ring PET data by removing coincidence events that hit these specific detector blocks. A convolutional neural network based on the residual U-Net architecture was trained to predict full-ring data from partial-ring data in either the projection or image domain. The performance of the proposed DL-based method was evaluated by comparing with the PET images reconstructed using the full-ring projection data in terms of the mean squared error (MSE), structural similarity (SSIM) index and recovery coefficient (RC). The MSE results showed the superiority of the image-domain approach in reduction of 91.7% in contrast to 14.3% for the projection-domain approach. Therefore, the image-domain approach was used to study the influence of the number of detector block removal. The SSIM results were 0.998, 0.996 and 0.993 for 3, 5 and 7 detector block removals, respectively. The activity of gray and white matters could be fully recovered even with 7 detector block removal, while the RCs of two artificially inserted small lesions (3 pixels in diameter) in the testing data were 94%, 89% and 79% for 3, 5, and 7 detector block removals, respectively. Our simulation results suggest that DL has the potential to recover partial-ring PET images.
机译:已经提出了具有部分环几何的PET扫描仪进行各种成像目的。从该设计获得的不完整投影数据导致重建图像中的不期望的伪像。在这项研究中,我们研究了基于深度学习(DL)的方法来恢复部分环PET图像的性能。二十个数字脑幻影用于蒙特卡罗仿真工具包,SIMSET,以模拟15?最小的全环PET扫描。通过去除击中这些特定探测器块的巧合事件,从全环PET数据生成部分环宠物数据。培训基于残差U-Net架构的卷积神经网络,以预测投影或图像域中的部分环数据的全环数据。通过与使用全环投影数据的均方方误差(MSE),结构相似度(SSIM)索引和恢复系数(RC)在术语方面,通过与使用全环投影数据重建的PET图像进行比较来评估所提出的基于DL的方法的性能。 MSE结果显示了图像域方法的优越性在减少91.7%,与投影结构域接近的14.3%。因此,使用图像域方法来研究检测器块移除的数量的影响。 SSIM结果分别为0.998,0.996和0.993,分别为3,5和7个检测器阻止除去。灰白色和白色的活动甚至可以完全恢复,即使具有7个检测器块去除,而测试数据中的两个人为插入的小病变(直径为3像素)的RC为3,5的94%,89%和79%和7个检测器块移除。我们的仿真结果表明DL有可能恢复部分环PET图像。

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