利用神经网络增强贝叶斯PET图像重建

Bao Yang, L. Ying, Jing Tang
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引用次数: 3

摘要

平滑增强贝叶斯PET图像重构的性能受正则化权值的影响较大。需要在方差和空间分辨率之间做出妥协。在这项工作中,我们提出使用人工神经网络(ANN)将最大后验(MAP)算法重建的图像版本与不同的正则化权重融合在一起,以实现定量改进。使用脑网模型,我们模拟了不同计数水平的PET数据,不同的受试者有和没有病变。我们设计了一个人工神经网络,并使用具有不同正则化参数的MAP重构对一个正常受试者在特定计数水平上进行训练。利用训练后的人工神经网络将模拟的病变、其他计数水平和其他受试者的重建图像融合在一起。在所有的测试实验中,所设计的人工神经网络融合在保持噪声水平低于MAP算法在重正则化时的水平的同时,显著降低了偏差或提高了病灶对比度。我们的结论是,所提出的ANN融合方法消除了对MAP算法正则化调整的需要。
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Enhancing Bayesian PET image reconstruction using neural networks
The performance of smoothness-enforced Bayesian PET image reconstruction is strongly affected by the weight on regularization. Compromises need to be made between variance and spatial resolution. In this work, we propose to use an artificial neural network (ANN) to fuse the image versions reconstructed from a maximum a posteriori (MAP) algorithm with different regularizing weights for quantitative improvement. Using the BrainWeb phantoms, we simulated PET data at different count levels for different subjects with and without lesions. We designed an ANN and trained it using MAP reconstructions with different regularization parameters for one normal subject at a specific count level. Reconstructed images from the simulations with lesions, of other count levels, and of other subjects were fused using the trained ANN. In all of the testing experiments, the designed ANN fusion keeps the noise level as low as what the MAP algorithm achieves at heavy regularization while significantly reduces the bias or improves the lesion contrast. We conclude that the proposed ANN fusion method removes the need for tuning the regularization of the MAP algorithm.
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