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Synthesize monochromatic images in spectral CT by dual-domain deep learning

机译:双域深度学习在光谱CT中综合单色图像

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Spectral computed tomography (CT) with photon counting detectors (PCDs) can collect photons by setting different energy bins. It is well acknowledged that PCD-based spectral CT has great potential for lowering radiation dose and improve material discrimination. One critical processing in spectral CT is energy spectrum modelling or spectral information decomposition. In this work, we proposed a dual-domain deep learning (DDDL) method to calibrate a spectral CT system by a neural network. Without explicit energy spectrum and detector response model, we train a neural network to implicitly define the non-linear relationship in spectral CT. Virtual monochromatic attenuation maps are synthesized directly from polychromatic projections. Simulation and real experimental results verified the feasibilities and accuracies of the proposed method.
机译:光谱计算断层扫描(CT)具有光子计数检测器(PCD)可以通过设置不同的能量箱来收集光子。确认基于PCD的光谱CT具有降低辐射剂量的巨大潜力,并改善材料辨别。光谱CT中的一个关键处理是能谱建模或光谱信息分解。在这项工作中,我们提出了一种双域深学习(DDDL)方法来通过神经网络校准光谱CT系统。没有明确的能谱和探测器响应模型,我们训练神经网络以隐含地定义光谱CT中的非线性关系。虚拟单像衰减图是直接从多色突起合成的。仿真和实际实验结果验证了所提出的方法的可行性和准确性。

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