论文标题
差异的歧管重建:一种基于模型的迭代统计估计算法,具有数据驱动的先验
Manifold Reconstruction of Differences: A Model-Based Iterative Statistical Estimation Algorithm with a Data-Driven Prior
论文作者
论文摘要
使用深神经网络的流动学习被证明是构建复杂的先验图像模型的有效工具,可以应用于低剂量CT的降噪。我们提出了一种新的迭代CT重建算法,称为差异(MROD)的歧管重建,该算法将物理和统计模型与基于多种学习的数据驱动的先验结合在一起。 MROD算法涉及估计歧管成分,近似所有患者之间的共同特征,以及具有符合测量数据的自由的差异成分。通过对差异图像应用稀疏性惩罚,而不是对歧管的严格约束,MROD算法能够重建训练数据中不存在的特征。差异组件本身可能独立有用。尽管歧管捕获了典型的患者特征(例如健康解剖结构),但差异图像突出了患者特异性元素(例如病理学)。在这项工作中,我们介绍了一个优化框架的描述,该框架将基于歧管的模块与物理模块相结合。我们使用拟人化肺数据进行了一项模拟研究,表明MROD算法既可以隔离特定患者和典型分布之间的差异,又可以在复合歧管和差异重建中提供明显的降低降低噪声,而降低了显着的降低偏差。
Manifold learning using deep neural networks been shown to be an effective tool for building sophisticated prior image models that can be applied to noise reduction in low-dose CT. We propose a new iterative CT reconstruction algorithm, called Manifold Reconstruction of Differences (MRoD), which combines physical and statistical models with a data-driven prior based on manifold learning. The MRoD algorithm involves estimating a manifold component, approximating common features among all patients, and the difference component which has the freedom to fit the measured data. By applying a sparsity-promoting penalty to the difference image rather than a hard constraint to the manifold, the MRoD algorithm is able to reconstruct features which are not present in the training data. The difference component itself may be independently useful. While the manifold captures typical patient features (e.g. healthy anatomy), the difference image highlights patient-specific elements (e.g. pathology). In this work, we present a description of an optimization framework which combines trained manifold-based modules with physical modules. We present a simulation study using anthropomorphic lung data showing that the MRoD algorithm can both isolate differences between a particular patient and the typical distribution, but also provide significant noise reduction with less bias than a typical penalized likelihood estimator in composite manifold plus difference reconstructions.