Department of Radiology, Charité - Universitätsmedizin Berlin, Berlin, Germany.
Phys Med Biol. 2020 Jul 6;65(13):135003. doi: 10.1088/1361-6560/ab990e.
In this paper we present a generalized Deep Learning-based approach for solving ill-posed large-scale inverse problems occuring in medical image reconstruction. Recently, Deep Learning methods using iterative neural networks (NNs) and cascaded NNs have been reported to achieve state-of-the-art results with respect to various quantitative quality measures as PSNR, NRMSE and SSIM across different imaging modalities. However, the fact that these approaches employ the application of the forward and adjoint operators repeatedly in the network architecture requires the network to process the whole images or volumes at once, which for some applications is computationally infeasible. In this work, we follow a different reconstruction strategy by strictly separating the application of the NN, the regularization of the solution and the consistency with the measured data. The regularization is given in the form of an image prior obtained by the output of a previously trained NN which is used in a Tikhonov regularization framework. By doing so, more complex and sophisticated network architectures can be used for the removal of the artefacts or noise than it is usually the case in iterative NNs. Due to the large scale of the considered problems and the resulting computational complexity of the employed networks, the priors are obtained by processing the images or volumes as patches or slices. We evaluated the method for the cases of 3D cone-beam low dose CT and undersampled 2D radial cine MRI and compared it to a total variation-minimization-based reconstruction algorithm as well as to a method with regularization based on learned overcomplete dictionaries. The proposed method outperformed all the reported methods with respect to all chosen quantitative measures and further accelerates the regularization step in the reconstruction by several orders of magnitude.
在本文中,我们提出了一种基于广义深度学习的方法,用于解决医学图像重建中出现的病态大规模反问题。最近,使用迭代神经网络(NN)和级联神经网络的深度学习方法已经被报道在各种定量质量指标(如 PSNR、NRMSE 和 SSIM)方面实现了最先进的结果,适用于不同的成像模式。然而,这些方法在网络架构中反复应用正向和伴随算子的事实要求网络一次处理整个图像或体积,对于某些应用来说,这在计算上是不可行的。在这项工作中,我们遵循一种不同的重建策略,严格将 NN 的应用、解的正则化和与测量数据的一致性分开。正则化采用由之前训练过的 NN 的输出获得的图像先验的形式,用于 Tikhonov 正则化框架。通过这样做,可以使用更复杂和复杂的网络架构来去除伪影或噪声,这比迭代神经网络通常情况下更为复杂。由于所考虑的问题规模较大,以及所采用的网络的计算复杂性,先验是通过处理图像或体积作为补丁或切片来获得的。我们评估了该方法在 3D 锥形束低剂量 CT 和欠采样 2D 径向电影 MRI 的情况下,并将其与基于全变差最小化的重建算法以及基于学习过完备字典的正则化方法进行了比较。与报告的所有方法相比,所提出的方法在所有选择的定量指标方面都表现出色,并进一步将正则化步骤在重建中加速了几个数量级。