Neural networks-based regularization for large-scale medical image reconstruction

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 resul...

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Veröffentlicht in:Physics in medicine & biology 2020-07, Vol.65 (13), p.135003-135003, Article 135003
Hauptverfasser: Kofler, A, Haltmeier, M, Schaeffter, T, Kachelrieß, M, Dewey, M, Wald, C, Kolbitsch, C
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container_end_page 135003
container_issue 13
container_start_page 135003
container_title Physics in medicine & biology
container_volume 65
creator Kofler, A
Haltmeier, M
Schaeffter, T
Kachelrieß, M
Dewey, M
Wald, C
Kolbitsch, C
description 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.
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subjects deep learning
Engineering
Engineering, Biomedical
inverse problems
Life Sciences & Biomedicine
low-dose CT
neural networks
radial cine MRI
Radiology, Nuclear Medicine & Medical Imaging
Science & Technology
Technology
title Neural networks-based regularization for large-scale medical image reconstruction
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