Deep learning-based low-dose CT simulator for non-linear reconstruction methods Journal Article


Authors: Tunissen, S. A. M.; Moriakov, N.; Mikerov, M.; Smit, E. J.; Sechopoulos, I.; Teuwen, J.
Article Title: Deep learning-based low-dose CT simulator for non-linear reconstruction methods
Abstract: Background: Computer algorithms that simulate lower-doses computed tomography (CT) images from clinical-dose images are widely available. However, most operate in the projection domain and assume access to the reconstruction method. Access to commercial reconstruction methods may often not be available in medical research, making image-domain noise simulation methods useful. However, the introduction of non-linear reconstruction methods, such as iterative and deep learning-based reconstruction, makes noise insertion in the image domain intractable, as it is not possible to determine the noise textures analytically. Purpose: To develop a deep learning-based image-domain method to generate low-dose CT images from clinical-dose CT (CDCT) images for non-linear reconstruction methods. Methods: We propose a fully image domain-based method, utilizing a series of three convolutional neural networks (CNNs), which, respectively, denoise CDCT images, predict the standard deviation map of the low-dose image, and generate the noise power spectra (NPS) of local patches throughout the low-dose image. All three models have U-net-based architectures and are partly or fully three-dimensional. As a use case for this study and with no loss of generality, we use paired low-dose and clinical-dose brain CT scans. A dataset of (Formula presented.) paired scans was retrospectively obtained. All images were acquired with a wide-area detector clinical system and reconstructed using its standard clinical iterative algorithm. Each pair was registered using rigid registration to correct for motion between acquisitions. The data was randomly partitioned into training ((Formula presented.) samples), validation ((Formula presented.) samples), and test ((Formula presented.) samples) sets. The performance of each of these three CNNs was validated separately. For the denoising CNN, the local standard deviation decrease, and bias were determined. For the standard deviation map CNN, the real and estimated standard deviations were compared locally. Finally, for the NPS CNN, the NPS of the synthetic and real low-dose noise were compared inside and outside the skull. Two proof-of-concept denoising studies were performed to determine if the performance of a CNN- or a gradient-based denoising filter on the synthetic low-dose data versus real data differed. Results: The denoising network had a median decrease in noise in the cerebrospinal fluid by a factor of (Formula presented.) and introduced a median bias of (Formula presented.) HU. The network for standard deviation map estimation had a median error of (Formula presented.) HU. The noise power spectrum estimation network was able to capture the anisotropic and shift-variant nature of the noise structure by showing good agreement between the synthetic and real low-dose noise and their corresponding power spectra. The two proof of concept denoising studies showed only minimal difference in standard deviation improvement ratio between the synthetic and real low-dose CT images with the median difference between the two being 0.0 and +0.05 for the CNN- and gradient-based filter, respectively. Conclusion: The proposed method demonstrated good performance in generating synthetic low-dose brain CT scans without access to the projection data or to the reconstruction method. This method can generate multiple low-dose image realizations from one clinical-dose image, so it is useful for validation, optimization, and repeatability studies of image-processing algorithms. © 2024 The Author(s). Medical Physics published by Wiley Periodicals LLC on behalf of American Association of Physicists in Medicine.
Keywords: radiation dose; statistics; signal noise ratio; tomography, x-ray computed; diagnostic imaging; radiation dosage; simulation; brain; computerized tomography; medical imaging; image processing, computer-assisted; image processing; image reconstruction; low dose; nonlinear system; nonlinear dynamics; textures; reconstruction method; procedures; standard deviation; low-dose computed tomography; low-dose ct; learning systems; signal-to-noise ratio; humans; human; iterative methods; x-ray computed tomography; de-noising; image denoising; deep learning; convolutional neural network; convolutional neural networks; dose computed tomographies; image domain; median filters
Journal Title: Medical Physics
Volume: 51
Issue: 9
ISSN: 0094-2405
Publisher: American Association of Physicists in Medicine  
Date Published: 2024-09-01
Start Page: 6046
End Page: 6060
Language: English
DOI: 10.1002/mp.17232
PUBMED: 38843540
PROVIDER: scopus
DOI/URL:
Notes: Article -- Source: Scopus
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  1. Jonas Teuwen
    5 Teuwen