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Contrast Media Reduction in Computed Tomography With Deep Learning Using a Generative Adversarial Network in an Experimental Animal Study.

Authors :
Haubold J
Jost G
Theysohn JM
Ludwig JM
Li Y
Kleesiek J
Schaarschmidt BM
Forsting M
Nensa F
Pietsch H
Hosch R
Source :
Investigative radiology [Invest Radiol] 2022 Oct 01; Vol. 57 (10), pp. 696-703. Date of Electronic Publication: 2022 Apr 06.
Publication Year :
2022

Abstract

Objective: This feasibility study aimed to use optimized virtual contrast enhancement through generative adversarial networks (GAN) to reduce the dose of iodine-based contrast medium (CM) during abdominal computed tomography (CT) in a large animal model.<br />Methods: Multiphasic abdominal low-kilovolt CTs (90 kV) with low (low CM, 105 mgl/kg) and normal contrast media doses (normal CM, 350 mgl/kg) were performed with 20 healthy Göttingen minipigs on 3 separate occasions for a total of 120 examinations. These included an early arterial, late arterial, portal venous, and venous contrast phase. One animal had to be excluded because of incomplete examinations. Three of the 19 animals were randomly selected and withheld for validation (18 studies). Subsequently, the GAN was trained for image-to-image conversion from low CM to normal CM (virtual CM) with the remaining 16 animals (96 examinations). For validation, region of interest measurements were performed in the abdominal aorta, inferior vena cava, portal vein, liver parenchyma, and autochthonous back muscles, and the contrast-to-noise ratio (CNR) was calculated. In addition, the normal CM and virtual CM data were presented in a visual Turing test to 3 radiology consultants. On the one hand, they had to decide which images were derived from the normal CM examination. On the other hand, they had to evaluate whether both images are pathological consistent.<br />Results: Average vascular CNR (low CM 6.9 ± 7.0 vs virtual CM 28.7 ± 23.8, P < 0.0001) and parenchymal (low CM 1.5 ± 0.7 vs virtual CM 3.8 ± 2.0, P < 0.0001) CNR increased significantly by GAN-based contrast enhancement in all contrast phases and was not significantly different from normal CM examinations (vascular: virtual CM 28.7 ± 23.8 vs normal CM 34.2 ± 28.8; parenchymal: virtual CM 3.8 ± 2.0 vs normal CM 3.7 ± 2.6). During the visual Turing testing, the radiology consultants reported that images from normal CM and virtual CM were pathologically consistent in median in 96.5% of the examinations. Furthermore, it was possible for the examiners to identify the normal CM data as such in median in 91% of the cases.<br />Conclusions: In this feasibility study, it could be demonstrated in an experimental setting with healthy Göttingen minipigs that the amount of CM for abdominal CT can be reduced by approximately 70% by GAN-based contrast enhancement with satisfactory image quality.<br />Competing Interests: Conflicts of interest and sources of funding: The study was performed in cooperation with Bayer AG. H.P and G.J. are employees of Bayer AG. J.H. has received financial support from the Clinician Scientist Program of the Clinician Scientist Academy (UMEA) of the University Hospital Essen, funded by the German Research Foundation (DFG, FU 356/12-1). The DFG had no influence on the study design, data collection, data interpretation, data analysis, or report writing. The corresponding authors had full access to all data in the study and had ultimate responsibility for the decision to submit the study for publication. The remaining authors declare no other conflict of interest.<br /> (Copyright © 2022 Wolters Kluwer Health, Inc. All rights reserved.)

Details

Language :
English
ISSN :
1536-0210
Volume :
57
Issue :
10
Database :
MEDLINE
Journal :
Investigative radiology
Publication Type :
Academic Journal
Accession number :
35438659
Full Text :
https://doi.org/10.1097/RLI.0000000000000875