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Published in: European Radiology 8/2021

Open Access 01-08-2021 | Computed Tomography | Imaging Informatics and Artificial Intelligence

Contrast agent dose reduction in computed tomography with deep learning using a conditional generative adversarial network

Authors: Johannes Haubold, René Hosch, Lale Umutlu, Axel Wetter, Patrizia Haubold, Alexander Radbruch, Michael Forsting, Felix Nensa, Sven Koitka

Published in: European Radiology | Issue 8/2021

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Abstract

Objectives

To reduce the dose of intravenous iodine-based contrast media (ICM) in CT through virtual contrast-enhanced images using generative adversarial networks.

Methods

Dual-energy CTs in the arterial phase of 85 patients were randomly split into an 80/20 train/test collective. Four different generative adversarial networks (GANs) based on image pairs, which comprised one image with virtually reduced ICM and the original full ICM CT slice, were trained, testing two input formats (2D and 2.5D) and two reduced ICM dose levels (−50% and −80%). The amount of intravenous ICM was reduced by creating virtual non-contrast series using dual-energy and adding the corresponding percentage of the iodine map. The evaluation was based on different scores (L1 loss, SSIM, PSNR, FID), which evaluate the image quality and similarity. Additionally, a visual Turing test (VTT) with three radiologists was used to assess the similarity and pathological consistency.

Results

The −80% models reach an SSIM of > 98%, PSNR of > 48, L1 of between 7.5 and 8, and an FID of between 1.6 and 1.7. In comparison, the −50% models reach a SSIM of > 99%, PSNR of > 51, L1 of between 6.0 and 6.1, and an FID between 0.8 and 0.95. For the crucial question of pathological consistency, only the 50% ICM reduction networks achieved 100% consistency, which is required for clinical use.

Conclusions

The required amount of ICM for CT can be reduced by 50% while maintaining image quality and diagnostic accuracy using GANs. Further phantom studies and animal experiments are required to confirm these initial results.

Key Points

The amount of contrast media required for CT can be reduced by 50% using generative adversarial networks.
Not only the image quality but especially the pathological consistency must be evaluated to assess safety.
A too pronounced contrast media reduction could influence the pathological consistency in our collective at 80%.
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Metadata
Title
Contrast agent dose reduction in computed tomography with deep learning using a conditional generative adversarial network
Authors
Johannes Haubold
René Hosch
Lale Umutlu
Axel Wetter
Patrizia Haubold
Alexander Radbruch
Michael Forsting
Felix Nensa
Sven Koitka
Publication date
01-08-2021
Publisher
Springer Berlin Heidelberg
Published in
European Radiology / Issue 8/2021
Print ISSN: 0938-7994
Electronic ISSN: 1432-1084
DOI
https://doi.org/10.1007/s00330-021-07714-2

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