Artificial Contrast: Deep Learning for Reducing Gadolinium-Based Contrast Agents in Neuroradiology

Robert Haase, Thomas Pinetz, Erich Kobler, Daniel Paech, Alexander Effland, Alexander Radbruch, Katerina Deike-Hofmann*

*Corresponding author for this work

Research output: Contribution to journalReview articlepeer-review

Abstract

Deep learning approaches are playing an ever-increasing role throughout diagnostic medicine, especially in neuroradiology, to solve a wide range of problems such as segmentation, synthesis of missing sequences, and image quality improvement. Of particular interest is their application in the reduction of gadolinium-based contrast agents, the administration of which has been under cautious reevaluation in recent years because of concerns about gadolinium deposition and its unclear long-term consequences. A growing number of studies are investigating the reduction (low-dose approach) or even complete substitution (zero-dose approach) of gadolinium-based contrast agents in diverse patient populations using a variety of deep learning methods. This work aims to highlight selected research and discusses the advantages and limitations of recent deep learning approaches, the challenges of assessing its output, and the progress toward clinical applicability distinguishing between the low-dose and zero-dose approach.
Original languageEnglish
Pages (from-to)539-547
Number of pages9
JournalInvestigative Radiology
Volume58
Issue number8
Early online date22 Feb 2023
DOIs
Publication statusPublished - 01 Aug 2023
Externally publishedYes

Fields of science

  • 102001 Artificial intelligence

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