Toward deep learning replacement of gadolinium in neuro-oncology: A review of contrast-enhanced synthetic MRI

  • Moya-Sáez E
  • de Luis-García R
  • Alberola-López C
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Abstract

Gadolinium-based contrast agents (GBCAs) have become a crucial part of MRI acquisitions in neuro-oncology for the detection, characterization and monitoring of brain tumors. However, contrast-enhanced (CE) acquisitions not only raise safety concerns, but also lead to patient discomfort, the need of more skilled manpower and cost increase. Recently, several proposed deep learning works intend to reduce, or even eliminate, the need of GBCAs. This study reviews the published works related to the synthesis of CE images from low-dose and/or their native —non CE— counterparts. The data, type of neural network, and number of input modalities for each method are summarized as well as the evaluation methods. Based on this analysis, we discuss the main issues that these methods need to overcome in order to become suitable for their clinical usage. We also hypothesize some future trends that research on this topic may follow.

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Moya-Sáez, E., de Luis-García, R., & Alberola-López, C. (2023). Toward deep learning replacement of gadolinium in neuro-oncology: A review of contrast-enhanced synthetic MRI. Frontiers in Neuroimaging, 2. https://doi.org/10.3389/fnimg.2023.1055463

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