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

Elisa Moya-Sáez, Rodrigo de Luis-García, Carlos Alberola-López
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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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神经肿瘤学中钆的深度学习替代:对比增强合成MRI的综述。
钆基对比剂(gbca)已成为神经肿瘤学MRI采集的重要组成部分,用于检测、表征和监测脑肿瘤。然而,对比增强(CE)采集不仅会引起安全问题,而且会导致患者不适,需要更多熟练的人力和成本增加。最近,一些提出的深度学习工作打算减少甚至消除对gbca的需求。本研究回顾了已发表的有关低剂量和/或其天然非CE对应物合成CE图像的研究成果。总结了每种方法的数据、神经网络类型、输入模态数量以及评估方法。在此基础上,我们讨论了这些方法需要克服的主要问题,以使其适合临床使用。我们还假设了关于这一主题的研究可能遵循的一些未来趋势。
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