Center Algoritmi/LASI, University of Minho, Braga, 4710-057, Portugal; Computer Algorithms for Medicine Laboratory, Graz, Austria; Institute for AI in Medicine (IKIM), University Medicine Essen, Girardetstraße 2, Essen, 45131, Germany; Department of Oral and Maxillofacial Surgery, University Hospital RWTH Aachen, 52074 Aachen, Germany; Institute of Medical Informatics, University Hospital RWTH Aachen, 52074 Aachen, Germany.
Computer Algorithms for Medicine Laboratory, Graz, Austria; Institute for AI in Medicine (IKIM), University Medicine Essen, Girardetstraße 2, Essen, 45131, Germany; Cancer Research Center Cologne Essen (CCCE), University Medicine Essen, Hufelandstraße 55, Essen, 45147, Germany.
Med Image Anal. 2024 Apr;93:103100. doi: 10.1016/j.media.2024.103100. Epub 2024 Feb 2.
With the massive proliferation of data-driven algorithms, such as deep learning-based approaches, the availability of high-quality data is of great interest. Volumetric data is very important in medicine, as it ranges from disease diagnoses to therapy monitoring. When the dataset is sufficient, models can be trained to help doctors with these tasks. Unfortunately, there are scenarios where large amounts of data is unavailable. For example, rare diseases and privacy issues can lead to restricted data availability. In non-medical fields, the high cost of obtaining enough high-quality data can also be a concern. A solution to these problems can be the generation of realistic synthetic data using Generative Adversarial Networks (GANs). The existence of these mechanisms is a good asset, especially in healthcare, as the data must be of good quality, realistic, and without privacy issues. Therefore, most of the publications on volumetric GANs are within the medical domain. In this review, we provide a summary of works that generate realistic volumetric synthetic data using GANs. We therefore outline GAN-based methods in these areas with common architectures, loss functions and evaluation metrics, including their advantages and disadvantages. We present a novel taxonomy, evaluations, challenges, and research opportunities to provide a holistic overview of the current state of volumetric GANs.
随着基于深度学习等数据驱动算法的大量涌现,高质量数据的可用性引起了广泛关注。在医学领域,容积数据非常重要,它可以用于疾病诊断到治疗监测等各种用途。当数据集足够丰富时,就可以训练模型来帮助医生完成这些任务。但遗憾的是,有些情况下无法获取大量数据。例如,罕见疾病和隐私问题可能会导致数据可用性受限。在非医疗领域,获取足够高质量数据的高成本也可能令人担忧。生成逼真的合成数据的解决方案之一是使用生成式对抗网络 (GAN)。这些机制的存在是一个很好的优势,特别是在医疗保健领域,因为数据必须具有高质量、逼真且不存在隐私问题。因此,大多数关于容积 GAN 的出版物都属于医学领域。在本次综述中,我们总结了使用 GAN 生成逼真容积合成数据的相关工作。为此,我们概述了这些领域中基于 GAN 的方法,包括常见的架构、损失函数和评估指标,以及它们的优缺点。我们提出了一种新的分类法、评估方法、挑战和研究机会,以全面概述容积 GAN 的现状。