Center for AI and Data Science for Integrated Diagnostics, University of Pennsylvania, Philadelphia, USA; Center for Biomedical Image Computing and Analytics, University of Pennsylvania, Philadelphia, USA.
Center for AI and Data Science for Integrated Diagnostics, University of Pennsylvania, Philadelphia, USA; Center for Biomedical Image Computing and Analytics, University of Pennsylvania, Philadelphia, USA.
Neuroimage. 2023 Apr 1;269:119898. doi: 10.1016/j.neuroimage.2023.119898. Epub 2023 Jan 24.
Generative adversarial networks (GANs) are one powerful type of deep learning models that have been successfully utilized in numerous fields. They belong to the broader family of generative methods, which learn to generate realistic data with a probabilistic model by learning distributions from real samples. In the clinical context, GANs have shown enhanced capabilities in capturing spatially complex, nonlinear, and potentially subtle disease effects compared to traditional generative methods. This review critically appraises the existing literature on the applications of GANs in imaging studies of various neurological conditions, including Alzheimer's disease, brain tumors, brain aging, and multiple sclerosis. We provide an intuitive explanation of various GAN methods for each application and further discuss the main challenges, open questions, and promising future directions of leveraging GANs in neuroimaging. We aim to bridge the gap between advanced deep learning methods and neurology research by highlighting how GANs can be leveraged to support clinical decision making and contribute to a better understanding of the structural and functional patterns of brain diseases.
生成对抗网络 (GAN) 是一种强大的深度学习模型,已成功应用于众多领域。它们属于生成方法的更广泛类别,通过从真实样本中学习分布,学会使用概率模型生成逼真的数据。在临床环境中,与传统的生成方法相比,GAN 在捕捉空间复杂、非线性和潜在微妙的疾病效应方面表现出更强的能力。本综述批判性地评估了 GAN 在各种神经疾病成像研究中的应用的现有文献,包括阿尔茨海默病、脑肿瘤、脑老化和多发性硬化症。我们为每个应用提供了各种 GAN 方法的直观解释,并进一步讨论了在神经影像学中利用 GAN 的主要挑战、未解决的问题和有前途的未来方向。我们旨在通过强调 GAN 如何支持临床决策并有助于更好地了解大脑疾病的结构和功能模式,弥合高级深度学习方法和神经科学研究之间的差距。