Laino Maria Elena, Cancian Pierandrea, Politi Letterio Salvatore, Della Porta Matteo Giovanni, Saba Luca, Savevski Victor
Artificial Intelligence Center, Humanitas Clinical and Research Center-IRCCS, Via Manzoni 56, 20089 Rozzano, Italy.
Department of Radiology, Humanitas Clinical and Research Center-IRCCS, Via Manzoni 56, 20089 Rozzano, Italy.
J Imaging. 2022 Mar 23;8(4):83. doi: 10.3390/jimaging8040083.
Artificial intelligence (AI) is expected to have a major effect on radiology as it demonstrated remarkable progress in many clinical tasks, mostly regarding the detection, segmentation, classification, monitoring, and prediction of diseases. Generative Adversarial Networks have been proposed as one of the most exciting applications of deep learning in radiology. GANs are a new approach to deep learning that leverages adversarial learning to tackle a wide array of computer vision challenges. Brain radiology was one of the first fields where GANs found their application. In neuroradiology, indeed, GANs open unexplored scenarios, allowing new processes such as image-to-image and cross-modality synthesis, image reconstruction, image segmentation, image synthesis, data augmentation, disease progression models, and brain decoding. In this narrative review, we will provide an introduction to GANs in brain imaging, discussing the clinical potential of GANs, future clinical applications, as well as pitfalls that radiologists should be aware of.
人工智能(AI)有望对放射学产生重大影响,因为它在许多临床任务中都取得了显著进展,主要涉及疾病的检测、分割、分类、监测和预测。生成对抗网络(GAN)已被提出作为深度学习在放射学中最令人兴奋的应用之一。GAN是深度学习的一种新方法,它利用对抗学习来应对一系列计算机视觉挑战。脑放射学是GAN最早得到应用的领域之一。事实上,在神经放射学中,GAN开辟了未被探索的场景,允许进行诸如图像到图像和跨模态合成、图像重建、图像分割、图像合成、数据增强、疾病进展模型和脑解码等新过程。在这篇叙述性综述中,我们将介绍GAN在脑成像中的应用,讨论GAN的临床潜力、未来临床应用以及放射科医生应注意的陷阱。