Image synthesis via Generative Adversarial Networks (GANs) of three-dimensional (3D) medical images has great potential that can be extended to many medical applications, such as, image enhancement and disease progression modeling. However, current GAN technologies for 3D medical image synthesis need to be significantly improved to be readily adapted to real-world medical problems. In this paper, we extend the state-of-the-art StyleGAN2 model, which natively works with two-dimensional images, to enable 3D image synthesis. In addition to the image synthesis, we investigate the controllability and interpretability of the 3D-StyleGAN via style vectors inherited form the original StyleGAN2 that are highly suitable for medical applications: (i) the latent space projection and reconstruction of unseen real images, and (ii) style mixing. We demonstrate the 3D-StyleGAN's performance and feasibility with ~12,000 three-dimensional full brain MR T1 images, although it can be applied to any 3D volumetric images. Furthermore, we explore different configurations of hyperparameters to investigate potential improvement of the image synthesis with larger networks. The codes and pre-trained networks are available online: https://github.com/sh4174/3DStyleGAN.
翻译:通过三维(D)医学图象的General Adversarial Networks(GANs)生成的三维(GANs)图像合成具有巨大的潜力,可以推广到许多医疗应用,如图像增强和疾病递增模型等。然而,目前用于三维医学图象合成的GAN技术需要大幅改进,以便随时适应现实世界的医疗问题。在本文中,我们推广了最先进的StyleGAN2模型,该模型本地与两维图像合作,使3D图像合成成为3D图像合成。除了图像合成外,我们还调查3D-STyleGAN的可控性和可解释性,通过风格矢量器所继承的原StyleGAN2 形式,形成最适合医疗应用的原StyleGAN2 : (i) 潜伏空间投影和对无形真实图像的重建,以及 (ii) 风格混合。我们展示了3D-StyleGAN的3维全脑MRT1图像的性及可行性和可行性,尽管它可以应用于任何3DV的图象学图像。此外,我们探索了超参数的配置。我们探索了各种超参数,以研究系统/GAN3DSDSDSDR3DSDR3G/3网络来研究。