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3D conditional generative adversarial networks for high-quality PET image estimation at low dose

机译:低剂量3D条件生成对抗性网络用于高质量PET图像估计

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摘要

Positron emission tomography (PET) is a widely used imaging modality, providing insight into both the biochemical and physiological processes of human body. Usually, a full dose radioactive tracer is required to obtain high-quality PET images for clinical needs. This inevitably raises concerns about potential health hazards. On the other hand, dose reduction may cause the increased noise in the reconstructed PET images, which impacts the image quality to a certain extent. In this paper, in order to reduce the radiation exposure while maintaining the high quality of PET images, we propose a novel method based on 3D conditional generative adversarial networks (3D c-GANs) to estimate the high-quality full-dose PET images from low-dose ones. Generative adversarial networks (GANs) include a generator network and a discriminator network which are trained simultaneously with the goal of one beating the other. Similar to GANs, in the proposed 3D c-GANs, we condition the model on an input low-dose PET image and generate a corresponding output full-dose PET image. Specifically, to render the same underlying information between the low-dose and full-dose PET images, a 3D U-net-like deep architecture which can combine hierarchical features by using skip connection is designed as the generator network to synthesize the full-dose image. In order to guarantee the synthesized PET image to be close to the real one, we take into account of the estimation error loss in addition to the discriminator feedback to train the generator network. Furthermore, a concatenated 3D c-GANs based progressive refinement scheme is also proposed to further improve the quality of estimated images. Validation was done on a real human brain dataset including both the normal subjects and the subjects diagnosed as mild cognitive impairment (MCI). Experimental results show that our proposed 3D c-GANs method outperforms the benchmark methods and achieves much better performance than the state-of-the-art methods in both qualitative and quantitative measures.
机译:正电子发射断层扫描(PET)是一种广泛使用的成像方式,可洞悉人体的生化和生理过程。通常,需要全剂量放射性示踪剂以获得临床需要的高质量PET图像。这不可避免地引起对潜在健康危害的担忧。另一方面,剂量减少可能会导致重建的PET图像中的噪声增加,从而在一定程度上影响图像质量。在本文中,为了在保持PET图像高质量的同时减少辐射照射,我们提出了一种基于3D条件生成对抗网络(3D c-GANs)的新方法,可以从中估计高质量的全剂量PET图像小剂量的。生成对抗网络(GAN)包括生成器网络和鉴别器网络,它们被同时训练,目的是击败另一个。与GAN相似,在提出的3D c-GAN中,我们以输入的低剂量PET图像为模型条件,并生成相应的输出全剂量PET图像。具体来说,为了在低剂量和全剂量PET图像之间渲染相同的基础信息,将可以通过使用跳过连接来组合分层特征的类似于3D U-net的深层架构设计为生成器网络,以合成全剂量图片。为了保证合成的PET图像接近真实图像,除了鉴别器反馈以训练生成器网络外,我们还考虑了估计误差损失。此外,还提出了基于级联3D c-GAN的渐进细化方案,以进一步提高估计图像的质量。在包括正常受试者和诊断为轻度认知障碍(MCI)的受试者的真实人脑数据集上进行了验证。实验结果表明,我们提出的3D c-GANs方法在定性和定量方面均优于最新方法,并且性能优于最新方法。

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