Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:2682-2687. doi: 10.1109/EMBC46164.2021.9629600.
X-ray Computed Tomography (CT) is an imaging modality where patients are exposed to potentially harmful ionizing radiation. To limit patient risk, reduced-dose protocols are desirable, which inherently lead to an increased noise level in the reconstructed CT scans. Consequently, noise reduction algorithms are indispensable in the reconstruction processing chain. In this paper, we propose to leverage a conditional Generative Adversarial Networks (cGAN) model, to translate CT images from low-to-routine dose. However, when aiming to produce realistic images, such generative models may alter critical image content. Therefore, we propose to employ a frequency-based separation of the input prior to applying the cGAN model, in order to limit the cGAN to high-frequency bands, while leaving low-frequency bands untouched. The results of the proposed method are compared to a state-of-the-art model within the cGAN model as well as in a single-network setting. The proposed method generates visually superior results compared to the single-network model and the cGAN model in terms of quality of texture and preservation of fine structural details. It also appeared that the PSNR, SSIM and TV metrics are less important than a careful visual evaluation of the results. The obtained results demonstrate the relevance of defining and separating the input image into desired and undesired content, rather than blindly denoising entire images. This study shows promising results for further investigation of generative models towards finding a reliable deep learning-based noise reduction algorithm for low-dose CT acquisition.
X 射线计算机断层扫描(CT)是一种成像方式,患者会受到潜在有害的电离辐射。为了降低患者的风险,需要采用低剂量方案,这会导致重建的 CT 扫描中的噪声水平增加。因此,在重建处理链中,噪声降低算法是必不可少的。在本文中,我们提出利用条件生成对抗网络(cGAN)模型,将 CT 图像从低剂量转换为常规剂量。然而,当试图生成逼真的图像时,这种生成模型可能会改变关键的图像内容。因此,我们建议在应用 cGAN 模型之前,通过基于频率的方法对输入进行分离,以便将 cGAN 限制在高频带,而低频带则不受影响。所提出方法的结果与 cGAN 模型中的一种最先进模型以及单个网络设置进行了比较。与单个网络模型和 cGAN 模型相比,所提出的方法在纹理质量和精细结构细节的保留方面生成了更优的视觉效果。此外,PSNR、SSIM 和 TV 指标似乎不如仔细评估结果重要。所得结果表明,将输入图像定义和分离为所需和不需要的内容是有意义的,而不是盲目地对整个图像进行去噪。这项研究为进一步研究生成模型以找到可靠的基于深度学习的低剂量 CT 采集降噪算法提供了有前景的结果。