Niu Chuang, Cong Wenxiang, Fan Feng-Lei, Shan Hongming, Li Mengzhou, Liang Jimin, Wang Ge
Department of Biomedical Engineering, Rensselaer Polytechnic Institute, Troy, NY 12180 USA.
Department of Biomedical Engineering, Rensselaer Polytechnic Institute, and now is with the Institute of Science and Technology for Brain-inspired Intelligence and MOE Frontiers Center for Brain Science, Fudan University, Shanghai 200433, China, and also with the Shanghai Center for Brain Science and Brain-Inspired Technology, Shanghai 201210, China.
IEEE Trans Radiat Plasma Med Sci. 2022 Jul;6(6):656-666. doi: 10.1109/trpms.2021.3122071. Epub 2021 Oct 21.
Deep neural network based methods have achieved promising results for CT metal artifact reduction (MAR), most of which use many synthesized paired images for supervised learning. As synthesized metal artifacts in CT images may not accurately reflect the clinical counterparts, an artifact disentanglement network (ADN) was proposed with unpaired clinical images directly, producing promising results on clinical datasets. However, as the discriminator can only judge if large regions semantically look artifact-free or artifact-affected, it is difficult for ADN to recover small structural details of artifact-affected CT images based on adversarial losses only without sufficient constraints. To overcome the illposedness of this problem, here we propose a low-dimensional manifold (LDM) constrained disentanglement network (DN), leveraging the image characteristics that the patch manifold of CT images is generally low-dimensional. Specifically, we design an LDM-DN learning algorithm to empower the disentanglement network through optimizing the synergistic loss functions used in ADN while constraining the recovered images to be on a low-dimensional patch manifold. Moreover, learning from both paired and unpaired data, an efficient hybrid optimization scheme is proposed to further improve the MAR performance on clinical datasets. Extensive experiments demonstrate that the proposed LDM-DN approach can consistently improve the MAR performance in paired and/or unpaired learning settings, outperforming competing methods on synthesized and clinical datasets.
基于深度神经网络的方法在CT金属伪影减少(MAR)方面取得了有前景的成果,其中大多数方法使用许多合成的配对图像进行监督学习。由于CT图像中的合成金属伪影可能无法准确反映临床中的对应情况,因此直接针对未配对的临床图像提出了一种伪影解缠网络(ADN),在临床数据集上产生了有前景的结果。然而,由于鉴别器只能判断大区域在语义上是否看起来无伪影或受伪影影响,仅基于对抗损失而没有足够约束的情况下,ADN很难恢复受伪影影响的CT图像的小结构细节。为了克服这个问题的不适定性,在此我们提出一种低维流形(LDM)约束解缠网络(DN),利用CT图像的补丁流形通常是低维的图像特征。具体而言,我们设计了一种LDM-DN学习算法,通过优化ADN中使用的协同损失函数来增强解缠网络,同时将恢复的图像约束在低维补丁流形上。此外,从配对和未配对数据中学习,提出了一种有效的混合优化方案,以进一步提高临床数据集上的MAR性能。大量实验表明,所提出 的LDM-DN方法在配对和/或未配对学习设置中可以持续提高MAR性能,在合成数据集和临床数据集上均优于竞争方法。