Shanghai United Imaging Healthcare Co., Ltd, Shanghai, China.
West China Hospital, Sichuan University, Chengdu, China.
Med Phys. 2022 Jan;49(1):411-419. doi: 10.1002/mp.15354. Epub 2021 Dec 10.
Involuntary patient movement results in data discontinuities during computed tomography (CT) scans which lead to a serious degradation in the image quality. In this paper, we specifically address artifacts induced by patient motion during a head scan.
Instead of trying to solve an inverse problem, we developed a motion simulation algorithm to synthesize images with motion-induced artifacts. The artifacts induced by rotation, translation, oscillation and any possible combination are considered. Taking advantage of the powerful learning ability of neural networks, we designed a novel 3D network structure with both a large reception field and a high image resolution to map the artifact-free images from artifact-contaminated images. Quantitative results of the proposed method were evaluated against the results of U-Net and proposed networks without dilation structure. Thirty sets of motion contaminated images from two hospitals were selected to do a clinical evaluation.
Facilitating the training dataset with artifacts induced by variable motion patterns and the neural network, the artifact can be removed with good performance. Validation dataset with simulated random motion pattern showed outperformed image correction, and quantitative results showed the proposed network had the lowest normalized root-mean-square error, highest peak signal-to-noise ratio and structure similarity, indicating our network gave the best approximation of gold standard. Clinical image processing results further confirmed the effectiveness of our method.
We proposed a novel deep learning-based algorithm to eliminate motion artifacts. The convolutional neural networks trained with synthesized image pairs achieved promising results in artifacts reduction. The corrected images increased the diagnostic confidence compared with artifacts contaminated images. We believe that the correction method can restore the ability to successfully diagnose and avoid repeated CT scans in certain clinical circumstances.
在计算机断层扫描(CT)扫描过程中,患者的不自主运动导致数据不连续,从而严重降低图像质量。在本文中,我们专门研究了头部扫描过程中患者运动引起的伪影。
我们没有尝试解决反问题,而是开发了一种运动模拟算法,以合成具有运动引起的伪影的图像。考虑了旋转、平移、振荡和任何可能的组合引起的伪影。利用神经网络强大的学习能力,我们设计了一种新颖的具有大接收场和高图像分辨率的 3D 网络结构,将无伪影图像从有伪影图像中映射出来。针对 U-Net 和没有扩张结构的提出的网络,评估了所提出的方法的定量结果。从两家医院选择了 30 组运动污染图像进行临床评估。
通过具有可变运动模式和神经网络的训练数据集,该算法可以很好地去除伪影。使用模拟随机运动模式的验证数据集显示出了更好的图像校正效果,定量结果表明,所提出的网络具有最低的归一化均方根误差、最高的峰值信噪比和结构相似性,这表明我们的网络对金标准的逼近效果最佳。临床图像处理结果进一步证实了该方法的有效性。
我们提出了一种新的基于深度学习的算法来消除运动伪影。使用合成图像对训练的卷积神经网络在减少伪影方面取得了有前景的结果。与污染伪影的图像相比,校正后的图像增加了诊断信心。我们相信,该校正方法可以恢复成功诊断的能力,并避免在某些临床情况下进行重复 CT 扫描。