IEEE Trans Med Imaging. 2024 Sep;43(9):3354-3365. doi: 10.1109/TMI.2024.3395348. Epub 2024 Sep 4.
Metal artifact reduction (MAR) is important for clinical diagnosis with CT images. The existing state-of-the-art deep learning methods usually suppress metal artifacts in sinogram or image domains or both. However, their performance is limited by the inherent characteristics of the two domains, i.e., the errors introduced by local manipulations in the sinogram domain would propagate throughout the whole image during backprojection and lead to serious secondary artifacts, while it is difficult to distinguish artifacts from actual image features in the image domain. To alleviate these limitations, this study analyzes the desirable properties of wavelet transform in-depth and proposes to perform MAR in the wavelet domain. First, wavelet transform yields components that possess spatial correspondence with the image, thereby preventing the spread of local errors to avoid secondary artifacts. Second, using wavelet transform could facilitate identification of artifacts from image since metal artifacts are mainly high-frequency signals. Taking these advantages of the wavelet transform, this paper decomposes an image into multiple wavelet components and introduces multi-perspective regularizations into the proposed MAR model. To improve the transparency and validity of the model, all the modules in the proposed MAR model are designed to reflect their mathematical meanings. In addition, an adaptive wavelet module is also utilized to enhance the flexibility of the model. To optimize the model, an iterative algorithm is developed. The evaluation on both synthetic and real clinical datasets consistently confirms the superior performance of the proposed method over the competing methods.
金属伪影抑制(MAR)对于 CT 图像的临床诊断很重要。现有的最先进的深度学习方法通常在谱域或图像域或两者都抑制金属伪影。然而,它们的性能受到两个域固有特性的限制,即谱域中局部操作引入的误差会在反向投影过程中传播到整个图像,导致严重的二次伪影,而在图像域中很难区分伪影和实际的图像特征。为了缓解这些限制,本研究深入分析了小波变换的理想特性,并提出在小波域中进行 MAR。首先,小波变换产生的分量与图像具有空间对应关系,从而防止局部误差的传播,避免二次伪影。其次,利用小波变换可以方便地从图像中识别伪影,因为金属伪影主要是高频信号。利用小波变换的这些优势,本文将图像分解为多个小波分量,并在提出的 MAR 模型中引入多视角正则化。为了提高模型的透明度和有效性,所提出的 MAR 模型中的所有模块都被设计成反映它们的数学意义。此外,还利用自适应小波模块来增强模型的灵活性。为了优化模型,开发了一种迭代算法。对合成和真实临床数据集的评估一致证实,与竞争方法相比,所提出的方法具有更好的性能。