Zhu Manman, Zhu Qisen, Song Yuyan, Guo Yi, Zeng Dong, Bian Zhaoying, Wang Yongbo, Ma Jianhua
School of Biomedical Engineering, Southern Medical University, Guangzhou 510515, People's Republic of China.
Pazhou Lab (Huangpu), Guangzhou 510700, People's Republic of China.
Phys Med Biol. 2023 Mar 13;68(6). doi: 10.1088/1361-6560/acbddf.
Metal artifacts in the computed tomography (CT) imaging are unavoidably adverse to the clinical diagnosis and treatment outcomes. Most metal artifact reduction (MAR) methods easily result in the over-smoothing problem and loss of structure details near the metal implants, especially for these metal implants with irregular elongated shapes. To address this problem, we present the physics-informed sinogram completion (PISC) method for MAR in CT imaging, to reduce metal artifacts and recover more structural textures.Specifically, the original uncorrected sinogram is firstly completed by the normalized linear interpolation algorithm to reduce metal artifacts. Simultaneously, the uncorrected sinogram is also corrected based on the beam-hardening correction physical model, to recover the latent structure information in metal trajectory region by leveraging the attenuation characteristics of different materials. Both corrected sinograms are fused with the pixel-wise adaptive weights, which are manually designed according to the shape and material information of metal implants. To furtherly reduce artifacts and improve the CT image quality, a post-processing frequency split algorithm is adopted to yield the final corrected CT image after reconstructing the fused sinogram.We qualitatively and quantitatively evaluated the presented PISC method on two simulated datasets and three real datasets. All results demonstrate that the presented PISC method can effectively correct the metal implants with various shapes and materials, in terms of artifact suppression and structure preservation.We proposed a sinogram-domain MAR method to compensate for the over-smoothing problem existing in most MAR methods by taking advantage of the physical prior knowledge, which has the potential to improve the performance of the deep learning based MAR approaches.
计算机断层扫描(CT)成像中的金属伪影不可避免地会对临床诊断和治疗结果产生不利影响。大多数金属伪影减少(MAR)方法很容易导致过度平滑问题以及金属植入物附近结构细节的丢失,特别是对于那些形状不规则且细长的金属植入物。为了解决这个问题,我们提出了用于CT成像中MAR的物理信息正弦图完成(PISC)方法,以减少金属伪影并恢复更多结构纹理。具体而言,首先通过归一化线性插值算法完成原始未校正的正弦图,以减少金属伪影。同时,还基于束硬化校正物理模型对未校正的正弦图进行校正,以利用不同材料的衰减特性恢复金属轨迹区域中的潜在结构信息。两种校正后的正弦图都与逐像素自适应权重融合,这些权重是根据金属植入物的形状和材料信息手动设计的。为了进一步减少伪影并提高CT图像质量,在重建融合后的正弦图后,采用后处理频率分割算法生成最终校正后的CT图像。我们在两个模拟数据集和三个真实数据集上对所提出的PISC方法进行了定性和定量评估。所有结果表明,所提出的PISC方法在伪影抑制和结构保留方面能够有效地校正各种形状和材料的金属植入物。我们提出了一种正弦图域MAR方法,通过利用物理先验知识来补偿大多数MAR方法中存在的过度平滑问题,这有可能提高基于深度学习的MAR方法的性能。