Signal and Image Processing Lab., Faculty of Electrical and Computer Engineering, Shiraz University, Shiraz, Iran.
J Xray Sci Technol. 2017;25(5):737-749. doi: 10.3233/XST-16224.
Objective of this study is to present and test a new method for metal artifact reduction (MAR) by segmenting raw CT data (sinogram). The artifact suppression technique incorporates two steps namely, metal projection segmentation in the sinogram and replacement of segmented regions by new values using an interpolation method. The proposed segmentation algorithm uses the sinogram instead of reconstructed CT slices. First, one of the best and newest region-based geometric active contour models is used to detect projection data affected by metal objects (missing projections). Then, the Hough-transform method is applied to detect all sinusoidal-like curves belonging to metal objects. Finally, a post image processing technique is used aiming to increase accuracy of the segmentation process. To provide a proof of performance, CT data of two patients with metallic teeth filling and pelvis prosthesis were included in the study as well as CT data of a phantom with metallic teeth inserts. Accuracy was determined by comparing mean, variance, mean squared error (MSE) and, peak signal to noise ratio (PSNR) as evaluation measurements of distortion in phantom images with respect to metallic teeth (original and suppressed) and without metallic teeth inserts. Quantitative results showed an average improvement of 12 dB in terms of PSNR and 517 in terms of MSE when the new MAR method was applied to remove metal artifacts. Qualitative improvement was also assessed by comparing uncorrected clinical images with artifact suppressed images. Moreover, qualitative comparison of the results of the proposed new method with the existing methods of MAR showed the superiority of the new method tested in this study.
本研究的目的是提出并测试一种新的金属伪影减少(MAR)方法,通过对原始 CT 数据(正弦图)进行分段。该伪影抑制技术包括两个步骤,即在正弦图中进行金属投影分段,并使用插值方法用新值替换分段区域。所提出的分割算法使用正弦图而不是重建的 CT 切片。首先,使用一种基于区域的最新几何主动轮廓模型之一来检测受金属物体影响的投影数据(缺失的投影)。然后,应用 Hough 变换方法来检测属于金属物体的所有类正弦曲线。最后,使用后图像处理技术旨在提高分割过程的准确性。为了提供性能证明,研究中包括了两名带有金属牙齿填充和骨盆假体的患者的 CT 数据,以及带有金属牙齿插入物的幻影 CT 数据。准确性通过比较均值、方差、均方误差(MSE)和峰值信噪比(PSNR)来确定,这些评估测量值用于评估金属牙齿(原始和抑制)和无金属牙齿插入物的幻影图像中的失真。定量结果显示,当应用新的 MAR 方法去除金属伪影时,PSNR 平均提高了 12dB,MSE 提高了 517。通过比较未校正的临床图像和抑制伪影的图像,还评估了定性改善。此外,将所提出的新方法与现有的 MAR 方法的结果进行定性比较,显示了本研究中测试的新方法的优越性。