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Inpainting?filtering for metal artifact reduction (IMIF?MAR) in computed tomography

机译:修补?在计算机断层扫描(IMIF ? 3月)

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摘要

The reduction of metal artifacts remains a challenge in computed tomography because they decrease image quality, and consequently might affect the medical diagnosis. The objective of this study is to present a novel method to correct metal artifacts based solely on the CT-slices. The proposed method consists of four steps. First, metal implants in the original CT-slice are segmented using an entropy based method, producing a metal image. Second, a prior image is acquired using three transformations: Gaussian filter, Parisotto and Schoenlieb inpainting method with the Mumford-Shah image model and L0 Gradient Minimization method (L0GM). Next, based on the projections from the original CT-slice, prior image and metal image, the sinogram is corrected in the traces affected by metal in the process called normalization and denormalization. Finally, the reconstructed image is obtained by FBP and a Nonlocal Means (NLM) filtering. The efficacy of the algorithm is evaluated by comparing five image quality metrics of the images and by inspecting regions of interest (ROI). Phantom data as well as clinical datasets are included. The proposed method is compared with three established metal artifact reduction (MAR) methods. The results from a phantom and clinical dataset show the visible reduction of artifacts. The conclusion is that IMIF-MAR method can reduce streak metal artifacts effectively and avoid new artifacts around metal implants, while preserving the anatomical structures. Considering both clinical and phantom studies, the proposed MAR algorithm improves the quality of clinical images affected by metal artifacts, and could be integrated in clinical setting.
机译:仍然是一个减少金属构件在计算机断层扫描,因为他们的挑战图像质量下降,因此可能影响医疗诊断。本研究提出一个新颖的方法正确的金属构件完全基于ct切片。步骤。CT-slice使用基于熵的分割方法,生产金属图像。图像是获得使用三个转换:高斯滤波器,Parisotto SchoenliebMumford-Shah图像修补方法模型和L0梯度最小化方法(L0GM)。接下来,基于预测从原始CT-slice,图像和金属图像之前,正弦图中修正的影响痕迹金属的过程称为规范化反规范化。是通过出口押汇和外地(NLM)过滤。通过比较五个图像质量评估指标的图像和通过检查区域利息(ROI)。数据集。相比之下,三个建立了金属工件减少(MAR)方法。幻影和临床数据显示,清晰可见减少工件。IMIF-MAR方法可以减少条纹金属构件有效地避免新工件金属植入物,同时保留解剖结构。研究,提出MAR算法提高了临床图像质量影响的金属工件,可以集成在临床设置。

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