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Visual enhancement of Cone‐beam CT by use of CycleGAN

机译:通过使用Crysgan的锥形梁CT的视觉增强

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摘要

Purpose Cone‐beam computed tomography (CBCT) offers advantages over conventional fan‐beam CT in that it requires a shorter time and less exposure to obtain images. However, CBCT images suffer from low soft‐tissue contrast, noise, and artifacts compared to conventional fan‐beam CT images. Therefore, it is essential to improve the image quality of CBCT. Methods In this paper, we propose a synthetic approach to translate CBCT images with deep neural networks. Our method requires only unpaired and unaligned CBCT images and planning fan‐beam CT (PlanCT) images for training. The CBCT images and PlanCT images may be obtained from other patients as long as they are acquired with the same scanner settings. Once trained, three‐dimensionally reconstructed CBCT images can be directly translated into high‐quality PlanCT‐like images. Results We demonstrate the effectiveness of our method with images obtained from 20 prostate patients, and provide a statistical and visual comparison. The image quality of the translated images shows substantial improvement in voxel values, spatial uniformity, and artifact suppression compared to those of the original CBCT. The anatomical structures of the original CBCT images were also well preserved in the translated images. Conclusions Our method produces visually PlanCT‐like images from CBCT images while preserving anatomical structures.
机译:目的锥形束计算机断层扫描(CBCT)优于传统的扇形梁CT,因为它需要较短的时间和更少的曝光以获得图像。然而,与传统的扇形光束CT图像相比,CBCT图像遭受低软组织对比度,噪声和伪像。因此,必须提高CBCT的图像质量。方法在本文中,我们提出了一种用深神经网络转换CBCT图像的合成方法。我们的方法只需要未配对和未对准的CBCT图像和规划扇形CT(Planct)图像进行培训。只要使用相同的扫描仪设置获取它们,可以从其他患者获得CBCT图像和平面图图像。一旦接受训练,三维重建的CBCT图像可以直接转换成高质量的平面图图像。结果我们展示了我们对20名前列腺患者获得的图像的方法的有效性,并提供了统计和视觉比较。与原始CBCT相比,翻译图像的图像质量显示体素值,空间均匀性,空间均匀性和伪影抑制。原始CBCT图像的解剖结构也很好地保存在翻译的图像中。结论我们的方法在保留解剖结构的同时从CBCT图像产生视觉平均图像。

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