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Anisotropic Super Resolution In Prostate Mri Using Super Resolution Generative Adversarial Networks

机译:使用超分辨率生成对抗网络的前列腺Mri各向异性超分辨率

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Acquiring High Resolution (HR) Magnetic Resonance (MR) images requires the patient to remain still for long periods of time, which causes patient discomfort and increases the probability of motion induced image artifacts. A possible solution is to acquire low resolution (LR) images and to process them with the Super Resolution Generative Adversarial Network (SRGAN) to create a super-resolved version. This work applies SRGAN to MR images of the prostate and performs three experiments. The first experiment explores improving the in-plane MR image resolution by factors of 4 and 8, and shows that, while the PSNR and SSIM (Structural SIMilarity) metrics are lower than the isotropic bicubic interpolation baseline, the SRGAN is able to create images that have high edge fidelity. The second experiment explores anisotropic super-resolution via synthetic images, in that the input images to the network are anisotropically downsampled versions of HR images. This experiment demonstrates the ability of the modified SRGAN to perform anisotropic super-resolution, with quantitative image metrics that are comparable to those of the anisotropic bicubic interpolation baseline. Finally, the third experiment applies a modified version of the SRGAN to super-resolve anisotropic images obtained from the through-plane slices of the volumetric MR data. The output super-resolved images contain a significant amount of high frequency information that make them visually close to their HR counterparts. Overall, the promising results from each experiment show that super-resolution for MR images is a successful technique and that producing isotropic MR image volumes from anisotropic slices is an achievable goal.
机译:采集高分辨率(HR)磁共振(MR)图像需要患者长时间保持静止,这会导致患者不适并增加运动引起的图像伪影的可能性。一种可能的解决方案是获取低分辨率(LR)图像,并使用超分辨率生成对抗网络(SRGAN)对其进行处理以创建超分辨率版本。这项工作将SRGAN应用于前列腺的MR图像,并执行三个实验。第一个实验探索将平面MR图像分辨率提高4到8倍,结果表明,虽然PSNR和SSIM(结构相似性)指标低于各向同性双三次插值基线,但SRGAN能够创建图像具有很高的边缘保真度。第二个实验通过合成图像探索各向异性超分辨率,因为网络的输入图像是HR图像的各向异性下采样版本。该实验证明了修改后的SRGAN具有执行各向异性超分辨率的能力,其定量图像指标可与各向异性双三次插值基线的图像指标相媲美。最后,第三个实验将SRGAN的修改版本应用于从体积MR数据的直通切片获得的超分辨各向异性图像。输出的超分辨率图像包含大量的高频信息,使它们在视觉上接近于HR对应图像。总体而言,每个实验的有希望的结果表明,MR图像的超分辨率是一种成功的技术,并且从各向异性切片产生各向同性的MR图像体积是可以实现的目标。

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