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SIPID: A deep learning framework for sinogram interpolation and image denoising in low-dose CT reconstruction

机译:SIPID:用于低剂量CT重建中的正弦图内插和图像去噪的深度学习框架

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Low-dose CT plays a significant role in reducing radiation risks to patients. The main challenge is to achieve better image quality while lowering the imaging dose. In this work, we propose a hybrid deep learning approach that combines sinogram interpolation with image denoising, referred to as SIPID. Through alternatively training the sinogram interpolation network and the image denoising network, the proposed SIPID network can achieve more accurate reconstructions, compared with pure image denoising. We empirically achieved a > 2dB improvement on PSNR based on the Residual U-net denoising structure. Furthermore, we highlight that our design of sinogram interpolation network can be a promising component in CT reconstruction, since it can also seamlessly fit to all kinds of image denoising networks.
机译:低剂量CT在降低患者的放射风险中起着重要作用。主要挑战是在降低成像剂量的同时获得更好的图像质量。在这项工作中,我们提出了一种混合式深度学习方法,该方法将正弦图插值与图像去噪相结合,称为SIPID。通过交替训练正弦图内插网络和图像去噪网络,与纯图像去噪相比,提出的SIPID网络可以实现更准确的重构。基于残留的U-net降噪结构,我们凭经验实现了PSNR的改进> 2dB。此外,我们强调,我们的正弦图插值网络设计可以成为CT重建中很有希望的组成部分,因为它也可以无缝地适合于各种图像去噪网络。

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