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Noise-Aware Standard-Dose PET Reconstruction Using General and Adaptive Robust Loss

机译:使用一般和自适应鲁棒损失的噪声感知标准剂量宠物重建

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Positron Emission Tomography (PET) has been widely applied in clinics for diagnosis of cancer, cardiovascular disease, neurological disorder, and other challenging diseases. Radiotracers are injected into patients prior to PET exams, introducing inevitable radiation risks. While recent deep learning methods have shown to enable low-dose PET without compromising image quality, their performance are often limited when the amplified noise in low-dose scans becomes indistinguishable from high-intensity small abnormality. In this paper, we propose a noise-aware dual Res-UNet framework to enable low dose PET scans and achieve the image quality comparable to that from standard-dose PET scans. Specifically, noise-aware dual Res-UNets are designed to identify the location of high intensity noise in the low dose PET images first, followed by an image reconstruction network incorporating the estimated noise attention map to reconstruct the high quality standard-dose PET image. In order to better reduce the Poisson distribution noise, a general and adaptive robust loss is applied. Experimental results show that our method can outperform other state-of-the-art methods quantitatively and qualitatively and can be applied on real clinical application.
机译:正电子排放断层扫描(PET)已广泛应用于诊断癌症,心血管疾病,神经疾病等攻击性疾病。在宠物考试之前注入患者的放射性反射液,引入不可避免的辐射风险。虽然最近的深度学习方法已经显示出在不影响图像质量的情况下使低剂量PET能够,但是当低剂量扫描中的扩增噪声与高强度小异常无法区分时,它们的性能通常被限制。在本文中,我们提出了一种噪声感知的双res-unet框架,以使低剂量PET扫描能够实现与标准剂量PET扫描相当的图像质量。具体地,噪声感知双Res-unets被设计为首先识别低剂量PET图像中的高强度噪声的位置,然后是包含估计的噪声注意图以重建高质量标准剂量PET图像的图像重建网络。为了更好地减少泊松分配噪声,应用了一般和自适应稳健的损失。实验结果表明,我们的方法可以定量和定性地优于其他最先进的方法,可以应用于真正的临床应用。

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