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A novel convolutional neural network for predicting full dose from low dose PET scans

机译:一种新颖的卷积神经网络,可从低剂量PET扫描预测全剂量

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The use of radiolabeled tracers in PET imaging raises concerns owing to potential risks from radiation exposure. Therefore, to reduce this potential risk in diagnostic PET imaging, efforts have been made to decrease the amount of radiotracer administered to the patient. However, decreasing the injected activity reduces the signal-to-noise Ratio (SNR) and deteriorates image quality, thus adversely impacting clinical diagnosis. Previously proposed techniques are complicated and slow, yet they yield satisfactory results at significantly low dose. In this work, we propose a deep learning algorithm to reconstruct full-dose (FD) from low-dose (LD) PET images using a fully convolutional encoder-decoder deep neural network model. The goal is to train a model to learn to reconstruct from images with only 5% of the counts to produce images corresponding to 100% of the dose. Brain PET/CT images of 140 patients acquired on the Siemens Biograph mCT with a standard injected activity of 18F-FDG (205 ± 10 MBq). Images were acquired for about 20 min. The sinograms of each scan were used to produce a low-dose sinogram by randomly selecting only 1/20th of the counts. To avoid over fitting, data augmentation was used. A modified 3D U-Net, was developed to predict standard-dose sinogram (PSS) from their corresponding LD sinogram. Detailed quantitative and qualitative comparison demonstrated the proposed method can generate artefact-free diagnostic quality images that preserve internal structures without noise amplification. The structural similarity index (SSIM) and peak signal to noise ratio (PSNR) were used as quantitative metrics for assessment. For instance, the PSNR and SSIM in selected slices were 37.30±0.71 and 0.97±0.02, respectively. The proposed algorithm operates in the projection space and is capable of producing diagnostic quality images with only 5% of the standard injected activity.
机译:由于辐射暴露的潜在风险,在PET成像中使用放射性标记示踪剂提出了担忧。因此,为了减少诊断宠物成像的这种潜在风险,已经努力降低给予患者的放射性机构的量。然而,降低注射的活性降低了信噪比(SNR)并降低了图像质量,因此对临床诊断产生了不利影响。以前提出的技术是复杂和缓慢的,但它们会产生令人满意的结果在显着低剂量。在这项工作中,我们提出了一种深入的学习算法,可以使用完全卷积的编码器解码器深神经网络模型从低剂量(LD)PET图像重建全剂量(FD)。目标是训练模型,学习从只有5%的图像重建图像,以产生对应于100%的剂量的图像。在西门子传记MCT上获得的140名患者的脑PET / CT图像,标准注射活动 18 F-FDG(205±10 MBQ)。获得约20分钟的图像。每次扫描的中央图都用于通过随机选择仅1/20来产生低剂量的叠层。 th 计数。为避免拟合,使用数据增强。开发了一种改进的3D U-Net,以预测来自它们对应的LD SINOGRAM的标准剂量铭记图(PSS)。具体的定量和定性比较证明了所提出的方法可以产生无噪声放大的内部结构的无噪声结构的无噪声诊断质量图像的方法。结构相似性指数(SSIM)和峰值信噪比(PSNR)被用作评估的定量度量。例如,所选切片中的PSNR和SSIM分别为37.30±0.71和0.97±0.02。所提出的算法在投影空间中运行,能够产生仅具有5%标准注入的活动的诊断质量图像。

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