IEEE Trans Med Imaging. 2018 Oct;37(10):2322-2332. doi: 10.1109/TMI.2018.2830381. Epub 2018 Apr 26.
Increasing the image quality of positron emission tomography (PET) is an essential topic in the PET community. For instance, thin-pixelated crystals have been used to provide high spatial resolution images but at the cost of sensitivity and manufacture expense. In this paper, we proposed an approach to enhance the PET image resolution and noise property for PET scanners with large pixelated crystals. To address the problem of coarse blurred sinograms with large parallax errors associated with large crystals, we developed a data-driven, single-image super-resolution (SISR) method for sinograms, based on the novel deep residual convolutional neural network (CNN). Unlike the CNN-based SISR on natural images, periodically padded sinogram data and dedicated network architecture were used to make it more efficient for PET imaging. Moreover, we included the transfer learning scheme in the approach to process cases with poor labeling and small training data set. The approach was validated via analytically simulated data (with and without noise), Monte Carlo simulated data, and pre-clinical data. Using the proposed method, we could achieve comparable image resolution and better noise property with large crystals of bin sizes of thin crystals with a bin size from to . Our approach uses external PET data as the prior knowledge for training and does not require additional information during inference. Meanwhile, the method can be added into the normal PET imaging framework seamlessly, thus potentially finds its application in designing low-cost high-performance PET systems.
提高正电子发射断层扫描(PET)的图像质量是 PET 领域的一个重要课题。例如,采用薄像素化晶体可以提供高空间分辨率的图像,但代价是灵敏度和制造成本。在本文中,我们提出了一种针对大像素化晶体 PET 扫描仪的图像分辨率和噪声特性的增强方法。为了解决与大晶体相关的大视差误差导致的粗模糊正弦图问题,我们基于新型深度残差卷积神经网络(CNN)开发了一种用于正弦图的数据驱动单图像超分辨率(SISR)方法。与基于 CNN 的自然图像 SISR 不同,我们使用周期性填充的正弦图数据和专用网络架构,使其更适用于 PET 成像。此外,我们还在该方法中引入了迁移学习方案,以处理标签较差和训练数据集较小的情况。该方法通过分析模拟数据(有噪声和无噪声)、蒙特卡罗模拟数据和临床前数据进行了验证。使用所提出的方法,我们可以在大晶体尺寸下实现与薄晶体相同的图像分辨率,并具有更好的噪声特性,大晶体的晶体尺寸为到 。我们的方法使用外部 PET 数据作为训练的先验知识,在推断过程中不需要额外的信息。同时,该方法可以无缝地添加到正常的 PET 成像框架中,因此有望在设计低成本高性能的 PET 系统中得到应用。