Department of Radiology, Mayo Clinic, Rochester, Minnesota, USA.
Med Phys. 2023 Feb;50(2):821-830. doi: 10.1002/mp.16093. Epub 2022 Nov 26.
Deep artificial neural networks such as convolutional neural networks (CNNs) have been shown to be effective models for reducing noise in CT images while preserving anatomic details. A practical bottleneck for developing CNN-based denoising models is the procurement of training data consisting of paired examples of high-noise and low-noise CT images. Obtaining these paired data are not practical in a clinical setting where the raw projection data is not available. This work outlines a technique to optimize CNN denoising models using methods that are available in a routine clinical setting.
To demonstrate a phantom-based training framework for CNN noise reduction that can be efficiently implemented on any CT scanner.
The phantom-based training framework uses supervised learning in which training data are synthesized using an image-based noise insertion technique. Ten patient image series were used for training and validation (9:1) and noise-only images obtained from anthropomorphic phantom scans. Phantom noise-only images were superimposed on patient images to imitate low-dose CT images for use in training. A modified U-Net architecture was used with mean-squared-error and feature reconstruction loss. The training framework was tested for clinically indicated whole-body-low-dose CT images, as well as routine abdomen-pelvis exams for which projection data was unavailable. Performance was assessed based on root-mean-square error, structural similarity, line profiles, and visual assessment.
When the CNN was tested on five reserved quarter-dose whole-body-low-dose CT images, noise was reduced by 75%, root-mean-square-error reduced by 34%, and structural similarity increased by 60%. Visual analysis and line profiles indicated that the method significantly reduced noise while maintaining spatial resolution of anatomic features.
The proposed phantom-based training framework demonstrated strong noise reduction while preserving spatial detail. Because this method is based within the image domain, it can be easily implemented without access to projection data.
卷积神经网络(CNN)等深度人工神经网络已被证明是减少 CT 图像噪声同时保留解剖细节的有效模型。开发基于 CNN 的去噪模型的一个实际瓶颈是获取包含高噪声和低噪声 CT 图像配对示例的训练数据。在无法获得原始投影数据的临床环境中,获取这些配对数据是不切实际的。这项工作概述了一种使用在常规临床环境中可用的方法来优化基于 CNN 的去噪模型的技术。
展示一种基于体模的 CNN 降噪训练框架,该框架可以在任何 CT 扫描仪上高效实现。
基于体模的训练框架使用监督学习,其中使用基于图像的噪声插入技术合成训练数据。使用 10 个患者图像系列进行训练和验证(9:1),并从人体模型扫描中获得仅噪声图像。将人体模型仅噪声图像叠加到患者图像上,以模拟低剂量 CT 图像用于训练。使用均方误差和特征重建损失的修改后的 U-Net 架构。该训练框架针对临床指示的全身低剂量 CT 图像以及无法获得投影数据的常规腹部-骨盆检查进行了测试。性能评估基于均方根误差、结构相似性、线轮廓和视觉评估。
当将 CNN 应用于五个保留的四分之一剂量全身低剂量 CT 图像时,噪声降低了 75%,均方根误差降低了 34%,结构相似性增加了 60%。视觉分析和线轮廓表明,该方法在保持解剖特征空间分辨率的同时显著降低了噪声。
所提出的基于体模的训练框架在保留空间细节的同时表现出强大的降噪能力。由于该方法基于图像域,因此无需访问投影数据即可轻松实现。