Lauterbur Research Center for Biomedical Imaging, Shenzhen Institutes of Advanced Technology, Chinese Academy of Sciences, Shenzhen 518055, People's Republic of China.
Chinese Academy of Sciences Key Laboratory of Health Informatics, Shenzhen 518055, People's Republic of China.
Phys Med Biol. 2021 Feb 3;66(4):045012. doi: 10.1088/1361-6560/abd4ba.
Dynamic myocardial perfusion computed tomography (DMP-CT) is an effective medical imaging technique for coronary artery disease diagnosis and therapy guidance. However, the radiation dose received by the patient during repeated CT scans is a widespread concern of radiologists because of the increased risk of cancer. The sparse few-view CT scanning protocol can be a feasible approach to reduce the radiation dose of DMP-CT imaging; however, an advanced reconstruction algorithm is needed. In this paper, a temporal feature prior-aided separated reconstruction method (TFP-SR) for low-dose DMP-CT images reconstruction from sparse few-view sinograms is proposed. To implement the proposed method, the objective perfusion image is divided into the baseline fraction and the enhancement fraction introduced by the arrival of the contrast agent. The core of the proposed TFP-SR method is the utilization of the temporal evolution information that naturally exists in the DMP-CT image sequence to aid the enhancement image reconstruction from limited data. The temporal feature vector of an image pixel is defined by the intensities of this pixel in the pre-reconstructed enhancement sequence, and the connection between two related features is calculated via a zero-mean Gaussian function. A prior matrix is constructed based on the connections between the extracted temporal features and used in the iterative reconstruction of the enhancement images. To evaluate the proposed method, the conventional filtered back-projection algorithm, the total variation regularized PWLS (PWLS-TV) and the prior image constrained compressed sensing are compared in this paper based on studies on a digital extended cardiac-torso (XCAT) thoracic phantom and a preclinical porcine DMP-CT data set that take image misregistration into account. The experimental results demonstrate that the proposed TFP-SR method has superior performance in sparse DMP-CT images reconstruction in terms of image quality and the analyses of the time attenuation curve and hemodynamic parameters.
动态心肌灌注计算机断层扫描(DMP-CT)是一种用于冠心病诊断和治疗指导的有效医学成像技术。然而,由于癌症风险增加,患者在多次 CT 扫描中接受的辐射剂量是放射科医生普遍关注的问题。稀疏的少视角 CT 扫描方案可能是降低 DMP-CT 成像辐射剂量的可行方法;然而,需要先进的重建算法。本文提出了一种基于时间特征先验的稀疏少视角正电子发射断层扫描图像重建的分离重建方法(TFP-SR)。为了实现所提出的方法,将目标灌注图像分为基线部分和造影剂到达时引入的增强部分。所提出的 TFP-SR 方法的核心是利用 DMP-CT 图像序列中自然存在的时间演化信息来辅助从有限数据中重建增强图像。图像像素的时间特征向量由该像素在预重建的增强序列中的强度定义,并且通过零均值高斯函数计算两个相关特征之间的连接。基于从提取的时间特征之间的连接构建先验矩阵,并在增强图像的迭代重建中使用该先验矩阵。为了评估所提出的方法,本文在考虑图像配准的数字扩展心脏胸体(XCAT)胸部体模和临床前猪 DMP-CT 数据集上,对传统的滤波反投影算法、全变差正则化 PWLS(PWLS-TV)和基于先验图像的压缩感知进行了比较。实验结果表明,在所提出的 TFP-SR 方法在稀疏 DMP-CT 图像重建方面具有优越的性能,在图像质量以及时间衰减曲线和血流动力学参数的分析方面都表现出色。