Zhang Yuanke, Peng Jiangjun, Zeng Dong, Xie Qi, Li Sui, Bian Zhaoying, Wang Yongbo, Zhang Yong, Zhao Qian, Zhang Hao, Liang Zhengrong, Lu Hongbing, Meng Deyu, Ma Jianhua
School of Biomedical Engineering, Southern Medical University, Guangzhou 510515, China, and also with the School of Information Science and Engineering, Qufu Normal University, Rizhao 276826, China.
School of Mathematics and Statistics, Xi'an Jiaotong University, Xi'an 710049, China.
IEEE Trans Comput Imaging. 2020;6:1375-1388. doi: 10.1109/tci.2020.3023598. Epub 2020 Sep 11.
Perfusion computed tomography (PCT) is critical in detecting cerebral ischemic lesions. PCT examination with low-dose scans can effectively reduce radiation exposure to patients at the cost of degraded images with severe noise and artifacts. Tensor total variation (TTV) models are powerful tools that can encode the regional continuous structures underlying a PCT object. In a TTV model, the sparsity structures of the contrast-medium concentration (CMC) across PCT frames are assumed to be isotropic with identical and independent distribution. However, this assumption is inconsistent with practical PCT tasks wherein the sparsity has evident variations and correlations. Such modeling deviation hampers the performance of TTV-based PCT reconstructions. To address this issue, we developed a novel ontrast-edium nisotropy-ware ensor otal ariation (CMAA-TTV) model to describe the intrinsic anisotropy sparsity of the CMC in PCT imaging tasks. Instead of directly on the difference matrices, the CMAA-TTV model characterizes sparsity on a low-rank subspace of the difference matrices which are calculated from the input data adaptively, thus naturally encoding the intrinsic variant and correlated anisotropy sparsity structures of the CMC. We further proposed a robust and efficient PCT reconstruction algorithm to improve low-dose PCT reconstruction performance using the CMAA-TTV model. Experimental studies using a digital brain perfusion phantom, patient data with low-dose simulation and clinical patient data were performed to validate the effectiveness of the presented algorithm. The results demonstrate that the CMAA-TTV algorithm can achieve noticeable improvements over state-of-the-art methods in low-dose PCT reconstruction tasks.
灌注计算机断层扫描(PCT)在检测脑缺血性病变方面至关重要。低剂量扫描的PCT检查可以有效减少患者的辐射暴露,但代价是图像质量下降,伴有严重的噪声和伪影。张量全变差(TTV)模型是强大的工具,可对PCT对象背后的区域连续结构进行编码。在TTV模型中,假设PCT各帧间造影剂浓度(CMC)的稀疏结构是各向同性的,具有相同且独立的分布。然而,这一假设与实际的PCT任务不一致,在实际任务中稀疏性存在明显的变化和相关性。这种建模偏差阻碍了基于TTV的PCT重建性能。为解决此问题,我们开发了一种新颖的造影剂各向异性感知张量全变差(CMAA-TTV)模型,以描述PCT成像任务中CMC的内在各向异性稀疏性。CMAA-TTV模型不是直接作用于差分矩阵,而是在根据输入数据自适应计算得到的差分矩阵的低秩子空间上表征稀疏性,从而自然地编码了CMC的内在变化和相关各向异性稀疏结构。我们还提出了一种稳健且高效的PCT重建算法,以使用CMAA-TTV模型提高低剂量PCT重建性能。使用数字脑灌注模型、低剂量模拟患者数据和临床患者数据进行了实验研究,以验证所提出算法的有效性。结果表明,在低剂量PCT重建任务中,CMAA-TTV算法相对于现有方法可实现显著改进。