Niu Shanzhou, Li Shuo, Huang Shuyan, Liang Lijing, Tang Sizhou, Wang Tinghua, Yu Gaohang, Niu Tianye, Wang Jing, Ma Jianhua
School of Mathematics and Computer Science, Gannan Normal University, Ganzhou, China.
Ganzhou Key Laboratory of Computational Imaging, Gannan Normal University, Ganzhou, China.
J Xray Sci Technol. 2024;32(6):1429-1447. doi: 10.3233/XST-240104.
Dynamic cerebral perfusion CT (DCPCT) can provide valuable insight into cerebral hemodynamics by visualizing changes in blood within the brain. However, the associated high radiation dose of the standard DCPCT scanning protocol has been a great concern for the patient and radiation physics. Minimizing the x-ray exposure to patients has been a major effort in the DCPCT examination. A simple and cost-effective approach to achieve low-dose DCPCT imaging is to lower the x-ray tube current in data acquisition. However, the image quality of low-dose DCPCT will be degraded because of the excessive quantum noise.
To obtain high-quality DCPCT images, we present a statistical iterative reconstruction (SIR) algorithm based on penalized weighted least squares (PWLS) using adaptive prior image constrained total generalized variation (APICTGV) regularization (PWLS-APICTGV).
APICTGV regularization uses the precontrast scanned high-quality CT image as an adaptive structural prior for low-dose PWLS reconstruction. Thus, the image quality of low-dose DCPCT is improved while essential features of targe image are well preserved. An alternating optimization algorithm is developed to solve the cost function of the PWLS-APICTGV reconstruction.
PWLS-APICTGV algorithm was evaluated using a digital brain perfusion phantom and patient data. Compared to other competing algorithms, the PWLS-APICTGV algorithm shows better noise reduction and structural details preservation. Furthermore, the PWLS-APICTGV algorithm can generate more accurate cerebral blood flow (CBF) map than that of other reconstruction methods.
PWLS-APICTGV algorithm can significantly suppress noise while preserving the important features of the reconstructed DCPCT image, thus achieving a great improvement in low-dose DCPCT imaging.
动态脑灌注CT(DCPCT)通过可视化脑内血液变化,能为脑血流动力学提供有价值的见解。然而,标准DCPCT扫描协议所带来的高辐射剂量一直是患者和放射物理学关注的焦点。在DCPCT检查中,尽量减少患者的X射线暴露是一项主要工作。实现低剂量DCPCT成像的一种简单且经济高效的方法是在数据采集中降低X射线管电流。然而,由于量子噪声过大,低剂量DCPCT的图像质量会下降。
为了获得高质量的DCPCT图像,我们提出一种基于惩罚加权最小二乘法(PWLS)并使用自适应先验图像约束全广义变分(APICTGV)正则化的统计迭代重建(SIR)算法(PWLS-APICTGV)。
APICTGV正则化将对比剂注射前扫描的高质量CT图像用作低剂量PWLS重建的自适应结构先验。因此,在很好地保留目标图像基本特征的同时,提高了低剂量DCPCT的图像质量。开发了一种交替优化算法来求解PWLS-APICTGV重建的代价函数。
使用数字脑灌注模型和患者数据对PWLS-APICTGV算法进行了评估。与其他竞争算法相比,PWLS-APICTGV算法在降噪和结构细节保留方面表现更好。此外,PWLS-APICTGV算法能够生成比其他重建方法更准确的脑血流量(CBF)图。
PWLS-APICTGV算法在保留重建的DCPCT图像重要特征的同时,能显著抑制噪声,从而在低剂量DCPCT成像方面取得了很大改进。