Zhang Hao, Han Hao, Wang Jing, Ma Jianhua, Liu Yan, Moore William, Liang Zhengrong
Department of Radiology, Stony Brook University, Stony Brook, New York 11794 and Department of Biomedical Engineering, Stony Brook University, Stony Brook, New York 11794.
Department of Radiology, Stony Brook University, Stony Brook, New York 11794.
Med Phys. 2014 Apr;41(4):041916. doi: 10.1118/1.4869160.
Repeated computed tomography (CT) scans are required for some clinical applications such as image-guided interventions. To optimize radiation dose utility, a normal-dose scan is often first performed to set up reference, followed by a series of low-dose scans for intervention. One common strategy to achieve the low-dose scan is to lower the x-ray tube current and exposure time (mAs) or tube voltage (kVp) setting in the scanning protocol, but the resulted image quality by the conventional filtered back-projection (FBP) method may be severely degraded due to the excessive noise. Penalized weighted least-squares (PWLS) image reconstruction has shown the potential to significantly improve the image quality from low-mAs acquisitions, where the penalty plays an important role. In this work, the authors' explore an adaptive Markov random field (MRF)-based penalty term by utilizing previous normal-dose scan to improve the subsequent low-dose scans image reconstruction.
In this work, the authors employ the widely-used quadratic-form MRF as the penalty model and explore a novel idea of using the previous normal-dose scan to obtain the MRF coefficients for adaptive reconstruction of the low-dose images. In the coefficients determination, the authors further explore another novel idea of using the normal-dose scan to obtain a scale map, which describes an optimal neighborhood for the coefficients determination such that a local uniform region has a small spread of frequency spectrum and, therefore, a small MRF window, and vice versa. The proposed penalty term is incorporated into the PWLS image reconstruction framework, and the low-dose images are reconstructed via the PWLS minimization.
The presented adaptive MRF based PWLS algorithm was validated by physical phantom and patient data. The experimental results demonstrated that the presented algorithm is superior to the PWLS reconstruction using the conventional Gaussian MRF penalty or the edge-preserving Huber penalty and the conventional FBP method, in terms of image noise reduction and edge/detail/contrast preservation.
This study demonstrated the feasibility and efficacy of the proposed scheme in utilizing previous normal-dose CT scan to improve the subsequent low-dose scans.
在一些临床应用中,如图像引导介入,需要重复进行计算机断层扫描(CT)。为了优化辐射剂量效用,通常首先进行一次常规剂量扫描以建立参考,随后进行一系列低剂量扫描用于介入。实现低剂量扫描的一种常见策略是在扫描协议中降低X射线管电流和曝光时间(毫安秒)或管电压(千伏峰值)设置,但由于噪声过大,传统滤波反投影(FBP)方法得到的图像质量可能会严重下降。惩罚加权最小二乘(PWLS)图像重建已显示出显著提高低毫安秒采集图像质量的潜力,其中惩罚起着重要作用。在这项工作中,作者通过利用先前的常规剂量扫描来探索一种基于自适应马尔可夫随机场(MRF)的惩罚项,以改善后续低剂量扫描的图像重建。
在这项工作中,作者采用广泛使用的二次型MRF作为惩罚模型,并探索一种新颖的想法,即利用先前的常规剂量扫描来获得MRF系数,用于低剂量图像的自适应重建。在系数确定过程中,作者进一步探索另一种新颖的想法,即利用常规剂量扫描来获得一个尺度图,该尺度图描述了用于系数确定的最佳邻域,使得局部均匀区域具有较小的频谱扩展,因此具有较小的MRF窗口,反之亦然。将所提出的惩罚项纳入PWLS图像重建框架,并通过PWLS最小化来重建低剂量图像。
所提出的基于自适应MRF的PWLS算法通过物理体模和患者数据得到验证。实验结果表明,在图像降噪以及边缘/细节/对比度保留方面,所提出的算法优于使用传统高斯MRF惩罚或保边缘Huber惩罚的PWLS重建以及传统FBP方法。
本研究证明了所提出方案利用先前常规剂量CT扫描来改善后续低剂量扫描的可行性和有效性。