Department of Medical Physics, University of Wisconsin-Madison, 1111 Highland Avenue, Madison, WI, 53705, USA.
Department of Radiology, University of Wisconsin-Madison, 600 Highland Avenue, Madison, WI, 53792, USA.
Med Phys. 2019 Nov;46(11):4869-4880. doi: 10.1002/mp.13806. Epub 2019 Sep 20.
The development and clinical employment of a computed tomography (CT) imaging system benefit from a thorough understanding of the statistical properties of the output images; cerebral CT perfusion (CTP) imaging system is no exception. A series of articles will present statistical properties of CTP systems and the dependence of these properties on system parameters. This Part I paper focuses on the signal and noise properties of cerebral blood volume (CBV) maps calculated using a nondeconvolution-based method.
The CBV imaging chain was decomposed into a cascade of subimaging stages, which facilitated the derivation of analytical models for the probability density function, mean value, and noise variance of CBV. These models directly take CTP source image acquisition, reconstruction, and postprocessing parameters as inputs. Both numerical simulations and in vivo canine experiments were performed to validate these models.
The noise variance of CBV is linearly related to the noise variance of source images and is strongly influenced by the noise variance of the baseline images. Uniformly partitioning the total radiation dose budget across all time frames was found to be suboptimal, and an optimal dose partition method was derived to minimize CBV noise. Results of the numerical simulation and animal studies validated the derived statistical properties of CBV.
The statistical properties of CBV imaging systems can be accurately modeled by extending the linear CT systems theory. Based on the statistical model, several key signal and noise characteristics of CBV were identified and an optimal dose partition method was developed to improve the image quality of CBV.
全面了解输出图像的统计特性,有助于开发和临床应用计算机断层扫描(CT)成像系统;脑 CT 灌注(CTP)成像系统也不例外。我们将发表一系列文章,介绍 CTP 系统的统计特性及其对系统参数的依赖性。本期第一篇论文重点介绍了基于非反卷积方法计算的脑血容量(CBV)图的信号和噪声特性。
将 CBV 成像链分解为级联子成像阶段,便于为 CBV 的概率密度函数、平均值和噪声方差的解析模型的推导。这些模型直接将 CTP 源图像采集、重建和后处理参数作为输入。我们进行了数值模拟和犬体内实验,以验证这些模型。
CBV 的噪声方差与源图像的噪声方差呈线性关系,且强烈受到基线图像噪声方差的影响。发现将总辐射剂量预算均匀分配到所有时间帧并不理想,推导出了一种最优的剂量分配方法,以最小化 CBV 的噪声。数值模拟和动物研究的结果验证了 CBV 的推导统计特性。
通过扩展线性 CT 系统理论,可以准确地对 CBV 成像系统的统计特性进行建模。基于该统计模型,我们确定了几个关键的 CBV 信号和噪声特性,并开发了一种最优的剂量分配方法,以提高 CBV 图像质量。