Department of Radiation Sciences, Umeå University, Umeå, SE-901 87 Sweden.
Med Phys. 2012 Jun;39(6):3283-90. doi: 10.1118/1.4711807.
In an earlier work, we demonstrated that substitutes for CT images can be derived from MR images using ultrashort echo time (UTE) sequences, conventional T2 weighted sequences, and Gaussian mixture regression (GMR). In this study, we extend this work by analyzing the uncertainties associated with the GMR model and the information contributions from the individual imaging sequences.
An analytical expression for the voxel-wise conditional expected absolute deviation (EAD) in substitute CT (s-CT) images was derived. The expression depends only on MR images and can thus be calculated along with each s-CT image. The uncertainty measure was evaluated by comparing the EAD to the true mean absolute prediction deviation (MAPD) between the s-CT and CT images for 14 patients. Further, the influence of the different MR images included in the GMR model on the generated s-CTs was investigated by removing one or more images and evaluating the MAPD for a spectrum of predicted radiological densities.
The largest EAD was predicted at air-soft tissue and bone-soft tissue interfaces. The EAD agreed with the MAPD in both these regions and in regions with lower EADs, such as the brain. Two of the MR images included in the GMR model were found to be mutually redundant for the purpose of s-CT generation.
The presented uncertainty estimation method accurately predicts the voxel-wise MAPD in s-CT images. Also, the non-UTE sequence previously used in the model was found to be redundant.
在早期的研究中,我们使用超短回波时间(UTE)序列、常规 T2 加权序列和高斯混合回归(GMR)从磁共振图像中推导出 CT 图像的替代物。在这项研究中,我们通过分析 GMR 模型的不确定性和各个成像序列的信息贡献来扩展这项工作。
推导出替代 CT(s-CT)图像中体素级条件期望绝对偏差(EAD)的解析表达式。该表达式仅依赖于 MR 图像,因此可以与每个 s-CT 图像一起计算。通过将 EAD 与 14 名患者的 s-CT 和 CT 图像之间的真实平均绝对预测偏差(MAPD)进行比较,评估不确定性度量。此外,通过去除一个或多个图像并评估一系列预测的放射密度的 MAPD,研究了包含在 GMR 模型中的不同 MR 图像对生成的 s-CT 的影响。
在空气-软组织和骨-软组织界面预测到最大的 EAD。EAD 在这两个区域以及 EAD 较低的区域,如大脑,与 MAPD 一致。发现 GMR 模型中包含的两个 MR 图像对于生成 s-CT 是相互冗余的。
所提出的不确定性估计方法准确预测了 s-CT 图像中的体素级 MAPD。此外,还发现模型中以前使用的非 UTE 序列是冗余的。