Steven Tilley, Alejandro Sisniega, Jeffrey H Siewerdsen, J Webster Stayman
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引用次数: 0
摘要
在 X 射线曝光和整合过程中,探测器的滞后和龙门架的移动都会导致 CT 重建的方位模糊。这些影响会降低高分辨率特征和低对比度细节的图像质量。在这项工作中,我们考虑了基于模型的迭代重建(MBIR)的前向模型,该模型具有足够的通用性,可同时适应这两种物理效应。我们将该前向模型整合到一个惩罚性、加权、非线性最小二乘法式目标函数中,用于联合重建和校正这些模糊效应。我们在模拟研究和物理实验中都表明,探测器滞后建模可以减少/消除头部成像中的特征滞后伪影。同样,我们还证明,通过适当的重建模型,通常由龙门架运动引入的方位角模糊也能得到缓解。特别是在龙门架运动伪影最明显的视场边缘,我们发现图像质量的改善幅度最大。这些实验说明了底层前向模型的通用性,表明它有可能应用于对传统上被忽略或通过对测量数据进行预修正来减轻的一些物理效应进行建模。
High-Fidelity Modeling of Detector Lag and Gantry Motion in CT Reconstruction.
Detector lag and gantry motion during x-ray exposure and integration both result in azimuthal blurring in CT reconstructions. These effects can degrade image quality both for high-resolution features as well as low-contrast details. In this work we consider a forward model for model-based iterative reconstruction (MBIR) that is sufficiently general to accommodate both of these physical effects. We integrate this forward model in a penalized, weighted, nonlinear least-square style objective function for joint reconstruction and correction of these blur effects. We show that modeling detector lag can reduce/remove the characteristic lag artifacts in head imaging in both a simulation study and physical experiments. Similarly, we show that azimuthal blur ordinarily introduced by gantry motion can be mitigated with proper reconstruction models. In particular, we find the largest image quality improvement at the periphery of the field-of-view where gantry motion artifacts are most pronounced. These experiments illustrate the generality of the underlying forward model, suggesting the potential application in modeling a number of physical effects that are traditionally ignored or mitigated through pre-corrections to measurement data.