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Spatial Resolution and Noise Prediction in Flat-Panel Cone-Beam CT Penalized-likelihood Reconstruction

机译:平板锥束CT惩罚似然重建中的空间分辨率和噪声预测

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Purpose: Model based iterative reconstruction (MBIR) algorithms such as penalized-likelihood (PL) methods have data-dependent and shift-variant image properties. Predictors of local reconstructed noise and resolution have found application in a number of methods that seek to understand, control, and optimize CT data acquisition and reconstruction parameters in a prospective fashion (as opposed to studies based on exhaustive evaluation). However, previous MBIR prediction methods have relied on idealized system models. In this work, we develop and validate new predictors using accurate physical models specific to flat-panel CT systems. Methods: Novel predictors for estimation of local spatial resolution and noise properties are developed for PL reconstruction that include a physical model for blur and correlated noise in flat-panel cone-beam CT (CBCT) acquisitions. Prospective predictions (e.g., without reconstruction) of local point spread function and and local noise power spectrum (NPS) model are applied, compared, and validated using a flat-panel CBCT test bench. Results: Comparisons between prediction and physical measurements show excellent agreement for both spatial resolution and noise properties. In comparison, traditional prediction methods (that ignore blur/correlation found in flat-panel data) fail to capture important data characteristics and show significant mismatch. Conclusion: Novel image property predictors permit prospective assessment of flat-panel CBCT using MBIR. Such predictors enable standard and task-based performance assessments, and are well-suited to evaluation, control, and optimization of the CT imaging chain (e.g., x-ray technique, reconstruction parameters, novel data acquisition methods, etc.) for improved imaging performance and/or dose utilization.
机译:目的:基于模型的迭代重建(MBIR)算法(例如,惩罚似然法(PL)方法)具有与数据相关且与变量有关的图像属性。局部重构噪声和分辨率的预测器已以多种方法应用,这些方法试图以前瞻性方式(与基于详尽评估的研究相反)来理解,控制和优化CT数据采集和重构参数。但是,以前的MBIR预测方法已经依赖于理想化的系统模型。在这项工作中,我们使用针对平板CT系统的精确物理模型来开发和验证新的预测变量。方法:为PL重建开发了用于估计局部空间分辨率和噪声特性的新型预测器,其中包括用于平板锥束CT(CBCT)采集的模糊和相关噪声的物理模型。应用,比较和使用平板CBCT测试台对本地点扩展函数和本地噪声功率谱(NPS)模型进行前瞻性预测(例如,无需重建)。结果:预测结果与物理测量结果之间的比较表明,在空间分辨率和噪声特性方面都具有极好的一致性。相比之下,传统的预测方法(忽略了平板数据中的模糊/相关性)无法捕获重要的数据特征并显示出明显的失配。结论:新颖的图像特性预测器允许使用MBIR对平板CBCT进行前瞻性评估。这样的预测器可以进行基于标准和任务的性能评估,并且非常适合评估,控制和优化CT成像链(例如X射线技术,重建参数,新颖的数据采集方法等),从而改善成像效果性能和/或剂量利用率。

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