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Penalized-Likelihood Reconstruction with High-Fidelity Measurement Models for High-Resolution Cone-Beam Imaging

机译:高分辨率锥束成像的高保真测量模型的惩罚性似然重建

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摘要

We present a novel reconstruction algorithm based on a general cone-beam CT forward model which is capable of incorporating the blur and noise correlations that are exhibited in flat-panel CBCT measurement data. Specifically, the proposed model may include scintillator blur, focal-spot blur, and noise correlations due to light spread in the scintillator. The proposed algorithm (GPL-BC) uses a Gaussian Penalized-Likelihood objective function which incorporates models of Blur and Correlated noise. In a simulation study, GPL-BC was able to achieve lower bias as compared to deblurring followed by FDK as well as a model-based reconstruction method without integration of measurement blur. In the same study, GPL-BC was able to achieve better line-pair reconstructions (in terms of segmented-image accuracy) as compared to deblurring followed by FDK, a model based method without blur, and a model based method with blur but not noise correlations. A prototype extremities quantitative cone-beam CT test bench was used to image a physical sample of human trabecular bone. These data were used to compare reconstructions using the proposed method and model based methods without blur and/or correlation to a registered μCT image of the same bone sample. The GPL-BC reconstructions resulted in more accurate trabecular bone segmentation. Multiple trabecular bone metrics, including Trabecular Thickness (Tb.Th.) were computed for each reconstruction approach as well as the μCT volume. The GPL-BC reconstruction provided the most accurate Tb.Th. measurement, 0.255 mm, as compared to the μCT derived value of 0.193 mm, followed by the GPL-B reconstruction, the GPL-I reconstruction, and then the FDK reconstruction (0.271 mm, 0.309 mm, and 0.335 mm, respectively).
机译:我们提出了一种基于普通锥形束CT正向模型的新颖重构算法,该模型能够合并平板CBCT测量数据中显示的模糊和噪声相关性。具体地,所提出的模型可以包括闪烁体模糊,焦点模糊以及由于光在闪烁体中扩散而引起的噪声相关性。所提出的算法(GPL-BC)使用了结合模糊和相关噪声模型的高斯惩罚似然目标函数。在模拟研究中,与去模糊,FDK以及基于模型的重建方法相比,GPL-BC能够实现更低的偏差,而无需整合测量模糊。在同一项研究中,与去模糊后再进行FDK,基于模型的无模糊方法和基于模型的无模糊方法相比,GPL-BC能够实现更好的线对重建(就分割图像的准确性而言)。噪声相关性。使用原型肢体定量锥形束CT测试台对人体小梁骨的物理样本进行成像。这些数据用于比较使用提出的方法和基于模型的方法的重建,而没有模糊和/或与同一骨骼样本的已注册μCT图像相关。 GPL-BC重建导致更准确的小梁骨分割。针对每种重建方法以及μCT体积,计算了多个小梁骨度量,包括小梁厚度(Tb.Th.)。 GPL-BC重建提供了最准确的Tb.Th。测量值是0.255 mm,而μCT得出的值是0.193 mm,然后是GPL-B重建,GPL-1重建,然后是FDK重建(分别为0.271 mm,0.309 mm和0.335 mm)。

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