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Cascaded systems analysis of noise and detectability in dual-energy cone-beam CT

机译:双能锥束CT噪声和可检测性的级联系统分析

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Purpose: Dual-energy computed tomography and dual-energy cone-beam computed tomography (DE-CBCT) are promising modalities for applications ranging from vascular to breast, renal, hepatic, and musculoskeletal imaging. Accordingly, the optimization of imaging techniques for such applications would benefit significantly from a general theoretical description of image quality that properly incorporates factors of acquisition, reconstruction, and tissue decomposition in DE tomography. This work reports a cascaded systems analysis model that includes the Poisson statistics of x rays (quantum noise), detector model (flat-panel detectors), anatomical background, image reconstruction (filtered backprojection), DE decomposition (weighted subtraction), and simple observer models to yield a task-based framework for DE technique optimization. Methods: The theoretical framework extends previous modeling of DE projection radiography and CBCT. Signal and noise transfer characteristics are propagated through physical and mathematical stages of image formation and reconstruction. Dual-energy decomposition was modeled according to weighted subtraction of low- and high-energy images to yield the 3D DE noise-power spectrum (NPS) and noise-equivalent quanta (NEQ), which, in combination with observer models and the imaging task, yields the dual-energy detectability index (d ′). Model calculations were validated with NPS and NEQ measurements from an experimental imaging bench simulating the geometry of a dedicated musculoskeletal extremities scanner. Imaging techniques, including kVp pair and dose allocation, were optimized using d ′ as an objective function for three example imaging tasks: (1) kidney stone discrimination; (2) iodine vs bone in a uniform, soft-tissue background; and (3) soft tissue tumor detection on power-law anatomical background. Results: Theoretical calculations of DE NPS and NEQ demonstrated good agreement with experimental measurements over a broad range of imaging conditions. Optimization results suggest a lower fraction of total dose imparted by the low-energy acquisition, a finding consistent with previous literature. The selection of optimal kVp pair reveals the combined effect of both quantum noise and contrast in the kidney stone discrimination and soft-tissue tumor detection tasks, whereas the K-edge effect of iodine was the dominant factor in determining kVp pairs in the iodine vs bone task. The soft-tissue tumor task illustrated the benefit of dual-energy imaging in eliminating anatomical background noise and improving detectability beyond that achievable by single-energy scans. Conclusions: This work established a task-based theoretical framework that is predictive of DE image quality. The model can be utilized in optimizing a broad range of parameters in image acquisition, reconstruction, and decomposition, providing a useful tool for maximizing DE-CBCT image quality and reducing dose.
机译:目的:双能计算机断层扫描和双能锥束计算机断层扫描(DE-CBCT)是从血管到乳房,肾脏,肝和肌肉骨骼成像等应用的有前途的方式。因此,针对这种应用的成像技术的优化将从图像质量的一般理论描述中受益,该理论描述适当地结合了DE层析成像中的采集,重建和组织分解因素。这项工作报告了一个级联系统分析模型,其中包括x射线的泊松统计(量子噪声),探测器模型(平板探测器),解剖背景,图像重建(滤波反投影),DE分解(加权减法)和简单观察者模型以生成基于任务的DE技术优化框架。方法:理论框架扩展了先前的DE投影X射线照相和CBCT建模。信号和噪声传输特性通过图像形成和重构的物理和数学阶段传播。根据低能和高能图像的加权减法对双能分解进行建模,以产生3D DE噪声功率谱(NPS)和等效噪声量子(NEQ),并结合观察者模型和成像任务产生双能量可检测性指数(d')。模型计算已通过模拟专门的肌肉骨骼四肢扫描仪几何结构的实验成像台的NPS和NEQ测量进行了验证。成像技术,包括kVp对和剂量分配,以d'作为目标函数来优化三个示例成像任务:(1)肾结石鉴别; (2)在均匀的软组织背景下,碘与骨的关系; (3)幂律解剖学背景上的软组织肿瘤检测。结果:DE NPS和NEQ的理论计算与在广泛成像条件下的实验测量结果吻合良好。优化结果表明,低能量采集可降低总剂量,这一发现与以前的文献一致。最佳kVp对的选择揭示了在肾结石鉴别和软组织肿瘤检测任务中量子噪声和对比度的综合作用,而碘的K边缘效应是确定碘与骨中kVp对的主导因素任务。软组织肿瘤的任务说明了双能成像在消除解剖学背景噪声和改善可检测性方面的优势,这些优势超出了单能扫描所能达到的范围。结论:这项工作建立了一个基于任务的理论框架,可以预测DE图像质量。该模型可用于优化图像采集,重建和分解中的各种参数,为最大化DE-CBCT图像质量和减少剂量提供了有用的工具。

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