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dPIRPLE: A Joint Estimation Framework for Deformable Registration and Penalized-Likelihood CT Image Reconstruction using Prior Images

机译:dPIRPLE:使用先验图像的可变形配准和惩罚性CT图像重建联合估计框架

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摘要

Sequential imaging studies are conducted in many clinical scenarios. Prior images from previous studies contain a great deal of patient-specific anatomical information and can be used in conjunction with subsequent imaging acquisitions to maintain image quality while enabling radiation dose reduction (e.g., through sparse angular sampling, reduction in fluence, etc.). However, patient motion between images in such sequences results in misregistration between the prior image and current anatomy. Existing prior-image-based approaches often include only a simple rigid registration step that can be insufficient for capturing complex anatomical motion, introducing detrimental effects in subsequent image reconstruction. In this work, we propose a joint framework that estimates the 3D deformation between an unregistered prior image and the current anatomy (based on a subsequent data acquisition) and reconstructs the current anatomical image using a model-based reconstruction approach that includes regularization based on the deformed prior image. This framework is referred to as deformable prior image registration, penalized-likelihood estimation (dPIRPLE). Central to this framework is the inclusion of a 3D B-spline-based free-form-deformation model into the joint registration-reconstruction objective function. The proposed framework is solved using a maximization strategy whereby alternating updates to the registration parameters and image estimates are applied allowing for improvements in both the registration and reconstruction throughout the optimization process. Cadaver experiments were conducted on a cone-beam CT testbench emulating a lung nodule surveillance scenario. Superior reconstruction accuracy and image quality were demonstrated using the dPIRPLE algorithm as compared to more traditional reconstruction methods including filtered backprojection, penalized-likelihood estimation (PLE), prior image penalized-likelihood estimation (PIPLE) without registration, and prior image penalized-likelihood estimation with rigid registration of a prior image (PIRPLE) over a wide range of sampling sparsity and exposure levels.
机译:在许多临床情况下都进行了顺序成像研究。来自先前研究的先前图像包含大量患者特定的解剖学信息,可以与后续成像采集结合使用,以在保持图像质量的同时降低辐射剂量(例如,通过稀疏角度采样,减少注量等)。然而,患者在这样的序列中的图像之间的运动导致先前图像与当前解剖结构之间的配准不良。现有的基于先验图像的方法通常仅包括简单的刚性配准步骤,该步骤可能不足以捕获复杂的解剖运动,从而在随后的图像重建中引入了不利的影响。在这项工作中,我们提出了一个联合框架,该框架可以估计未注册的先前图像和当前解剖结构之间的3D变形(基于后续数据采集),并使用基于模型的重构方法来重构当前解剖图像,该方法包括基于图像的正则化。变形的先前图像。该框架称为可变形先验图像配准,惩罚似然估计(dPIRPLE)。该框架的核心是将基于3D B样条的自由形式变形模型包含到联合配准重建目标函数中。所提出的框架是使用最大化策略来解决的,从而对注册参数和图像估计值进行交替更新,从而可以在整个优化过程中改善注册和重构。尸体实验是在锥形束CT测试台上进行的,模拟了肺结节的监视情况。与更传统的重建方法相比,使用dPIRPLE算法可显示出更高的重建精度和图像质量,包括过滤的反投影,惩罚的似然估计(PLE),无配准的先前图像受惩罚可能性估计(PIPLE)和先前的图像受惩罚可能性估计在广泛的采样稀疏度和曝光度范围内对先前图像(PIRPLE)进行严格配准。

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