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Model-based Reconstruction of Objects with Inexactly Known Components

机译:基于模型重建具有不精确的组件的对象

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摘要

Because tomographic reconstructions are ill-conditioned, algorithms that incorporate additional knowledge about the imaging volume generally have improved image quality. This is particularly true when measurements are noisy or have missing data. This paper presents a general reconstruction framework for including attenuation contributions from objects known to be in the field-of-view. Components such as surgical devices and tools may be modeled explicitly as part of the attenuating volume but are inexactly known with respect to their locations poses, and possible deformations. The proposed reconstruction framework, referred to as Known-Component Reconstruction (KCR), is based on this novel parameterization of the object, a likelihood-based objective function, and alternating optimizations between registration and image parameters to jointly estimate the both the underlying attenuation and unknown registrations. A deformable KCR (dKCR) approach is introduced that adopts a control point-based warping operator to accommodate shape mismatches between the component model and the physical component, thereby allowing for a more general class of inexactly known components. The KCR and dKCR approaches are applied to low-dose cone-beam CT data with spine fixation hardware present in the imaging volume. Such data is particularly challenging due to photon starvation effects in projection data behind the metallic components. The proposed algorithms are compared with traditional filtered-backprojection and penalized-likelihood reconstructions and found to provide substantially improved image quality. Whereas traditional approaches exhibit significant artifacts that complicate detection of breaches or fractures near metal, the KCR framework tends to provide good visualization of anatomy right up to the boundary of surgical devices.
机译:由于断层切断重建是不存在的,所以包含关于成像体积的附加知识的算法通常具有改善的图像质量。当测量是嘈杂的或缺少数据时,这尤其如此。本文介绍了一般的重建框架,包括来自已知在视野中的对象的衰减贡献。诸如外科手术装置和工具的组件可以明确地建模,作为衰减体积的一部分,但是对于它们的位置姿势和可能的变形是不可切项的。所提出的重建框架,称为已知组件重建(KCR),基于对象的这种新颖的参数化,基于似然的目标函数,以及注册与图像参数之间的交替优化,以共同估计潜在的衰减和未知的注册。引入可变形的KCR(DKCR)方法,其采用基于控制点的翘曲操作员来适应部件模型和物理分量之间的形状不匹配,从而允许更普通的不精确地是已知的组件。 KCR和DKCR方法应用于具有在成像体积中存在的脊柱固定硬件的低剂量锥形束CT数据。由于金属部件后面的投影数据中的光子饥饿效应,这些数据尤其具有挑战性。将所提出的算法与传统的过滤 - 反射和惩罚似然重建进行比较,并发现提供了显着提高的图像质量。然而,传统方法表现出显着的伪影,使得在金属附近的违规或裂缝中的检测,KCR框架倾向于提供良好的解剖学可视化直到手术装置的边界。

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