Integration of Component Knowledge in Penalized-Likelihood Reconstruction with Morphological and Spectral Uncertainties.

J Webster Stayman, Steven Tilley, Jeffrey H Siewerdsen
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Abstract

Previous investigations [1-3] have demonstrated that integrating specific knowledge of the structure and composition of components like surgical implants, devices, and tools into a model-based reconstruction framework can improve image quality and allow for potential exposure reductions in CT. Using device knowledge in practice is complicated by uncertainties in the exact shape of components and their particular material composition. Such unknowns in the morphology and attenuation properties lead to errors in the forward model that limit the utility of component integration. In this work, a methodology is presented to accommodate both uncertainties in shape as well as unknown energy-dependent attenuation properties of the surgical devices. This work leverages the so-called known-component reconstruction (KCR) framework [1] with a generalized deformable registration operator and modifications to accommodate a spectral transfer function in the component model. Moreover, since this framework decomposes the object into separate background anatomy and "known" component factors, a mixed fidelity forward model can be adopted so that measurements associated with projections through the surgical devices can be modeled with much greater accuracy. A deformable KCR (dKCR) approach using the mixed fidelity model is introduced and applied to a flexible wire component with unknown structure and composition. Image quality advantages of dKCR over traditional reconstruction methods are illustrated in cone-beam CT (CBCT) data acquired on a testbench emulating a 3D-guided needle biopsy procedure - i.e., a deformable component (needle) with strong energy-dependent attenuation characteristics (steel) within a complex soft-tissue background.

Abstract Image

Abstract Image

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具有形态和谱不确定性的惩罚似然重构中成分知识的集成。
先前的研究[1-3]表明,将外科植入物、设备和工具等组件的结构和组成的特定知识整合到基于模型的重建框架中可以提高图像质量,并允许潜在的CT暴露减少。由于元件的确切形状及其特定的材料组成的不确定性,在实践中使用器件知识变得复杂。这些形貌和衰减特性的未知导致了正演模型的误差,限制了组件积分的效用。在这项工作中,提出了一种方法,以适应形状的不确定性以及手术装置的未知能量依赖衰减特性。这项工作利用了所谓的已知分量重建(KCR)框架[1],该框架具有广义的可变形配准算子和修改,以适应分量模型中的谱传递函数。此外,由于该框架将物体分解为单独的背景解剖结构和“已知”成分因素,因此可以采用混合保真度正演模型,以便通过手术装置对与投影相关的测量进行更精确的建模。介绍了一种基于混合保真度模型的可变形KCR (dKCR)方法,并将其应用于结构和组成未知的柔性线材构件。dKCR相对于传统重建方法的图像质量优势在锥形束CT (CBCT)数据中得到了说明,这些数据是在模拟3d引导的针活检过程的试验台上获得的,即在复杂的软组织背景中具有强能量依赖衰减特性(钢)的可变形部件(针)。
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