Multi-Contrast CT Imaging with a Prototype Spatial-Spectral Filter.

Matthew Tivnan, Wenying Wang, J Webster Stayman
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Abstract

Spectral CT has great potential for a variety of clinical applications due to the improved material discrimination with respect to conventional CT. Many clinical and preclinical spectral CT systems have two spectral channels for dual-energy CT using strategies such as split-filtration, dual-layer detectors, or kVp-switching. However, there are emerging clinical imaging applications which would require three or more spectral sensitivity channels, for example, multiple exogenous contrast agents in a single scan. Spatial-spectral filters are a new spectral CT technology which use x-ray beam modulation to offer greater spectral diversity. The device consists of an array of k-edge filters which divide the x-ray beam into spectrally varied beamlets. This design allows for an arbitrary number of spectral channels; however, traditional two-step reconstruction-decomposition schemes are typically not effective because the measured data for any individual spectral channel is sparse in the projection domain. Instead, we use a one-step model-based material decomposition algorithm to iteratively estimate material density images directly from spectral CT data. In this work, we present a prototype spatial-spectral filter integrated with an x-ray CT test-bench. The filter is composed of an array of tin, erbium, tantalum, and lead filter tiles which spatially modulate the system spectral sensitivity pattern. After the system was characterized and modeled, we conducted a spectral CT scan of a multi-contrast-enhanced phantom containing water, iodine, and gadolinium solutions. We present the resulting spectral CT data as well as the material density images estimated by model-based material decomposition. The calibrated system model is in close agreement with the measured data, and the reconstructed material density images match the ground truth concentrations for the multi-contrast phantom. These preliminary results demonstrate the potential of spatial-spectral filters to enable multi-contrast imaging and other new clinical applications of spectral CT.

基于原型空间光谱滤波器的多对比度CT成像。
与传统CT相比,光谱CT具有更好的材料识别能力,在各种临床应用中具有很大的潜力。许多临床和临床前光谱CT系统具有双能量CT的两个光谱通道,使用诸如分裂过滤,双层检测器或kvp开关等策略。然而,有新兴的临床成像应用需要三个或更多的光谱灵敏度通道,例如,在一次扫描中使用多种外源性造影剂。空间光谱滤波器是一种新的光谱CT技术,它利用x射线束调制来提供更大的光谱多样性。该装置由一组k边滤波器组成,该滤波器将x射线束分成光谱变化的光束。这种设计允许任意数量的光谱通道;然而,传统的两步重建分解方案通常效果不佳,因为任何单个频谱通道的测量数据在投影域中都是稀疏的。相反,我们使用一步基于模型的材料分解算法,直接从光谱CT数据迭代估计材料密度图像。在这项工作中,我们提出了一个与x射线CT试验台集成的原型空间光谱滤波器。该滤光片由锡、铒、钽和铅滤光片阵列组成,其在空间上调制系统的光谱灵敏度模式。在对系统进行表征和建模后,我们对含有水、碘和钆溶液的多对比度增强模体进行了光谱CT扫描。我们给出了结果的光谱CT数据以及基于模型的材料分解估计的材料密度图像。校正后的系统模型与实测数据吻合较好,重建的材料密度图像与多对比度模型的真实浓度相匹配。这些初步结果证明了空间光谱滤波器在实现多对比成像和光谱CT其他新的临床应用方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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