Smulders Milan, Wu Dufan, Gupta Rajiv
University of Twente (The Netherlands).
Massachusetts General Hospital (United States).
Proc SPIE Int Soc Opt Eng. 2025 Feb;13405. doi: 10.1117/12.3047261. Epub 2025 Apr 8.
INTRODUCTION -: Computed tomography (CT) imaging has seen significant advancements with the introduction of spectral CT, which improves material differentiation by acquiring images at multiple energy levels. Photon-counting CT (PCCT) is an emerging technique to implement spectral CT with photon counting detectors that may discriminate detected photon energies to different energy bins. Material differentiation is achieved by decomposing the acquired data into two-material models such as brain/bone or brain/iodine. However, such decomposition is susceptible to bias due to inaccurate physical modeling. In this study, we aim to study the relationship between the material decomposition bias and the energy thresholds used in PCCT, under ideal, noiseless models.
METHODS -: A projection-based material decomposition model was used to directly decompose projection data. Bias simulation was performed using a Shepp-Logan phantom with brain/bone and brain/iodine as basis materials. X-ray spectra were generated using a fixed 10 keV threshold and a varying threshold sampled from 20 to 90 keV, with extra sampling points around iodine's k-edge. Virtual monoenergetic images (VMIs) at 60 keV and 140 keV were analyzed to evaluate bias for each material and material pair.
RESULTS -: Lower energy thresholds (<40 keV) introduced a larger bias in material decomposition, with peaks observed between 30 and 40 keV, particularly around the k-edge of iodine. The bias generally decreased with increasing thresholds above 50 keV, especially for non-basis materials. This trend was consistent across brain/bone and brain/iodine bases and for both 60 and 140 keV VMIs.
CONCLUSION -: Energy thresholds significantly affect the accuracy of projection-based material decomposition in PCCT. Greater differences between thresholds lead to reduced decomposition bias. Future research should incorporate non-ideal detector responses and noise, as well as explore image-domain decomposition and real phantom studies with possible translation to improve patient care.
引言 -:随着光谱CT的引入,计算机断层扫描(CT)成像取得了显著进展,光谱CT通过在多个能量水平采集图像来改善物质区分。光子计数CT(PCCT)是一种新兴技术,它使用光子计数探测器来实现光谱CT,该探测器可将检测到的光子能量区分到不同的能量区间。通过将采集到的数据分解为脑/骨或脑/碘等双物质模型来实现物质区分。然而,由于物理建模不准确,这种分解容易产生偏差。在本研究中,我们旨在研究在理想、无噪声模型下,PCCT中物质分解偏差与所使用的能量阈值之间的关系。
方法 -:使用基于投影的物质分解模型直接分解投影数据。使用以脑/骨和脑/碘为基础物质的Shepp-Logan体模进行偏差模拟。使用固定的10 keV阈值和从20 keV到90 keV采样的可变阈值生成X射线光谱,并在碘的k边缘周围设置额外的采样点。分析60 keV和140 keV的虚拟单能图像(VMI)以评估每种物质和物质对的偏差。
结果 -:较低的能量阈值(<40 keV)在物质分解中引入了较大的偏差,在30至40 keV之间观察到峰值,特别是在碘的k边缘附近。对于高于50 keV的阈值,偏差通常随着阈值的增加而减小,尤其是对于非基础物质。这种趋势在脑/骨和脑/碘基础以及60 keV和140 keV的VMI中都是一致的。
结论 -:能量阈值显著影响PCCT中基于投影的物质分解的准确性。阈值之间的差异越大,分解偏差越小。未来的研究应纳入非理想探测器响应和噪声,并探索图像域分解以及可能转化为改善患者护理的真实体模研究。