Center for Virtual Imaging Trials and Carl E. Ravin Advanced Imaging Laboratories, Durham, NC; Department of Physics, Duke University, Durham, NC.
GE Healthcare, Waukesha, WI.
Acad Radiol. 2023 Jun;30(6):1153-1163. doi: 10.1016/j.acra.2022.06.018. Epub 2022 Jul 22.
Deep silicon-based photon-counting CT (Si-PCCT) is an emerging detector technology that provides improved spatial resolution by virtue of its reduced pixel sizes. This article reports the outcomes of the first simulation study evaluating the impact of this advantage over energy-integrating CT (ECT) for estimation of morphological radiomics features in lung lesions.
A dynamic nutrient-access-based stochastic model was utilized to generate three distinct morphologies for lung lesions. The lesions were inserted into the lung parenchyma of an anthropomorphic phantom (XCAT - 50 percentile BMI) at 50, 70, and 90 mm from isocenter. The phantom was virtually imaged with an imaging simulator (DukeSim) modeling a Si-PCCT and a conventional ECT system using varying imaging conditions (dose, reconstruction kernel, and pixel size). The imaged lesions were segmented using a commercial segmentation tool (AutoContour, Advantage Workstation Server 3.2, GE Healthcare) followed by extraction of morphological radiomics features using an open-source radiomics package (pyradiomics). The estimation errors for both systems were computed as percent differences from corresponding feature values estimated for the ground-truth lesions.
Compared to ECT, the mean estimation error was lower for Si-PCCT (independent features: 35.9% vs. 54.0%, all features: 54.5% vs. 68.1%) with statistically significant reductions in errors for 8/14 features. For both systems, the estimation accuracy was minimally affected by dose and distance from the isocenter while reconstruction kernel and pixel size were observed to have a relatively stronger effect.
For all lesions and imaging conditions considered, Si-PCCT exhibited improved estimation accuracy for morphological radiomics features over a conventional ECT system, demonstrating the potential of this technology for improved quantitative imaging.
基于深度硅的光子计数 CT(Si-PCCT)是一种新兴的探测器技术,通过减小像素尺寸来提高空间分辨率。本文报告了首次模拟研究的结果,该研究评估了这种优势相对于能量积分 CT(ECT)在估计肺部病变形态放射组学特征方面的影响。
利用动态营养物质获取的随机模型生成三种不同形态的肺部病变。将病变插入到人体模型(XCAT-50 百分位 BMI)的肺实质中,距离等中心 50、70 和 90mm。使用不同的成像条件(剂量、重建核和像素尺寸),使用成像模拟器(DukeSim)对虚拟模型进行成像,模拟 Si-PCCT 和传统的 ECT 系统。使用商业分割工具(AutoContour,Advantage Workstation Server 3.2,GE Healthcare)对成像病变进行分割,然后使用开源放射组学软件包(pyradiomics)提取形态放射组学特征。使用地面真实病变估计的特征值计算两个系统的估计误差,作为从对应特征值估计的百分比差异。
与 ECT 相比,Si-PCCT 的平均估计误差较低(独立特征:35.9%比 54.0%,所有特征:54.5%比 68.1%),14 个特征中有 8 个特征的误差显著降低。对于两个系统,估计精度受剂量和距等中心的距离影响较小,而重建核和像素尺寸的影响相对较强。
对于所有考虑的病变和成像条件,Si-PCCT 显示出比传统 ECT 系统更高的形态放射组学特征估计准确性,表明该技术具有改善定量成像的潜力。