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动态对比增强 CT 用动态血流成像模体的研制。

Development of a dynamic flow imaging phantom for dynamic contrast-enhanced CT.

机构信息

Department of Radiation Physics, Princess Margaret Hospital, 610 University Avenue, Toronto, Ontario M5G 2M9, Canada.

出版信息

Med Phys. 2011 Aug;38(8):4866-80. doi: 10.1118/1.3615058.

DOI:10.1118/1.3615058
PMID:21928658
Abstract

PURPOSE

Dynamic contrast enhanced CT (DCE-CT) studies with modeling of blood flow and tissue perfusion are becoming more prevalent in the clinic, with advances in wide volume CT scanners allowing the imaging of an entire organ with sub-second image frequency and sub-millimeter accuracy. Wide-spread implementation of perfusion DCE-CT, however, is pending fundamental validation of the quantitative parameters that result from dynamic contrast imaging and perfusion modeling. Therefore, the goal of this work was to design and construct a novel dynamic flow imaging phantom capable of producing typical clinical time-attenuation curves (TACs) with the purpose of developing a framework for the quantification and validation of DCE-CT measurements and kinetic modeling under realistic flow conditions.

METHODS

The phantom is based on a simple two-compartment model and was printed using a 3D printer. Initial analysis of the phantom involved simple flow measurements and progressed to DCE-CT experiments in order to test the phantoms range and reproducibility. The phantom was then utilized to generate realistic input TACs. A phantom prediction model was developed to compute the input and output TACs based on a given set of five experimental (control) parameters: pump flow rate, injection pump flow rate, injection contrast concentration, and both control valve positions. The prediction model is then inversely applied to determine the control parameters necessary to generate a set of desired input and output TACs. A protocol was developed and performed using the phantom to investigate image noise, partial volume effects and CT number accuracy under realistic flow conditions.

RESULTS

This phantom and its surrounding flow system are capable of creating a wide range of physiologically relevant TACs, which are reproducible with minimal error between experiments (sigma/micro < 5% for all metrics investigated). The dynamic flow phantom was capable of producing input and output TACs using either step function based or typical clinical arterial input function (AIF) inputs. The measured TACs were in excellent agreement with predictions across all comparison metrics with goodness of fit (R2) for the input function between 0.95 and 0.98, while the maximum enhancement differed by no more than 3.3%. The predicted output functions were similarly accurate producing R2 values between 0.92 and 0.99 and maximum enhancement to within 9.0%. The effect of ROI size on the arterial input function (AIF) was investigated in order to determine an operating range of ROI sizes which were minimally affected by noise for small dimensions and partial volume effects for large dimensions. It was possible to establish the measurement sensitivity of both the Toshiba (ROI radius range from 1.5 to 3.2 mm "low dose", 1.4 to 3.0 mm "high dose") and GE scanner (1.5 to 2.6 mm "low dose", 1.1 to 3.4 mm "high dose"). This application of the phantom also provides the ability to evaluate the effect of the AIF error on kinetic model parameter predictions.

CONCLUSIONS

The dynamic flow imaging phantom is capable of producing accurate and reproducible results which can be predicted and quantified. This results in a unique tool for perfusion DCE-CT validation under realistic flow conditions which can be applied not only to compare different CT scanners and imaging protocols but also to provide a ground truth across multimodality dynamic imaging given its MRI and PET compatibility.

摘要

目的

动态对比增强 CT(DCE-CT)研究结合血流和组织灌注建模在临床上越来越普遍,随着宽体 CT 扫描仪的进步,能够以亚秒级的图像频率和亚毫米级的精度对整个器官进行成像。然而,灌注 DCE-CT 的广泛应用,取决于对动态对比成像和灌注建模产生的定量参数进行基本验证。因此,本工作的目的是设计和构建一种新型的动态流动成像体模,能够产生典型的临床时间衰减曲线(TAC),旨在为 DCE-CT 测量和动力学建模的量化和验证开发一个框架,以适应真实流动条件。

方法

该体模基于简单的两室模型,并使用 3D 打印机打印。体模的初步分析包括简单的流量测量,并逐步进行 DCE-CT 实验,以测试体模的范围和可重复性。然后,该体模用于生成现实的输入 TAC。开发了一个体模预测模型,根据一组五个实验(控制)参数:泵流量、注射泵流量、注射对比浓度以及两个控制阀位置,计算输入和输出 TAC。然后,反应用于确定生成一组所需输入和输出 TAC 所需的控制参数。开发并执行了一个协议,使用体模在真实流动条件下研究图像噪声、部分容积效应和 CT 数精度。

结果

该体模及其周围的流动系统能够创建广泛的生理相关 TAC,在实验之间具有最小误差的可重复性(所有研究指标的误差/micro <5%)。动态流动体模能够使用基于阶跃函数或典型的临床动脉输入函数(AIF)输入生成输入和输出 TAC。在所有比较指标上,测量的 TAC 与预测值非常吻合,拟合优度(输入函数的 R2)为 0.95 到 0.98,而最大增强差异不超过 3.3%。预测的输出函数同样准确,R2 值在 0.92 到 0.99 之间,最大增强值在 9.0%以内。为了确定对小尺寸噪声和大尺寸部分容积效应影响最小的 ROI 尺寸的工作范围,研究了 ROI 尺寸对动脉输入函数(AIF)的影响。可以确定东芝(ROI 半径范围为 1.5 到 3.2mm“低剂量”,1.4 到 3.0mm“高剂量”)和 GE 扫描仪(1.5 到 2.6mm“低剂量”,1.1 到 3.4mm“高剂量”)的测量灵敏度。该体模的这种应用还提供了评估 AIF 误差对动力学模型参数预测影响的能力。

结论

动态流动成像体模能够产生准确且可重复的结果,并且可以进行预测和量化。这为在真实流动条件下进行灌注 DCE-CT 验证提供了一个独特的工具,不仅可以用于比较不同的 CT 扫描仪和成像协议,还可以在多模态动态成像中提供一个真实值,因为它与 MRI 和 PET 兼容。

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