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首页> 外文期刊>Physics in medicine and biology. >A model-constrained Monte Carlo method for blind arterial input function estimation in dynamic contrast-enhanced MRI: I. Simulations.
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A model-constrained Monte Carlo method for blind arterial input function estimation in dynamic contrast-enhanced MRI: I. Simulations.

机译:动态约束增强MRI中用于盲动脉输入功能估计的模型约束蒙特卡洛方法:I.仿真。

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摘要

Widespread adoption of quantitative pharmacokinetic modeling methods in conjunction with dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) has led to increased recognition of the importance of obtaining accurate patient-specific arterial input function (AIF) measurements. Ideally, DCE-MRI studies use an AIF directly measured in an artery local to the tissue of interest, along with measured tissue concentration curves, to quantitatively determine pharmacokinetic parameters. However, the numerous technical and practical difficulties associated with AIF measurement have made the use of population-averaged AIF data a popular, if sub-optimal, alternative to AIF measurement. In this work, we present and characterize a new algorithm for determining the AIF solely from the measured tissue concentration curves. This Monte Carlo blind estimation (MCBE) algorithm estimates the AIF from the subsets of D concentration-time curves drawn from a larger pool of M candidate curves via nonlinear optimization, doing so for multiple (Q) subsets and statistically averaging these repeated estimates. The MCBE algorithm can be viewed as a generalization of previously published methods that employ clustering of concentration-time curves and only estimate the AIF once. Extensive computer simulations were performed over physiologically and experimentally realistic ranges of imaging and tissue parameters, and the impact of choosing different values of D and Q was investigated. We found the algorithm to be robust, computationally efficient and capable of accurately estimating the AIF even for relatively high noise levels, long sampling intervals and low diversity of tissue curves. With the incorporation of bootstrapping initialization, we further demonstrated the ability to blindly estimate AIFs that deviate substantially in shape from the population-averaged initial guess. Pharmacokinetic parameter estimates for K(trans), k(ep), v(p) and v(e) all showed relative biases and uncertainties of less than 10% for measurements having a temporal sampling rate of 4 s and a concentration measurement noise level of sigma = 0.04 mM. A companion paper discusses the application of the MCBE algorithm to DCE-MRI data acquired in eight patients with malignant brain tumors.
机译:定量药代动力学建模方法与动态对比增强磁共振成像(DCE-MRI)结合被广泛采用,这导致人们越来越认识到获得准确的患者特定动脉输入功能(AIF)测量值的重要性。理想情况下,DCE-MRI研究使用直接在感兴趣组织局部动脉中测量的AIF以及测量的组织浓度曲线来定量确定药代动力学参数。但是,与AIF测量相关的众多技术和实践困难使人口平均AIF数据的使用成为了AIF测量的一种流行(即使不是最佳选择)的方法。在这项工作中,我们提出并描述了一种仅根据所测组织浓度曲线确定AIF的新算法。此蒙特卡洛盲估计(MCBE)算法通过非线性优化从D个浓度-时间曲线的子集中估计AIF,这些D-时间曲线是从M条候选曲线的较大集合中提取的,用于多个(Q)子集,并对这些重复的估计进行统计平均。 MCBE算法可以看作是以前发布的方法的概括,这些方法采用浓度-时间曲线的聚类并且仅估计AIF一次。在成像和组织参数的生理和实验现实范围内进行了广泛的计算机模拟,并研究了选择不同D和Q值的影响。我们发现该算法是鲁棒的,计算效率高的,并且即使在相对较高的噪声水平,较长的采样间隔和较低的组织曲线多样性下也能够准确地估计AIF。通过合并自举初始化,我们进一步证明了盲目估计形状与总体平均初始猜测有明显偏差的AIF的能力。对于K(trans),k(ep),v(p)和v(e)的药代动力学参数估计,对于时间采样率为4 s和浓度测量噪声水平的测量,均显示出小于10%的相对偏差和不确定性σ= 0.04 mM。另一篇论文讨论了MCBE算法在8例恶性脑肿瘤患者DCE-MRI数据中的应用。

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