Two Non-linear Parametric Models of Contrast Enhancement for DCE-MRI of the Breast Amenable to Fitting Using Linear Least Squares

A. Mehnert, M. Wildermoth, S. Crozier, E. Bengtsson, D. Kennedy
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引用次数: 3

Abstract

This paper proffers two non-linear empirical parametric models—linear slope and Ricker—for use in characterising contrast enhancement in dynamic contrast enhanced (DCE) MRI. The advantage of these models over existing empirical parametric and pharmacokinetic models is that they can be fitted using linear least squares (LS). This means that fitting is quick, there is no need to specify initial parameter estimates, and there are no convergence issues. Furthermore the LS fit can itself be used to provide initial parameter estimates for a subsequent NLS fit (self-starting models). The results of an empirical evaluation of the goodness of fit (GoF) of these two models, measured in terms of both MSE and R^2, relative to a two-compartment pharmacokinetic model and the Hayton model are also presented. The GoF was evaluated using both routine clinical breast MRI data and a single high temporal resolution breast MRI data set. The results demonstrate that the linear slope model fits the routine clinical data better than any of the other models and that the two parameter self-starting Ricker model fits the data nearly as well as the three parameter Hayton model. This is also demonstrated by the results for the high temporal data and for several temporally sub-sampled versions of this data.
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两种适合线性最小二乘拟合的乳腺dce mri对比度增强非线性参数模型
本文提供了两个非线性经验参数模型-线性斜率和里克-用于表征动态对比度增强(DCE) MRI的对比度增强。与现有的经验参数模型和药代动力学模型相比,这些模型的优势在于它们可以使用线性最小二乘(LS)进行拟合。这意味着拟合是快速的,不需要指定初始参数估计,也没有收敛问题。此外,LS拟合本身可用于为后续的NLS拟合(自启动模型)提供初始参数估计。本文还介绍了两种模型相对于两室药代动力学模型和Hayton模型的拟合优度(GoF)的经验评估结果,以MSE和R^2来衡量。使用常规临床乳房MRI数据和单一高时间分辨率乳房MRI数据集评估GoF。结果表明,线性斜率模型与常规临床数据的拟合效果较好,两参数自启动Ricker模型与三参数Hayton模型的拟合效果接近。高时间数据和该数据的几个时间次采样版本的结果也证明了这一点。
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