首页> 外文期刊>Magnetic resonance in medicine: official journal of the Society of Magnetic Resonance in Medicine >Constrained maximum likelihood estimation of the diffusion kurtosis tensor using a Rician noise model
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Constrained maximum likelihood estimation of the diffusion kurtosis tensor using a Rician noise model

机译:使用Rician噪声模型的扩散峰度张量的约束最大似然估计

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A computational framework to obtain an accurate quantification of the Gaussian and non-Gaussian component of water molecules' diffusion through brain tissues with diffusion kurtosis imaging, is presented. The diffusion kurtosis imaging model quantifies the kurtosis, the degree of non-Gaussianity, on a direction dependent basis, constituting a higher order diffusion kurtosis tensor, which is estimated in addition to the well-known diffusion tensor. To reconcile with the physical phenomenon of molecular diffusion, both tensor estimates should lie within a physically acceptable range. Otherwise, clinically and artificially significant changes in diffusion (kurtosis) parameters might be confounded. To guarantee physical relevance, we here suggest to estimate both diffusional tensors by maximizing the joint likelihood function of all Rician distributed diffusion weighted images given the diffusion kurtosis imaging model while imposing a set of nonlinear constraints. As shown in this study, correctly accounting for the Rician noise structure is necessary to avoid significant overestimation of the kurtosis values. The performance of the constrained estimator was evaluated and compared to more commonly used strategies during simulations. Human brain data were used to emphasize the need for constrained estimators as not imposing the constraints give rise to constraint violations in about 70% of the brain voxels.
机译:提出了一种计算框架,用于利用扩散峰度成像准确量化水分子通过脑组织扩散的高斯和非高斯分量。扩散峰度成像模型在与方向相关的基础上对峰度(非高斯程度)进行量化,构成了一个更高阶的扩散峰度张量,除已知的扩散张量外,还对它进行了估算。为了与分子扩散的物理现象相一致,两个张量估计值都应在物理可接受的范围内。否则,可能会混淆扩散参数(峰度)的临床和人工显着变化。为了保证物理相关性,我们建议在给定扩散峰度成像模型的同时,通过施加一组非线性约束,通过最大化所有Rician分布的扩散加权图像的联合似然函数来估计两个扩散张量。如本研究所示,必须正确说明Rician噪声结构,以避免显着高估峰度值。评估了约束估计器的性能,并将其与模拟过程中更常用的策略进行了比较。人类的大脑数据被用来强调对约束估计器的需求,因为不施加约束会导致约70%的大脑体素违反约束。

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