Diffusion Tensor Estimation by Maximizing Rician Likelihood.

Bennett Landman, Pierre-Louis Bazin, Jerry Prince
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引用次数: 46

Abstract

Diffusion tensor imaging (DTI) is widely used to characterize white matter in health and disease. Previous approaches to the estimation of diffusion tensors have either been statistically suboptimal or have used Gaussian approximations of the underlying noise structure, which is Rician in reality. This can cause quantities derived from these tensors - e.g., fractional anisotropy and apparent diffusion coefficient - to diverge from their true values, potentially leading to artifactual changes that confound clinically significant ones. This paper presents a novel maximum likelihood approach to tensor estimation, denoted Diffusion Tensor Estimation by Maximizing Rician Likelihood (DTEMRL). In contrast to previous approaches, DTEMRL considers the joint distribution of all observed data in the context of an augmented tensor model to account for variable levels of Rician noise. To improve numeric stability and prevent non-physical solutions, DTEMRL incorporates a robust characterization of positive definite tensors and a new estimator of underlying noise variance. In simulated and clinical data, mean squared error metrics show consistent and significant improvements from low clinical SNR to high SNR. DTEMRL may be readily supplemented with spatial regularization or a priori tensor distributions for Bayesian tensor estimation.

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最大似然扩散张量估计。
扩散张量成像(DTI)被广泛用于表征健康和疾病中的白质。以前的扩散张量估计方法要么在统计上是次优的,要么使用了底层噪声结构的高斯近似,这在现实中是Rician的。这可能会导致从这些张量导出的量——例如分数各向异性和表观扩散系数——偏离其真实值,可能导致混淆临床意义的人为变化。本文提出了一种新的张量估计的最大似然方法,称为最大Rician似然扩散张量估计(DTEMRL)。与以前的方法相比,DTEMRL在增广张量模型的背景下考虑了所有观测数据的联合分布,以考虑不同水平的Rician噪声。为了提高数值稳定性和防止非物理解,DTEMRL结合了正定张量的鲁棒特性和潜在噪声方差的新估计量。在模拟和临床数据中,均方误差度量显示出从低临床SNR到高SNR的一致且显著的改进。DTEMRL可以容易地用空间正则化或用于贝叶斯张量估计的先验张量分布来补充。
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