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Model Selection and Estimation of Multi-Compartment Models in Diffusion MRI with a Rician Noise Model

机译:选型和扩散mRI多室模型的估计与莱斯噪声模型

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摘要

Multi-compartment models in diffusion MRI (dMRI) are used to describe complex white matter fiber architecture of the brain. In this paper, we propose a novel multi-compartment estimation method based on the ball-and-stick model, which is composed of an isotropic diffusion compartment (“ball”) as well as one or more perfectly linear diffusion compartments (“sticks”). To model the noise distribution intrinsic to dMRI measurements, we introduce a Rician likelihood term and estimate the model parameters by means of an Expectation Maximization (EM) algorithm. This paper also addresses the problem of selecting the number of fiber compartments that best fit the data, by introducing a sparsity prior on the volume mixing fractions. This term provides automatic model selection and enables us to discriminate different fiber populations. When applied to simulated data, our method provides accurate estimates of the fiber orientations, diffusivities, and number of compartments, even at low SNR, and outperforms similar methods that rely on a Gaussian noise distribution assumption. We also apply our method to in vivo brain data and show that it can successfully capture complex fiber structures that match the known anatomy.
机译:弥散MRI(dMRI)中的多室模型用于描述大脑的复杂白质纤维结构。在本文中,我们提出了一种基于球棒模型的新型多室估计方法,该方法由各向同性扩散室(“球”)以及一个或多个完美的线性扩散室(“棒”)组成)。为了对dMRI测量固有的噪声分布进行建模,我们引入了Rician似然项,并通过期望最大化(EM)算法估算了模型参数。本文还通过在体积混合分数上引入稀疏性来解决选择最适合数据的纤维室数量的问题。这个术语提供了自动的模型选择,使我们能够区分不同的纤维种群。当应用于模拟数据时,即使在低SNR的情况下,我们的方法也可以提供对光纤方向,扩散率和隔室数量的准确估计,并且优于基于高斯噪声分布​​假设的类似方法。我们还将我们的方法应用于体内大脑数据,并表明它可以成功捕获与已知解剖结构相匹配的复杂纤维结构。

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