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Fast identification of optimal fascicle configurations from standard clinical diffusion MRI using Akaike information criterion

机译:使用Akaike信息标准从标准临床扩散MRI快速识别最佳的束配置

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Analytic multi-compartment models have gained a tremendous popularity in the recent literature for studying the brain white matter microstructure from diffusion MRI. This class of models require the number of compartments to be known in advance. In the white matter however, several non-collinear bundles of axons, termed fascicles, often coexist in a same voxel. Determining the optimal fascicle configuration is a model selection problem. In this paper, we aim at proposing a novel approach to identify such a configuration from clinical diffusion MRI where only few diffusion images can be acquired and time is of the essence. Starting from a set of fitted models with increasing number of fascicles, we use Akaike information criterion to estimate the probability of each candidate model to be the best Kullback-Leibler model. These probabilities are then used to average the different candidate models and output an MCM with optimal fascicle configuration. This strategy is fast and can be adapted to any multi-compartment model. We illustrate its implementation with the ball-and-stick model and show that we obtain better results on single-shell low angular resolution diffusion MRI, compared to the state-of-the-art automatic relevance detection method, in a shorter processing time.
机译:在最近的文献中,通过扩散MRI研究脑白质的微观结构,解析多室模型已获得了极大的普及。此类模型需要事先知道隔室的数量。然而在白质中,几个非共线的轴突束(称为束)通常共存于同一体素中。确定最佳的束配置是模型选择的问题。在本文中,我们旨在提出一种从临床扩散MRI识别这种配置的新颖方法,其中仅能获取很少的扩散图像,而时间是至关重要的。从增加分册数量的一组拟合模型开始,我们使用Akaike信息准则来估计每个候选模型成为最佳Kullback-Leibler模型的可能性。然后,将这些概率用于平均不同的候选模型,并输出具有最佳束配置的MCM。这种策略是快速的,并且可以适用于任何多隔室模型。我们用球棒模型说明了它的实现方式,并表明与最新的自动相关性检测方法相比,在单壳低角分辨率扩散MRI上我们可以在更短的处理时间内获得更好的结果。

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