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A Sparse Bayesian Learning Algorithm for White Matter Parameter Estimation from Compressed Multi-shell Diffusion MRI

机译:压缩多壳扩散核磁共振白质参数估计的稀疏贝叶斯学习算法

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We propose a sparse Bayesian learning algorithm for improved estimation of white matter fiber parameters from compressed (under-sampled q-space) multi-shell diffusion MRI data. The multi-shell data is represented in a dictionary form using a non-monoexponential decay model of diffusion, based on continuous gamma distribution of diffusivities. The fiber volume fractions with predefined orientations, which are the unknown parameters, form the dictionary weights. These unknown parameters are estimated with a linear un-mixing framework, using a sparse Bayesian learning algorithm. A localized learning of hyper-parameters at each voxel and for each possible fiber orientations improves the parameter estimation. Our experiments using synthetic data from the ISBI 2012 HARDI reconstruction challenge and in-vivo data from the Human Connectome Project demonstrate the improvements.
机译:我们提出了一种稀疏贝叶斯学习算法,用于从压缩(欠采样q空间)多壳扩散MRI数据中改善对白质纤维参数的估计。基于扩散率的连续伽马分布,使用非扩散的非指数衰减模型以字典形式表示多壳数据。具有未知方向的预定义方向的纤维体积分数构成字典权重。使用稀疏贝叶斯学习算法,通过线性解混框架估计这些未知参数。在每个体素处以及对于每个可能的光纤方向的超参数的局部学习改善了参数估计。我们使用来自ISBI 2012 HARDI重建挑战的合成数据和来自人类Connectome项目的体内数据进行的实验证明了这些改进。

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