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A computational diffusion MRI and parametric dictionary learning framework for modeling the diffusion signal and its features

机译:用于对扩散信号及其特征建模的计算扩散MRI和参数字典学习框架

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摘要

In this work, we first propose an original and efficient computational framework to model continuous diffusion MRI (dMRI) signals and analytically recover important diffusion features such as the Ensemble Average Propagator (EAP) and the Orientation Distribution Function (ODF). Then, we develop an efficient parametric dictionary learning algorithm and exploit the sparse property of a well-designed dictionary to recover the diffusion signal and its features with a reduced number of measurements. The properties and potentials of the technique are demonstrated using various simulations on synthetic data and on human brain data acquired from 7T and 3T scanners. It is shown that the technique can clearly recover the dMRI signal and its features with a much better accuracy compared to state-of-the-art approaches, even with a small and reduced number of measurements. In particular, we can accurately recover the ODF in regions of multiple fiber crossing, which could open new perspectives for some dMRI applications such as fiber tractography.
机译:在这项工作中,我们首先提出一个新颖而有效的计算框架,以对连续扩散MRI(dMRI)信号进行建模,并分析性地恢复重要的扩散特征,例如整体平均传播器(EAP)和方向分布函数(ODF)。然后,我们开发了一种有效的参数字典学习算法,并利用精心设计的字典的稀疏特性来以较少的测量次数恢复扩散信号及其特征。通过对合成数据以及从7T和3T扫描仪获取的人脑数据进行各种模拟,证明了该技术的特性和潜力。结果表明,与最先进的方法相比,该技术可以清晰地恢复dMRI信号及其特征,即使测量数量减少且数量减少。特别是,我们可以在多个光纤交叉区域准确地恢复ODF,这可以为某些dMRI应用(例如纤维束成像)开辟新的前景。

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