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Statistical parametric mapping of FMRI data using sparse dictionary learning

机译:使用稀疏字典学习的FMRI数据的统计参数映射

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Statistical parametric mapping (SPM) of functional magnetic resonance imaging (fMRI) uses a canonical hemodynamic response function (HRF) to construct the design matrix within the general linear model (GLM) framework. Recently, there has been many research on data-driven method on fMRI data, such as the independence component analysis (ICA). The main weakness of ICA for fMRI is its restrictive assumption, especially independence. Furthermore, recent study demonstrated that sparsity is more important than independency in ICA analysis for fMRI. Hence, we propose sparse learning algorithm, such as K-SVD, as an alternative, that decomposes the dictionary-atoms using sparsity rather than independence of the components. For the fMRI finger tapping task data, we employed the K-SVD algorithm to extract the time-course signal atoms of brain activation. The activation maps using trained dictionary as a design matrix showed tightly localized signals in a small set of brain areas.
机译:功能磁共振成像(fMRI)的统计参数映射(SPM)使用规范的血液动力学响应函数(HRF)在通用线性模型(GLM)框架内构造设计矩阵。近年来,对fMRI数据的数据驱动方法进行了许多研究,例如独立成分分析(ICA)。 ICA在功能磁共振成像中的主要缺点是限制性假设,尤其是独立性。此外,最近的研究表明,在ICA分析fMRI中,稀疏性比独立性更重要。因此,我们提出了一种稀疏学习算法(例如K-SVD)作为替代方案,该算法使用稀疏性而不是组件的独立性来分解字典原子。对于fMRI手指敲击任务数据,我们采用了K-SVD算法来提取大脑激活的时程信号原子。使用受过训练的词典作为设计矩阵的激活图显示了在少数大脑区域中紧密定位的信号。

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