2011
DOI: 10.1109/tmi.2010.2097275
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A Data-Driven Sparse GLM for fMRI Analysis Using Sparse Dictionary Learning With MDL Criterion

Abstract: We propose a novel statistical analysis method for functional magnetic resonance imaging (fMRI) to overcome the drawbacks of conventional data-driven methods such as the independent component analysis (ICA). Although ICA has been broadly applied to fMRI due to its capacity to separate spatially or temporally independent components, the assumption of independence has been challenged by recent studies showing that ICA does not guarantee independence of simultaneously occurring distinct activity patterns in the b… Show more

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Cited by 153 publications
(62 citation statements)
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“…(1) during the optimization. It should be noted that we employ the same assumption as in previous studies (Li et al, 2009; Lee et al, 2011; Li et al, 2012; Oikonomou et al, 2012; Lee et al, 2013; Abolghasemi et al, 2013) that the atomic components (which are dictionary atoms in D in our work) involved in each voxel’s fMRI signal are a few major ones and the neural integration of those components is linear. In this work, the value of λ and dictionary size m were determined experimentally ( λ =0.1, k =400) (Lv et al, 2014a; Lv et al, 2014b).…”
Section: Methodsmentioning
confidence: 99%
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“…(1) during the optimization. It should be noted that we employ the same assumption as in previous studies (Li et al, 2009; Lee et al, 2011; Li et al, 2012; Oikonomou et al, 2012; Lee et al, 2013; Abolghasemi et al, 2013) that the atomic components (which are dictionary atoms in D in our work) involved in each voxel’s fMRI signal are a few major ones and the neural integration of those components is linear. In this work, the value of λ and dictionary size m were determined experimentally ( λ =0.1, k =400) (Lv et al, 2014a; Lv et al, 2014b).…”
Section: Methodsmentioning
confidence: 99%
“…Inspired by the successes of using sparse representation in pattern recognition (Mairal et al, 2009; Kreutz-Delgado et al, 2003; Aharon et al, 2006; Lewicki and Sejnowski 2000) and in brain functional imaging analysis (Lee et al, 2011; Li et al, 2012; Yamashita et al, 2008; Li et al, 2009; Lv et al, 2014a; Lv et al, 2014b), in this paper, we propose a novel two-stage sparse representation framework to obtain a groupwise characterization of fMRI signals obtained during various tasks (or during resting-state), which have the capability of addressing the abovementioned three challenges. Specifically, for the first challenge, the sparse-constrained dictionary learning method has been algorithmically shown to be capable of identifying the representative components from the given fMRI dataset as the activation maps from the fMRI study are usually with little overlapping ( Daubechies et al, 2009).…”
Section: Introductionmentioning
confidence: 99%
“…The algorithm alternates updating u (randomly initialized before the first iteration) and v until the convergence of u: (2) One dictionary basis [u, v] can be estimated after the convergence of Eq. 2.…”
Section: A Algorithm Of Rank-1 Matrix Decomposition With Sparse Consmentioning
confidence: 99%
“…In the current field of functional neuroimaging research, one of the most effective approaches for fMRI data analysis is the functional network decomposition based on Dictionary Learning methods [1,2]. Dictionary learning derives a set of vectors that sparsely code the input fMRI data.…”
Section: Introductionmentioning
confidence: 99%
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