2014
DOI: 10.1016/j.neuroimage.2013.12.015
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Non-negative matrix factorization of multimodal MRI, fMRI and phenotypic data reveals differential changes in default mode subnetworks in ADHD

Abstract: In the multimodal neuroimaging framework, data on a single subject are collected from inherently different sources such as functional MRI, structural MRI, behavioral and/or phenotypic information. The information each source provides is not independent; a subset of features from each modality maps to one or more common latent dimensions, which can be interpreted using generative models. These latent dimensions, or “topics,” provide a sparse summary of the generative process behind the features for each individ… Show more

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Cited by 121 publications
(90 citation statements)
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References 65 publications
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“…Utilizing of LOOCV strategy could get stable weights of each feature and the weights got from the training dataset were more close to the whole dataset (Anderson et al, 2013). However the classification performance might be biased by overfitting (Hawkins, 2004).…”
Section: Evaluation Of the Performance Of The Classifiermentioning
confidence: 99%
See 1 more Smart Citation
“…Utilizing of LOOCV strategy could get stable weights of each feature and the weights got from the training dataset were more close to the whole dataset (Anderson et al, 2013). However the classification performance might be biased by overfitting (Hawkins, 2004).…”
Section: Evaluation Of the Performance Of The Classifiermentioning
confidence: 99%
“…On the expectation that the classification model and weights are closely resemblant in each trial, we applied leave-one-out validation (LOOCV) strategy to evaluate the performance of the classifier as only one of the 240 subjects were left out in each LOOCV trial (Anderson et al, 2013;Schölkopf and Smola, 2002). In brief, suppose there were n samples in total.…”
Section: Evaluation Of the Performance Of The Classifiermentioning
confidence: 99%
“…Independent component analysis (ICA) is an interesting data-driven tool that has been applied[15] to identify maximally independent spatial/temporal maps from BOLD time series. Non-negative matrix factorization (NMF) methods[16], [17] are increasingly used to extract multiple potentially overlapping brain networks by decomposing data matrices into linear combinations of non-negative basis functions. Other matrix decompositions methods such as Principal Component Analysis (PCA)[18] have been to used to extract intrinsic structure in the data by maximizing the amount of variance explained.…”
Section: Introductionmentioning
confidence: 99%
“…Instead, the challenge provided an initial milestone of progress. Importantly, the ADHD-200 initiative has also supported numerous novel applications of analytic algorithms (46-57). As summarized elsewhere (45), neuroimaging is far from attaining psychiatric clinical utility, but initial progress is being made.…”
mentioning
confidence: 99%