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Non-negative matrix factorization of multimodal MRI, fMRI and phenotypic data reveals differential changes in default mode subnetworks in ADHD

Authors :
Mark S. Cohen
Virginia S. Haynes
Wesley T. Kerr
Ariana Anderson
Ying Nian Wu
Alan L. Yuille
Jesse A. Brown
Jianwen Xie
Pamela K. Douglas
Source :
Anderson, A; Douglas, PK; Kerr, WT; Haynes, VS; Yuille, AL; Xie, J; et al.(2014). Non-negative matrix factorization of multimodal MRI, fMRI and phenotypic data reveals differential changes in default mode subnetworks in ADHD. NeuroImage, 102(P1), 207-219. doi: 10.1016/j.neuroimage.2013.12.015. UCLA: Retrieved from: http://www.escholarship.org/uc/item/9dk536sq, Anderson, A; Douglas, PK; Kerr, WT; Haynes, VS; Yuille, AL; Xie, J; et al.(2014). Non-negative matrix factorization of multimodal MRI, fMRI and phenotypic data reveals differential changes in default mode subnetworks in ADHD. NeuroImage. doi: 10.1016/j.neuroimage.2013.12.015. UCLA: Retrieved from: http://www.escholarship.org/uc/item/3h19v5dg, NeuroImage, vol 102, iss P1
Publication Year :
2013

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 individual. Topic modeling, an unsupervised generative model, has been used to map seemingly disparate features to a common domain. We use Non-Negative Matrix Factorization (NMF) to infer the latent structure of multimodal ADHD data containing fMRI, MRI, phenotypic and behavioral measurements. We compare four different NMF algorithms and find that the sparsest decomposition is also the most differentiating between ADHD and healthy patients. We identify dimensions that map to interpretable, recognizable dimensions such as motion, default mode network activity, and other such features of the input data. For example, structural and functional graph theory features related to default mode subnetworks clustered with the ADHD-Inattentive diagnosis. Structural measurements of the default mode network (DMN) regions such as the posterior cingulate, precuneus, and parahippocampal regions were all related to the ADHD-Inattentive diagnosis. Ventral DMN subnetworks may have more functional connections in ADHD-I, while dorsal DMN may have less. ADHD topics are dependent upon diagnostic site, suggesting diagnostic differences across geographic locations. We assess our findings in light of the ADHD-200 classification competition, and contrast our unsupervised, nominated topics with previously published supervised learning methods. Finally, we demonstrate the validity of these latent variables as biomarkers by using them for classification of ADHD in 730 patients. Cumulatively, this manuscript addresses how multimodal data in ADHD can be interpreted by latent dimensions. © 2013 Elsevier Inc. All rights reserved.

Details

ISSN :
10959572
Database :
OpenAIRE
Journal :
NeuroImage
Accession number :
edsair.doi.dedup.....61425ab785cc29cb1082c225900417cf
Full Text :
https://doi.org/10.1016/j.neuroimage.2013.12.015.