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Home / An evaluation of independent component analyses with an application to resting-state fMRI.

An evaluation of independent component analyses with an application to resting-state fMRI.

TitleAn evaluation of independent component analyses with an application to resting-state fMRI.
Publication TypeJournal Article
Year of Publication2014
AuthorsRisk BB, Matteson DS, Ruppert D, Eloyan A, Caffo BS
JournalBiometrics
Volume70
Issue1
Pagination224-36
Date Published2014 Mar
ISSN1541-0420
KeywordsAdolescent, Algorithms, Attention Deficit Disorder with Hyperactivity, brain mapping, Child, Child, Preschool, Computer Simulation, Humans, Magnetic Resonance Imaging, Models, Statistical, Principal Component Analysis
Abstract

We examine differences between independent component analyses (ICAs) arising from different assumptions, measures of dependence, and starting points of the algorithms. ICA is a popular method with diverse applications including artifact removal in electrophysiology data, feature extraction in microarray data, and identifying brain networks in functional magnetic resonance imaging (fMRI). ICA can be viewed as a generalization of principal component analysis (PCA) that takes into account higher-order cross-correlations. Whereas the PCA solution is unique, there are many ICA methods-whose solutions may differ. Infomax, FastICA, and JADE are commonly applied to fMRI studies, with FastICA being arguably the most popular. Hastie and Tibshirani (2003) demonstrated that ProDenICA outperformed FastICA in simulations with two components. We introduce the application of ProDenICA to simulations with more components and to fMRI data. ProDenICA was more accurate in simulations, and we identified differences between biologically meaningful ICs from ProDenICA versus other methods in the fMRI analysis. ICA methods require nonconvex optimization, yet current practices do not recognize the importance of, nor adequately address sensitivity to, initial values. We found that local optima led to dramatically different estimates in both simulations and group ICA of fMRI, and we provide evidence that the global optimum from ProDenICA is the best estimate. We applied a modification of the Hungarian (Kuhn-Munkres) algorithm to match ICs from multiple estimates, thereby gaining novel insights into how brain networks vary in their sensitivity to initial values and ICA method.

DOI10.1111/biom.12111
Alternate JournalBiometrics
PubMed ID24350655
PubMed Central IDPMC3954232
Grant ListP41 EB015909 / EB / NIBIB NIH HHS / United States
P41EB015909 / EB / NIBIB NIH HHS / United States
R01 EB012547 / EB / NIBIB NIH HHS / United States
R01 NS060910 / NS / NINDS NIH HHS / United States
R01EB012547 / EB / NIBIB NIH HHS / United States
R01NS060910 / NS / NINDS NIH HHS / United States
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