TY - JOUR
T1 - Reliable intrinsic connectivity networks
T2 - Test-retest evaluation using ICA and dual regression approach
AU - Zuo, Xi Nian
AU - Kelly, Clare
AU - Adelstein, Jonathan S.
AU - Klein, Donald F.
AU - Castellanos, F. Xavier
AU - Milham, Michael P.
N1 - Funding Information:
This study was supported, in part, by grants from NIMH ( R01MH081218 ), and the Stavros S. Niarchos Foundation to F.X.C., and from the Leon Levy Foundation to M.P.M.; and by gifts from Joseph P. Healey, Linda and Richard Schaps, and Jill and Bob Smith to F.X.C. We desire to express our thanks to Dr. Bharat B. Biswal for helpful advice and Dr. Christian F. Beckmann for invaluable discussions on the dual regression method. Dr. Maarten Mennes helped to improve the readability of the manuscript.
PY - 2010/2/1
Y1 - 2010/2/1
N2 - Functional connectivity analyses of resting-state fMRI data are rapidly emerging as highly efficient and powerful tools for in vivo mapping of functional networks in the brain, referred to as intrinsic connectivity networks (ICNs). Despite a burgeoning literature, researchers continue to struggle with the challenge of defining computationally efficient and reliable approaches for identifying and characterizing ICNs. Independent component analysis (ICA) has emerged as a powerful tool for exploring ICNs in both healthy and clinical populations. In particular, temporal concatenation group ICA (TC-GICA) coupled with a back-reconstruction step produces participant-level resting state functional connectivity maps for each group-level component. The present work systematically evaluated the test-retest reliability of TC-GICA derived RSFC measures over the short-term (< 45 min) and long-term (5-16 months). Additionally, to investigate the degree to which the components revealed by TC-GICA are detectable via single-session ICA, we investigated the reproducibility of TC-GICA findings. First, we found moderate-to-high short- and long-term test-retest reliability for ICNs derived by combining TC-GICA and dual regression. Exceptions to this finding were limited to physiological- and imaging-related artifacts. Second, our reproducibility analyses revealed notable limitations for template matching procedures to accurately detect TC-GICA based components at the individual scan level. Third, we found that TC-GICA component's reliability and reproducibility ranks are highly consistent. In summary, TC-GICA combined with dual regression is an effective and reliable approach to exploratory analyses of resting state fMRI data.
AB - Functional connectivity analyses of resting-state fMRI data are rapidly emerging as highly efficient and powerful tools for in vivo mapping of functional networks in the brain, referred to as intrinsic connectivity networks (ICNs). Despite a burgeoning literature, researchers continue to struggle with the challenge of defining computationally efficient and reliable approaches for identifying and characterizing ICNs. Independent component analysis (ICA) has emerged as a powerful tool for exploring ICNs in both healthy and clinical populations. In particular, temporal concatenation group ICA (TC-GICA) coupled with a back-reconstruction step produces participant-level resting state functional connectivity maps for each group-level component. The present work systematically evaluated the test-retest reliability of TC-GICA derived RSFC measures over the short-term (< 45 min) and long-term (5-16 months). Additionally, to investigate the degree to which the components revealed by TC-GICA are detectable via single-session ICA, we investigated the reproducibility of TC-GICA findings. First, we found moderate-to-high short- and long-term test-retest reliability for ICNs derived by combining TC-GICA and dual regression. Exceptions to this finding were limited to physiological- and imaging-related artifacts. Second, our reproducibility analyses revealed notable limitations for template matching procedures to accurately detect TC-GICA based components at the individual scan level. Third, we found that TC-GICA component's reliability and reproducibility ranks are highly consistent. In summary, TC-GICA combined with dual regression is an effective and reliable approach to exploratory analyses of resting state fMRI data.
KW - Dual regression
KW - ICA
KW - Intrinsic connectivity network
KW - Resting state
KW - Test-retest reliability
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U2 - 10.1016/j.neuroimage.2009.10.080
DO - 10.1016/j.neuroimage.2009.10.080
M3 - Article
C2 - 19896537
AN - SCOPUS:71849096723
SN - 1053-8119
VL - 49
SP - 2163
EP - 2177
JO - NeuroImage
JF - NeuroImage
IS - 3
ER -