A Baseline for the Multivariate Comparison of Resting-State Networks

Elena A. Allen(Mind Research Network), Erik B. Erhardt(Mind Research Network), Eswar Damaraju(Mind Research Network), William Gruner(Mind Research Network), J.M. Segall(Mind Research Network), Rogers F. Silva(Mind Research Network), Martin Havlíček(Mind Research Network), Srinivas Rachakonda(Mind Research Network), Jill Fries(Mind Research Network), Ravi Kalyanam(Mind Research Network), Andrew M. Michael(Mind Research Network), Arvind Caprihan(Mind Research Network), Jessica A. Turner(Mind Research Network), Tom Eichele(University of Bergen), Steven Adelsheim(University of New Mexico), Angela D. Bryan(Mind Research Network), Juan Bustillo(University of New Mexico), Vincent P. Clark(Mind Research Network), Sarah W. Feldstein Ewing(Mind Research Network), Francesca M. Filbey(Mind Research Network), Corey C. Ford(University of New Mexico), Kent E. Hutchison(Mind Research Network), Rex E. Jung(Mind Research Network), Kent A. Kiehl(Mind Research Network), Piyadasa Kodituwakku(University of New Mexico), Yuko M. Komesu(University of New Mexico), Andrew R. Mayer(Mind Research Network), Godfrey D. Pearlson(Yale University), J. P. Phillips(Mind Research Network), Joseph Sadek(University of New Mexico), Michael C. Stevens(Yale University), Ursina Teuscher(Mind Research Network), Robert J. Thoma(Mind Research Network), Vince D. Calhoun(Mind Research Network)
Frontiers in Systems Neuroscience
January 1, 2011
Cited by 1,346Open Access
Full Text

Abstract

As the size of functional and structural MRI datasets expands, it becomes increasingly important to establish a baseline from which diagnostic relevance may be determined, a processing strategy that efficiently prepares data for analysis, and a statistical approach that identifies important effects in a manner that is both robust and reproducible. In this paper, we introduce a multivariate analytic approach that optimizes sensitivity and reduces unnecessary testing. We demonstrate the utility of this mega-analytic approach by identifying the effects of age and gender on the resting-state networks (RSNs) of 603 healthy adolescents and adults (mean age: 23.4 years, range: 12-71 years). Data were collected on the same scanner, preprocessed using an automated analysis pipeline based in SPM, and studied using group independent component analysis. RSNs were identified and evaluated in terms of three primary outcome measures: time course spectral power, spatial map intensity, and functional network connectivity. Results revealed robust effects of age on all three outcome measures, largely indicating decreases in network coherence and connectivity with increasing age. Gender effects were of smaller magnitude but suggested stronger intra-network connectivity in females and more inter-network connectivity in males, particularly with regard to sensorimotor networks. These findings, along with the analysis approach and statistical framework described here, provide a useful baseline for future investigations of brain networks in health and disease.


Related Papers

No related papers found

Powered by citation graph analysis