Literature DB >> 20451623

Effects of repeatability measures on results of fMRI sICA: a study on simulated and real resting-state effects.

Jukka J Remes1, Tuomo Starck, Juha Nikkinen, Esa Ollila, Christian F Beckmann, Osmo Tervonen, Vesa Kiviniemi, Olli Silven.   

Abstract

Spatial independent components analysis (sICA) has become a widely applied data-driven method for fMRI data, especially for resting-state studies. These sICA approaches are often based on iterative estimation algorithms and there are concerns about accuracy due to noise. Repeatability measures such as ICASSO, RAICAR and ARABICA have been introduced as remedies but information on their effects on estimates is limited. The contribution of this study was to provide more of such information and test if the repeatability analyses are necessary. We compared FastICA-based ordinary and repeatability approaches concerning mixing vector estimates. Comparisons included original FastICA, FSL4 Melodic FastICA and original and modified ICASSO. The effects of bootstrapping and convergence threshold were evaluated. The results show that there is only moderate improvement due to repeatability measures and only in the bootstrapping case. Bootstrapping attenuated power from time courses of resting-state network related ICs at frequencies higher than 0.1 Hz and made subsets of low frequency oscillations more emphasized IC-wise. The convergence threshold did not have a significant role concerning the accuracy of estimates. The performance results suggest that repeatability measures or strict converge criteria might not be needed in sICA analyses of fMRI data. Consequently, the results in existing sICA fMRI literature are probably valid in this sense. A decreased accuracy of original bootstrapping ICASSO was observed and corrected by using centrotype mixing estimates but the results warrant for thorough evaluations of data-driven methods in general. Also, given the fMRI-specific considerations, further development of sICA methods is strongly encouraged.
Copyright © 2010 Elsevier Inc. All rights reserved.

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Year:  2010        PMID: 20451623     DOI: 10.1016/j.neuroimage.2010.04.268

Source DB:  PubMed          Journal:  Neuroimage        ISSN: 1053-8119            Impact factor:   6.556


  11 in total

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3.  Group differences in MEG-ICA derived resting state networks: Application to major depressive disorder.

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4.  Comparison of functional network connectivity for passive-listening and active-response narrative comprehension in adolescents.

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5.  A SVM-based quantitative fMRI method for resting-state functional network detection.

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7.  Group-ICA Model Order Highlights Patterns of Functional Brain Connectivity.

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8.  Segregation between the parietal memory network and the default mode network: effects of spatial smoothing and model order in ICA.

Authors:  Yang Hu; Jijun Wang; Chunbo Li; Yin-Shan Wang; Zhi Yang; Xi-Nian Zuo
Journal:  Sci Bull (Beijing)       Date:  2016-12-05       Impact factor: 11.780

9.  A Constrained ICA-EMD Model for Group Level fMRI Analysis.

Authors:  Simon Wein; Ana M Tomé; Markus Goldhacker; Mark W Greenlee; Elmar W Lang
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10.  Aberrant functional connectivity and activity in Parkinson's disease and comorbidity with depression based on radiomic analysis.

Authors:  Xulian Zhang; Xuan Cao; Chen Xue; Jingyi Zheng; Shaojun Zhang; Qingling Huang; Weiguo Liu
Journal:  Brain Behav       Date:  2021-03-10       Impact factor: 2.708

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