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Towards data-driven group inferences of resting-state fMRI data in rodents: Comparison of group ICA, GIG-ICA, and IVA-GL.
To, Xuan Vinh; Vegh, Viktor; Nasrallah, Fatima A.
Affiliation
  • To XV; The Queensland Brain Institute, The University of Queensland, Australia.
  • Vegh V; The Centre for Advanced Imaging, The University of Queensland, Australia.
  • Nasrallah FA; The Queensland Brain Institute, The University of Queensland, Australia; The Centre for Advanced Imaging, The University of Queensland, Australia. Electronic address: f.nasrallah@uq.edu.au.
J Neurosci Methods ; 366: 109411, 2022 Jan 15.
Article in En | MEDLINE | ID: mdl-34793852
ABSTRACT

BACKGROUND:

A trend in the development of resting-state fMRI (rsfMRI) data analysis is the drive towards more data-driven methods. Group Independent Component Analysis (GICA) is a well-proven data-driven method for performing fMRI group analysis, though not without issues, especially the back-reconstruction from group-level independent components to individual-level components. Group information-guided ICA (GIG-ICA) and Independent Vector Analysis (IVA) are recent extensions of GICA that were shown to outperform GICA in the identification of unique rsfMRI biomarkers in psychiatric conditions. NEW

METHOD:

In this work, GICA, GIG-ICA, and IVA-GL analysis methods were applied to rsfMRI data acquired from 9 mice under different doses of medetomidine (0.1 - 0.3 mg/kg/h) in the before and after forepaw stimulation, and their performance was compared to determine whether GIG-ICA and IVA-GL outperform GICA in identifying robust and reliable resting-state networks in the rodent brain.

RESULTS:

Our results showed IVA-GL method had certain desirable performance characteristics over the other two methods under minimal data pre-processing and data-driven assumptions in application to analysis of mouse resting-state functional MRI. COMPARISON WITH EXISTING

METHODS:

IVA-GL provides better stability towards detecting group differences at different model order assumptions and performed better at separating data well-defined and functionally reasonable components in mouse resting-state fMRI. At higher model order and more likely functional component assumptions, GIG-ICA and IVA-GL were found to have greater sensitivity at detecting functional connectivity changes due to physiological challenges compared to GICA.

CONCLUSIONS:

This study indicates that IVA-GL yields better detection of resting-state networks in the rodent brain compared to other ICA methods and a promising data-driven analysis method for rodent rsfMRI.
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Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Rodentia / Magnetic Resonance Imaging Type of study: Prognostic_studies Limits: Animals Language: En Journal: J Neurosci Methods Year: 2022 Document type: Article Affiliation country: Australia

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Rodentia / Magnetic Resonance Imaging Type of study: Prognostic_studies Limits: Animals Language: En Journal: J Neurosci Methods Year: 2022 Document type: Article Affiliation country: Australia