Validation of Shared and Specific Independent Component Analysis (SSICA) for between-group comparisons in fMRI
Independent component analysis (ICA) has been widely used to study functional magnetic resonance imaging (fMRI) connectivity. However, the application of ICA in multi-group designs is not straightforward. We have recently developed a new method named shared and specific independent component analysi...
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doaj-1ab00a67ff914e0180da0ba59c2d4ffe2020-11-24T23:16:52ZengFrontiers Media S.A.Frontiers in Neuroscience1662-453X2016-09-011010.3389/fnins.2016.00417214374Validation of Shared and Specific Independent Component Analysis (SSICA) for between-group comparisons in fMRIMona Maneshi0Shahabeddin Vahdat1Shahabeddin Vahdat2Jean Gotman3Christophe Grova4Christophe Grova5Christophe Grova6Montreal Neurological Institute and Hospital, McGill UniversityFunctional Neuroimaging Unit, Centre de Recherché IUGMPsychology Department, McGill UniversityMontreal Neurological Institute and Hospital, McGill UniversityMontreal Neurological Institute and Hospital, McGill UniversityMultimodal Functional Imaging Laboratory, Biomedical Engineering Department, McGill UniversityPhysics Department, PERFORM centre, Concordia UniversityIndependent component analysis (ICA) has been widely used to study functional magnetic resonance imaging (fMRI) connectivity. However, the application of ICA in multi-group designs is not straightforward. We have recently developed a new method named shared and specific independent component analysis (SSICA) to perform between-group comparisons in the ICA framework. SSICA is sensitive to extract those components which represent a significant difference in functional connectivity between groups or conditions, i.e. components that could be considered specific for a group or condition. Here, we investigated the performance of SSICA on realistic simulations, and task fMRI data and compared the results with one of the state-of-the-art group ICA approaches to infer between-group differences. We examined SSICA robustness with respect to the number of allowable extracted specific components and between-group orthogonality assumptions. Furthermore, we proposed a modified formulation of the back-reconstruction method to generate group-level t-statistics maps based on SSICA results. We also evaluated the consistency and specificity of the extracted specific components by SSICA. The results on realistic simulated and real fMRI data showed that SSICA outperforms the regular group ICA approach in terms of reconstruction and classification performance. We demonstrated that SSICA is a powerful data-driven approach to detect patterns of differences in functional connectivity across groups/conditions, particularly in model-free designs such as resting-state fMRI. Our findings in task fMRI show that SSICA confirms results of the general linear model (GLM) analysis and when combined with clustering analysis, it complements GLM findings by providing additional information regarding the reliability and specificity of networks.http://journal.frontiersin.org/Journal/10.3389/fnins.2016.00417/fullfMRIStatistical Modelingindependent component analysis (ICA)functional connectivity (FC)between-groups comparison |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Mona Maneshi Shahabeddin Vahdat Shahabeddin Vahdat Jean Gotman Christophe Grova Christophe Grova Christophe Grova |
spellingShingle |
Mona Maneshi Shahabeddin Vahdat Shahabeddin Vahdat Jean Gotman Christophe Grova Christophe Grova Christophe Grova Validation of Shared and Specific Independent Component Analysis (SSICA) for between-group comparisons in fMRI Frontiers in Neuroscience fMRI Statistical Modeling independent component analysis (ICA) functional connectivity (FC) between-groups comparison |
author_facet |
Mona Maneshi Shahabeddin Vahdat Shahabeddin Vahdat Jean Gotman Christophe Grova Christophe Grova Christophe Grova |
author_sort |
Mona Maneshi |
title |
Validation of Shared and Specific Independent Component Analysis (SSICA) for between-group comparisons in fMRI |
title_short |
Validation of Shared and Specific Independent Component Analysis (SSICA) for between-group comparisons in fMRI |
title_full |
Validation of Shared and Specific Independent Component Analysis (SSICA) for between-group comparisons in fMRI |
title_fullStr |
Validation of Shared and Specific Independent Component Analysis (SSICA) for between-group comparisons in fMRI |
title_full_unstemmed |
Validation of Shared and Specific Independent Component Analysis (SSICA) for between-group comparisons in fMRI |
title_sort |
validation of shared and specific independent component analysis (ssica) for between-group comparisons in fmri |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Neuroscience |
issn |
1662-453X |
publishDate |
2016-09-01 |
description |
Independent component analysis (ICA) has been widely used to study functional magnetic resonance imaging (fMRI) connectivity. However, the application of ICA in multi-group designs is not straightforward. We have recently developed a new method named shared and specific independent component analysis (SSICA) to perform between-group comparisons in the ICA framework. SSICA is sensitive to extract those components which represent a significant difference in functional connectivity between groups or conditions, i.e. components that could be considered specific for a group or condition. Here, we investigated the performance of SSICA on realistic simulations, and task fMRI data and compared the results with one of the state-of-the-art group ICA approaches to infer between-group differences. We examined SSICA robustness with respect to the number of allowable extracted specific components and between-group orthogonality assumptions. Furthermore, we proposed a modified formulation of the back-reconstruction method to generate group-level t-statistics maps based on SSICA results. We also evaluated the consistency and specificity of the extracted specific components by SSICA. The results on realistic simulated and real fMRI data showed that SSICA outperforms the regular group ICA approach in terms of reconstruction and classification performance. We demonstrated that SSICA is a powerful data-driven approach to detect patterns of differences in functional connectivity across groups/conditions, particularly in model-free designs such as resting-state fMRI. Our findings in task fMRI show that SSICA confirms results of the general linear model (GLM) analysis and when combined with clustering analysis, it complements GLM findings by providing additional information regarding the reliability and specificity of networks. |
topic |
fMRI Statistical Modeling independent component analysis (ICA) functional connectivity (FC) between-groups comparison |
url |
http://journal.frontiersin.org/Journal/10.3389/fnins.2016.00417/full |
work_keys_str_mv |
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