Back to Search
Start Over
A conditional Granger causality model approach for group analysis in functional magnetic resonance imaging
- Source :
- Magnetic Resonance Imaging. 29:418-433
- Publication Year :
- 2011
- Publisher :
- Elsevier BV, 2011.
-
Abstract
- Granger causality model (GCM) derived from multivariate vector autoregressive models of data has been employed for identifying effective connectivity in the human brain with functional MR imaging (fMRI) and to reveal complex temporal and spatial dynamics underlying a variety of cognitive processes. In the most recent fMRI effective connectivity measures, pairwise GCM has commonly been applied based on single voxel values or average values from special brain areas at the group level. Although a few novel conditional GCM methods have been proposed to quantify the connections between brain areas, our study is the first to propose a viable standardized approach for group analysis of an fMRI data with GCM. To compare the effectiveness of our approach with traditional pairwise GCM models, we applied a well-established conditional GCM to pre-selected time series of brain regions resulting from general linear model (GLM) and group spatial kernel independent component analysis (ICA) of an fMRI dataset in the temporal domain. Datasets consisting of one task-related and one resting-state fMRI were used to investigate connections among brain areas with the conditional GCM method. With the GLM detected brain activation regions in the emotion related cortex during the block design paradigm, the conditional GCM method was proposed to study the causality of the habituation between the left amygdala and pregenual cingulate cortex during emotion processing. For the resting-state dataset, it is possible to calculate not only the effective connectivity between networks but also the heterogeneity within a single network. Our results have further shown a particular interacting pattern of default mode network (DMN) that can be characterized as both afferent and efferent influences on the medial prefrontal cortex (mPFC) and posterior cingulate cortex (PCC). These results suggest that the conditional GCM approach based on a linear multivariate vector autoregressive (MVAR) model can achieve greater accuracy in detecting network connectivity than the widely used pairwise GCM, and this group analysis methodology can be quite useful to extend the information obtainable in fMRI.
- Subjects :
- Adult
Male
Cingulate cortex
Computer science
Biomedical Engineering
Biophysics
Machine learning
computer.software_genre
Sensitivity and Specificity
Article
Image Interpretation, Computer-Assisted
medicine
Humans
Radiology, Nuclear Medicine and imaging
Prefrontal cortex
Default mode network
Visual Cortex
General linear model
medicine.diagnostic_test
business.industry
Reproducibility of Results
Pattern recognition
Magnetic Resonance Imaging
Data set
Pattern Recognition, Visual
Autoregressive model
Data Interpretation, Statistical
Posterior cingulate
Multivariate Analysis
Evoked Potentials, Visual
Female
Artificial intelligence
Functional magnetic resonance imaging
business
computer
Algorithms
Subjects
Details
- ISSN :
- 0730725X
- Volume :
- 29
- Database :
- OpenAIRE
- Journal :
- Magnetic Resonance Imaging
- Accession number :
- edsair.doi.dedup.....8f9019166db532ccbb2e10c3d2d9ea99
- Full Text :
- https://doi.org/10.1016/j.mri.2010.10.008