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For the possibility of internships or lab visits, please contact Mario Senden via mario.senden@maastrichtuniversity.nl


Department of Cognitive Neuroscience

Maastricht University

Oxfordlaan 55
6229EV Maastricht





Department of Cognitive Neuroscience

Maastricht University

Oxfordlaan 55
6229EV Maastricht



MOU-EC: model-based whole-brain effective connectivity to extract biomarkers for brain dynamics from fMRI data and study distributed cognition


Journal article


M. Gilson, G. Zamora-López, V. Pallarés, MH Adhikari, M. Senden, A. Tauste Campo, D. Mantini, M. Corbetta, G. Deco, A. Insabato
2019

Semantic Scholar DOI
Cite

Cite

APA   Click to copy
Gilson, M., Zamora-López, G., Pallarés, V., Adhikari, M. H., Senden, M., Campo, A. T., … Insabato, A. (2019). MOU-EC: model-based whole-brain effective connectivity to extract biomarkers for brain dynamics from fMRI data and study distributed cognition.


Chicago/Turabian   Click to copy
Gilson, M., G. Zamora-López, V. Pallarés, MH Adhikari, M. Senden, A. Tauste Campo, D. Mantini, M. Corbetta, G. Deco, and A. Insabato. “MOU-EC: Model-Based Whole-Brain Effective Connectivity to Extract Biomarkers for Brain Dynamics from FMRI Data and Study Distributed Cognition” (2019).


MLA   Click to copy
Gilson, M., et al. MOU-EC: Model-Based Whole-Brain Effective Connectivity to Extract Biomarkers for Brain Dynamics from FMRI Data and Study Distributed Cognition. 2019.


BibTeX   Click to copy

@article{m2019a,
  title = {MOU-EC: model-based whole-brain effective connectivity to extract biomarkers for brain dynamics from fMRI data and study distributed cognition},
  year = {2019},
  author = {Gilson, M. and Zamora-López, G. and Pallarés, V. and Adhikari, MH and Senden, M. and Campo, A. Tauste and Mantini, D. and Corbetta, M. and Deco, G. and Insabato, A.}
}

Abstract

Neuroimaging techniques are increasingly used to study brain cognition in humans. Beyond their individual activation, the functional associations between brain areas have become a standard proxy to describe how information is distributed across the brain network. Among the many analysis tools available, dynamic models of brain activity have been developed to overcome the limitations of original connectivity measures such as functional connectivity. In particular, much effort has been devoted to the assessment of directional interactions between brain areas from their observed activity. This paper summarizes our recent approach to analyze fMRI data based on our whole-brain effective connectivity referred to as MOU-EC, while discussing the pros and cons of its underlying assumptions with respect to other established approaches. Once tuned, the model provides a connectivity measure that reflects the dynamical state of BOLD activity obtained using fMRI, which can be used to explore the brain cognition. We focus on two important applications. First, as a connectivity measure, MOU-EC can be used to extract biomarkers for task-specific brain coordination, understood as the patterns of areas exchanging information. The multivariate nature of connectivity measures raises several challenges for whole-brain analysis, for which machine-learning tools presents some advantages over statistical testing. Second, we show how to interpret changes in MOU-EC connections in a collective and model-based manner, bridging with network analysis. To illustrate our framework, we use a dataset where subjects were recorded in two conditions, watching a movie and a black screen (referred to as rest). Our framework provides a comprehensive set of tools that open exciting perspectives for the study of distributed cognition, as well as neuropathologies.


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