The Virtual Brain: Modeling Biological Correlates of Recovery after Chronic Stroke
There currently remains considerable variability in stroke survivor recovery. To address this, developing individualized treatment has become an important goal in stroke treatment. As a first step, it is necessary to determine brain dynamics associated with stroke and recovery. While recent methods...
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doaj-d953bdb15afc4201af79651ef5e4b2c72020-11-24T20:59:49ZengFrontiers Media S.A.Frontiers in Neurology1664-22952015-11-01610.3389/fneur.2015.00228147133The Virtual Brain: Modeling Biological Correlates of Recovery after Chronic StrokeMaria Inez Falcon0Jeffrey D. Riley1Jeffrey D. Riley2Viktor eJirsa3Viktor eJirsa4Anthony R McIntosh5Ahmed eShereen6E Elinor eChen7Ana eSolodkin8Ana eSolodkin9University of California IrvineUniversity of California IrvineUniversity of California IrvineInstitut de Neurosciences des Systèmes - Aix-Marseille Université - Faculté de MédecineInserm UMR1106 - Aix-Marseille UniversitéRotman Research Institute of Baycrest Centre, University of Toronto, Toronto, CanadaUniversity of California IrvineUniversity of California IrvineUniversity of California IrvineUniversity of California IrvineThere currently remains considerable variability in stroke survivor recovery. To address this, developing individualized treatment has become an important goal in stroke treatment. As a first step, it is necessary to determine brain dynamics associated with stroke and recovery. While recent methods have made strides in this direction, we still lack physiological biomarkers. The Virtual Brain (TVB) is a novel application for modeling brain dynamics that simulates an individual’s brain activity by integrating their own neuroimaging data with local biophysical models. Here, we give a detailed description of the TVB modeling process and explore model parameters associated with stroke. In order to establish a parallel between this new type of modeling and those currently in use, in this work we establish an association between a specific TVB parameter: Long-range coupling that increases after stroke with metrics derived from graph analysis. We used TVB to simulate the individual BOLD signals for 20 patients with stroke and 10 healthy controls. We performed graph analysis on their structural connectivity matrices calculating degree centrality, betweenness centrality and global efficiency. Linear regression analysis demonstrated that long-range coupling is negatively correlated with global efficiency (p=0.038) but is not correlated with degree centrality or betweenness centrality. Our results suggest that the larger influence of local dynamics seen through the long-range coupling parameter is closely associated with a decreased efficiency of the system. We thus propose that the increase in the long-range parameter in TVB (indicating a bias towards local over global dynamics) is deleterious because it reduces communication as suggested by the decrease in efficiency. The new model platform TVB hence provides a novel perspective to understanding biophysical parameters responsible for global brain dynamics after stroke, allowing the design of focused therapeutic interventions.http://journal.frontiersin.org/Journal/10.3389/fneur.2015.00228/fullStrokeimagingMRIconnectomeBrain Dynamicsbrain networks |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Maria Inez Falcon Jeffrey D. Riley Jeffrey D. Riley Viktor eJirsa Viktor eJirsa Anthony R McIntosh Ahmed eShereen E Elinor eChen Ana eSolodkin Ana eSolodkin |
spellingShingle |
Maria Inez Falcon Jeffrey D. Riley Jeffrey D. Riley Viktor eJirsa Viktor eJirsa Anthony R McIntosh Ahmed eShereen E Elinor eChen Ana eSolodkin Ana eSolodkin The Virtual Brain: Modeling Biological Correlates of Recovery after Chronic Stroke Frontiers in Neurology Stroke imaging MRI connectome Brain Dynamics brain networks |
author_facet |
Maria Inez Falcon Jeffrey D. Riley Jeffrey D. Riley Viktor eJirsa Viktor eJirsa Anthony R McIntosh Ahmed eShereen E Elinor eChen Ana eSolodkin Ana eSolodkin |
author_sort |
Maria Inez Falcon |
title |
The Virtual Brain: Modeling Biological Correlates of Recovery after Chronic Stroke |
title_short |
The Virtual Brain: Modeling Biological Correlates of Recovery after Chronic Stroke |
title_full |
The Virtual Brain: Modeling Biological Correlates of Recovery after Chronic Stroke |
title_fullStr |
The Virtual Brain: Modeling Biological Correlates of Recovery after Chronic Stroke |
title_full_unstemmed |
The Virtual Brain: Modeling Biological Correlates of Recovery after Chronic Stroke |
title_sort |
virtual brain: modeling biological correlates of recovery after chronic stroke |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Neurology |
issn |
1664-2295 |
publishDate |
2015-11-01 |
description |
There currently remains considerable variability in stroke survivor recovery. To address this, developing individualized treatment has become an important goal in stroke treatment. As a first step, it is necessary to determine brain dynamics associated with stroke and recovery. While recent methods have made strides in this direction, we still lack physiological biomarkers. The Virtual Brain (TVB) is a novel application for modeling brain dynamics that simulates an individual’s brain activity by integrating their own neuroimaging data with local biophysical models. Here, we give a detailed description of the TVB modeling process and explore model parameters associated with stroke. In order to establish a parallel between this new type of modeling and those currently in use, in this work we establish an association between a specific TVB parameter: Long-range coupling that increases after stroke with metrics derived from graph analysis. We used TVB to simulate the individual BOLD signals for 20 patients with stroke and 10 healthy controls. We performed graph analysis on their structural connectivity matrices calculating degree centrality, betweenness centrality and global efficiency. Linear regression analysis demonstrated that long-range coupling is negatively correlated with global efficiency (p=0.038) but is not correlated with degree centrality or betweenness centrality. Our results suggest that the larger influence of local dynamics seen through the long-range coupling parameter is closely associated with a decreased efficiency of the system. We thus propose that the increase in the long-range parameter in TVB (indicating a bias towards local over global dynamics) is deleterious because it reduces communication as suggested by the decrease in efficiency. The new model platform TVB hence provides a novel perspective to understanding biophysical parameters responsible for global brain dynamics after stroke, allowing the design of focused therapeutic interventions. |
topic |
Stroke imaging MRI connectome Brain Dynamics brain networks |
url |
http://journal.frontiersin.org/Journal/10.3389/fneur.2015.00228/full |
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