16:30 |
0132.
|
The Electrophysiological
Basis of Resting State Networks
Matthew Jon Brookes1, Mark Woolrich2,
Henry Luckhoo2, Darren Price1,
Joanne Hale1, Mary Stephenson1,
Gareth Barnes3, Stephen Smith4,
and Peter Morris1
1Sir Peter Mansfield Magnetic Resonance
Centre, University of Nottingham, Nottingham,
Nottinghamshire, United Kingdom, 2Oxford
centre for human brain activity, University of Oxford,
Oxford, 3Wellcome
trust centre for neuroimaging, University College
London, London, 4Oxford
Centre for functional MRI of the brain, University of
Oxford, Oxford
BOLD fMRI is capable of delineating functional brain
networks with unparalleled spatial resolution. However,
it is an indirect measure of ‘brain activity’ and
neither rapid temporal dynamics nor the
electrophysiological basis of network function can be
assessed using fMRI alone. Here, we report the results
of a resting state magnetoencephalography (MEG) study
that independently identifies multiple brain networks in
MEG data. The networks elucidated exhibit significant
spatial similarity to networks that have been well
characterised by previous fMRI studies. These results
confirm the electrophysiological basis of resting-fMRI
networks and highlight the utility of a multi-modal
approach for future studies.
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16:42 |
0133. |
Resing state fMRI slow
fluctuations correlate with the activity of fast cortico-cortical
physiological connections
Giacomo Koch1,2, Marco Bozzali3,
Sonia Bonni1, Viola Giacobbe1,
Carlo Caltagirone1,2, and Mara Cercignani3,4
1Laboratory of Clinical and Behavioural
Neurology, Santa Lucia Foundation, Rome, Italy, 2Department
of Neuroscience, University of Rome Tor Vergata, Rome,
Italy, 3Neuroimaging
Laboratory, Santa Lucia Foundation, Rome, Italy, 4CISC,
Brighton and Sussex Medical School, Brighton, United
Kingdom
Multifocal TMS allows the investigation of the causal
neurophysiological interactions occurring in specific
cortico-cortical connections, and the aim of this work
is assessing the correlation between measures of brain
connectivity obtained with TMS and resting state fMRI.
Results showed that the activity of fast cortico-cortical
physiological interactions occurring in the millisecond
range correlated selectively with the coupling of fMRI
slow oscillations within the same cortical areas that
form part of the dorsal attention network. We conclude
that resting-state fMRI slow fluctuations are likely to
reflect the interaction of underlying physiological
cortico-cortical connections
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16:54 |
0134.
|
Coupling between BOLD and
electrophysiological brain network measurements
Joanne R Hale1, Susan T Francis1,
Matthew J Brookes1, and Peter G Morris1
1SPMMRC, University of Nottingham,
Nottingham, Nottinghamshire, United Kingdom
fMRI allows identification of functional brain networks
with unparalleled spatial resolution. However, BOLD is
an in-direct measure of ‘brain activity’ and thus cannot
probe neither the electrophysiological basis nor the
most rapid temporal dynamics of network activity. Here
we employ parallel BOLD and magnetoencephalography (MEG)
experiments to assess the relationship between
haemodynamic and electrodynamic measures of network
activity during an N-back working memory task.
Specifically, we explore coupling between BOLD and â/ã
band neural oscillatory signals in the default mode
network. Results are in agreement with
electrophysiological studies and highlight the benefits
of a multi-modal approach to network elucidation.
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17:06 |
0135. |
The relationship between
functional connectivity strength and cerebral blood flow
Xia Liang1,2, Qihong Zou3, Yong He2,
and Yihong Yang1
1Neuroimaging Research Branch, National
Institute on Drug Abuse, National Institutes of Health,
Baltimore, MD, United States, 2State
Key Laboratory of Cognitive Neuroscience, Beijing Normal
University, Beijing, China, 3MRI
Research Center and Beijing City Key Lab for Medical
Physics and Engineering, Peking University, Beijing,
China
We investigated the relationship between functional
connectivity strength and cerebral blood flow (CBF) by
analyzing a set of resting-state functional BOLD and ASL
imaging data collected on the same subjects to test the
hypothesis that brain regions with stronger functional
connectivity demand more metabolic supply. Our results
show that functional connectivity and CBF are highly
correlated across voxels as well as across subjects.
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17:18 |
0136.
|
Neural Origin of
Specificity Change of Functional Connectivity at Different
Anesthesia Levels
Xiao Liu1, Xiao-Hong Zhu1, Yi
Zhang1, and Wei Chen1
1Radiology, Center for Magnetic Resonance
Research, Minneapolis, MN, United States
To further understand the mechanism of the specificity
change of functional connectivity across anesthesia
levels, EEG signals were recorded from rats under
different anesthesia conditions using isoflurane. EEG
power correlations between electrodes located at
different brain regions demonstrated very similar
dependencies on anesthesia as BOLD signal correlations
observed previously: the correlation strength increased
while the spatial specificity decreased from the light
to deep anesthesia. The finding provides strong evidence
for the neural origin of the change of functional
connectivity specificity across different anesthesia
levels.
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17:30 |
0137. |
Functional Connectivity
Hubs and Modules in Resting-state Rat Brain
Dany V. D'Souza1, Elisabeth Jonckers1,
Andreas Bruns2, Basil Kuennecke2,
Marleen Verhoye1, Markus von Kienlin2,
Annemie van der Linden1, and Thomas Mueggler2
1Bio-Imaging Lab, University of Antwerp,
Wilrijk, Antwerp, Belgium, 2Translational
Neuroscience, CNS, Roche, Switzerland
Graph analysis of resting state fMRI (rs-fMRI) data
enables characterization of the properties of
large-scale brain functional networks both in humans and
small animals. Graph measures bearing neurobiological
importance are often computed in networks of strong
positive associations among brain regions, neglecting
the negative associations. We performed rs-fMRI
experiments in rats, and constructed a fully connected
network of 30 brain regions by retaining all functional
connections irrespective of their sign and strength.
Applying graph measures we found that rat functional
network is segregated into 6 modules associated with
known brain functions, and exhibits hubs which might
form a network core.
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17:42 |
0138.
|
Serial resting-state fMRI
functional connectivity analysis of normal rat brain
development
Kajo van der Marel1, Willem M Otte1,2,
Umesh S Rudrapatna1, Annette van der Toorn1,
and Rick M Dijkhuizen1
1Biomedical MR Imaging and Spectroscopy
Group, Image Sciences Institute, University Medical
Center Utrecht, Utrecht, Netherlands, 2Rudolf
Magnus Institute of Neuroscience, University Medical
Center Utrecht, Utrecht, Netherlands
Brain function maturation is increasingly studied with
resting-state fMRI functional connectivity (RSFC)
analysis, to further our understanding of developmental
alterations underlying neuropsychiatric illness. As RSFC
is routinely measured in rodents, we extended human
cross-sectional studies by characterizing functional
development from serial RSFC measurements in normally
developing rats through adolescence into adulthood.
Linear mixed-effects regression of homotopic RSFC
revealed region-specific development trajectories.
Nonlinear regression could predict individual brain
maturity, and classification accurately distinguished
adolescent from adult RSFC. Normal brain maturation
profiles based on RSFC may thus provide valuable
benchmarks for identifying and characterizing
neurodevelopmental disturbances in rodent models of
neuropsychiatric disease.
|
17:54 |
0139. |
Super-resolution
track-weighted functional connectivity (TW-FC): a tool for
characterizing the structural-functional connections in the
brain
Fernando Calamante1,2, Richard Andrew James
Masterton1, Jacques-Donald Tournier1,2,
Robert Elton Smith1,2, Lisa Willats1,
David Raffelt1, and Alan Connelly1,2
1Brain Research Institute, Florey
Neuroscience Institutes, Heidelberg, Victoria,
Australia, 2Department
of Medicine, University of Melbourne, Melbourne,
Victoria, Australia
We apply the recently proposed super-resolution
track-weighted imaging (TWI) methodology, to combine
whole-brain fibre-tracking data (the so-called
tractogram) with resting state functional connectivity
(FC) data, to generate track-weighted
(TW) FC maps of
a given FC network. The method was assessed on data from
8 healthy volunteers. The TW-FC technique provides an
approach for the fusion of structural and functional
data into a single
quantitative image. A potential important
application of this methodology is for quantitative
voxel-wise group comparison.
|
18:06 |
0140. |
Methodological issues in
comparing brain connectivity between groups
John McGonigle1,2, Majid Mirmehdi2,
Laurence Reed1, and Andrea Malizia3
1Neuropsychopharmacology Unit, Imperial
College London, London, United Kingdom, 2Computer
Science, University of Bristol, Bristol, United Kingdom,3Psychopharmacology
Unit, University of Bristol, Bristol, United Kingdom
When examining functional connectivity in the brain it
is common to compare the synchrony of the mean time
courses of spatially separated regions of interest and
model these as edges between nodes in a graph. However,
in creating a node, due to the commutative nature of the
averaging, the quality of the time course can be driven
by the number of voxels in the region in the native
space of the subject. We explore this issue using real
and simulated data and find that differences in apparent
connectivity between groups with systematically
different structure and volume may be artefactual.
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18:18 |
0141.
|
Assessing high frequency
functional connectivity networks
Thomas Allan1, Cesar Caballero-Gaudes2,
Matthew Brookes1, Susan Francis1,
and Penny Gowland1
1SPMMRC, University of Nottingham,
Nottingham, Nottinghamshire, United Kingdom, 2Department
of Radiology and Medical Informatics, Hopitaux
Universitaire de Genève, Genève, Switzerland
We investigate the signal fluctuations behind functional
connectivity to determine what contribution high
frequency signals (greater than 0.01Hz) and haemodynamic
events have on functional correlations. We also consider
how the number of events found during rest periods,
using paradigm free mapping, changes following a task
(motor and 2-back task) and how these events modulate
functional networks. We show that events and high
frequency oscillations are a significant contributor to
network connectivity, and removing these events changes
the correlation between distinct brain regions.
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