Communications Biology,
Journal Year:
2022,
Volume and Issue:
5(1)
Published: June 2, 2022
The
relationship
between
structural
and
functional
connectivity
in
the
brain
is
a
key
question
systems
neuroscience.
Modern
accounts
assume
single
global
structure-function
that
persists
over
time.
Here
we
study
coupling
from
dynamic
perspective,
show
it
regionally
heterogeneous.
We
use
temporal
unwrapping
procedure
to
identify
moment-to-moment
co-fluctuations
neural
activity,
reconstruct
time-resolved
patterns.
find
patterns
of
are
region-specific.
observe
stable
unimodal
transmodal
cortex,
intermediate
regions,
particularly
insular
cortex
(salience
network)
frontal
eye
fields
(dorsal
attention
network).
Finally,
variability
region's
related
distribution
its
connection
lengths.
Collectively,
our
findings
provide
way
relationships
perspective.
Proceedings of the National Academy of Sciences,
Journal Year:
2019,
Volume and Issue:
116(42), P. 21219 - 21227
Published: Sept. 30, 2019
The
white
matter
architecture
of
the
brain
imparts
a
distinct
signature
on
neuronal
coactivation
patterns.
Interregional
projections
promote
synchrony
among
distant
populations,
giving
rise
to
richly
patterned
functional
networks.
A
variety
statistical,
communication,
and
biophysical
models
have
been
proposed
study
relationship
between
structure
function,
but
link
is
not
yet
known.
In
present
report
we
seek
relate
structural
connection
profiles
individual
areas.
We
apply
simple
multilinear
model
that
incorporates
information
about
spatial
proximity,
routing,
diffusion
regions
predict
their
connectivity.
find
structure–function
relationships
vary
markedly
across
neocortex.
Structure
function
correspond
closely
in
unimodal,
primary
sensory,
motor
regions,
diverge
transmodal
cortex,
particularly
default
mode
salience
divergence
systematically
follows
cytoarchitectonic
hierarchies.
Altogether,
results
demonstrate
networks
do
align
uniformly
brain,
gradually
uncouple
higher-order
polysensory
Proceedings of the National Academy of Sciences,
Journal Year:
2018,
Volume and Issue:
115(21)
Published: May 8, 2018
Brain
areas'
functional
repertoires
are
shaped
by
their
incoming
and
outgoing
structural
connections.
In
empirically
measured
networks,
most
connections
short,
reflecting
spatial
energetic
constraints.
Nonetheless,
a
small
number
of
span
long
distances,
consistent
with
the
notion
that
functionality
these
must
outweigh
cost.
While
precise
function
long-distance
is
not
known,
leading
hypothesis
they
act
to
reduce
topological
distance
between
brain
areas
facilitate
efficient
interareal
communication.
However,
this
implies
non-specificity
we
contend
unlikely.
Instead,
propose
serve
diversify
inputs
outputs,
thereby
promoting
complex
dynamics.
Through
analysis
five
network
datasets,
show
play
only
minor
roles
in
reducing
average
distance.
contrast,
short-range
neighbors
exhibit
marked
differences
connectivity
profiles,
suggesting
enhance
dissimilarity
regional
outputs.
Next,
--
isolation
profiles
non-random
levels
similarity,
communication
pathways
formed
redundancies
may
promote
robustness.
Finally,
use
linearization
Wilson-Cowan
dynamics
simulate
covariance
structure
neural
activity
absence
connections,
common
measure
diversity
decreases.
Collectively,
our
findings
suggest
necessary
for
supporting
diverse
NeuroImage,
Journal Year:
2022,
Volume and Issue:
249, P. 118870 - 118870
Published: Jan. 1, 2022
Diffusion
magnetic
resonance
imaging
(dMRI)
tractography
is
an
advanced
technique
that
enables
in
vivo
reconstruction
of
the
brain's
white
matter
connections
at
macro
scale.
It
provides
important
tool
for
quantitative
mapping
structural
connectivity
using
measures
or
tissue
microstructure.
Over
last
two
decades,
study
brain
dMRI
has
played
a
prominent
role
neuroimaging
research
landscape.
In
this
paper,
we
provide
high-level
overview
how
used
to
enable
analysis
health
and
disease.
We
focus
on
types
analyses
tractography,
including:
1)
tract-specific
refers
typically
hypothesis-driven
studies
particular
anatomical
fiber
tracts,
2)
connectome-based
more
data-driven
generally
entire
brain.
first
review
methodology
involved
three
main
processing
steps
are
common
across
most
approaches
including
methods
correction,
segmentation
quantification.
For
each
step,
aim
describe
methodological
choices,
their
popularity,
potential
pros
cons.
then
have
matter,
focusing
applications
neurodevelopment,
aging,
neurological
disorders,
mental
neurosurgery.
conclude
that,
while
there
been
considerable
advancements
technologies
breadth
applications,
nevertheless
remains
no
consensus
about
"best"
researchers
should
remain
cautious
when
interpreting
results
clinical
applications.
IEEE Transactions on Pattern Analysis and Machine Intelligence,
Journal Year:
2022,
Volume and Issue:
45(5), P. 5833 - 5848
Published: Sept. 26, 2022
Noninvasive
medical
neuroimaging
has
yielded
many
discoveries
about
the
brain
connectivity.
Several
substantial
techniques
mapping
morphological,
structural
and
functional
connectivities
were
developed
to
create
a
comprehensive
road
map
of
neuronal
activities
in
human
-namely
graph.
Relying
on
its
non-euclidean
data
type,
graph
neural
network
(GNN)
provides
clever
way
learning
deep
structure
it
is
rapidly
becoming
state-of-the-art
leading
enhanced
performance
various
neuroscience
tasks.
Here
we
review
current
GNN-based
methods,
highlighting
ways
that
they
have
been
used
several
applications
related
graphs
such
as
missing
synthesis
disease
classification.
We
conclude
by
charting
path
toward
better
application
GNN
models
field
for
neurological
disorder
diagnosis
population
integration.
The
list
papers
cited
our
work
available
at
https://github.com/basiralab/GNNs-in-Network-Neuroscience.
Nature Communications,
Journal Year:
2021,
Volume and Issue:
12(1)
Published: June 9, 2021
Abstract
Dynamical
brain
state
transitions
are
critical
for
flexible
working
memory
but
the
network
mechanisms
incompletely
understood.
Here,
we
show
that
performance
entails
brain-wide
switching
between
activity
states
using
a
combination
of
functional
magnetic
resonance
imaging
in
healthy
controls
and
individuals
with
schizophrenia,
pharmacological
fMRI,
genetic
analyses
control
theory.
The
stability
relates
to
dopamine
D1
receptor
gene
expression
while
influenced
by
D2
modulation.
Individuals
schizophrenia
altered
properties,
including
more
diverse
energy
landscape
decreased
representations.
Our
results
demonstrate
relevance
signaling
steering
whole-brain
dynamics
during
link
these
processes
pathophysiology.
Nature Communications,
Journal Year:
2022,
Volume and Issue:
13(1)
Published: April 19, 2022
Abstract
A
growing
number
of
studies
have
used
stylized
network
models
communication
to
predict
brain
function
from
structure.
Most
focused
on
a
small
set
applied
globally.
Here,
we
compare
large
at
both
global
and
regional
levels.
We
find
that
globally
most
predictors
perform
poorly.
At
the
level,
performance
improves
but
heterogeneously,
in
terms
variance
explained
optimal
model.
Next,
expose
synergies
among
by
using
pairs
jointly
FC.
Finally,
assess
age-related
differences
coupling
across
human
lifespan.
decreases
magnitude
structure-function
with
age.
these
are
driven
reduced
sensorimotor
regions,
while
higher-order
cognitive
systems
preserve
local
Our
results
describe
patterns
cortex
how
this
may
change