U-shaped convolutional transformer GAN with multi-resolution consistency loss for restoring brain functional time-series and dementia diagnosis
Frontiers in Computational Neuroscience,
Journal Year:
2024,
Volume and Issue:
18
Published: April 17, 2024
The
blood
oxygen
level-dependent
(BOLD)
signal
derived
from
functional
neuroimaging
is
commonly
used
in
brain
network
analysis
and
dementia
diagnosis.
Missing
the
BOLD
may
lead
to
bad
performance
misinterpretation
of
findings
when
analyzing
neurological
disease.
Few
studies
have
focused
on
restoration
time-series
data.
Language: Английский
A comprehensive review of deep learning power in steady-state visual evoked potentials
Neural Computing and Applications,
Journal Year:
2024,
Volume and Issue:
36(27), P. 16683 - 16706
Published: July 23, 2024
Language: Английский
A novel approach for ASD recognition based on graph attention networks
Frontiers in Computational Neuroscience,
Journal Year:
2024,
Volume and Issue:
18
Published: April 10, 2024
Early
detection
and
diagnosis
of
Autism
Spectrum
Disorder
(ASD)
can
significantly
improve
the
quality
life
for
affected
individuals.
Identifying
ASD
based
on
brain
functional
connectivity
(FC)
poses
a
challenge
due
to
high
heterogeneity
subjects'
fMRI
data
in
different
sites.
Meanwhile,
deep
learning
algorithms
show
efficacy
identification
but
lack
interpretability.
In
this
paper,
novel
approach
recognition
is
proposed
graph
attention
networks.
Specifically,
we
treat
region
interest
(ROI)
subjects
as
node,
conduct
wavelet
decomposition
BOLD
signal
each
ROI,
extract
features,
utilize
them
along
with
mean
variance
node
optimized
FC
matrix
adjacency
matrix,
respectively.
We
then
employ
self-attention
mechanism
capture
long-range
dependencies
among
features.
To
enhance
interpretability,
node-selection
pooling
layers
are
designed
determine
importance
ROI
prediction.
The
framework
applied
children
(younger
than
12
years
old)
from
Brain
Imaging
Data
Exchange
datasets.
Promising
results
demonstrate
superior
performance
compared
recent
similar
studies.
obtained
exhibit
correspondence
previous
studies
offer
good
Language: Английский
A Comparative Review of Detection Methods in SSVEP-based Brain-Computer Interfaces
IEEE Access,
Journal Year:
2024,
Volume and Issue:
12, P. 181232 - 181270
Published: Jan. 1, 2024
Language: Английский
Encoding Global Semantic and Localized Geographic Spatial-Temporal Relations for Traffic Accident Risk Prediction
Information Sciences,
Journal Year:
2024,
Volume and Issue:
unknown, P. 121767 - 121767
Published: Dec. 1, 2024
Language: Английский
Epileptic focus localization using transfer learning on multi-modal EEG
Yong Yang,
No information about this author
Feng Li,
No information about this author
Jing Luo
No information about this author
et al.
Frontiers in Computational Neuroscience,
Journal Year:
2023,
Volume and Issue:
17
Published: Nov. 23, 2023
The
standard
treatments
for
epilepsy
are
drug
therapy
and
surgical
resection.
However,
around
1/3
of
patients
with
intractable
drug-resistant,
requiring
resection
the
epileptic
focus.
To
address
issue
drug-resistant
focus
localization,
we
have
proposed
a
transfer
learning
method
on
multi-modal
EEG
(iEEG
sEEG).
A
10-fold
cross-validation
approach
was
applied
to
validate
performance
pre-trained
model
Bern-Barcelona
Bonn
datasets,
achieving
accuracy
rates
94.50
97.50%,
respectively.
experimental
results
demonstrated
that
outperforms
competitive
state-of-the-art
baselines
in
terms
accuracy,
sensitivity,
negative
predictive
value.
Furthermore,
fine-tuned
our
using
dataset
from
Chongqing
Medical
University
tested
it
leave-one-out
method,
obtaining
an
impressive
average
90.15%.
This
shows
significant
feature
differences
between
non-epileptic
channels.
By
extracting
data
features
neural
networks,
accurate
classification
channels
can
be
achieved.
Therefore,
superior
has
is
highly
effective
localizing
aid
physicians
clinical
localization
diagnosis.
Language: Английский
Application of artificial intelligence in glaucoma. Part 1. Neural networks and deep learning in glaucoma screening and diagnosis
Russian Annals of Ophthalmology,
Journal Year:
2024,
Volume and Issue:
140(3), P. 82 - 82
Published: Jan. 1, 2024
This
article
reviews
literature
on
the
use
of
artificial
intelligence
(AI)
for
screening,
diagnosis,
monitoring
and
treatment
glaucoma.
The
first
part
review
provides
information
how
AI
methods
improve
effectiveness
glaucoma
presents
technologies
using
deep
learning,
including
neural
networks,
analysis
big
data
obtained
by
ocular
imaging
(fundus
imaging,
optical
coherence
tomography
anterior
posterior
eye
segments,
digital
gonioscopy,
ultrasound
biomicroscopy,
etc.),
a
multimodal
approach.
results
found
in
reviewed
are
contradictory,
indicating
that
improvement
models
requires
further
research
standardized
networks
timely
detection
based
will
reduce
risk
blindness
associated
with
Language: Английский
Multistream Dilated Convolutional Feature Fusion Neural Network for SSVEP Classification
Xiujun Li,
No information about this author
Yongzheng Zhang,
No information about this author
Yue Wu
No information about this author
et al.
Published: Nov. 17, 2023
Based
on
steady-state
visual
evoked
potentials
(SSVEP),
a
neuroelectric
phenomenon
where
the
brain's
electrical
signals
respond
to
specific
frequency
stimuli,
which
holds
significant
application
value.
Due
signal
noise
and
individual
differences,
achieving
accurate
SSVEP
classification
remains
highly
challenging.
To
address
these
challenges,
we
propose
multi-stream
atrous
convolutional
feature
fusion
neural
network
(MACNN)
model.
The
model
adopts
parallel
structure
with
multiple
streams
of
convolution
for
fusion.
Each
stream
utilizes
different
dilation
rates,
sharing
weights
across
various
streams,
incorporates
module,
allowing
leverage
information
from
maps.
Finally,
an
attention
mechanism
is
introduced
adaptively
emphasize
critical
channels,
thereby
enhancing
discriminative
power
classification.
Results
data
involving
35
subjects
indicate
that,
1
-second
length,
average
accuracy
transfer
rate
increase
79.94%
141.57
bits/min,
respectively.
Consequently,
proposed
method
importance
in
research
Language: Английский