World Electric Vehicle Journal,
Journal Year:
2024,
Volume and Issue:
16(1), P. 9 - 9
Published: Dec. 27, 2024
This
study
presents
an
adaptation
of
the
YOLOv4
deep
learning
algorithm
for
3D
object
detection,
addressing
a
critical
challenge
in
autonomous
vehicle
(AV)
systems:
accurate
real-time
perception
surrounding
environment
three
dimensions.
Traditional
2D
detection
methods,
while
efficient,
fall
short
providing
depth
and
spatial
information
necessary
safe
navigation.
research
modifies
architecture
to
predict
bounding
boxes,
depth,
orientation.
Key
contributions
include
introducing
multi-task
loss
function
that
optimizes
predictions
integrating
sensor
fusion
techniques
combine
RGB
camera
data
with
LIDAR
point
clouds
improved
estimation.
The
adapted
model,
tested
on
real-world
datasets,
demonstrates
significant
increase
accuracy,
achieving
mean
average
precision
(mAP)
85%,
intersection
over
union
(IoU)
78%,
near
performance
at
93–97%
detecting
vehicles
75–91%
people.
approach
balances
high
accuracy
processing,
making
it
highly
suitable
AV
applications.
advances
field
by
showing
how
efficient
detector
can
be
extended
meet
complex
demands
driving
scenarios
without
sacrificing
computational
efficiency.
Intelligent Pharmacy,
Journal Year:
2024,
Volume and Issue:
2(6), P. 792 - 803
Published: May 21, 2024
The
emergence
of
Artificial
Intelligence
(AI)
has
already
brought
several
advantages
to
the
healthcare
sector.
Computer
Vision
(CV)
is
one
growing
modern
AI
technologies.
distribution
and
administration
medications
are
about
change
by
using
CV
for
medication
management.
This
system
scans
pharmaceutical
labels
keeps
track
process
from
delivery
cameras,
sensors,
computer
algorithms.
In
order
assure
accuracy
in
medicine
dose,
also
makes
it
easier
doctors,
nurses,
chemists
communicate.
vision-driven
management
can
significantly
lower
number
medical
mistakes
that
result
inaccurate
or
missing
prescriptions,
improper
doses,
simply
forgetting
take
a
particular
drug.
An
exhaustive
literature
review
been
done
identify
work
related
research
objectives.
paper
their
need
healthcare.
Various
tasks
associated
with
domain
discussed.
Targeted
goals
through
traits
briefed.
Finally,
significant
applications
CVs
were
identified
Nowadays,
practical
uses
Its
methods
widely
used
since
they
have
shown
excellent
utility
contexts,
including
imaging
surgical
planning.
study
how
program
computers
comprehend
digital
pictures.
Numerous
utilise
this
technology,
such
as
automated
abnormality
identification,
illness
diagnosis,
procedure
guiding.
expanding
quickly
enormous
promise
enhance
Some
many
sector
include
patient
identification
systems,
picture
analysis,
simulation
diagnosis.
Algorithms,
Journal Year:
2025,
Volume and Issue:
18(2), P. 96 - 96
Published: Feb. 8, 2025
Computer
vision
and
artificial
intelligence
have
revolutionized
the
field
of
pathological
image
analysis,
enabling
faster
more
accurate
diagnostic
classification.
Deep
learning
architectures
like
convolutional
neural
networks
(CNNs),
shown
superior
performance
in
tasks
such
as
classification,
segmentation,
object
detection
pathology.
has
significantly
improved
accuracy
disease
diagnosis
healthcare.
By
leveraging
advanced
algorithms
machine
techniques,
computer
systems
can
analyze
medical
images
with
high
precision,
often
matching
or
even
surpassing
human
expert
performance.
In
pathology,
deep
models
been
trained
on
large
datasets
annotated
pathology
to
perform
cancer
diagnosis,
grading,
prognostication.
While
approaches
show
great
promise
challenges
remain,
including
issues
related
model
interpretability,
reliability,
generalization
across
diverse
patient
populations
imaging
settings.
European Respiratory Review,
Journal Year:
2025,
Volume and Issue:
34(176), P. 240263 - 240263
Published: April 1, 2025
Background
Pleural
diseases
represent
a
significant
healthcare
burden,
affecting
over
350
000
patients
annually
in
the
US
alone
and
requiring
accurate
diagnostic
approaches
for
optimal
management.
Traditional
imaging
techniques
have
limitations
differentiating
various
pleural
disorders
invasive
procedures
are
usually
required
definitive
diagnosis.
Methods
We
conducted
nonsystematic,
narrative
literature
review
aimed
at
describing
latest
advances
artificial
intelligence
(AI)
applications
diseases.
Results
Novel
ultrasound-based
techniques,
such
as
elastography
contrast-enhanced
ultrasound,
described
their
promising
accuracy
malignant
from
benign
lesions.
Quantitative
utilising
pixel-density
measurements
to
noninvasively
distinguish
exudative
transudative
effusions
highlighted.
AI
algorithms,
which
shown
remarkable
performance
abnormality
detection,
effusion
characterisation
automated
fluid
volume
quantification,
also
described.
Finally,
role
of
deep-learning
models
early
complication
detection
analysis
follow-up
studies
is
examined.
Conclusions
Advanced
show
promise
management
diseases,
improving
reducing
need
procedures.
However,
larger
prospective
needed
validation.
The
integration
AI-driven
with
molecular
genomic
data
offers
potential
personalised
therapeutic
strategies,
although
challenges
privacy,
algorithm
transparency
clinical
validation
persist.
This
comprehensive
approach
may
revolutionise
disease
management,
enhancing
patient
outcomes
through
more
accurate,
noninvasive
strategies.
Computers in Biology and Medicine,
Journal Year:
2025,
Volume and Issue:
191, P. 110153 - 110153
Published: April 18, 2025
Silicosis,
a
debilitating
occupational
lung
disease
caused
by
inhaling
crystalline
silica,
continues
to
be
significant
global
health
issue,
especially
with
the
increasing
use
of
engineered
stone
(ES)
surfaces
containing
high
silica
content.
Traditional
diagnostic
methods,
dependent
on
radiological
interpretation,
have
low
sensitivity,
especially,
in
early
stages
disease,
and
present
variability
between
evaluators.
This
study
explores
efficacy
deep
learning
techniques
automating
screening
staging
silicosis
using
chest
X-ray
images.
Utilizing
comprehensive
dataset,
obtained
from
medical
records
cohort
workers
exposed
artificial
quartz
conglomerates,
we
implemented
preprocessing
stage
for
rib-cage
segmentation,
followed
classification
state-of-the-art
models.
The
segmentation
model
exhibited
precision,
ensuring
accurate
identification
thoracic
structures.
In
phase,
our
models
achieved
near-perfect
accuracy,
ROC
AUC
values
reaching
1.0,
effectively
distinguishing
healthy
individuals
those
silicosis.
demonstrated
remarkable
precision
disease.
Nevertheless,
differentiating
simple
progressive
massive
fibrosis,
evolved
complicated
form
presented
certain
difficulties,
during
transitional
period,
when
assessment
can
significantly
subjective.
Notwithstanding
these
an
accuracy
around
81%
scores
nearing
0.93.
highlights
potential
generate
clinical
decision
support
tools
increase
effectiveness
diagnosis
silicosis,
whose
detection
would
allow
patient
moved
away
all
sources
exposure,
therefore
constituting
substantial
advancement
diagnostics.
Journal of Applied Clinical Medical Physics,
Journal Year:
2024,
Volume and Issue:
25(11)
Published: Aug. 28, 2024
Abstract
Radiotherapy
aims
to
deliver
a
prescribed
dose
the
tumor
while
sparing
neighboring
organs
at
risk
(OARs).
Increasingly
complex
treatment
techniques
such
as
volumetric
modulated
arc
therapy
(VMAT),
stereotactic
radiosurgery
(SRS),
body
radiotherapy
(SBRT),
and
proton
have
been
developed
doses
more
precisely
target.
While
technologies
improved
delivery,
implementation
of
intra‐fraction
motion
management
verify
position
time
has
become
increasingly
relevant.
Artificial
intelligence
(AI)
recently
demonstrated
great
potential
for
real‐time
tracking
tumors
during
treatment.
However,
AI‐based
faces
several
challenges,
including
bias
in
training
data,
poor
transparency,
difficult
data
collection,
workflows
quality
assurance,
limited
sample
sizes.
This
review
presents
AI
algorithms
used
chest,
abdomen,
pelvic
management/tracking
provides
literature
summary
on
topic.
We
will
also
discuss
limitations
these
studies
propose
improvements.
Bioengineering,
Journal Year:
2024,
Volume and Issue:
11(9), P. 877 - 877
Published: Aug. 29, 2024
An
apical
lesion
is
caused
by
bacteria
invading
the
tooth
apex
through
caries.
Periodontal
disease
plaque
accumulation.
Peri-endo
combined
lesions
include
both
diseases
and
significantly
affect
dental
prognosis.
The
lack
of
clear
symptoms
in
early
stages
onset
makes
diagnosis
challenging,
delayed
treatment
can
lead
to
spread
symptoms.
Early
infection
detection
crucial
for
preventing
complications.
PAs
used
as
database
were
provided
Chang
Gung
Memorial
Medical
Center,
Taoyuan,
Taiwan,
with
permission
from
Institutional
Review
Board
(IRB):
02002030B0.
image
enhancement
method
a
new
technology
PA
detection.
This
convolutional
neural
networks
(CNN)
classify
lesions,
peri-endo
asymptomatic
cases,
compare
You
Only
Look
Once-v8-Oriented
Bounding
Box
(YOLOv8-OBB)
results.
contributions
lie
utilization
augmentation
adaptive
histogram
equalization
on
individual
images,
achieving
highest
comprehensive
validation
accuracy
95.23%
ConvNextv2
model.
Furthermore,
CNN
outperformed
YOLOv8
identifying
an
F1-Score
92.45%.
For
classification
attained
96.49%,
whereas
scored
88.49%.
Deleted Journal,
Journal Year:
2024,
Volume and Issue:
3(4)
Published: May 7, 2024
Verbal
communication
is
the
dominant
form
of
self-expression
and
interpersonal
communication.
Speech
a
considerable
obstacle
for
individuals
with
disabilities,
including
those
who
are
deaf,
hard
hearing,
mute,
nonverbal.
Sign
language
complex
system
gestures
visual
signs
facilitating
individual
With
help
artificial
intelligence,
hearing
deaf
can
communicate
more
easily.
Automatic
detection
recognition
sign
challenging
task
in
computer
vision
machine
learning.
This
paper
proposes
novel
technique
using
deep
learning
to
recognize
Arabic
Language
(ArSL)
accurately.
The
proposed
method
relies
on
advanced
attention
mechanisms
convolutional
neural
network
architecture
integrated
robust
You
Only
Look
Once
(YOLO)
object
model
that
improves
rate
technique.
In
our
method,
we
integrate
self-attention
block,
channel
module,
spatial
cross-convolution
module
into
feature
processing
accurate
detection.
accuracy
significantly
improved,
higher
99%.
methodology
outperformed
conventional
methods,
achieving
precision
0.9
mean
average
(mAP)
0.9909
at
an
intersection
over
union
(IoU)
0.5.
From
IoU
thresholds
0.5
0.95,
mAP
continuously
remains
high,
indicating
its
effectiveness
accurately
identifying
different
levels.
results
show
model’s
robustness
detecting
classifying
multiple
ArSL
signs.
efficacy
model.
Research Square (Research Square),
Journal Year:
2024,
Volume and Issue:
unknown
Published: March 28, 2024
Abstract
Verbal
communication
is
the
dominant
form
of
self-expression
and
interpersonal
communication.
Speech
a
considerable
obstacle
for
individuals
with
disabilities,
including
those
who
are
deaf,
hard
hearing,
mute,
or
nonverbal.
Consequently,
these
depend
on
sign
language
to
communicate
others.
Sign
Language
complex
system
gestures
visual
cues
that
facilitate
inclusion
into
vocal
groups.
In
this
manuscript
novel
technique
proposed
using
deep
learning
recognize
Arabic
(ArSL)
accurately.
Through
advanced
system,
objective
help
in
between
hearing
deaf
community.
The
mechanism
relies
attention
mechanisms,
state-of-art
Convolutional
Neural
Network
(CNN)
architectures
robust
YOLO
object
detection
model
highly
improves
implementation
accuracy
ArSL
recognition.
our
method,
we
integrate
self-attention
block,
channel
module,
spatial
cross-convolution
module
features
processing,
recognition
reaches
98.9%.
method
significantly
improved
higher
rate.
presented
approach
showed
significant
improvement
as
compared
conventional
techniques
precision
rate
0.9.
For
[email protected],
mAP
score
0.9909
while
[email protected]:0.95
results
tops
all
state-of-the-art
techniques.
This
shows
has
great
capability
accurately
detect
classify
multiple
signs.
provides
unique
way
linking
people
improving
strategy
also
promoting
social
region.