Data & Metadata,
Год журнала:
2025,
Номер
4, С. 756 - 756
Опубликована: Март 19, 2025
Vesicoureteral
reflux
(VUR)
is
traditionally
assessed
using
subjective
grading
systems,
leading
to
variability
in
diagnosis.
This
study
explores
the
potential
of
machine
learning
enhance
diagnostic
accuracy
by
analysing
voiding
cystourethrogram
(VCUG)
images.
The
objective
develop
predictive
models
that
provide
an
and
consistent
approach
VUR
classification.
A
total
113
VCUG
images
were
reviewed,
with
experts
them
based
on
severity.
Nine
distinct
image
features
selected
build
six
models,
which
evaluated
'leave-one-out'
cross-validation.
analysis
identified
renal
calyces’
deformation
patterns
as
key
indicators
high-grade
VUR.
models—Logistic
Regression,
Tree,
Gradient
Boosting,
Neural
Network,
Stochastic
Descent—achieved
precise
classifications
no
false
positives
or
negatives.
High
sensitivity
subtle
characteristic
different
grades
was
confirmed
substantial
Area
Under
Curve
(AUC)
values.
demonstrates
can
address
limitations
assessments,
offering
a
more
reliable
standardized
system.
findings
highlight
significance
predictor
severe
cases.
Future
research
should
focus
refining
methodologies,
exploring
additional
features,
expanding
dataset
model
clinical
applicability.
Numerous
studies
have
highlighted
the
significance
of
artificial
intelligence
(AI)
in
breast
cancer
diagnosis.
However,
systematic
reviews
AI
applications
this
field
often
lack
cohesion,
with
each
study
adopting
a
unique
approach.
The
aim
is
to
provide
detailed
examination
AI's
role
diagnosis
through
citation
analysis,
helping
categorize
key
areas
that
attract
academic
attention.
It
also
includes
thematic
analysis
identify
specific
research
topics
within
category.
A
total
30,200
related
and
AI,
published
between
2015
2024,
were
sourced
from
databases
such
as
IEEE,
Scopus,
PubMed,
Springer,
Google
Scholar.
After
applying
inclusion
exclusion
criteria,
32
relevant
identified.
Most
these
utilized
classification
models
for
prediction,
high
accuracy
being
most
commonly
reported
performance
metric.
Convolutional
Neural
Networks
(CNN)
emerged
preferred
model
many
studies.
findings
indicate
both
quantity
quality
AI-based
algorithms
are
increases
given
years.
increasingly
seen
complement
healthcare
sector
clinical
expertise,
target
enhancing
accessibility
affordability
worldwide.
International Journal of Online and Biomedical Engineering (iJOE),
Год журнала:
2024,
Номер
20(11), С. 123 - 145
Опубликована: Авг. 8, 2024
In
this
study,
we
evaluated
the
performance
of
various
machine-learning
models
on
multiple
datasets
labeled
GR1,
GR2,
GR3,
GR4,
and
GR5.
We
assessed
using
a
range
evaluation
metrics,
including
AUC,
CA,
F1,
precision,
recall,
MCC,
specificity,
log
loss.
The
examined
were
logistic
regression,
decision
tree,
kNN,
random
forest,
gradient
boosting,
neural
network,
AdaBoost,
stochastic
descent.
results
indicate
that
all
consistently
demonstrated
outstanding
across
datasets,
with
most
achieving
perfect
scores
in
metrics.
exhibited
high
accuracy
effectiveness
accurately
classifying
instances.
Although
forests
displayed
slightly
lower
some
theyi
still
maintained
an
overall
level
accuracy.
findings
highlight
models’
ability
to
effectively
learn
underlying
patterns
within
data
make
accurate
predictions.
low
loss
values
further
confirmed
precise
estimation
probabilities.
Consequently,
these
possess
strong
potential
for
practical
applications
domains,
offering
reliable
robust
classification
capabilities.
Multidisciplinar,
Год журнала:
2024,
Номер
3, С. 54 - 54
Опубликована: Окт. 18, 2024
The
diagnosis
of
tumors
in
the
female
reproductive
system
is
crucial
for
effective
treatment
and
patient
outcomes.
advent
artificial
intelligence
(AI)
has
introduced
new
possibilities
enhancing
diagnostic
accuracy
efficiency.
A
comprehensive
search
across
PubMed,
Scopus,
Web
Science
articles
published
from
2018
to
2023
on
(AI),
machine
learning
(ML),
deep
(DL),
convolutional
neural
networks
(CNN)
diagnosing
cancers
yielded
15,900
articles.
After
a
rigorous
screening
process
excluding
conference
proceedings,
book
chapters,
reports,
non-English
publications,
duplicates,
98
unique
peer-reviewed
journal
remained.
These
were
further
assessed
relevance
quality,
resulting
final
inclusion
29
high-quality
review
includes
summary
various
AI
methodologies
used,
their
accuracy,
comparative
performance
against
traditional
methods.
findings
indicate
significant
improvement
precision
efficiency
when
employed.
holds
substantial
promise
system.
Future
research
should
focus
larger-scale
studies
integration
into
clinical
workflows
fully
realize
its
potential
Artificial
intelligence
(AI)
holds
significant
potential
to
revolutionize
healthcare
by
improving
clinical
practices
and
patient
outcomes.
This
research
explores
the
integration
of
AI
in
healthcare,
focusing
on
methodologies
such
as
machine
learning,
natural
language
processing,
computer
vision,
which
enable
extraction
valuable
insights
from
complex
medical
imaging
data.
Through
a
comprehensive
literature
review,
study
highlights
AI’s
practical
applications
diagnostics,
treatment
planning,
predicting
Additionally,
ethical
issues,
data
privacy,
legal
frameworks
are
examined,
emphasizing
importance
responsible
usage
healthcare.
The
findings
demonstrate
ability
enhance
diagnostic
accuracy,
streamline
administrative
tasks,
optimize
resource
allocation,
leading
personalized
treatments
more
efficient
management.
However,
challenges
remain,
including
quality,
algorithm
transparency,
concerns,
must
be
addressed
ensure
safe
effective
deployment.
Continued
research,
collaboration
between
professionals
experts,
development
robust
regulatory
essential
for
maximizing
benefits
while
minimizing
risks.
underscores
transformative
stresses
need
multidisciplinary
approach
address
complexities
involved
its
widespread
adoption
Data & Metadata,
Год журнала:
2025,
Номер
4, С. 545 - 545
Опубликована: Фев. 18, 2025
Diabetes
has
emerged
as
a
significant
global
health
issue,
especially
with
the
increasing
number
of
cases
in
many
countries.
This
trend
Underlines
need
for
greater
emphasis
on
early
detection
and
proactive
management
to
avert
or
mitigate
severe
complications
this
disease.
Over
recent
years,
machine
learning
algorithms
have
shown
promising
potential
predicting
diabetes
risk
are
beneficial
practitioners.
Objective:
study
highlights
prediction
capabilities
statistical
non-statistical
methods
over
classification
768
samples
from
Pima
Indians
Database.
It
consists
demographic
clinical
features
age,
body
mass
index
(BMI)
blood
glucose
levels
that
greatly
depend
vulnerability
against
Diabetes.
The
experimentation
assesses
various
types
terms
accuracy
effectiveness
regarding
prediction.
These
include
Logistic
Regression,
Decision
Tree,
Random
Forest,
K-Nearest
Neighbors,
Naive
Bayes,
Support
Vector
Machine,
Gradient
Boosting
Neural
Network
Models.
results
show
algorithm
gained
highest
predictive
78.57%,
then
Forest
had
second
position
76.30%
accuracy.
findings
techniques
not
just
highly
effective.
Still,
they
also
can
potentially
act
screening
tools
within
data-driven
fashion
valuable
information
who
is
more
likely
get
affected.
In
addition,
help
realize
timely
intervention
longer
term,
which
step
towards
reducing
outcomes
disease
burden
attributable
healthcare
systems.
Oral
cancer
presents
a
formidable
challenge
in
oncology,
necessitating
early
diagnosis
and
accurate
prognosis
to
enhance
patient
survival
rates.
Recent
advancements
machine
learning
data
mining
have
revolutionized
traditional
diagnostic
methodologies,
providing
sophisticated
automated
tools
for
differentiating
between
benign
malignant
oral
lesions.
This
study
comprehensive
review
of
cutting-edge
including
Neural
Networks,
K-Nearest
Neighbors
(KNN),
Support
Vector
Machines
(SVM),
ensemble
techniques,
specifically
applied
the
cancer.
Through
rigorous
comparative
analysis,
our
findings
reveal
that
Networks
surpass
other
models,
achieving
an
impressive
classification
accuracy
93.6%
predicting
Furthermore,
we
underscore
potential
benefits
integrating
feature
selection
dimensionality
reduction
techniques
model
performance.
These
insights
significant
promise
advanced
bolstering
detection,
optimizing
treatment
strategies,
ultimately
improving
outcomes
realm
oncology
In
an
era
where
Unmanned
Aerial
Vehicles
(UAVs)
have
become
crucial
in
military
surveillance
and
operations,
the
need
for
real-time
accurate
UAV
recognition
is
increasingly
critical.
The
widespread
use
of
UAVs
presents
various
security
threats,
requiring
systems
that
can
differentiate
between
benign
objects,
such
as
birds.
This
study
conducts
a
comparative
analysis
advanced
machine
learning
models
to
address
challenge
aerial
classification
diverse
environmental
conditions
without
system
redesign.
Large
datasets
were
used
train
validate
models,
including
Neural
Networks,
Support
Vector
Machines,
ensemble
methods,
Random
Forest
Gradient
Boosting
Machines.
These
evaluated
based
on
accuracy
computational
efficiency,
key
factors
application.
results
indicate
Networks
provide
best
performance,
demonstrating
high
distinguishing
from
findings
emphasize
significant
potential
enhance
operational
improve
allocation
defense
resources.
Overall,
this
research
highlights
effectiveness
advocates
integration
into
strengthen
decision-making
operations.
Regular
updates
these
are
recommended
keep
pace
with
advancements
technology,
more
agile
stealthier
designs
Data & Metadata,
Год журнала:
2024,
Номер
4, С. 460 - 460
Опубликована: Ноя. 7, 2024
This
article
uses
machine
learning
to
quantify
vesicoureteral
reflux
(VUR).
VCUGs
in
pediatric
urology
are
used
diagnose
VUR.
The
goal
is
increase
diagnostic
precision.
Various
models
categorize
VUR
grades
(Grade
1
Grade
5)
and
evaluated
using
performance
metrics
confusion
matrices.
Study
datasets
come
from
internet
repositories
with
repository
names
accession
numbers.
Machine
performed
well
across
several
measures.
KNN,
Random
Forest,
AdaBoost,
CN2
Rule
Induction
consistently
scored
100%
AUC,
CA,
F1-score,
precision,
recall,
MCC,
specificity.
These
classified
individually
collectively.
In
contrast,
the
Constant
model
poorly
all
criteria,
suggesting
its
inability
reliably.
With
most
excellent
average
ratings,
excelled
at
grade
categorization.
Confusion
matrices
demonstrate
that
predict
grades.
large
diagonal
numbers
of
show
regularly
predicted
effectively.
However,
model's
constant
5
forecast
reduced
differentiation.
study
shows
methods
automate
measurement.
findings
aid
objective
grading
radiographic
evaluation.
accurately
classifies
learning-based
techniques
may
clinical
decision-making,
patient
outcomes.
Accurate
and
early
diagnosis,
coupled
with
precise
prognosis,
is
critical
for
improving
patient
outcomes
in
various
medical
conditions.
This
paper
focuses
on
leveraging
advanced
data
mining
techniques
to
address
two
key
challenges:
diagnosis
prognosis.
Diagnosis
involves
differentiating
between
benign
malignant
conditions,
while
prognosis
aims
predict
the
likelihood
of
recurrence
after
treatment.
Despite
significant
advances
imaging
clinical
collection,
achieving
high
accuracy
both
remains
a
challenge.
study
provides
comprehensive
review
state-of-the-art
machine
learning
used
including
Neural
Networks,
K-Nearest
Neighbors
(KNN),
Naïve
Bayes,
Logistic
Regression,
Decision
Trees,
Support
Vector
Machines
(SVM).
These
methods
are
evaluated
their
ability
process
large,
complex
datasets
produce
actionable
insights
practitioners.We
conducted
thorough
comparative
analysis
based
performance
metrics
such
as
accuracy,
Area
Under
Curve
(AUC),
precision,
recall,
specificity.
Our
findings
reveal
that
Networks
consistently
outperform
other
terms
diagnostic
predictive
capacity,
demonstrating
robustness
handling
high-dimensional
nonlinear
data.
research
underscores
potential
algorithms
revolutionizing
effective
thus
facilitating
more
personalized
treatment
plans
improved
healthcare
outcomes.
Deleted Journal,
Год журнала:
2024,
Номер
4, С. 35 - 35
Опубликована: Окт. 18, 2024
The
integration
of
artificial
intelligence
(AI)
in
healthcare
presents
significant
promise
to
enhance
clinical
procedures
and
patient
outcomes.
This
research
examines
the
setting,
methodology,
conclusions,
issues
associated
with
AI
healthcare.
swift
proliferation
digital
health
data,
encompassing
medical
imaging
records,
has
generated
substantial
prospects
for
applications.
Artificial
methodologies,
including
machine
learning,
natural
language
processing,
computer
vision,
facilitate
derivation
insights
from
intricate
datasets,
hence
improving
decision-making.
A
thorough
literature
review
practical
applications
AI,
its
roles
diagnostics,
treatment
planning,
outcome
prediction.
report
also
ethical
issues,
data
protection,
legal
frameworks,
which
are
crucial
responsible
application
results
illustrate
AI's
capacity
diagnostic
precision,
administrative
efficiency,
optimise
resource
distribution,
resulting
tailored
therapies
improved
administration.
Nonetheless,
obstacles
persist,
such
as
integrity,
algorithm
transparency,
considerations,
must
be
resolved
guarantee
secure
efficient
deployment
AI.
Continuous
research,
cooperation
between
experts,
establishment
comprehensive
regulatory
frameworks
essential
optimising
advantages
while
minimising
hazards.
highlights
transform
healthcare,
stressing
necessity
a
multidisciplinary
strategy
effectively
harness
benefits
tackle
dilemmas.