medRxiv (Cold Spring Harbor Laboratory),
Год журнала:
2024,
Номер
unknown
Опубликована: Май 19, 2024
Abstract
Cardiovascular
diseases
(CVDs)
remain
a
leading
cause
of
mortality
worldwide,
posing
significant
public
health
challenge.
Early
identification
individuals
at
high
risk
CVD
is
crucial
for
timely
intervention
and
prevention
strategies.
Machine
learning
techniques
are
increasingly
being
applied
in
healthcare
their
ability
to
uncover
complex
patterns
within
large,
multidimensional
datasets.
This
study
introduces
novel
ensemble
meta-learning
framework
designed
enhance
cardiovascular
disease
(CVD)
prediction.
The
strategically
combines
the
predictive
power
diverse
machine
algorithms
–
logistic
regression,
K
nearest
neighbors,
decision
trees,
gradient
boosting,
gaussian
Naive
Bayes
XGBoost.
Predicted
probabilities
from
these
base
models
integrated
using
support
vector
as
meta-learner.
Rigorous
performance
evaluation
over
publicly
available
dataset
demonstrates
improved
this
approach
compared
individual.
research
highlights
potential
improve
modeling
healthcare.
Algorithms,
Год журнала:
2023,
Номер
16(2), С. 88 - 88
Опубликована: Фев. 6, 2023
The
diagnosis
and
prognosis
of
cardiovascular
disease
are
crucial
medical
tasks
to
ensure
correct
classification,
which
helps
cardiologists
provide
proper
treatment
the
patient.
Machine
learning
applications
in
niche
have
increased
as
they
can
recognize
patterns
from
data.
Using
machine
classify
occurrence
help
diagnosticians
reduce
misdiagnosis.
This
research
develops
a
model
that
correctly
predict
diseases
fatality
caused
by
diseases.
paper
proposes
method
k-modes
clustering
with
Huang
starting
improve
classification
accuracy.
Models
such
random
forest
(RF),
decision
tree
classifier
(DT),
multilayer
perceptron
(MP),
XGBoost
(XGB)
used.
GridSearchCV
was
used
hypertune
parameters
applied
optimize
result.
proposed
is
real-world
dataset
70,000
instances
Kaggle.
were
trained
on
data
split
80:20
achieved
accuracy
follows:
tree:
86.37%
(with
cross-validation)
86.53%
(without
cross-validation),
XGBoost:
86.87%
87.02%
forest:
87.05%
86.92%
perceptron:
87.28%
86.94%
cross-validation).
models
AUC
(area
under
curve)
values:
0.94,
0.95,
0.95.
conclusion
drawn
this
underlying
cross-validation
has
outperformed
all
other
algorithms
terms
It
highest
87.28%.
International Journal For Multidisciplinary Research,
Год журнала:
2024,
Номер
6(2)
Опубликована: Март 13, 2024
In
today’s
era
deaths
due
to
heart
disease
has
become
a
major
issue
approximately
one
person
dies
per
minute
disease.
This
is
considering
both
male
and
female
category
this
ratio
may
vary
according
the
region
also
considered
for
people
of
age
group
25-69.
does
not
indicate
that
with
other
will
be
affected
by
diseases.
problem
start
in
early
predict
cause
challenge
nowadays.
Here
paper,
we
have
discussed
various
algorithms
tools
used
prediction
IEEE Access,
Год журнала:
2023,
Номер
11, С. 23366 - 23380
Опубликована: Янв. 1, 2023
Coronary
heart
disease
(CHD)
is
a
dangerous
condition
that
cannot
be
completely
cured.
Accurate
detection
of
early
coronary
artery
can
assist
physicians
in
treating
patients.
In
this
study,
prediction
model
called
HY_OptGBM
was
proposed
for
predicting
CHD
by
using
the
optimized
LightGBM
classifier.
To
optimize
classifier,
hyperparameters
were
adjusted.
addition,
its
loss
function
improved,
and
trained
adjusted
hyperparameters.
applying
most
advanced
hyperparameter
optimization
framework
(OPTUNA).
The
improved
referred
to
as
focal
(FL).
evaluated
data
from
Framingham
Heart
Institute.
evaluate
performance
model,
various
metrics,
including
precision,
recall,
F
score,
accuracy,
MCC,
sensitivity,
specificity,
AUC,
used.
AUC
value
97.9%,
which
better
than
other
comparative
models.
results
demonstrate
rate
identification
among
general
population
utilizing
method.
This,
turn,
could
serve
mitigate
costs
associated
with
medical
treatment
patients
suffering
CHD.
IEEE Access,
Год журнала:
2023,
Номер
11, С. 56214 - 56224
Опубликована: Янв. 1, 2023
Heart
failure
is
a
chronic
disease
affecting
millions
worldwide.
An
efficient
machine
learning-based
technique
needed
to
predict
heart
health
status
early
and
take
necessary
actions
overcome
this
worldwide
issue.
While
medication
the
primary
treatment,
exercise
increasingly
recognized
as
an
effective
adjunct
therapy
in
managing
failure.
In
study,
we
developed
approach
enhance
detection
based
on
patient
parameter
data
involving
learning.
Our
study
helps
improve
at
its
stages
save
patients'
lives.
We
employed
nine
algorithms
for
comparison
proposed
novel
Principal
Component
Failure
(PCHF)
feature
engineering
select
most
prominent
features
performance.
optimized
PCHF
mechanism
by
creating
new
set
innovation
achieve
highest
accuracy
scores.
The
newly
created
dataset
eight
best-fit
features.
conducted
extensive
experiments
assess
efficiency
of
several
algorithms.
decision
tree
method
outperformed
applied
learning
models
other
state-of-the-art
studies,
achieving
high
score
100%,
which
admirable.
All
methods
were
successfully
validated
using
cross-validation
technique.
research
has
significant
scientific
contributions
medical
community.
2022 IEEE 12th Annual Computing and Communication Workshop and Conference (CCWC),
Год журнала:
2023,
Номер
unknown, С. 0949 - 0954
Опубликована: Март 8, 2023
In
the
modern
world,
heart
disease
ranks
among
main
causes
of
death.
Smoking,
high
blood
pressure,
and
cholesterol
are
three
key
risk
factors
for
getting
one
disease,
47%
all
US
people
have
at
least
these
factors.
Prediction
myocardial
illness
is
a
significant
problem
in
field
medical
research
methodology.
coronary
infarction
prediction
hard
issue
that
hospitals
clinicians
must
deal
with.
The
precision
plays
crucial
influence
this
prediction.
response
to
worry,
authors
used
dataset
well-known
machine-learning
method
predict
infarction.
system
detecting
cardiac
utilizing
artificial
intelligence
machine
learning
algorithms
topic
study.
Here,
we
demonstrate
how
can
be
determine
person's
developing
also
trying
exactly
which
important
cause
Myocardial
disease.
study
compared
six
models
achieved
satisfactory
results.
were
LightGBM,
XGBoost,
Logistic
Regression,
Bagging,
Support
Vector
Machine,
Decision
Tree,
their
respective
accuracies
79.06%,
72.90%,
83.85%,
84.60%,
72.80%,
82.01%.
It
was
found
LightGBM
model
outperformed
others.
So,
from
that,
take
decision
performs
best
Our
findings
suggested
promising
future
treatment
infarction,
but
further
investigation
required
before
it
employed
commercially,
particularly
healthcare
sector.
Informatics and Health,
Год журнала:
2024,
Номер
1(2), С. 70 - 81
Опубликована: Июль 2, 2024
Coronary
heart
disease
(CHD)
remains
a
prominent
cause
of
mortality
globally,
necessitating
early
and
accurate
detection
methods.
Traditional
diagnostic
approaches
can
be
invasive,
costly,
time-consuming,
the
need
for
more
efficient
alternatives.
This
aimed
to
optimize
Light
Gradient-Boosting
Machine
(LightGBM)
algorithm
enhance
its
performance
accuracy
in
CHD,
providing
reliable,
cost-effective,
non-invasive
tool.
The
Framingham
Heart
Study
(FHS)
dataset
publicly
available
on
Kaggle
was
used
this
study.
Multiple
Imputations
by
Chained
Equations
(MICE)
were
applied
separately
training
testing
sets
handle
missing
data.
Borderline-SMOTE
(Synthetic
Minority
Over-sampling
Technique)
set
balance
dataset.
LightGBM
selected
efficiency
classification
tasks,
Bayesian
Optimization
with
Tree-structured
Parzen
Estimator
(TPE)
employed
fine-tune
hyperparameters.
optimized
model
trained
evaluated
using
metrics
such
as
accuracy,
precision,
AUC-ROC
test
set,
cross-validation
ensure
robustness
generalizability.
showed
significant
improvement
CHD
detection.
baseline
dropped
values
had
an
0.8333,
sensitivity
0.1081,
precision
0.3429,
F1
score
0.1644,
AUC
0.6875.
With
MICE
imputation,
improved
0.9399,
0.6693,
0.9043,
0.7692,
0.9457.
combined
approach
Borderline-SMOTE,
TPE
achieved
0.9882,
0.9370,
0.9835,
0.9597,
0.9963,
indicating
highly
effective
robust
model.
demonstrated
outstanding
study's
strengths
include
comprehensive
addressing
data
class
imbalance
fine-tuning
hyperparameters
through
Optimization.
However,
there
is
other
datasets
generalizability
well-established.
study
provides
strong
framework
detection,
improving
clinical
practice
allowing
precise
dependable
diagnostics
interventions.
Diagnostics,
Год журнала:
2024,
Номер
14(3), С. 239 - 239
Опубликована: Янв. 23, 2024
Cardiovascular
diseases,
prevalent
as
leading
health
concerns,
demand
early
diagnosis
for
effective
risk
prevention.
Despite
numerous
diagnostic
models,
challenges
persist
in
network
configuration
and
performance
degradation,
impacting
model
accuracy.
In
response,
this
paper
introduces
the
Optimally
Configured
Improved
Long
Short-Term
Memory
(OCI-LSTM)
a
robust
solution.
Leveraging
Salp
Swarm
Algorithm,
irrelevant
features
are
systematically
eliminated,
Genetic
Algorithm
is
employed
to
optimize
LSTM’s
configuration.
Validation
metrics,
including
accuracy,
sensitivity,
specificity,
F1
score,
affirm
model’s
efficacy.
Comparative
analysis
with
Deep
Neural
Network
Belief
establishes
OCI-LSTM’s
superiority,
showcasing
notable
accuracy
increase
of
97.11%.
These
advancements
position
OCI-LSTM
promising
accurate
efficient
cardiovascular
diseases.
Future
research
could
explore
real-world
implementation
further
refinement
seamless
integration
into
clinical
practice.
Cardiovascular
disease
remains
a
leading
cause
of
mortality
in
the
contemporary
world.
Its
association
with
smoking,
elevated
blood
pressure,
and
cholesterol
levels
underscores
significance
these
risk
factors.
This
study
addresses
challenge
predicting
myocardial
illness,
formidable
task
medical
research.
Accurate
predictions
are
pivotal
for
refining
healthcare
strategies.
investigation
conducts
comparative
analysis
six
distinct
machine
learning
models:
Logistic
Regression,
Support
Vector
Machine,
Decision
Tree,
Bagging,
XGBoost,
LightGBM.
The
attained
outcomes
exhibit
promise,
accuracy
rates
as
follows:
Regression
(81.00%),
Machine
(75.01%),
XGBoost
(92.72%),
LightGBM
(90.60%),
Tree
(82.30%),
Bagging
(83.01%).
Notably,
emerges
top-performing
model.
These
findings
underscore
its
potential
to
enhance
predictive
precision
coronary
infarction.
As
prevalence
cardiovascular
factors
persists,
incorporating
advanced
techniques
holds
refine
proactive
interventions.
Cardiovascular Diabetology,
Год журнала:
2023,
Номер
22(1)
Опубликована: Авг. 4, 2023
Abstract
Background
Various
predictive
models
have
been
developed
for
predicting
the
incidence
of
coronary
heart
disease
(CHD),
but
none
them
has
had
optimal
value.
Although
these
consider
diabetes
as
an
important
CHD
risk
factor,
they
do
not
insulin
resistance
or
triglyceride
(TG).
The
unsatisfactory
performance
prediction
may
be
attributed
to
ignoring
factors
despite
their
proven
effects
on
CHD.
We
decided
modify
standard
through
machine
learning
determine
whether
triglyceride-glucose
index
(TyG-index,
a
logarithmized
combination
fasting
blood
sugar
(FBS)
and
TG
that
demonstrates
resistance)
functions
better
than
predictor.
Methods
Two-thousand
participants
community-based
Iranian
population,
aged
20–74
years,
were
investigated
with
mean
follow-up
9.9
years
(range:
7.6–12.2).
association
between
TyG-index
was
using
multivariate
Cox
proportional
hazard
models.
By
selecting
common
components
previously
validated
scores,
we
substituted
in
All
explained
terms
how
affect
prediction.
CHD-predicting
cut-off
points
calculated.
Results
14.5%.
Compared
lowest
quartile
TyG-index,
fourth
fully
adjusted
ratio
2.32
(confidence
interval
[CI]
1.16–4.68,
p-trend
0.04).
A
>
8.42
highest
negative
value
TyG-index-based
support
vector
(SVM)
performed
significantly
diabetes-based
SVM
only
more
CHD;
it
most
factor
after
age
Conclusion
recommend
clinical
practice
identify
individuals
at
developing
aid
its
prevention
.
Journal of Computer Science and Technology Studies,
Год журнала:
2024,
Номер
6(2), С. 62 - 70
Опубликована: Апрель 20, 2024
Cardiovascular
diseases,
including
myocardial
infarction,
present
significant
challenges
in
modern
healthcare,
necessitating
accurate
prediction
models
for
early
intervention.
This
study
explores
the
efficacy
of
machine
learning
algorithms
predicting
leveraging
a
dataset
comprising
various
clinical
attributes
sourced
from
patients
with
heart
failure.
Six
models,
Logistic
Regression,
Support
Vector
Machine,
XGBoost,
LightGBM,
Decision
Tree,
and
Bagging,
are
evaluated
based
on
key
performance
metrics
such
as
accuracy,
precision,
recall,
F1
Score,
AUC.
The
results
reveal
XGBoost
top
performer,
achieving
an
accuracy
94.80%
AUC
90.0%.
LightGBM
closely
follows
92.50%
92.00%.
Regression
emerges
reliable
option
85.0%.
underscores
potential
enhancing
infarction
prediction,
offering
valuable
insights
decision-making
healthcare
intervention
strategies.