International Journal of Pure and Applied Sciences,
Journal Year:
2024,
Volume and Issue:
unknown
Published: June 22, 2024
Beyin
tümörleri
dünya
çapında
önemli
bir
patolojik
durumu
temsil
etmektedir.
Be-yin
içindeki
dokunun
anormal
büyümesiyle
karakterize
edilen
bu
tümörler,
sağlıklı
beyin
dokularını
yerinden
ederek
ve
kafa
içi
basıncını
yükselterek
ciddi
tehdit
oluşturmaktadır.
Zamanında
müdahale
edilmediği
takdirde
durumun
sonuçları
ölümcül
olabilir.
Manyetik
Rezonans
Görüntüleme
(MRG),
özellikle
yumuşak
do-kuları
incelemek
için
çok
uygun
olan
güvenilir
tanı
yöntemi
olarak
öne
çık-maktadır.
Bu
makale,
(MR)
görüntülerini
kullanarak
kanserlerinin
otomatik
tespiti
yenilikçi
derin
öğrenme
tabanlı
yaklaşım
sunmaktadır.
Önerilen
metodoloji,
MR
görüntülerinden
özellikler
çıkarmak
yeni
Residual-ESA
modelinin
(A-ESA,
yani
Residual
Convolutional
Neural
Network)
sıfırdan
eğitilmesini
içermektedir.
yaklaşım,
2
sınıf
(sağlıklı
tümör)
4
(glioma
tümörü,
meningioma
hipofiz
tümörü
tümörsüz)
veri
setlerinden
oluşan
iki
ayrı
seti
üzerinde
değerlendirilmiştir.
sınıflı
kümeleri
en
iyi
sınıflandırma
doğruluğu
sırasıyla
%88.23
%77.14
idi.
Bioengineering,
Journal Year:
2024,
Volume and Issue:
11(3), P. 266 - 266
Published: March 8, 2024
There
is
no
doubt
that
brain
tumors
are
one
of
the
leading
causes
death
in
world.
A
biopsy
considered
most
important
procedure
cancer
diagnosis,
but
it
comes
with
drawbacks,
including
low
sensitivity,
risks
during
treatment,
and
a
lengthy
wait
for
results.
Early
identification
provides
patients
better
prognosis
reduces
treatment
costs.
The
conventional
methods
identifying
based
on
medical
professional
skills,
so
there
possibility
human
error.
labor-intensive
nature
traditional
approaches
makes
healthcare
resources
expensive.
variety
imaging
available
to
detect
tumors,
magnetic
resonance
(MRI)
computed
tomography
(CT).
Medical
research
being
advanced
by
computer-aided
diagnostic
processes
enable
visualization.
Using
clustering,
automatic
tumor
segmentation
leads
accurate
detection
risk
helps
effective
treatment.
This
study
proposed
Fuzzy
C-Means
algorithm
MRI
images.
To
reduce
complexity,
relevant
shape,
texture,
color
features
selected.
improved
Extreme
Learning
machine
classifies
98.56%
accuracy,
99.14%
precision,
99.25%
recall.
classifier
consistently
demonstrates
higher
accuracy
across
all
classes
compared
existing
models.
Specifically,
model
exhibits
improvements
ranging
from
1.21%
6.23%
when
other
consistent
enhancement
emphasizes
robust
performance
classifier,
suggesting
its
potential
more
reliable
classification.
achieved
recall
rates
98.47%,
98.59%,
98.74%
Fig
share
dataset
99.42%,
99.75%,
99.28%
Kaggle
dataset,
respectively,
which
surpasses
competing
algorithms,
particularly
detecting
glioma
grades.
shows
an
improvement
approximately
5.39%,
6.22%
Despite
challenges,
artifacts
computational
study's
commitment
refining
technique
addressing
limitations
positions
FCM
as
noteworthy
advancement
realm
precise
efficient
identification.
PeerJ Computer Science,
Journal Year:
2024,
Volume and Issue:
10, P. e2245 - e2245
Published: Sept. 6, 2024
Artificial
intelligence
(AI)
and
machine
learning
(ML)
aim
to
mimic
human
enhance
decision
making
processes
across
various
fields.
A
key
performance
determinant
in
a
ML
model
is
the
ratio
between
training
testing
dataset.
This
research
investigates
impact
of
varying
train-test
split
ratios
on
generalization
capabilities
using
BraTS
2013
Logistic
regression,
random
forest,
k
nearest
neighbors,
support
vector
machines
were
trained
with
ranging
from
60:40
95:05.
Findings
reveal
significant
variations
accuracies
these
ratios,
emphasizing
critical
need
strike
balance
avoid
overfitting
or
underfitting.
The
study
underscores
importance
selecting
an
optimal
that
considers
tradeoffs
such
as
metrics,
statistical
measures,
resource
constraints.
Ultimately,
insights
contribute
deeper
understanding
how
selection
impacts
effectiveness
reliability
applications
diverse
Electronics,
Journal Year:
2025,
Volume and Issue:
14(4), P. 710 - 710
Published: Feb. 12, 2025
Accurate
detection
and
diagnosis
of
brain
tumors
at
early
stages
is
significant
for
effective
treatment.
While
numerous
methods
have
been
developed
tumor
classification,
several
rely
on
traditional
techniques,
often
resulting
in
suboptimal
performance.
In
contrast,
AI-based
deep
learning
techniques
shown
promising
results,
consistently
achieving
high
accuracy
across
various
types
while
maintaining
model
interpretability.
Inspired
by
these
advancements,
this
paper
introduces
an
improved
variant
EfficientNet
multi-grade
addressing
the
gap
between
performance
explainability.
Our
approach
extends
capabilities
to
classify
four
types:
glioma,
meningioma,
pituitary
tumor,
non-tumor.
For
enhanced
explainability,
we
incorporate
gradient-weighted
class
activation
mapping
(Grad-CAM)
improve
The
input
MRI
images
undergo
data
augmentation
before
being
passed
through
feature
extraction
phase,
where
underlying
patterns
are
learned.
achieves
average
98.6%,
surpassing
other
state-of-the-art
standard
datasets
a
substantially
reduced
parameter
count.
Furthermore,
explainable
AI
(XAI)
analysis
demonstrates
model’s
ability
focus
relevant
regions,
enhancing
its
This
accurate
interpretable
classification
has
potential
significantly
aid
clinical
decision-making
neuro-oncology.
Heliyon,
Journal Year:
2024,
Volume and Issue:
10(17), P. e36773 - e36773
Published: Aug. 26, 2024
In
cases
of
brain
tumors,
some
cells
experience
abnormal
and
rapid
growth,
leading
to
the
development
tumors.
Brain
tumors
represent
a
significant
source
illness
affecting
brain.
Magnetic
Resonance
Imaging
(MRI)
stands
as
well-established
coherent
diagnostic
method
for
cancer
detection.
However,
resulting
MRI
scans
produce
vast
number
images,
which
require
thorough
examination
by
radiologists.
Manual
assessment
these
images
consumes
considerable
time
may
result
in
inaccuracies
Recently,
deep
learning
has
emerged
reliable
tool
decision-making
tasks
across
various
domains,
including
finance,
medicine,
cybersecurity,
agriculture,
forensics.
context
diagnosis,
Deep
Learning
Machine
algorithms
applied
data
enable
prognosis.
achieving
higher
accuracy
is
crucial
providing
appropriate
treatment
patients
facilitating
prompt
To
address
this,
we
propose
use
Convolutional
Neural
Networks
(CNN)
tumor
Our
approach
utilizes
dataset
consisting
two
classes:
three
representing
different
types
one
non-tumor
samples.
We
present
model
that
leverages
pre-trained
CNNs
categorize
cases.
Additionally,
augmentation
techniques
are
employed
augment
size.
The
effectiveness
our
proposed
CNN
evaluated
through
metrics,
validation
loss,
confusion
matrix,
overall
loss.
employing
ResNet50
EfficientNet
demonstrated
levels
accuracy,
precision,
recall
detecting
Sustainable Development,
Journal Year:
2024,
Volume and Issue:
unknown
Published: Oct. 6, 2024
Abstract
Artificial
intelligence
(AI)
and
environmental
points
are
equally
important
components
within
the
response
to
local
weather
change.
Therefore,
based
on
efforts
of
reducing
carbon
emissions
more
efficiently
effectively,
this
study
tries
focus
AI
integration
with
capture
technology.
The
urgency
tackling
climate
change
means
we
need
advanced
capture,
is
an
area
where
can
make
a
huge
impact
in
how
these
technologies
operated
managed.
It
will
minimize
manufacturing
improve
both
resource
efficiency
as
well
our
planet's
footprint
by
turning
waste
into
something
value
again.
could
be
leveraged
analyze
data
sets
from
plants,
searching
for
optimal
system
settings
efficient
ways
identifying
patterns
available
information
at
larger
scale
than
currently
possible.
In
addition,
incorporated
sensors
monitoring
mechanisms
supply
chain
identify
any
operational
failure
reception
itself
allowing
timely
action
protect
those
areas.
also
helps
generative
design
materials,
which
allows
researchers
explore
new
types
carbon‐absorbing
material,
including
metal–organic
frameworks
polymeric
materials
that
industrial
CO
2
,
such
moisture.
it
increases
accuracy
reservoir
simulations
controls
injection
systems
storage
or
enhanced
oil
recovery.
Through
applying
algorithms
geology,
production
performance
real‐time
would
like
facilitate
optimization
processes
while
assuring
maximum
efficiency.
integrates
renewable‐based
employed
AI‐driven
smart
grid
methods.
International Journal of Computational and Experimental Science and Engineering,
Journal Year:
2025,
Volume and Issue:
11(2)
Published: April 30, 2025
The
use
of
capsule
networks
into
medical
imaging
as
a
means
advancing
is
possible
path
for
improving
diagnostic
accuracy.
objective
this
study
to
enhance
the
interpretation
and
categorization
pictures
by
making
hierarchical
pose-sensitive
representations
that
are
made
available
Capsule
Networks.
purpose
project
improve
capability
machine
learning
models
reliably
identify
categorize
abnormalities,
lesions,
other
pathological
findings
in
data.
This
will
be
accomplished
capturing
detailed
spatial
connections
including
perspective
invariance.
major
goal
doctors'
early
diagnosis
abilities
patient
outcomes
treatment
times.
When
it
comes
situations
which
typical
convolutional
neural
could
have
difficulty
dealing
with
complicated
structures
or
changes
position
appearance,
method
very
helpful.
Networks
potential
diagnostics
offering
interpretable
contextually
rich
representations.
would
enable
physicians
access
technologies
more
reliable
efficient
illness
identification
diagnosis.