Breakthroughs
in
skin
cancer
diagnostics
have
resulted
from
recent
image
recognition
and
Artificial
Intelligence
(AI)
technology
advancements.
There
has
been
growing
that
can
be
lethal
to
humans.
For
instance,
melanoma
is
the
most
unpredictable
terrible
form
of
cancer.
Sensors,
Год журнала:
2023,
Номер
23(9), С. 4178 - 4178
Опубликована: Апрель 22, 2023
Recently,
various
sophisticated
methods,
including
machine
learning
and
artificial
intelligence,
have
been
employed
to
examine
health-related
data.
Medical
professionals
are
acquiring
enhanced
diagnostic
treatment
abilities
by
utilizing
applications
in
the
healthcare
domain.
data
used
many
researchers
detect
diseases
identify
patterns.
In
current
literature,
there
very
few
studies
that
address
algorithms
improve
accuracy
efficiency.
We
examined
effectiveness
of
improving
time
series
metrics
for
heart
rate
transmission
(accuracy
efficiency).
this
paper,
we
reviewed
several
applications.
After
a
comprehensive
overview
investigation
supervised
unsupervised
algorithms,
also
demonstrated
tasks
based
on
past
values
(along
with
reviewing
their
feasibility
both
small
large
datasets).
Human-Centric Intelligent Systems,
Год журнала:
2023,
Номер
3(4), С. 588 - 615
Опубликована: Сен. 11, 2023
Abstract
The
domain
of
Machine
learning
has
experienced
Substantial
advancement
and
development.
Recently,
showcasing
a
Broad
spectrum
uses
like
Computational
linguistics,
image
identification,
autonomous
systems.
With
the
increasing
demand
for
intelligent
systems,
it
become
crucial
to
comprehend
different
categories
machine
acquiring
knowledge
systems
along
with
their
applications
in
present
world.
This
paper
presents
actual
use
cases
learning,
including
cancer
classification,
how
algorithms
have
been
implemented
on
medical
data
categorize
diverse
forms
anticipate
outcomes.
also
discusses
supervised,
unsupervised,
reinforcement
highlighting
benefits
disadvantages
each
category
intelligence
system.
conclusions
this
systematic
study
methods
classification
numerous
implications.
main
lesson
is
that
through
accurate
kinds,
patient
outcome
prediction,
identification
possible
therapeutic
targets,
holds
enormous
potential
improving
diagnosis
therapy.
review
offers
readers
broad
understanding
as
advancements
applied
today,
empowering
them
decide
themselves
whether
these
clinical
settings.
Lastly,
wraps
up
by
engaging
discussion
future
new
types
be
developed
field
advances.
Overall,
information
included
survey
article
useful
scholars,
practitioners,
individuals
interested
gaining
about
fundamentals
its
various
areas
activities.
AIMS Public Health,
Год журнала:
2024,
Номер
11(1), С. 58 - 109
Опубликована: Янв. 1, 2024
<abstract>
<p>In
recent
years,
machine
learning
(ML)
and
deep
(DL)
have
been
the
leading
approaches
to
solving
various
challenges,
such
as
disease
predictions,
drug
discovery,
medical
image
analysis,
etc.,
in
intelligent
healthcare
applications.
Further,
given
current
progress
fields
of
ML
DL,
there
exists
promising
potential
for
both
provide
support
realm
healthcare.
This
study
offered
an
exhaustive
survey
on
DL
system,
concentrating
vital
state
art
features,
integration
benefits,
applications,
prospects
future
guidelines.
To
conduct
research,
we
found
most
prominent
journal
conference
databases
using
distinct
keywords
discover
scholarly
consequences.
First,
furnished
along
with
cutting-edge
ML-DL-based
analysis
smart
a
compendious
manner.
Next,
integrated
advancement
services
including
ML-healthcare,
DL-healthcare,
ML-DL-healthcare.
We
then
DL-based
applications
industry.
Eventually,
emphasized
research
disputes
recommendations
further
studies
based
our
observations.</p>
</abstract>
Frontiers in Medicine,
Год журнала:
2024,
Номер
10
Опубликована: Янв. 8, 2024
Background
Skin
cancer
is
one
of
the
most
common
forms
worldwide,
with
a
significant
increase
in
incidence
over
last
few
decades.
Early
and
accurate
detection
this
type
can
result
better
prognoses
less
invasive
treatments
for
patients.
With
advances
Artificial
Intelligence
(AI),
tools
have
emerged
that
facilitate
diagnosis
classify
dermatological
images,
complementing
traditional
clinical
assessments
being
applicable
where
there
shortage
specialists.
Its
adoption
requires
analysis
efficacy,
safety,
ethical
considerations,
as
well
considering
genetic
ethnic
diversity
Objective
The
systematic
review
aims
to
examine
research
on
detection,
classification,
assessment
skin
images
settings.
Methods
We
conducted
literature
search
PubMed,
Scopus,
Embase,
Web
Science,
encompassing
studies
published
until
April
4th,
2023.
Study
selection,
data
extraction,
critical
appraisal
were
carried
out
by
two
independent
reviewers.
Results
subsequently
presented
through
narrative
synthesis.
Through
search,
760
identified
four
databases,
from
which
only
18
selected,
focusing
developing,
implementing,
validating
systems
detect,
diagnose,
This
covers
descriptive
analysis,
scenarios,
processing
techniques,
study
results
perspectives,
physician
diversity,
accessibility,
participation.
Conclusion
application
artificial
intelligence
dermatology
has
potential
revolutionize
early
cancer.
However,
it
imperative
validate
collaborate
healthcare
professionals
ensure
its
effectiveness
safety.
Scientific Reports,
Год журнала:
2024,
Номер
14(1)
Опубликована: Фев. 21, 2024
Abstract
Skin
cancer
is
a
frequently
occurring
and
possibly
deadly
disease
that
necessitates
prompt
precise
diagnosis
in
order
to
ensure
efficacious
treatment.
This
paper
introduces
an
innovative
approach
for
accurately
identifying
skin
by
utilizing
Convolution
Neural
Network
architecture
optimizing
hyperparameters.
The
proposed
aims
increase
the
precision
efficacy
of
recognition
consequently
enhance
patients'
experiences.
investigation
tackle
various
significant
challenges
recognition,
encompassing
feature
extraction,
model
design,
utilizes
advanced
deep-learning
methodologies
extract
complex
features
patterns
from
images.
We
learning
procedure
deep
integrating
Standard
U-Net
Improved
MobileNet-V3
with
optimization
techniques,
allowing
differentiate
malignant
benign
cancers.
Also
substituted
crossed-entropy
loss
function
Mobilenet-v3
mathematical
framework
bias
accuracy.
model's
squeeze
excitation
component
was
replaced
practical
channel
attention
achieve
parameter
reduction.
Integrating
cross-layer
connections
among
Mobile
modules
has
been
leverage
synthetic
effectively.
dilated
convolutions
were
incorporated
into
receptive
field.
hyperparameters
utmost
importance
improving
efficiency
models.
To
fine-tune
hyperparameter,
we
employ
sophisticated
methods
such
as
Bayesian
method
using
pre-trained
CNN
MobileNet-V3.
compared
existing
models,
i.e.,
MobileNet,
VGG-16,
MobileNet-V2,
Resnet-152v2
VGG-19
on
“HAM-10000
Melanoma
Cancer
dataset".
empirical
findings
illustrate
optimized
hybrid
outperforms
detection
segmentation
techniques
based
high
97.84%,
sensitivity
96.35%,
accuracy
98.86%
specificity
97.32%.
enhanced
performance
this
research
resulted
timelier
more
diagnoses,
potentially
contributing
life-saving
outcomes
mitigating
healthcare
expenditures.
Scientific Reports,
Год журнала:
2025,
Номер
15(1)
Опубликована: Фев. 11, 2025
Skin
cancer
can
be
prevalent
in
people
of
any
age
group
who
are
exposed
to
ultraviolet
(UV)
radiation.
Among
all
other
types,
melanoma
is
a
notable
severe
kind
skin
cancer,
which
fatal.
Melanoma
malignant
arising
from
melanocytes,
requiring
early
detection.
Typically,
lesions
classified
either
as
benign
or
malignant.
However,
some
do
exist
that
don't
show
clear
signs,
making
them
suspicious.
If
unnoticed,
these
suspicious
develop
into
melanoma,
invasive
treatments
later
on.
These
intermediate
completely
curable
if
it
diagnosed
at
their
stages.
To
tackle
this,
few
researchers
intended
improve
the
image
quality
infected
obtained
dermoscopy
through
reconstruction
techniques.
Analyzing
reconstructed
super-resolution
(SR)
images
allows
detection,
fine
feature
extraction,
and
treatment
plans.
Despite
advancements
machine
learning,
deep
complex
neural
networks
enhancing
lesion
quality,
key
challenge
remains
unresolved:
how
intricate
textures
while
performing
significant
up
scaling
medical
reconstruction?
Thus,
an
artificial
intelligence
(AI)
based
algorithm
proposed
obtain
features
dermoscopic
for
diagnosis.
This
serves
non-invasive
approach.
In
this
research,
novel
information
improvised
generative
adversarial
network
(MELIIGAN)
framework
expedited
diagnosis
lesions.
Also,
designed
stacked
residual
block
handles
larger
factors
fine-grained
details.
Finally,
hybrid
loss
function
with
total
variation
(TV)
regularization
term
switches
Charbonnier
function,
robust
substitute
mean
square
error
function.
The
benchmark
dataset
results
structural
index
similarity
(SSIM)
0.946
peak
signal-to-noise
ratio
(PSNR)
40.12
dB
highest
texture
information,
evidently
compared
state-of-the-art
methods.
Scientific Reports,
Год журнала:
2024,
Номер
14(1)
Опубликована: Янв. 29, 2024
Abstract
The
increase
in
eye
disorders
among
older
individuals
has
raised
concerns,
necessitating
early
detection
through
regular
examinations.
Age-related
macular
degeneration
(AMD),
a
prevalent
condition
over
45,
is
leading
cause
of
vision
impairment
the
elderly.
This
paper
presents
comprehensive
computer-aided
diagnosis
(CAD)
framework
to
categorize
fundus
images
into
geographic
atrophy
(GA),
intermediate
AMD,
normal,
and
wet
AMD
categories.
crucial
for
precise
age-related
enabling
timely
intervention
personalized
treatment
strategies.
We
have
developed
novel
system
that
extracts
both
local
global
appearance
markers
from
images.
These
are
obtained
entire
retina
iso-regions
aligned
with
optical
disc.
Applying
weighted
majority
voting
on
best
classifiers
improves
performance,
resulting
an
accuracy
96.85%,
sensitivity
93.72%,
specificity
97.89%,
precision
93.86%,
F1
ROC
95.85%,
balanced
95.81%,
sum
95.38%.
not
only
achieves
high
but
also
provides
detailed
assessment
severity
each
retinal
region.
approach
ensures
final
aligns
physician’s
understanding
aiding
them
ongoing
follow-up
patients.
Technology and Health Care,
Год журнала:
2025,
Номер
unknown
Опубликована: Фев. 2, 2025
Among
the
many
cancers
that
people
face
today,
skin
cancer
is
among
deadliest
and
most
dangerous.
As
a
result,
improving
patients’
chances
of
survival
requires
to
be
identified
classified
early.
Therefore,
it
critical
assist
radiologists
in
detecting
through
development
Computer
Aided
Diagnosis
(CAD)
techniques.
The
diagnostic
procedure
currently
makes
heavy
use
Deep
Learning
(DL)
techniques
for
disease
identification.
In
addition,
lesion
extraction
improved
classification
performance
are
achieved
Region
Growing
(RG)
based
segmentation.
At
outset
this
study,
noise
reduced
using
an
Adaptive
Wiener
Filter
(AWF),
hair
removed
Maximum
Gradient
Intensity
(MGI).
Then,
best
RG,
which
result
integrating
RG
with
Modified
Honey
Badger
Optimiser
(MHBO),
does
Finally,
several
forms
DL
model
MobileSkinNetV2.
experiments
were
conducted
on
ISIC
dataset
results
show
accuracy
precision
99.01%
98.6%,
respectively.
comparison
existing
models,
experimental
proposed
performs
competitively,
great
news
dermatologists
treating
cancer.