Pakistan Journal of Science,
Journal Year:
2023,
Volume and Issue:
75(02)
Published: July 19, 2023
Skin
diseases
are
common
in
human
beings
because
of
significant
changes
surrounding
environments.The
most
these
curable
if
diagnosed
at
initial
stages.
Therefore,
earlydiagnosis
can
spare
people’s
precious
lives.
To
address
issues,
we
proposed
a
novel
model
based
on
deep
learning
to
diagnose
the
skin
disease
preliminary
stage
using
classification.
The
developedmodel
correctly
identifies
six
different
namely,
actinic
keratosis,
benign
melanoma,basal
cell
carcinoma,
insects
bite
and
acne.
Several
state-of-the-art
algorithms
examinedon
benchmark
datasets
(International
Imaging
Collaboration
(ISIC)
2019
dataset
andUCI
Data
Center)
for
accuracy,
precision,
recall
F1-score
metrics.
results
show
that
convolutionalneural
network
(CNN)
has
distinct
superiority
over
its
peers
with
accuracy
rate
of97%,
precision
91%,
91%
91%.
This
system
will
provide
care
handlingservices
precise
accurate
help
dermatologist
early
diagnosis
Computers in Biology and Medicine,
Journal Year:
2023,
Volume and Issue:
155, P. 106624 - 106624
Published: Feb. 1, 2023
The
Computer-aided
Diagnosis
or
Detection
(CAD)
approach
for
skin
lesion
analysis
is
an
emerging
field
of
research
that
has
the
potential
to
alleviate
burden
and
cost
cancer
screening.
Researchers
have
recently
indicated
increasing
interest
in
developing
such
CAD
systems,
with
intention
providing
a
user-friendly
tool
dermatologists
reduce
challenges
encountered
associated
manual
inspection.
This
article
aims
provide
comprehensive
literature
survey
review
total
594
publications
(356
segmentation
238
classification)
published
between
2011
2022.
These
articles
are
analyzed
summarized
number
different
ways
contribute
vital
information
regarding
methods
development
systems.
include
relevant
essential
definitions
theories,
input
data
(dataset
utilization,
preprocessing,
augmentations,
fixing
imbalance
problems),
method
configuration
(techniques,
architectures,
module
frameworks,
losses),
training
tactics
(hyperparameter
settings),
evaluation
criteria.
We
intend
investigate
variety
performance-enhancing
approaches,
including
ensemble
post-processing.
also
discuss
these
dimensions
reveal
their
current
trends
based
on
utilization
frequencies.
In
addition,
we
highlight
primary
difficulties
evaluating
classification
systems
using
minimal
datasets,
as
well
solutions
difficulties.
Findings,
recommendations,
disclosed
inform
future
automated
robust
system
analysis.
IEEE Access,
Journal Year:
2023,
Volume and Issue:
11, P. 41003 - 41018
Published: Jan. 1, 2023
Skin
cancer
is
a
prevalent
form
of
malignancy
globally,
and
its
early
accurate
diagnosis
critical
for
patient
survival.
Clinical
evaluation
skin
lesions
essential,
but
it
faces
challenges
such
as
long
waiting
times
subjective
interpretations.
Deep
learning
techniques
have
been
developed
to
tackle
these
assist
dermatologists
in
making
more
diagnoses.
Prompt
treatment
vital
prevent
progression
potentially
life-threatening
consequences.
The
use
deep
algorithms
can
improve
the
speed
accuracy
diagnosis,
leading
earlier
detection
treatment.
Additionally,
reduce
workload
healthcare
professionals,
allowing
them
concentrate
on
complex
cases.
goal
this
study
was
develop
reliable
(DL)
prediction
models
classification;
(i)
deal
with
typical
severe
class
imbalance
problem,
which
arises
because
skin-affected
patients'
significantly
smaller
than
healthy
class;
(ii)
interpret
model
output
better
understand
decision-making
mechanism
(iii)
Propose
an
End-to-End
smart
system
through
android
application.
In
comparison
examination
six
well-known
classifiers,
effectiveness
proposed
DL
technique
explored
terms
metrics
relating
both
generalization
capability
classification
accuracy.
A
used
HAM10000
dataset
optimized
CNN
identify
seven
forms
cancer.
trained
using
two
optimization
functions
(Adam
RMSprop)
three
activation
(Relu,
Swish,
Tanh).
Furthermore,
XAI-based
lesion
developed,
incorporating
Grad-CAM
Grad-CAM++
explain
model's
decisions.
This
help
doctors
make
informed
diagnoses
their
stages,
82%
0.47%
loss
IEEE Internet of Things Journal,
Journal Year:
2023,
Volume and Issue:
10(16), P. 14764 - 14779
Published: June 20, 2023
Artificial
intelligence
(AI)
and
machine
learning
(ML)
are
widely
employed
to
make
the
solutions
more
accurate
autonomous
in
many
smart
intelligent
applications
Internet
of
Things
(IoT).
In
these
IoT
applications,
performance
accuracy
AI/ML
models
main
concerns;
however,
transparency,
interpretability,
responsibility
models'
decisions
often
neglected.
Moreover,
AI/ML-supported
next-generation
there
is
a
need
for
reliable,
transparent,
explainable
systems.
particular,
regardless
whether
simple
or
complex,
how
decision
made,
which
features
affect
decision,
their
adoption
interpretation
by
people
experts
crucial
issues.
Also,
typically
perceive
unpredictable
opaque
AI
outcomes
with
skepticism,
reduces
proliferation
applications.
To
that
end,
(XAI)
has
emerged
as
promising
research
topic
allows
ante-hoc
post-hoc
functioning
stages
black-box
be
understandable,
interpretable.
this
article,
we
provide
an
in-depth
systematic
review
recent
studies
use
XAI
scope
domain.
We
classify
according
methodology
application
areas.
Additionally,
highlight
challenges
open
issues
future
directions
lead
researchers
investigations.
Cluster Computing,
Journal Year:
2024,
Volume and Issue:
unknown
Published: June 17, 2024
Abstract
Skin
cancer
is
one
of
the
most
dangerous
types
due
to
its
immediate
appearance
and
possibility
rapid
spread.
It
arises
from
uncontrollably
growing
cells,
rapidly
dividing
cells
in
area
body,
invading
other
bodily
tissues,
spreading
throughout
body.
Early
detection
helps
prevent
progress
reaching
critical
levels,
reducing
risk
complications
need
for
more
aggressive
treatment
options.
Convolutional
neural
networks
(CNNs)
revolutionize
skin
diagnosis
by
extracting
intricate
features
images,
enabling
an
accurate
classification
lesions.
Their
role
extends
early
detection,
providing
a
powerful
tool
dermatologists
identify
abnormalities
their
nascent
stages,
ultimately
improving
patient
outcomes.
This
study
proposes
novel
deep
convolutional
network
(DCNN)
approach
classifying
The
proposed
DCNN
model
evaluated
using
two
unbalanced
datasets,
namely
HAM10000
ISIC-2019.
compared
with
transfer
learning
models,
including
VGG16,
VGG19,
DenseNet121,
DenseNet201,
MobileNetV2.
Its
performance
assessed
four
widely
used
evaluation
metrics:
accuracy,
recall,
precision,
F1-score,
specificity,
AUC.
experimental
results
demonstrate
that
outperforms
(DL)
models
utilized
these
datasets.
achieved
highest
accuracy
ISIC-2019
$$98.5\%$$
98.5%
$$97.1\%$$
97.1
,
respectively.
These
show
how
competitive
successful
overcoming
problems
caused
class
imbalance
raising
accuracy.
Furthermore,
demonstrates
superior
performance,
particularly
excelling
terms
recent
studies
utilize
same
which
highlights
robustness
effectiveness
DCNN.
Cancers,
Journal Year:
2023,
Volume and Issue:
16(1), P. 108 - 108
Published: Dec. 24, 2023
Skin
cancer
is
a
widespread
disease
that
typically
develops
on
the
skin
due
to
frequent
exposure
sunlight.
Although
can
appear
any
part
of
human
body,
accounts
for
significant
proportion
all
new
diagnoses
worldwide.
There
are
substantial
obstacles
precise
diagnosis
and
classification
lesions
because
morphological
variety
indistinguishable
characteristics
across
malignancies.
Recently,
deep
learning
models
have
been
used
in
field
image-based
skin-lesion
demonstrated
diagnostic
efficiency
par
with
dermatologists.
To
increase
accuracy
lesions,
cutting-edge
multi-layer
convolutional
neural
network
termed
SkinLesNet
was
built
this
study.
The
dataset
study
extracted
from
PAD-UFES-20
augmented.
PAD-UFES-20-Modified
includes
three
common
forms
lesions:
seborrheic
keratosis,
nevus,
melanoma.
comprehensively
assess
SkinLesNet’s
performance,
its
evaluation
expanded
beyond
dataset.
Two
additional
datasets,
HAM10000
ISIC2017,
were
included,
compared
widely
ResNet50
VGG16
models.
This
broader
confirmed
effectiveness,
as
it
consistently
outperformed
both
benchmarks
datasets.