Agriculture
plays
a
crucial
role
in
driving
economic
growth
worldwide.With
the
continuous
of
global
population,
need
for
food
production
and
labor
has
become
increasingly
demanding.However,
agriculture
faces
various
challenges
throughout
entire
process,
from
planting
to
harvesting.Key
obstacles
include
inadequate
chemical
application,
pest
disease
infestation,
improper
irrigation,
drainage,
weed
control,
yield
forecasting.These
have
sparked
discussions
concerns
about
automating
agricultural
practices.The
advent
artificial
intelligence
(AI)
brought
significant
changes
field
agriculture.This
transformative
technology
offers
solutions
safeguard
against
threats
such
as
population
growth,
climate
change,
disputes,
security
concerns.By
harnessing
sensors
incorporating
them
into
robots
drones,
AI
can
assist
with
crop
monitoring
other
vital
tasks.This
not
only
improves
worker
safety
but
also
mitigates
impact
on
natural
ecosystems,
enabling
maintenance
affordable
prices
while
ensuring
increased
meet
needs
our
expanding
population.This
proposed
study
is
designed
highlight
paradigm
shift
taking
place
agriculture,
placing
strong
emphasis
integration
AI-driven
drones
cultivation,
irrigation
monitoring.It
underscores
tremendous
potential
these
evolving
technologies
address
associated
feeding
growing
simultaneously
promoting
sustainable
farming
practices.By
leveraging
AI,
robotic
promising
future
where
processes
are
more
efficient,
productive,
environmentally
friendly.
IEEE Access,
Год журнала:
2023,
Номер
unknown, С. 1 - 1
Опубликована: Авг. 24, 2023
Breast
cancer
is
the
most
common
among
women
and
globally
affects
both
genders.
The
disease
arises
due
to
abnormal
growth
of
tissue
formed
malignant
cells.
Early
detection
breast
crucial
for
enhancing
survival
rate.
Therefore,
artificial
intelligence
has
revolutionized
healthcare
can
serve
as
a
promising
tool
early
diagnosis.
present
study
aims
develop
machine-learning
model
classify
provide
explanations
results.
This
could
improve
understanding
diagnosis
treatment
by
identifying
important
features
tumors
way
they
affect
classification
task.
best-performing
achieved
an
accuracy
97.7%
using
k-nearest
neighbors
precision
98.2%
based
on
Wisconsin
dataset
98.6%
neural
network
with
94.4%
diagnostic
dataset.
Hence,
this
asserts
importance
effectiveness
proposed
approach.
research
explains
behavior
model-agnostic
methods,
demonstrating
that
bare
nuclei
feature
in
area’s
worst
are
factors
determining
malignancy.
work
provides
extensive
insights
into
particular
characteristics
suggests
possible
directions
expected
investigation
future
fundamental
biological
mechanisms
underlie
disease’s
onset.
findings
underline
potential
machine
learning
enhance
therapy
planning
while
emphasizing
interpretability
transparency
intelligence-based
systems.
PeerJ Computer Science,
Год журнала:
2025,
Номер
11, С. e2806 - e2806
Опубликована: Апрель 16, 2025
As
per
a
WHO
survey
conducted
in
2023,
more
than
2.3
million
breast
cancer
(BC)
cases
are
reported
every
year.
In
nearly
95%
of
countries,
the
second
leading
cause
death
for
females
is
BC.
Breast
and
cervical
cancers
80%
deaths
middle-income
countries.
Early
detection
can
help
patients
better
manage
their
condition
increase
chances
survival.
However,
traditional
AI
models
frequently
conceal
decision-making
processes
mainly
tailored
classification
tasks.
Our
approach
combines
composite
deep
learning
techniques
with
explainable
artificial
intelligence
(XAI)
to
enhance
interpretability
predictive
accuracy.
By
utilizing
XAI
examine
features
provide
insights
into
its
classifications,
model
clarifies
rationale
behind
decisions,
resulting
an
understanding
concealed
patterns
linked
detection.
The
strengthens
practitioners’
health
researchers’
confidence
(AI)-based
models.
this
work,
we
introduce
hybrid
bi-directional
long
short-term
memory-convolutional
neural
network
(BiLSTM-CNN)
identify
using
patient
data
effectively.
We
first
balanced
dataset
before
BiLSTM-CNN
model.
(DL)
presented
here
performed
well
comparison
other
studies,
0.993
accuracy,
precision
0.99,
recall
F1-score
0.99.
International Journal of Advanced Computer Science and Applications,
Год журнала:
2024,
Номер
15(5)
Опубликована: Янв. 1, 2024
Everyday,
a
great
deal
of
children
and
young
adults
(aged
five
to
29)
lives
are
lost
in
road
accidents.
The
most
frequent
causes
driver's
behavior,
the
streets
infrastructure
is
lower
quality
delayed
response
emergency
services
especially
rural
areas.
There
need
for
automatics
accident
systems
detection
that
can
assist
recognizing
accidents
determining
their
positions.
This
work
reviews
existing
machine
learning
approaches
detection.
We
propose
three
distinct
classifiers:
Convolutional
Neural
Network
CNN,
Recurrent
Convolution
R-CNN
Support
Vector
Machine
SVM,
using
CCTV
footage
dataset.
These
models
evaluated
based
on
ROC
curve,
F1
measure,
precision,
accuracy
recall,
achieved
accuracies
were
92%,
82%,
93%,
respectively.
In
addition,
we
suggest
an
ensemble
strategy
maximize
strengths
individual
classifiers,
raising
94%.