Detection of Covid-19 Using AI Application
EAI Endorsed Transactions on Pervasive Health and Technology,
Journal Year:
2023,
Volume and Issue:
9
Published: June 28, 2023
INTRODUCTION:
In
December
of
2019,
the
infection
which
caused
pandemic
started
in
Hubei
territory
Wuhan,
China.
They
were
identified
as
SARS-CoV-2,
a
highly
infectious,
easily
transmissible
virus
that
has
an
increasing
number
deaths
worldwide.
Covid
can
be
perceived
with
testing
strategy
known
RT-PCR.
As
now,
this
technique
is
broadly
utilized
for
identifying
infection.
OBJECTIVES:
The
imaging
modalities
are
various
degrees
seriousness
from
asymptomatic
to
basic
cases.
Side
effects
individual
contaminated
COVID-19
incorporate
gentle
hack,
fever,
chest
torment,
weakness,
and
so
forth
An
extremefundamental
ailment
requires
consideration.
Imaging
assumed
larger
part
during
flare-up,
CT
being
better
option
than
invert
transcriptase-polymerase
chain
response
testing.
METHODS:
With
artificial
intelligence
robotics,
variety
devices
solutions
have
been
introduced
improve
contactless
service
forhumans.
presentation
AI
technology
may
distinct
advantage
treatment
patients.
Information
could
solve
tracking
system
without
any
human
interaction.
RESULTS:
methods
permit
radiologists
doctors
distinguish
inner
structures
see
their
shape,
size,
thickness,
surface,which
help
early
discovery
CONCLUSION:
This
detailed
information
data
decide
whether
there's
clinical
issue,
provide
extent
accurate
area
matter,
uncover
other
significant
details
will
assist
doctor
deciding
best
treatment.
Language: Английский
Applications of Artificial Intelligence in the Economy, Including Applications in Stock Trading, Market Analysis, and Risk Management
IEEE Access,
Journal Year:
2023,
Volume and Issue:
11, P. 80769 - 80793
Published: Jan. 1, 2023
In
an
increasingly
automated
world,
Artificial
Intelligence
(AI)
promises
to
revolutionize
how
people
work,
consume,
and
develop
their
societies.
Science
technology
advancement
has
led
humans
seek
solutions
problems;
however,
AI-based
is
not
novel
a
wide
range
of
economic
applications.
This
paper
examines
AI
applications
in
economics,
including
stock
trading,
market
analysis,
risk
assessment.
A
comprehensive
taxonomy
proposed
investigate
various
scopes
the
categories.
Furthermore,
we
will
discuss
this
area's
most
significant
techniques
evaluation
criteria.
As
final
step,
identify
challenges,
open
issues,
future
work
suggestions.
Language: Английский
Detection of SARS-CoV-2 Virus Using Lightweight Convolutional Neural Networks
Wireless Personal Communications,
Journal Year:
2024,
Volume and Issue:
135(2), P. 941 - 965
Published: March 1, 2024
Language: Английский
Piranha Foraging Optimization Algorithm with Deep Learning Enabled Fault Detection in Blockchain-Assisted Sustainable IoT Environment
Sustainability,
Journal Year:
2025,
Volume and Issue:
17(4), P. 1362 - 1362
Published: Feb. 7, 2025
As
the
acceptance
of
Internet
Things
(IoT)
systems
quickens,
guaranteeing
their
sustainability
and
reliability
poses
an
important
challenge.
Faults
in
IoT
can
result
resource
inefficiency,
high
energy
consumption,
reduced
security,
operational
downtime,
obstructing
goals.
Thus,
blockchain
(BC)
technology,
known
for
its
decentralized
distributed
characteristics,
offer
significant
solutions
networks.
BC
technology
provides
several
benefits,
such
as
traceability,
immutability,
confidentiality,
tamper
proofing,
data
integrity,
privacy,
without
utilizing
a
third
party.
Recently,
consensus
algorithms,
including
ripple,
proof
stake
(PoS),
work
(PoW),
practical
Byzantine
fault
tolerance
(PBFT),
have
been
developed
to
enhance
efficiency.
Combining
detection
algorithms
more
reliable
secure
environment.
this
study
presents
sustainable
BC-Driven
Edge
Verification
with
Consensus
Approach-enabled
Optimal
Deep
Learning
(BCEVCA-ODL)
approach
recognition
environments.
The
proposed
BCEVCA-ODL
technique
incorporates
merits
BC,
IoT,
DL
techniques
networks’
trustworthiness,
efficacy.
devices
substantial
level
decision-making
capacity
achieve
on
accomplishment
intrablock
transactions.
A
stacked
sparse
autoencoder
(SSAE)
model
is
employed
detect
faults
Lastly,
Piranha
Foraging
Optimization
Algorithm
(PFOA)
used
optimum
hyperparameter
tuning
SSAE
approach,
which
assists
enhancing
rate.
wide
range
simulations
was
accomplished
highlight
efficacy
technique.
achieved
superior
FDA
value
100%
at
probability
0.00,
outperforming
other
evaluated
methods.
highlights
significance
embedding
into
systems,
underlining
how
advanced
provide
environmental
benefits.
experimental
outcomes
pave
way
greener
technologies
that
support
global
initiatives.
Language: Английский
Research on university laboratory management and maintenance framework based on computer aided technology
Jiaqing Yao,
No information about this author
Zheng Yuan
No information about this author
Applied Mathematics and Nonlinear Sciences,
Journal Year:
2025,
Volume and Issue:
10(1)
Published: Jan. 1, 2025
Abstract
This
With
the
development
of
information
technology,
university
laboratories
play
an
increasingly
important
role
in
teaching
and
research.
However,
traditional
laboratory
management
methods
have
many
shortcomings
terms
resource
scheduling,
system
flexibility,
automation,
making
it
difficult
to
adapt
constantly
changing
demands
complex
experimental
environments.
Traditional
often
rely
on
manual
management,
resulting
low
utilization
efficiency
potential
waste
or
scheduling
imbalance
under
high
concurrency
conditions.
Moreover,
models
lack
real-time
monitoring
flexible
capabilities,
failing
meet
requirements
efficient
modern
management.
To
address
these
issues,
this
paper
proposes
a
computer
method
based
virtualization
technology.
By
designing
multi-layer
platform
architecture,
including
layer,
desktop
service
foundation
complete
is
formed,
enhancing
automation
levels.
also
introduces
Column
Generation-based
Shared
Resource
Constrained
Project
Scheduling
Algorithm
(CGS)
achieve
allocation
optimized
scheduling.
Experimental
results
show
that
proposed
outperforms
utilization,
task
completion
time,
providing
effective
solution
for
Language: Английский
Netizens' concerns during COVID-19: a topic evolution analysis of Chinese social media platforms
Kybernetes,
Journal Year:
2023,
Volume and Issue:
54(2), P. 1109 - 1127
Published: Nov. 19, 2023
Purpose
This
study
analyzes
the
evolution
of
topics
related
to
COVID-19
on
Chinese
social
media
platforms
with
aim
identifying
changes
in
netizens'
concerns
during
different
stages
pandemic.
Design/methodology/approach
In
total,
793,947
posts
were
collected
from
Zhihu,
a
Question
and
Answer
website,
Dingxiangyuan,
online
healthcare
community,
31
December,
2019,
4
August,
2021.
Topics
extracted
prodromal
outbreak
stages,
abatement–resurgence
cycle.
Findings
Netizens'
varied
stages.
During
netizens
showed
greater
concern
about
news,
impact
prevention
control
COVID-19.
first
round
abatement
resurgence
stage,
remained
concerned
news
pandemic,
however,
less
attention
was
paid
later
popularity
grew
concerning
COVID-19,
while
engaged
more
discussions
international
events
raising
spirits
fight
global
Practical
implications
contributes
practice
by
providing
way
for
government
policy
makers
retrospect
pandemic
thereby
make
good
preparation
take
proper
measures
communicate
citizens
address
their
demands
similar
situations
future.
Originality/value
literature
applying
an
adapted
version
Fink's
(1986)
crisis
life
cycle
create
five-stage
model
understand
repeated
Mainland
China.
Language: Английский
Deep learning for multisource medical information processing
Elsevier eBooks,
Journal Year:
2024,
Volume and Issue:
unknown, P. 45 - 76
Published: Jan. 1, 2024
Language: Английский
Boosting medical diagnostics with a novel gradient-based sample selection method
Computers in Biology and Medicine,
Journal Year:
2024,
Volume and Issue:
182, P. 109165 - 109165
Published: Sept. 24, 2024
Language: Английский
Multi-Classification Model for Distinguishing Covid-19 from Different Lung Diseases based on Deep Learning Algorithms
Mohammed Al-Salamony
No information about this author
Deleted Journal,
Journal Year:
2023,
Volume and Issue:
0(0), P. 0 - 0
Published: June 22, 2023
The
Corona-Virus
is
a
worldwide
pandemic
classified
as
one
of
the
scariest
viruses,
according
to
World
Health
Organization
(WHO).That
because
its
effect
on
person's
lungs,
which
causes
high
deaths.Among
vital
effectiveness
indicators
for
identifying
some
diseases,
including
coronavirus,
are
computerized
tomography
(CT)
scans
and
chest
X-rays.Data
heterogeneity
between
X-ray
CT
biomarkers
makes
learning
capability
models
more
challenging.Furthermore,
they
utilize
multistage
diagnosing
COVID-19
from
lung
diseases.Hence,
proposed
solution
behind
this
research
leverage
form
deep
architecture
applying
many
classification
resolve
these
problems
using
fusion
two
images
that
can
identify
COVID-19,
pneumonia,
cancer
in
single
procedure.Firstly,
patches
extracted
multimodal
by
every
patch
convolutional
neural
network
(CNN)
address
issues.Then,
available
features
combined
further
AlexNet
classifier,
CNN
Deep
Feature
Concatenation
(DFC)
mechanism.All
learned
straightforward
CNN.Finally,
experimental
results
demonstrated
+
DFC
exceeded
comparable
work
already
done
with
98.47
%
accuracy.Lithium-ion
batteries
Li1.3Nb0.3Mn0
Language: Английский
Detection of COVID-19 Using Convolutional Neural Networks
Arshita Srivastava,
No information about this author
Shubham Mishra
No information about this author
Published: Sept. 8, 2023
A
highly
contagious
illness
caused
by
the
COVID-19
pandemic
is
proven
to
havoc
with
people's
health
and
well-being
all
over
globe.
Chest
radiography
one
of
most
crucial
databases
for
applying
detection
techniques.
The
respiratory
system
contaminated
COVID-19,
which
also
affects
alveoli
replicates
itself.
Conventional
approaches
such
as
RT
-
PCR
tests,
rapid
antigen
serological
etc.
are
generally
used
COVID
came
out
be
costly
time-consuming.
There
have
been
several
suggested
artificial
intelligence
(AI)-based
models
in
individuals'
using
lung
ultrasound
images,
voice
patterns,
chest
sounds,
proposed
model
shows
how
disease
cases
could
identified
features
variations
images.
deep
convolutional
neural
network
(CNN)
ResNet50
modified
configuration
has
identification
from
image
dataset.
depicts
comparison
technique
Resnet
101
model.
dataset
containing
Covid
infected,
normal,
pneumonia-infected
Additionally,
can
identify
covid-19
patients'
current
conditions
real-time
identifying
coronavirus
diseases
CT
scan
pictures.
database
ability
monitor
detected
patients
keep
their
order
improve
training
model's
accuracy.
provides
approximately
96.73%
accuracy
explicit
competency
ResNet
other
existing
models.
Language: Английский