Intelligent Internet of Medical Things for Depression: Current Advancements, Challenges, and Trends
International Journal of Intelligent Systems,
Год журнала:
2025,
Номер
2025(1)
Опубликована: Янв. 1, 2025
We
investigated
the
fusion
of
Intelligent
Internet
Medical
Things
(IIoMT)
with
depression
management,
aiming
to
autonomously
identify,
monitor,
and
offer
accurate
advice
without
direct
professional
intervention.
Addressing
pivotal
questions
regarding
IIoMT’s
role
in
identification,
its
correlation
stress
anxiety,
impact
machine
learning
(ML)
deep
(DL)
on
depressive
disorders,
challenges
potential
prospects
integrating
management
IIoMT,
this
research
offers
significant
contributions.
It
integrates
artificial
intelligence
(AI)
(IoT)
paradigms
expand
studies,
highlighting
data
science
modeling’s
practical
application
for
intelligent
service
delivery
real‐world
settings,
emphasizing
benefits
within
IoT.
Furthermore,
it
outlines
an
IIoMT
architecture
gathering,
analyzing,
preempting
employing
advanced
analytics
enhance
intelligence.
The
study
also
identifies
current
challenges,
future
trajectories,
solutions
domain,
contributing
scientific
understanding
management.
evaluates
168
closely
related
articles
from
various
databases,
including
Web
Science
(WoS)
Google
Scholar,
after
rejection
repeated
books.
shows
that
there
is
48%
growth
articles,
mainly
focusing
symptoms,
detection,
classification.
Similarly,
most
being
conducted
United
States
America,
trend
increasing
other
countries
around
globe.
These
results
suggest
essence
automated
monitoring,
suggestions
handling
depression.
Язык: Английский
A machine learning-based analysis for the effectiveness of online teaching and learning in Pakistan during COVID-19 lockdown
Work,
Год журнала:
2025,
Номер
unknown
Опубликована: Янв. 15, 2025
Background
The
COVID-19
pandemic
has
significantly
disrupted
daily
life
and
education,
prompting
institutions
to
adopt
online
teaching.
Objective
This
study
delves
into
the
effectiveness
of
these
methods
during
lockdown
in
Pakistan,
employing
machine
learning
techniques
for
data
analysis.
Methods
A
cross-sectional
survey
was
conducted
with
300
respondents
using
a
semi-structured
questionnaire
assess
perceptions
education.
Artificial
intelligence
analyzed
specificity,
sensitivity,
accuracy,
precision
collected
data.
Results
Among
participants,
42.3%
expressed
satisfaction
learning,
while
49.3%
preferred
Zoom.
Convenience
noted
72%
favoring
classes
between
8
AM
12
PM.
revealed
87.33%
felt
placement
activities
were
negatively
impacted,
85%
reported
effects
on
individual
growth.
Additionally,
90.33%
stated
that
their
routines,
84.66%
citing
adverse
physical
health.
Decision
Tree
classifier
achieved
highest
accuracy
at
86%.
Overall,
preferences
leaned
toward
traditional
in-person
teaching
despite
methods.
Conclusions
highlights
significant
challenges
transitioning
emphasizing
disruptions
routines
overall
well-being.
Notably,
age
gender
did
not
influence
growth
or
Finally,
collaborative
efforts
among
educators,
policymakers,
stakeholders
are
crucial
ensuring
equitable
access
quality
education
future
crises.
Язык: Английский
Internet of Things in Healthcare Research: Trends, Innovations, Security Considerations, Challenges and Future Strategy
International Journal of Intelligent Systems,
Год журнала:
2025,
Номер
2025(1)
Опубликована: Янв. 1, 2025
The
Internet
of
Things
(IoT)
has
become
a
transformative
force
across
various
sectors,
including
healthcare,
offering
new
opportunities
for
automation
and
enhanced
service
delivery.
evolving
architecture
the
IoT
presents
significant
challenges
in
establishing
comprehensive
cyber‐physical
framework.
This
paper
reviews
recent
advancements
IoT‐driven
healthcare
automation,
focussing
on
integrating
technologies
such
as
cloud
computing,
augmented
reality
wearable
devices.
work
examines
network
architectures
platforms
that
support
applications
while
addressing
critical
security
privacy
issues,
specific
threat
models,
attack
classifications
prerequisites
relevant
to
sector.
study
highlights
how
emerging
like
distributed
intelligence,
big
data
analytics
devices
are
incorporated
into
improve
patient
care
streamline
medical
operations.
findings
reveal
potential
transform
practices,
particularly
in‐patient
monitoring,
clinical
decision‐making.
However,
concerns
continue
be
substantial
barrier.
also
explores
implications
global
ehealth
strategies
their
influence
sustainable
economic
community
growth.
It
proposes
an
innovative
cooperative
model
mitigate
risks
IoT‐enabled
systems.
Finally,
it
identifies
key
unresolved
future
research
IoT‐based
healthcare.
Язык: Английский
A comprehensive review of neurotransmitter modulation via artificial intelligence: A new frontier in personalized neurobiochemistry
Computers in Biology and Medicine,
Год журнала:
2025,
Номер
189, С. 109984 - 109984
Опубликована: Март 14, 2025
Язык: Английский
Progress and research trends in lumpy skin disease based on the scientometric assessment – a review
Annals of Animal Science,
Год журнала:
2024,
Номер
unknown
Опубликована: Сен. 7, 2024
Abstract
Background
Lumpy
skin
disease
(LSD)
has
been
a
significant
concern
in
veterinary
medicine
since
its
discovery.
Despite
decades
of
research,
understanding
the
full
spectrum
this
remains
challenge.
To
address
gap,
comprehensive
analysis
existing
body
knowledge
on
LSD
is
essential.
Bibliometric
offers
systematic
approach
towards
mapping
research
landscape,
identifying
key
contributors,
and
uncovering
emerging
trends
research.
Objective
This
study
aims
to
conduct
thorough
bibliometric
spanning
from
1947
till
present
date
order
map
domain
LSD.
The
objective
gain
insights
into
global
trends,
identify
influential
explore
collaboration
networks,
predict
future
outlook
Method
Data
extracted
Scopus
database
was
used
perform
analysis.
341
relevant
documents
were
selected
for
indicators,
including
publication
numbers,
citation
counts,
h-index,
utilized
assess
contributions
nations,
organizations,
authors,
source
titles.
Additionally,
cooperation
networks
between
countries,
authors
visualized
using
VOSviewer
tool.
Results
revealed
increase
output
LSD,
with
notable
growth
rate
19.26%.
Since
discovery
Zambia
1929,
grown
steadily,
an
average
annual
5.21%.
University
Pretoria
Federal
Centre
Animal
Health
emerged
as
most
active
institutions
organizations
Journal
Virology
identified
cited
journal,
reflecting
impact
field,
strong
international
observed
United
Kingdom
South
Africa.
Conclusion
provides
valuable
landscape
highlighting
networks.
By
reviewing
enhances
our
serves
foundation
endeavours.
findings
will
aid
researchers
navigating
vast
literature
ultimately
contributing
advancements
management
strategies.
Язык: Английский
Evaluating CNN Architectures and Hyperparameter Tuning for Enhanced Lung Cancer Detection Using Transfer Learning
Journal of Electrical and Computer Engineering,
Год журнала:
2024,
Номер
2024(1)
Опубликована: Янв. 1, 2024
Accurate
lung
cancer
detection
is
vital
for
timely
diagnosis
and
treatment.
This
study
evaluates
the
performance
of
six
convolutional
neural
network
(CNN)
architectures,
ResNet‐50,
VGG‐16,
ResNet‐101,
VGG‐19,
DenseNet‐201,
EfficientNet‐B4,
using
LIDC‐IDRI
dataset.
Models
were
assessed
both
in
their
base
forms
with
transfer
learning.
The
dataset
consisted
460
×
3
pixel
images
categorized
into
squamous
cell
carcinoma
(SCC),
normal
benign,
large
(LCC),
adenocarcinoma
(ADC).
Performance
metrics
computed,
including
accuracy
(99.47%
custom
CNN),
precision
(99.50%),
recall
(98.37%),
AUC
(99.98%),
F1‐score
(98.98%)
during
training.
However,
overfitting
was
observed
validation
phases.
Transfer
learning
models
showed
better
generalization,
DenseNet‐201
achieving
a
top
96.88%
EfficientNet‐B4
96.53%.
Hyperparameter
tuning
improved
models’
generalization
capabilities,
maintaining
high
while
reducing
overfitting.
highlights
effectiveness
learning,
particularly
enhancing
automated
systems.
Future
work
will
focus
on
expanding
datasets
exploring
additional
augmentation
techniques
to
further
refine
model
clinical
settings.
Язык: Английский
The Association between Suicidal Ideation and Subtypes of Comorbid Insomnia Disorder in Apneic Individuals
Journal of Clinical Medicine,
Год журнала:
2024,
Номер
13(19), С. 5907 - 5907
Опубликована: Окт. 3, 2024
:
Given
the
existence
of
higher
suicidality
in
apneic
individuals,
this
study
aimed
to
determine
potential
role
played
by
subtypes
comorbid
insomnia
disorder
(CID)
occurrence
suicidal
ideation
for
specific
subpopulation.
Язык: Английский