Assessing Awareness, Want, and Adoption of Internet Medical Services Among Chronic Disease Patients in China:A Structural Equation Model and Matrix Analysis
Research Square (Research Square),
Год журнала:
2025,
Номер
unknown
Опубликована: Март 25, 2025
Abstract
Background
Internet
Medical
Services
(IMS)
hold
substantial
potential
to
address
healthcare
challenges
arising
from
demographic
shifts,
such
as
aging
populations,
and
the
evolving
disease
spectrum,
marked
by
rising
prevalence
of
chronic
conditions.
However,
their
practical
impact
has
yet
fully
meet
these
expectations.
This
study
seeks
investigate
factors
influencing
adoption
utilization
IMS
among
patients,
focusing
on
effects
across
specific
domains
acceptance
processes,
provide
a
fresh
perspective
enhancing
management.
Methods
We
extended
Technology
Acceptance
Model
(TAM)
with
Information-Motivation-Behavioral
Skills
(IMB)
framework,
incorporating
eHealth
literacy,
patient
activation,
demographics
(age,
education
duration,
income
level).
A
cross-sectional
survey
520
patients
in
Jinan,
China,
was
analyzed
using
Structural
Equation
Modeling
(SEM)
matrix
analysis
evaluate
patterns
factors.
Results
Information
showed
high
minimal
disparities,
while
Diagnose
exhibited
low
uptake
significant
gaps,
particularly
older,
less-educated,
rural,
multimorbid
patients.
Notably,
higher-income
displayed
lower
all
categories,
expected
enhance
adoption,
unexpectedly
hindered
use.
SEM
confirmed
Perceived
Usefulness
duration
positive
drivers
stages,
literacy
boosting
Adoption,
age
exerting
negative
effect.
Conclusions
trailblazing
model
elucidates
complexities,
revealing
counterintuitive
barriers
like
activation.
It
underscores
need
for
targeted
interventions
service
quality,
providing
robust
framework
optimizing
deployment
advancing
digital
health
strategies
care.
Язык: Английский
Public Discourse and Sentiment Toward Older Drivers on Social Media in Japan (Preprint)
Опубликована: Ноя. 26, 2024
BACKGROUND
As
the
global
population
ages,
concerns
about
older
drivers
are
intensifying.
Although
not
inherently
more
dangerous
than
other
age
groups,
traditional
surveys
in
Japan
reveal
persistent
negative
sentiments
toward
them.
This
discrepancy
suggests
importance
of
analyzing
discourse
on
social
media,
where
public
perceptions
and
societal
attitudes
actively
shaped.
OBJECTIVE
study
aims
to
quantify
long-term
through
Twitter,
a
leading
media
platform.
The
specific
objectives
to:
(1)
examine
tweets,
(2)
identify
textual
contents
topics
discussed
(3)
analyze
how
associated
with
these
contents.
METHODS
We
collected
Japanese
tweet
related
from
2010
2022.
Each
quarter,
we
applied
J-LIWC
J-MFD
dictionaries
for
sentiment
analysis,
employed
two-layer
Non-negative
Matrix
Factorization
dynamic
topic
modeling,
logistic
regression
analyses
explore
relationships
between
topics.
RESULTS
obtained
2,625,807
tweets
1,052,976
unique
users
discussing
drivers.
number
has
steadily
increased,
significant
peak
2016,
2019,
2021,
coinciding
high-profile
traffic
crashes.
Sentiment
analysis
revealed
predominance
emotion
(62.4%),
anger
(17.4%),
anxiety
(18.6%),
risk
(58.2%).
Topic
modeling
identified
29
topics,
including
those
driving
licenses,
crashes,
personal
perspectives,
issues.
Crash
events
topic,
which
increased
by
0.08%
per
showed
strong
correlation
(B
=
23.39,
P
<
.001)
24.1,
.001).
CONCLUSIONS
13-year
quantified
using
Twitter
data,
revealing
paradoxical
increase
perceived
risk,
despite
decline
actual
crash
rate
among
These
findings
underscore
accurate
communication
crashed
caused
mitigate
undue
prejudice
avoid
unnecessary
disadvantages
Язык: Английский
Public Discourse Toward Older Drivers in Japan: Longitudinal Analysis of Social Media Data from 2010 to 2022 (Preprint)
JMIR Infodemiology,
Год журнала:
2024,
Номер
unknown
Опубликована: Ноя. 26, 2024
Язык: Английский