Psychiatry International,
Год журнала:
2025,
Номер
6(2), С. 52 - 52
Опубликована: Май 6, 2025
Neurotypical
(NT)
siblings
of
individuals
with
Autism
Spectrum
Disorder
(ASD)
experience
complex
emotional,
psychological,
behavioral,
and
social
challenges.
Understanding
the
factors
that
influence
their
well-being
is
essential
for
developing
tailored
interventions.
This
systematic
review
examines
psychological
functioning
NT
identifies
protective
risk
impact
adaptation.
A
search
was
conducted
across
EBSCO,
PubMed,
Google
Scholar,
covering
studies
published
between
2013
2024.
Inclusion
criteria
focused
on
research
investigating
siblings’
well-being.
Thirty
met
inclusion
were
synthesized
narratively.
Findings
reveal
heterogeneous
experiences
among
siblings,
ranging
from
increased
empathy
resilience
to
heightened
anxiety,
depression,
difficulties.
The
quality
sibling
relationships
support
systems
plays
a
pivotal
role
in
moderating
these
outcomes.
represent
vulnerable
group
requiring
family-centered
Future
should
adopt
longitudinal
multi-informant
approaches
explore
long-term
effects
culturally
sensitive
strategies.
Journal of Medical Internet Research,
Год журнала:
2022,
Номер
24(11), С. e40719 - e40719
Опубликована: Ноя. 3, 2022
Depression
has
a
high
prevalence
among
young
adults,
especially
during
the
COVID-19
pandemic.
However,
mental
health
services
remain
scarce
and
underutilized
worldwide.
Mental
chatbots
are
novel
digital
technology
to
provide
fully
automated
interventions
for
depressive
symptoms.The
purpose
of
this
study
was
test
clinical
effectiveness
nonclinical
performance
cognitive
behavioral
therapy
(CBT)-based
chatbot
(XiaoE)
adults
with
symptoms
pandemic.In
single-blind,
3-arm
randomized
controlled
trial,
participants
manifesting
recruited
from
Chinese
university
were
randomly
assigned
(XiaoE;
n=49),
an
e-book
(n=49),
or
general
(Xiaoai;
n=50)
group
in
ratio
1:1:1.
Participants
received
1-week
intervention.
The
primary
outcome
reduction
according
9-item
Patient
Health
Questionnaire
(PHQ-9)
at
1
week
later
(T1)
month
(T2).
Both
intention-to-treat
per-protocol
analyses
conducted
under
analysis
covariance
models
adjusting
baseline
data.
Controlled
multiple
imputation
δ-based
sensitivity
performed
missing
secondary
outcomes
level
working
alliance
measured
using
Working
Alliance
(WAQ),
usability
Usability
Metric
User
Experience-LITE
(UMUX-LITE),
acceptability
Acceptability
Scale
(AS).Participants
on
average
18.78
years
old,
37.2%
(55/148)
female.
mean
PHQ-9
score
10.02
(SD
3.18;
range
2-19).
Intention-to-treat
revealed
lower
scores
XiaoE
compared
Xiaoai
both
T1
(F2,136=17.011;
P<.001;
d=0.51)
T2
(F2,136=5.477;
P=.005;
d=0.31).
Better
(WAQ;
F2,145=3.407;
P=.04)
(AS;
F2,145=4.322;
P=.02)
discovered
XiaoE,
while
no
significant
difference
arms
found
(UMUX-LITE;
F2,145=0.968;
P=.38).A
CBT-based
is
feasible
engaging
therapeutic
approach
that
allows
easy
accessibility
self-guided
assistance
symptoms.
A
systematic
evaluation
metrics
been
established
study.
In
future,
focus
necessary
explore
mechanism
by
which
work
patients.
Further
evidence
required
confirm
long-term
via
trails
replicated
longer
dose,
as
well
exploration
its
stronger
efficacy
comparison
other
active
controls.Chinese
Clinical
Trial
Registry
ChiCTR2100052532;
http://www.chictr.org.cn/showproj.aspx?proj=135744.
Journal of Medical Internet Research,
Год журнала:
2024,
Номер
26, С. e56930 - e56930
Опубликована: Апрель 12, 2024
Background
Chatbots,
or
conversational
agents,
have
emerged
as
significant
tools
in
health
care,
driven
by
advancements
artificial
intelligence
and
digital
technology.
These
programs
are
designed
to
simulate
human
conversations,
addressing
various
care
needs.
However,
no
comprehensive
synthesis
of
chatbots’
roles,
users,
benefits,
limitations
is
available
inform
future
research
application
the
field.
Objective
This
review
aims
describe
characteristics,
focusing
on
their
diverse
roles
pathway,
user
groups,
limitations.
Methods
A
rapid
published
literature
from
2017
2023
was
performed
with
a
search
strategy
developed
collaboration
sciences
librarian
implemented
MEDLINE
Embase
databases.
Primary
studies
reporting
chatbot
benefits
were
included.
Two
reviewers
dual-screened
results.
Extracted
data
subjected
content
analysis.
Results
The
categorized
into
2
themes:
delivery
remote
services,
including
patient
support,
management,
education,
skills
building,
behavior
promotion,
provision
administrative
assistance
providers.
User
groups
spanned
across
patients
chronic
conditions
well
cancer;
individuals
focused
lifestyle
improvements;
demographic
such
women,
families,
older
adults.
Professionals
students
also
alongside
seeking
mental
behavioral
change,
educational
enhancement.
chatbots
classified
improvement
quality
efficiency
cost-effectiveness
delivery.
identified
encompassed
ethical
challenges,
medicolegal
safety
concerns,
technical
difficulties,
experience
issues,
societal
economic
impacts.
Conclusions
Health
offer
wide
spectrum
applications,
potentially
impacting
aspects
care.
While
they
promising
for
improving
quality,
integration
system
must
be
approached
consideration
ensure
optimal,
safe,
equitable
use.
Large
language
models
(LLMs)
have
facilitated
significant
strides
in
generating
conversational
agents,
enabling
seamless,
contextually
relevant
dialogues
across
diverse
topics.
However,
the
existing
LLM-driven
agents
fixed
personalities
and
functionalities,
limiting
their
adaptability
to
individual
user
needs.
Creating
personalized
agent
personas
with
distinct
expertise
or
traits
can
address
this
issue.
Nonetheless,
we
lack
knowledge
of
how
people
customize
interact
personas.
In
research,
investigated
users
impact
on
interaction
quality,
diversity,
dynamics.
To
end,
developed
CloChat,
an
interface
supporting
easy
accurate
customization
LLMs.
We
conducted
a
study
comparing
participants
CloChat
ChatGPT.
The
results
indicate
that
formed
emotional
bonds
customized
engaged
more
dynamic
dialogues,
showed
interest
sustaining
interactions.
These
findings
contribute
design
implications
for
future
systems
using
Frontiers in Psychiatry,
Год журнала:
2023,
Номер
14
Опубликована: Июнь 1, 2023
Growing
demand
for
broadly
accessible
mental
health
care,
together
with
the
rapid
development
of
new
technologies,
trigger
discussions
about
feasibility
psychotherapeutic
interventions
based
on
interactions
Conversational
Artificial
Intelligence
(CAI).
Many
authors
argue
that
while
currently
available
CAI
can
be
a
useful
supplement
human-delivered
psychotherapy,
it
is
not
yet
capable
delivering
fully
fledged
psychotherapy
its
own.
The
goal
this
paper
to
investigate
what
are
most
important
obstacles
our
way
developing
systems
in
future.
To
end,
we
formulate
and
discuss
three
challenges
central
quest.
Firstly,
might
able
develop
effective
AI-based
unless
deepen
understanding
makes
effective.
Secondly,
assuming
requires
building
therapeutic
relationship,
clear
whether
delivered
by
non-human
agents.
Thirdly,
conducting
problem
too
complicated
narrow
AI,
i.e.,
AI
proficient
dealing
only
relatively
simple
well-delineated
tasks.
If
case,
should
expect
fully-fledged
until
so-called
"general"
or
"human-like"
developed.
While
believe
all
these
ultimately
overcome,
think
being
mindful
them
crucial
ensure
well-balanced
steady
progress
path
psychotherapy.
Journal of Medical Internet Research,
Год журнала:
2023,
Номер
25, С. e44548 - e44548
Опубликована: Март 31, 2023
Rapid
proliferation
of
mental
health
interventions
delivered
through
conversational
agents
(CAs)
calls
for
high-quality
evidence
to
support
their
implementation
and
adoption.
Selecting
appropriate
outcomes,
instruments
measuring
assessment
methods
are
crucial
ensuring
that
evaluated
effectively
with
a
high
level
quality.We
aimed
identify
the
types
outcome
measurement
instruments,
used
assess
clinical,
user
experience,
technical
outcomes
in
studies
effectiveness
CA
health.We
undertook
scoping
review
relevant
literature
health.
We
performed
comprehensive
search
electronic
databases,
including
PubMed,
Cochrane
Central
Register
Controlled
Trials,
Embase
(Ovid),
PsychINFO,
Web
Science,
as
well
Google
Scholar
Google.
included
experimental
evaluating
interventions.
The
screening
data
extraction
were
independently
by
2
authors
parallel.
Descriptive
thematic
analyses
findings
performed.We
32
targeted
promotion
well-being
(17/32,
53%)
treatment
monitoring
symptoms
(21/32,
66%).
reported
203
measure
clinical
(123/203,
60.6%),
experience
(75/203,
36.9%),
(2/203,
1.0%),
other
(3/203,
1.5%).
Most
only
1
study
(150/203,
73.9%)
self-reported
questionnaires
(170/203,
83.7%),
most
electronically
via
survey
platforms
(61/203,
30.0%).
No
validity
was
cited
more
than
half
(107/203,
52.7%),
which
largely
created
or
adapted
they
(95/107,
88.8%).The
diversity
choice
employed
on
CAs
point
need
an
established
minimum
core
set
greater
use
validated
instruments.
Future
should
also
capitalize
affordances
made
available
smartphones
streamline
evaluation
reduce
participants'
input
burden
inherent
self-reporting.
JMIR Bioinformatics and Biotechnology,
Год журнала:
2024,
Номер
5, С. e64406 - e64406
Опубликована: Сен. 25, 2024
The
integration
of
chatbots
in
oncology
underscores
the
pressing
need
for
human-centered
artificial
intelligence
(AI)
that
addresses
patient
and
family
concerns
with
empathy
precision.
Human-centered
AI
emphasizes
ethical
principles,
empathy,
user-centric
approaches,
ensuring
technology
aligns
human
values
needs.
This
review
critically
examines
implications
using
large
language
models
(LLMs)
like
GPT-3
GPT-4
(OpenAI)
chatbots.
It
how
these
replicate
human-like
patterns,
impacting
design
systems.
paper
identifies
key
strategies
ethically
developing
chatbots,
focusing
on
potential
biases
arising
from
extensive
datasets
neural
networks.
Specific
datasets,
such
as
those
sourced
predominantly
Western
medical
literature
interactions,
may
introduce
by
overrepresenting
certain
demographic
groups.
Moreover,
training
methodologies
LLMs,
including
fine-tuning
processes,
can
exacerbate
biases,
leading
to
outputs
disproportionately
favor
affluent
or
populations
while
neglecting
marginalized
communities.
By
providing
examples
biased
highlights
challenges
LLMs
present
mitigation
strategies.
study
integrating
human-centric
into
mitigate
ultimately
advocating
development
are
aligned
principles
capable
serving
diverse
equitably.
Proceedings of the ACM on Human-Computer Interaction,
Год журнала:
2025,
Номер
9(1), С. 1 - 30
Опубликована: Янв. 10, 2025
Misinformation
on
private
messaging
platforms
like
WhatsApp
and
LINE
is
a
global
concern.
However,
research
has
primarily
focused
combating
misinformation
public
social
media.
in
difficult
to
challenge
due
norms,
interpersonal
relationships,
technological
affordances.
This
study
investigates
Auntie
Meiyu,
fact-checking
chatbot
integrated
into
LINE,
popular
service
Taiwan.
We
interviewed
27
users
who
adopted
Meiyu
their
groups
understand
motivations
perceptions
of
the
chatbot,
assess
its
influence
interactions.
Participants
indicated
that
they
protect
close
family
members
from
misleading
news.
Nevertheless,
experienced
mixed
feelings
chatbot's
robotic
style
errors
detecting
misinformation.
conclude
conversational
agents
present
promising
approach
for
tackling
misinformation,
particularly
when
participants
disagree,
offer
design
recommendations
leveraging
AI-enabled
countering
Applied Sciences,
Год журнала:
2025,
Номер
15(7), С. 3466 - 3466
Опубликована: Март 21, 2025
As
the
linguistic
capabilities
of
AI-based
dialogue
systems
improve,
their
human-likeness
is
increasing,
and
behavior
no
longer
receives
a
universal
evaluation.
To
better
adapt
to
users,
consideration
individual
preferences
required.
In
this
study,
relationships
between
properties
human-like
system
evaluations
were
investigated
using
hierarchical
cluster
analysis
for
subjects.
The
driven
by
generative
AI
communicated
with
subjects
in
natural
language
via
voice-based
communication
featured
facial
expression
function.
Subjective
dialogues
conducted
through
questionnaire.
Based
on
results,
classified
into
two
types:
generally
individually
relational
positive
evaluation
dialogue.
former
included
inspiration,
sense
security,
collaboration,
while
latter
distance,
personality,
seriousness.
Equipping
expected
improve
most
users.
should
be
adjusted
individuals
since
they
are
evaluated
based
preferences.
A
design
approach
accordance
individuality
could
useful
making
more
comfortable
Journal of Medical Internet Research,
Год журнала:
2023,
Номер
26, С. e48168 - e48168
Опубликована: Дек. 4, 2023
Background
Conversational
agents
(CAs)
or
chatbots
are
computer
programs
that
mimic
human
conversation.
They
have
the
potential
to
improve
access
mental
health
interventions
through
automated,
scalable,
and
personalized
delivery
of
psychotherapeutic
content.
However,
digital
interventions,
including
those
delivered
by
CAs,
often
high
attrition
rates.
Identifying
factors
associated
with
is
critical
improving
future
clinical
trials.
Objective
This
review
aims
estimate
overall
differential
rates
in
CA-delivered
(CA
interventions),
evaluate
impact
study
design
intervention-related
aspects
on
attrition,
describe
features
aimed
at
reducing
mitigating
attrition.
Methods
We
searched
PubMed,
Embase
(Ovid),
PsycINFO
Cochrane
Central
Register
Controlled
Trials,
Web
Science,
conducted
a
gray
literature
search
Google
Scholar
June
2022.
included
randomized
controlled
trials
compared
CA
against
control
groups
excluded
studies
lasted
for
1
session
only
used
Wizard
Oz
interventions.
also
assessed
risk
bias
using
Risk
Bias
Tool
2.0.
Random-effects
proportional
meta-analysis
was
applied
calculate
pooled
dropout
intervention
groups.
compare
rate
narrative
summarize
findings.
Results
The
systematic
retrieved
4566
records
from
peer-reviewed
databases
citation
searches,
which
41
(0.90%)
met
inclusion
criteria.
meta-analytic
group
21.84%
(95%
CI
16.74%-27.36%;
I2=94%).
Short-term
≤8
weeks
showed
lower
(18.05%,
95%
9.91%-
27.76%;
I2=94.6%)
than
long-term
>8
(26.59%,
20.09%-33.63%;
I2=93.89%).
Intervention
participants
were
more
likely
attrit
short-term
(log
odds
ratio
1.22,
0.99-1.50;
I2=21.89%)
1.33,
1.08-1.65;
I2=49.43%).
Intervention-related
characteristics
higher
include
stand-alone
without
support,
not
having
symptom
tracker
feature,
no
visual
representation
CA,
comparing
waitlist
controls.
No
participant-level
factor
reliably
predicted
Conclusions
Our
results
indicated
approximately
one-fifth
will
drop
out
studies.
High
heterogeneities
made
it
difficult
generalize
suggested
should
adopt
blended
use
tracking,
active
controls
rather
controls,
reduce
rate.
Trial
Registration
PROSPERO
International
Prospective
Systematic
Reviews
CRD42022341415;
https://www.crd.york.ac.uk/prospero/display_record.php?ID=CRD42022341415