Harnessing Artificial Intelligence to Enhance Global Breast Cancer Care: A Scoping Review of Applications, Outcomes, and Challenges
Cancers,
Год журнала:
2025,
Номер
17(2), С. 197 - 197
Опубликована: Янв. 9, 2025
In
recent
years,
Artificial
Intelligence
(AI)
has
shown
transformative
potential
in
advancing
breast
cancer
care
globally.
This
scoping
review
seeks
to
provide
a
comprehensive
overview
of
AI
applications
care,
examining
how
they
could
reshape
diagnosis,
treatment,
and
management
on
worldwide
scale
discussing
both
the
benefits
challenges
associated
with
their
adoption.
accordance
PRISMA-ScR
ensuing
guidelines
reviews,
PubMed,
Web
Science,
Cochrane
Library,
Embase
were
systematically
searched
from
inception
end
May
2024.
Keywords
included
"Artificial
Intelligence"
"Breast
Cancer".
Original
studies
based
focus
narrative
synthesis
was
employed
for
data
extraction
interpretation,
findings
organized
into
coherent
themes.
Finally,
84
articles
included.
The
majority
conducted
developed
countries
(n
=
54).
publications
last
10
years
83).
six
main
themes
screening
32),
image
detection
nodal
status
7),
AI-assisted
histopathology
8),
assessing
post-neoadjuvant
chemotherapy
(NACT)
response
23),
margin
assessment
5),
as
clinical
decision
support
tool
9).
been
used
tools
augment
treatment
decisions
multidisciplinary
tumor
board
settings.
Overall,
demonstrated
improved
accuracy
efficiency;
however,
most
did
not
report
patient-centric
outcomes.
show
promise
enhancing
diagnostic
planning.
However,
persistent
adoption,
such
quality,
algorithm
transparency,
resource
disparities,
must
be
addressed
advance
field.
Язык: Английский
A critical look into artificial intelligence and healthcare disparities
Frontiers in Artificial Intelligence,
Год журнала:
2025,
Номер
8
Опубликована: Март 6, 2025
Artificial
intelligence
(AI)
has
permeated
many
aspects
of
daily
life,
including
medicine,
in
recent
years.
As
2021,
343
AI-enabled
medical
devices
had
been
approved
by
the
United
States
Food
and
Drug
Administration,
with
more
development
(1).
Most
notable
thus
far
AI's
ability
to
assist
every
step
radiology
workflow:
it
can
determine
appropriateness
imaging,
recommend
most
appropriate
imaging
exam,
predict
wait
times
or
appointment
delays,
interpret
much
potential
utilizations
(2).
The
World
Health
Organization
proposed
that
AI
tools
be
integrated
into
healthcare
improve
efficiency
achieve
sustainable
health-related
(3).
reduce
costs
administrative
burdens,
waiting
for
patients
receive
care,
diagnostic
abilities
patient
facilitate
data
management,
expedite
discovery
(4,5).However,
advancement
comes
unique
drawbacks.
For
example,
security
privacy
are
at
risk
must
improved,
as
may
readily
unknowingly
provide
consent
covert
collection
methods
(6,7).
Use
seriously
reconsidered
if
poses
a
confidentiality,
non-negotiable
healthcare.
With
rapidly
gather
analyze
large
amounts
data,
controlling
scope
its
use
becomes
challenge:
these
progress
collect
disclose
without
direct
investigator
oversight
(5).
In
addition,
healthcare-based
research
conducted
non-clinical
settings,
rolling
out
certain
clinical
settings
result
non-evidence-based
practice
(6).
clinicians
feel
tempted
tasks
beyond
their
validation,
training
not
adequately
represent
scenarios
encounter
(8).
fact,
studies
on
have
administered
(5).That
is
say
should
used
It
does,
however,
require
immense
consideration
how
designed
why
utilized.
Some
contended
goal
developing
minimize
health
disparities
make
system
equitable
(1,9).
Yet,
characteristics
this
difficult
achieve.
such,
there
growing
body
literature
discusses
role
both
closing
perpetuating
inequalities
(10)(11)(12).
directly
proportional
quality
sets
used,
authors
addressed
concerns
regarding
bias
datasets
lack
diversity
teams
ultimately
resulting
AI-driven
care
(5,(13)(14)(15).
This
article
draws
from
existing
add
ongoing
conversation
about
implications
disparities.
Specifically,
we
discuss
economic
implications,
explainability
systems,
importance
compassionate
care.
Ultimately,
while
indeed
confer
benefits
system,
remains
may,
instead,
backfire.One
essential
any
kind
social
disparity
economics.
notorious
having
highest
expenditure
globally,
costing
$3.5
trillion,
17.9%
Gross
Domestic
Product
(16).
Any
measure
decrease
burden
-either
US
internationally
-may
attractive.
save
billions
annual
(17).
greatly
streamline
workflow,
even
tasks.
An
automated
alleviate
burdens
such
scheduling
patients,
estimating
times,
billing
insurance
companies
(2,17,18).
Such
workflow
optimization
cost
delivery
cutting
intermediaries
typically
handle
mundane
turn,
patients'
financial
responsibility
related
reduced.On
side,
screen
diagnose
conditions,
stratify
disease
risk,
devise
treatment
plans
significantly
errors
factors
associated
adverse
outcomes
(4).
Eventually,
technology
advances,
perform
procedures,
given
deemed
ethical,
safe
evidence-based.
While
seem
like
simply
perk
those
practicing
physician-rich
areas,
they
could
become
indispensable
areas
affected
shortages
professionals
(19).
Urban
rural
communities
bear
brunt
inequity,
struggling
access
primary
specialty
(20).
estimated
2030,
shortage
up
104,900
physicians
implementation
underserved
populations
help
challenges
Furthermore,
assistants
physician
burnout
therefore
(21).These
advantages
conferred
only
proper
development,
installation
maintenance
systems.
requires
investment.
One
model
an
glaucoma
screening
tool
Changjiang
county
China
fifteen-year
accumulated
incremental
using
was
$434,903.20
approximately
2000
(22).
arguably
worth
early
detection
reduced
progression,
impractical
roll
larger
populations.
institutions
wealthy
countries
easily
But
what
countries?
Community
hospitals
limited
government
funding?
Practices
less
purchasing
power?
Even
analyses
demonstrate
saved
long
run,
upfront
investment
too
obstacle
(16).Once
developed,
purchased,
installed,
another
issue.Software
updates,
advanced
computing
technologies,
ever-increasing
cloud
storage
requirements
evolving
cybersecurity
needs
protect
information
create
further
barriers
widespread
application
(23).
These
all-around
nuanced
than
mere
implement
practice.
Inevitably,
algorithms
higher
lower
levels
sophistication,
infrastructures
robust,
measures
stronger
weaker.
choose
will
closely
tied
status.
Of
course,
then
leave
behind
under-resourced
communities.Currently,
"explainable"
play
decision
making
(24).
other
words
-exactly
do
technologies
work?
How
decisions?
questions
developers
themselves
cannot
answer;
know
work,
yet
nobody
fully
explain
how.
"black
box"
holds
important
worldwide.
Machine
learning
(ML)
component
which
involves
based
(25).
Detecting
correcting
biases
ethical
prerequisite
justice
AI-and
ML-based
decision-making
words,
explainable
enables
identify
correct
set-based
currently
skew
(10,13).The
discussion
additional
considerations.
Explainable
models
keep
accountable
accountability
precedes
error
concern
compounded
fact
who
literate
likely
ask
seek
(26).
Since
prepared
participate
shared
making,
challenge
questionable
decisions
(27).AI
treated
support
decision-making,
one
independently.
prescription
systems
developed
aid
prevent
human
(28,29).
recommendation
conflicts
judgement.
arise
trained
treat,
thereby
generating
recommendations
poorly
aligned
realities
particularly
relevant
minority
historically
under-studied
(15).
Healthcare
providers
critically
assess
context
experience
preferences.
Institutions
establish
clear
policies
accept
reject
suggestions
maintain
care.Justice
also
transparent
foster
trust
system.
Unexplainable,
opaque
models,
hand,
exacerbate
mistrust
already
pervades
prevalent
socially
economically
marginalized
(30).
A
key
underprivileged
patient's
comfort
physicians'
personal
involvement
(31).
see
unexplainable
black
box
ML
-if
handled
correctly
-would
certainly
concerns.
Lack
explanation
impersonal,
alienate
vulnerable
population
widen
disparities.Even
elucidate
box,
ever
replace
physician-patient
relationship
delivering
empathic
care?
Currently,
seems
unlikely
-one
study
demonstrated
chatbots
empathetic
sympathetic
responses
lowered
perception
authenticity
(32).
contrast,
empathy
sympathy
expressed
did
induce
negative
effect
perceived
undermine
subjective
satisfaction
but
objectively
worsen
outcomes.
some
provided
sound
biomedical
diabetes
overlooked
psychosocial
components
necessary
glycemic
control
(33).
Algorithms
A1c
goals,
calculate
medication
dosages,
send
prescriptions
optimize
However,
tailored
disproportionately
affect
greater
barriers.
Continuing
stand-alone
case
diabetes,
significant
include
afford
healthy
food,
free
time
follow-up
visits
literacy
understand
(34).
Now
combine
slew
medications,
unemployment
ailing
family
member.
Surely,
manage
countless
different
ways.
There
no
path.
Regardless,
imperative
-human
AI-based
-address
compassion.Palliative
emphasizes
relieving
suffering
optimizing
life
end-oflife
field
compassion
(35).
risks
depersonalizing
cases
lacking
when
families
need
most.
Death
dying
often
rooted
culture,
beliefs,
spirituality.
deeply
each
Whereas
encourage
open
communication
death,
others
uncomfortable
it;
whereas
value
life-prolonging
regardless
prognosis,
so
(36).
Palliative
imposing
"one-size-fits-all"
aWestern
dataset
Once
again,
understudied
cultural
minorities
fall
"understanding"
-or
thereof
-of
values.Society
large,
regulators,
policy
makers,
companies,
carefully
consider
incorporating
practices
business
medicine.
Regulators
raised
over
regulation
well
generalizability
(37).
Another
area
several
stakeholders
regulators
legal
fear
exists
scenario
made
conversely
accusations
negligent
AI.
Physicians
were
neither
nor
agreed
assuming
AI,
believed
liable
since
medicine
Each
side
felt
understood
"part
whole"
highlighting
Appropriate
makers
needed
ensure
promote
mitigated
informing
involved
(38).Certain
narratives
pitted
rival
skills
education
physicians,
claims
day
(38).
solely
setting
final
being
human.
Rhetoric
continues
pit
against
hinder
incorporation
Patients
benefit
replacing
avoiding
altogether.In
discussing
disparities,
low-and
middle-income
(LMICs).
where
resources
personnel
scarce,
workload
(39).
especially
available
(40).
Disease
outbreaks
predicted
earlier
allow
mobilization
areas.
severity
failure
illnesses
malaria,
tuberculosis
dengue
fever
LMICs
face
implementing
electronic
records
limiting
factor
input
high
income
(HICs)
reflect
When
applying
LMICs,
updated
applied
to.
Failure
reinforce
(40).Gaining
integration
problem
future.
small
interviewing
perspectives
GP,
subjects
mixed
feelings
(41).
common
amongst
participants
sharing
wanted
assurance
would
obtained
prior
anonymization
used.
survey
203
public
opinion
yielded
results,
near
50/50
split
asked
physician's
diagnosing
conditions
(42).
same
study,
majority
trusted
culturally
biased
decision.
positive
outlook
towards
future
25%
respondents
believe
next
10
years
nearly
half
50
(42).Similarly,
lacks
intelligence,
rather
wisdom
-the
sense
intuition
accumulate
(43).
Can
develop
time?
mimic
brain
synthesizing
decades'
making?
simple
cases,
can.
complex
story
-risks
intervention
weighed
complications
predicted,
all
easilydigestible
manner.
Yet
layer
nuance
added
shared-decision
introducednow,
desires
uncertainties
level
incorporate
recommendations.
Moreover,
remain
maker,
spend
meaningful
conversations
facilitating
(37,44).
alike.While
increase
bridge
gaps
healthcare,
inclusive
avoid
worsening
hinges
optimal
course
action,
execute
plan
appropriately.
Particularly
communities,
critical
process
building
maintaining
proved
absence
pose
success
delivery.
Both
alike
wish
standard
interaction.
Instead,
serve
adjunct
reducing
chance
error.
Collaboration
among
Язык: Английский
Artificial Intelligence and Machine Learning in Travel Health
IGI Global eBooks,
Год журнала:
2025,
Номер
unknown, С. 69 - 84
Опубликована: Март 28, 2025
In
recent
years,
artificial
intelligence
(AI)
and
machine
learning
(ML)
have
become
a
crucial
part
of
various
industries,
including
travel.
As
travelers
increasingly
sophisticated
in
their
needs
demands,
travel
companies
must
keep
up
with
the
ever-changing
market.
By
integrating
AI
ML
into
operations,
can
gather
analyze
vast
amounts
data
to
better
understand
customers
improve
overall
experience.
Travel
health
management
is
complex
due
global
mobility,
emerging
diseases,
need
for
personalized
solutions
anywhere,
anyplace,
anytime
(3As).
This
chapter
will
explore
how
technologies
are
revolutionizing
healthcare
21st
Century.
The
deal
predictive
analytics,
recommendations,
real-time
monitoring,
ethical
concerns,
next
decade's
challenges
innovative
using
ML.
Язык: Английский