Integrative analysis of AI-driven optimization in HIV treatment regimens
Janet Aderonke Olaboye,
No information about this author
Chukwudi Cosmos Maha,
No information about this author
Tolulope Olagoke Kolawole
No information about this author
et al.
Computer Science & IT Research Journal,
Journal Year:
2024,
Volume and Issue:
5(6), P. 1314 - 1334
Published: June 7, 2024
The
integration
of
artificial
intelligence
(AI)
into
HIV
treatment
regimens
has
revolutionized
the
approach
to
personalized
care
and
optimization
strategies.
This
study
presents
an
in-depth
analysis
role
AI
in
transforming
treatment,
focusing
on
its
ability
tailor
therapy
individual
patient
needs
enhance
outcomes.
AI-driven
involves
utilization
advanced
algorithms
computational
techniques
analyze
vast
amounts
data,
including
genetic
information,
viral
load
measurements,
history.
By
harnessing
power
machine
learning
predictive
analytics,
can
identify
patterns
trends
data
that
may
not
be
readily
apparent
human
clinicians.
One
key
benefits
is
personalize
based
characteristics
disease
progression.
considering
factors
such
as
drug
resistance
profiles,
comorbidities,
lifestyle
factors,
recommend
most
effective
well-tolerated
options
for
each
patient,
leading
improved
adherence
clinical
Furthermore,
enables
continuous
monitoring
adjustment
real
time,
allowing
healthcare
providers
respond
rapidly
changes
status
evolving
dynamics.
proactive
management
help
prevent
failure
development
resistance,
ultimately
better
long-term
outcomes
patients.
Despite
transformative
potential,
without
challenges.
Ethical
considerations,
privacy
concerns,
need
robust
validation
regulatory
oversight
are
all
important
must
addressed
ensure
safe
implementation
practice.
In
conclusion,
integrative
presented
this
underscores
significant
impact
personalization
regimens.
leveraging
technologies,
approaches
needs,
quality
life
people
living
with
HIV.
Keywords:
Integrative
Analysis,
AI-
Driven,
Optimization,
Treatment,
Regimens.
Language: Английский
Innovations in real-time infectious disease surveillance using AI and mobile data
Janet Aderonke Olaboye,
No information about this author
Chukwudi Cosmos Maha,
No information about this author
Tolulope Olagoke Kolawole
No information about this author
et al.
International Medical Science Research Journal,
Journal Year:
2024,
Volume and Issue:
4(6), P. 647 - 667
Published: June 6, 2024
The
integration
of
artificial
intelligence
(AI)
and
mobile
health
data
has
ushered
in
a
new
era
real-time
infectious
disease
surveillance,
offering
unprecedented
insights
into
dynamics
enabling
proactive
public
interventions.
This
paper
explores
the
innovative
applications
AI
transforming
traditional
surveillance
systems
for
diseases.
By
harnessing
power
algorithms,
coupled
with
vast
amount
generated
from
devices,
researchers
authorities
can
now
monitor
outbreaks
greater
accuracy
efficiency.
AI-driven
predictive
models
analyze
diverse
datasets,
including
demographic
information,
travel
patterns,
social
media
activity,
to
detect
early
signs
emergence
predict
potential
outbreaks.
use
provides
wealth
information
that
was
previously
inaccessible
methods.
Mobile
apps,
wearables,
other
connected
devices
enable
continuous
monitoring
individuals'
indicators,
allowing
detection
symptoms
rapid
response
threats.
Furthermore,
geolocation
facilitates
tracking
population
movements
identification
high-risk
areas
transmission.
However,
this
approach
also
presents
challenges
ethical
considerations.
Privacy
concerns
regarding
collection
must
be
carefully
addressed
ensure
rights
are
protected.
Additionally,
issues
related
quality,
interoperability,
algorithm
bias
need
mitigated
reliability
effectiveness
systems.
In
conclusion,
holds
immense
promise
revolutionizing
surveillance.
leveraging
these
technologies,
gain
valuable
dynamics,
enhance
capabilities,
implement
targeted
interventions
prevent
spread
it
is
essential
address
considerations
associated
its
responsible
effective
implementation.
Keywords:
Innovations,
Real-Time
Infectious
Disease,
Surveillance,
AI,
Data.
Language: Английский
Developing predictive models for HIV Drug resistance: A genomic and AI approach
Charles Chukwudalu Ebulue,
No information about this author
Ogochukwu Virginia Ekkeh,
No information about this author
Ogochukwu Roseline Ebulue
No information about this author
et al.
International Medical Science Research Journal,
Journal Year:
2024,
Volume and Issue:
4(5), P. 521 - 543
Published: May 5, 2024
This
paper
proposes
a
novel
approach
to
combating
HIV
drug
resistance
through
the
development
of
predictive
models
leveraging
genomic
data
and
artificial
intelligence
(AI).
With
increasing
prevalence
drug-resistant
strains
HIV,
there
is
critical
need
for
innovative
strategies
predict
manage
mutations,
thereby
optimizing
treatment
outcomes
prolonging
efficacy
antiretroviral
therapy
(ART).
Drawing
on
advances
in
genomics
AI,
this
study
outlines
conceptual
framework
that
can
identify
potential
drug-resistance
mutations
genomes
inform
clinical
decision-making.
The
proposed
integrates
from
HIV-infected
individuals
with
AI
algorithms
capable
learning
complex
patterns
within
data.
By
analyzing
sequences
obtained
HIV-positive
patients,
aim
genetic
variations
associated
resistance,
likelihood
development,
guide
selection
appropriate
regimens.
holds
promise
personalized
medicine
care,
enabling
clinicians
tailor
based
an
individual's
profile
risk
resistance.
Key
components
include
preprocessing
extract
relevant
features,
model
training
using
machine
techniques
such
as
deep
ensemble
methods,
validation
performance
cross-validation
independent
testing.
Furthermore,
integration
data,
history
viral
load
measurements,
enhances
accuracy
provides
valuable
insights
into
response
dynamics.The
represents
paradigm
shift
offering
proactive
management
surveillance.
technologies,
healthcare
providers
anticipate
address
emerging
before
they
compromise
efficacy.
Ultimately,
implementation
improve
patient
outcomes,
reduce
transmission
strains,
advance
global
fight
against
HIV/AIDS.
Keywords:
Developing,
Predictive
Models,
Drug
Resistance,
Genomic,
Approach.
Language: Английский
Machine learning insights into HIV outbreak predictions in Sub-Saharan Africa
Charles Chukwudalu Ebulue,
No information about this author
Ogochukwu Virginia Ekkeh,
No information about this author
Ogochukwu Roseline Ebulue
No information about this author
et al.
International Medical Science Research Journal,
Journal Year:
2024,
Volume and Issue:
4(5), P. 558 - 578
Published: May 5, 2024
Predicting
and
preventing
HIV
outbreaks
in
Sub-Saharan
Africa,
a
region
disproportionately
affected
by
the
epidemic
remains
significant
challenge.
This
review
explores
effectiveness
challenges
of
using
machine
learning
(ML)
for
forecasting
spread
high-risk
areas.
ML
models
have
shown
promise
identifying
patterns
trends
data,
enabling
more
accurate
predictions
targeted
interventions.
insights
into
outbreak
leverage
various
data
sources,
including
demographic,
epidemiological,
behavioural
data.
By
analysing
these
algorithms
can
identify
populations
geographical
areas
susceptible
to
transmission.
information
is
crucial
public
health
authorities
allocate
resources
efficiently
implement
preventive
measures
effectively.
Despite
potential
benefits,
several
exist
predictions.
These
include
quality
issues,
such
as
incomplete
or
inaccurate
which
affect
reliability
Additionally,
complexity
transmission
dynamics
need
real-time
pose
models.
To
address
challenges,
researchers
practitioners
are
exploring
innovative
approaches,
integrating
multiple
sources
advanced
techniques.
Collaborations
between
researchers,
officials,
technology
experts
also
developing
robust
In
conclusion,
while
offers
valuable
addressing
model
essential
its
effective
use.
overcoming
has
significantly
improve
prevention
efforts
ultimately
reduce
burden
region.
Keywords:
Machine
Learning,
AI,
Outbreaks:
Predictions,
Insights.
Language: Английский
Environmental data in epidemic forecasting: Insights from predictive analytics
Charles Chukwudalu Ebulue,
No information about this author
Ogochukwu Virginia Ekkeh,
No information about this author
Ogochukwu Roseline Ebulue
No information about this author
et al.
Computer Science & IT Research Journal,
Journal Year:
2024,
Volume and Issue:
5(5), P. 1113 - 1125
Published: May 5, 2024
Epidemic
forecasting
plays
a
critical
role
in
public
health
preparedness
and
response,
enabling
proactive
measures
to
mitigate
the
impact
of
infectious
diseases.
Environmental
data,
encompassing
factors
such
as
temperature,
humidity,
air
quality,
geographical
features,
holds
valuable
insights
for
predicting
identifying
areas
prone
epidemics.
This
paper
explores
integration
predictive
analytics
with
environmental
data
enhance
epidemic
capabilities.
By
leveraging
techniques,
researchers
officials
can
analyze
identify
regions
at
higher
risk
experiencing
outbreaks.
Through
statistical
modeling,
machine
learning
algorithms,
computational
simulations,
utilize
indicators
forecast
likelihood
spread
For
example,
high
temperatures
humidity
may
be
conducive
mosquito-borne
diseases,
while
poor
quality
experience
increased
rates
respiratory
infections.
Case
studies
highlight
application
various
contexts,
including
diseases
tropical
tracking
infections
urban
quality.
Early
warning
systems,
informed
by
provide
timely
alerts
potential
threats,
interventions
resource
allocation.
While
into
offers
significant
benefits,
challenges
remain,
availability,
ethical
considerations.
Continued
research
collaboration
are
essential
address
these
further
effectiveness
mitigating
risks.
In
conclusion,
this
underscores
importance
forecasting,
emphasizing
their
improve
outcomes
efforts
face
emerging
climate
change.
Keywords:
Data,
Forecasting,
Predictive
Analytics.
Language: Английский