Advanced Theory and Simulations,
Journal Year:
2023,
Volume and Issue:
6(7)
Published: April 28, 2023
The
Omicron
wave
was
the
largest
of
COVID-19
pandemic
to
date,
more
than
doubling
any
other
in
terms
cases
and
hospitalizations
United
States.
In
this
paper,
we
present
a
large-scale
agent-based
model
policy
interventions
that
could
have
been
implemented
mitigate
wave.
Our
takes
into
account
behaviors
individuals
their
interactions
with
one
another
within
nationally
representative
population,
as
well
efficacy
various
such
social
distancing,
mask
wearing,
testing,
tracing,
vaccination.
We
use
simulate
impact
different
scenarios
evaluate
potential
effectiveness
controlling
spread
virus.
results
suggest
substantially
curtailed
via
combination
comparable
extreme
unpopular
singular
measures
widespread
closure
schools
workplaces,
highlight
importance
early
decisive
action.
Proceedings of the National Academy of Sciences,
Journal Year:
2021,
Volume and Issue:
118(51)
Published: Dec. 13, 2021
Significance
The
US
COVID-19
Trends
and
Impact
Survey
(CTIS)
has
operated
continuously
since
April
6,
2020,
collecting
over
20
million
responses.
As
the
largest
public
health
survey
conducted
in
United
States
to
date,
CTIS
was
designed
facilitate
detailed
demographic
geographic
analyses,
track
trends
time,
accommodate
rapid
revision
address
emerging
priorities.
Using
examples
of
results
illuminating
symptoms,
risks,
mitigating
behaviors,
testing,
vaccination
relation
evolving
high-priority
policy
questions
12
mo
pandemic,
we
illustrate
value
online
surveys
for
tracking
patterns
COVID
outcomes
as
an
adjunct
official
reporting,
showcase
unique
insights
that
would
not
be
visible
through
traditional
reporting.
AIMS Public Health,
Journal Year:
2023,
Volume and Issue:
10(1), P. 145 - 168
Published: Jan. 1, 2023
<abstract>
<p>Scholars
and
experts
argue
that
future
pandemics
and/or
epidemics
are
inevitable
events,
the
problem
is
not
whether
they
will
occur,
but
when
a
new
health
emergency
emerge.
In
this
uncertain
scenario,
one
of
most
important
questions
an
accurate
prevention,
preparedness
prediction
for
next
pandemic.
The
main
goal
study
twofold:
first,
clarification
sources
factors
may
trigger
pandemic
threats;
second,
examination
models
on-going
pandemics,
showing
pros
cons.
Results,
based
on
in-depth
systematic
review,
show
vital
role
environmental
in
spread
Coronavirus
Disease
2019
(COVID-19),
many
limitations
epidemiologic
because
complex
interactions
between
viral
agent
SARS-CoV-2,
environment
society
have
generated
variants
sub-variants
with
rapid
transmission.
insights
here
are,
whenever
possible,
to
clarify
these
aspects
associated
public
order
provide
lessons
learned
policy
reduce
risks
emergence
diffusion
having
negative
societal
impact.</p>
</abstract>
Scientific Data,
Journal Year:
2022,
Volume and Issue:
9(1)
Published: Aug. 1, 2022
Abstract
Academic
researchers,
government
agencies,
industry
groups,
and
individuals
have
produced
forecasts
at
an
unprecedented
scale
during
the
COVID-19
pandemic.
To
leverage
these
forecasts,
United
States
Centers
for
Disease
Control
Prevention
(CDC)
partnered
with
academic
research
lab
University
of
Massachusetts
Amherst
to
create
US
Forecast
Hub.
Launched
in
April
2020,
Hub
is
a
dataset
point
probabilistic
incident
cases,
hospitalizations,
deaths,
cumulative
deaths
due
county,
state,
national,
levels
States.
Included
represent
variety
modeling
approaches,
data
sources,
assumptions
regarding
spread
COVID-19.
The
goal
this
establish
standardized
comparable
set
short-term
from
teams.
These
can
be
used
develop
ensemble
models,
communicate
public,
visualizations,
compare
inform
policies
mitigation.
open-source
are
available
via
download
GitHub,
through
online
API,
R
packages.
Nature Communications,
Journal Year:
2024,
Volume and Issue:
15(1)
Published: May 16, 2024
Abstract
Many
studies
have
used
mobile
device
location
data
to
model
SARS-CoV-2
dynamics,
yet
relationships
between
mobility
behavior
and
endemic
respiratory
pathogens
are
less
understood.
We
studied
the
effects
of
population
on
transmission
17
viruses
in
Seattle
over
a
4-year
period,
2018-2022.
Before
2020,
visits
schools
daycares,
within-city
mixing,
visitor
inflow
preceded
or
coincided
with
seasonal
outbreaks
viruses.
Pathogen
circulation
dropped
substantially
after
initiation
COVID-19
stay-at-home
orders
March
2020.
During
this
was
positive,
leading
indicator
all
lagging
negatively
correlated
activity.
Mobility
briefly
predictive
when
restrictions
relaxed
but
associations
weakened
subsequent
waves.
The
rebound
heterogeneously
timed
exhibited
stronger,
longer-lasting
than
SARS-CoV-2.
Overall,
is
most
virus
during
periods
dramatic
behavioral
change
at
beginning
epidemic
Proceedings of the National Academy of Sciences,
Journal Year:
2021,
Volume and Issue:
118(51)
Published: Dec. 13, 2021
Significance
Validated
forecasting
methodology
should
be
a
vital
element
in
the
public
health
response
to
any
fast-moving
epidemic
or
pandemic.
A
widely
used
model
for
predicting
future
spread
of
temporal
process
is
an
autoregressive
(AR)
model.
While
basic,
such
AR
(properly
trained)
already
competitive
with
top
models
operational
use
COVID-19
forecasting.
In
this
paper,
we
exhibit
five
auxiliary
indicators—based
on
deidentified
medical
insurance
claims,
self-reported
symptoms
via
online
surveys,
and
COVID-related
Google
searches—that
further
improve
predictive
accuracy
The
most
substantial
gains
appear
quiescent
times;
but
search
indicator
appears
also
offer
improvements
during
upswings
pandemic
activity.
The Lancet Digital Health,
Journal Year:
2022,
Volume and Issue:
4(10), P. e738 - e747
Published: Sept. 20, 2022
Infectious
disease
modelling
can
serve
as
a
powerful
tool
for
situational
awareness
and
decision
support
policy
makers.
However,
COVID-19
efforts
faced
many
challenges,
from
poor
data
quality
to
changing
human
behaviour.
To
extract
practical
insight
the
large
body
of
literature
available,
we
provide
narrative
review
with
systematic
approach
that
quantitatively
assessed
prospective,
data-driven
studies
in
USA.
We
analysed
136
papers,
focused
on
aspects
models
are
essential
have
documented
forecasting
window,
methodology,
prediction
target,
datasets
used,
geographical
resolution
each
study.
also
found
fraction
papers
did
not
evaluate
performance
(25%),
express
uncertainty
(50%),
or
state
limitations
(36%).
remedy
some
these
identified
gaps,
recommend
adoption
EPIFORGE
2020
model
reporting
guidelines
creating
an
information-sharing
system
is
suitable
fast-paced
infectious
outbreak
science.
IISE Transactions,
Journal Year:
2024,
Volume and Issue:
unknown, P. 1 - 15
Published: Jan. 5, 2024
Reluctance
or
refusal
to
get
vaccinated,
commonly
known
as
Vaccine
Hesitancy
(VH),
poses
a
significant
challenge
COVID-19
vaccination
campaigns.
Understanding
the
factors
contributing
VH
is
essential
for
shaping
effective
public
health
strategies.
This
study
proposes
novel
framework
combining
machine
learning
with
publicly
available
data
generate
proxy
metric
that
evaluates
dynamics
of
faster
than
currently
used
survey
methods.
The
input
descriptive
classification
models
analyze
wide
array
data,
aiming
identify
key
associated
at
county
level
in
U.S.
during
pandemic
(i.e.,
January
October
2021).
Both
static
and
dynamic
are
considered.
We
use
Random
Forest
classifier
identifies
political
affiliation
Google
search
trends
most
influencing
behavior.
model
categorizes
counties
into
five
distinct
clusters
based
on
Cluster
1,
low
VH,
consists
mainly
Democratic-leaning
residents
who,
have
longest
life
expectancy,
college
degree,
highest
income
per
capita,
live
metropolitan
areas.
5,
high
predominantly
Republican-leaning
individuals
non-metropolitan
Individuals
1
more
responsive
policies.
Epidemics,
Journal Year:
2024,
Volume and Issue:
46, P. 100752 - 100752
Published: Feb. 23, 2024
We
document
the
evolution
and
use
of
stochastic
agent-based
COVID-19
SIMu-lation
model
(COVSIM)
to
study
impact
population
behaviors
public
health
policy
on
disease
spread
within
age,
race/ethnicity,
urbanicity
subpopulations
in
North
Carolina.
detail
methodologies
used
complexities
COVID-19,
including
multiple
agent
attributes
(i.e.,
high-risk
medical
status),
census
tract-level
interaction
network,
state
behavior
masking,
pharmaceutical
intervention
(PI)
uptake,
quarantine,
mobility),
variants.
describe
its
uses
outside
Scenario
Modeling
Hub
(CSMH),
which
has
focused
interplay
nonpharmaceutical
interventions,
equitability
vaccine
distribution,
supporting
local
county
decision-makers
This
work
led
publications
meetings
with
a
variety
stakeholders.
When
COVSIM
joined
CSMH
January
2022,
we
found
it
was
sustainable
way
support
new
challenges
allowed
group
focus
broader
scientific
questions.
The
informed
adaptions
our
modeling
approach,
redesigning
high-performance
computing
implementation.
Science Advances,
Journal Year:
2024,
Volume and Issue:
10(22)
Published: May 31, 2024
Selection
bias
poses
a
substantial
challenge
to
valid
statistical
inference
in
nonprobability
samples.
This
study
compared
estimates
of
the
first-dose
COVID-19
vaccination
rates
among
Indian
adults
2021
from
large
sample,
Trends
and
Impact
Survey
(CTIS),
small
probability
survey,
Center
for
Voting
Options
Election
Research
(CVoter),
against
national
benchmark
data
COVID
Vaccine
Intelligence
Network.
Notably,
CTIS
exhibits
larger
estimation
error
on
average
(0.37)
CVoter
(0.14).
Additionally,
we
explored
accuracy
(regarding
mean
squared
error)
estimating
successive
differences
(over
time)
subgroup
(for
females
versus
males)
vaccine
uptakes.
Compared
overall
rates,
targeting
these
alternative
estimands
comparing
or
relative
two
means
increased
effective
sample
size.
These
results
suggest
that
Big
Data
Paradox
can
manifest
countries
beyond
United
States
may
not
apply
equally
every
estimand
interest.