Abstract
The
utilization
of
large
language
model‐based
artificial
intelligence
(AI)
in
the
field
neurology
has
gained
attention
as
a
viable
tool
to
enhance
and
assist
providers
with
processes
ranging
from
scheduling
patients
providing
preliminary
interpretations
testing
results,
pending
orders,
documenting
encounters.
Epileptologists
could
benefit
these
technologies
by
utilizing
ambient
AI
models,
recent
applications
which
offer
promising
solutions
for
automating
clinical
documentation.
While
potential
benefits
using
tools
are
significant
include
reduced
physician
burnout
improved
patient
experience,
deployment
also
raises
critical
concerns,
such
biases
model
training
risk
errors
being
inserted
into
electronic
health
record
(EHR),
among
other
yet
be
realized
unintended
consequences.
accuracy
documentation
is
essential
epilepsy
care,
where
detailed
seizure
histories
accurate
medication
records
safety.
Another
concern
may
paradoxically
increased
expectations
created.
This
article
examines
challenges,
risks,
practical
considerations
applying
that
utilize
(AmI)
outpatient
clinic
encounters,
highlighting
key
examples
practice
underscoring
importance
human
oversight.
Although
AmI
models
efficiency
measured
time
close
note
rates
providers,
their
role
environments
must
carefully
regulated,
further
studies
needed
validate
this
claim,
provide
ongoing
monitoring
performance,
establish
safeguards
Collaborative
efforts
clinicians,
informatics
professionals,
developers,
regulatory
bodies
pressingly
ensure
safe
care
settings.
Plain
Language
Summary
Ambient
technology
takes
advantage
sensors
embedded
environment
automate
tasks
without
need
input.
It
streamline
numerous
within
clinics
reduce
workload
well
improve
care.
already
been
brought
market
current
challenges
limitations
associated
its
implementation
require
careful
oversight,
we
show
examples.
Further
research,
regulations,
necessary
both
healthcare
while
minimizing
risks.
Sensors,
Год журнала:
2025,
Номер
25(1), С. 266 - 266
Опубликована: Янв. 5, 2025
In
the
medical
field,
there
are
several
very
different
movement
disorders,
such
as
tremors,
Parkinson’s
disease,
or
Huntington’s
disease.
A
wide
range
of
motor
and
non-motor
symptoms
characterizes
them.
It
is
evident
that
in
modern
era,
use
smart
wrist
devices,
smartwatches,
wristbands,
bracelets
spreading
among
all
categories
people.
This
diffusion
justified
by
limited
costs,
ease
use,
less
invasiveness
(and
consequently
greater
acceptability)
than
other
types
sensors
used
for
health
status
monitoring.
systematic
review
aims
to
synthesize
research
studies
using
devices
a
specific
class
disorders.
Following
PRISMA-S
guidelines,
130
were
selected
analyzed.
For
each
study,
information
provided
relating
smartwatch/wristband/bracelet
model
(whether
it
commercial
not),
number
end-users
involved
experimentation
stage,
finally
characteristics
benchmark
dataset
possibly
testing.
Moreover,
some
articles
also
reported
type
raw
data
extracted
from
device,
implemented
designed
algorithmic
pipeline,
classification
methodology.
turned
out
most
have
been
published
last
ten
years,
showing
growing
interest
scientific
community.
The
mainly
investigate
relationship
between
Epilepsy
seizure
detection
topics
interest,
while
few
papers
analyzing
gait
Disease,
ataxia,
Tourette
Syndrome.
However,
results
this
highlight
difficulties
still
present
identified
despite
advantages
these
technologies
could
bring
dissemination
low-cost
solutions
usable
directly
within
living
environments
without
need
caregivers
personnel.
Science Translational Medicine,
Год журнала:
2022,
Номер
14(666)
Опубликована: Окт. 12, 2022
A
confluence
of
advances
in
biosensor
technologies,
enhancements
health
care
delivery
mechanisms,
and
improvements
machine
learning,
together
with
an
increased
awareness
remote
patient
monitoring,
has
accelerated
the
impact
digital
across
nearly
every
medical
discipline.
Medical
grade
wearables—noninvasive,
on-body
sensors
operating
clinical
accuracy—will
play
increasingly
central
role
medicine
by
providing
continuous,
cost-effective
measurement
interpretation
physiological
data
relevant
to
status
disease
trajectory,
both
inside
outside
established
settings.
Here,
we
review
current
technologies
highlight
critical
gaps
translation
adoption.
Epilepsia,
Год журнала:
2023,
Номер
64(6), С. 1627 - 1639
Опубликована: Апрель 15, 2023
The
factors
that
influence
seizure
timing
are
poorly
understood,
and
unpredictability
remains
a
major
cause
of
disability.
Work
in
chronobiology
has
shown
cyclical
physiological
phenomena
ubiquitous,
with
daily
multiday
cycles
evident
immune,
endocrine,
metabolic,
neurological,
cardiovascular
function.
Additionally,
work
chronic
brain
recordings
identified
risk
is
linked
to
activity.
Here,
we
provide
the
first
characterization
relationships
between
modulation
diverse
set
signals,
activity,
timing.In
this
cohort
study,
14
subjects
underwent
ambulatory
monitoring
multimodal
wrist-worn
sensor
(recording
heart
rate,
accelerometry,
electrodermal
temperature)
an
implanted
responsive
neurostimulation
system
interictal
epileptiform
abnormalities
electrographic
seizures).
Wavelet
filter-Hilbert
spectral
analyses
characterized
circadian
wearable
recordings.
Circular
statistics
assessed
physiology.Ten
met
inclusion
criteria.
mean
recording
duration
was
232
days.
Seven
had
reliable
electroencephalographic
detections
(mean
=
76
Multiday
were
present
all
device
signals
across
subjects.
Seizure
phase
locked
five
(temperature),
four
(heart
phasic
activity),
three
(accelerometry,
rate
variability,
tonic
activity)
Notably,
after
regression
behavioral
covariates
from
six
seven
locking
residual
signal.Seizure
associated
multiple
processes.
Chronic
can
situate
rare
paroxysmal
events,
like
seizures,
within
broader
context
individual.
Wearable
devices
may
advance
understanding
enable
personalized
time-varying
approaches
epilepsy
care.
New England Journal of Medicine,
Год журнала:
2024,
Номер
390(8), С. 736 - 745
Опубликована: Фев. 21, 2024
One
third
of
people
with
epilepsy
have
seizures
despite
medical
treatment.
The
authors
examine
wearable
digital
health
devices
that
can
detect
and
how
these
affect
care.
One
of
the
most
disabling
aspects
living
with
chronic
epilepsy
is
unpredictability
seizures.
Cumulative
research
in
past
decades
has
advanced
our
understanding
dynamics
seizure
risk.
Technological
advances
have
recently
made
it
possible
to
record
pertinent
biological
signals,
including
electroencephalogram
(EEG),
continuously.
We
aimed
assess
whether
patient-specific
forecasting
using
remote,
minimally
invasive
ultra-long-term
subcutaneous
EEG.
To
date,
the
unpredictability
of
seizures
remains
a
source
suffering
for
people
with
epilepsy,
motivating
decades
research
into
methods
to
forecast
seizures.
Originally,
only
few
scientists
and
neurologists
ventured
this
niche
endeavor,
which,
given
difficulty
task,
soon
turned
long
winding
road.
Over
past
decade,
however,
our
narrow
field
has
seen
major
acceleration,
trials
chronic
electroencephalographic
devices
subsequent
discovery
cyclical
patterns
in
occurrence
Now,
burgeoning
science
seizure
timing
is
emerging,
which
turn
informs
best
forecasting
strategies
upcoming
clinical
trials.
Although
finish
line
might
be
view,
many
challenges
remain
make
reality.
This
review
covers
most
recent
scientific,
technical,
medical
developments,
discusses
methodology
detail,
sets
number
goals
future
studies.
Epilepsia,
Год журнала:
2023,
Номер
64(12), С. 3213 - 3226
Опубликована: Сен. 16, 2023
Wrist-
or
ankle-worn
devices
are
less
intrusive
than
the
widely
used
electroencephalographic
(EEG)
systems
for
monitoring
epileptic
seizures.
Using
custom-developed
deep-learning
seizure
detection
models,
we
demonstrate
of
a
broad
range
types
by
wearable
signals.Patients
admitted
to
epilepsy
unit
were
enrolled
and
asked
wear
sensors
on
either
wrists
ankles.
We
collected
patients'
electrodermal
activity,
accelerometry
(ACC),
photoplethysmography,
from
which
blood
volume
pulse
(BVP)
is
derived.
Board-certified
epileptologists
determined
onset,
offset,
using
video
EEG
recordings
per
International
League
Against
Epilepsy
2017
classification.
applied
three
neural
network
models-a
convolutional
(CNN)
CNN-long
short-term
memory
(LSTM)-based
generalized
model
an
autoencoder-based
personalized
model-to
raw
time-series
sensor
data
detect
seizures
utilized
performance
measures,
including
sensitivity,
false
positive
rate
(the
number
alarms
divided
total
nonseizure
segments),
day,
delay.
10-fold
patientwise
cross-validation
scheme
multisignal
biosensor
evaluated
28
types.We
analyzed
166
patients
(47.6%
female,
median
age
=
10.0
years)
900
(13
254
h
data)
types.
With
CNN-LSTM-based
model,
ACC,
BVP,
their
fusion
performed
better
chance;
ACC
BVP
reached
best
83.9%
sensitivity
35.3%
rate.
Nineteen
could
be
detected
at
least
one
modality
with
area
under
receiver
operating
characteristic
curve
>
.8
performance.Results
this
in-hospital
study
contribute
paradigm
shift
in
care
that
entails
noninvasive
detection,
provides
time-sensitive
accurate
additional
clinical
types,
proposes
novel
combination
out-of-the-box
algorithm
individualized
person-oriented
approach.
Epilepsia,
Год журнала:
2024,
Номер
65(6), С. 1730 - 1736
Опубликована: Апрель 12, 2024
Recently,
a
deep
learning
artificial
intelligence
(AI)
model
forecasted
seizure
risk
using
retrospective
diaries
with
higher
accuracy
than
random
forecasts.
The
present
study
sought
to
prospectively
evaluate
the
same
algorithm.
This
review
explores
recent
advancements
in
wearable
digital
health
technology
specifically
designed
to
manage
epilepsy.
Epilepsy
presents
unique
challenges
monitoring
and
management
due
the
unpredictable
nature
of
seizures.
Wearable
devices
offer
continuous
real-time
data
collection,
providing
insights
into
seizure
patterns
trends.
is
important
epilepsy
because
it
enables
early
detection,
prediction,
personalized
intervention,
empowering
patients
healthcare
providers.
Key
findings
highlight
potential
improve
detection
accuracy,
enhance
patient
empowerment
through
monitoring,
facilitate
data-driven
decision-making
clinical
practice.
However,
further
research
needed
validate
accuracy
reliability
these
across
diverse
populations
settings.
Collaborative
efforts
between
researchers,
clinicians,
developers,
are
essential
drive
innovation
for
management,
ultimately
improving
outcomes
quality
life
individuals
with
this
neurological
condition.