Proceedings of the ACM on Interactive Mobile Wearable and Ubiquitous Technologies,
Journal Year:
2022,
Volume and Issue:
6(2), P. 1 - 32
Published: July 4, 2022
The
rates
of
mental
illness,
especially
anxiety
and
depression,
have
increased
greatly
since
the
start
COVID-19
pandemic.
Traditional
illness
screening
instruments
are
too
cumbersome
biased
to
screen
an
entire
population.
In
contrast,
smartphone
call
text
logs
passively
capture
communication
patterns
thus
represent
a
promising
alternative.
To
facilitate
advancement
such
research,
we
collect
curate
DepreST
Call
Text
log
(DepreST-CAT)
dataset
from
over
365
crowdsourced
participants
during
labeled
with
traditional
depression
scores
essential
for
training
machine
learning
models.
We
construct
time
series
ranging
2
16
weeks
in
length
retrospective
logs.
demonstrate
capabilities
these
series,
then
train
variety
unimodal
multimodal
deep
These
models
provide
insights
into
relative
value
different
types
logs,
lengths
classification
methods.
DepreST-CAT
is
valuable
resource
research
community
model
pandemic
further
development
algorithms
passive
screening.
Artificial Intelligence Review,
Journal Year:
2022,
Volume and Issue:
56(6), P. 5261 - 5315
Published: Oct. 26, 2022
Nowadays
Artificial
Intelligence
(AI)
has
become
a
fundamental
component
of
healthcare
applications,
both
clinical
and
remote,
but
the
best
performing
AI
systems
are
often
too
complex
to
be
self-explaining.
Explainable
(XAI)
techniques
defined
unveil
reasoning
behind
system's
predictions
decisions,
they
even
more
critical
when
dealing
with
sensitive
personal
health
data.
It
is
worth
noting
that
XAI
not
gathered
same
attention
across
different
research
areas
data
types,
especially
in
healthcare.
In
particular,
many
remote
applications
based
on
tabular
time
series
data,
respectively,
commonly
analysed
these
while
computer
vision
Natural
Language
Processing
(NLP)
reference
applications.
To
provide
an
overview
methods
most
suitable
for
domain,
this
paper
provides
review
literature
last
5
years,
illustrating
type
generated
explanations
efforts
provided
evaluate
their
relevance
quality.
Specifically,
we
identify
validation,
consistency
assessment,
objective
standardised
quality
evaluation,
human-centered
assessment
as
key
features
ensure
effective
end
users.
Finally,
highlight
main
challenges
field
well
limitations
existing
methods.
Bioengineering,
Journal Year:
2023,
Volume and Issue:
10(4), P. 459 - 459
Published: April 9, 2023
The
physical
and
mental
health
of
people
can
be
enhanced
through
yoga,
an
excellent
form
exercise.
As
part
the
breathing
procedure,
yoga
involves
stretching
body
organs.
guidance
monitoring
are
crucial
to
ripe
full
benefits
it,
as
wrong
postures
possess
multiple
antagonistic
effects,
including
hazards
stroke.
detection
possible
with
Intelligent
Internet
Things
(IIoT),
which
is
integration
intelligent
approaches
(machine
learning)
(IoT).
Considering
increment
in
practitioners
recent
years,
IIoT
has
led
successful
implementation
IIoT-based
training
systems.
This
paper
provides
a
comprehensive
survey
on
integrating
IIoT.
also
discusses
types
procedure
for
using
Additionally,
this
highlights
various
applications
safety
measures,
challenges,
future
directions.
latest
developments
findings
its
Frontiers in Physiology,
Journal Year:
2025,
Volume and Issue:
16
Published: April 1, 2025
This
study
aims
to
develop
a
multimodal
deep
learning-based
stress
detection
method
(MMFD-SD)
using
intermittently
collected
physiological
signals
from
wearable
devices,
including
accelerometer
data,
electrodermal
activity
(EDA),
heart
rate
(HR),
and
skin
temperature.
Given
the
unique
demands
high-intensity
work
environment
of
nursing
profession,
measurement
in
nurses
serves
as
representative
case,
reflecting
levels
other
high-pressure
occupations.
We
propose
learning
framework
that
integrates
time-domain
frequency-domain
features
for
detection.
To
enhance
model
robustness
generalization,
data
augmentation
techniques
such
sliding
window
jittering
are
applied.
Feature
extraction
includes
statistical
derived
raw
obtained
via
Fast
Fourier
Transform
(FFT).
A
customized
architecture
employs
convolutional
neural
networks
(CNNs)
process
separately,
followed
by
fully
connected
layers
final
classification.
address
class
imbalance,
Synthetic
Minority
Over-sampling
Technique
(SMOTE)
is
utilized.
The
trained
evaluated
on
signal
dataset
with
level
labels.
Experimental
results
demonstrate
MMFD-SD
achieves
outstanding
performance
detection,
an
accuracy
91.00%
F1-score
0.91.
Compared
traditional
machine
classifiers
logistic
regression,
random
forest,
XGBoost,
proposed
significantly
improves
both
robustness.
Ablation
studies
reveal
integration
plays
crucial
role
enhancing
performance.
Additionally,
sensitivity
analysis
confirms
model's
stability
adaptability
across
different
hyperparameter
settings.
provides
accurate
robust
approach
integrating
features.
Designed
occupational
environments
intermittent
collection,
it
effectively
addresses
real-world
monitoring
challenges.
Future
research
can
explore
fusion
additional
modalities,
real-time
improvements
generalization
its
practical
applicability.
Proceedings of the ACM on Interactive Mobile Wearable and Ubiquitous Technologies,
Journal Year:
2022,
Volume and Issue:
6(3), P. 1 - 19
Published: Sept. 6, 2022
Despite
advances
in
audio-
and
motion-based
human
activity
recognition
(HAR)
systems,
a
practical,
power-efficient,
privacy-sensitive
system
has
remained
elusive.
State-of-the-art
systems
often
require
power-hungry
privacy-invasive
audio
data.
This
is
especially
challenging
for
resource-constrained
wearables,
such
as
smartwatches.
To
counter
the
need
an
always-on
audio-based
classification
system,
we
first
make
use
of
power
compute-optimized
IMUs
sampled
at
50
Hz
to
act
trigger
detecting
events.
Once
detected,
multimodal
deep
learning
model
that
augments
motion
data
with
captured
on
smartwatch.
We
subsample
this
rates
≤
1
kHz,
rendering
spoken
content
unintelligible,
while
also
reducing
consumption
mobile
devices.
Our
achieves
accuracy
92.2%
across
26
daily
activities
four
indoor
environments.
findings
show
subsampling
from
16
kHz
down
concert
data,
does
not
result
significant
drop
inference
accuracy.
analyze
speech
intelligibility
requirements
less
than
demonstrate
our
proposed
approach
can
improve
practicality
systems.
IEEE Transactions on Neural Systems and Rehabilitation Engineering,
Journal Year:
2024,
Volume and Issue:
32, P. 718 - 727
Published: Jan. 1, 2024
Motor
imagery
(MI)
classification
based
on
electroencephalogram
(EEG)
is
a
widely-used
technique
in
non-invasive
brain-computer
interface
(BCI)
systems.
Since
EEG
recordings
suffer
from
heterogeneity
across
subjects
and
labeled
data
insufficiency,
designing
classifier
that
performs
the
MI
independently
subject
with
limited
samples
would
be
desirable.
To
overcome
these
limitations,
we
propose
novel
subject-independent
semi-supervised
deep
architecture
(SSDA).
The
proposed
SSDA
consists
of
two
parts:
an
unsupervised
supervised
element.
training
set
contains
both
unlabeled
multiple
subjects.
First,
part,
known
as
columnar
spatiotemporal
auto-encoder
(CST-AE),
extracts
latent
features
all
by
maximizing
similarity
between
original
reconstructed
data.
A
dimensional
scaling
approach
employed
to
reduce
dimensionality
representations
while
preserving
their
discriminability.
Second,
part
learns
using
acquired
part.
Moreover,
employ
center
loss
minimize
embedding
space
distance
each
point
class
its
center.
model
optimizes
parts
network
end-to-end
fashion.
performance
evaluated
test
who
were
not
seen
during
phase.
assess
performance,
use
benchmark
EEG-based
task
datasets.
results
demonstrate
outperforms
state-of-the-art
methods
small
number
can
sufficient
for
strong
performance.
Sensors,
Journal Year:
2024,
Volume and Issue:
24(10), P. 3221 - 3221
Published: May 18, 2024
Stress
is
a
natural
yet
potentially
harmful
aspect
of
human
life,
necessitating
effective
management,
particularly
during
overwhelming
experiences.
This
paper
presents
scoping
review
personalized
stress
detection
models
using
wearable
technology.
Employing
the
PRISMA-ScR
framework
for
rigorous
methodological
structuring,
we
systematically
analyzed
literature
from
key
databases
including
Scopus,
IEEE
Xplore,
and
PubMed.
Our
focus
was
on
biosignals,
AI
methodologies,
datasets,
devices,
real-world
implementation
challenges.
The
an
overview
its
biological
mechanisms,
details
methodology
search,
synthesizes
findings.
It
shows
that
especially
EDA
PPG,
are
frequently
utilized
demonstrate
potential
reliability
in
multimodal
settings.
Evidence
trend
towards
deep
learning
found,
although
limited
comparison
with
traditional
methods
calls
further
research.
Concerns
arise
regarding
representativeness
datasets
practical
challenges
deploying
technologies,
which
include
issues
related
to
data
quality
privacy.
Future
research
should
aim
develop
comprehensive
explore
techniques
not
only
accurate
but
also
computationally
efficient
user-centric,
thereby
closing
gap
between
theoretical
applications
improve
effectiveness
systems
real
scenarios.
Journal of Neural Engineering,
Journal Year:
2021,
Volume and Issue:
18(4), P. 041006 - 041006
Published: July 30, 2021
Mild
traumatic
brain
injuries
(mTBIs)
are
the
most
common
type
of
injury.
Timely
diagnosis
mTBI
is
crucial
in
making
'go/no-go'
decision
order
to
prevent
repeated
injury,
avoid
strenuous
activities
which
may
prolong
recovery,
and
assure
capabilities
high-level
performance
subject.
If
undiagnosed,
lead
various
short-
long-term
abnormalities,
include,
but
not
limited
impaired
cognitive
function,
fatigue,
depression,
irritability,
headaches.
Existing
screening
diagnostic
tools
detect
acute
andearly-stagemTBIs
have
insufficient
sensitivity
specificity.
This
results
uncertainty
clinical
decision-making
regarding
returning
activity
or
requiring
further
medical
treatment.
Therefore,
it
important
identify
relevant
physiological
biomarkers
that
can
be
integrated
into
a
mutually
complementary
set
provide
combination
data
modalities
for
improved
on-site
mTBI.
In
recent
years,
processing
power,
signal
fidelity,
number
recording
channels
wearable
healthcare
devices
tremendously
generated
an
enormous
amount
data.
During
same
period,
there
been
incredible
advances
machine
learning
methodologies.
These
achievements
enabling
clinicians
engineers
develop
implement
multiparametric
high-precision
this
review,
we
first
assess
challenges
mTBI,
then
consider
hardware
implementation
sensing
technologies
used
related
Finally,
discuss
state
art
learning-based
detection
how
more
diverse
list
quantitative
biomarker
features
improve
current
data-driven
approaches
providing
patients
timely
ACM Transactions on Computing for Healthcare,
Journal Year:
2025,
Volume and Issue:
unknown
Published: March 11, 2025
The
interplay
between
mood
and
eating
episodes
has
been
extensively
researched
within
the
fields
of
nutrition,
psychology,
behavioral
science,
revealing
a
connection
two.
Previous
studies
have
relied
on
questionnaires
mobile
phone
self-reports
to
investigate
relationship
eating.
In
more
recent
work,
sensor
data
utilized
characterize
both
behavior
independently,
particularly
in
context
food
diaries
health
applications.
However,
current
literature
exhibits
several
limitations:
lack
investigation
into
generalization
inference
models
trained
with
from
various
everyday
life
situations
specific
contexts
like
eating;
an
absence
using
explore
intersection
inadequate
examination
model
personalization
techniques
limited
label
settings,
common
challenge
(i.e.,
far
fewer
negative
reports
compared
positive
or
neutral
reports).
this
study,
we
examined
two
separate
datasets
different
studies:
i)
Mexico
(N
\({}_{MEX}\)
=
84,
1843
mood-while-eating
distribution
positive:
51.7%,
neutral:
38.6%
negative:
9.8%)
2019,
ii)
eight
countries
\({}_{MUL}\)
678,
329K
reports,
including
24K
83%,
14.9%,
2.2%)
2020,
which
contain
passive
smartphone
sensing
self-report
data.
Our
results
indicate
that
generic
experience
decline
performance
contexts,
such
as
during
eating,
highlighting
issue
sub-context
shifts
sensing.
Moreover,
discovered
population-level
(non-personalized)
hybrid
(partially
personalized)
modeling
fall
short
commonly
used
three-class
task
(positive,
neutral,
negative).
Additionally,
found
user-level
posed
challenges
for
majority
participants
due
insufficient
labels
class.
To
overcome
these
limitations,
implemented
novel
community-based
approach,
building
set
users
similar
target
user.
findings
demonstrate
can
be
inferred
accuracies
63.8%
(with
F1-score
62.5)
MEX
dataset
88.3%
85.7)
MUL
models,
surpassing
those
achieved
traditional
methods.