Futurity Medicine.,
Journal Year:
2024,
Volume and Issue:
3(3)
Published: July 10, 2024
In
recent
years,
medicine
has
faced
the
serious
challenge
of
covid
pandemic,
due
to
which
representatives
health
care
sector
had
mobilize
forces
and
resources
jointly
overcome
these
problems.
The
rapid
development
artificial
intelligence,
its
learning
capabilities,
in
years
creation
a
neural
network
opens
up
wide
possibilities
for
use
AI
medicine.
Aims:
To
analyze
modern
literature
on
diagnosis
treatment
what
problems
may
arise
with
uncontrolled
introduction
intelligence
Methodology:
When
conducting
review,
an
analysis
generalization
data
research
topic
from
2019
2024
was
carried
out.
search
out
by
keywords
using
PubMed
engine.
Results:
review
demonstrated
medicine,
grown
significantly
continues
development,
is
associated
improvement
innovative
technologies.
diagnostics
network,
makes
it
possible
identify
digitized
images
diagnosis.
surgery
reflected
application
da
Vinci.
Artificial
been
widely
used
anesthesiology.
Scientific
Novelty:
established
that
implementation
creates
certain
challenges
related
protection
personal
data,
possibility
error
not
excluded
when
AI.
Conclusion:
promising
helps
doctors
quickly
make
prescribe
treatment,
but
created
must
be
solved
implementing
more
reliable
systems,
as
well
control
over
information
reproduced
intelligence.
BMC Oral Health,
Journal Year:
2024,
Volume and Issue:
24(1)
Published: Feb. 24, 2024
Abstract
Background
The
aim
of
this
systematic
review
is
to
evaluate
the
diagnostic
performance
Artificial
Intelligence
(AI)
models
designed
for
detection
caries
lesion
(CL).
Materials
and
methods
An
electronic
literature
search
was
conducted
on
PubMed,
Web
Science,
SCOPUS,
LILACS
Embase
databases
retrospective,
prospective
cross-sectional
studies
published
until
January
2023,
using
following
keywords:
artificial
intelligence
(AI),
machine
learning
(ML),
deep
(DL),
neural
networks
(ANN),
convolutional
(CNN),
(DCNN),
radiology,
detection,
diagnosis
dental
(DC).
quality
assessment
performed
guidelines
QUADAS-2.
Results
Twenty
articles
that
met
selection
criteria
were
evaluated.
Five
periapical
radiographs,
nine
bitewings,
six
orthopantomography.
number
imaging
examinations
included
ranged
from
15
2900.
Four
investigated
ANN
models,
fifteen
CNN
two
DCNN
models.
Twelve
retrospective
studies,
prospective.
achieved
in
detecting
CL:
sensitivity
0.44
0.86,
specificity
0.85
0.98,
precision
0.50
0.94,
PPV
(Positive
Predictive
Value)
NPV
(Negative
0.95,
accuracy
0.73
area
under
curve
(AUC)
0.84
intersection
over
union
0.3–0.4
0.78,
Dice
coefficient
0.66
0.88,
F1-score
0.64
0.92.
According
QUADAS-2
evaluation,
most
exhibited
a
low
risk
bias.
Conclusion
AI-based
have
demonstrated
good
performance,
potentially
being
an
important
aid
CL
detection.
Some
limitations
these
are
related
size
heterogeneity
datasets.
Future
need
rely
comparable,
large,
clinically
meaningful
Protocol
PROSPERO
identifier:
CRD42023470708
International Endodontic Journal,
Journal Year:
2025,
Volume and Issue:
unknown
Published: Jan. 28, 2025
Abstract
Aim
To
develop
and
validate
an
artificial
intelligence
(AI)‐powered
tool
based
on
convolutional
neural
network
(CNN)
for
automatic
segmentation
of
root
canals
in
single‐rooted
teeth
using
cone‐beam
computed
tomography
(CBCT).
Methodology
A
total
69
CBCT
scans
were
retrospectively
recruited
from
a
hospital
database
acquired
two
devices
with
varying
protocols.
These
randomly
assigned
to
the
training
(
n
=
31,
88
teeth),
validation
8,
15
teeth)
testing
30,
120
sets.
For
data
sets,
each
scan
was
imported
Virtual
Patient
Creator
platform,
where
manual
performed
by
operators,
establishing
ground
truth.
Subsequently,
AI
model
tested
30
(120
AI‐generated
three‐dimensional
(3D)
virtual
models
exported
standard
triangle
language
(STL)
format.
Importantly,
set
encompassed
different
types
teeth.
An
experienced
operator
evaluated
automated
segmentation,
refinements
made
create
refined
3D
(R‐AI).
The
R‐AI
compared
performance
evaluation.
Additionally,
30%
sample
manually
segmented
at
times
compare
AI‐based
human
methods.
time
taken
method
obtain
recorded
seconds(s)
further
comparison.
Results
AI‐driven
demonstrated
highly
accurate
(Dice
similarity
coefficient
[DSC]
ranging
89%
93%;
95%
Hausdorff
distance
[HD]
0.10
0.13
mm),
no
significant
impact
tooth
type
accuracy
metrics
p
>
.05).
approach
outperformed
<
.05),
showing
higher
DSC
lower
HD
values.
In
terms
efficiency,
required
significantly
more
(2262.4
±
679.1
s)
(94
64.7
(41.8
12.2
methods
representing
54‐fold
decrease.
Conclusions
novel
exhibited
time‐efficient
canal
CBCT,
surpassing
performance.
Journal of Clinical Medicine,
Journal Year:
2023,
Volume and Issue:
12(23), P. 7378 - 7378
Published: Nov. 28, 2023
The
concept
of
machines
learning
and
acting
like
humans
is
what
meant
by
the
phrase
“artificial
intelligence”
(AI).
Several
branches
dentistry
are
increasingly
relying
on
artificial
intelligence
(AI)
tools.
literature
usually
focuses
AI
models.
These
models
have
been
used
to
detect
diagnose
a
wide
range
conditions,
including,
but
not
limited
to,
dental
caries,
vertical
root
fractures,
apical
lesions,
diseases
salivary
glands,
maxillary
sinusitis,
maxillofacial
cysts,
cervical
lymph
node
metastasis,
osteoporosis,
cancerous
alveolar
bone
loss,
need
for
orthodontic
extractions
or
treatments,
cephalometric
analysis,
age
gender
determination,
more.
primary
contemporary
applications
in
field
undergraduate
teaching
research.
Before
these
methods
can
be
everyday
dentistry,
however,
underlying
technology
user
interfaces
refined.
The Journal of Contemporary Dental Practice,
Journal Year:
2024,
Volume and Issue:
24(11), P. 912 - 917
Published: Jan. 11, 2024
Aim
and
background:
Artificial
intelligence
(AI)
since
it
was
introduced
into
dentistry,
has
become
an
important
valuable
tool
in
many
fields.It
applied
different
specialties
with
uses,
for
example,
diagnosis
of
oral
cancer,
periodontal
disease
dental
caries,
the
treatment
planning
predicting
outcome
orthognathic
surgeries.The
aim
this
comprehensive
review
is
to
report
on
application
performance
AI
models
designed
field
endodontics.Materials
methods:
PubMed,
Web
Science,
Google
Scholar
were
searched
collect
most
relevant
articles
using
terms,
such
as
AI,
endodontics,
dentistry.This
included
56
papers
related
its
endodontics.Result:
The
applications
detecting
diagnosing
periapical
lesions,
assessing
root
fractures,
working
length
determination,
prediction
postoperative
pain,
studying
canal
anatomy
decision-making
endodontics
retreatment.The
accuracy
performing
these
tasks
can
reach
up
90%.Conclusion:
modern
promising
results.Larger
multicenter
data
sets
give
external
validity
models.Clinical
significance:
In
are
specifically
crafted
contribute
diseases,
ranging
from
common
issues
caries
more
complex
conditions
like
diseases
cancer.AI
help
diagnosis,
planning,
patient
management
endodontics.Along
tools
cone-beam
computed
tomography
(CBCT),
be
a
aid
clinician.
Journal of Dental Research,
Journal Year:
2024,
Volume and Issue:
103(9), P. 853 - 862
Published: May 31, 2024
Endodontics
is
the
dental
specialty
foremost
concerned
with
diseases
of
pulp
and
periradicular
tissues.
Clinicians
often
face
patients
varying
symptoms,
must
critically
assess
radiographic
images
in
2
3
dimensions,
derive
complex
diagnoses
decision
making,
deliver
sophisticated
treatment.
Paired
low
intra-
interobserver
agreement
for
interpretation
variations
treatment
outcome
resulting
from
nonstandardized
clinical
techniques,
there
exists
an
unmet
need
support
form
artificial
intelligence
(AI),
providing
automated
biomedical
image
analysis,
support,
assistance
during
In
past
decade,
has
been
a
steady
increase
AI
studies
endodontics
but
limited
application.
This
review
focuses
on
assessing
recent
advancements
endodontic
research
applications,
including
detection
diagnosis
pathologies
such
as
periapical
lesions,
fractures
resorptions,
well
predictions.
It
discusses
benefits
AI-assisted
diagnosis,
planning
execution,
future
directions
augmented
reality
robotics.
reviews
limitations
challenges
imposed
by
nature
data
sets,
transparency
generalization,
potential
ethical
dilemmas.
near
future,
will
significantly
affect
everyday
workflow,
education,
continuous
learning.
Digital Health,
Journal Year:
2024,
Volume and Issue:
10
Published: Jan. 1, 2024
Introduction
Healthcare
amelioration
is
exponential
to
technological
advancement.
In
the
recent
era
of
automation,
consolidation
artificial
intelligence
(AI)
in
dentistry
has
rendered
transformation
oral
healthcare
from
a
hardware-centric
approach
software-centric
approach,
leading
enhanced
efficiency
and
improved
educational
clinical
outcomes.
Objectives
The
aim
this
narrative
overview
extend
succinct
major
events
innovations
that
led
creation
modern-day
AI
applicability
former
dentistry.
This
article
also
prompts
workers
endeavor
liable
optimal
for
effective
incorporation
technology
into
their
practice
promote
health
by
exploring
potentials,
constraints,
ethical
considerations
Methods
A
comprehensive
searching
white
grey
literature
was
carried
out
collect
assess
data
on
AI,
its
use
dentistry,
associated
challenges
concerns.
Results
still
evolving
phase
with
paramount
applicabilities
relevant
risk
prediction,
diagnosis,
decision-making,
prognosis,
tailored
treatment
plans,
patient
management,
academia
as
well
concerns
implementation.
Conclusion
upsurging
advancements
have
resulted
transformations
promising
outcomes
across
all
domains
futurity,
may
be
capable
executing
multitude
tasks
domain
healthcare,
at
level
or
surpassing
ability
mankind.
However,
could
significant
benefit
only
if
it
utilized
under
responsibility,
ethicality
universality.
PubMed,
Journal Year:
2024,
Volume and Issue:
19(2), P. 85 - 98
Published: Jan. 1, 2024
Artificial
intelligence
(AI)
is
transforming
the
diagnostic
methods
and
treatment
approaches
in
constantly
evolving
field
of
endodontics.
The
current
review
discusses
recent
advancements
AI;
with
a
specific
focus
on
convolutional
artificial
neural
networks.
Apparently,
AI
models
have
proved
to
be
highly
beneficial
analysis
root
canal
anatomy,
detecting
periapical
lesions
early
stages
as
well
providing
accurate
working-length
determination.
Moreover,
they
seem
effective
predicting
success
next
identifying
various
conditions
e.g.,
dental
caries,
pulpal
inflammation,
vertical
fractures,
expression
second
opinions
for
non-surgical
treatments.
Furthermore,
has
demonstrated
an
exceptional
ability
recognize
landmarks
cone-beam
computed
tomography
scans
consistently
high
precision
rates.
While
significantly
promoted
accuracy
efficiency
endodontic
procedures,
it
importance
continue
validating
reliability
practicality
possible
widespread
integration
into
daily
clinical
practice.
Additionally,
ethical
considerations
related
patient
privacy,
data
security,
potential
bias
should
carefully
examined
ensure
responsible
implementation
Dental Traumatology,
Journal Year:
2024,
Volume and Issue:
unknown
Published: Oct. 26, 2024
The
aim
of
this
cross-sectional
observational
analytical
study
was
to
assess
the
accuracy
and
consistency
responses
provided
by
Google
Gemini
(GG),
a
free-access
high-performance
multimodal
large
language
model,
questions
related
European
Society
Endodontology
position
statement
on
management
traumatized
permanent
teeth
(MTPT).
Diagnostics,
Journal Year:
2023,
Volume and Issue:
13(15), P. 2512 - 2512
Published: July 27, 2023
Deep
learning
and
diagnostic
applications
in
oral
dental
health
have
received
significant
attention
recently.
In
this
review,
studies
applying
deep
to
diagnose
anomalies
diseases
image
material
were
systematically
compiled,
their
datasets,
methodologies,
test
processes,
explainable
artificial
intelligence
methods,
findings
analyzed.
Tests
results
involving
human-artificial
comparisons
are
discussed
detail
draw
the
clinical
importance
of
learning.
addition,
review
critically
evaluates
literature
guide
further
develop
future
field.
An
extensive
search
was
conducted
for
2019–May
2023
range
using
Medline
(PubMed)
Google
Scholar
databases
identify
eligible
articles,
101
shortlisted,
including
diagnosing
(n
=
22)
79)
classification,
object
detection,
segmentation
tasks.
According
results,
most
commonly
used
task
type
classification
51),
panoramic
radiographs
55),
frequently
performance
metric
sensitivity/recall/true
positive
rate
87)
accuracy
69).
Dataset
sizes
ranged
from
60
12,179
images.
Although
algorithms
as
individual
or
at
least
individualized
architectures,
standardized
architectures
such
pre-trained
CNNs,
Faster
R-CNN,
YOLO,
U-Net
been
studies.
Few
AI
method
applied
tests
comparing
human
21).
is
promising
better
diagnosis
treatment
planning
dentistry
based
on
high-performance
reported
by
For
all
that,
safety
should
be
demonstrated
a
more
reproducible
comparable
methodology,
with
information
about
applicability,
defining
standard
set
metrics.
Journal of Clinical Medicine,
Journal Year:
2024,
Volume and Issue:
13(14), P. 4116 - 4116
Published: July 14, 2024
Background/Objectives:
The
aim
of
this
study
was
to
assess
the
diagnostic
accuracy
AI-driven
platform
Diagnocat
for
evaluating
endodontic
treatment
outcomes
using
cone
beam
computed
tomography
(CBCT)
images.
Methods:
A
total
55
consecutive
patients
(15
males
and
40
females,
aged
12–70
years)
referred
CBCT
imaging
were
included.
images
analyzed
Diagnocat’s
AI
platform,
which
assessed
parameters
such
as
probability
filling,
adequate
obturation,
density,
overfilling,
voids
in
short
root
canal
number.
also
evaluated
by
two
experienced
human
readers.
Diagnostic
metrics
(accuracy,
precision,
recall,
F1
score)
compared
readers’
consensus,
served
reference
standard.
Results:
demonstrated
high
most
parameters,
with
perfect
scores
filling
=
100%).
Adequate
obturation
showed
moderate
performance
(accuracy
84.1%,
precision
66.7%,
recall
92.3%,
77.4%).
density
95.5%,
97.2%),
overfilling
86.7%,
100%,
92.9%),
fillings
92.9%)
exhibited
strong
performance.
detection
88.6%,
88.9%,
76.2%)
highlighted
areas
improvement.
Conclusions:
images,
indicating
its
potential
a
valuable
tool
dental
radiology.