BMC Medical Imaging,
Journal Year:
2024,
Volume and Issue:
24(1)
Published: Sept. 20, 2024
Breast
cancer
is
one
of
the
leading
diseases
worldwide.
According
to
estimates
by
National
Cancer
Foundation,
over
42,000
women
are
expected
die
from
this
disease
in
2024.
Cancers,
Journal Year:
2025,
Volume and Issue:
17(2), P. 197 - 197
Published: Jan. 9, 2025
In
recent
years,
Artificial
Intelligence
(AI)
has
shown
transformative
potential
in
advancing
breast
cancer
care
globally.
This
scoping
review
seeks
to
provide
a
comprehensive
overview
of
AI
applications
care,
examining
how
they
could
reshape
diagnosis,
treatment,
and
management
on
worldwide
scale
discussing
both
the
benefits
challenges
associated
with
their
adoption.
accordance
PRISMA-ScR
ensuing
guidelines
reviews,
PubMed,
Web
Science,
Cochrane
Library,
Embase
were
systematically
searched
from
inception
end
May
2024.
Keywords
included
"Artificial
Intelligence"
"Breast
Cancer".
Original
studies
based
focus
narrative
synthesis
was
employed
for
data
extraction
interpretation,
findings
organized
into
coherent
themes.
Finally,
84
articles
included.
The
majority
conducted
developed
countries
(n
=
54).
publications
last
10
years
83).
six
main
themes
screening
32),
image
detection
nodal
status
7),
AI-assisted
histopathology
8),
assessing
post-neoadjuvant
chemotherapy
(NACT)
response
23),
margin
assessment
5),
as
clinical
decision
support
tool
9).
been
used
tools
augment
treatment
decisions
multidisciplinary
tumor
board
settings.
Overall,
demonstrated
improved
accuracy
efficiency;
however,
most
did
not
report
patient-centric
outcomes.
show
promise
enhancing
diagnostic
planning.
However,
persistent
adoption,
such
quality,
algorithm
transparency,
resource
disparities,
must
be
addressed
advance
field.
IntechOpen eBooks,
Journal Year:
2025,
Volume and Issue:
unknown
Published: Jan. 23, 2025
Breast
cancer
is
the
most
commonly
diagnosed
among
women
and
a
leading
cause
of
cancer-related
deaths
globally,
necessitating
accurate
timely
diagnosis
for
effective
treatment.
Histopathological
examination
breast
tissue
samples
gold
standard
diagnosing
cancer,
but
this
process
subjective,
time-consuming,
reliant
on
level
pathologist’s
expertise.
This
study
introduces
new
deep
learning
model,
Cancer
Network
(BCNet),
specifically
designed
to
detect
classify
cancer.
BCNet,
22-layer
convolutional
neural
network
(CNN),
aims
enhance
diagnostic
accuracy
by
capturing
high-level
discriminative
features
tailored
images.
The
BCNet
model
was
evaluated
against
established
CNN
models,
demonstrating
superior
performance,
achieving
an
up
99.8%
binary
classification
99.6%
multi-class
at
different
magnifications.
These
results
highlight
BCNet’s
robustness
potential
reduce
errors
assist
pathologists.
Future
research
should
explore
generalizability
across
larger
datasets
its
integration
into
clinical
workflows
provide
real-time,
AI-assisted
support.
medRxiv (Cold Spring Harbor Laboratory),
Journal Year:
2025,
Volume and Issue:
unknown
Published: Feb. 2, 2025
Abstract
Breast
cancer
remains
a
significant
global
health
concern,
and
machine
learning
algorithms
computer-aided
detection
systems
have
shown
great
promise
in
enhancing
the
accuracy
efficiency
of
mammography
image
analysis.
However,
there
is
critical
need
for
large,
benchmark
datasets
training
deep
models
breast
detection.
In
this
work
we
developed
Mammo-Bench,
large-scale
dataset
images,
by
collating
data
from
seven
well-curated
resources,
viz
.,
DDSM,
INbreast,
KAU-BCMD,
CMMD,
CDD-CESM,
DMID,
RSNA
Screening
Dataset.
To
ensure
consistency
across
images
diverse
sources
while
preserving
clinically
relevant
features,
preprocessing
pipeline
that
includes
segmentation,
pectoral
muscle
removal,
intelligent
cropping
proposed.
The
consists
74,436
high-quality
mammographic
26,500
patients
7
countries
one
largest
open-source
databases
to
best
our
knowledge.
show
efficacy
on
large
dataset,
performance
ResNet101
architecture
was
evaluated
Mammo-Bench
results
compared
independently
few
member
an
external
VinDr-Mammo.
An
78.8%
(with
augmentation
minority
classes)
77.8%
(without
augmentation)
achieved
proposed
other
which
varied
25
–
69%.
Noticeably,
improved
prediction
classes
observed
with
dataset.
These
establish
baseline
demonstrate
Mammo-Bench's
utility
as
comprehensive
resource
developing
evaluating
analysis
systems.
Algorithms,
Journal Year:
2025,
Volume and Issue:
18(2), P. 96 - 96
Published: Feb. 8, 2025
Computer
vision
and
artificial
intelligence
have
revolutionized
the
field
of
pathological
image
analysis,
enabling
faster
more
accurate
diagnostic
classification.
Deep
learning
architectures
like
convolutional
neural
networks
(CNNs),
shown
superior
performance
in
tasks
such
as
classification,
segmentation,
object
detection
pathology.
has
significantly
improved
accuracy
disease
diagnosis
healthcare.
By
leveraging
advanced
algorithms
machine
techniques,
computer
systems
can
analyze
medical
images
with
high
precision,
often
matching
or
even
surpassing
human
expert
performance.
In
pathology,
deep
models
been
trained
on
large
datasets
annotated
pathology
to
perform
cancer
diagnosis,
grading,
prognostication.
While
approaches
show
great
promise
challenges
remain,
including
issues
related
model
interpretability,
reliability,
generalization
across
diverse
patient
populations
imaging
settings.
Journal of radiology and nuclear medicine,
Journal Year:
2025,
Volume and Issue:
105(5), P. 282 - 286
Published: Feb. 21, 2025
Today
in
the
world
there
is
a
growing
interest
interpretation
of
radiologic,
particular
mammographic,
data
using
artificial
intelligence
(AI).
In
presented
review
scientific
literature,
based
on
most
significant
studies
recent
years
an
attempt
was
made
to
determine
place
AI
radiologic
diagnosis
breast
cancer.
It
shown
that
future,
can
become
integral
part
cancer
mammographic
screening,
although
at
moment
ethical
and
legal
issues
its
use
have
not
been
fully
resolved.
Discover Oncology,
Journal Year:
2025,
Volume and Issue:
16(1)
Published: Feb. 28, 2025
Breast
cancer
remains
one
of
the
foremost
global
health
concerns,
highlighting
urgent
need
for
innovative
diagnostic
and
therapeutic
strategies.
Traditional
imaging
techniques,
such
as
mammography
ultrasound,
play
essential
roles
in
clinical
practice;
however,
they
often
fall
short
detecting
early-stage
tumors
providing
comprehensive
insights
into
mechanical
properties
cells.
In
this
context,
Atomic
Force
Microscopy
(AFM)
has
emerged
a
transformative
tool
breast
research,
owing
to
its
high-resolution
capabilities
nanomechanical
characterization.
This
review
explores
recent
advancements
AFM
technology
applied
emphasizing
key
findings
that
include
differentiation
various
stages
tumor
progression
through
imaging,
precise
characterization
properties,
capability
single-cell
analysis.
These
not
only
enhance
our
understanding
heterogeneity
but
also
reveal
potential
biomarkers
early
detection
targets.
Furthermore,
critically
examines
several
challenges
limitations
associated
with
application
research.
Issues
complexities
sample
preparation,
accessibility,
cost
are
discussed.
Despite
these
challenges,
transform
biology
is
significant.
Looking
ahead,
continued
promise
deepen
guide
strategies
aimed
at
improving
patient
outcomes.
Diagnostics,
Journal Year:
2025,
Volume and Issue:
15(5), P. 584 - 584
Published: Feb. 27, 2025
Background:
The
development
and
initial
testing
of
an
optomechatronic
system
for
the
reconstruction
three-dimensional
(3D)
images
to
identify
abnormalities
in
breast
tissue
assist
diagnosis
cancer
is
presented.
Methods:
This
combines
3D
technology
with
diffuse
optical
mammography
(DOM)
offer
a
detecting
tool
that
complements
assists
medical
diagnosis.
DOM
analyzes
properties
light,
density
composition
variations.
Integrating
enables
detailed
visualization
precise
tumor
localization
sizing,
offering
more
information
than
traditional
methods.
technological
combination
accurate,
earlier
diagnoses
helps
plan
effective
treatments
by
understanding
patient's
anatomy
location.
Results:
Using
Chinese
ink,
it
was
possible
simulated
10,
15,
20
mm
diameter
phantoms
from
cosmetic
surgery.
Conclusions:
Data
can
be
processed
using
algorithms
generate
images,
providing
non-invasive
safe
approach
anomalies.
Currently,
pilot
phase
phantoms,
enabling
evaluation
its
accuracy
functionality
before
application
clinical
studies.
World Journal of Gastroenterology,
Journal Year:
2025,
Volume and Issue:
31(11)
Published: March 12, 2025
A
recent
study
by
Peng
et
al
developed
a
predictive
model
for
first-instance
secondary
esophageal
variceal
bleeding
in
cirrhotic
patients
integrating
clinical
and
multi-organ
radiomic
features.
The
combined
radiomic-clinical
demonstrated
strong
capabilities,
achieving
an
area
under
the
curve
of
0.951
training
cohort
0.930
validation
cohort.
results
highlight
potential
noninvasive
prediction
models
assessing
risk,
aiding
timely
decision-making.
Additionally,
manual
delineation
regions
interest
raises
risk
observer
bias
despite
efforts
to
minimize
it.
adjusted
covariates,
while
some
confounders,
such
as
socioeconomic
status,
alcohol
use,
liver
function
scores,
were
not
included.
imbalance
sizes
between
groups
may
reduce
statistical
power
validation.
Expanding
incorporating
multi-center
external
would
improve
generalizability.
Future
studies
should
focus
on
long-term
patient
outcomes,
exploring
additional
imaging
modalities,
automated
segmentation
techniques
refine
model.