Life,
Год журнала:
2025,
Номер
15(2), С. 283 - 283
Опубликована: Фев. 12, 2025
Tumor
treatment
has
undergone
revolutionary
changes
with
the
development
of
immunotherapy,
especially
immune
checkpoint
inhibitors.
Because
not
all
patients
respond
positively
to
therapeutic
agents,
and
severe
immune-related
adverse
events
(irAEs)
are
frequently
observed,
biomarkers
evaluating
response
a
patient
is
key
for
application
immunotherapy
in
wider
range.
Recently,
various
multi-omics
features
measured
by
high-throughput
technologies,
such
as
tumor
mutation
burden
(TMB),
gene
expression
profiles,
DNA
methylation
have
been
proved
be
sensitive
accurate
predictors
immunotherapy.
A
large
number
predictive
models
based
on
these
features,
utilizing
traditional
machine
learning
or
deep
frameworks,
also
proposed.
In
this
review,
we
aim
cover
recent
advances
predicting
using
features.
These
include
new
measurements,
research
cohorts,
data
sources,
models.
Key
findings
emphasize
importance
TMB,
neoantigens,
MSI,
mutational
signatures
ICI
responses.
The
integration
bulk
single-cell
RNA
sequencing
enhanced
our
understanding
microenvironment
enabled
identification
like
PD-L1
IFN-γ
signatures.
Public
datasets
improved
tools.
However,
challenges
remain,
need
diverse
clinical
datasets,
standardization
data,
model
interpretability.
Future
will
require
collaboration
among
researchers,
clinicians,
scientists
address
issues
enhance
cancer
precision.
Journal of Hematology & Oncology,
Год журнала:
2023,
Номер
16(1)
Опубликована: Май 24, 2023
Abstract
Since
the
past
decades,
more
lung
cancer
patients
have
been
experiencing
lasting
benefits
from
immunotherapy.
It
is
imperative
to
accurately
and
intelligently
select
appropriate
for
immunotherapy
or
predict
efficacy.
In
recent
years,
machine
learning
(ML)-based
artificial
intelligence
(AI)
was
developed
in
area
of
medical-industrial
convergence.
AI
can
help
model
medical
information.
A
growing
number
studies
combined
radiology,
pathology,
genomics,
proteomics
data
order
expression
levels
programmed
death-ligand
1
(PD-L1),
tumor
mutation
burden
(TMB)
microenvironment
(TME)
likelihood
side
effects.
Finally,
with
advancement
ML,
it
believed
that
"digital
biopsy"
replace
traditional
single
assessment
method
benefit
clinical
decision-making
future.
this
review,
applications
PD-L1/TMB
prediction,
TME
prediction
are
discussed.
The Lancet Digital Health,
Год журнала:
2023,
Номер
5(7), С. e404 - e420
Опубликована: Май 31, 2023
Only
around
20-30%
of
patients
with
non-small-cell
lung
cancer
(NCSLC)
have
durable
benefit
from
immune-checkpoint
inhibitors.
Although
tissue-based
biomarkers
(eg,
PD-L1)
are
limited
by
suboptimal
performance,
tissue
availability,
and
tumour
heterogeneity,
radiographic
images
might
holistically
capture
the
underlying
biology.
We
aimed
to
investigate
application
deep
learning
on
chest
CT
scans
derive
an
imaging
signature
response
immune
checkpoint
inhibitors
evaluate
its
added
value
in
clinical
context.
Seminars in Nuclear Medicine,
Год журнала:
2025,
Номер
unknown
Опубликована: Март 1, 2025
Lung
cancer
remains
one
of
the
most
prevalent
cancers
globally
and
leading
cause
cancer-related
deaths,
accounting
for
nearly
one-fifth
all
fatalities.
Fluoro-2-deoxy-D-glucose
positron
emission
tomography/computed
tomography
([18F]FDG
PET/CT)
plays
a
vital
role
in
assessing
lung
managing
disease
progression.
While
traditional
PET/CT
imaging
relies
on
qualitative
analysis
basic
quantitative
parameters,
radiomics
offers
more
advanced
approach
to
analyzing
tumor
phenotypes.
Recently,
has
gained
attention
its
potential
enhance
prognostic
diagnostic
capabilities
[18F]FDG
various
cancers.
This
review
explores
expanding
PET/CT-based
radiomics,
particularly
when
integrated
with
artificial
intelligence
(AI),
cancer,
especially
non-small
cell
(NSCLC).
We
how
AI
improve
diagnostics,
staging,
subtype
identification,
molecular
marker
detection,
which
influence
treatment
decisions.
Additionally,
we
address
challenges
clinical
integration,
such
as
protocol
standardization,
feature
reproducibility,
need
extensive
prospective
studies.
Ultimately,
hold
great
promise
enabling
personalized
effective
treatments,
potentially
transforming
management.
Journal for ImmunoTherapy of Cancer,
Год журнала:
2022,
Номер
10(9), С. e005292 - e005292
Опубликована: Сен. 1, 2022
Immunotherapy
offers
the
potential
for
durable
clinical
benefit
but
calls
into
question
association
between
tumor
size
and
outcome
that
currently
forms
basis
imaging-guided
treatment.
Artificial
intelligence
(AI)
radiomics
allow
discovery
of
novel
patterns
in
medical
images
can
increase
radiology’s
role
management
patients
with
cancer,
although
methodological
issues
literature
limit
its
application.
Using
keywords
related
to
immunotherapy
radiomics,
we
performed
a
review
MEDLINE,
CENTRAL,
Embase
from
database
inception
through
February
2022.
We
removed
all
duplicates,
non-English
language
reports,
abstracts,
reviews,
editorials,
perspectives,
case
book
chapters,
non-relevant
studies.
From
remaining
articles,
following
information
was
extracted:
publication
information,
sample
size,
primary
site,
imaging
modality,
secondary
study
objectives,
data
collection
strategy
(retrospective
vs
prospective,
single
center
multicenter),
radiomic
signature
validation
strategy,
performance,
metrics
calculation
Radiomics
Quality
Score
(RQS).
identified
351
studies,
which
87
were
unique
reports
relevant
our
research
question.
The
median
(IQR)
cohort
sizes
101
(57–180).
Primary
stated
goals
model
development
prognostication
(n=29,
33.3%),
treatment
response
prediction
(n=24,
27.6%),
characterization
phenotype
(n=14,
16.1%)
or
immune
environment
(n=13,
14.9%).
Most
studies
retrospective
(n=75,
86.2%)
recruited
(n=57,
65.5%).
For
available
on
testing,
most
(n=54,
65.9%)
used
set
better.
Performance
generally
highest
signatures
predicting
phenotype,
as
opposed
overall
prognosis.
Out
possible
maximum
36
points,
RQS
12
(10–16).
While
rapidly
increasing
number
promising
results
offer
proof
concept
AI
could
drive
precision
medicine
approaches
wide
range
indications,
standardizing
well
optimizing
quality
rigor
are
necessary
before
these
be
translated
practice.
Nature Communications,
Год журнала:
2022,
Номер
13(1)
Опубликована: Авг. 30, 2022
Abstract
The
tumor
immune
microenvironment
(TIME)
is
associated
with
prognosis
and
immunotherapy
response.
Here
we
develop
validate
a
CT-based
radiomics
score
(RS)
using
2272
gastric
cancer
(GC)
patients
to
investigate
the
relationship
between
imaging
biomarker
neutrophil-to-lymphocyte
ratio
(NLR)
in
TIME,
including
its
correlation
response
advanced
GC.
RS
achieves
an
AUC
of
0.795–0.861
predicting
NLR
TIME.
Notably,
indistinguishable
from
IHC-derived
status
DFS
OS
each
cohort
(HR
range:
1.694–3.394,
P
<
0.001).
We
find
objective
responses
anti-PD-1
significantly
higher
low-RS
group
(60.9%
42.9%)
than
high-RS
(8.1%
14.3%).
noninvasive
method
evaluate
may
correlate
anti
PD-1
GC
patients.
Seminars in Nuclear Medicine,
Год журнала:
2022,
Номер
52(6), С. 759 - 780
Опубликована: Июнь 15, 2022
Lung
cancer
is
the
second
most
common
and
leading
cause
of
cancer-related
death
worldwide.
Molecular
imaging
using
[18F]fluorodeoxyglucose
Positron
Emission
Tomography
and/or
Computed
([18F]FDG-PET/CT)
plays
an
essential
role
in
diagnosis,
evaluation
response
to
treatment,
prediction
outcomes.
The
images
are
evaluated
qualitative
conventional
quantitative
indices.
However,
there
far
more
information
embedded
images,
which
can
be
extracted
by
sophisticated
algorithms.
Recently,
concept
uncovering
analyzing
invisible
data
from
medical
called
radiomics,
gaining
attention.
Currently,
[18F]FDG-PET/CT
radiomics
growingly
lung
discover
if
it
enhances
diagnostic
performance
or
implication
management
cancer.
In
this
review,
we
provide
a
short
overview
technical
aspects,
as
they
discussed
different
articles
special
issue.
We
mainly
focus
on
[18F]FDG-PET/CT‐based
artificial
intelligence
non-small
cell
cancer,
impacting
early
detection,
staging,
tumor
subtypes,
biomarkers,
patient's