Comprehensive Reviews in Food Science and Food Safety,
Journal Year:
2022,
Volume and Issue:
21(3), P. 2455 - 2488
Published: March 29, 2022
Abstract
Food
fraud
is
currently
a
growing
global
concern
with
far‐reaching
consequences.
authenticity
attributes,
including
biological
identity,
geographical
origin,
agricultural
production,
and
processing
technology,
are
susceptible
to
food
fraud.
Metabolic
markers
their
corresponding
authentication
methods
considered
as
promising
choice
for
authentication.
However,
few
metabolic
were
available
develop
robust
analytical
in
routine
control.
Untargeted
metabolomics
by
liquid
chromatography‐mass
spectrometry
(LC‐MS)
increasingly
used
discover
markers.
This
review
summarizes
the
general
workflow,
recent
applications,
advantages,
advances,
limitations,
future
needs
of
untargeted
LC‐MS
identifying
In
conclusion,
shows
great
efficiency
assessment
freshness,
cause
animals’
death,
so
on,
through
three
main
steps,
namely,
data
acquisition,
biomarker
discovery,
validation.
The
application
prospects
selected
require
be
valued,
need
eventually
applicable
at
targeted
analysis
assessing
unknown
samples.
Signal Transduction and Targeted Therapy,
Journal Year:
2023,
Volume and Issue:
8(1)
Published: March 20, 2023
Metabolic
abnormalities
lead
to
the
dysfunction
of
metabolic
pathways
and
metabolite
accumulation
or
deficiency
which
is
well-recognized
hallmarks
diseases.
Metabolite
signatures
that
have
close
proximity
subject's
phenotypic
informative
dimension,
are
useful
for
predicting
diagnosis
prognosis
diseases
as
well
monitoring
treatments.
The
lack
early
biomarkers
could
poor
serious
outcomes.
Therefore,
noninvasive
methods
with
high
specificity
selectivity
desperately
needed.
Small
molecule
metabolites-based
metabolomics
has
become
a
specialized
tool
biomarker
pathway
analysis,
revealing
possible
mechanisms
human
various
deciphering
therapeutic
potentials.
It
help
identify
functional
related
variation
delineate
biochemical
changes
indicators
pathological
damage
prior
disease
development.
Recently,
scientists
established
large
number
profiles
reveal
underlying
networks
target
exploration
in
biomedicine.
This
review
summarized
analysis
on
potential
value
small-molecule
candidate
metabolites
clinical
events,
may
better
diagnosis,
prognosis,
drug
screening
treatment.
We
also
discuss
challenges
need
be
addressed
fuel
next
wave
breakthroughs.
Cancer Communications,
Journal Year:
2021,
Volume and Issue:
41(12), P. 1257 - 1274
Published: July 31, 2021
Abstract
Pancreatic
cancer
is
a
highly
malignant
digestive
system
tumor
with
poor
prognosis.
Most
pancreatic
patients
are
diagnosed
at
an
advanced
stage
or
even
metastasis
due
to
its
aggressive
characteristics
and
lack
of
typical
early
symptoms.
Thus,
diagnosis
crucial
for
improving
Currently,
screening
often
applied
in
high‐risk
individuals
achieve
the
cancer.
Fully
understanding
risk
factors
pathogenesis
could
help
us
identify
population
timely
treatment
Notably,
accumulating
studies
have
been
undertaken
improve
detection
rate
different
imaging
methods
diagnostic
accuracy
endoscopic
ultrasound‐guided
fine‐needle
aspiration
(EUS‐FNA)
which
golden
standard
diagnosis.
In
addition,
there
currently
no
biomarkers
sufficient
sensitivity
specificity
be
clinic.
As
only
serum
biomarker
approved
by
United
States
Food
Drug
Administration,
carbohydrate
antigen
19‐9
(CA19‐9)
not
recommended
used
because
limited
specificity.
Recently,
increasing
numbers
focused
on
discovering
novel
exploring
their
combination
CA19‐9
Besides,
application
liquid
biopsy
involving
circulating
cells
(CTCs),
DNA
(ctDNA),
microRNAs
(miRNAs),
exosomes
blood
urine,
saliva
drawing
more
attention.
Furthermore,
many
innovative
technologies
such
as
artificial
intelligence,
computer‐aided
system,
metabolomics
technology,
ion
mobility
spectrometry
(IMS)
associated
technologies,
nanomaterials
tested
shown
promising
prospects.
Hence,
this
review
aims
summarize
recent
progress
development
methods,
including
imaging,
pathological
examination,
serological
biopsy,
well
other
potential
strategies
Metabolites,
Journal Year:
2022,
Volume and Issue:
12(2), P. 194 - 194
Published: Feb. 19, 2022
The
metabolome
offers
a
dynamic,
comprehensive,
and
precise
picture
of
the
phenotype.
Current
high-throughput
technologies
have
allowed
discovery
relevant
metabolites
that
characterize
wide
variety
human
phenotypes
with
respect
to
health,
disease,
drug
monitoring,
even
aging.
Metabolomics,
parallel
genomics,
has
led
biomarkers
aided
in
understanding
diversity
molecular
mechanisms,
highlighting
its
application
precision
medicine.
This
review
focuses
on
metabolomics
can
be
applied
improve
as
well
trends
impacts
metabolic
neurodegenerative
diseases,
cancer,
longevity,
exposome,
liquid
biopsy
development,
pharmacometabolomics.
identification
distinct
metabolomic
profiles
will
help
improvement
clinical
strategies
treat
disease.
In
years
come,
become
tool
routinely
diagnose
monitor
health
aging,
or
development.
Biomedical
applications
already
foreseen
progression
such
obesity
diabetes,
using
branched-chain
amino
acids,
acylcarnitines,
certain
phospholipids,
genomics;
these
assess
disease
severity
predict
potential
treatment.
Future
endeavors
should
focus
determining
applicability
utility
metabolomic-derived
markers
their
appropriate
implementation
large-scale
settings.
Signal Transduction and Targeted Therapy,
Journal Year:
2023,
Volume and Issue:
8(1)
Published: March 22, 2023
Abstract
Tumour
cells
have
exquisite
flexibility
in
reprogramming
their
metabolism
order
to
support
tumour
initiation,
progression,
metastasis
and
resistance
therapies.
These
reprogrammed
activities
include
a
complete
rewiring
of
the
bioenergetic,
biosynthetic
redox
status
sustain
increased
energetic
demand
cells.
Over
last
decades,
cancer
field
has
seen
an
explosion
new
biochemical
technologies
giving
more
tools
than
ever
before
navigate
this
complexity.
Within
cell
or
tissue,
metabolites
constitute
direct
signature
molecular
phenotype
thus
profiling
concrete
clinical
applications
oncology.
Metabolomics
fluxomics,
are
key
technological
approaches
that
mainly
revolutionized
enabling
researchers
both
qualitative
mechanistic
model
cancer.
Furthermore,
upgrade
from
bulk
single-cell
analysis
provided
unprecedented
opportunity
investigate
biology
at
cellular
resolution
allowing
depth
quantitative
complex
heterogenous
diseases.
More
recently,
advent
functional
genomic
screening
allowed
identification
pathways,
processes,
biomarkers
novel
therapeutic
targets
concert
with
other
allow
patient
stratification
treatment
regimens.
This
review
is
intended
be
guide
for
metabolism,
highlighting
current
emerging
technologies,
emphasizing
advantages,
disadvantages
potential
leading
development
innovative
anti-cancer
Obesity,
Journal Year:
2022,
Volume and Issue:
30(7), P. 1323 - 1334
Published: July 1, 2022
Abstract
Objectives:
The
metabolic
dysfunction
driven
by
obesity,
including
hyperglycemia
and
dyslipidemia,
increases
risk
for
developing
at
least
13
cancer
types.
concept
of
“metabolic
dysfunction”
is
often
defined
meeting
various
combinations
criteria
syndrome.
However,
the
lack
a
unified
definition
makes
it
difficult
to
compare
findings
across
studies.
This
review
summarizes
129
studies
that
evaluated
variable
definitions
in
relation
obesity‐related
mortality
after
diagnosis.
Strategies
management
are
also
discussed.
Methods
A
comprehensive
search
relevant
publications
MEDLINE
(PubMed)
Google
Scholar
with
references
was
conducted.
Results
Metabolic
dysfunction,
as
syndrome
diagnosis
or
any
number
out
clinical
range,
inflammatory
biomarkers,
markers
organ
function,
has
been
associated
for,
from,
colorectal,
pancreatic,
postmenopausal
breast,
bladder
cancers.
associations
breast
colorectal
have
observed
independently
BMI,
increased
individuals
metabolically
unhealthy
normal
weight
overweight/obesity
compared
healthy
weight.
Conclusion
key
factor
cancer,
regardless
obesity
status.
Nonetheless,
harmonized
will
further
clarify
magnitude
relationship
types,
enable
better
comparisons
studies,
guide
stratification.
Frontiers in Genetics,
Journal Year:
2022,
Volume and Issue:
13
Published: Nov. 24, 2022
Metabolomics
research
has
recently
gained
popularity
because
it
enables
the
study
of
biological
traits
at
biochemical
level
and,
as
a
result,
can
directly
reveal
what
occurs
in
cell
or
tissue
based
on
health
disease
status,
complementing
other
omics
such
genomics
and
transcriptomics.
Like
high-throughput
experiments,
metabolomics
produces
vast
volumes
complex
data.
The
application
machine
learning
(ML)
to
analyze
data,
recognize
patterns,
build
models
is
expanding
across
multiple
fields.
In
same
way,
ML
methods
are
utilized
for
classification,
regression,
clustering
highly
metabolomic
This
review
discusses
how
modeling
diagnosis
be
enhanced
via
deep
comprehensive
profiling
using
ML.
We
discuss
general
layout
metabolic
workflow
fundamental
techniques
used
including
support
vector
machines
(SVM),
decision
trees,
random
forests
(RF),
neural
networks
(NN),
(DL).
Finally,
we
present
advantages
disadvantages
various
provide
suggestions
different
data
analysis
scenarios.
Frontiers in Genetics,
Journal Year:
2022,
Volume and Issue:
13
Published: Jan. 27, 2022
Cancer
is
defined
as
a
large
group
of
diseases
that
associated
with
abnormal
cell
growth,
uncontrollable
division,
and
may
tend
to
impinge
on
other
tissues
the
body
by
different
mechanisms
through
metastasis.
What
makes
cancer
so
important
incidence
rate
growing
worldwide
which
can
have
major
health,
economic,
even
social
impacts
both
patients
governments.
Thereby,
early
prognosis,
diagnosis,
treatment
play
crucial
role
at
front
line
combating
cancer.
The
onset
progression
occur
under
influence
complicated
some
alterations
in
level
genome,
proteome,
transcriptome,
metabolome
etc.
Consequently,
advent
omics
science
its
broad
research
branches
(such
genomics,
proteomics,
transcriptomics,
metabolomics,
forth)
revolutionary
biological
approaches
opened
new
doors
comprehensive
perception
landscape.
Due
complexities
formation
development
cancer,
study
underlying
has
gone
beyond
just
one
field
arena.
Therefore,
making
connection
between
resultant
data
from
examining
them
multi-omics
pave
way
for
facilitating
discovery
novel
prognostic,
diagnostic,
therapeutic
approaches.
As
volume
complexity
studies
are
increasing
dramatically,
use
leading-edge
technologies
such
machine
learning
promising
assessments
data.
Machine
categorized
subset
artificial
intelligence
aims
parsing,
classification,
pattern
identification
applying
statistical
methods
algorithms.
This
acquired
knowledge
subsequently
allows
computers
learn
improve
accurate
predictions
experiences
processing.
In
this
context,
application
learning,
computational
technology
offers
opportunities
achieving
in-depth
analysis
studies.
it
be
concluded
roles
fight
against
Frontiers in Immunology,
Journal Year:
2023,
Volume and Issue:
14
Published: Feb. 13, 2023
Background
Despite
tremendous
advances
in
cancer
research,
breast
(BC)
remains
a
major
health
concern
and
is
the
most
common
affecting
women
worldwide.
Breast
highly
heterogeneous
with
potentially
aggressive
complex
biology,
precision
treatment
for
specific
subtypes
may
improve
survival
patients.
Sphingolipids
are
important
components
of
lipids
that
play
key
role
growth
death
tumor
cells
increasingly
subject
new
anti-cancer
therapies.
Key
enzymes
intermediates
sphingolipid
metabolism
(SM)
an
regulating
further
influencing
clinical
prognosis.
Methods
We
downloaded
BC
data
from
TCGA
database
GEO
database,
on
which
we
performed
depth
single-cell
sequencing
analysis
(scRNA-seq),
weighted
co-expression
network
analysis,
transcriptome
differential
expression
analysis.
Then
seven
sphingolipid-related
genes
(SRGs)
were
identified
using
Cox
regression,
least
absolute
shrinkage,
selection
operator
(Lasso)
regression
to
construct
prognostic
model
Finally,
function
gene
PGK1
verified
by
vitro
experiments.
Results
This
allows
classification
patients
into
high-risk
low-risk
groups,
statistically
significant
difference
time
between
two
groups.
The
also
able
show
high
prediction
accuracy
both
internal
external
validation
sets.
After
immune
microenvironment
immunotherapy,
it
was
found
this
risk
grouping
could
be
used
as
guide
immunotherapy
BC.
proliferation,
migration,
invasive
ability
MDA-MB-231
MCF-7
cell
lines
dramatically
reduced
after
knocking
down
through
cellular
Conclusion
study
suggests
features
based
related
SM
associated
outcomes,
progression,
alterations
Our
findings
provide
insights
development
strategies
early
intervention
Biomarker Research,
Journal Year:
2023,
Volume and Issue:
11(1)
Published: June 30, 2023
Abstract
Cancer
exerts
a
multitude
of
effects
on
metabolism,
including
the
reprogramming
cellular
metabolic
pathways
and
alterations
in
metabolites
that
facilitate
inappropriate
proliferation
cancer
cells
adaptation
to
tumor
microenvironment.
There
is
growing
body
evidence
suggesting
aberrant
play
pivotal
roles
tumorigenesis
metastasis,
have
potential
serve
as
biomarkers
for
personalized
therapy.
Importantly,
high-throughput
metabolomics
detection
techniques
machine
learning
approaches
offer
tremendous
clinical
oncology
by
enabling
identification
cancer-specific
metabolites.
Emerging
research
indicates
circulating
great
promise
noninvasive
detection.
Therefore,
this
review
summarizes
reported
abnormal
cancer-related
last
decade
highlights
application
liquid
biopsy,
specimens,
technologies,
methods,
challenges.
The
provides
insights
into
promising
tool
applications.