IPSJ Transactions on Bioinformatics,
Journal Year:
2023,
Volume and Issue:
16(0), P. 20 - 27
Published: Jan. 1, 2023
Eukaryotic
genomes
contain
exons
and
introns,
it
is
necessary
to
accurately
identify
exon-intron
boundaries,
i.e.,
splice
sites,
annotate
genomes.
To
address
this
problem,
many
previous
works
have
proposed
annotation
methods/tools
based
on
RNA-seq
evidence.
Many
recent
exploit
neural
networks
(NNs)
as
their
prediction
models,
but
only
a
few
can
be
used
generate
new
genome
in
practice.
In
study,
we
propose
AtLASS,
fully
automated
method
for
predicting
sites
from
genomic
data
using
attention-based
Bi-LSTM
(Bidirectional
Long
Short-Term
Memory).
We
two-stage
training
the
problem
of
biased
label
thereby
reducing
false
positives.
The
experiments
three
species
show
that
performance
itself
comparable
existing
methods,
achieve
better
by
combining
outputs
method.
first
program
specialized
end-to-end
site
NNs.
Applied Sciences,
Journal Year:
2024,
Volume and Issue:
14(5), P. 2113 - 2113
Published: March 4, 2024
The
term
artificial
intelligence
(AI)
was
coined
in
the
1950s
and
it
has
successfully
made
its
way
into
different
fields
of
medicine.
Forensic
sciences
AI
are
increasingly
intersecting
that
hold
tremendous
potential
for
solving
complex
criminal
investigations.
Considering
great
evolution
technologies
applied
to
forensic
genetics,
this
literature
review
aims
explore
existing
body
research
investigates
application
field
genetics.
Scopus
Web
Science
were
searched:
after
an
accurate
evaluation,
12
articles
included
present
systematic
review.
genetics
predominantly
focused
on
two
aspects.
Firstly,
several
studies
have
investigated
use
haplogroup
analysis
enhance
expedite
classification
process
DNA
samples.
Secondly,
other
groups
utilized
analyze
short
tandem
repeat
(STR)
profiles,
thereby
minimizing
risk
misinterpretation.
While
proven
be
highly
useful
further
improvements
needed
before
using
these
applications
real
cases.
main
challenge
lies
communication
gap
between
experts:
as
continues
advance,
collaboration
presents
immense
transforming
investigative
practices,
enabling
quicker
more
precise
case
resolutions.
Journal of drug targeting,
Journal Year:
2024,
Volume and Issue:
32(3), P. 334 - 346
Published: Jan. 23, 2024
Background
and
objective
Researchers
have
put
in
significant
laboratory
time
effort
measuring
the
permeability
coefficient
(Kp)
of
xenobiotics.
To
develop
alternative
approaches
to
this
labour-intensive
procedure,
predictive
models
been
employed
by
scientists
describe
transport
xenobiotics
across
skin.
Most
quantitative
structure-permeability
relationship
(QSPR)
are
derived
statistically
from
experimental
data.
Recently,
artificial
intelligence-based
computational
drug
delivery
has
attracted
tremendous
interest.
Deep
learning
is
an
umbrella
term
for
machine-learning
algorithms
consisting
deep
neural
networks
(DNNs).
Distinct
network
architectures,
like
convolutional
(CNNs),
feedforward
(FNNs),
recurrent
(RNNs),
can
be
prediction.
OMICS A Journal of Integrative Biology,
Journal Year:
2023,
Volume and Issue:
27(12), P. 550 - 569
Published: Dec. 1, 2023
With
climate
emergency,
COVID-19,
and
the
rise
of
planetary
health
scholarship,
binary
human
ecosystem
has
been
deeply
challenged.
The
interdependence
nonhuman
animal
is
increasingly
acknowledged
paving
way
for
new
frontiers
in
integrative
biology.
convergence
genomics
health,
bioinformatics,
agriculture,
artificial
intelligence
(AI)
ushered
a
era
possibilities
applications.
However,
sheer
volume
genomic/multiomics
big
data
generated
also
presents
formidable
sociotechnical
challenges
extracting
meaningful
biological,
ecological
insights.
Over
past
few
years,
AI-guided
bioinformatics
emerged
as
powerful
tool
managing,
analyzing,
interpreting
complex
biological
datasets.
advances
AI,
particularly
machine
learning
deep
learning,
have
transforming
fields
genomics,
agriculture.
This
article
aims
to
unpack
explore
range
that
result
from
such
transdisciplinary
integration,
emphasizes
its
radically
transformative
potential
health.
integration
these
disciplines
driving
significant
advancements
precision
medicine
personalized
care.
an
unprecedented
opportunity
deepen
our
understanding
systems
advance
well-being
all
life
ecosystems.
Notwithstanding
mind
sociotechnical,
ethical,
critical
policy
challenges,
multiomics,
agriculture
with
opens
up
vast
opportunities
transnational
collaborative
efforts,
sharing,
analysis,
valorization,
interdisciplinary
innovations
sciences
PLoS Computational Biology,
Journal Year:
2024,
Volume and Issue:
20(3), P. e1011929 - e1011929
Published: March 8, 2024
Synthetic
biology
dictates
the
data-driven
engineering
of
biocatalysis,
cellular
functions,
and
organism
behavior.
Integral
to
synthetic
is
aspiration
efficiently
find,
access,
interoperate,
reuse
high-quality
data
on
genotype-phenotype
relationships
native
engineered
biosystems
under
FAIR
principles,
from
this
facilitate
forward-engineering
strategies.
However,
complex
at
regulatory
level,
noisy
operational
thus
necessitating
systematic
diligent
handling
all
levels
design,
build,
test
phases
in
order
maximize
learning
iterative
design-build-test-learn
cycle.
To
enable
user-friendly
simulation,
organization,
guidance
for
biosystems,
we
have
developed
an
open-source
python-based
computer-aided
design
analysis
platform
operating
a
literate
programming
user-interface
hosted
Github.
The
called
teemi
fully
compliant
with
principles.
In
study
apply
i)
designing
simulating
bioengineering,
ii)
integrating
analyzing
multivariate
datasets,
iii)
machine-learning
predictive
metabolic
pathway
designs
production
key
precursor
medicinal
alkaloids
yeast.
publicly
available
PyPi
GitHub
.
Frontiers in Medicine,
Journal Year:
2025,
Volume and Issue:
12
Published: April 8, 2025
Deoxyribonucleic
acid
(DNA)
serves
as
fundamental
genetic
blueprint
that
governs
development,
functioning,
growth,
and
reproduction
of
all
living
organisms.
DNA
can
be
altered
through
germline
somatic
mutations.
Germline
mutations
underlie
hereditary
conditions,
while
induced
by
various
factors
including
environmental
influences,
chemicals,
lifestyle
choices,
errors
in
replication
repair
mechanisms
which
lead
to
cancer.
sequence
analysis
plays
a
pivotal
role
uncovering
the
intricate
information
embedded
within
an
organism's
understanding
modify
it.
This
helps
early
detection
diseases
design
targeted
therapies.
Traditional
wet-lab
experimental
traditional
methods
is
costly,
time-consuming,
prone
errors.
To
accelerate
large-scale
analysis,
researchers
are
developing
AI
applications
complement
methods.
These
approaches
help
generate
hypotheses,
prioritize
experiments,
interpret
results
identifying
patterns
large
genomic
datasets.
Effective
integration
with
validation
requires
scientists
understand
both
fields.
Considering
need
comprehensive
literature
bridges
gap
between
fields,
contributions
this
paper
manifold:
It
presents
diverse
range
tasks
methodologies.
equips
essential
biological
knowledge
44
distinct
aligns
these
3
AI-paradigms,
namely,
classification,
regression,
clustering.
streamlines
into
consolidating
36
databases
used
develop
benchmark
datasets
for
different
tasks.
ensure
performance
comparisons
new
existing
predictors,
it
provides
insights
140
related
word
embeddings
language
models
across
development
predictors
providing
survey
39
67
based
predictive
pipeline
values
well
top
performing
encoding-based
their
performances
FEBS Letters,
Journal Year:
2025,
Volume and Issue:
unknown
Published: April 11, 2025
MicroRNAs
(miRNAs)
are
a
prominent
class
of
small
non‐coding
RNAs
that
control
gene
expression.
This
comprehensive
review
explores
the
intricate
roles
miRNAs
in
metabolism
and
immunity,
as
well
emerging
field
immunometabolism.
The
core
this
work
delves
into
functional
regulatory
capabilities
miRNAs,
examining
their
complex
influence
on
glucose
lipid
metabolism,
pivotal
shaping
T‐cell
development
function.
Specifically,
addresses
how
orchestrate
interaction
between
cellular
metabolic
processes
immune
responses,
underscoring
essential
nature
these
molecules
maintaining
homeostasis.
Finally,
we
examine
role
Artificial
Intelligence
(AI)
miRNA
research,
focusing
machine
learning
techniques
revolutionizing
identification
validation
potential
biomarkers.
By
integrating
diverse
aspects,
underscores
multifaceted
biological
significant
advancing
biomedical
research
clinical
applications.
Abstract
Background
Transfer
learning
applied
to
genomic
DNA
models
has
the
potential
improve
predictive
capabilities,
especially
when
target-domain
datasets
and
computational
resources
are
limited.
Despite
its
promise,
practical
effectiveness
of
transfer
in
models,
particularly
for
predicting
gene
expression
changes
due
perturbations,
not
been
thoroughly
investigated.
This
study
aimed
systematically
evaluate
performance
utility
approaches
using
accurately
predict
perturbation-induced
expression.
Results
We
benchmarked
three
across
12
distinct
containing
data
identify
optimal
conditions
effective
learning.
Notably,
were
included
pre-training
these
models.
Among
these,
Enformer
model
consistently
generated
accurate
embeddings,
demonstrating
superior
clustering
signature
scoring
aligned
closely
with
observed
experimental
data.
Additionally,
we
identified
a
phenomenon
termed
"genomic
neighbouring
interference,"
wherein
partially
overlapping
sequences
adjacent
genes
cause
correlated
predictions,
resulting
both
beneficial
detrimental
effects
on
accuracy.
Conclusions
Our
findings
highlight
efficacy
expression,
emphasizing
model's
robust
performance.
Understanding
interference
offers
critical
insights
refining
accuracy
applications.
provides
guidance
researchers
developing
strategies
paving
way
more
resource-efficient
predictions.