The Journal of Physical Chemistry B,
Год журнала:
2025,
Номер
unknown
Опубликована: Май 26, 2025
We
previously
introduced
a
"range
corrected"
Δ-machine
learning
potential
(ΔMLP)
that
used
deep
neural
networks
to
improve
the
accuracy
of
combined
quantum
mechanical/molecular
mechanical
(QM/MM)
simulations
by
correcting
both
internal
QM
and
QM/MM
interaction
energies
forces
[J.
Chem.
Theory
Comput.
2021,
17,
6993-7009].
The
present
work
extends
this
approach
include
graph
networks.
Specifically,
is
applied
MACE
message
passing
network
architecture,
series
AM1/d
+
models
are
trained
reproduce
PBE0/6-31G*
model
phosphoryl
transesterification
reactions.
Several
designed
test
transferability
varying
amount
training
data
calculating
free
energy
surfaces
reactions
were
not
included
in
parameter
refinement.
compared
DP
use
DeepPot-SE
(DP)
architecture.
found
target
even
instances
where
exhibit
inaccuracies.
train
"end-state"
only
from
reactant
product
states
6
Unlike
uncorrected
profiles,
method
correctly
reproduces
stable
pentacoordinated
phosphorus
intermediate
though
did
structures
with
similar
bonding
pattern.
Furthermore,
mechanism
hyperparameters
defining
varied
explore
their
effect
on
model's
performance.
28%
slower
than
when
ΔMLP
correction
performed
graphics
processing
unit.
Our
results
suggest
architecture
may
lead
improved
transferability.
Journal of Chemical Theory and Computation,
Год журнала:
2025,
Номер
unknown
Опубликована: Янв. 15, 2025
Integrating
machine
learning
potentials
(MLPs)
with
quantum
mechanical/molecular
mechanical
(QM/MM)
free
energy
simulations
has
emerged
as
a
powerful
approach
for
studying
enzymatic
catalysis.
However,
its
practical
application
been
hindered
by
the
time-consuming
process
of
generating
necessary
training,
validation,
and
test
data
MLP
models
through
QM/MM
simulations.
Furthermore,
entire
needs
to
be
repeated
each
specific
enzyme
system
reaction.
To
overcome
this
bottleneck,
it
is
required
that
trained
MLPs
exhibit
transferability
across
different
environments
reacting
species,
thereby
eliminating
need
retraining
new
variant.
In
study,
we
explore
potential
evaluating
pretrained
ΔMLP
model
mutations
within
MM
environment
using
QM/MM-based
ML
architecture
developed
Pan,
X.
J.
Chem.
Theory
Comput.
2021,
17(9),
5745–5758.
The
study
includes
scenarios
such
single
point
substitutions,
homologous
from
even
transition
an
aqueous
environment,
where
last
two
systems
have
substantially
used
in
training.
results
show
effectively
captures
predicts
effects
on
electrostatic
interactions,
producing
reliable
profiles
enzyme-catalyzed
reactions
without
retraining.
also
identified
notable
limitations
transferability,
particularly
when
transitioning
water-rich
environments.
Overall,
demonstrates
robustness
Pan
et
al.'s
diverse
systems,
well
further
research
development
more
sophisticated
training
methods.
Journal of Chemical Information and Modeling,
Год журнала:
2025,
Номер
unknown
Опубликована: Март 27, 2025
Machine
learning
potentials
(MLPs)
have
revolutionized
molecular
simulation
by
providing
efficient
and
accurate
models
for
predicting
atomic
interactions.
MLPs
continue
to
advance
had
profound
impact
in
applications
that
include
drug
discovery,
enzyme
catalysis,
materials
design.
The
current
landscape
of
MLP
software
presents
challenges
due
the
limited
interoperability
between
packages,
which
can
lead
inconsistent
benchmarking
practices
necessitates
separate
interfaces
with
dynamics
(MD)
software.
To
address
these
issues,
we
present
DeePMD-GNN,
a
plugin
DeePMD-kit
framework
extends
its
capabilities
support
external
graph
neural
network
(GNN)
potentials.DeePMD-GNN
enables
seamless
integration
popular
GNN-based
models,
such
as
NequIP
MACE,
within
ecosystem.
Furthermore,
new
infrastructure
allows
GNN
be
used
combined
quantum
mechanical/molecular
mechanical
(QM/MM)
using
range
corrected
ΔMLP
formalism.We
demonstrate
application
DeePMD-GNN
performing
benchmark
calculations
NequIP,
DPA-2
developed
under
consistent
training
conditions
ensure
fair
comparison.
Journal of the American Chemical Society,
Год журнала:
2025,
Номер
unknown
Опубликована: Фев. 17, 2025
We
present
the
design
and
implementation
of
a
novel
neural
network
potential
(NNP)
its
combination
with
an
electrostatic
embedding
scheme,
commonly
used
within
context
hybrid
quantum-mechanical/molecular-mechanical
(QM/MM)
simulations.
Substitution
computationally
expensive
QM
Hamiltonian
by
NNP
same
accuracy
largely
reduces
computational
cost
enables
efficient
sampling
in
prospective
MD
simulations,
main
limitation
faced
traditional
QM/MM
setups.
The
model
relies
on
recently
introduced
anisotropic
message
passing
(AMP)
formalism
to
compute
atomic
interactions
encode
symmetries
found
systems.
AMP
is
shown
be
highly
terms
both
data
costs
can
readily
scaled
sample
systems
involving
more
than
350
solute
40,000
solvent
atoms
for
hundreds
nanoseconds
using
umbrella
sampling.
Most
deviations
predictions
from
underlying
DFT
ground
truth
lie
chemical
(4.184
kJ
mol–1).
performance
broad
applicability
our
approach
are
showcased
calculating
free-energy
surface
alanine
dipeptide,
preferred
ligation
states
nickel
phosphine
complexes,
dissociation
free
energies
charged
pyridine
quinoline
dimers.
Results
this
ML/MM
show
excellent
agreement
experimental
reach
most
cases.
In
contrast,
calculated
static
calculations
paired
implicit
models
or
simulations
cheaper
semiempirical
methods
up
ten
times
higher
deviation
sometimes
even
fail
reproduce
qualitative
trends.
Journal of Chemical Theory and Computation,
Год журнала:
2025,
Номер
unknown
Опубликована: Май 2, 2025
In
recent
years,
machine
learning
potentials
(MLPs)
have
become
indispensable
tools
in
physics,
chemistry,
and
materials
science,
driving
the
development
of
software
packages
for
molecular
dynamics
(MD)
simulations
related
applications.
These
packages,
typically
built
on
specific
frameworks,
such
as
TensorFlow,
PyTorch,
or
JAX,
face
integration
challenges
when
advanced
applications
demand
communication
across
different
frameworks.
The
previous
TensorFlow-based
implementation
DeePMD-kit
exemplified
these
limitations.
this
work,
we
introduce
version
3,
a
significant
update
featuring
multibackend
framework
that
supports
PaddlePaddle
backends,
demonstrate
versatility
architecture
through
other
MLP
differentiable
force
fields.
This
allows
seamless
back-end
switching
with
minimal
modifications,
enabling
users
developers
to
integrate
using
innovation
facilitates
more
complex
interoperable
workflows,
paving
way
broader
MLPs
scientific
research.
Molecules,
Год журнала:
2024,
Номер
29(19), С. 4626 - 4626
Опубликована: Сен. 29, 2024
The
field
of
computational
protein
engineering
has
been
transformed
by
recent
advancements
in
machine
learning,
artificial
intelligence,
and
molecular
modeling,
enabling
the
design
proteins
with
unprecedented
precision
functionality.
Computational
methods
now
play
a
crucial
role
enhancing
stability,
activity,
specificity
for
diverse
applications
biotechnology
medicine.
Techniques
such
as
deep
reinforcement
transfer
learning
have
dramatically
improved
structure
prediction,
optimization
binding
affinities,
enzyme
design.
These
innovations
streamlined
process
allowing
rapid
generation
targeted
libraries,
reducing
experimental
sampling,
rational
tailored
properties.
Furthermore,
integration
approaches
high-throughput
techniques
facilitated
development
multifunctional
novel
therapeutics.
However,
challenges
remain
bridging
gap
between
predictions
validation
addressing
ethical
concerns
related
to
AI-driven
This
review
provides
comprehensive
overview
current
state
future
directions
engineering,
emphasizing
their
transformative
potential
creating
next-generation
biologics
advancing
synthetic
biology.
Journal of Chemical Theory and Computation,
Год журнала:
2025,
Номер
unknown
Опубликована: Янв. 3, 2025
Machine
learning
(ML)
methods
offer
a
promising
route
to
the
construction
of
universal
molecular
potentials
with
high
accuracy
and
low
computational
cost.
It
is
becoming
evident
that
integrating
physical
principles
into
these
models,
or
utilizing
them
in
Δ-ML
scheme,
significantly
enhances
their
robustness
transferability.
This
paper
introduces
PM6-ML,
method
synergizes
semiempirical
quantum-mechanical
(SQM)
PM6
state-of-the-art
ML
potential
applied
as
correction.
The
demonstrates
superior
performance
over
standalone
SQM
approaches
covers
broader
chemical
space
than
its
predecessors.
scalable
systems
thousands
atoms,
which
makes
it
applicable
large
biomolecular
systems.
Extensive
benchmarking
confirms
PM6-ML's
robustness.
Its
practical
application
facilitated
by
direct
interface
MOPAC.
code
parameters
are
available
at
https://github.com/Honza-R/mopac-ml.
Wiley Interdisciplinary Reviews Computational Molecular Science,
Год журнала:
2025,
Номер
15(1)
Опубликована: Янв. 1, 2025
ABSTRACT
The
study
of
natural
enzyme
catalytic
processes
at
a
molecular
level
can
provide
essential
information
for
rational
design
new
enzymes,
to
be
applied
in
more
efficient
and
environmentally
friendly
industrial
processes.
use
computational
tools,
combined
with
experimental
techniques,
is
providing
outstanding
milestones
the
last
decades.
However,
apart
from
complexity
associated
nature
these
large
flexible
biomolecular
machines,
full
catalyzed
process
involves
different
physical
chemical
steps.
Consequently,
point
view,
deep
understanding
every
single
step
requires
selection
proper
technique
get
reliable,
robust
useful
results.
In
this
article,
we
summarize
techniques
their
process,
including
conformational
diversity,
allostery
those
steps,
as
well
enzymes.
Because
impact
artificial
intelligence
all
aspects
science
during
years,
special
attention
has
been
methods
based
on
foundations
some
selected
recent
applications.
Journal of Chemical Theory and Computation,
Год журнала:
2025,
Номер
unknown
Опубликована: Апрель 24, 2025
Accurately
modeling
enzyme
reactions
through
direct
machine
learning/molecular
mechanics
simulations
remains
challenging
in
describing
the
electrostatic
coupling
between
QM
and
MM
subsystems.
In
this
work,
we
proposed
a
reweighting
ME
(mechanic
embedding)
REANN
(recursively
embedded
atom
neural
network)
method
that
trains
potential
point
charges
of
subsystem
vacuo.
The
charge
equilibration
approach
has
been
encoded
into
to
ensure
conservation
total
subsystem.
Electrostatic
is
measured
by
charges,
polarization
on
can
be
corrected
thermodynamic
perturbation
after
molecular
dynamics
simulations.
We
first
constructed
surfaces
energy
for
acylation
cyclooxygenase-1
(COX-1)
cyclooxygenase-2
(COX-2)
aspirin.
These
allowed
us
reproduce
free
curves
B3LYP/MM-MD
with
chemical
accuracy.
Subsequently,
they
were
successfully
applied
R513A
COX-2,
reproducing
barrier
simulated
B3LYP/MM
MD
difference
less
than
0.5
kcal
mol-1
speedup
80-fold,
revealing
our
predict
activity
mutants
accurately
rapidly.
This
expected
virtual
screening
future.
The
development
of
universal
machine
learning
potentials
(MLP)
for
small
organic
and
drug-like
molecules
requires
large,
accurate
datasets
that
span
diverse
chemical
spaces.
In
this
study,
we
introduce
the
QDπ
dataset
which
incorporates
data
taken
from
several
datasets.
We
use
a
query-by-committee
active
strategy
to
extract
large
maximize
diversity
avoid
redundancy
as
relevant
neural
network
training
construct
dataset.
only
1.6
million
structures
express
13
elements
various
source
at
ωB97M-D3(BJ)/def2-TZVPPD
level
theory.
enables
creation
flexible
target
loss
functions
drug
discovery,
including
information-dense
sets
relative
conformational
energies
barriers,
intermolecular
interactions,
tautomers
protonation
compounds
biomolecular
fragments.
It
is
hope
high
information
density
contained
in
will
provide
valuable
resource
new
MLPs
discovery.
Journal of Chemical Theory and Computation,
Год журнала:
2025,
Номер
unknown
Опубликована: Май 7, 2025
Quantum
mechanics/molecular
mechanics
(QM/MM)
simulations
are
crucial
for
understanding
enzymatic
reactions,
but
their
accuracy
depends
heavily
on
the
quantum-mechanical
method
used.
Semiempirical
methods
offer
computational
efficiency
often
struggle
with
in
complex
systems.
This
work
presents
a
novel
multiobjective
evolutionary
strategy
optimizing
semiempirical
Hamiltonians,
specifically
designed
to
enhance
performance
QM/MM
while
remaining
broadly
applicable
condensed-phase
Our
methodology
combines
automated
parameter
optimization,
targeting
ab
initio
or
density
functional
theory
(DFT)-reference
potential
energy
surfaces,
atomic
charges,
and
gradients,
comprehensive
validation
through
minimum
free
path
(MFEP)
calculations.
To
demonstrate
its
effectiveness,
we
applied
our
approach
improve
GFN2-xTB
Hamiltonian
using
two
systems
that
involve
hydride
transfer
reactions
where
activation
barrier
is
severely
underestimated:
Crotonyl-CoA
carboxylase/reductase
(CCR)
dihydrofolate
reductase
(DHFR).
The
optimized
parameters
showed
significant
improvements
reproducing
closely
matching
higher-level
DFT
Through
an
efficient
two-stage
optimization
process,
first
developed
CCR
reaction
data,
then
refined
these
DHFR
by
incorporating
targeted
set
of
additional
training
geometries.
strategic
minimized
cost
achieving
accurate
descriptions
both
systems,
as
validated
Adaptive
String
Method
(ASM).
represents
study
larger
longer
time
scales,
applications
mechanism
studies,
drug
design,
enzyme
engineering.