Docking and Post-Processing of 1 Million Molecules from the CNCL Database in Search of SARS-CoV-2 Mpro Inhibitors
Lecture notes in computer science,
Год журнала:
2025,
Номер
unknown, С. 47 - 58
Опубликована: Янв. 1, 2025
Язык: Английский
Computer‐assisted Methods and Tools for Structure‐ and Ligand‐based Drug Design
Опубликована: Ноя. 29, 2024
Due
to
the
increasing
pandemic
with
current
emerging
and
ongoing
pathogenesis,
situation
overcome
is
getting
difficult
for
humans.
The
research
community
keenly
interested
in
computational
approach
therapeutics
development,
as
we
have
seen
pandemic,
i.e.,
COVID-19.
Although
silico
-based
experiment
not
new
community,
advancement
this
going
day
by
betterment
of
humankind.
available
earlier
conventional
strategies
been
successful
developing
novel
drugs
therapeutics;
however,
they
a
major
drawback
time
cost.
Interestingly,
computer-assisted
approaches
are
considerable
interest
due
their
efficacy
accelerating
drug
development
terms
cost-effectiveness.
Different
potential
molecules
designed
through
approaches.
Computer-assisted
discovery
significantly
impacts
overall
process
advanced
high
accuracy
levels.
Innovative
techniques
allow
researchers
integrate
screen
bulk
high-throughput
biological
data
generated
globally
repurposing
or
finding
indications
existing
drugs.
Therefore,
study
aims
briefly
introduce
how
structure-
ligand-based
were
employed
discovery.
tools
databases
used
perform
these
also
described.
Additionally,
chapter
discusses
that
using
Язык: Английский
A SAR and QSAR study on 3CLpro inhibitors of SARS-CoV-2 using machine learning methods
SAR and QSAR in environmental research,
Год журнала:
2024,
Номер
35(7), С. 531 - 563
Опубликована: Июль 2, 2024
The
3C-like
Proteinase
(3CLpro)
of
novel
coronaviruses
is
intricately
linked
to
viral
replication,
making
it
a
crucial
target
for
antiviral
agents.
In
this
study,
we
employed
two
fingerprint
descriptors
(ECFP_4
and
MACCS)
comprehensively
characterize
889
compounds
in
our
dataset.
We
constructed
24
classification
models
using
machine
learning
algorithms,
including
Support
Vector
Machine
(SVM),
Random
Forest
(RF),
extreme
Gradient
Boosting
(XGBoost),
Deep
Neural
Networks
(DNN).
Among
these
models,
the
DNN-
ECFP_4-based
Model
1D_2
achieved
most
promising
results,
with
remarkable
Matthews
correlation
coefficient
(MCC)
value
0.796
5-fold
cross-validation
0.722
on
test
set.
application
domains
were
analysed
d
Язык: Английский