3 research outputs found
TIES 2.0: A Dual-Topology Open Source Relative Binding Free Energy Builder with Web Portal
Relative binding free energy (RBFE) calculations are
widely used
to aid the process of drug discovery. TIES, Thermodynamic Integration
with Enhanced Sampling, is a dual-topology approach to RBFE calculations
with support for NAMD and OpenMM molecular dynamics engines. The software
has been thoroughly validated on publicly available datasets. Here
we describe the open source software along with a web portal (https://ccs-ties.org) that enables
users to perform such calculations correctly and rapidly
Evaluation and Characterization of Trk Kinase Inhibitors for the Treatment of Pain: Reliable Binding Affinity Predictions from Theory and Computation
Optimization
of ligand binding affinity to the target protein of
interest is a primary objective in small-molecule drug discovery.
Until now, the prediction of binding affinities by computational methods
has not been widely applied in the drug discovery process, mainly
because of its lack of accuracy and reproducibility as well as the
long turnaround times required to obtain results. Herein we report
on a collaborative study that compares tropomyosin receptor kinase
A (TrkA) binding affinity predictions using two recently formulated
fast computational approaches, namely, Enhanced Sampling of Molecular
dynamics with Approximation of Continuum Solvent (ESMACS) and Thermodynamic
Integration with Enhanced Sampling (TIES), to experimentally derived
TrkA binding affinities for a set of Pfizer pan-Trk compounds. ESMACS
gives precise and reproducible results and is applicable to highly
diverse sets of compounds. It also provides detailed chemical insight
into the nature of ligand–protein binding. TIES can predict
and thus optimize more subtle changes in binding affinities between
compounds of similar structure. Individual binding affinities were
calculated in a few hours, exhibiting good correlations with the experimental
data of 0.79 and 0.88 from the ESMACS and TIES approaches, respectively.
The speed, level of accuracy, and precision of the calculations are
such that the affinity predictions can be used to rapidly explain
the effects of compound modifications on TrkA binding affinity. The
methods could therefore be used as tools to guide lead optimization
efforts across multiple prospective structurally enabled programs
in the drug discovery setting for a wide range of compounds and targets
Rapid and Reliable Binding Affinity Prediction of Bromodomain Inhibitors: A Computational Study
Binding
free energies of bromodomain inhibitors are calculated
with recently formulated approaches, namely ESMACS (enhanced sampling
of molecular dynamics with approximation of continuum solvent) and
TIES (thermodynamic integration with enhanced sampling). A set of
compounds is provided by GlaxoSmithKline, which represents a range
of chemical functionality and binding affinities. The predicted binding
free energies exhibit a good Spearman correlation of 0.78 with the
experimental data from the 3-trajectory ESMACS, and an excellent correlation
of 0.92 from the TIES approach where applicable. Given access to suitable
high end computing resources and a high degree of automation, we can
compute individual binding affinities in a few hours with precisions
no greater than 0.2 kcal/mol for TIES, and no larger than 0.34 and
1.71 kcal/mol for the 1- and 3-trajectory ESMACS approaches