[HTML][HTML] Machine learning small molecule properties in drug discovery
Abstract Machine learning (ML) is a promising approach for predicting small molecule
properties in drug discovery. Here, we provide a comprehensive overview of various ML …
properties in drug discovery. Here, we provide a comprehensive overview of various ML …
Plas-20k: Extended dataset of protein-ligand affinities from md simulations for machine learning applications
Computing binding affinities is of great importance in drug discovery pipeline and its
prediction using advanced machine learning methods still remains a major challenge as the …
prediction using advanced machine learning methods still remains a major challenge as the …
MISATO: machine learning dataset of protein–ligand complexes for structure-based drug discovery
Large language models have greatly enhanced our ability to understand biology and
chemistry, yet robust methods for structure-based drug discovery, quantum chemistry and …
chemistry, yet robust methods for structure-based drug discovery, quantum chemistry and …
Application of modern artificial intelligence techniques in the development of organic molecular force fields
J Chen, Q Gao, M Huang, K Yu - Physical Chemistry Chemical Physics, 2025 - pubs.rsc.org
The molecular force field (FF) determines the accuracy of molecular dynamics (MD) and is
one of the major bottlenecks that limits the application of MD in molecular design. Recently …
one of the major bottlenecks that limits the application of MD in molecular design. Recently …
Long Time Scale Ensemble Methods in Molecular Dynamics: Ligand–Protein Interactions and Allostery in SARS-CoV-2 Targets
We subject a series of five protein–ligand systems which contain important SARS-CoV-2
targets, 3-chymotrypsin-like protease (3CLPro), papain-like protease, and adenosine ribose …
targets, 3-chymotrypsin-like protease (3CLPro), papain-like protease, and adenosine ribose …
Equilibrium and Nonequilibrium Ensemble Methods for Accurate, Precise and Reproducible Absolute Binding Free Energy Calculations
Free energy calculations for protein–ligand complexes have become widespread in recent
years owing to several conceptual, methodological and technological advances. Central …
years owing to several conceptual, methodological and technological advances. Central …
A multidimensional dataset for structure-based machine learning
MISATO, a dataset for structure-based drug discovery combines quantum mechanics
property data and molecular dynamics simulations on~ 20,000 protein–ligand structures …
property data and molecular dynamics simulations on~ 20,000 protein–ligand structures …
Accelerated Sampling of Rare Events using a Neural Network Bias Potential
In the field of computational physics and material science, the efficient sampling of rare
events occurring at atomic scale is crucial. It aids in understanding mechanisms behind a …
events occurring at atomic scale is crucial. It aids in understanding mechanisms behind a …
Cordycepin Triphosphate as a Potential Modulator of Cellular Plasticity in Cancer via cAMP-Dependent Pathways: An In Silico Approach
Cordycepin, or 3′-deoxyadenosine, is an adenosine analog with a broad spectrum of
biological activity. The key structural difference between cordycepin and adenosine lies in …
biological activity. The key structural difference between cordycepin and adenosine lies in …
A Multi-Grained Symmetric Differential Equation Model for Learning Protein-Ligand Binding Dynamics
In drug discovery, molecular dynamics (MD) simulation for protein-ligand binding provides a
powerful tool for predicting binding affinities, estimating transport properties, and exploring …
powerful tool for predicting binding affinities, estimating transport properties, and exploring …