The SAMPL series of challenges aim to focus the community on specific modeling challenges, while testing and hopefully driving progress of computational methods to help guide pharmaceutical drug discovery. In this study, we report on the results of the SAMPL8 host-guest blind challenge for predicting absolute binding affinities. SAMPL8 focused on two host-guest datasets, one involving the cucurbituril CB8 (with a series of common drugs of abuse) and another involving two different Gibb deep-cavity cavitands. The latter dataset involved a previously featured deep cavity cavitand (TEMOA) as well as a new variant (TEETOA), both binding to a series of relatively rigid fragment-like guests. Challenge participants employed a reasonably wide varie...
Approaches for computing small molecule binding free energies based on molecular simulations are now...
We have tried to calculate the free energy for the binding of six small ligands to two variants of t...
We present our blind predictions for the Statistical Assessment of the Modeling of Proteins and Liga...
Accurately predicting the binding affinities of small organic molecules to biological macromolecules...
Prospective validation of methods for computing binding affinities can help assess their predictive ...
This work seeks to advance quantitative methods for biomolecular design, especially for predicting b...
We report the results of the SAMPL9 host-guest blind challenge for predicting binding free energies....
The computational prediction of protein-ligand binding affinities is of central interest in early-st...
The ability to computationally predict protein-small molecule binding affinities with high accuracy ...
<p>In the context of the SAMPL6 challenges, series of blinded predictions of standard binding free e...
The design of new host–guest complexes represents a fundamental challenge in supramolecular chemistr...
The computational prediction of protein–ligand binding affinities is of central interest in early-st...
We have estimated free energies for the binding of eight carboxylate ligands to two variants of the ...
We have tried to calculate the free energy for the binding of six small ligands to two variants of t...
As part of the SAMPL<sub>5</sub> blind prediction challenge, we calculate the absolute binding free ...
Approaches for computing small molecule binding free energies based on molecular simulations are now...
We have tried to calculate the free energy for the binding of six small ligands to two variants of t...
We present our blind predictions for the Statistical Assessment of the Modeling of Proteins and Liga...
Accurately predicting the binding affinities of small organic molecules to biological macromolecules...
Prospective validation of methods for computing binding affinities can help assess their predictive ...
This work seeks to advance quantitative methods for biomolecular design, especially for predicting b...
We report the results of the SAMPL9 host-guest blind challenge for predicting binding free energies....
The computational prediction of protein-ligand binding affinities is of central interest in early-st...
The ability to computationally predict protein-small molecule binding affinities with high accuracy ...
<p>In the context of the SAMPL6 challenges, series of blinded predictions of standard binding free e...
The design of new host–guest complexes represents a fundamental challenge in supramolecular chemistr...
The computational prediction of protein–ligand binding affinities is of central interest in early-st...
We have estimated free energies for the binding of eight carboxylate ligands to two variants of the ...
We have tried to calculate the free energy for the binding of six small ligands to two variants of t...
As part of the SAMPL<sub>5</sub> blind prediction challenge, we calculate the absolute binding free ...
Approaches for computing small molecule binding free energies based on molecular simulations are now...
We have tried to calculate the free energy for the binding of six small ligands to two variants of t...
We present our blind predictions for the Statistical Assessment of the Modeling of Proteins and Liga...