Abstract Identifying bioactive conformations of small molecules is an essential process for virtual screening applications relying on three-dimensional structure such as molecular docking. For most small molecules, conformer generators retrieve at least one bioactive-like conformation, with an atomic root-mean-square deviation (ARMSD) lower than 1 Å, among the set of low-energy conformers generated. However, there is currently no general method to prioritise these likely target-bound conformations in the ensemble. In this work, we trained atomistic neural networks (AtNNs) on 3D information of generated conformers of a curated subset of PDBbind ligands to predict the ARMSD to their closest bioactive conformation, and evaluated the early enri...
Deep convolutional neural networks comprise a subclass of deep neural networks (DNN) with a constrai...
Molecular conformation optimization is crucial to computer-aided drug discovery and materials design...
Computer-aided drug design methods such as docking, pharmacophore searching, 3D database searching, ...
Structure-based, virtual High-Throughput Screening (vHTS) methods for predicting ligand activity in ...
The identification of bound conformations, namely, conformations adopted by ligands when binding the...
Drug-like ligands obtained from protein–ligand complexes deposited in the Protein Databank were subj...
The identification of promising lead compounds showing pharmacological activities toward a biologica...
Poster I presented at the ELLIS summer school 2022, 5th RSC AI in Chemistry conference and the CHIA ...
Abstract Background Conformational sampling for small molecules plays an essential role in drug disc...
In the living cells, proteins bind small molecules (or “ligands”) through a “conformational selectio...
<div><p>Machine learning has been used for estimation of potential energy surfaces to speed up molec...
A new drug discovery is financially costly and time-consuming. To deal this issue, the Rational Dru...
By using a combination of classical Hamiltonian replica exchange with high-level quantum mechanical ...
Cytochrome P450 2D6 (CYP2D6) is used to develop an approach for predicting affinity and relevant bin...
Developing a new drug is a complex process. Today, with the use of combinatorial chemistry, millions...
Deep convolutional neural networks comprise a subclass of deep neural networks (DNN) with a constrai...
Molecular conformation optimization is crucial to computer-aided drug discovery and materials design...
Computer-aided drug design methods such as docking, pharmacophore searching, 3D database searching, ...
Structure-based, virtual High-Throughput Screening (vHTS) methods for predicting ligand activity in ...
The identification of bound conformations, namely, conformations adopted by ligands when binding the...
Drug-like ligands obtained from protein–ligand complexes deposited in the Protein Databank were subj...
The identification of promising lead compounds showing pharmacological activities toward a biologica...
Poster I presented at the ELLIS summer school 2022, 5th RSC AI in Chemistry conference and the CHIA ...
Abstract Background Conformational sampling for small molecules plays an essential role in drug disc...
In the living cells, proteins bind small molecules (or “ligands”) through a “conformational selectio...
<div><p>Machine learning has been used for estimation of potential energy surfaces to speed up molec...
A new drug discovery is financially costly and time-consuming. To deal this issue, the Rational Dru...
By using a combination of classical Hamiltonian replica exchange with high-level quantum mechanical ...
Cytochrome P450 2D6 (CYP2D6) is used to develop an approach for predicting affinity and relevant bin...
Developing a new drug is a complex process. Today, with the use of combinatorial chemistry, millions...
Deep convolutional neural networks comprise a subclass of deep neural networks (DNN) with a constrai...
Molecular conformation optimization is crucial to computer-aided drug discovery and materials design...
Computer-aided drug design methods such as docking, pharmacophore searching, 3D database searching, ...