Identifying novel drug-target interactions (DTI) is a critical and rate limiting step in drug discovery. While deep learning models have been proposed to accelerate the identification process, we show that state-of-the-art models fail to generalize to novel (i.e., never-before-seen) structures. We first unveil the mechanisms responsible for this shortcoming, demonstrating how models rely on shortcuts that leverage the topology of the protein-ligand bipartite network, rather than learning the node features. Then, we introduce AI-Bind, a pipeline that combines network-based sampling strategies with unsupervised pre-training, allowing us to limit the annotation imbalance and improve binding predictions for novel proteins and ligands. We illust...
Abstract Background Accurate prediction of protein–ligand binding affinity is important for lowering...
Bridging systems biology and drug design, we propose a deep learning framework for de novo discovery...
Computational prediction of compound-protein interactions generated a substantial amount of interest...
Identifying novel drug-target interactions (DTI) is a critical and rate limiting step in drug discov...
Identifying novel drug-target interactions (DTI) is a critical and rate limiting step in drug discov...
Protein-ligand binding prediction has extensive biological significance. Binding affinity helps in u...
The rapid spread of novel coronavirus pneumonia (COVID-19) has led to a dramatically increased morta...
The outbreak of COVID-19 caused millions of deaths worldwide, and the number of total infections is ...
Data driven computational approaches to predicting protein-ligand binding are currently achieving un...
Fast and accurate classification of ligand-binding sites in proteins with respect to the class of bi...
The rapid and accurate in silico prediction of protein-ligand binding free energies or binding affin...
Computational prediction of ligand–target interactions is a crucial part of modern drug discovery as...
Computational prediction of ligand–target interactions is a crucial part of modern drug discovery as...
Structure-based drug discovery uses information about the structure of a protein to identify novel l...
Bridging systems biology and drug design, we propose a deep learning framework for de novo discovery...
Abstract Background Accurate prediction of protein–ligand binding affinity is important for lowering...
Bridging systems biology and drug design, we propose a deep learning framework for de novo discovery...
Computational prediction of compound-protein interactions generated a substantial amount of interest...
Identifying novel drug-target interactions (DTI) is a critical and rate limiting step in drug discov...
Identifying novel drug-target interactions (DTI) is a critical and rate limiting step in drug discov...
Protein-ligand binding prediction has extensive biological significance. Binding affinity helps in u...
The rapid spread of novel coronavirus pneumonia (COVID-19) has led to a dramatically increased morta...
The outbreak of COVID-19 caused millions of deaths worldwide, and the number of total infections is ...
Data driven computational approaches to predicting protein-ligand binding are currently achieving un...
Fast and accurate classification of ligand-binding sites in proteins with respect to the class of bi...
The rapid and accurate in silico prediction of protein-ligand binding free energies or binding affin...
Computational prediction of ligand–target interactions is a crucial part of modern drug discovery as...
Computational prediction of ligand–target interactions is a crucial part of modern drug discovery as...
Structure-based drug discovery uses information about the structure of a protein to identify novel l...
Bridging systems biology and drug design, we propose a deep learning framework for de novo discovery...
Abstract Background Accurate prediction of protein–ligand binding affinity is important for lowering...
Bridging systems biology and drug design, we propose a deep learning framework for de novo discovery...
Computational prediction of compound-protein interactions generated a substantial amount of interest...