Abstract Machine learning-based chemical screening has made substantial progress in recent years. However, these predictions often have low accuracy and high uncertainty when identifying new active chemical scaffolds. Hence, a high proportion of retrieved compounds are not structurally novel. In this study, we proposed a strategy to address this issue by iteratively optimizing an evolutionary chemical binding similarity (ECBS) model using experimental validation data. Various data update and model retraining schemes were tested to efficiently incorporate new experimental data into ECBS models, resulting in a fine-tuned ECBS model with improved accuracy and coverage. To demonstrate the effectiveness of our approach, we identified the novel h...
At present, the combination of high drug development costs and external pressure to lower consumer p...
Biocatalysis is a promising approach to sustainably synthesize pharmaceuticals, complex natural prod...
Background: We present a machine learning approach to the problem of protein ligand interaction pre...
Additional file 1: Figure S1. The duplicated dose response curves to determine Kd values of chemical...
Computational docking as a means to prioritise small molecules in drug discovery projects remains a ...
Natural compounds constitute a rich resource of potential small molecule therapeutics. While experim...
Prediction of interaction between drugs or drug like compounds and targets, is of high importance in...
Prediction of interaction between drugs or drug like compounds and targets, is of high importance in...
Natural compounds constitute a rich resource of potential small molecule therapeutics. While experim...
Computational methods involving virtual screening could potentially be employed to discover new biom...
The inhibitors of two isoforms of mitogen-activated protein kinase-interacting kinases (i.e., MNK-1 ...
While selective inhibition is one of the key assets for a small molecule drug, many diseases can onl...
In early-stage drug discovery, the hit-to-lead optimization (or "hit expansion") stage entails start...
Computational methods involving virtual screening could potentially be employed to discover new biom...
Biological information continues to grow exponentially fueled by massive data generation projects su...
At present, the combination of high drug development costs and external pressure to lower consumer p...
Biocatalysis is a promising approach to sustainably synthesize pharmaceuticals, complex natural prod...
Background: We present a machine learning approach to the problem of protein ligand interaction pre...
Additional file 1: Figure S1. The duplicated dose response curves to determine Kd values of chemical...
Computational docking as a means to prioritise small molecules in drug discovery projects remains a ...
Natural compounds constitute a rich resource of potential small molecule therapeutics. While experim...
Prediction of interaction between drugs or drug like compounds and targets, is of high importance in...
Prediction of interaction between drugs or drug like compounds and targets, is of high importance in...
Natural compounds constitute a rich resource of potential small molecule therapeutics. While experim...
Computational methods involving virtual screening could potentially be employed to discover new biom...
The inhibitors of two isoforms of mitogen-activated protein kinase-interacting kinases (i.e., MNK-1 ...
While selective inhibition is one of the key assets for a small molecule drug, many diseases can onl...
In early-stage drug discovery, the hit-to-lead optimization (or "hit expansion") stage entails start...
Computational methods involving virtual screening could potentially be employed to discover new biom...
Biological information continues to grow exponentially fueled by massive data generation projects su...
At present, the combination of high drug development costs and external pressure to lower consumer p...
Biocatalysis is a promising approach to sustainably synthesize pharmaceuticals, complex natural prod...
Background: We present a machine learning approach to the problem of protein ligand interaction pre...