Background Trnasformer-based AI models have shown outstanding performance in identifying druggable candidate molecules. In most cases, models are trained on a massive amount of database of molecular information to capture the latent meaning of a given molecule. However, the desirable properties of candidate molecules include the feasibility of synthesizing them, low toxicity, and high druggability. In this study, we injected prior knowledge of the desirable properties of molecules during the training process. Methods Using the PubChem database (100 M), we filtered druglike molecules based on the quantity of drug-likeliness (QED) score and the Pfizer rule. With this dataset of drug-like molecules, we trained both the molecular representatio...
Machine learning methods have a long tradition in data-driven, computational drug discovery. Drug di...
Natural compounds constitute a rich resource of potential small molecule therapeutics. While experim...
Background Drugs off-target interactions are one of the main reasons of candidate failure in the dr...
Background Trnasformer-based AI models have shown outstanding performance in identifying druggable c...
It is more pressing than ever to reduce the time and costs for the development of lead compounds in ...
Artificial intelligence (AI) has been widely applied in drug discovery with a major task as molecula...
Developments in computational omics technologies have provided new means to access the hidden divers...
It is currently known that the high power of a drug does not fully determine its efficacy. Several p...
Over several decades, a variety of computational methods for drug discovery have been proposed and a...
Understanding the primary and secondary pharmacology of drugs is imperative for delivering a drug mo...
Triaging unpromising lead molecules early in the drug discovery process is essential for acceleratin...
The COVID-19 pandemic has emphasized the need for novel drug discovery process. However, the journey...
In recent years, the pharmaceutical business has seen a considerable increase in data digitization. ...
Machine learning (ML) is a promising approach for predicting small molecule properties in drug disco...
In drug discovery, domain experts from different fields such as medicinal chemistry, biology, and co...
Machine learning methods have a long tradition in data-driven, computational drug discovery. Drug di...
Natural compounds constitute a rich resource of potential small molecule therapeutics. While experim...
Background Drugs off-target interactions are one of the main reasons of candidate failure in the dr...
Background Trnasformer-based AI models have shown outstanding performance in identifying druggable c...
It is more pressing than ever to reduce the time and costs for the development of lead compounds in ...
Artificial intelligence (AI) has been widely applied in drug discovery with a major task as molecula...
Developments in computational omics technologies have provided new means to access the hidden divers...
It is currently known that the high power of a drug does not fully determine its efficacy. Several p...
Over several decades, a variety of computational methods for drug discovery have been proposed and a...
Understanding the primary and secondary pharmacology of drugs is imperative for delivering a drug mo...
Triaging unpromising lead molecules early in the drug discovery process is essential for acceleratin...
The COVID-19 pandemic has emphasized the need for novel drug discovery process. However, the journey...
In recent years, the pharmaceutical business has seen a considerable increase in data digitization. ...
Machine learning (ML) is a promising approach for predicting small molecule properties in drug disco...
In drug discovery, domain experts from different fields such as medicinal chemistry, biology, and co...
Machine learning methods have a long tradition in data-driven, computational drug discovery. Drug di...
Natural compounds constitute a rich resource of potential small molecule therapeutics. While experim...
Background Drugs off-target interactions are one of the main reasons of candidate failure in the dr...