The field of drug discovery has entered a plateau stage lately. It is increasingly more expensive and time-demanding to introduce new drugs into the market. One of the main reasons is the slow progress in finding novel targets for drug candidates and the lack of insight in terms of the associated mechanisms of action. Current works in this area mainly utilise different chemical, genetic and proteomic methods, which are limited in terms of the scalability of experimentation and the scope of studied drugs and targets per experiment. This is mainly due to their dependency on laboratory experiments and available physical resource. This has led to an increasing importance of computational methods for the identification of candidate drug targets....
In the last decades, people have been consuming and combining more drugs than before, increasing the...
Biomedical knowledge graphs, which can help with the understanding of complex biological systems and...
Drug repurposing is more relevant than ever due to drug development's rising costs and the need to r...
The field of drug discovery has entered a plateau stage lately. It is increasingly more expensive an...
Motivation Computational approaches for predicting drug-target interactions (DTIs) can provide valua...
Abstract Background The pharmaceutical field faces a significant challenge in validating drug target...
New drug discovery remains central to the aspiration of improving health care. Nevertheless, the dru...
Complex biological systems are traditionally modelled as graphs of interconnected biological entitie...
This talk showcases how to mine knowledge graph for drug discovery. It discusses the cutting-edge ma...
Traditionally, drug development is a time-consuming andcostly process. Using the vast amount of avai...
Knowledge Graphs (KG) and associated Knowledge Graph Embedding (KGE) models have recently begun to b...
Current approaches to identifying drug-drug interactions (DDIs), which involve clinical evaluation o...
Figshare;Godan11th International Conference Semantic Web Applications and Tools for Life Sciences, S...
Drug discovery and development is a complex and costly process. Machine learning approaches are bein...
Drug discovery is an expensive and labor-intensive process, typically taking an average of 10–15 yea...
In the last decades, people have been consuming and combining more drugs than before, increasing the...
Biomedical knowledge graphs, which can help with the understanding of complex biological systems and...
Drug repurposing is more relevant than ever due to drug development's rising costs and the need to r...
The field of drug discovery has entered a plateau stage lately. It is increasingly more expensive an...
Motivation Computational approaches for predicting drug-target interactions (DTIs) can provide valua...
Abstract Background The pharmaceutical field faces a significant challenge in validating drug target...
New drug discovery remains central to the aspiration of improving health care. Nevertheless, the dru...
Complex biological systems are traditionally modelled as graphs of interconnected biological entitie...
This talk showcases how to mine knowledge graph for drug discovery. It discusses the cutting-edge ma...
Traditionally, drug development is a time-consuming andcostly process. Using the vast amount of avai...
Knowledge Graphs (KG) and associated Knowledge Graph Embedding (KGE) models have recently begun to b...
Current approaches to identifying drug-drug interactions (DDIs), which involve clinical evaluation o...
Figshare;Godan11th International Conference Semantic Web Applications and Tools for Life Sciences, S...
Drug discovery and development is a complex and costly process. Machine learning approaches are bein...
Drug discovery is an expensive and labor-intensive process, typically taking an average of 10–15 yea...
In the last decades, people have been consuming and combining more drugs than before, increasing the...
Biomedical knowledge graphs, which can help with the understanding of complex biological systems and...
Drug repurposing is more relevant than ever due to drug development's rising costs and the need to r...